A Scheduling Algorithm for Appliance Energy Consumption Optimization in a Dynamic Pricing Environment

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Hamza Touhs, Anas Temouden, A. Khallaayoun, Mhammed Chraibi, Hamza El Hafdaoui
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Abstract

This research delves into the intricate landscape of energy scheduling and optimization within microgrid and residential contexts, addressing pivotal aspects such as real-time scheduling systems, challenges in dynamic pricing, and an array of optimization strategies. This paper introduces a cutting-edge scheduling algorithm, harnessing the power of artificial neural networks driven by Long Short-Term Memory Networks, and highlights its exceptional performance, boasting a significantly lower Mean Absolute Error of 5.32 compared to conventional models. This heightened predictive accuracy translates into tangible improvements in both energy efficiency and cost savings. This study underscores the delicate balance between user satisfaction, cost reduction, and efficient scheduling for sustainable energy consumption, showcasing a remarkable 38% enhancement in optimized schedules. Further granularity revealed substantial gains in energy efficiency and cost reduction across different scheduling intensities: 11.11% in light schedules, 20.09% in medium schedules, and an impressive 38.85% in heavy schedules. However, this research does not shy away from highlighting challenges related to data quality, computational demands, and generalizability. Future research trajectories encompass the development of adaptive models tailored to diverse data qualities, enhancements in scalability for and adaptability to various microgrid configurations, the integration of real-time data, the accommodation of user preferences, the exploration of energy storage and renewables, and an imperative focus on enhancing algorithm transparency.
动态定价环境下的家电能耗优化调度算法
这项研究深入探讨了微电网和住宅范围内错综复杂的能源调度和优化问题,解决了实时调度系统、动态定价挑战和一系列优化策略等关键问题。本文介绍了一种先进的调度算法,该算法利用了由长短期记忆网络驱动的人工神经网络的力量,并强调了其卓越的性能,与传统模型相比,其平均绝对误差显著降低至 5.32。这种预测准确性的提高在能源效率和成本节约方面都带来了实实在在的改善。这项研究强调了用户满意度、降低成本和高效调度之间的微妙平衡,以实现可持续的能源消耗,在优化调度方面取得了 38% 的显著提升。进一步细化后发现,在不同的调度强度下,能源效率和成本降低都有大幅提高:在轻度调度中提高了 11.11%,在中度调度中提高了 20.09%,在重度调度中提高了 38.85%,令人印象深刻。不过,这项研究并没有回避与数据质量、计算需求和通用性相关的挑战。未来的研究方向包括:开发针对不同数据质量的自适应模型、增强对各种微电网配置的可扩展性和适应性、整合实时数据、适应用户偏好、探索能源存储和可再生能源,以及重点提高算法的透明度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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