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Advanced Statistical Models for Modeling Hot Water Consumption Using a Connected Boiler

机译:使用连接锅炉模拟热水消耗的高级统计模型

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摘要

In this paper we propose to carry out a proof of concept on the prediction of hot water by using the following four techniques: a supervised learning, a semi-supervised learning, a clustering and finally, we propose a new prediction approach based on the use of the Dempster Shafer algorithm (DST). We proposed several parameterizations of our algorithms used in order to obtain a better prediction of the consumption of hot water. In particular, to calculate the mass functions of the Dempster Shafer algorithm, we have subdivided the space of the features that were extracted from the data into cells. In order to simplify the calculations, we applied a criterion based on the use of correlation coefficients that make it possible to eliminate the least informative focal elements from the frame of discernment. The results show that the prediction of hot water consumption has reached more than 95% and 96% of classification accuracy using DST and Deep Neural Network algorithms (DNN) respectively. This study also shows that the use of the Dempster Shafer theory is effective especially since it allows us to take into account the uncertainty on the data coming from the Chaudière sensors that we used.
机译:在本文中,我们建议使用以下四种技术对热水的预测进行概念验证:一种有监督的学习,一种半监督的学习,一种聚类,最后,我们提出一种基于使用的新的预测方法Dempster Shafer算法(DST)的功能。我们提出了几种算法参数化,以便更好地预测热水的消耗量。特别是,为了计算Dempster Shafer算法的质量函数,我们将从数据中提取的特征空间细分为单元。为了简化计算,我们应用了基于相关系数的准则,该准则可以从识别框架中消除信息量最少的焦点元素。结果表明,使用DST和深度神经网络算法(DNN)预测的热水消耗分别达到了95%以上和96%的分类精度。这项研究还表明,使用Dempster Shafer理论是有效的,特别是因为它使我们能够考虑到我们所使用的Chaudière传感器数据的不确定性。

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