Rapid Evaluation of the Effects of Policies Corresponding to Air Quality, Carbon Emissions and Energy Consumption: An Example from Shenzhen, China
Abstract
:1. Introduction
2. Data and Methodology
2.1. Meteorology, Energy, Economy, and Air Quality in Shenzhen
2.1.1. Meteorology, Energy, and Economy
2.1.2. Air Quality Findings from Studies and Observational Reports
- (1)
- Source apportionment research
- (2)
- Analysis based on simulation
- (3)
- Annual report of air quality
2.2. Data and Scenario Settings
2.2.1. Data Sources for Air-Quality Simulation
2.2.2. Reference of Air Pollutant Emissions and Reductions from 2014 to 2019
2.2.3. Emission Inventory
2.2.4. Scenario Settings for RSM-VAT Simulations
2.2.5. Source of Policy Text
2.2.6. Estimation of CO2 Emissions and Economic and Social Activities
2.3. Model and Methods
2.3.1. Application of ABaCAS
2.3.2. Application of Qualitative Comparative Analysis
3. Results
3.1. Estimation of Total Emissions in 2014
3.2. Simulated Concentrations of PM2.5 in Each Scenario in Shenzhen
3.3. Concentrations of O3 in Each Scenario in Shenzhen
3.4. Analysis of the Implementation of Policies
3.4.1. Statistical Analysis of Policy Contents Based on Truth Table
3.4.2. Possibility of Emissions Reductions as a Result of Management and Controls
4. Discussion
4.1. Comparison of Emissions with the Triple Goals Study
4.2. Trend of CO2 Emissions in the Industrial Sector
4.3. Policies in 2021–2025
4.4. Potential and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
CO2 | Carbon dioxide |
NH3 | Ammonia |
NOx | Nitrogen oxides |
O3 | Ozone |
PM2.5 | Fine particulate matter |
SO2 | Sulfur dioxide |
VOCs | Volatile organic compounds |
µg/m3 | Microgram per cubic meter |
SZ | Shenzhen, Guangdong Province, China |
OTHER | Area surrounding Shenzhen (in model setting) |
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Annual Air Quality Indices | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 |
---|---|---|---|---|---|---|
Annual average of PM2.5 (µg/m3) | 34 | 30 | 27 | 28 | 26 | 24 |
90th percentile of the daily maximum 8 h of O3 (µg/m3) | —— | —— | 135 * | 147 ** | 137 | 156 |
Percentage of days with the daily maximum 8 h of O3 (µg/m3) lower than 160 | 98.9% | 99.6% | 99.4% | 94.8% | 94.8% | 91.0% |
Annual average of O3 (µg/m3) | 57 | 56 | 59 | 61 | —— | —— |
Loading factors (%) of six air pollutants in Shenzhen-O3 | 20.3 | 21.9 | 24.3 | 26.4 | 26.0 | 30.7 |
Air Pollutants | PM2.5 | SO2 | NOx | VOCs | NH3 * |
---|---|---|---|---|---|
Emission amount reduced from 2012 to 2016 (ton) | 11,000 | 70,000 | 33,000 | 51,000 | —— |
Ratio of reduction from 2012 to 2016 | 41% | 27% | 28% | 34% | —— |
SZ Annual reduction ratio | 10.25% | 6.75% | 7% | 8.5% | 2% |
OTHER Annual reduction ratio | 5.13% | 3.38% | 3.5% | 4.25% | 1% |
Level 2 Fuel/Products | Level 3 Combustion Mode/Processing Technology | ||
---|---|---|---|
01## | Coal (solid fuel) | 01## | Boiler type |
02## | Gaseous fuel | 02## | Integral Coal Gasification Combination Cycle Power Generation |
03## | Liquid fuels (e.g., gasoline) | 03## | Stove type |
04## | Naphtha, lubricating oil, solvent oil | 04## | Sintering or pelletizing |
0500 | paraffin wax | 05## | Coking |
06## | Other petroleum products | 06## | Converter, electric furnace, casting |
07## | Biomass | 07## | blast furnace |
08## | Steel products | 08## | Steel rolling |
09## | Nonferrous Metals | 09## | Smelting |
10## | Nonmetallic mineral products | 10## | Cement and lime |
11## | Chemical raw materials | 11## | Glass |
12## | Synthetic resins | 12## | Coatings |
13## | Synthetic fibers | 13## | Inks |
14## | Fertilizers | 14## | Surface coating related to automobile manufacturing and maintenance |
15## | Coatings and inks | 15## | raising methods |
16## | Rubber, alcohol and other chemical products | 16## | Solid waste treatment |
17## | Food, agricultural and sideline products | 17## | Treatment of denitrification flue gas |
18## | Silk thread textiles | 18## | National exhaust emission standard |
19## | Road mobile source | 1900 | Open burning |
20## | Non road mobile source-construction machinery | 20## | Soil type |
21## | Non road mobile source-Agricultural machinery | 21## | Road pavement type |
22## | Non road mobile source-General machinery | 22## | Construction process |
2300 | Diesel generator set | 23## | Material handling process |
24## | Non road mobile source-boats and ships | 9999 | Technology insensitive |
25## | Non road mobile source-Railway diesel locomotive | Level 4 Terminal control technology | |
2600 | Non road mobile source-Civil aircraft | 01## | Industrial desulfurization technology |
27## | Insecticides | 02## | Industrial denitration technology |
28## | Herbicides | 03## | Industrial dust removal technology |
29## | Fungicides | 04## | Oil/gas recovery |
30## | Architectural coatings | 0500 | Cooking fume purifier |
31## | Automobile and bicycle surface spraying | 06## | Dust emission control of farmland, road, construction site, storage yard |
32## | Surface coating of other products | 9999 | No control technology |
33## | Printing and dyeing | 40## | Type/stage of construction project |
34## | Industrial solvents | 41## | Stacking type |
35## | Civil solvents | 42## | Forest types |
36## | Livestock and poultry | 43## | Grassland type |
37## | Cultivated land, crops, compost and population | 44## | Waste type (solid, liquid, gas) |
38## | Surface type | 45## | Liquid/gas fuel production, processing and storage |
39## | Road type | 4600 | Cooking fume |
Source | Primary Industry | Road Mobile | Total | |
---|---|---|---|---|
2014 | Amount (ton) | 999.43 | 7364.03 | 8363.46 |
Ratio (%) | 12% | 88% | 100% | |
2019 | Amount (ton) | 821.637 | 7364.03 | 8185.67 |
Ratio (%) | 10% | 90% | 100% |
Year-Scenario | Zone | NOx | SO2 | NH3 | VOCs | PM2.5 |
---|---|---|---|---|---|---|
2014-S0 | SZ | 100% | 100% | 100% | 100% | 100% |
Other | 100% | 100% | 100% | 100% | 100% | |
2019-S1 | SZ | 65% | 66% | 98% | 58% | 49% |
Other | 100% | 100% | 100% | 100% | 100% | |
2019-S2 | SZ | 65% | 66% | 98% | 58% | 49% |
Other | 83% | 83% | 99% | 79% | 74% | |
2025-S1 | SZ | 60% | 60% | 95% | 50% | 40% |
Other | 83% | 83% | 99% | 79% | 74% | |
2025-S2 | SZ | 55% | 55% | 90% | 45% | 35% |
Other | 80% | 80% | 98% | 75% | 70% | |
2025-S3 | SZ | 50% | 50% | 85% | 40% | 30% |
Other | 78% | 78% | 95% | 73% | 68% | |
2025-S4 | SZ | 45% | 45% | 80% | 35% | 25% |
Other | 75% | 75% | 93% | 70% | 65% | |
2025-S5 | SZ | 25% | 45% | 80% | 15% | 25% |
Other | 65% | 75% | 93% | 60% | 65% | |
2025-S6 | SZ | 45% | 25% | 60% | 35% | 25% |
Other | 75% | 65% | 83% | 70% | 65% | |
2025-S7 | SZ | 25% | 25% | 60% | 15% | 25% |
Other | 65% | 65% | 83% | 60% | 65% |
Year-Scenario | Zone | Meaning of Settings |
---|---|---|
2014-S0 | SZ | Base year emission |
OTHER | Base year emission | |
2019-S1 | SZ | Emission strength compared to 2014, decreasing with the annual ratio presented in Table 2 for SZ |
OTHER | Keep the base year emission | |
2019-S2 | SZ | Emission strength compared to 2014, decreasing with the annual ratio presented in Table 2 for SZ; a scenario achieved the reported air quality (SZ annual PM2.5 = 24 µg/m3), regarded as the calibration |
OTHER | Emission strength compared to 2014, decreasing with the annual ratio presented in Table 2 for OTHER; a scenario achieved the reported air quality (SZ annual PM2.5 = 24 µg/m3), regarded as the calibration | |
2025-S1 | SZ | Emission strength compared to 2014 and decreasing more than that in 2019 for SZ; a process scenario towards the simulated air quality (PM2.5) reaching to 20 µg/m3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2019 for OTHER; a process scenario towards the simulated air quality (PM2.5) reaching to 20 µg/m3 | |
2025-S2 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S1 for SZ; a process scenario towards the simulated air quality (PM2.5) reaching to 20 µg/m3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S1 for OTHER; a process scenario towards the simulated air quality reaching (PM2.5) to 20 µg/m3 | |
2025-S3 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S2 for SZ; a process scenario towards the simulated air quality (PM2.5) reaching to 20 µg/m3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S2 for OTHER; a process scenario towards the simulated air quality (PM2.5) reaching to 20 µg/m3 | |
2025-S4 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S3 for SZ; a scenario achieved the simulated air quality (SZ PM2.5 = 20 µg/m3), regarded as the target |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S3 for OTHER; a scenario achieved the simulated air quality (SZ PM2.5 = 20 µg/m3), regarded as the target | |
2025-S5 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for SZ; a scenario of NOx- and VOCs- sensitive analysis for O3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for OTHER; a scenario of NOx- and VOCs- sensitive analysis for O3 | |
2025-S6 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for SZ; a scenario of SO2- and NH3- sensitive analysis for O3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for OTHER; a scenario of SO2- and NH3- sensitive analysis for O3 | |
2025-S7 | SZ | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for SZ; a scenario of NOx-, VOCs-, SO2-, and NH3- sensitive analysis for O3 |
OTHER | Emission strength compared to 2014 and decreasing more than that in 2025-S4 for OTHER; a scenario of NOx-, VOCs-, SO2-, and NH3-sensitive analysis for O3 |
Documents of Atmosphere Environmental Policies | Word Count (≈1000 in Chinese) | Year of Release | Text-Nr. * |
---|---|---|---|
Medium- and Long Term Plan of Low-carbon Development in Shenzhen (2011–2020) [58] | 25 | 2013 | T-11–20 |
Air Quality Improvement Plan of Shenzhen [59] | 10 | 2013 | T-13 |
Ten Key Tasks for Improving Environmental Quality of Shenzhen in 2015 [60] | 7 | 2015 | T-15 |
Air Quality Improvement Plan of Shenzhen (2017–2020) [50] | 10 | 2017 | T-17–20 |
Sustainable Action Plan of “Shenzhen Blue” in 2018 [61] | 10 | 2018 | T-18 |
Sustainable Action Plan of “Shenzhen Blue” in 2019 [62] | 7 | 2019 | T-19 |
Sustainable Action Plan of “Shenzhen Blue” in 2020 [63] | 17 | 2020 | T-20 |
Energy Types | Calculation Factors (t-CO2/t) |
---|---|
Coal (ton) | 1.9003 |
Crude Oil (ton) | 3.0202 |
Gasoline (ton) | 2.9251 |
Kerosene (ton) | 3.0179 |
Diesel Oil (ton) | 3.0959 |
Fuel Oil (ton) | 3.1705 |
Liquefied Petroleum Gas (ton) | 3.1013 |
Natural Gas (10,000 m3) | 2.1622 × 10 (t-CO2/m3) |
Sector | Representative Items of Energy Consumption | 2014 | 2019 | Trend * of Changes | Trend to 2025 | Reason |
---|---|---|---|---|---|---|
Primary Industry | Sown Areas of Farm Crop (10,000 mu) | 7.38 | 7.77 | ↑ 5.28% | → | Limited by land type in the past several years |
Animal Husbandry-Cattle (head) | 4211 | 2584 | ↓ 38.6% | ↘ or → | Limited by land use pattern | |
Animal Husbandry-Raised Hogs (10,000 heads) | 10.06 | 10.16 | ↗ 0.99% | ↗ or → | Limited by land use pattern | |
Animal Husbandry-Raised Poultry (10,000 heads) | 287.86 | 211.27 | ↓ 26.61% | ↓ | Limited by land use pattern; not famous products | |
Secondary Industry | Fossil energy consumption (excluding coal) in industrial (10,000 tons of SCE) | 427.53 | 342.57 | ↓ 19.9% | ↓ | Industrial restructuring, and will be partially replaced by tertiary industry |
Coal consumption in power generation (10,000 tons of SCE) | 278.40 | 222.57 | ↓ 20.1% | ↘ or → | Rigid demand in Shenzhen, with limitations | |
Road mobile | Motor vehicles (10,000 units) | 319.35 (2015) | 350 | ↑ 9.6% | ↑ | Population continues increasing. |
New energy vehicles (10,000 units) | 4.07 (2015) | 36.28 | ↑ 791.4% | ↑ | The target in the 14th Five-Year Plan of Shenzhen is 100. | |
Oil-fired motor vehicles (10,000 units) | 315.28 (2015) | 313.72 | ↘ 0.5% | ↘ | Not encouraged; new licenses for such vehicles are limited. | |
Volume of Passenger Traffic of Operation Lines (10,000 person-times) | 103,675 | 203,216 | ↑ 96.01% | ↑ | Encouraged in the urban traffic system | |
Number of Passengers Carried of Bus Lines (10,000 person-times) | 225,739 | 158,973 | ↓ 29.58% | ↘ | Encouraged in the urban traffic system, but less convenient than operation lines | |
Non-road mobile | Energy consumption of Construction project (10,000 tons of SCE) | 45.06 | 39.13 | ↓ 13.2% | ↘ or → | 100% urbanization has been completed, but (re)construction in limited spaces still exists |
Aircraft takeoff and landing (sortie) | 286,300 | 369,596 | ↑ 29.1% | ↑ | Towards the regional center at the Pearl River | |
Total Civil Transport Vessels (unit) | 265 | 286 | ↑ 7.9% | ↑ | Ports in Shenzhen are important to Guangdong Province (and China more broadly) in transportation by sea and river | |
Total Berths (unit) | 156 (2017) | 156 | → 0% | ↗ or → | Limited by ecological protection | |
Berths with Shore Power/Total Berths (%) | 14% (2017) | 24% | ↑ 72.7% | ↑ | Highly valued in policy guidance | |
Living and Dust | Total Households at the Year-end (10,000 households) | 89.76 | 116.64 | ↑ 29.95% | ↑ | Population continues increasing. |
Parks, Gardens and Green Areas (hectare) | 98,805 | 101,822 | ↑ 3.1% | ↗ or → | Limited by land use pattern |
Sector | Contribution Rates | |
---|---|---|
Carbon Emission | PM2.5 Emission | |
Road mobile | 51.8% | 41.0% |
Non-road mobile | 13.2% | 11.0% |
Secondary industry for power and heat | 19.1% | 8.0% |
Secondary industry not for energy supply | 3.4% | 15.0% |
In total | 87.6% | 75.0% |
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Yang, S.-Q.; Xing, J.; Chen, W.-Y.; Li, F.; Zhu, Y. Rapid Evaluation of the Effects of Policies Corresponding to Air Quality, Carbon Emissions and Energy Consumption: An Example from Shenzhen, China. Atmosphere 2021, 12, 1221. https://doi.org/10.3390/atmos12091221
Yang S-Q, Xing J, Chen W-Y, Li F, Zhu Y. Rapid Evaluation of the Effects of Policies Corresponding to Air Quality, Carbon Emissions and Energy Consumption: An Example from Shenzhen, China. Atmosphere. 2021; 12(9):1221. https://doi.org/10.3390/atmos12091221
Chicago/Turabian StyleYang, Shi-Qi, Jia Xing, Wen-Ying Chen, Fen Li, and Yun Zhu. 2021. "Rapid Evaluation of the Effects of Policies Corresponding to Air Quality, Carbon Emissions and Energy Consumption: An Example from Shenzhen, China" Atmosphere 12, no. 9: 1221. https://doi.org/10.3390/atmos12091221
APA StyleYang, S. -Q., Xing, J., Chen, W. -Y., Li, F., & Zhu, Y. (2021). Rapid Evaluation of the Effects of Policies Corresponding to Air Quality, Carbon Emissions and Energy Consumption: An Example from Shenzhen, China. Atmosphere, 12(9), 1221. https://doi.org/10.3390/atmos12091221