Artificial Intelligence for thermal energy storage enhancement: A Comprehensive Review

T. Chekifi, M. Boukraa, Amine Benmoussa
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Abstract

Thermal energy storage (TES) plays a pivotal role in a wide array of energy systems, offering a highly effective means to harness renewable energy sources, trim energy consumption and costs, reduce environmental impact, and bolster the adaptability and dependability of power grids. Concurrently, artificial intelligence (AI) has risen in prominence for optimizing and fine-tuning TES systems. Various AI techniques, such as particle swarm optimization, artificial neural networks, support vector machines, and adaptive neuro-fuzzy inference systems, have been extensively explored in the realm of energy storage. This study provides a comprehensive overview of how AI, across diverse applications, categorizes, and optimizes energy systems. The study critically evaluates the effectiveness of these AI technologies, highlighting their impressive accuracy in achieving a range of objectives. Through a thorough analysis, the paper also offers valuable recommendations and outlines future research directions, aiming to inspire innovative concepts and advancements in leveraging AI for TESS. By bridging the gap between TES and AI techniques, this study contributes significantly to the progress of energy systems, enhancing their efficiency, reliability, and sustainability. The insights gleaned from this research will be invaluable for researchers, engineers, and policymakers, aiding them in making well-informed decisions regarding the design, operation, and management of energy systems integrated with TES.
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人工智能用于增强热能储存:全面回顾
热能储存(TES)在各种能源系统中发挥着举足轻重的作用,为利用可再生能源、降低能耗和成本、减少对环境的影响以及增强电网的适应性和可靠性提供了一种高效的手段。与此同时,人工智能(AI)在优化和微调 TES 系统方面的作用也日益突出。粒子群优化、人工神经网络、支持向量机和自适应神经模糊推理系统等各种人工智能技术已在储能领域得到广泛探索。本研究全面概述了人工智能在各种应用中如何对能源系统进行分类和优化。研究对这些人工智能技术的有效性进行了批判性评估,强调了它们在实现一系列目标方面令人印象深刻的准确性。通过深入分析,论文还提出了宝贵的建议,并概述了未来的研究方向,旨在激发创新理念,推动人工智能在 TESS 中的应用。通过弥合 TES 与人工智能技术之间的差距,本研究为能源系统的进步做出了重大贡献,提高了能源系统的效率、可靠性和可持续性。从这项研究中获得的见解对研究人员、工程师和政策制定者来说非常宝贵,有助于他们在设计、运行和管理集成了 TES 的能源系统时做出明智的决策。
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