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Using Data Mining in Optimisation of Building Energy Consumption and Thermal Comfort Management

机译:利用数据挖掘优化建筑能源消耗和热舒适管理

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Performance monitoring using wireless sensors is now common practice in building operation and maintenance and generates a large amount of building specific data. However, it is difficult for occupants, owners and operators to explore such data and understand underlying patterns. This is especially true in buildings which involve complex interactions, such as ventilation, solar gains, internal gains and thermal mass. Performance monitoring requires collecting data concerning energy consumption and ambient environmental conditions to model and optimise buildings' energy consumption. This paper details the use of data mining techniques in understanding building energy performance of geothermal, solar and gas burning energy systems. The paper is part of an outgoing research into optimisation of building performance under hybrid energy regimes. The objective of the research presented in this paper is to predict comfort levels based on the Heating, Ventilating, and Air Conditioning (HVAC) system performance and external environmental conditions. A C4.5 classification methodology is used to analyse a combination of internal and external ambient conditions. The mining algorithms are used to determine comfort constraints and the influence of external conditions on a building's internal user comfort. To test the performance of classification and its use in prediction, different offices, one to the south and the other to the north of the building are used. Classification rules being developed are analysed for their application to modify control algorithms and to apply results to generalise hybrid system performance. The results of this study can be generalised for an entire building, or a set of buildings, under a single energy network subject to the same constraints.
机译:使用无线传感器的性能监控现在是建设操作和维护方面的常见做法,并产生大量构建特定数据。但是,占用者,业主和运营商很难探索此类数据并理解潜在的模式。在建筑物中尤其如此,这涉及复杂的相互作用,例如通风,太阳能收益,内部收益和热质量。性能监测需要收集有关能源消耗和环境环境条件的数据,以模拟和优化建筑物能耗。本文详细介绍了数据挖掘技术在了解地热,太阳能和燃气燃烧能源系统的建筑能量性能方面。本文是在混合能源制度下进行建筑业业绩优化的传出研究的一部分。本文提出的研究的目的是基于加热,通风和空调(HVAC)系统性能和外部环境条件来预测舒适度。 C4.5分类方法用于分析内部和外部环境条件的组合。采矿算法用于确定舒适约束和外部条件对建筑物内部用户舒适性的影响。为了测试分类的性能及其在预测中的使用,使用不同的办公室,一个到南方,另一个到建筑物的北部。正在开发的分类规则是为了修改控制算法并应用结果以概括混合系统性能的应用程序。本研究的结果可以在一个能量网络上以相同的限制而在整个建筑物或一组建筑物中推广。

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