Assessment of Occupancy Estimators for Smart Buildings

C. Chitu, G. Stamatescu, Iulia Stamatescu, V. Sgârciu
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引用次数: 4

Abstract

Dense distributed sensor systems deployed to monitor and control the built environment open up wide application areas for improving the quality of life through smart spaces. By implementing these systems in residential or commercial buildings, more efficient, pervasive, real-time and finally more robust decision support is achieved. As one of the key tasks, high accuracy occupancy detection and estimation within buildings offers the potential to improve HVAC utilization while reducing maintenance needs, enhancing energy savings for building operators as well as a more suitable thermal comfort for occupants. In this context the main contribution of the paper consists of an assessment of supervised machine learning techniques namely random forests and extreme machine learning neural networks for indirect occupancy profile estimation. The methods are applied on a benchmarking dataset of indoor carbon dioxide measurements and ventilation damper positions as collected from the building information system. The impact of data preprocessing through filtering and smoothing as well as hardware constraints and cloud distributed processing for algorithm deployment are also discussed. We highlight key challenges and discuss how the learned models can be integrated for online operation to improve energy efficiency.
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智能建筑占用估算器的评估
密集的分布式传感器系统用于监测和控制建筑环境,为通过智能空间提高生活质量开辟了广阔的应用领域。通过在住宅或商业建筑中实施这些系统,可以实现更高效、更普遍、更实时、最终更强大的决策支持。作为关键任务之一,建筑物内的高精度占用检测和估计提供了提高暖通空调利用率的潜力,同时减少维护需求,为建筑运营商节省能源,并为居住者提供更合适的热舒适性。在这种情况下,本文的主要贡献包括对监督机器学习技术的评估,即随机森林和用于间接占用概况估计的极端机器学习神经网络。这些方法应用于从建筑信息系统收集的室内二氧化碳测量和通风阻尼器位置的基准数据集。讨论了滤波和平滑数据预处理以及硬件约束和云分布式处理对算法部署的影响。我们强调了主要挑战,并讨论了如何将学习到的模型集成到在线操作中以提高能源效率。
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