利用细菌觅食算法和深度强化学习优化智慧城市中的家庭能源管理系统,促进可再生能源整合

IF 1.9 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Mohammed Naif Alatawi
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引用次数: 0

摘要

本文通过细菌觅食元启发式优化(BFMO)算法和深度强化学习(DRL)的新颖应用,对家庭能源管理系统(HEMS)的优化进行了开创性的探索。该研究系统地解决了提高住宅能效这一紧迫挑战,重点关注 HEMS 中的动态设备调度。研究建立了一套稳健的方法,包括智能家居的数据收集、BFMO 算法的实施细节、DRL 技术和综合评估框架。本研究的独特贡献在于有效整合了 BFMO 算法和 DRL,从而在 HEMS 中协调具有能源意识的家用电器调度。BFMO 算法通过模拟细菌的觅食行为,展示了其对波动的能源成本和消费模式的适应性。同时,随着时间的推移,DRL 增强了系统学习和优化调度决策的能力,展示了它们在实际场景中的综合功效。这些算法对趋化、繁殖、消除-分散、蜂群和学习的迭代应用不断产生优化的设备调度。本研究的重点在于评估指标,这些指标说明了 BFMO 和 DRL 与传统 HEMS 相比所能带来的实际效益。总能耗和成本的显著降低,以及峰值需求管理的改善,都体现了这些算法的影响力。此外,研究还深入探讨了提高用户舒适度、整合可再生能源以及 HEMS 的整体稳健性等问题,所有这些都证明了 BFMO 和 DRL 方法的多方面优势。本研究通过介绍和详细说明这些算法,在方法论上做出了贡献,并为该领域的未来研究提供了宝贵的数据集和评估指标。研究结果强调了利用 BFMO 和 DRL 优化 HEMS 的当前和长远意义,满足了参与推进智能电网技术和可持续住宅能源管理的研究人员、从业人员和政策制定者的需求。总之,这项研究将 BFMO 算法和 DRL 确立为 HEMS 中具有能源意识的设备调度的先驱性多功能工具,为追求高效、可持续的住宅能源管理提供了实质性的飞跃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimization of Home Energy Management Systems in Smart Cities Using Bacterial Foraging Algorithm and Deep Reinforcement Learning for Enhanced Renewable Energy Integration

Optimization of Home Energy Management Systems in Smart Cities Using Bacterial Foraging Algorithm and Deep Reinforcement Learning for Enhanced Renewable Energy Integration

This paper presents a pioneering exploration into the optimization of Home Energy Management Systems (HEMS) through the novel application of the Bacterial Foraging Metaheuristic Optimization (BFMO) algorithm and Deep Reinforcement Learning (DRL). The study systematically addresses the pressing challenge of enhancing residential energy efficiency, focusing on dynamic appliance scheduling within HEMS. A robust methodology is established, encompassing data collection from smart homes, implementation details of the BFMO algorithm, DRL techniques, and a comprehensive evaluation framework. The unique contribution of this research lies in the effective integration of the BFMO algorithm and DRL to orchestrate energy-conscious scheduling of home appliances within HEMS. The BFMO algorithm demonstrates its adaptability to fluctuating energy costs and consumption patterns by simulating the foraging behaviour of bacteria. At the same time, DRL enhances the system’s ability to learn and optimize scheduling decisions over time, showcasing their combined efficacy in real-world scenarios. The algorithms’ iterative application of chemotaxis, reproduction, elimination-dispersal, swarming, and learning consistently yields optimized appliance schedules. The main focus of this study resides in the evaluation metrics illustrating the tangible benefits of BFMO and DRL compared to traditional HEMS. Significant reductions in total energy consumption and cost, accompanied by improved peak demand management, exemplify the algorithms’ impact. Furthermore, the study delves into enhancing user comfort, integrating renewable energy sources, and the overall robustness of HEMS, all demonstrating the multifaceted advantages of the BFMO and DRL approaches. This research contributes methodologically by introducing and detailing these algorithms and provides a valuable dataset and evaluation metrics for future research in the domain. The findings underscore the immediate and long-term relevance of optimizing HEMS with BFMO and DRL, catering to researchers, practitioners, and policymakers involved in advancing smart grid technologies and sustainable residential energy management. In summary, this work establishes the BFMO algorithm and DRL as pioneering and versatile tools for energy-conscious appliance scheduling in HEMS, offering a substantial leap forward in the quest for efficient and sustainable residential energy management.

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来源期刊
International Transactions on Electrical Energy Systems
International Transactions on Electrical Energy Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
6.70
自引率
8.70%
发文量
342
期刊介绍: International Transactions on Electrical Energy Systems publishes original research results on key advances in the generation, transmission, and distribution of electrical energy systems. Of particular interest are submissions concerning the modeling, analysis, optimization and control of advanced electric power systems. Manuscripts on topics of economics, finance, policies, insulation materials, low-voltage power electronics, plasmas, and magnetics will generally not be considered for review.
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