REVIEWING THE ROLE OF ARTIFICIAL INTELLIGENCE IN ENERGY EFFICIENCY OPTIMIZATION

Tosin Michael Olatunde, Azubuike Chukwudi Okwandu, Dorcas Oluwajuwonlo Akande, Zamathula Queen Sikhakhane
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Abstract

Artificial intelligence (AI) is revolutionizing the field of energy efficiency optimization by enabling advanced analysis and control of energy systems. This review provides a concise overview of the role of AI in enhancing energy efficiency. AI technologies, such as machine learning and neural networks, are being increasingly applied to optimize energy consumption in various sectors, including buildings, transportation, and industrial processes. These technologies analyze vast amounts of data to identify patterns and trends, enabling more precise control of energy systems and the prediction of energy demand. One of the key advantages of AI in energy efficiency optimization is its ability to adapt and learn from data, leading to continuous improvement in energy-saving strategies. AI algorithms can optimize energy consumption based on factors such as weather conditions, occupancy patterns, and energy prices, resulting in significant cost savings and environmental benefits. Furthermore, AI enables the integration of renewable energy sources into existing energy systems by predicting renewable energy generation and optimizing its use. This integration helps reduce reliance on fossil fuels and mitigates greenhouse gas emissions, contributing to a more sustainable energy future. However, the implementation of AI in energy efficiency optimization is not without challenges. These include data privacy concerns, the need for specialized skills to develop and deploy AI solutions, and the complexity of integrating AI systems into existing energy infrastructure. Addressing these challenges will be crucial for realizing the full potential of AI in energy efficiency optimization. In conclusion, AI holds great promise for enhancing energy efficiency by enabling more intelligent control and optimization of energy systems. By leveraging AI technologies, organizations can achieve significant energy savings, reduce costs, and contribute to a more sustainable and resilient energy future. Keywords: Role, AI, Energy, Efficiency, Optimization.
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审查人工智能在能效优化中的作用
通过对能源系统进行高级分析和控制,人工智能(AI)正在能源效率优化领域掀起一场革命。本综述简要概述了人工智能在提高能效方面的作用。机器学习和神经网络等人工智能技术正越来越多地应用于优化建筑、交通和工业流程等各个领域的能源消耗。这些技术通过分析大量数据来识别模式和趋势,从而实现对能源系统更精确的控制和对能源需求的预测。人工智能在能效优化方面的主要优势之一是能够适应数据并从中学习,从而不断改进节能策略。人工智能算法可以根据天气条件、占用模式和能源价格等因素优化能源消耗,从而显著节约成本并带来环境效益。此外,人工智能还能预测可再生能源的发电量并优化其使用,从而将可再生能源整合到现有能源系统中。这种整合有助于减少对化石燃料的依赖,减少温室气体排放,从而为实现更可持续的能源未来做出贡献。然而,在能效优化中应用人工智能并非没有挑战。这些挑战包括数据隐私问题、开发和部署人工智能解决方案需要专业技能,以及将人工智能系统集成到现有能源基础设施的复杂性。应对这些挑战对于充分发挥人工智能在能效优化方面的潜力至关重要。总之,通过对能源系统进行更智能的控制和优化,人工智能在提高能效方面大有可为。通过利用人工智能技术,企业可以实现显著的能源节约、降低成本,并为实现更可持续、更具弹性的能源未来做出贡献。关键词作用、人工智能、能源、效率、优化。
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