V2G技术中的人工智能和机器学习:双向转换器、充电系统和智能电网集成控制策略综述

Nagarajan Munusamy, Indragandhi Vairavasundaram
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引用次数: 0

摘要

电动汽车(ev)正在改变交通运输行业,它们与电网的整合对于可持续能源的未来至关重要。电动汽车可以作为分布式能源,帮助调峰、频率管理和电压支持,从而提高电网的稳定性。这篇全面的综述探讨了电动汽车在电网中的变革潜力,重点是车辆到电网(V2 G)技术。我们讨论了不同的双向变换器类型,包括AC-DC和DC-DC变换器,以优化功率流和电压调节。AC-DC变换器将交流电网的电力整流为直流充电,而DC-DC变换器优化直流潮流和电压调节。充电站安全至关重要,电击保护、防火和网络安全措施对确保安全可靠的充电至关重要。该审查还深入研究了区块链管理中的能源交易和安全问题,强调了区块链技术的使用,以解决黑客漏洞。我们探索人工智能(AI)和机器学习(ML)算法优化V2 G性能的潜力。通过利用AI和ML,我们可以提高V2 G系统的效率、可靠性和可扩展性。人工智能预测分析可以预测能源需求和供应,实现主动充电和放电策略。机器学习算法可以优化充电率、电池健康状况和电网稳定性,同时还可以检测异常并防止潜在故障。通过将AI和ML集成到V2 G系统中,我们可以为可持续能源管理、电网弹性和电动汽车采用开辟新的可能性。
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AI and Machine Learning in V2G technology: A review of bi-directional converters, charging systems, and control strategies for smart grid integration
Electric Vehicles (EVs) are transforming the transportation sector, and their integration with the grid is crucial for a sustainable energy future. EVs can serve as distributed energy resources, aiding in peak shaving, frequency management, and voltage support, thus enhancing grid stability. This comprehensive review explores the transformative potential of EVs in the power grid, focusing on Vehicle-to-Grid (V2 G) technology. We discuss different bidirectional Converter types, including AC-DC and DC-DC converters, to optimize power flow and voltage regulation. AC-DC converters rectify AC grid power for DC charging, while DC-DC converters optimize DC power flow and voltage regulation. Charging station safety is paramount, with electrical shock protection, fire protection, and cybersecurity measures essential for ensuring safe and reliable charging. The review also delves into energy trading and security in blockchain management, highlighting the use of blockchain technology to address hacking vulnerabilities. We explore the potential of Artificial Intelligence (AI) and Machine Learning (ML) algorithms to optimize V2 G performance. By leveraging AI and ML, we can improve the efficiency, reliability, and scalability of V2 G systems. AI-powered predictive analytics can forecast energy demand and supply, enabling proactive charging and discharging strategies. ML algorithms can optimize charging rates, battery health, and grid stability while also detecting anomalies and preventing potential faults. By integrating AI and ML into V2 G systems, we can unlock new possibilities for sustainable energy management, grid resilience, and electric vehicle adoption.
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