Hsu Chin-Yu, Wong Pei-Yi, Chern Yinq-Rong, Lung Shih-Chun Candice, Wu Chih-Da
Department of Safety, Health and Environmental Engineering, Ming Chi University of Technology, New Taipei City, Taiwan.
Center for Environmental Sustainability and Human Health, Ming Chi University of Technology, New Taipei City, Taiwan.
J Expo Sci Environ Epidemiol. 2024 Nov;34(6):941-951. doi: 10.1038/s41370-023-00630-1. Epub 2023 Dec 16.
The increase in global temperature and urban warming has led to the exacerbation of heatwaves, which negatively affect human health and cause long-term loss of work productivity. Therefore, a global assessment in temperature variation is essential.
This paper is the first of its kind to propose land-use based spatial machine learning (LBSM) models for predicting highly spatial-temporal variations of wet-bulb globe temperature (WBGT), which is a heat stress indicator used to assess thermal comfort in indoor and outdoor environments, specifically for the main island of Taiwan.
To develop spatiotemporal prediction models for both the working period and noon period, we calculated the WBGT of each weather station from 2001 to 2019 using temperature, humidity, and solar radiation data. These WBGT estimations were then used as the dependent variable for developing the spatiotemporal prediction models. To enhance model performance, we used innovative approaches that combined SHapley Additive exPlanations (SHAP) values for the selection of non-linear variables, along with machine learning algorithms for model development.
When incorporating temperature along with other land-use/land cover predictor variables, the performance of LBSM models was excellent, with an R value of up to 0.99. The LBSM models explained 98% and 99% of the spatial-temporal variations in WBGT for the working and noon periods, respectively, within the complete models. In the temperature-excluded models, the explained variances were 94% and 96% for the working and noon periods, respectively.
WBGT is a common method used by many organizations to access the impact of heat stress on human beings. However, limited studies have mentioned the association between WBGT and health impacts due to the absence of spatiotemporal databases. This study develops a new approach using land-use-based spatial machine learning (LBSM) models to better predict the fine spatial-temporal WBGT levels, with a 50-m × 50-m grid resolution for both working time and noontime. Our proposed methodology could be used in future studies aimed at evaluating the potential long-term loss of work productivity due to the effects of global warming or urban heat island.
全球气温上升和城市变暖导致热浪加剧,这对人类健康产生负面影响,并造成工作生产力的长期损失。因此,对温度变化进行全球评估至关重要。
本文首次提出基于土地利用的空间机器学习(LBSM)模型,用于预测湿球黑球温度(WBGT)的高度时空变化,WBGT是一种热应激指标,用于评估室内和室外环境的热舒适度,特别是针对台湾主岛。
为了开发工作时段和中午时段的时空预测模型,我们利用温度、湿度和太阳辐射数据计算了2001年至2019年每个气象站的WBGT。然后,这些WBGT估计值被用作开发时空预测模型的因变量。为了提高模型性能,我们采用了创新方法,将用于选择非线性变量的SHapley加性解释(SHAP)值与用于模型开发的机器学习算法相结合。
当将温度与其他土地利用/土地覆盖预测变量结合使用时,LBSM模型的性能优异,R值高达0.99。在完整模型中,LBSM模型分别解释了工作时段和中午时段WBGT时空变化的98%和99%。在排除温度的模型中,工作时段和中午时段的解释方差分别为94%和96%。
WBGT是许多组织用于评估热应激对人类影响的常用方法。然而,由于缺乏时空数据库,很少有研究提及WBGT与健康影响之间的关联。本研究开发了一种新方法,使用基于土地利用的空间机器学习(LBSM)模型来更好地预测精细的时空WBGT水平,工作时间和中午时间的网格分辨率均为50米×50米。我们提出的方法可用于未来旨在评估全球变暖和城市热岛效应导致的潜在长期工作生产力损失的研究。