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Predicting electricity energy consumption: A comparison of regression analysis, decision tree and neural networks

机译:预测电能消耗:回归分析,决策树和神经网络的比较

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摘要

This study presents three modeling techniques for the prediction of electricity energy consumption. In addition to the traditional regression analysis, decision tree and neural networks are considered. Model selection is based on the square root of average squared error. In an empirical application to an electricity energy consumption study, the decision tree and neural network models appear to be viable alternatives to the stepwise regression model in understanding energy consumption patterns and predicting energy consumption levels. With the emergence of the data mining approach for predictive modeling, different types of models can be built in a unified platform: to implement various modeling techniques, assess the performance of different models and select the most appropriate model for future prediction.
机译:本研究提出了三种用于预测电能消耗的建模技术。除了传统的回归分析之外,还考虑了决策树和神经网络。模型选择基于平均平方误差的平方根。在电力能耗研究的经验应用中,决策树和神经网络模型似乎是逐步回归模型的可行替代方案,有助于理解能耗模式和预测能耗水平。随着用于预测建模的数据挖掘方法的出现,可以在一个统一的平台中构建不同类型的模型:实施各种建模技术,评估不同模型的性能并选择最合适的模型用于将来的预测。

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