Personalized low-cost thermal comfort monitoring using IoT technologies

Carlos Chillón Geck , Hayder Alsaad , Conrad Voelker , Kay Smarsly
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Abstract

Thermal comfort plays an essential role in the well-being and productivity of occupants. Typically, thermal comfort is assessed either through surveys completed by building occupants or through sensor data that is analyzed using thermal comfort models. Automating comfort surveys and data collection processes reduce the risk of information loss, providing more accurate and personalized thermal comfort assessments over longer periods of time. To this end, this paper presents the design and implementation of a thermal comfort monitoring system consisting of low-cost hardware components and using IoT technologies. The system consists of intelligent wireless sensor nodes that collect and process environmental data, a portable main station that integrates and stores data, and a digital survey that provides feedback from building occupants. To ensure accuracy, the low-cost hardware components of the intelligent sensor nodes are calibrated in a climate chamber, using high-precision sensors for reference. After calibration, the system is deployed in a field test where several intelligent sensor nodes collect environmental data in an office, while occupants complete the digital thermal comfort survey. In addition, thermal comfort indexes are computed by the intelligent sensor nodes and compared with the feedback of each building occupant. The results indicate that the low-cost thermal comfort monitoring system successfully collects and integrates thermal comfort data from the intelligent sensor nodes and the digital survey, being able to create personalized thermal comfort profiles. In future work, the system can be used in large-scale thermal comfort surveys, to develop personalized thermal comfort models and to control personalized comfort systems.
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利用物联网技术进行个性化低成本热舒适度监测
热舒适度对居住者的健康和工作效率起着至关重要的作用。通常情况下,热舒适度是通过建筑使用者完成的调查或使用热舒适度模型分析的传感器数据来评估的。舒适度调查和数据收集过程的自动化可降低信息丢失的风险,在更长的时间内提供更准确和个性化的热舒适度评估。为此,本文介绍了一种热舒适度监测系统的设计和实施,该系统由低成本的硬件组件组成,并采用了物联网技术。该系统由收集和处理环境数据的智能无线传感器节点、整合和存储数据的便携式主站以及提供建筑使用者反馈的数字调查表组成。为确保准确性,智能传感器节点的低成本硬件组件在气候室中进行校准,并使用高精度传感器作为参考。校准后,系统被部署到现场测试中,由多个智能传感器节点收集办公室内的环境数据,同时由用户完成数字热舒适度调查。此外,智能传感器节点还计算了热舒适度指数,并将其与每个建筑使用者的反馈进行比较。结果表明,低成本热舒适度监测系统成功地收集并整合了来自智能传感器节点和数字调查的热舒适度数据,能够创建个性化的热舒适度档案。在未来的工作中,该系统可用于大规模热舒适度调查、开发个性化热舒适度模型和控制个性化舒适度系统。
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