利用人工智能进行数据驱动的能源预测分析:提高可持续性的系统调查

Thanh Tuan Le, J. C. Priya, Huu Cuong Le, Nguyen Viet Linh Le, Minh Thai Duong, Dao Nam Cao
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引用次数: 3

摘要

上个世纪,能源消耗和相关污染物排放呈上升趋势,导致能源枯竭和环境污染。要实现全面的可持续发展,就必须优化能源效率,实施高效的能源管理战略。人工智能(AI)作为一种著名的机器学习范式,在控制应用领域获得了巨大的发展,并在各种能源相关领域得到广泛应用。由于人工智能技术善于处理复杂的非线性数据结构,因此,利用人工智能技术解决与能源有关的难题受到青睐。根据初步调查,预测分析在人工神经网络(ANN)算法的推动下,在各领域的能源管理中占据了重要地位。本文通过全面的文献计量分析,深入探讨了 2003 年至 2023 年人工智能在能源研究领域的发展。人工智能模型可用于准确预测能源消耗、负荷曲线和资源规划,确保性能稳定和资源高效利用。这篇综述文章总结了有关在能源管理系统开发中实施人工智能的现有文献。此外,文章还探讨了将人工智能网络应用于能源系统管理的挑战和潜在研究领域。研究表明,人工智能网络能有效解决能源和电力系统之间的集成问题,如太阳能和风能预测、电力系统频率分析和控制以及暂态稳定性评估。基于全面的最新研究,可以推断出人工智能的实施已持续带来超过 25% 的能源削减。此外,本文还讨论了该领域未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing artificial intelligence for data-driven energy predictive analytics: A systematic survey towards enhancing sustainability
The escalating trends in energy consumption and the associated emissions of pollutants in the past century have led to energy depletion and environmental pollution. Achieving comprehensive sustainability requires the optimization of energy efficiency and the implementation of efficient energy management strategies. Artificial intelligence (AI), a prominent machine learning paradigm, has gained significant traction in control applications and found extensive utility in various energy-related domains. The utilization of AI techniques for addressing energy-related challenges is favored due to their aptitude for handling complex and nonlinear data structures. Based on the preliminary inquiries, it has been observed that predictive analytics, prominently driven by artificial neural network (ANN) algorithms, assumes a crucial position in energy management across various sectors. This paper presents a comprehensive bibliometric analysis to gain deeper insights into the progression of AI in energy research from 2003 to 2023. AI models can be used to accurately predict energy consumption, load profiles, and resource planning, ensuring consistent performance and efficient resource utilization. This review article summarizes the existing literature on the implementation of AI in the development of energy management systems. Additionally, it explores the challenges and potential areas of research in applying ANN to energy system management. The study demonstrates that ANN can effectively address integration issues between energy and power systems, such as solar and wind forecasting, power system frequency analysis and control, and transient stability assessment. Based on the comprehensive state-of-the-art study, it can be inferred that the implementation of AI has consistently led to energy reductions exceeding 25%. Furthermore, this article discusses future research directions in this field.  
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