迈向可持续能源管理:利用可解释的人工智能实现透明和高效的决策

IF 7 2区 工程技术 Q1 ENERGY & FUELS
Fatma M. Talaat , A.E. Kabeel , Warda M. Shaban
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引用次数: 0

摘要

随着世界能源需求的增长,可持续能源管理技术比以往任何时候都更加重要。人工智能(AI)在这一领域显示出巨大的前景。但人工智能决策的不透明性挑战了信任和问责制,尤其是在可持续能源管理等关键领域。这项研究提出了一种名为生态友好可解释人工智能(EcoXAI)的创新算法,以解决可持续能源管理中涉及的挑战。拟议的EcoXAI包括五个部分:数据收集和预处理、特征工程和选择、可解释人工智能(XAI)、决策、利益相关者参与和报告。EcoXAI使用XAI来促进可再生能源领域的透明和高效决策。特别是当涉及到太阳能和风能的预测时,EcoXAI算法为可持续能源管理中的主要问题提供了一个开创性的答案。通过使用XAI, EcoXAI通过为利益相关者提供透明和准确的决策工具,弥合了复杂机器学习(ML)模型与人类理解之间的差距。研究结果突出了EcoXAI的惊人潜力。在比较几种ML技术对太阳能发电的预测时,可以看到XGBoost和Linear Regression模型表现得非常好,准确率分别为99.394%和99.387%。EcoXAI卓越的准确性使其能够产生极其可靠的预测,使利益相关者能够明智地管理资源并做出明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards sustainable energy management: Leveraging explainable Artificial Intelligence for transparent and efficient decision-making
Sustainable energy management techniques are now more important than ever as the world’s energy demand rises. Artificial Intelligence (AI) has showed a great deal of promise in this domain. But trust and accountability are challenged by AI decision-making’s opaqueness, especially in crucial areas like sustainable energy management. This research offers an innovative algorithm called Eco-friendly Explainable Artificial Intelligence (EcoXAI) to address the challenges involved in sustainable energy management. The proposed EcoXAI comprises five components: data collection and preprocessing, feature engineering and selection, Explainable Artificial Intelligence (XAI), decision-making, and stakeholder engagement and reporting. EcoXAI uses XAI to promote transparent and efficient decision-making in the field of renewable energy sources. Especially when it comes to projecting solar and wind energy, the suggested EcoXAI algorithm provides a ground-breaking answer to the major problems in sustainable energy management. Through the use of XAI, EcoXAI bridges the gap between complex Machine Learning (ML) models and human comprehension by providing stakeholders with transparent and accurate decision-making tools. The research results highlight EcoXAI’s amazing potential. When comparing several ML techniques for solar power forecasting, it can be seen that the XGBoost and Linear Regression models perform exceptionally well, with respective accuracy rates of 99.394% and 99.387%. EcoXAI’s exceptional accuracy enables it to produce extremely dependable projections, empowering stakeholders to manage resources wisely and make well-informed decisions.
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来源期刊
Sustainable Energy Technologies and Assessments
Sustainable Energy Technologies and Assessments Energy-Renewable Energy, Sustainability and the Environment
CiteScore
12.70
自引率
12.50%
发文量
1091
期刊介绍: Encouraging a transition to a sustainable energy future is imperative for our world. Technologies that enable this shift in various sectors like transportation, heating, and power systems are of utmost importance. Sustainable Energy Technologies and Assessments welcomes papers focusing on a range of aspects and levels of technological advancements in energy generation and utilization. The aim is to reduce the negative environmental impact associated with energy production and consumption, spanning from laboratory experiments to real-world applications in the commercial sector.
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