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Towards Modified Entropy Mutual Information Feature Selection to Forecast Medium-Term Load Using a Deep Learning Model in Smart Homes

机译:在修改熵互信息特征选择中在智能房屋中使用深度学习模型预测中期负荷

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摘要

Over the last decades, load forecasting is used by power companies to balance energy demand and supply. Among the several load forecasting methods, medium-term load forecasting is necessary for grid’s maintenance planning, settings of electricity prices, and harmonizing energy sharing arrangement. The forecasting of the month ahead electrical loads provides the information required for the interchange of energy among power companies. For accurate load forecasting, this paper proposes a model for medium-term load forecasting that uses hourly electrical load and temperature data to predict month ahead hourly electrical loads. For data preprocessing, modified entropy mutual information-based feature selection is used. It eliminates the redundancy and irrelevancy of features from the data. We employ the conditional restricted Boltzmann machine (CRBM) for the load forecasting. A meta-heuristic optimization algorithm Jaya is used to improve the CRBM’s accuracy rate and convergence. In addition, the consumers’ dynamic consumption behaviors are also investigated using a discrete-time Markov chain and an adaptive k-means is used to group their behaviors into clusters. We evaluated the proposed model using GEFCom2012 US utility dataset. Simulation results confirm that the proposed model achieves better accuracy, fast convergence, and low execution time as compared to other existing models in the literature.
机译:在过去十年中,电力公司使用负载预测来平衡能源需求和供应。在几种负载预测方法中,电网维护规划,电价设置以及协调能源共享安排是必需的中期负荷预测。前方电荷的预测提供了电力公司中能源交换所需的信息。对于准确的负载预测,本文提出了一种使用每小时电负载和温度数据来预测每月电荷的中期负荷预测模型。对于数据预处理,使用修改的熵相互信息的特征选择。它消除了数据的特征的冗余和无关。我们采用条件限制的Boltzmann机器(CRBM)进行负载预测。 Meta-heuuristic优化算法Jaya用于提高CRBM的精度和收敛性。此外,使用离散时间马尔可夫链还研究了消费者的动态消耗行为,并且使用自适应K-inse用于将其行为分成簇。我们使用GEFCOM2012 US实用程序数据集进行了评估了所提出的模型。仿真结果证实,与文献中的其他现有模型相比,该拟议模型实现了更好的准确性,快速收敛性和低执行时间。

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