通过人工智能优化可再生能源系统:回顾与展望

Kingsley Ukoba, Kehinde O. Olatunji, Eyitayo Adeoye, Tien-Chien Jen, Daniel M. Madyira
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引用次数: 0

摘要

全球向可持续能源的转型促使可再生能源系统(RES)与现有电网的整合激增。为了提高这些系统的效率、可靠性和经济可行性,人工智能(AI)方法的协同应用已成为一条大有可为的途径。本研究全面回顾了可再生能源与人工智能交叉领域的研究现状,重点介绍了关键方法、挑战和成就。它涵盖了人工智能在优化可再生能源不同方面的应用,包括资源评估、能源预测、系统监控、控制策略和并网。研究探讨了机器学习算法、神经网络和优化技术在复杂数据集、增强预测能力和动态调整可再生能源方面的作用。此外,研究还讨论了在可再生能源领域实施人工智能所面临的挑战,如数据可变性、模型可解释性和实时适应性。克服这些挑战的潜在好处包括提高能源产量、降低运营成本和改善电网稳定性。综述最后探讨了该领域的前景和新兴趋势。本文结合人工智能对优化可再生能源的潜在影响,讨论了可解释人工智能、强化学习和边缘计算等人工智能领域的预期进展。此外,本文还设想将人工智能驱动的解决方案整合到智能电网、分散式能源系统和自主能源管理系统的开发中。这项调查为了解当前人工智能在可再生能源领域的应用情况提供了重要见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing renewable energy systems through artificial intelligence: Review and future prospects
The global transition toward sustainable energy sources has prompted a surge in the integration of renewable energy systems (RES) into existing power grids. To improve the efficiency, reliability, and economic viability of these systems, the synergistic application of artificial intelligence (AI) methods has emerged as a promising avenue. This study presents a comprehensive review of the current state of research at the intersection of renewable energy and AI, highlighting key methodologies, challenges, and achievements. It covers a spectrum of AI utilizations in optimizing different facets of RES, including resource assessment, energy forecasting, system monitoring, control strategies, and grid integration. Machine learning algorithms, neural networks, and optimization techniques are explored for their role in complex data sets, enhancing predictive capabilities, and dynamically adapting RES. Furthermore, the study discusses the challenges faced in the implementation of AI in RES, such as data variability, model interpretability, and real-time adaptability. The potential benefits of overcoming these challenges include increased energy yield, reduced operational costs, and improved grid stability. The review concludes with an exploration of prospects and emerging trends in the field. Anticipated advancements in AI, such as explainable AI, reinforcement learning, and edge computing, are discussed in the context of their potential impact on optimizing RES. Additionally, the paper envisions the integration of AI-driven solutions into smart grids, decentralized energy systems, and the development of autonomous energy management systems. This investigation provides important insights into the current landscape of AI applications in RES.
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