An indoor airflow distribution predictor using machine learning for a real-time healthy building monitoring system in the tropics

Faridah Faridah, Sentagi Sesorya Utami, Dinta Dwi Agung Wijaya, R. Yanti, Wahyu Sukestyastama Putra, Billie Adrian
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Abstract

Indoor air quality is the foundation of a good indoor environment. The COVID-19 pandemic further highlighted the importance of providing real-time airflow distribution information within the Building Environmental Monitoring System (BEMS) to minimize the risk of infectious airborne transmission. This paper discusses the process of developing a predictive model for indoor airflow distribution prediction with indoor and outdoor input parameters using machine learning and its implementation in healthy BEMS for a classroom in the tropical climate region of Yogyakarta, Indonesia. This paper encompassed field measurement and simulation involving outdoor climate conditions and the operational status of the classroom’s windows, Air Conditioning units, and fans. Three machine learning models were constructed using OLS, LASSO, and Ridge methods. Datasets for the modeling were generated from CFD model simulations in IES VE and were assessed for correlation. The mean temperature and velocity differences between the CFD model simulation and measurement results are 0.21°C and 0.083 m/s, respectively. Outdoor climate conditions and the operational status of the classroom’s utilities significantly influence the indoor airflow distribution characteristics. The three models indicate a relatively poor performance, where the classroom had a relatively low sensitivity to input changes. However, the best model performance was achieved using the LASSO method, with average values from post-normalization of [Formula: see text] and Root Mean Square Error (RMSE) of 0.336 and 0.077, respectively. The model was implemented in healthy BEMS on the “Platform for Healthy and Energy Efficient Building Management System.” Practical Application: This research proposed a machine learning model of indoor airflow characteristics of a classroom in Yogyakarta. The proposed model can be adapted to produce monitoring systems that best represent the related conditions. The method can be adopted to develop a relatively simple, low-cost sensor or model to monitor an indoor environment. Future studies may explore the results of the real-world implementation in a case study.
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利用机器学习的室内气流分布预测器,用于热带地区健康建筑实时监测系统
室内空气质量是良好室内环境的基础。COVID-19 大流行进一步凸显了在楼宇环境监测系统(BEMS)中提供实时气流分布信息以最大限度降低传染性空气传播风险的重要性。本文讨论了利用机器学习技术开发室内外输入参数的室内气流分布预测模型的过程,以及该模型在印度尼西亚日惹热带气候地区一间教室的健康 BEMS 系统中的应用。本文包括实地测量和模拟,涉及室外气候条件以及教室窗户、空调设备和风扇的运行状态。使用 OLS、LASSO 和 Ridge 方法构建了三个机器学习模型。建模数据集来自 IES VE 中的 CFD 模型模拟,并进行了相关性评估。CFD 模型模拟和测量结果之间的平均温度和速度差异分别为 0.21°C 和 0.083 米/秒。室外气候条件和教室公用设施的运行状况对室内气流分布特征有很大影响。三个模型的性能相对较差,教室对输入变化的敏感度相对较低。不过,采用 LASSO 方法的模型性能最佳,其标准化后的平均值[公式:见正文]和均方根误差(RMSE)分别为 0.336 和 0.077。该模型已在 "健康节能楼宇管理系统平台 "的健康 BEMS 中实现。实际应用:本研究提出了日惹一间教室室内气流特征的机器学习模型。提出的模型可用于生产最能代表相关条件的监测系统。该方法可用于开发相对简单、低成本的传感器或模型,以监测室内环境。未来的研究可在案例研究中探索实际应用的结果。
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