Prophet model for forecasting occupancy presence in indoor spaces using non-intrusive sensors

Alec Parise, Miguel-Ángel Manso-Callejo, Hung Cao, M. Wachowicz
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引用次数: 1

Abstract

Abstract. The Internet of Things is a multi-sensor technology with the unique advantage of supporting non-intrusive and non-device occupancy detection, while also allowing us to explore new forecasting occupancy models. However, forecasting occupancy presence is not a trivial task, since it is still unknown the main criteria in selecting a forecasting modelling approach according to a non-intrusive sensing strategy. Towards this challenge, this paper proposes an analytical workflow developed to support the Prophet model for forecasting occupancy presence in indoor spaces throughout the tasks of sensing, processing, and analysing event triggered data generated from ten non-intrusive sensors, including motion, temperature, luminosity, CO2, TVOC, sound, pressure, accelerometer, gyroscope, and humidity sensors. The usefulness of this analytical workflow is demonstrated with the implementation of an IoT platform for an experiment operating non-intrusive sensing in a classroom. The assessment is made at different time intervals and the results confirm that there is a relationship between the event-count and occupancy presence in such a way that the larger the number of events triggered in an indoor space, the higher the probability of an indoor space being occupied.
使用非侵入式传感器预测室内空间占用率的先知模型
摘要物联网是一种多传感器技术,具有支持非侵入式和非设备占用检测的独特优势,同时也允许我们探索新的占用预测模型。然而,预测入住率并不是一项微不足道的任务,因为根据非侵入式传感策略选择预测建模方法的主要标准仍然未知。针对这一挑战,本文提出了一种分析工作流程,用于支持Prophet模型预测室内空间的占用情况,该模型通过十个非侵入式传感器(包括运动、温度、亮度、二氧化碳、TVOC、声音、压力、加速度计、陀螺仪和湿度传感器)产生的事件触发数据的传感、处理和分析任务。通过在教室中进行非侵入式传感实验的物联网平台的实施,证明了这种分析工作流程的实用性。评估是在不同的时间间隔进行的,结果证实,在事件数和占用率之间存在这样一种关系,即在室内空间中触发的事件数量越多,室内空间被占用的可能性就越高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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