考虑可再生能源发电和插电式电动汽车的多能源协同系统分布式调度:基于电平的耦合优化方法

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Linxin Zhang , Zhile Yang , Qinge Xiao , Yuanjun Guo , Zuobin Ying , Tianyu Hu , Xiandong Xu , Sohail Khan , Kang Li
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引用次数: 0

摘要

多能源协同系统集成了高普及率的大规模插电式电动汽车、分布式可再生能源发电和电池储能系统,在减少电网对传统化石燃料的依赖方面具有巨大潜力。然而,插电式电动汽车的随机充电特性和光伏发电的不确定性可能会给电网带来额外负担,影响供需平衡。为解决这一问题,明智的调度优化提供了有效的解决方案。在本研究中,考虑到插电式电动汽车和间歇性光伏发电的充放电管理,开发了一种新型多能源协同系统调度框架,用于解决电网不稳定和不可靠问题。这提出了一个大规模的混合整数问题,需要一个强大而有效的优化器。为解决非线性大规模高耦合机组承诺问题,提出了新的基于二进制水平的学习优化算法。为了考察所提方案的可行性,我们进行了数值实验,考虑了多种规模的机组数量和各种情况。最后,实验结果证实,所提出的调度框架在解决机组承诺问题时是合理有效的,可以实现 3.3% 的成本降低,在处理大规模能源优化问题时表现出卓越的性能。经过验证,插电式电动汽车、分布式可再生能源发电和电池储能系统的集成可在高峰期减少 192.72 兆瓦机组的输出功率,从而提高电网稳定性。因此,优化能源利用和分配将成为未来电力系统不可或缺的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Distributed scheduling for multi-energy synergy system considering renewable energy generations and plug-in electric vehicles: A level-based coupled optimization method

Distributed scheduling for multi-energy synergy system considering renewable energy generations and plug-in electric vehicles: A level-based coupled optimization method

Multi-energy synergy systems integrating high-penetration large-scale plug-in electric vehicles, distributed renewable energy generations, and battery energy storage systems have great potential to reduce the reliance of the grid on traditional fossil fuels. However, the random charging characteristics of plug-in electric vehicles and the uncertainty of photovoltaics may impose an additional burden on the grid and affect the supply–demand equilibrium. To address this issue, judicious scheduling optimization offers an effective solution. In this study, considering charge and discharge management of plug-in electric vehicles and intermittent photovoltaics, a novel Multi-energy synergy systems scheduling framework is developed for solving grid instability and unreliability issues. This formulates a large-scale mixed-integer problem, which calls for a powerful and effective optimizer. The new binary level-based learning optimization algorithm is proposed to address nonlinear large-scale high-coupling unit commitment problems. To investigate the feasibility of the proposed scheme, numerical experiments have been carried out considering multiple scales of unit numbers and various scenarios. Finally, the results confirm that the proposed scheduling framework is reasonable and effective in solving unit commitment problems, can achieve 3.3% cost reduction and demonstrates superior performance in handling large-scale energy optimization problems. The integration of plug-in electric vehicles, distributed renewable energy generations, and battery energy storage systems is verified to reduce the output power of 192.72 MW units during peak periods to improve grid stability. Therefore, optimizing energy utilization and distribution will become an indispensable part of future power systems.

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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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