A Review of Neural Networks for Buildings Occupancy Measurement

Oumayma Dalhoumi, Manar Amayri, N. Bouguila
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Abstract

Building occupancy measurements play a key role to minimize energy consumption and maintain occupants comfort. Accurate measurements support different applications related to the design and operating phases of smart buildings. A review of the usage of Neural Networks in building occupancy detection, counting, and prediction is proposed in this paper. This study discusses the background of the used algorithms and tries to analyze different approaches. The idea is to provide the reader with a deeper understanding of the usage of artificial neural network for building occupancy measurements along with analyzing the performance of each method.
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神经网络在建筑物占用率测量中的应用综述
建筑占用测量在最大限度地减少能源消耗和保持居住者舒适度方面发挥着关键作用。准确的测量支持与智能建筑设计和运营阶段相关的不同应用。本文综述了神经网络在建筑物占用率检测、计数和预测方面的应用。本研究讨论了所使用的算法的背景,并试图分析不同的方法。这个想法是为了让读者更深入地了解人工神经网络在建筑占用测量中的使用,并分析每种方法的性能。
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