利用新型混合优化技术实施考虑到电动汽车的多阶段预测性能源管理战略

IF 11.3 1区 化学 Q1 CHEMISTRY, PHYSICAL
M.H. Elkholy , Tomonobu Senjyu , Mahmoud M. Gamil , Mohammed Elsayed Lotfy , Dongran Song , Gul Ahmad Ludin , Ahmad Shah Irshad , Taghreed Said
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引用次数: 0

摘要

本文为孤立微电网设计了一种基于人工智能(AI)的新型能源管理策略,该策略分为三个层次。在初始阶段,不使用人工智能。它采用了精确、快速响应的微控制器,即 FPGA。在各种运行条件下,对 FPGA 的性能进行了实验研究。在第二阶段,人工智能在提高系统可靠性和经济效益方面发挥了关键作用。多目标蛇形优化(SO)算法被用来在预定义的约束条件下实现较高的技术和经济性能。这一阶段涉及三个目标函数,重点是最大限度地降低运行成本、供电损失概率(LPSP)和假负载的电能损耗。在第三阶段,提出了一种基于协调模型预测控制的新型控制策略,作为拟议的人工智能嵌入式能源管理战略的一部分。提出了一种结合多层前馈神经网络(MFFNN)和 SO 算法的混合优化算法,用于预测备用电源的输出功率。所考虑的微电网由电池储能系统 (BESS)、电动汽车 (EV) 电池和燃料电池 (FC) 组成的混合备用系统提供支持。通过与许多其他算法的比较,对该混合算法的有效性进行了评估,旨在评估其在准确预测备用电源输出功率方面的性能。结果表明,在微电网中使用人工智能实现高效运行和能源管理是可行的。所提出的 MFFNN-SO 算法性能最佳,因为 FC、BESS 和 EV 的归一化均方根误差(NRMSE)分别约为 0.1296 %、0.0094 % 和 0.1304 %。SO 算法显著降低了 6.3361% 的运营成本,最终运营成本为 166.4811 美元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of a multistage predictive energy management strategy considering electric vehicles using a novel hybrid optimization technique
In this paper, a novel artificial intelligence (AI)-based energy management strategy across three levels is designed for isolated microgrids. During the initial phase, AI is not employed. A precise and rapid-response microcontroller, namely the FPGA, is utilized. The performance of the FPGA is experimentally investigated under various operation conditions. In the second phase, AI plays a crucial role in enhancing both the reliability and economic effectiveness of the system. The multi-objective snake optimization (SO) algorithm is employed to attain high technical and economic performance within predefined constraints. Three objective functions are involved in this phase, focusing on the minimization of operational costs, loss of power supply probability (LPSP), and electrical energy losses in the dummy load. In the third level, a novel control strategy-based coordinated model predictive control is presented as part of the proposed AI-embedded energy management strategy. A hybrid optimization algorithm combining the multilayer feed-forward neural networks (MFFNN) and SO algorithms is proposed to predict the output power of backup sources. The microgrid under consideration is supported by a hybrid backup system comprising battery energy storage systems (BESS), electric vehicle (EV) batteries, and fuel cells (FCs). The effectiveness of this hybrid algorithm is evaluated through comparison with many other algorithms, aiming to assess its performance in accurately predicting the output power of backup sources. The results show the feasibility of using AI to achieve efficient operation and energy management in microgrids. The proposed MFFNN-SO algorithm achieves the best performance, as the normalized root mean square error (NRMSE) for FCs, BESS, and EV is about 0.1296 %, 0.0094 %, and 0.1304 %, respectively. The SO algorithm achieves a notable 6.3361% reduction in operating costs, resulting in a final operational cost of 166.4811 $.
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来源期刊
ACS Catalysis
ACS Catalysis CHEMISTRY, PHYSICAL-
CiteScore
20.80
自引率
6.20%
发文量
1253
审稿时长
1.5 months
期刊介绍: ACS Catalysis is an esteemed journal that publishes original research in the fields of heterogeneous catalysis, molecular catalysis, and biocatalysis. It offers broad coverage across diverse areas such as life sciences, organometallics and synthesis, photochemistry and electrochemistry, drug discovery and synthesis, materials science, environmental protection, polymer discovery and synthesis, and energy and fuels. The scope of the journal is to showcase innovative work in various aspects of catalysis. This includes new reactions and novel synthetic approaches utilizing known catalysts, the discovery or modification of new catalysts, elucidation of catalytic mechanisms through cutting-edge investigations, practical enhancements of existing processes, as well as conceptual advances in the field. Contributions to ACS Catalysis can encompass both experimental and theoretical research focused on catalytic molecules, macromolecules, and materials that exhibit catalytic turnover.
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