一种增强智能建筑能源管理的异常检测模型

Muhammad Fahim, A. Sillitti
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引用次数: 9

摘要

智能建筑为监测能源消耗行为提供了绝佳的机会。它可以帮助建筑管理人员发现意想不到的能源使用模式。在这项研究中,我们提出了一个模型,通过分析从智能电表收集的时间数据流来发现异常的能源消耗模式。我们利用径向基函数的支持向量回归来找出实际与期望能耗之间的不匹配。它具有映射数据非线性和预测预期能耗的能力。我们建立能源使用概况,并在其上提供可视化服务。此外,能源概况可用于不同的目标,包括客户分类和负荷预测。在这项初步研究中,我们对从住宅收集的真实电力负荷测量数据集进行了实验。结果表明,本文提出的模型是一种可行的、实用的异常检测方案,为可视化能源消耗行为提供了良好的洞察力。
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An Anomaly Detection Model for Enhancing Energy Management in Smart Buildings
Smart buildings provide an excellent opportunity to monitor the energy consumption behavior. It can assist the building management to find unexpected energy usage patterns. In this research, we present our model to find abnormal energy consumption patterns by analyzing the temporal data streams gathered from smart meters. We investigate support vector regression with radial basis function to find the mismatch between actual and expected energy consumption. It has the ability to map the non-linearity of data and predict expected energy consumption. We build the energy usage profile and provide visualization services over it. Furthermore, energy profiles may be used for different objectives including customer classification and load forecasting. In this preliminary study, we performed the experiments over a real electrical load measurements dataset collected from a dwelling. The obtained results suggest that our proposed model is feasible and practical solution to detect anomalies and provide good insight to visualize the energy consumption behavior.
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