Resilient data-driven non-intrusive load monitoring for efficient energy management using machine learning techniques

IF 1.9 4区 工程技术 Q2 Engineering
Mounica Nutakki, Srihari Mandava
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Abstract

The integration of smart homes into smart grids presents numerous challenges, particularly in managing energy consumption efficiently. Non-intrusive load management (NILM) has emerged as a viable solution for optimizing energy usage. However, as smart grids incorporate more distributed energy resources, the complexity of demand-side management and energy optimization escalates. Various techniques have been proposed to address these challenges, but the evolving grid necessitates intelligent optimization strategies. This article explores the potential of data-driven NILM (DNILM) by leveraging multiple machine learning algorithms and neural network architectures for appliance state monitoring and predicting future energy consumption. It underscores the significance of intelligent optimization techniques in enhancing prediction accuracy. The article compares several data-driven mechanisms, including decision trees, sequence-to-point models, denoising autoencoders, recurrent neural networks, long short-term memory, and gated recurrent unit models. Furthermore, the article categorizes different forms of NILM and discusses the impact of calibration and load division. A detailed comparative analysis is conducted using evaluation metrics such as root-mean-square error, mean absolute error, and accuracy for each method. The proposed DNILM approach is implemented using Python 3.10.5 on the REDD dataset, demonstrating its effectiveness in addressing the complexities of energy optimization in smart grid environments.

Abstract Image

利用机器学习技术进行弹性数据驱动的非侵入式负载监测,实现高效能源管理
智能家居与智能电网的整合带来了诸多挑战,尤其是在有效管理能源消耗方面。非侵入式负载管理(NILM)已成为优化能源使用的可行解决方案。然而,随着智能电网纳入更多分布式能源资源,需求方管理和能源优化的复杂性也随之上升。人们提出了各种技术来应对这些挑战,但不断发展的电网需要智能优化策略。本文利用多种机器学习算法和神经网络架构,探讨了数据驱动的 NILM(DNILM)在设备状态监控和预测未来能耗方面的潜力。文章强调了智能优化技术在提高预测准确性方面的重要性。文章比较了几种数据驱动机制,包括决策树、序列到点模型、去噪自动编码器、递归神经网络、长短期记忆和门控递归单元模型。此外,文章还对不同形式的 NILM 进行了分类,并讨论了校准和负载划分的影响。文章采用均方根误差、平均绝对误差和准确度等评估指标,对每种方法进行了详细的比较分析。使用 Python 3.10.5 在 REDD 数据集上实现了拟议的 DNILM 方法,证明了该方法在解决智能电网环境中复杂的能源优化问题方面的有效性。
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
EURASIP Journal on Advances in Signal Processing
EURASIP Journal on Advances in Signal Processing 工程技术-工程:电子与电气
CiteScore
3.50
自引率
10.50%
发文量
109
审稿时长
2.6 months
期刊介绍: The aim of the EURASIP Journal on Advances in Signal Processing is to highlight the theoretical and practical aspects of signal processing in new and emerging technologies. The journal is directed as much at the practicing engineer as at the academic researcher. Authors of articles with novel contributions to the theory and/or practice of signal processing are welcome to submit their articles for consideration.
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