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Correlation between Indoor Environmental Data and Biometric Parameters for the Impact Assessment of a Living Wall in a ZEB Lab

机译:ZEB实验室中用于评估活动墙的室内环境数据与生物特征参数之间的相关性

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摘要

Users’ satisfaction in indoor spaces plays a key role in building design. In recent years, scientific research has focused more and more on the effects produced by the presence of greenery solutions in indoor environments. In this study, the Internet of Things (IoT) concept is used to define an effective solution to monitor indoor environmental parameters, along with the biometric data of users involved in an experimental campaign conducted in a Zero Energy Building laboratory where a living wall has been installed. The growing interest in the key theory of the IoT allows for the development of promising frameworks used to create datasets usually managed with Machine Learning (ML) approaches. Following this tendency, the dataset derived by the proposed infield research has been managed with different ML algorithms in order to identify the most suitable model and influential variables, among the environmental and biometric ones, that can be used to identify the plant configuration. The obtained results highlight how the eXtreme Gradient Boosting (XGBoost)-based model can obtain the best average accuracy score to predict the plant configuration considering both a selection of environmental parameters and biometric data as input values. Moreover, the XGBoost model has been used to identify the users with the highest accuracy considering a combination of picked biometric and environmental features. Finally, a new Green View Factor index has been introduced to characterize how greenery has an impact on the indoor space and it can be used to compare different studies where green elements have been used.
机译:用户对室内空间的满意度在建筑设计中起着关键作用。近年来,科学研究越来越关注室内环境中存在的绿色解决方案所产生的影响。在这项研究中,物联网(IoT)概念用于定义一种有效的解决方案,以监控室内环境参数,以及在零能耗建筑实验室中开展活动的用户的生物识别数据,该实验室的活动墙已被拆除。已安装。对物联网关键理论的兴趣日益浓厚,这允许开发有前途的框架来创建通常使用机器学习(ML)方法管理的数据集。遵循这种趋势,由提出的现场研究得出的数据集已使用不同的ML算法进行了管理,以便在环境和生物特征识别中确定最合适的模型和影响变量,以用于识别工厂配置。获得的结果突出了基于eXtreme Gradient Boosting(XGBoost)的模型如何在选择环境参数和生物特征数据作为输入值的情况下如何获得最佳的平均准确度得分来预测工厂配置。此外,考虑到所选择的生物特征和环境特征,XGBoost模型已被用来以最高的准确度识别用户。最后,引入了一种新的“绿色视野因子”指数,以表征绿色植物如何对室内空间产生影响,并且可以用来比较使用了绿色元素的不同研究。

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