可穿戴设备和机器学习算法评估室内热感觉:计量分析

Q3 Engineering
Gloria Cosoli, Silvia Angela Mansi, Gian Marco Revel, Marco Arnesano
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引用次数: 1

摘要

个人舒适建模被认为是建筑室内热舒适管理中最有前途的解决方案。研究了使用可穿戴传感器实时测量生理信号,以训练建筑物监测和控制的舒适模型。在测量结果评价中,要考虑不同的不确定度源,并对其进行加权,以达到所要求的可靠性。本研究提出了一个基于可穿戴传感器(即Empatica E4智能腕带和MUSE头带)获取多模态信号(即光体积脉搏图- PPG,皮肤电活动- EDA,皮肤温度- SKT和脑电图- EEG)的个人舒适模型(PCM)开发示例,以及建模过程的计量学特征。从76个受试者的实验活动中收集的数据开始,利用不同的机器学习(ML)算法来创建能够预测人体热感觉(TS)的舒适度模型。通过蒙特卡罗模拟研究传感器不确定性的影响是最准确的模型。结果表明,随机森林模型是表现最好的模型,准确率为0.86。蒙特卡罗模拟方法证明了该模型对输入特征的测量不确定性具有很强的鲁棒性(模型精度的扩展不确定性:±0.04,k = 2)。这证实了仅利用生理信号推导受试者TS的可能性;测量不确定度主要受PPG和EDA信号的影响。这种调查可能导致PCMs的发展,可在控制系统中利用,以优化受试者的福祉和建筑能源效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wearable devices and Machine Learning algorithms to assess indoor thermal sensation: metrological analysis
Personal comfort modeling is considered the most promising solution for indoor thermal comfort management in buildings. The use of wearable sensors is investigated for the real-time measurement of physiological signals to train comfort models for buildings monitoring and control. To achieve the required reliability, different uncertainty sources should be considered and weighted in the measurement results evaluation. This study presents an example of personal comfort model (PCM) development based on wearable sensors (i.e., Empatica E4 smartband and MUSE headband) acquiring multimodal signals (i.e., photoplethysmographic – PPG, electrodermal activity – EDA, skin temperature – SKT, and electroencephalographic – EEG ones), together with a metrological characterization of the modeling procedure. Starting from the data collected within an experimental campaign on 76 subjects, different Machine Learning (ML) algorithms were exploited to create comfort models capable of predicting the human thermal sensation (TS). The most accurate model was considered to investigate the impact of sensors uncertainty through a Monte Carlo simulation. Results showed that the Random Forest model is the best performing one (accuracy: 0.86). Monte Carlo simulation method proved that the model is very robust towards measurement uncertainties of input features (expanded uncertainty of the model accuracy: ± 0.04, k = 2). This confirms the possibility to derive the subject’s TS exploiting only physiological signals; measurement uncertainty is influenced mostly by PPG and EDA signals. This kind of investigation could lead to the development of PCMs, exploitable within control systems to optimize subjects’ well-being and building energy efficiency.
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来源期刊
Acta IMEKO
Acta IMEKO Engineering-Mechanical Engineering
CiteScore
2.50
自引率
0.00%
发文量
75
期刊介绍: The main goal of this journal is the enhancement of academic activities of IMEKO and a wider dissemination of scientific output from IMEKO TC events. High-quality papers presented at IMEKO conferences, workshops or congresses are seleted by the event organizers and the authors are invited to publish an enhanced version of their paper in this journal. The journal also publishes scientific articles on measurement and instrumentation not related to an IMEKO event.
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