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Extracting Baseline Electricity Usage Using Gradient Tree Boosting

机译:使用梯度树提升提取基线用电量

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To understand how specific interventions affect a process observed over time, we need to control for the other factors that influence outcomes. Such a model that captures all factors other than the one of interest is generally known as a baseline. In our study of how different pricing schemes affect residential electricity consumption, the baseline would need to capture the impact of outdoor temperature along with many other factors. In this work, we examine a number of different data mining techniques and demonstrate Gradient Tree Boosting (GTB) to be an effective method to build the baseline. We train GTB on data prior to the introduction of new pricing schemes, and apply the known temperature following the introduction of new pricing schemes to predict electricity usage with the expected temperature correction. Our experiments and analyses show that the baseline models generated by GTB capture the core characteristics over the two years with the new pricing schemes. In contrast to the majority of regression based techniques which fail to capture the lag between the peak of daily temperature and the peak of electricity usage, the GTB generated baselines are able to correctly capture the delay between the temperature peak and the electricity peak. Furthermore, subtracting this temperature-adjusted baseline from the observed electricity usage, we find that the resulting values are more amenable to interpretation, which demonstrates that the temperature-adjusted baseline is indeed effective.
机译:为了了解特定干预措施如何影响随时间推移观察到的过程,我们需要控制影响结果的其他因素。这种捕获除感兴趣因素以外的所有因素的模型通常称为基准。在我们对不同的定价方案如何影响住宅用电量的研究中,基线需要捕获室外温度的影响以及许多其他因素。在这项工作中,我们研究了许多不同的数据挖掘技术,并演示了梯度树增强(GTB)是建立基线的有效方法。在引入新的定价方案之前,我们会对数据进行GTB培训,并在引入新的定价方案之后应用已知温度,以通过预期的温度校正来预测用电量。我们的实验和分析表明,GTB生成的基线模型利用新的定价方案捕捉了两年来的核心特征。与大多数无法捕获每日温度峰值和用电高峰之间的滞后性的基于回归的技术相比,GTB生成的基准能够正确捕获温度峰值和用电高峰之间的延迟。此外,从观察到的用电量中减去该温度调整后的基线,我们发现结果值更易于解释,这表明温度调整后的基线确实有效。

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