深度学习方法在负荷预测中的应用综述

Abdulaziz Almalaq, G. Edwards
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引用次数: 151

摘要

在过去的十年里,公用事业行业对智能电网进行了广泛的投资。他们认为这是未来的电网,信息和电力以双向流动的方式传递。SG有许多人工智能(AI)应用,如人工神经网络(ANN)、机器学习(ML)和深度学习(DL)。近年来,深度学习已成为人工智能在时间序列负荷预测等领域应用的热点。本文介绍了文献中常用的深度学习算法在SG和电力系统负荷预测中的应用。本调查的目的是探讨深度学习在电力系统和智能电网负荷预测中的不同应用。此外,比较了所审查应用的RMSE和MAE的准确性结果,并表明使用卷积神经网络CNN与k-means算法在RMSE方面有很大的百分比降低。
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A Review of Deep Learning Methods Applied on Load Forecasting
The utility industry has invested widely in smart grid (SG) over the past decade. They considered it the future electrical grid while the information and electricity are delivered in two-way flow. SG has many Artificial Intelligence (AI) applications such as Artificial Neural Network (ANN), Machine Learning (ML) and Deep Learning (DL). Recently, DL has been a hot topic for AI applications in many fields such as time series load forecasting. This paper introduces the common algorithms of DL in the literature applied to load forecasting problems in the SG and power systems. The intention of this survey is to explore the different applications of DL that are used in the power systems and smart grid load forecasting. In addition, it compares the accuracy results RMSE and MAE for the reviewed applications and shows the use of convolutional neural network CNN with k-means algorithm had a great percentage of reduction in terms of RMSE.
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