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Learning Dominant Usage from Anomaly Patterns in Building Energy Traces

机译:从建筑能量迹线中的异常模式中学习主要用法

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Building energy usage is growing at a rapid pace under increasing urbanisation tendencies in both the developing and the developed world, at high environmental and social costs. Decentralised control architectures for local energy grids are seen as a key solution to optimise energy management at the local level. As the infrastructure for data collection, communication and embedded computing becomes more capable, new online algorithms can be deployed for forecasting and anomaly detection of large consumers. Fine grained tendencies and unusual artefacts can be thus exploited to improve local and grid level energy management. Our two-fold approach first leverages the Matrix Profile technique for time series data mining to build a dataset of anomaly patterns from public building energy traces and extract analytics information. Subsequently the labeled dataset is used in a supervised learning classification model to discriminate between various related dominant usage patterns. The case study is carried out on a public dataset of academic buildings. The approach can prove useful for exploiting complementary energy consumption patterns in a decentralised control structure towards grid balancing and economic operation.
机译:在发展中国家和发达国家,随着城市化趋势的发展,建筑能源的使用正在迅速增长,并且环境和社会成本很高。用于本地能源网格的分散控制体系结构被视为在本地一级优化能源管理的关键解决方案。随着数据收集,通信和嵌入式计算的基础架构变得越来越强大,可以将新的在线算法部署到大型消费者的预测和异常检测中。因此,可以利用细粒度的趋势和不寻常的伪像来改善本地和电网级别的能源管理。我们的两种方法首先利用Matrix Profile技术进行时间序列数据挖掘,以从公共建筑能源迹线中构建异常模式的数据集并提取分析信息。随后,将标记的数据集用于监督学习分类模型中,以区分各种相关的主要使用模式。案例研究是在学术建筑物的公共数据集上进行的。该方法可证明有助于在分散控制结构中利用互补的能源消耗模式实现电网平衡和经济运营。

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