1. Introduction
China’s “3060 Dual Carbon” target, announced in 2020, has led to a consistent rise in the installed capacity of renewable energy generating units, specifically wind power and photovoltaic systems. As of the end of 2022, China’s wind power and photovoltaic capacity reached 7576.1 MW, representing 26.7% of the total installed power capacity. However, the variability of renewable energy output, including intermittency, randomness, and fluctuation, has posed challenges to the stable operation and reliability of the power grid. The lack of dynamic regulation ability of the power system and the issue of growing challenges in renewable energy consumption are becoming more prominent [
1,
2]. Electrolytic hydrogen production technology, as a flexible resource that can be adjusted, has advantages such as fast response speed and zero carbon emissions [
3,
4]; moreover, compared with traditional energy storage media, hydrogen energy offers benefits such as high energy density and extended storage duration [
5]. The grid-connected operation of the electrolytic hydrogen production system (EHPS) not only helps to improve the fluctuation of wind and solar power output and reduce the rate of wind and solar abandonment (WSA) caused by insufficient power grid consumption capacity but also can participate in peak shaving auxiliary services (PSAS), enhance the dynamic regulation capability of the system, and ensure the secure, stable, and cost-effective operation of the power grid with a high penetration of renewable energy. Therefore, how to effectively use electrolytic hydrogen production technology, enhance the flexibility and regulation capabilities of renewable energy power plants, meet the demand of multiple target scenarios such as smoothing power fluctuation, increasing renewable energy consumption space, and participate in PSAS have emerged as a pressing issue in need of urgent solutions.
There has been a certain research foundation at home and abroad in the coordinated operation of electrolytic hydrogen production systems and renewable energy generating units. The literature [
6] investigates a hybrid renewable energy system incorporating hydrogen energy, proposing an efficient hydrogen production system energy management. It considers two different hydrogen production methods and establishes a mathematical model for energy conversion between hydrogen and electricity. The literature [
7] explores potential opportunities and risks associated with hydrogen storage systems, assesses the feasibility of using hydrogen storage technology to address the issue of wind and solar energy curtailment in Western China, and proposes two solutions based on fuel cell hydrogen storage systems and hydrogen–natural gas blending. The literature [
8] investigates an isolated DC microgrid with a combined electricity–hydrogen storage system. It proposes a cost-minimizing hybrid storage charging and discharging strategy that ensures voltage and power balance within the microgrid. The literature [
9] aims to maximize system benefits and reduce environmental costs, constructs a wind–solar complementary hydrogen production system scheduling model, and uses a multi-objective golden eagle algorithm to solve the model. The literature [
10] explores refined modeling of hydrogen storage systems and power-to-gas equipment, effectively enhancing the economic performance of integrated energy systems incorporating hydrogen storage. The literature [
11] addresses the optimization and scheduling of hybrid systems with hydrogen storage by considering detailed models of flexible loads and hydrogen storage, aiming for an efficient solution. The objective of [
12] is to optimize the net income of the microgrid within the service area, with the power balance of the microgrid system as a constraint, construct an optimized dispatching model of the wind and solar power generation service area microgrid including battery and hydrogen energy storage units, and the results show the effectiveness of the optimized dispatching strategy. The literature [
13] delves into the capacity configuration of photovoltaic systems combined with hybrid battery–hydrogen storage systems, catering to both electrical and hydrogen loads. It introduces an optimization framework for the energy system servicing the hydrogen load and proposes two energy management strategies to ensure the stable supply of both electricity and hydrogen to the loads. The study in [
14] presents an optimized configuration scheme for a wind–solar–hydrogen storage integrated energy system, considering both economic factors and system output fluctuations. The literature [
15] studies the control mode of the hydrogen production system, proposes an optimization model of the integrated energy system with hydrogen production, and verifies the role of hydrogen production in system economy and renewable energy consumption in simulation software. The literature [
16] based on the wind–hydrogen coupling system develops a capacity optimization model to maximize the revenue of the system and considers the possibility of the system participating in the auxiliary service market to improve system economy. The literature [
17] studies integration of the hydrogen production system into the auxiliary peak shaving service of the thermal power unit and proposes a strategy for its participation. The literature [
18] investigates integrated electric–gas energy systems incorporating green hydrogen, considering their participation in ancillary services and support for high-proportion renewable energy integration.
The aforementioned research mainly focuses on the operation optimization under a single scenario. However, a single objective is insufficient to meet the demands of the power system; hence, multi-objective optimization scheduling is necessary. The literature [
19] proposes a day-ahead optimization scheduling strategy for wind–solar–hydrogen systems, targeting the system’s curtailment rate of wind and solar, power deficit rate, and economic efficiency. The feasibility of its day-ahead optimization scheduling strategy was verified through simulation software. The literature [
20] crafted an adaptable optimization algorithm focused on reducing expenses and enhancing battery storage capacity. Through the creation and testing of a power flow optimization framework, it facilitated increased adoption of photovoltaic power in standalone microgrids, alleviating the difficulty of managing operational expenses alongside microgrid dependability. The literature [
21] proposes an optimized operation focusing on Battery Energy Storage Systems (BESS) and Power-to-Gas (P2G) technologies, aiming to maximize the benefits of Renewable Energy Sources, P2G, and BESS while minimizing facility costs. Optimization is conducted through Mixed-Integer Linear Programming (MILP), and Stochastic Programming (SP) is employed to manage the uncertainty of renewable energy output.
The aforementioned literature discusses multi-objective energy management in microgrid applications and does not focus on renewable energy power plants as the research objective. The multiple objectives in renewable energy power plants mentioned in this paper and the multiple objectives in a microgrid are not the same, but such objectives are necessary for the electricity market and the power system and demonstrate potential in energy management for renewable energy power plants with electrolyte hydrogen units, such as smoothing renewable energy output fluctuations, participating in PSAS. Meanwhile, the random changes in the output of a renewable energy-generating unit make it a random optimization problem under uncertain conditions, requiring special quantification of the randomness of renewable energy output. This paper quantifies the uncertainty of renewable energy output in the form of fuzzy chance constraints and adopts the method of crisp equivalent classes to convert fuzzy chance constraints into deterministic constraints during the solution process.
This paper considers the use of an electrolytic hydrogen production system to smooth the power fluctuations of renewable energy power generation, participate in PSAS, increase the space for renewable energy consumption, reduce the amount of wind and solar discarded, and other application target scenarios, while considering the uncertainty in renewable energy output. It proposes a multi-objective energy management model based on the coordinated optimization of an electrolytic hydrogen production system and renewable energy power generation, and a particle swarm algorithm based on piecewise mapping and improved Levy flight algorithm has been introduced. Finally, the proposed algorithm and model’s effectiveness is validated through case simulations. As a whole, the main contributions of this paper are as follows:
Multi-objective energy management: this paper presents a multi-objective energy management strategy that utilizes electrolysis hydrogen production technology to mitigate the adverse effects caused by renewable energy generation. This strategy enhances the stability of the power system, improves energy utilization, and offers a viable solution to address the challenges of renewable energy generation.
Economic and operational efficiency: this paper’s simulation findings deliver an in-depth assessment of the economic and operational advantages associated with a renewable energy power plant including an electrolytic hydrogen production system. It highlights the potential for considerable progress in energy management for renewable energy generation through the optimization of energy usage, involvement in peak-load adjustment services, and participation in carbon trading activities.
Uncertain programming: this paper quantifies the uncertainty of renewable energy output in the form of fuzzy chance constraints and adopts the method of crisp equivalent classes to convert fuzzy chance constraints into deterministic constraints during the solution process. The issue of unpredictability in renewable energy generation’s output has been addressed, offering a dependable framework for the enhancement of renewable energy systems.
Improved particle swarm algorithm: in this paper, the adoption of the particle swarm algorithm based on piecewise mapping and improved Levy flight algorithm is introduced for achieving comprehensive and effective optimization of the proposed model. This technique contributes to the improvement of the precision and dependability of the energy management approach.
2. Basic Principles of Hydrogen Production from Renewable Energy
The renewable energy power-generating system with an electrolytic hydrogen production system mainly uses the EHPS and the surplus power in the grid-connected consumption process of wind power and photovoltaic power generation to store and utilize in the form of hydrogen energy and chemical energy. Its typical structure is shown in
Figure 1.
This plant consists of wind power generation, photovoltaic power generation, EHPS, and related power electronic interface equipment. Normally, wind power and photovoltaic power are directly consumed by the grid. However, the intermittent, random, and fluctuating nature of wind power and photovoltaic power generation, influenced by the natural environment, poses challenges, when the flexible regulation ability of the power grid is insufficient, it is necessary to use the EHPS to smooth the output power fluctuations of the renewable energy-generating unit, store the surplus output power of the renewable energy-generating unit, and participate in PSAS under certain price incentives.
The EHPS consists of an electrolyzer, a hydrogen compressor, and a hydrogen storage tank. The EHPS is an important device for electricity conversion and energy storage. It receives direct current from the renewable energy-generating unit and converts electrical energy into chemical energy through the electrolysis process. This conversion process allows the electrolyzer to store electrical energy when the demand of the power system is lower than the supply and to release the stored chemical energy for power supply when the demand is higher than the supply.
6. Simulation Analysis
6.1. Case Description
Based on the typical daily wind power and photovoltaic output prediction data of a renewable energy power station in a province in Northeast China, with a sampling period of 15 min, the obtained forecast output curve of wind power and photovoltaic on a typical day is shown in
Figure 3, and the program output and peak shaving command curve are shown in
Figure 4. An EHPS and an electrochemical energy storage system are configured; the installed capacities of wind power and photovoltaics in this region are 25 MW and 200 MW, respectively, the capacity of the electrolytic cell is configured as 25 MW, and the fuel cell capacity is 10 MW; the equipment-related parameters are shown in
Table 2 and the economic parameters are shown in
Table 3.
6.2. Comparative Analysis of PSO Algorithm before and after Improvement
The mathematical model proposed in this paper is solved by the traditional PSO and PLPSO algorithms, respectively. The two algorithms have the same parameters:
,
, the population size is 100, the maximum number of iterations is 15,000, and both algorithms run 100 times under the scenario with a confidence level of 0.9.
Table 4 gives a comparison of the results of the traditional PSO and PLPSO algorithms.
As can be seen from
Table 4, the PLPSO algorithm is superior to the PSO algorithm in terms of running time, average value, and optimal value. Through the calculation of the average value, it can be known that the fitness value of the PLPSO algorithm is 114,057.37 smaller than that of the traditional PSO algorithm, and the convergence accuracy is improved by 17.4%; the mean absolute deviation (MAD) measures the average distance between data points and their average value. A smaller average absolute deviation value indicates that the data are more stable. The MAD of the data obtained by the PLPSO algorithm is 71.9% smaller than that of the PSO, indicating that the PLPSO algorithm is more stable. The convergence curves of the fitness values of the two algorithms are shown in
Figure 5.
As can be seen from
Figure 5, due to the use of piecewise mapping by the PLPSO algorithm, the initial fitness value of the PLPSO algorithm exhibits improvement over the initial fitness value of the traditional PSO algorithm; the PLPSO algorithm terminates convergence around the 5000th generation and the traditional PSO algorithm terminates convergence around the 7500th generation. In comparison to the traditional PSO algorithm, the PLPSO algorithm exhibits an approximately 33.3% faster convergence speed. As evident from the zoomed-in figure, at the end of convergence, the convergence accuracy of the PLPSO algorithm is 14.9% higher than that of the traditional PSO algorithm. Therefore, the PLPSO algorithm is superior to the traditional PSO algorithm.
6.3. Analysis of the Impact of Varying Confidence Levels on Decision-Making Outcomes
The confidence level significantly affects the system’s economy and safety, and different confidence levels will lead to different scheduling results. As the confidence level increases, the system’s rate of WSA and comprehensive benefits are shown in
Table 5.
As shown in
Table 5, as the confidence level continues to increase, the system’s wind and light abandonment rate generally shows a downward trend; under the premise that the installed capacity of the EHPS and the electrochemical energy storage system is certain, when the confidence level is low, due to the insufficient installed capacity of the EHPS and the electrochemical energy storage system, the rate of WSA is larger. To mitigate the rate of WSA, a portion of its capacity is allocated to participate in the PSAS, absorbing excess electricity, thereby reducing the economic benefits brought by engaging in the PSAS. Since the plant still has a high rate of WSA, it causes a large WSA penalty. Therefore, when the confidence level is low, the comprehensive benefits are low; when the confidence level is high, due to the sufficient installed capacity of the EHPS and the electrochemical energy storage system, the plant can easily decrease the rate of WSA and has more capacity to engage in PSAS to obtain the highest peak-shaving subsidy. Therefore, as the confidence level increases, the comprehensive benefits show an increasing trend.
The operation of the EHPS and the electrochemical energy storage system is intricately linked to the confidence level. During the scheduling decision-making process, the scheduler must carefully weigh the plant demand, safety, and economy factors to determine the optimal confidence level.
6.4. Analysis of Energy Management Decision-Making Scheme
Taking the confidence level as an example, using the PLPSO algorithm for solving, we can obtain the scheduling situation of the renewable energy output, the EHPS, and the electrochemical energy storage system 24 h before the day. Among them, the peak-shaving subsidy and the peak-shaving command curve are depicted in
Figure 6.
The renewable energy power plant containing electrolytic hydrogen is derived from the planned output reported to the upper-level power grid, taking into account the time-of-use electricity price, power fluctuation suppression, peak-shaving ladder subsidy, carbon-trading benefits, WSA penalties, and various system operation constraints. It ensures that the actual output fluctuates between 90% and 110% of the planned output. While completing the PSAS, the excess electricity is utilized for hydrogen production (charge) through the EHPS and the electrochemical energy storage system. In the case of insufficient renewable energy output, it discharges. The output curves of the EHPS and the electrochemical energy storage system are displayed in
Figure 7 and
Figure 8, respectively.
As evident from
Figure 7, between 0:00~2:45, 11:00~15:45, and 17:00~19:45, the electrolyzer and fuel cell operate at a certain power to maintain a lower level of hydrogen storage, leaving enough hydrogen storage space for the subsequent periods (3:00~4:45, 16:00~16:45, and 20:00~21:45) to prepare for peak shaving. During the peak-shaving period, the maximum operating power of the electrolyzer is 21.94 MW, the minimum operating power is 14.84 MW, and a total of 68,590
hydrogen is produced; between 5:00 and 8:45, the fuel cell maintains a low-power operation to maintain a higher storage amount of hydrogen in the hydrogen storage tank, preparing for the next period (9:00~10:45) for peak shaving. During the peak-shaving period, the electrolyzer maintains operation at 25% of the rated power (i.e., 6.25 MW) to ensure the electrolyzer operates safely, and the fuel cell is in a high-power working state, with a maximum discharge power of 10 MW, a minimum discharge power of 3.52 MW, a total discharge of 52.02 MW, and a hydrogen consumption of 16,866.8
; between 22:00 and 24:00, the electrolyzer operates at high power and the fuel cell operates at low power to ensure that there is a higher amount of hydrogen storage in the hydrogen storage tank at 24:00 to obtain higher hydrogen sales benefits. In one operating cycle, the electrolyzer produces a total of 244,691.03
hydrogen, the fuel cell consumes a total of 218,985.38
hydrogen, and the final hydrogen storage amount is 29,993.85
, which is close to the maximum hydrogen storage amount and can obtain higher hydrogen sales benefits.
As shown in
Figure 8, during the peak-shaving periods of 3:00~4:45, 16:00~16:45, and 20:00~21:45, the electrochemical energy storage is charged, with a total charge of 23.77 MW in the three peak-shaving periods; during the peak-shaving period of 9:00~10:45, the electrochemical energy storage discharges, with a total discharge of 6.34 MW during the period; the SOC of the electrochemical energy storage is maintained between 0.2 and 0.8, ensuring that the electrochemical energy storage works in a “shallow charge and shallow discharge” state, which helps prolong the service life of the electrochemical energy storage system; the SOC of the electrochemical energy storage is maintained between 0.45 and 0.8 for a total of 66 periods (i.e., 68.75% of a cycle), leaving sufficient power and capacity for scheduling.
Through the operation control of the electrolytic hydrogen production system and the electrochemical energy storage system, the renewable energy power generation system has achieved higher economic benefits under the premise of completing multiple target application scenarios. Among them, the income from PSAS is CNY 524,500, the income from carbon emission reduction is CNY 297,325.2, the income from hydrogen sales is CNY 89,981.55, the cost of electricity purchase is CNY 87,909.82, the penalty for abandoning wind and solar energy is CNY 13,851, and the comprehensive benefit is CNY 810,045.93.
As shown in
Figure 9, after calculation, it is found that there is a positive under-compensation of 48.78 MW and a negative under-compensation of 31.18 MW before suppression. The power fluctuates greatly between 9:00 and 7:00, with a total of 14 time periods exceeding the fluctuation limit of renewable energy grid-connected power, and the over-limit probability is 14.58%, which brings a significant negative impact to the power system; after suppression by the EHPS and the electrochemical energy storage system, all the renewable energy outputs participating in the grid connection meet the grid-connected power fluctuation limit.
6.5. Effect of Electrolytic Hydrogen Production on Economic Benefits
The effectiveness analysis of the three scenarios—no electrolytic hydrogen with electrochemical energy storage, electrolytic hydrogen without electrochemical energy storage, and electrolytic hydrogen with electrochemical energy storage—are shown in
Table 6. The installed capacity of equipment under the three scenarios is as follows:
Scenario 1 (no electrolytic hydrogen with electrochemical energy storage): no electrolyzer, fuel cell, or hydrogen storage tank is set up, and the electrochemical energy storage is 25 MW;
Scenario 2 (electrolytic hydrogen without electrochemical energy storage): in this scenario, the operation and maintenance expenses of the 25 MW electrochemical energy storage in Scenario 3 is proportionally allocated to the EHPS and the fuel cell, among which the electrolyzer is 30 MW, the fuel cell is 10 MW, the hydrogen storage tank is 36,483 , and no electrochemical energy storage is set up;
Scenario 3 (electrolytic hydrogen with electrochemical energy storage): the electrolyzer is 25 MW, the fuel cell is 10 MW, the hydrogen storage tank is 30,000 , and the electrochemical energy storage is 20 MW. This scenario is the scenario of the proposed mathematical model.
As evident from
Table 6, the comprehensive benefit of Scenario 3 proposed in this paper is optimal. Compared with Scenario 1, due to the constraint that electrochemical energy storage cannot perform simultaneous charging and discharging operations, it is impossible to flexibly absorb or release electricity in Scenario 1, and the hydrogen sale benefits brought by electrolytic hydrogen is lacking. Therefore, compared with Scenario 1, Scenario 3 reduces the amount of wind and solar energy discarded by 393.8 MW, reduces the penalty for discarding wind and solar energy by CNY 118,140, increases carbon trading benefits by CNY 10,218.5, and increases comprehensive benefits by CNY 123,247.6. Compared with Scenario 2, due to the lack of electrochemical energy storage and the lower conversion rate of electrolytic hydrogen, Scenario 3 reduces the amount of wind and solar energy discarded by 262.3 MW compared to Scenario 2, reduces the penalty for discarding wind and solar energy by CNY 78,690, and increases comprehensive benefits by CNY 49,214.4. Scenario 3 combines the flexibility of the electrolytic hydrogen production system and the higher conversion rate of the electrochemical energy storage system. Under the premise of completing the multi-objective application scenarios of smoothing power fluctuations, participating in PSAS, and reducing the amount of wind and solar energy discarded, it can still obtain higher comprehensive benefits.
7. Conclusions
This paper focuses on a renewable energy power plant that includes hydrogen production through electrolysis. It considers the use of electrolytic hydrogen to smooth out fluctuations in renewable energy power generation, participate in peak-shaving auxiliary services, and increase the absorption space of renewable energy. It proposes a multi-objective energy management model and algorithm based on the co-ordinated optimization of electrolytic hydrogen and renewable energy power generation. Through simulation, based on the analysis of the operating conditions and safety factors of various facilities in the power station, the advantages of this model for power system safety were carefully studied. With participation in the power market, the system’s economics have been greatly improved.
At the same time, the PLPSO algorithm improves the convergence accuracy, convergence speed, and stability of the proposed model compared with the basic algorithm.
The research presented in this paper offers a valuable theoretical reference for energy management in renewable energy-generating plants that include an electrolytic hydrogen production system.
The next step will be to further study the capacity configuration of renewable energy power stations that include an electrolytic hydrogen production system, providing technical support for the installation and construction of renewable energy power stations.