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Article

Nationwide Evaluation of Urban Energy System Resilience in China Using a Comprehensive Index Method

1
Institute of Thermal Science and Technology, Shandong University, Jinan 250061, China
2
School of Energy and Power Engineering, Shandong University, Jinan 250061, China
3
Institute for Advanced Technology, Shandong University, Jinan 250061, China
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(4), 2077; https://doi.org/10.3390/su14042077
Submission received: 20 December 2021 / Revised: 20 January 2022 / Accepted: 7 February 2022 / Published: 11 February 2022

Abstract

:
The carbon peak and carbon neutrality goals for China signify a critical time of energy transition in which energy resilience is a vital issue. Therefore, a comprehensive evaluation of urban energy system resilience (UESR) is important for establishing a theoretical foundation. To this end, in this paper, 309 Chinese cities were evaluated using a comprehensive UESR assessment framework composed of 113 indices that measured vulnerability and capabilities of resistance and restoration. The results showed that China’s UESR is distributed unevenly and that cities in the eastern region generally have higher resilience than those in other regions. The minimum and maximum UESR results corresponded to Tibet and Shandong, respectively, at the provincial level and Rikaze and Weifang, respectively, at the city level. Regression analysis showed a positive correlation among UESR, carbon dioxide emissions, and GDP.

1. Introduction

On 22 September 2020, President Xi Jinping announced that China would adopt more forceful policies and measures to reach the peak of carbon dioxide emissions by 2030 and to achieve carbon neutrality by 2060; these goals are referred to as the 3060 targets [1]. Energy structure transformation is key to achieving the 3060 targets. The main approaches include reducing the proportion and total amount of fossil fuel consumption, developing renewable energy, reforming the power system, and developing clean and green industries. These approaches assist in building resilient energy systems, as energy system resilience refers to the ability to maintain the essential functions and services of the energy system, ensure stable energy supply and demand with controllable fluctuations, and quickly adapt to new conditions when disruption occurs. Therefore, the 3060 targets, which involve all aspects of energy production, transmission, distribution, consumption, and storage, provide an important opportunity to enhance energy system resilience.
Cities are the macroscopic consumption unit of national energy systems and are responsible for 70% of global greenhouse gas emissions; thus, they should play an important role in this energy transition [2]. When cities meet various urban energy demands related to citizens’ daily lives and provide other infrastructures with enabling functions, a plethora of threats with natural, technical, or human causes might jeopardize the security of their energy systems, leading people to realize that urban energy system resilience (UESR) is becoming increasingly important in the process of urban development [3,4,5].
Billions of dollars in resilience investment are being mobilized globally, creating demand for a rigorous and decision-oriented resilience measurement [6]. However, the evaluation of UESR has not received much attention or research despite its importance. On the one hand, current research on the evaluation of urban resilience has mainly addressed disturbances due to climate change and natural disasters on cities [7,8], while UESR has been rarely studied. As a means of evaluation, the comprehensive index method has been applied to evaluate resilience at the community [6,7,8,9], region [10], city [11,12,13], and country [14,15] levels. For example, resilient city research for China has proposed a set of indicators such as networks and transportation [9,10]. However, the energy sector is usually not considered the major focus of urban resilience [9,10,11,12,13]. On the other hand, though energy system resilience has been defined by many researchers [14,15,16,17,18,19,20], and the quantification thereof is an important branch of energy system resilience research, there is still no consensus on a suitable and comparable evaluation methodology, and the mainstream quantitative methods have limitations of broad applicability and comparability for various cities. Apart from comprehensive index methods, [21] divided the evaluation methods into two categories: quantitative and qualitative. The quantitative methods are mainly time-dependent matric methods and consider resilience to be capacities of resistance, absorption, and restoration [22,23,24]. The metrics assess the system performance, which is ad hoc, i.e., system- or event-specific and backed by historical data [25,26,27,28]. The complexity and computability of the models and the requirement for historical data limit the broad applicability and comparability of these methods, especially across hundreds of cities. Besides, very few such qualitative methods have been applied to study at the city level. Though a dynamic energy balance-based model has been proposed to measure UESR, this methodology also requires input data and cannot sufficiently providing resilience enhancement strategies at the regional and national levels [29]. Qualitative methods have been less studied; these mainly include checklists and questionnaires [30], the matrix scoring system [31], and the analytic hierarchy process [32]. Case studies to verify feasibility are few as well. In summary, a broadly applicable and comparable quantitative method for evaluating energy system resilience of various cities has not hitherto existed.
To fill this knowledge gap, in this paper, a comprehensive index method is proposed to semi-quantitatively evaluate baseline UESR, which involves the capacities of resistance and restoration combined with vulnerability assessment. To do so, the system boundary of the urban energy system was clarified and UESR was defined; based on the definition, the capacities of resistance and restoration were qualitatively evaluated by three dimensions, namely the multifarious capabilities of the energy system within a city (CE), the interdependencies between other basic city subsystems and the energy system (CI), and the comprehensive vulnerabilities of cities and energy (CV); and these three dimensions were quantitively evaluated by 113 indices, which were selected through a relatively thorough literature review under a set of selection principles. The applicability and comparability of the comprehensive index method are demonstrated through case studies of 309 cities in China.

2. Materials and Methods

The resilience discussion herein is proposed to be constrained to high-impact rare events (HR events), also called black swan events [4,33]. The system boundary is constrained on the city level, which represents an adequate unit for policy implementation and is convenient for the overall management of practical events in terms of China’s existing realities.

2.1. Characterization of Urban Energy System (UES)

The system boundary for an UES can be clarified, as in the working paper of the cross-center UKERC Energy 2050 project [17]. The energy resources, energy carriers, energy technologies, energy infrastructures (physical and virtual), and surrounding supporting facilities in a city are collectively referred to as the UES. Energy resources include fuels, such as coal, charcoal, gasoline, diesel, natural gas, biogas, uranium, and hydrogen, and natural energy sources, such as hydropower, geothermal power, solar power, and wind power. Energy carriers work in terms of electricity, heat, and cold in addition to fuels. Energy technologies are related to centralized power plants, distributed energy systems, and (micro)grids. Supporting facilities incorporate monitoring and protection devices, electric energy storage supporting equipment, etc. Generally, the UES can also be traced through the energy flow through production, transmission, distribution, conversion, consumption, and storage within a city’s physical boundaries, while part of production, i.e., exploration, exploitation, transportation, and processing, usually occurs outside the UES.

2.2. Definition of UESR

In accordance with the essence of the definitions, UESR can be defined as the ability of a UES to resist HR events’ impacts, so as to maintain essential functions and services and ensure energy supply and demand within controllable fluctuations, and to quickly restore full energy production. With higher UESR, a UES has a greater capacity to handle foreseeable and/or unforeseeable impacts. From the time dimension, UESR requires the UES to reduce the probability of risk occurrence through measures of risk mitigation in the pre-event stage; diminish the direct and indirect impacts and shorten the duration when an HR event occurs; and withstand various sequential impacts, accommodate and recover from degradation, adapt to new conditions, and learn lessons for future mitigation strategies in the post event stage. In short, for UESs, resilience signifies the capacities of resistance and restoration.
When an HR event occurs, higher resistance helps the UES suffer less performance decline, and higher restoration helps the UES undergo quicker adaptation to new conditions, as shown in Figure 1. The height of the blue-shaded triangle is negatively related to resistance capacity, representing the decrease in system performance. The base of the blue-shaded triangle is negatively related to restoration capacity, representing the restoration of the system performance. As the reverse of the blue-shaded area depicts the simplified resilience level, resilience can be determined as follows:
R e s i l i e n c e = R e s i s t a n c e × R e s t o r a t i o n
To evaluate the capacities of resistance and restoration, three dimensions are proposed: CE, CI, and CV. CE refers to the comprehensive quality of UESs, including robustness, diversity, flexibility, and availability: (1) robustness refers to the condition of hardware and its ability to resist external impacts to reduce the physical influence of disasters and prevent widespread grid outages and energy supply failures. Hardware refers to grid lines, transformers, energy practitioners, and power generation capacity in this framework. Energy reserves of various fuels play an important role in energy feedstock cutoff. Technological and financial feasibilities should also be considered, e.g., improving energy supply stability and enriching the fuel stock. (2) Diversity consists of energy generation and consumption as well as enterprise productive capacity. To evaluate energy diversity, the Shannon–Weaver index is applied, since it is widely preferred for variety and balance [34]. The Shannon–Weaver index is defined as [35,36]:
D = i p i l n p i
where p i represents the share of energy source i in the mix of energy generation/consumption for an energy system. The higher the value of D is, the more diverse a system is evaluated to be. (3) Flexibility is based primarily on the view of the UES as a complex and flexible integrated system that includes organizational, technical, and administrative factors. The system should have the ability to take precautions, study disaster prediction, and obtain the latest information before an event so that rational planning and allocation can be performed in advance in terms of equipment, technology, organization, personnel, resources, and capital. This quality enables the system to flexibly adapt to new internal and external conditions and find a new stable state when an HR event is about to end or after a long period of time following the event. Thus, many aspects at the system-management level are inspected. Evaluation of practice includes demonstration projects, energy savings, and equipment decommission. (4) Availability refers to the ability to adjust the system based on resource availability and financial feasibility. Resource exploitation and processing are considered for coal, petroleum, and other fuels. Financial feasibility is evaluated in terms of the fixed and current assets of energy industries.
CI involves basic city subsystems that closely interact with the energy system. The interdependencies between critical infrastructures should be taken into consideration since a powerful countermeasure of energy sector that does not explore potential synergies between other pertinent sectors may exacerbate the vulnerability or reduce the overall UESR [37,38,39]. Thus, CI refers to the capability of a city to cope with hazardous events, including interdependencies between UESs and other societal sectors, such as water, transportation, ecology, emergency services, medical services, and information and telecommunications [40,41]. Water systems are critical in an emergency, and they interact with energy systems via water flow, sewage discharge, cooling water, and circulating water. The transportation system is powered mainly by gasoline, diesel, natural gas and electricity; moreover, the accessibility of the transportation system plays a key role in emergency situations. Ecological systems can provide effective buffering, such as vegetation management and green open space [42]. Emergency services, medical services, and information and telecommunications are high priorities for energy supply and are essential for urban system restoration [43,44].
CV refers to the number of objects with regard to the basic urban conditions in the city and the energy infrastructures in the energy system, that could possibly be affected by hazard [45,46,47]. City vulnerability takes demographic, economic, and architectural factors into consideration. Energy vulnerability is associated mainly with pipeline and gas stations of various fuels. District heat and electricity consumption have direct impacts on urban residents’ daily lives when HR events occur.
According to the above, the greater the CE or CI, the faster the system performance is restored; the greater the CE or the smaller the CV, the less the system performance decreases. The evaluation of resilience, i.e., the UES’s capacities of resistance and restoration, is converted into the evaluation of CE, CI, and CV as shown in Figure 1 [48].

2.3. Index Selection

Comprehensive index methods have become a standard approach to simplifying governmental and organizational policy making, decision making, performance appraisal, and progress tracking at all levels [48]. This study proposes a comprehensive index method, providing each dimension with a series of indices for evaluation. In the early stage of developing the comprehensive index framework, a large number of proposed indices by other researchers and database were collected based on a literature review and data research. The index selection procedure is depicted in Figure 2. To organize a consistent UESR framework, indices must first suit the scope of UES. To this end, hundreds of primary indices were obtained. These primary indices were then classified according to the meaning and category into three dimensions: CE, CI, and CV. Each index was described in accordance with the referred literature as closely as possible. Following that, a set of selection principles was examined to evaluate the index’s systematism, unicity, feasibility, objectivity, and representation. To describe the overall dimension, the index set should systematically reflect every subsystem and be neither too detailed nor too general [49]. Unicity means that repeated indices should be removed. Feasibility refers to the availability of data from reliable sources with no obvious errors and the operability of quantitative methods and statistical approaches. To be objective, indices should conform to objective facts and not be interfered with subjective values. Representation means that limited indices should describe a dimension as comprehensively as possible. Indices that met the five selection principles were retained, and those that did not meet any principle were deleted. Detailed primary index selection records are shown in Table A1, Table A2 and Table A3 (Appendix A). The deletion of each index was related to its original meaning as it underwent the index selection process. There were two main reasons for deleting indices. Unicity is part of the reason, as most scholars generally attach great importance to output of renewable energy, application of distributed energy system, energy sources, energy diversity, etc. Feasibility was the main reason, because some indices were difficult to quantify, some were not suitable for too many measurement objects because the quantization process was too tedious or the quantization workload was large, and some did not apply to China’s actual situation. Therefore, 113 indices were finally retained for the UESR assessment index framework, as shown in Figure 3.
The selected 113 indices are quantitatively measured and equally weighted, and they can be assigned differently to satisfy various assessment purposes through a dialogue process between decision makers and stakeholders.

2.4. Normalization of the Indices and Calculation of UESR

Indicators were divided into positive and negative indicators according to their supporting or inhibiting effects on resilience [50]. The higher the negative indicators, the lower the corresponding criteria and resilience, such as the share of imported electricity, daily water consumption per capita, and railway access index. All other indicators are positive. Min–max normalization is used to process the original data as follows.
For positive indicators:
y i j = x i j m i n x i j m a x x i j m i n x i j
For negative indicators:
y i j = m a x x i j x i j m a x x i j m i n x i j  
where x i j , y i j represent the original and normalized data, respectively; m a x x i j is the maximum value of this indicator; and m i n x i j is the minimum value of this indicator;
C I = i = 1 n I i × ω i  
C E = i = 1 n E i × ω i  
where I i and E i represent the normalized value of index i for CI and CE, respectively, and ω i represents the weight of index i . According to the universal risk evaluation model, CV is determined as follows [47]:
V 2 = i = 1 n V i × ω i  
where V i represents the normalized value of index i for city vulnerability or energy vulnerability. Then, resilience is determined as:
R e s i l i e n c e = i = 1 n E i × ω i × i = 1 n I i × ω i + i = 1 n E i × ω i ( i = 1 n V i × ω i ) 1 2  
Based on data survey, statistics, and analysis, the UESR of a city can be obtained by substituting these 113 parameters into Equation (8).

3. Results

The energy resilience of 309 Chinese cities is shown in Figure 4. The entire country was divided into four regions according to the National Bureau of Statistics of China [51], namely, the western region (107 cities), the central region (81 cities), the eastern region (87 cities), and the northeastern region (34 cities). Several cities were more resilient than the surrounding areas. There were four types for different reasons. First, provincial capital cities generally had better political resources, management levels, and economic development advantages compared with their surrounding cities and thus had stronger comprehensive city strength and better performance in CI and CE. This applied to Changchun of Jilin, Harbin of Heilongjiang, Taiyuan of Shanxi, Kunming of Yunnan, and Fuzhou of Fujian. Second, Zhangjiakou of Hebei is close to the capital, Beijing, and serves as an important satellite city. It is located in the coal transport corridor, has abundant wind energy resources, has developed a number of microgrid projects, and has few energy-consuming industries, all of which made it a relatively energy-resilient city. Third, Zhuhai of Guangdong has relatively small population density, industrial density, and economic size in Guangdong province, resulting in low CV. As CE and CI were not significantly different, Zhuhai’s resilience value was higher. Fourth, Shenzhen of Guangdong was more resilient within the province because of its better performance in energy diversity, microgrid projects, and development of nuclear power.

3.1. Regional Level

In general, a majority of the 309 cities, especially those in the northeastern and western regions, had relatively low energy resilience. In contrast, UESR in the eastern region was generally higher. The average resilience (R) result of the eastern region was more than twice that of the northeastern and western regions. The resilience variance (S2) of the eastern region was nearly an order of magnitude higher than that of the other three regions. The most evenly distributed cities were located in the central region. The differences in CV among the four regions were not significant in terms of average, maximum, minimum, or variance, with the eastern region only slightly higher than the other three regions. From the perspective of CE, there were no obvious distribution characteristics. The eastern region had the highest average. The central region had the lowest variance. The situations of the western and northeastern regions were similar. The highest CI average occurred in the eastern region as well. The statistics of the evaluation results are shown in Table 1. The detailed data and evaluation results can be seen in Tables S1–S4 of the Supplementary Materials.

3.2. Provincial Level

Among the evaluated 27 provinces/autonomous regions:
  • The highest average resilience occurred in Shandong (0.69), and the lowest, in Tibet (0.039). The distribution of resilience development was most balanced in Qinghai, with the lowest variance (0.000050) and the smallest range (0.020), and least balanced in Yunnan, with the second-highest variance (0.0046) and the largest range (0.26).
  • The highest average CV occurred in Shandong (0.40), and the lowest, in Guizhou (0.32). The distribution of CV was most balanced in Tibet, with the lowest variance (0.000098) and the smallest range (0.028), and least balanced in Guangdong, with the highest variance (0.0046) and the largest range (0.24).
  • The highest average CE occurred in Shandong (0.36), and the lowest, in Tibet (0.049). The distribution of CE was most balanced in Qinghai, with the lowest variance (0.000057) and the smallest range (0.018), and least balanced in Ningxia, with the highest variance (0.0019) and the second-largest range (0.12).
  • The highest average CI occurred in Jiangsu (0.41), and the lowest, in Tibet (0.26). The distribution of CI was most balanced in Hainan, with the lowest variance (0.000045) and the smallest range (0.016), and least balanced in Guangdong, with the highest variance (0.0038) and the largest range (0.25).

3.3. City Level

  • Among the 309 cities, 107 (35%) had higher energy resilience than the national average, while 202 (65%) had lower energy resilience than the national average.
  • The four municipalities, Tianjin, Shanghai, Chongqing, and Beijing, ranked 88th, 84th, 71st, and 48th in resilience, respectively. All municipalities were above the average level, not only for resilience but for CV, CE and CI. Beijing ranked first in CI and CV.
  • The minimum, median, and maximum resilience results corresponded to Rikaze, Yingkou, and Weifang, respectively. Detailed comparisons of these three cities are shown in Figure 5 and Figure 6. The numbered acronyms on the left in Figure 6 correspond to the indices in Figure 3. The levels of the three cities’ CV varied little. Rikaze had an obvious advantage in energy vulnerability, but its city vulnerability was due mainly to a large number of civil protection units in the city, such as historic sites, temples, and repositories of ancient books, pictographs, and other cultural relics. Its city competitiveness (index Fl 13-20), including the city’s external connectivity, software and hardware environment, knowledge and information development level, and infrastructure construction, was in a disadvantageous position as well. These data were obtained from the Yearbook of China’s Cities sponsored by the Sustainable City Committee of the China Research Society of Urban Development. According to the editor, the evaluation indices mainly reflected the competitiveness of cities in transforming from quantitative growth to qualitative sustainable development. To improve the resilience of Rikaze, this sustainable competitiveness should be comprehensively considered. Additionally, the reliability of the power supply can be improved, and the line loss rate of power enterprises can be reduced. Electricity conservation could be further advocated and executed, and new energy vehicles and enhanced transportation accessibility could be promoted. In terms of energy diversity, the use of natural gas and heat supply also lagged. However, this is related to the local climate and residents’ habits and customs, which are difficult to change in the short term and require long-term adjustment and planning.
  • For Yingkou, the main means of improving resilience would include promoting and practicing electricity conservation; improving the management of State Grid Liaoning Power Co., Ltd., among the major power grid companies in the country; and improving the diversity of power generation. With the current Huaneng Yingkou Thermal Power plant as the dominant plant, the city could develop microgrid projects, distributed energy systems, etc., to develop capacity other than thermal power generation.
  • As the comparison of financial feasibility was based on provincial data, Weifang’s advantages in both the fixed assets and current assets of the energy industry benefit from Shandong’s advantages among provinces, as do the decommissioning of thermal power units and the achievement of energy savings. In addition, according to the China Electric Power Industry Annual Development Report, State Grid Shandong Power Co., Ltd., has relatively better comprehensive management on the supply side in its industry, so cities in Shandong also scored high on this series of indices. This implies that financial and managerial resilience can be improved at the provincial level.

3.4. Regression Analysis

Since the resilience of UESs is a critical issue in the current energy transition toward the 3060 targets, it is interesting to understand the relation among a city’s energy system resilience, carbon dioxide emissions (megaton) and GDP (1010 RMB).
By the weighted least squares method (weight = 1/resid2), the following binary nonlinear regression equation is obtained, and the model fits the evaluation results well.
RESILIENCE i = 0.049111 + 0.177735 CO 2 E i 0.204 + 0.045861 lnGDP i + e i
t = ( 705.8698 *** )   ( 749.1603 *** )   ( 484.5519 *** )
R_squared = 0.9999 ,   n = 309
where *** means at 1% significant level. The empirical results showed a positive correlation between resilience and carbon dioxide emissions, suggesting that there should be a balance among loss of resilience, reduction in carbon dioxide emissions, and increase in GDP. For an example, in Yingkou, a reduction in carbon dioxide emissions of one million tons would sacrifice resilience by 0.0073 and drop the city 12 places in the ranking, and an increase in GDP of 22,949.87 million RMB would enhance resilience to maintain the original position. Therefore, in the process of achieving the 3060 targets, to ensure the safety and sustainability of a city and allow its resilience to fluctuate within reasonable limits, how to appropriately allocate the carbon dioxide emission reduction quota to each city is critical. Based on the evaluation framework of this study, the options for both reducing emissions and enhancing resilience vary from city to city. Generally, feasible alternatives include advancing the financial feasibility of the energy sector, promoting, and practicing energy conservation, and improving the management of power enterprises.

4. Conclusions

With the ambitious 3060 targets, China is looking forward to an unprecedented energy transition. As a core part of energy transition and sustainability, resilience must be given serious attention, especially when extreme events have occurred more frequently in recent years.
To this end, this paper implemented a nationwide comprehensive assessment of the resilience of UESs in China. The results showed that the current capabilities of Chinese UESs to handle exogenous extreme events are very uneven, and that cities in the eastern region generally have higher resilience than those in other regions. The minimum, median, and maximum UESR results corresponded to Rikaze, Yingkou, and Weifang, respectively. Regression analysis of 309 cities’ resilience evaluation results showed a positive correlation among UESR, carbon dioxide emissions, and GDP. When the details of this evaluation are combined and the differences lucubrated at the urban/provincial levels, each city should develop a tailored plan to reduce carbon emissions, ensure reasonable changes in UESR, and flexibly utilize economic instruments.
The aim of this study was to establish a benchmark to understand the complicated correlations and challenges of energy transition. The findings of this study may assist municipal and provincial decision makers with unique insights for enhancing overall UESR. Moreover, continual assessments of the UESR of these cities in future years could offer policy makers much more valuable information on energy transition and urban development.
The proposed indicators mainly suit China’s current reality, and different, specific indices should be adopted when the assessments are applied to cities in other countries. The results do not contain value or other judgments.

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/su14042077/s1, Table S1: Resilience evaluation results of 309 Chinese cities, Table S2: CI data and results of 309 Chinese cities, Table S3: CE data and results of 309 Chinese cities, Table S4: CV data and results of 309 Chinese cities.

Author Contributions

Conceptualization, Z.W. and R.W.; methodology, Z.W. and Q.S.; software, Z.W.; validation, Z.W., C.M. and Q.S.; investigation, Z.W. and Z.C.; resources, Q.S.; data curation, Z.W. and Z.C.; writing—original draft preparation, Z.W.; writing—review and editing, Z.W.; supervision, R.W. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data sources included scholarly publications, trade organization publications, research reports produced by governmental departments and educational organizations, and, when possible, direct contact with experts in related fields. In detail, the CI data sources included governmental yearbooks and bulletins at the city/provincial/country levels, the academic research results of transportation accessibility in [40], and the China Urban Construction Statistical Yearbook. The CE data sources included governmental yearbooks and bulletins at the city/provincial/country levels; the business inquiry platform www.tianyancha.com (accessed on 22 May 2021); the official website of the Ministry of Industry and Information Technology of the People’s Republic of China, https://www.miit.gov.cn/ (accessed on 1 February 2022); the official website of the National Development and Reform Commission of the People’s Republic of China, https://www.ndrc.gov.cn/ (accessed on 1 February 2022); and the China Urban Construction Statistical Yearbook, China Electric Power Yearbook, China Electric Power Statistical Yearbook, State Grid Yearbook, China Electric Power Industry Annual Development Report, China Automobile Industry Yearbook, China Industrial Statistical Yearbook, Yearbook of China’s Cities, and China Basic Unit Statistical Yearbook. The CV data sources included the China Urban Construction Statistical Yearbook and the China Economic and Social Big Data Research Platform, https://data.cnki.net/NewHome/index (accessed on 1 February 2022).

Acknowledgments

This work was supported by the Shandong University Seed Fund Program for International Research Cooperation.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Aggregated index selection for CE (note: ✓ indicates compliance with the selection principle and ✗ indicates noncompliance; selection principles: systematism (S), unicity (U), feasibility (F), objectivity (O), and representation (R)).
Table A1. Aggregated index selection for CE (note: ✓ indicates compliance with the selection principle and ✗ indicates noncompliance; selection principles: systematism (S), unicity (U), feasibility (F), objectivity (O), and representation (R)).
No.Primary IndexRef.SUFORResult
1Energy feedstock[52]Deleted
2Energy not supplied[53]Deleted
3Energy storage[54]Retained
4Hydrophobic coating on equipment[55]Deleted
5Key replacement equipment stockpile[55]Deleted
6Redundant power lines[55]Deleted
7Reinforced concrete versus wooden distribution poles[55]Deleted
8Siting infrastructure[55]Deleted
9Underground, overhead, undersea distribution/cable lines[56,57]Deleted
10Unique encrypted passwords for utility “smart” distribution[55]Deleted
11Workers employed[52,55,58]Retained
12Communication/control systems/control centers[59]Deleted
13Electrical protection and metering[59]Deleted
14Equipment positioning[55]Deleted
15Flow paths, line flow limits[60]Deleted
16Gen/load bus distribution[60]Deleted
17Reserve/spare capacity[57,61,62]Retained
18Substations (switchyards)—overhead lines and underground cables are interconnected[59]Deleted
19Ancillary service[54]Deleted
20Function-altered hazard rate of component after certain maintenance[63]Deleted
21Net ability—measures the aptitude of the grid in transmitting power from generation to load buses efficiently[60]Deleted
22Path redundancy—assesses the available redundancy in terms of paths in transmitting power from generation to a load bus based on entropy[60]Deleted
23Viability of investments[52]Deleted
24Coefficient of variation of the frequency index of sags[64]Deleted
25Bulk electric system reliability performance indices[65]Retained
26Derated power—rated power multiplied by the reliability of the plant[66]Deleted
27Energy efficiency/intensity[62,67,68,69,70]Retained
28Failure rate[63]Deleted
29Resilience index—parameter that quantifies the potential probability of malfunction of the system[71]Retained
30Resilience index—derived from robustness, resourcefulness, and recovery; ranges from 0 (low resilience) to 100 (high resilience)[30,72,73]Retained
31Survivability—evaluates the aptitude of the network to assure the possibility of matching generation and demand in case of failures or attacks[60]Deleted
32System average interruption duration/frequency index[74]Deleted
33Load loss damage index—damage caused by fire to the electrical system[75]Deleted
34Transmission lines available[76]Retained
35Functional zones—generation, transmission, and distribution[52]Retained
36Operator training[55]Deleted
37Mutual assistant agreements[55]Deleted
38Transformers—connecting parts of the network operating at different voltages[59]Retained
39Tree-trimming metrics[55,57]Deleted
40Adequacy—the ability of the system to supply customer requirements under normal operating conditions[52]Deleted
41Congestion control[77]Deleted
42Customer average interruption duration index—sustained outage metric; measures average duration of sustained outage per customer[74]Deleted
43Economy—achieving the best profits by adjusting the power system operation mode to minimize line losses, making full use of equipment, ensuring the security of the power system, and meeting utility users’ demand[68]Deleted
44Fairness—consists of the fulfillment rate of contracts and standard deviation indexes[68]Deleted
45Interrupted energy assessment rate[65]Deleted
46Security—the dynamic response of the system to unexpected interruptions; relates to the system’s ability to endure them[52]Deleted
47Transmission losses[56]Retained
48Cost of interruption—social, commercial, industrial, etc.[56]Deleted
49Impact factor on the population—share of the population affected by the power loss[78]Deleted
50Long-distance transmission costs[56]Deleted
51Noise[56]Deleted
52Performance-based regulation reward/penalty structure[65]Deleted
53Price of electricity[56]Retained
54Value of lost load—value of unserved energy; customers’ value of the opportunity cost of outages or benefits forgone through interruptions in electricity supply[61]Deleted
55Fuel nodes with the most links are the most interconnected and serve as hubs[79]Deleted
56Flow between nodes takes place on links (roads, electric power transmission lines, water mains, etc.)[79,80,81]Deleted
57Elements of the energy network that can receive fuels from storage facilities, pipeline interconnections, or production areas[79,81]Retained
58Primary energy supply—includes the systems and processes used to supply a primary energy resource to its point of conversion into the final energy product of interest[52]Retained
59Storage facilities/nodes, intermediate storage[80,81]Retained
60Emergency procedures/emergency shutdown system[82]Deleted
61Response to equipment outages—degree to which the system is able to continue to reliably operate in the event of equipment downtime[52]Deleted
62Adaptive capacity—degree to which the system is capable of self-organization for recovery of system performance levels[83]Deleted
63Ability of the system to provide sufficient throughput to supply final demand[52]Retained
64Information security—the degree to which information assets in the system are secure against threats[52]Retained
65Physical security—the degree towhich physical assets in the systemare secure against threats[52]Deleted
66Absorptive capacity—degree to which a system can automatically absorb the impacts of perturbations and minimize consequences with little effort[83]Deleted
67Connectivity loss—the average reduction in the ability of sinks to receive flow from sources[78]Deleted
68Energy processing and conversion—relates to production of the final energy product[52]Retained
69Flexibility—the degree to which the system can adapt to changing conditions[52]Deleted
70History—the degree to which the system has been prone to disruption in the past[52]Retained
71Intermittency—the degree to which the system lacks constant levels of productivity[52]Deleted
72Network resiliency—measured by its ability to keep supplying and distributing fuels in spite of damage to pipelines, import terminals, storage, and other sources[79]Deleted
73Response to demand fluctuations—the extent to which the system is able to adapt to changes in the quantity of energy demanded or location of demand[52]Retained
74Systemic impact—impact that a disruption has on system productivity; measured by evaluating the difference between a targeted system performance level and the actual system performance[80,83]Deleted
75Impacts on interdependent systems—the degree to which a disruption in the system might feasibly cause damage to interdependent systems[52]Deleted
76Optimal resilience costs—resilience costs for a system when the optimal recovery strategy (minimizing the combined system impact and total recovery effort costs) is employed[83]Deleted
77Recovery-dependent resilience costs—resilience costs of a system under a particular recovery strategy[83]Deleted
78Diversity of import fuels[67]Deleted
79Natural gas strategic reserve[84]Retained
80Import levels—the degree to which primary energy supply relies on resources originating outside of the system[17,52,62,81,85,86,87,88,89,90,91,92]Retained
81Industrial aspects—vulnerability indicator[85]Deleted
82Vulnerability—proportional to the reliance on imported gas from countries in geopolitical conflict[85]Deleted
83Ability to expand facilities—the degree to which the system can be easily and cost-effectively expanded[52]Deleted
84Pipeline capacity used[79]Deleted
85Resiliency—ability to supply gas to customers willing to pay the clearing price, even in the face of supply constraints[84]Deleted
86Restorative capacity—ability of a system to be repaired easily; these repairs are considered to be dynamic[83]Deleted
87Total recovery effort— efficiency with which a system recovers from a disruption, measured by analyzing the amount of resources expended during the recovery process[83]Deleted
88Sector coordination—the degree to which coordination between stakeholders within the sector results in an effective exchange of information, alerting stakeholders of emerging threats and mitigation strategies[52]Retained
89Price/price volatility[52,84]Retained
90Intelligent institutional leadership with heightened sensitivity and/or preparedness for rapid and pervasive changes[93]Deleted
91Diversity of electricity generation[16,17,31,34,62,86,87,88,89,90,91,94,95,96,97,98,99,100,101,102,103,104,105,106,107,108]Retained
92Diversity of imports of embodied electricity[34]Deleted
93Diversity of electricity consumption[34]Retained
94Renewable energy electricity, mainly wind and solar power[109,110,111]Retained
95Share of buildings with low thermal insulation in the total building stock[112]Deleted
96Share of renewables in total heating energy[112]Deleted
97Share of fossil fuels in total energy consumption[112]Deleted
98Share of electricity produced by renewables in total electricity consumption[8,112]Deleted
99Nonrenewable fuel used in generation[62]Deleted
100Generation efficiency[62]Deleted
101Distribution efficiency—transmission and distribution losses and the amount of electricity consumed by energy industry[62]Deleted
102Carbon intensity of generation[17,49,62,87,91,98,113]Deleted
103Redundant power for use[62]Retained
104Existence and monitoring of officially approved electrification plan[114]Deleted
105Framework for grid electrification[114]Deleted
106Framework for minigrids[114]Deleted
107Framework for standalone systems[114]Deleted
108Consumer affordability of electricity[110,114]Deleted
109Utility transparency and monitoring[114]Deleted
110Utility creditworthiness[114]Deleted
111Information provided to consumers about electricity usage[114]Deleted
112Financing mechanisms for energy efficiency[114]Deleted
113Energy efficiency entities[114]Deleted
114Incentives from electricity rate structures[114]Deleted
115Incentives and mandates: large consumers/public sector/utilities[114]Deleted
116Minimum energy efficiency performance standards[114]Deleted
117Energy labeling systems[114]Deleted
118Building energy codes[114]Deleted
119Carbon pricing and monitoring[95,114,115,116,117]Deleted
120Legal framework for renewable energy[114]Deleted
121Planning for renewable energy expansion[114]Deleted
122Incentives and regulatory support for renewable energy[114]Deleted
123Attributes of financial and regulatory incentives for renewable energy[114]Deleted
124Network connection and pricing[114]Deleted
125Counterparty risk of renewable energy[114]Deleted
126Maximized availability of operational power supply[118]Deleted
127Replacement inventories of equipment and supplies[110,118]Deleted
128Maximized provision target power supply level of restoration[118]Deleted
129Largest single source of supply[17]Deleted
130Energy portfolios—price volatility[17]Deleted
131Statistical probability of supply interruption in network industries (gas and electricity)[17]Deleted
132Expected number of annual hours in which energy is unserved[17]Deleted
133Value/level of unserved energy[17]Retained
134Energy storage capacity and/or stocks by fuel and market[17]Deleted
135Redundancy in network architecture[17]Deleted
136Expected probability of interruption for long-term planning and design[119]Deleted
137Expected energy not served per interruption[119]Deleted
138Expected outage duration per interruption for short-term operational planning[119]Deleted
139Expected energy loss[24]Deleted
140Collapse ratio[24]Deleted
141Recovery ratio[24,110]Deleted
142Energy cost stability[120]Deleted
143Stability of energy generation[120]Deleted
144Peak load response[120]Deleted
145Market concentration on supply[120]Deleted
146CO2eq emissions[120]Deleted
147Fuel use[120]Deleted
148Employment[120]Deleted
149Levelized costs (incl. capital, operational/maintenance, fuel costs)[120]Deleted
150Technological maturity[120]Deleted
151Technological innovation ability[120]Deleted
152Energy demand and consumption[8,121]Deleted
153Flexibility of grid[8,121]Deleted
154Urban energy supply systems for increasing shares of renewable energy[121,122]Deleted
155Reduced end-use energy demand[111,121,122]Retained
156Energy monitoring[8,121]Deleted
157Reduced reliance on energy[16,62,123,124,125]Deleted
158Energy source diversity[16,62,111,123,125,126,127]Deleted
159Energy storage capabilities[124,125,126]Deleted
160Redundancy of critical capabilities[62,126,128,129]Deleted
161Preventative maintenance on energy systems[110,126,129]Deleted
162Sensors, controls, and communication links to support awareness and response[125,126,129]Deleted
163Protective measures against external attack[123,126,128]Deleted
164Design margin to accommodate range of conditions[124,126,129,130,131]Deleted
165Limited performance degradation under changing conditions[16,124,126,129,130]Deleted
166Operational system protection, e.g., pressure relief, circuit breakers[126,129]Deleted
167Installed/ready redundant components[16,31,49,90,126,128,129,132,133,134,135]Deleted
168Ability to isolate damaged systems/components (automatic/manual)[62,126,129]Deleted
169Capability for independent local/subnetwork operation[126,128]Deleted
170System flexibility for reconfiguration and/or temporary system installation[16,125,126,128,130]Deleted
171Capability to monitor and control portions of system[124,126,129]Deleted
172Fuel flexibility[16,31,62,99,128,130,136,137]Deleted
173Capability to reroute energy from available sources[16,126,128,129,130]Deleted
174Investigate and repair malfunctioning controls or sensors[129]Deleted
175Energy network flexibility to reestablish service by priority[16,126,129]Deleted
176Backup communication lighting, power systems for repair/recovery operations[126,129]Deleted
177Flexible network architecture to facilitate modernization and new energy sources[16,126,128,130]Deleted
178Sensors and data collection and visualization capabilities to support system performance trending[62,126,128,129]Deleted
179Ability to use new/alternative energy sources[16,125,130]Deleted
180Updating system configuration/functionality based on lessons learned[16,126,128,129,130]Deleted
181Phasing out obsolete or damaged assets and introducing new assets[123,126,128,129,130,133,138,139] Deleted
182Integrating new interface standards and operating system upgrades[126,128,129]Deleted
183Updating response equipment/supplies based on lessons learned[128]Deleted
184Capabilities and services prioritized based on criticality or performance requirements[124]Deleted
185Internal and external system dependencies identified[124,125,140]Deleted
186Design, control, operational, and maintenance data archived and protected[124,129]Deleted
187Vendor information available[124]Deleted
188Control systems operational and protected with antivirus and other safeguards[124,126,129]Deleted
189Operating environment forecasts captured in planning scenarios[123,124,126,129]Deleted
190Response/recovery plans established and distributed[124,126,129]Deleted
191Environmental condition forecast and event warnings broadcast[62,125,129]Deleted
192System status, trends, and margins available to operators, managers, and customers[62,110,125,126,128,129]Deleted
193Critical system data monitored; anomalies alarmed[62,126,128,129]Deleted
194Operational/troubleshooting/response procedures available[126,129]Deleted
195Status/trend limits trigger safeguards and isolate components to stop cascade effect[62,125,126]Deleted
196Status/response/mitigation information transmitted effectively and efficiently to stakeholders/decision makers[124]Deleted
197Information and communications coordinated throughout supply chain[126]Deleted
198Information available to authorities and crews regarding customer/community needs/status[128,129]Deleted
199Recovery progress tracked, synthesized, and available to decision makers and stakeholder[128,129]Deleted
200Design, repair parts, and substitution information available to recovery teams[126]Deleted
201Location, availability, and ownership of energy, hardware, and services for restoration teams[126]Deleted
202Resource needs, sources, and authorities available to decision makers[128]Deleted
203Information regarding centralized facilities and distribution of essential supplies and services available to community[128]Deleted
204Coordinating information and communications among recovery organizations[128]Deleted
205Initiating event, incident point of entry, and associated vulnerabilities and impacts identified[123,125,126,128,129]Deleted
206Event data and operating environment forecasts utilized to anticipate future conditions/events[125,126,128,129]Deleted
207Updated information about energy resources, alternatives, and emergent technologies available to managers and stakeholders[16,125,128,129]Deleted
208Design/operation/maintenance information updated consistently with system modifications[16,126,129]Deleted
209Consumer/stakeholder awareness of energy alternatives, cost/benefits, and implementation requirements[16,124,125]Deleted
210Community impacts, priorities, interdependencies updated to capture lessons learned[124,128,129]Deleted
211Response plans updated with lessons learned[125,126,128,129]Deleted
212Understood performance trade-offs of organizational goals[123,125]Deleted
213Broad-based operational and maintenance training[126,129]Deleted
214Periodic operator, management, and community drills[126,128,129]Deleted
215Developed individual expertise in energy impacts, techniques, and alternatives (energy-informed culture)[124]Deleted
216Awareness of and focusing of effort on identified critical assets and services[124,126,128]Deleted
217Decision-making protocol or aid to determine proper course of action[125,126,128]Deleted
218Operators and managers utilizing critical thinking and maintain proactive posture to recognized and arrest events[125,126]Deleted
219Community response to mitigate impact, e.g., demand curtailment[124,126,128]Deleted
220Utilizing data and decision-making aids to quickly select recovery options[128]Deleted
221Recovery crew managing incremental recovery with available equipment[126]Deleted
222Community members utilizing available resources and improvised to meet local needs[16,124,125,128]Deleted
223Community members managing constrained energy resources responsibly and consistent with public guidance[16,124,128]Deleted
224Documentation and review of management response and decision-making processes[125,126,128]Deleted
225Periodic revisitation of organizational risk tolerance and mission priorities, adjusting as necessary[124,125]Deleted
226Integration of lessons learned and best practices from internal and external sources[125,126,128,129]Deleted
227Customers and stakeholders taking action to implement more resilient energy solutions[16,124,125,126,129]Deleted
228Identification of stakeholders (internal and external)[126,128]Deleted
229Use of scenario-based war gaming to develop understanding of system dependencies and interactions[125,126,128,131]Deleted
230Robust risk analysis and decision support capabilities to facilitate response[123,124,125,126,128,129]Deleted
231Decreased overall reliance on energy or specific sources of energy[123,124]Deleted
232Priorities and policies established for event response[123,124,125,126,128,129]Deleted
233Priorities and operating limits mitigating disruption to energy needs for key community functions[123,126,128]Deleted
234Predefined protective actions limiting external influences in physical, information domains[124,125,126]Deleted
235Agile operational management enabling rapid and effective response under changing conditions[125,126]Deleted
236Individuals and organizations implementing response plans[124,125,126,128]Deleted
237Individuals and organizations taking action in response to observations and/or direction from authorities[124,128]Deleted
238Recovery organizations and communities following contingency recovery plans[124,125,128]Deleted
239Community stakeholders participating in establishment of energy priorities and coordination of restoration actions[124,126,128]Deleted
240Shelters and other centralized services increasing efficiency and control of scarce energy resources to meet critical needs[126]Deleted
241Public/private entities coordinating to deliver aid to affected parties[128]Deleted
242Proactive neighborhood assistance, volunteerism, and compliance with energy response manager direction[128]Deleted
243Reallocation of human resources to better address adverse events[128]Deleted
244Local governments and stakeholders staying informed about threats, changing environment, and protective methods and technologies[123,124,125,126,128,129]Deleted
245Local governments and stakeholders collaborating to develop, prioritize, and implement energy portfolio improvement[16,123,124,125,126,128,129]Deleted
246Incentives for customers and stakeholders to implement more resilient energy solutions[16,62,123,124,125,126,128,129]Deleted
247Energy-informed culture leading to collective decisions and investments which continually improve energy effectiveness[16,62,126,128]Deleted
248Accurate estimation of weather location and severity[57]Deleted
249Energy consciousness of the public and consumption behavior/demand-side management[8,31,57,69,70,94,99,101,104,113,133,139,141,142,143,144,145,146,147,148,149,150,151,152,153,154]Retained
250Fast topology reconfiguration[57]Deleted
251Automated protection and control actions: load and generation rejection, system separation, etc.[57]Deleted
252Monitoring—development of situation awareness, advanced visualization and information systems[57]Deleted
253Ensured communications functionality[57]Deleted
254Microgrids[57,155,156]Retained
255Advanced control and protection schemes[57,110]Deleted
256Disaster assessment and priority setting[57]Deleted
257Risk assessment and management for evaluating and preparing for the risk introduced by such events[57,122]Deleted
258Black-start capabilities installed[57]Deleted
259Repair crew member mobilization[57]Deleted
260Installation of DER or other onsite generation units[57]Deleted
261Coordination with adjacent networks, and repair crews[57]Deleted
262Upgrading poles and structures with stronger, more robust materials[57]Deleted
263Elevating substations and relocating facilities to areas less prone to flooding[57]Deleted
264Redundant transmission routes via additional transmission facilities[57]Deleted
265Available energy sources/generation methods[110]Deleted
266Number of service connections able to handle entire load[110]Deleted
267Damage assessment methods[110]Deleted
268Scenario/contingency planning[110]Deleted
269Local availability of tools/expertise to address damage[110]Deleted
270Load shedding and load factor[110]Deleted
271Estimated lifespan of generation plant[110]Deleted
272Fortification and robustness (physical security)[62,89,96,98,143,157,158,159]Deleted
273Operational system protection, e.g., system relief, circuit breakers[31]Deleted
274Diversification of energy supply—fuel mix, multisourcing, type of generation[16,17,31,62,86,87,88,89,90,91,94,95,96,97,98,99,100,101,102,103,104,105,106,107,108]Deleted
275Spatially distributed generation (and critical facilities)[31,95,96,99,109,138,139,141,160,161,162,163]Deleted
276Energy production near point of use (colocation of supply and demand)[96,164,165]Deleted
277On-site energy production (photovoltaics, micro-combined heat and power, trigeneration, thermal panels, small wind turbines mounted at the corners of the roof)[16,70,99,102,147,148,149,150,158,159,161,166,167,168,169,170,171,172,173,174,175]Deleted
278Solar absorption cooling[176,177]Deleted
279Large wind turbines located outside the built-up area[162,178,179]Deleted
280Large solar thermal collectors[149,178]Deleted
281Smart microgrids fed by microturbines and solar panels (photovoltaics, building integrated photovoltaics) and storage facilities[62,104,109,136,138,141,142,144,151,152,158,180,181,182,183]Deleted
282Building-integrated photovoltaic/thermal for recovery of heat loss form photovoltaics and building integrated photovoltaics[180]Deleted
283Ground source heat pumps[149,150,178,184,185]Deleted
284Waste heat or biomass-fueled combined heat and power plants[138,178,186]Retained
285Biofuel energy (food waste, second generation cellulosic biofuels, third generation using algae, etc.)[139,182,184,187,188,189,190]Retained
286Biomass supply chain, wood pellet systems[101,139]Deleted
287Interdependency and interconnection of infrastructures and their networks[95,96,99,115,159,160,165,191]Retained
288Regular maintenance[31,33,88,96]Deleted
289Generation, transmission, and distribution efficiency (leakages, etc.)[62,86,87,98,192]Deleted
290Age of the fleet (feeder lines, etc.)[62,193]Deleted
291Type of feeder lines (overhead/underground cables; looped/interconnected or radial configuration)[49,95,146,158,159,193,194]Deleted
292Natural gas distribution: continuous (grid) vs. discontinuous (propane tanks)[195]Deleted
293Alternative and safer energy sources for critical infrastructure such as parking gates, traffic lights, subway, etc.[96,191]Deleted
294Intelligent ICT infrastructure and cybersecurity thereof for maintaining grid operation[31,33,49,96,133,158,191,196,197]Deleted
295Flexible network architecture[31]Deleted
296Number of configuration of nodes and links in the transmission and distribution grid[17,22,198]Retained
297Backup energy sources and stocks of energy[17,33,96]Deleted
298Energy storage facilities involving electro-chemical batteries, flow batteries, hydrogen, etc.[16,49,70,86,90,109,138,144,146,199]Deleted
299Distributed storage[95,158]Deleted
300Connectivity of generation and storage infrastructure[88,89,200]Deleted
301Backup data of the utility infrastructure (information networks, data sharing, etc.)[31,157]Deleted
302Spare capacity and reserve margins—resources, transmission lines, etc.[31,49,62,98,100,191,201,202]Deleted
303Vehicle-to-grid and vehicle-to-community selling of surplus power[70,150,203]Deleted
304Parks and open space, bioswales, etc. (attention to regular trimming of trees)[193,204,205,206,207,208,209,210,211,212,213,214,215,216,217,218]Deleted
305Indigenous (native) vs. invasive plants[138,208]Deleted
306Deciduous trees for cold climate[168]Deleted
307Xeriscape for hot and arid climates[207,219]Deleted
308Urban agriculture (vacant lands, marginal lands, etc.)[220]Deleted
309Green area ration[213]Deleted
310Green wall (vegetative covering, green façade)[213,221,222,223]Deleted
311Green roof (living roof)[138,206,215,219,224,225,226,227]Deleted
312Rainwater harvesting, decentralized water harvesting systems[137,147,204,228]Deleted
313Water conservation[147,219]Deleted
314Heat recovery and energy generation from sewage[204,229]Deleted
315Separation of used water into grey and black flows[219]Deleted
316Removing and recovering ammonium and phosphate from wastewater[219]Deleted
317Waterscape as a natural heat sink[209,215,230]Deleted
318Roof ponds[99,122,136,231]Deleted
319Redesign and refurbishment (retrofit)[113,115,139,148,149,151,164,207,219,232,233,234,235]Deleted
320Glazing[113,115,139,148,149,151,164,207,219,232,233,234,235]Deleted
321Net zero- and net positive-energy buildings[148,163,235,236]Deleted
322Insulation and dynamic insulation of buildings[104,109,139,141,147,148,149,152,153,159,168,176,214,219,233,235,237,238,239]Deleted
323Cut-off air conditioning waste heat discharge[223]Deleted
324Net zero-energy neighborhoods[148]Deleted
325Pooling of the built environment (shared walls)[148,217]Deleted
326District energy systems—using low-temperature heat from renewable sources and industrial waste heat[87,137,138,151,184]Deleted
327Infrastructure for active transportation modes[136,138,164,168,196,220,240,241,242,243,244]Deleted
328Modal split[87,241]Deleted
329Size of cars[196]Deleted
330Fuel efficiency of cars[115,196,243]Deleted
331Supporting promotion of hybrid vehicles and installing electric vehicle plug-ins in locations where multiple use can be achieved[31,70,99,136,137,138]Retained
332Enhancing energy efficiency through innovation and technology (building, industry, transportation)[31,62,69,94,96,99,117,143,144,147,150,164,165,180,184,186,228,237,241,243,245]Deleted
333Energy conservation[139]Deleted
334Energy self sufficiency[91,99,160]Deleted
335Energy cycling[70,142]Deleted
336Waste management and waste incineration[86,108,147,184]Deleted
337Environmental and socioeconomic impacts of energy system[86,98,99,108]Deleted
338Reducing energy footprint of water production, treatment, and distribution[95,116,138,192,228,229,246,247]Deleted
339Provision of less energy-intensive rainwater harvesting systems in buildings[228]Deleted
340Water and energy resource coupling[109]Deleted
341Reducing energy footprint of wastewater collection, treatment, and discharge[138]Deleted
342Reducing water footprint of energy production and transmission[95,116,192,246,247]Deleted
343Improving the efficiency of energy production by enhancing water quality[187]Deleted
344Understanding the water intensity of fuels used for electricity generation[247]Deleted
345Less water-intensive technologies for cooling purposes in thermoelectric plants[95,192,246]Deleted
346Use of natural gas for steamed turbines and combined cycle plants[192,246]Deleted
347Use of wet cooling towers instead of once-through cooling[246]Deleted
348Knowing groundwater implications of energy (technologies, extraction, etc.)[86,187,229]Deleted
349Scenario-based energy planning and risk management[31,133,229]Deleted
350Risk communication and energy response of urban governance[96]Deleted
351Community involvement in and/or ownership of renewable energy generation[96]Deleted
352Institutional coordination on water, food, health, and energy nexus[116]Deleted
353Reliance on nuclear energy[31,154]Retained
354Regular publication of energy planning documents and statistics[99]Deleted
355Market competitiveness and investment risk of decentralized renewable energy[99,139,150,239]Deleted
356Requirement for suppliers to source a proportion of electricity from renewables[239]Deleted
357Legal and regulatory frameworks to encourage technological development and transition towards energy resilience[161,180,248]Deleted
358Measures against electricity theft[249]Deleted
359Attracting private sector’s investment in low-carbon development[95,115,116,117]Deleted
360Financial and nonfinancial mechanisms and incentives for promoting green products and renewable energy technologies and enhancing affordability[95,115,116,117]Deleted
Table A2. Aggregated index selection for CI.
Table A2. Aggregated index selection for CI.
No.Primary IndexRef.SUFORResult
1Train transportation[250]Retained
2Emergency organization and infrastructure in place and critical functions identified[44,118]Deleted
3Waste and disposal[41,120,122]Retained
4Land use requirement[120]Deleted
5Level of public resistance/opposition[120]Deleted
6Market size—domestic/potential export[120]Deleted
7Permeable pavement and bioswales[121]Deleted
8Urban tree canopy[121]Deleted
9Water demand and consumption[8,121,122,251,252]Retained
10Water-efficient landscaping[8,41,121]Deleted
11Protection of water-sensitive lands[121]Deleted
13Water quality and quantity monitoring[121,252]Deleted
14High-efficiency irrigation[8,121]Deleted
15High-frequency schedule for public transportation[41,42,121]Deleted
16Principle arterial miles per square mile[121]Deleted
17Vehicle ownership[8,10,121,251,253]Retained
18Parks[8,121]Deleted
19Forest conservation[8,121]Deleted
20Waste management[8,121]Deleted
21Provision of open space for shelter[8,121,122]Retained
22Percentage of vacant rental units[121]Deleted
23Number of hotels/motels per square mile[8,121]Deleted
24Evacuation route[8,121]Deleted
25Building insulation, layout, and orientation[121]Deleted
26Reducing air infiltration and thermal bridging[121]Deleted
27Natural ventilation[121]Deleted
28Preservation of housing[121]Deleted
29Building codes[121]Deleted
30Housing age[121]Deleted
31Generating and making use of information[121]Deleted
32Geospatial information and communication technology[121]Deleted
33Volunteered geographic information[121]Deleted
34Visualization technologies[121]Deleted
35Alerts and emergency notification systems[121]Deleted
36Embracing e-commerce[121]Deleted
37Biodiversity[8,121]Deleted
38Restoration of hydrologic flows[8,121]Deleted
39Conservation of ecologically vulnerable areas[121,254]Deleted
40Proximity of different habitats[121]Deleted
41Erosion rates[121]Deleted
42Urban green commons[121,122]Retained
43Culture of cooperation[121]Deleted
44Balance demographic distribution[121]Deleted
45Aging population[121]Deleted
46Responsive health systems[121]Retained
47Health coverage and access[8,121,253]Retained
48Road density[10,45,251]Retained
49Distribution of fire stations[45]Deleted
50Distribution of police stations[45]Deleted
51Distribution of civil air defense facilities[45]Deleted
52Distribution of emergency shelters[45]Deleted
53Land types[45]Deleted
54College students[251]Deleted
55Hospital distribution[10,45]Retained
56Medical rescue capability[10,45,251]Retained
57Ecological restoration capacity—green coverage ratio[10,45,251]Retained
58Social security[45]Retained
59Gas supply pipeline[10]Retained
60Drainage pipeline[10,41]Retained
61Internet users[10,251]Retained
62Mobile phone users[41,251,253]Retained
63Medical insurance coverage[251,253]Retained
64Unemployment insurance coverage[251]Deleted
Table A3. Aggregated index selection for CV.
Table A3. Aggregated index selection for CV.
No.Primary IndexRef.SUFORResult
1Human health impact—the degree to which a disruption in the system might feasibly harm the health of employees or the public[52]Retained
2Electricity consumption per capita[112]Retained
3Climate resilience[120]Deleted
4Noise pollution[120]Deleted
5Aesthetic/functional impact[120]Deleted
6Mortality and morbidity due to air pollution[120]Deleted
7Accident fatalities[120]Deleted
8Ecosystem damages due to acidification and eutrophication caused by pollution from electricity production[120]Deleted
9Seismic risk[45]Deleted
10Flood risk[45,122]Deleted
11Meteorological hazard[45]Deleted
12Geological hazard risk[45]Deleted
13Hazard of industrial disaster[45]Deleted
14Population density[45,251]Retained
15Demographic structure[45,251,253]Retained
16Demographic change[45,251]Retained
17Distribution of important buildings[45]Retained
18GDP per capita[10,45,251]Retained
19Affected elements and components[110]Deleted
20Number of households affected[110]Deleted

References

  1. Foreign Ministry Spokesperson Wang Wenbin’s Regular Press Conference on 23 September, in the State Council Information Office of the People’s Republic of China. Available online: http://www.scio.gov.cn (accessed on 1 February 2022).
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Figure 1. Time-based system performance in an HR event.
Figure 1. Time-based system performance in an HR event.
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Figure 2. Index selection procedure for UESR evaluation.
Figure 2. Index selection procedure for UESR evaluation.
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Figure 3. Assessment index for resilience of urban energy systems.
Figure 3. Assessment index for resilience of urban energy systems.
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Figure 4. Resilience of urban energy systems for 309 Chinese cities. (Note: The gray areas were not included in the assessment because of lack of data.).
Figure 4. Resilience of urban energy systems for 309 Chinese cities. (Note: The gray areas were not included in the assessment because of lack of data.).
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Figure 5. Comparison of the three cities’ R/CV/CE/CI results.
Figure 5. Comparison of the three cities’ R/CV/CE/CI results.
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Figure 6. Comparison of cities with minimum/median/maximum resilience results.
Figure 6. Comparison of cities with minimum/median/maximum resilience results.
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Table 1. Statistics of the evaluation results.
Table 1. Statistics of the evaluation results.
RegionResilienceS2CVCECI
Nationwide0.320.0220.360.200.36
Western0.240.00530.350.160.34
Central0.280.00280.350.180.36
Eastern0.500.0220.380.280.40
Northeastern0.220.00350.370.160.33
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Wang, Z.; Chen, Z.; Ma, C.; Wennersten, R.; Sun, Q. Nationwide Evaluation of Urban Energy System Resilience in China Using a Comprehensive Index Method. Sustainability 2022, 14, 2077. https://doi.org/10.3390/su14042077

AMA Style

Wang Z, Chen Z, Ma C, Wennersten R, Sun Q. Nationwide Evaluation of Urban Energy System Resilience in China Using a Comprehensive Index Method. Sustainability. 2022; 14(4):2077. https://doi.org/10.3390/su14042077

Chicago/Turabian Style

Wang, Ziyi, Zengqiao Chen, Cuiping Ma, Ronald Wennersten, and Qie Sun. 2022. "Nationwide Evaluation of Urban Energy System Resilience in China Using a Comprehensive Index Method" Sustainability 14, no. 4: 2077. https://doi.org/10.3390/su14042077

APA Style

Wang, Z., Chen, Z., Ma, C., Wennersten, R., & Sun, Q. (2022). Nationwide Evaluation of Urban Energy System Resilience in China Using a Comprehensive Index Method. Sustainability, 14(4), 2077. https://doi.org/10.3390/su14042077

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