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Decision tree and Parametrized classifier for Estimating occupancy in energy management

机译:决策树和参数化分类器,用于估算能源管理中的占用

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A new kind of supervised learning approach is proposed to determine the number of occupants in a room in order to use these estimate for improved energy management. It introduces the concept of Parametrized classifier. It relies on the predetermined structure of supervised learning classifiers, where any classifier could be used to evaluate this approach. The parameters will be adjusted according to the incoming data sensors (i.e CO2 concentration, acoustic pressure, ...) using a tuning mechanism depends on an optimization process. This paper provides different supervised learning methods (i.e decision tree random forest) to determine the required structure in order to be used in parametrized classifier approach. The structure of decision tree has been chosen which represents the classification rules and limit the depth of the tree to facilitate the generalization process. In order to evaluate the generalization possibilities of a supervised learning approach (i.e. decision tree), it has been chosen to extrapolate results from office H358 to another similar office H355. The knowledge has been extracted from a decision tree built on H358 office then applied and tuned for H355 using parameterized classifier approach. Moreover, experiments implement occupancy estimations and hot water productions control show that energy efficiency can be increased by about 6% over known optimal control techniques and more than 26% over rule-based control besides maintaining the occupant comfort standards. The building efficiency gain is strongly connected with the occupancy estimation accuracy.
机译:提出了一种新的监督学习方法,以确定房间中的乘员数量,以便利用这些估计来改善能源管理。它介绍了参数化分类器的概念。它依赖于监督学习分类器的预定结构,其中可以使用任何分类器来评估这种方法。使用调谐机构根据进入的数据传感器(I.E CO2浓度,声压,声压,......)来调整参数取决于优化过程。本文提供了不同的监督学习方法(即决策树随机林)以确定所需的结构,以便以参数化分类器方法使用。已经选择了决策树的结构,其表示分类规则并限制树的深度以促进泛化过程。为了评估监督学习方法的泛化可能性(即决策树),已选择将来自Office H358的结果推断给另一个类似的办公H355。从H358 Office的决策树中提取了知识,然后使用参数化分类器方法对H355应用和调整。此外,实验实施占用估计和热水产量控制表明,除了维持乘员舒适标准之外,能量效率可以在已知的最佳控制技术上增加约6±6℃。建筑效率增益与占用估计精度强烈连接。

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