Probabilistic Optimal Electricity-Hydrogen Energy Flow Based on Compressed Sparse Arbitrarily Polynomial Chaos Expansions
Xia Weiyi1, Ren Zhouyang1, Li Hui2, Meng Jun1, Wang Kun3
1. State Key Laboratory of Power Transmission Equipment & System Security and New Technology Chongqing University Chongqing 400044 China; 2. Department of Electrical and Computer Engineering University of Macau Macau 999078 China; 3. XJ Electric Co. Ltd Xuchang 461000 China
Abstract:Addressing the issues of inadequate exploitation of hydrogen energy collaboration potential and the challenge in balancing accuracy and efficiency of probabilistic solution algorithms, this paper proposes a calculation method for the probabilistic optimal energy flow of electricity-hydrogen systems based on compressed sparse arbitrarily polynomial chaos expansions (CS-aPCE). Firstly, to harness the spatial-temporal collaboration potential of hydrogen energy, a modeling approach for electricity-hydrogen optimal energy flow is introduced incorporating peer-to-peer (P2P) hydrogen collaboration between on-site and off-site hydrogen refueling stations (HRSs). Considering the P2P coupling of inter-station hydrogen flows and bidirectional electricity flows, a P2P collaboration mechanism is proposed for between on-site and off-site HRSs and the power distribution network. Based on Nash bargaining theory, a probabilistic optimal electricity-hydrogen energy flow model is constructed, which incorporates time-delay and discreteness constraints for inter-station hydrogen P2P transactions. This model coordinates multi-stakeholder benefit allocation and electricity-hydrogen price decisions, enhancing feasibility and fairness. Secondly, a probabilistic optimal energy flow solution algorithm for on-site and off-site HRSs and power distribution networks is proposed based on CS-aPCE, aiming to improve the efficiency and accuracy of high-dimensional probability calculations. The core of this algorithm lies in leveraging historical data to drive the collocation points, subsequently calculating key statistical metrics such as expectations and standard deviations through analytical methods, without reliance on prior probabilistic information. To further optimize computational performance, the CS-aPCE algorithm integrates Gaussian quadrature rules to construct high-frequency collocation points and incorporates compressed sparse grid techniques. Effective compression criteria are proposed, and the dimensionality reduction effect and computational accuracy of the algorithm are theoretically proven, ensuring its efficiency and robustness under high-dimensional randomness. The effectiveness of the proposed method is validated through numerical examples, leading to the following conclusions: firstly, the CS-aPCE algorithm presented in this paper can solve high-dimensional and probabilistic electricity-hydrogen energy flow problems rapidly and with high precision. The computation time is merely 10% of that required by the Monte Carlo simulation method, while the errors in expected values and standard deviations are below 4.21%. Furthermore, the computational accuracy for higher-order moments is improved by 60.28% to 156.98% compared to the traditional aPCE method. Secondly, the stationarity threshold exerts a certain influence on the accuracy and efficiency of the CS-aPCE algorithm. A reasonable threshold should be selected by comprehensively considering the stationarity distribution characteristics of random variables. Finally, the electricity-hydrogen optimal energy flow model considering P2P hydrogen collaboration between stations can mobilize the coordination potential of flexible resources within the distributed hydrogen supply network, coordinate the distribution of inter-station hydrogen flows, and achieve fair allocation of benefits among multiple stakeholders.
[1] 徐钢, 薛小军, 张钟, 等. 一种基于电解水制氢及甲醇合成的碳中和能源技术路线[J]. 中国电机工程学报, 2023, 43(1): 191-201. Xu Gang, Xue Xiaojun, Zhang Zhong, et al.A new carbon neutral energy technology route based on electrolytic water to hydrogen and methanol synthesis[J]. Proceedings of the CSEE, 2023, 43(1): 191-201. [2] 陈逸文, 赵晋斌, 李军舟, 等. 电力低碳转型背景下氢储能的挑战与展望[J]. 发电技术, 2023, 44(3): 296-304. Chen Yiwen, Zhao Jinbin, Li Junzhou, et al.Challenges and prospects of hydrogen energy storage under the background of low-carbon transformation of power industry[J].Power Generation Technology, 2023, 44(3): 296-304. [3] Klatzer T, Bachhiesl U, Wogrin S, et al.Ramping up the hydrogen sector: an energy system modeling framework[J]. Applied Energy, 2024, 355: 122264. [4] 香橙会氢能数据库[EB/OL]. [2024-07-18]. http:// www.xch3.com/#/DefaultReport?name=second. [5] 中国汽车工程学会. 节能与新能源汽车技术路线图2.0[M]. 北京: 机械工业出版社, 2024. [6] Zhao Tian, Liu Zhixin, Jamasb T.A business model design for hydrogen refueling stations: a multi-level game approach[J]. International Journal of Hydrogen Energy, 2024, 52: 577-588. [7] 蒙军, 任洲洋, 王皓. 氢能交互下的多区域电氢综合能源系统可靠性提升策略[J]. 电工技术学报, 2024, 39(16): 5011-5027. Meng Jun, Ren Zhouyang, Wang Hao.Reliability improvement strategies of multi-region electricity-hydrogen integrated energy systems considering hydrogen interaction between different regions[J]. Transactions of China Electrotechnical Society, 2024, 39(16): 5011-5027. [8] 程欢, 任洲洋, 孙志媛, 等. 电能-甲醇跨区协同输运下的电-氢耦合系统调度[J]. 电工技术学报, 2024, 39(3): 731-744. Cheng Huan, Ren Zhouyang, Sun Zhiyuan, et al.A dispatching for the electricity-hydrogen coupling systems considering the coordinated inter-region transportation of electricity and methanol[J]. Transactions of China Electrotechnical Society, 2024, 39(3): 731-744. [9] Najafi A, Homaee O, Jasiński M, et al.Integrating hydrogen technology into active distribution networks: The case of private hydrogen refueling stations[J]. Energy, 2023, 278: 127939. [10] 夏威夷, 任洲洋, 潘珍. 考虑子母站灵活互联的分布式供氢网和配电网多主体协调规划方法[J]. 中国电机工程学报, 2024, 44(23): 9187-9200. Xia Weiyi, Ren Zhouyang, Pan Zhen.A multi-agent cooperative planning method for the distributed hydrogen supply network and the power distribution network considering the flexible interconnections between on-site and off-site hydrogen refueling stations[J]. Proceedings of the CSEE, 2024, 44(23): 9187-9200. [11] Sun Qirun, Wu Zhi, Gu Wei, et al.Multi-stage co-planning model for power distribution system and hydrogen energy system under uncertainties[J]. Journal of Modern Power Systems and Clean Energy, 2023, 11(1): 80-93. [12] 马利波, 赵洪山, 余洋, 等. 基于因果序图的氢能一体化电站运行过程建模及能量流控制策略[J]. 电工技术学报, 2024, 39(16): 5220-5237. Ma Libo, Zhao Hongshan, Yu Yang, et al.Operation process modeling and energy flow control strategy of integrated hydrogen energy power station based on causal ordering graph[J]. Transactions of China Electrotechnical Society, 2024, 39(16): 5220-5237. [13] 胡俊杰, 童宇轩, 刘雪涛, 等. 计及精细化氢能利用的综合能源系统多时间尺度鲁棒优化策略[J]. 电工技术学报, 2024, 39(5): 1419-1435. Hu Junjie, Tong Yuxuan, Liu Xuetao, et al.multi-time-scale robust optimization strategy for integrated energy system considering the refinement of hydrogen energy use[J]. Transactions of China Electrotechnical Society, 2024, 39(5): 1419-1435. [14] 王博斐, 肖浩哲, 李国豪, 等. 基于控制目标的氢-电混动系统能量管理策略综述[J]. 发电技术, 2023, 44(4): 452-464. Wang Bofei, Xiao Haozhe, Li Guohao, et al.A review of energy management strategy for hydrogen-electricity hybrid power system based on control target[J]. Power Generation Technology, 2023, 44(4): 452-464. [15] 姜云鹏, 任洲洋, 陈志君, 等. 基于交叉项解耦随机响应面的电-气互联系统低碳化概率最优能量流[J]. 中国电机工程学报, 2023, 43(16): 6205-6218. Jiang Yunpeng, Ren Zhouyang, Chen Zhijun, et al.A low-carbon probabilistic optimal energy flow analysis method for integrated electricity and natural gas systems based on stochastic response surface method improved by decoupling cross-terms[J]. Proceedings of the CSEE, 2023, 43(16): 6205-6218. [16] Jiang Yuewen, Liu Jianshu, Zheng Hongqi.Optimal scheduling of distributed hydrogen refueling stations for fuel supply and reserve demand service with evolutionary transfer multi-agent reinforcement learning[J]. International Journal of Hydrogen Energy, 2024, 54: 239-255. [17] Li Yuanzheng, Yu Chaofan, Liu Yun, et al.Collaborative operation between power network and hydrogen fueling stations with peer-to-peer energy trading[J]. IEEE Transactions on Transportation Electrification, 2023, 9(1): 1521-1540. [18] Singh V, Moger T, Jena D.Probabilistic load flow for wind integrated power system considering node power uncertainties and random branch outages[J]. IEEE Transactions on Sustainable Energy, 2023, 14(1): 482-489. [19] Shen Danfeng, Wu Hao, Xia Bingqing, et al.Arbitrarily sparse polynomial chaos expansion for high-dimensional parametric problems: parametric and probabilistic power flow as an example[J]. IEEE Systems Journal, 2022, 16(3): 4950-4961. [20] 申丹枫. 高维稀疏全局多项式逼近方法及其在电力系统参数化小扰动稳定问题中的应用[D]. 杭州: 浙江大学, 2022. Shen Danfeng.High-dimensional sparse global polynomial approximation method and its applications to power system amall signal stability[D]. Hangzhou: Zhejiang University, 2022. [21] 姜涛, 李春晖, 张儒峰, 等. 基于多项式混沌展开的电力系统概率可用输电能力评估[J]. 中国电机工程学报, 2024, 44(2): 489-504. Jiang Tao, Li Chunhui, Zhang Rufeng, et al.Probabilistic available transfer capacity evaluation of power systems using polynomial chaos expansion[J]. Proceedings of the CSEE, 2024, 44(2): 489-504. [22] 胡潇云. 考虑概率和模糊不确定性的区域电-气联合系统能流及最优能流分析[D]. 重庆: 重庆大学, 2020. Hu Xiaoyun.Energy flow and optimal energy flow analysis of regional integrated electricity and gas system considering probabilistic and possibilistic uncertainties[D]. Chongqing: Chongqing University, 2020. [23] 孙鑫. 计及风电不确定性的可用输电能力计算方法研究[D]. 武汉: 华中科技大学, 2019. Sun Xin.Research on available transfer capability calculation considering wind power uncertainty[D]. Wuhan: Huazhong University of Science and Techno-logy, 2019. [24] 侯慧, 朱韶华, 俞菊芳, 等. 基于高效数据降维的配电网风灾停电用户数量预测模型[J]. 电力系统自动化, 2022, 46(7): 69-76. Hou Hui, Zhu Shaohua, Yu Jufang, et al.prediction model for user number in power outage caused by wind disaster for distribution networks based on high-efficient data dimensionality reduction[J]. Automation of electric power systems, 2022, 46(7): 69-76. [25] Wu Jinhui, Tao Yourui, Han Xu.Polynomial chaos expansion approximation for dimension-reduction model-based reliability analysis method and application to industrial robots[J]. Reliability Engineering & System Safety, 2023, 234: 109145. [26] 胡潇云, 赵霞, 冯欣欣. 基于稀疏多项式混沌展开的区域电-气联合系统全局灵敏度分析[J]. 电工技术学报, 2020, 35(13): 2805-2816. Hu Xiaoyun, Zhao Xia, Feng Xinxin.Global sensitivity analysis for regional integrated electricity and gas system based on sparse polynomial chaos expansion[J]. Transactions of China Electrotechnical Society, 2020, 35(13): 2805-2816. [27] Jiang Yunpeng, Ren Zhouyang, Sun Zhiyuan, et al.A stochastic response surface method based probabilistic energy flow analysis method for integrated electricity and gas systems[J]. IEEE Transactions on Power Systems, 2022, 37(3): 2467-2470. [28] Wang Xiaoting, Wang Xiaozhe, Sheng Hao, et al.A data-driven sparse polynomial chaos expansion meth-od to assess probabilistic total transfer capability for power systems with renewables[C]//2022 IEEE Power & Energy Society General Meeting (PESGM), Denver, CO, USA, 2022: 1. [29] Bai Jinjun, Zhang Gang, Duffy A P, et al.Dimension-reduced sparse grid strategy for a stochastic collocation method in EMC software[J]. IEEE Transactions on Electromagnetic Compatibility, 2018, 60(1): 218-224. [30] Zheng Yi, You Shi, Bindner H W, et al.Optimal day-ahead dispatch of an alkaline electrolyser system concerning thermal-electric properties and state-transitional dynamics[J]. Applied Energy, 2022, 307: 118091. [31] 许康平, 王程, 毕天姝. 基于气网动态代理模型的电-气综合能源系统最优能流计算[J]. 中国电机工程学报, 2023, 43(9): 3415-3429. Xu Kangping, Wang Cheng, Bi Tianshu.Optimal energy flow calculation of integrated electric-gas systems based on gas network dynamic surrogate model[J]. Proceedings of the CSEE, 2023, 43(9): 3415-3429. [32] Zhong Weifeng, Xie Shengli, Xie Kan, et al.Cooperative P2P energy trading in active distribution networks: an MILP-based Nash bargaining solution[J]. IEEE Transactions on Smart Grid, 2021, 12(2): 1264-1276. [33] Van Acker T, Geth F, Koirala A, et al.General polynomial chaos in the current-voltage formulation of the optimal power flow problem[J]. Electric Power Systems Research, 2022, 211: 108472. [34] Sobczyk K, Trcebicki J.Approximate probability distributions for stochastic systems: maximum entropy method[J]. Computer Methods in Applied Mechanics and Engineering, 1999, 168(1/2/3/4): 91-111. [35] Golub G H, Welsch J H.Calculation of Gauss quadrature rules[J]. Mathematics of Computation, 1969, 23(106): 221. [36] Grady W M, Samotyj M J, Noyola A H.The application of network objective functions for actively minimizing the impact of voltage harmonics in power systems[J]. IEEE Transactions on Power Delivery, 1992, 7(3): 1379-1386. [37] Xie Shiwei, Xu Yan, Zheng Xiaodong.On dynamic network equilibrium of a coupled power and transportation network[J]. IEEE Transactions on Smart Grid, 2022, 13(2): 1398-1411. [38] Raju M, Khaitan S K.System simulation of compressed hydrogen storage based residential wind hybrid power systems[J]. Journal of Power Sources, 2012, 210: 303-320. [39] Belgium Elia Transmission. Wind power generation [M/OL]. Belgium, 2024. https://www.elia.be/en/grid-data/.