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Anomaly Detection in IoT-Based PIR Occupancy Sensors to Improve Building Energy Efficiency

机译:基于IoT的PIR占用传感器中的异常检测可提高建筑物的能效

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In this paper, we study the real-world data streams from hundreds of digital passive infrared (PIR) occupancy sensors that are integrated into LED lighting fixtures in a recent Internet-of-Things (IoT) Building Energy Management System (BEMS) deployment in a large building in California. We first develop a data-driven method to detect anomalies in these data streams. We then use the results to enhance energy efficiency in the building and also open up opportunities to offer demand response services. In addition, we provide load forecasting for the lighting load in this building using a deep neural network architecture with high accuracy. We show that our approach can result in about 30% load reduction across lighting fixtures.
机译:在本文中,我们研究了数百个数字无源红外(PIR)占用传感器的真实数据流,这些传感器已集成到最近在物联网(IoT)建筑能源管理系统(BEMS)中部署的LED照明灯具中。加利福尼亚的一幢大建筑物。我们首先开发一种数据驱动的方法来检测这些数据流中的异常。然后,我们使用结果来提高建筑物的能源效率,并提供机会来提供需求响应服务。此外,我们使用深度神经网络架构以高精度为该建筑物的照明负荷提供负荷预测。我们证明了我们的方法可以使照明灯具的负载减少约30%。

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