Residential Power Load Prediction in Smart Cities using Machine Learning Approaches

Waleed Alomoush, T. A. Khan, Mehwish Nadeem, J. Janjua, Anwaar Saeed, Atifa Athar
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Abstract

Accurate load prediction plays a vital role in energy planning and load management and offers a distinctive opportunity for applying advanced analytics. Stake holders of power markets gains benefits with better integration of load management, smart grid control and metering in smart cities. It helps to improve efficiency of power load consumption. The paper proposed hybrid method based on Machine learning for predicting residential power load. We positioned correlated feature extraction and applied with system model to generate predictive results. The loss function and RMSE were calculated for accuracy of the prediction results.
基于机器学习方法的智慧城市居民用电负荷预测
准确的负荷预测在能源规划和负荷管理中起着至关重要的作用,并为应用高级分析提供了独特的机会。电力市场的利益相关者通过在智能城市中更好地整合负荷管理、智能电网控制和计量而受益。有助于提高电力负荷消耗效率。提出了一种基于机器学习的住宅用电负荷预测混合方法。我们定位相关特征提取,并应用系统模型生成预测结果。计算了预测结果的损失函数和均方根误差。
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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