Impact and optimization of vehicle charging scheduling on regional clean energy power supply network management

Q2 Energy
Penghui Xu, Xiaobo Wang, Zhichao Li
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Abstract

Driven by the global energy transition, the widespread use of electric vehicles has profoundly reshaped the transportation landscape and thrown many problems to the power system, and coordinating their charging needs with renewable energy generation has become a key part of ensuring the stable operation of regional clean energy power supply networks. This study focuses on the problem of vehicle charging dispatch to make a breakthrough, deeply analyzes the effect and efficiency of the clean energy grid, and then proposes a series of targeted measures to effectively improve the operational efficiency and reliability of the energy system. The comprehensive model integrates electric vehicle charging stations, distributed photovoltaic power generation systems, wind farms, and battery energy storage devices and enables the charging process to be accurately controlled with real-time monitoring and intelligent algorithms. In particular, the demand forecasting model based on machine learning effectively solves the dilemma of matching the charging load with a clean energy supply. Experimental data strongly confirms that the optimization strategy has led to a 15% reduction in peak load on the grid, a 23% increase in the proportion of clean energy consumption, and a 10% reduction in total electricity consumption. For policymakers, these achievements can be used as a guide to help formulate energy policies and build a framework for adapting to the development of new energy. For practitioners, they serve as a guide to energy planning, grid dispatch, and technology research and development to improve effectiveness. The research promotes the growth of green energy, optimizes the energy structure, lays the foundation for a low-carbon and environmentally friendly society, affects the economy, environment, culture, and other fields, and becomes a key force driving sustainable development.

车辆充电调度对区域清洁能源供电网络管理的影响及优化
在全球能源转型的推动下,电动汽车的广泛使用深刻重塑了交通运输格局,也给电力系统带来了诸多问题,其充电需求与可再生能源发电的协调已成为保证区域清洁能源供电网络稳定运行的关键环节。本研究围绕车辆充电调度问题进行突破,深入分析清洁能源电网的效果和效率,进而提出一系列有针对性的措施,有效提高能源系统的运行效率和可靠性。该综合模型集成了电动汽车充电站、分布式光伏发电系统、风电场、电池储能装置,通过实时监控和智能算法,实现充电过程的精确控制。其中,基于机器学习的需求预测模型有效地解决了充电负荷与清洁能源供应的匹配困境。实验数据有力地证实,优化策略使电网峰值负荷降低15%,清洁能源消费比例提高23%,总用电量降低10%。对于政策制定者来说,这些成果可以作为指导,帮助制定能源政策,构建适应新能源发展的框架。对于从业者来说,它们可以作为能源规划、电网调度和技术研发的指南,以提高效率。该研究促进了绿色能源的增长,优化了能源结构,奠定了低碳、环境友好型社会的基础,影响着经济、环境、文化等领域,成为推动可持续发展的关键力量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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