用于实时能源需求响应和负荷管理的人工智能和机器学习

Ashraf Muhammad, Aisha Ahmad Ishaq, Igbinovia Osaretin B, Mohammed Bello Idris
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引用次数: 0

摘要

在本纲要中,对人工智能(AI)和机器学习(ML)技术在实时能源需求响应和负载管理范式中的复杂融合进行了详尽的检查。本研究高度重视人工智能和机器学习的普遍意义,阐述了它们在巧妙地协调供需之间微妙的相互作用、精心校准电网稳定性的各个维度以及优化可再生能源固有的无限潜力方面的深刻能力。随后进行了深入的分析,包括人工智能算法的部署,在需求响应优化方面处于领先地位,以及ML技术的明智利用,完美地校准以在负载预测领域的不同时间尺度上提供准确无误的准确性。此外,人工智能与智能设备和物联网(IoT)系统的无缝集成展开,照亮了通往能耗优化的道路,确定了互联设备的复杂挂毯,并产生了智能负载管理的生态系统。值得注意的是,这一全面的阐述深入探讨了对最佳负载管理和资源分配的深远影响,放大了人工智能驱动算法在精确平衡能源利用和巧妙管理渗透到负载分配中的复杂相互依赖关系方面所具有的变革潜力。通过细致的阐释,这本启发性的手稿使读者能够深入了解人工智能和机器学习在动态能源领域所带来的进步和无数好处,为我们所珍视的可再生能源的前所未有的弹性和可持续利用绘制了一条不屈不挠的道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence and Machine Learning for Real-time Energy Demand Response and Load Management
Within this compendium, an exhaustive examination is undertaken to scrutinize the intricate amalgamation of artificial intelligence (AI) and machine learning (ML) techniques within the paradigm of real-time energy demand response and load management. Placing paramount importance on the pervasive significance of AI and ML, this research expounds upon their profound capabilities to adroitly harmonize the delicate interplay between supply and demand, meticulously calibrate the multifarious dimensions of grid stability, and optimize the boundless potential inherent in renewable energy resources. An in-depth analysis ensues, encompassing the deployment of AI algorithms, poised at the vanguard of demand response optimization, and the judicious utilization of ML techniques, flawlessly calibrated to deliver unerring accuracy across varying temporal scales in the realm of load forecasting. Furthermore, the seamless integration of AI into the very fabric of intelligent appliances and Internet of Things (IoT)-enabled systems unfolds, illuminating the path towards energy consumption optimization, ascertaining an intricate tapestry of interconnected devices, and engendering an ecosystem of intelligent load management. Notably, this comprehensive exposition delves into the far-reaching implications for optimal load management and resource allocation, magnifying the transformative potential that AI-driven algorithms hold in precisely balancing energy utilization and deftly managing the intricate interdependencies that permeate load distribution. Through meticulous elucidation, this illuminating manuscript emboldens the reader with insights into the progressive advancements and myriad benefits that the tandem of AI and ML confers upon the dynamic energy sector, charting an unyielding course towards unprecedented resilience and sustainable utilization of our cherished renewable energy resources.
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Journal of Technology Innovations and Energy
Journal of Technology Innovations and Energy Social Sciences and Management Studies-
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期刊介绍: Journal of Technology Innovations and Energy aims to report the latest developments and share knowledge on the various topics related to innovative technologies in energy and environment.
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