Brousse Oscar, Simpson Charles, Kenway Owain, Martilli Alberto, Scott Krayenhoff E, Zonato Andrea, Heaviside Clare
Institute of Environmental Design and Engineering, University College London, London, United Kingdom.
Centre for Advanced Research Computing, University College London, London, United Kingdom.
J Appl Meteorol Climatol. 2023 Nov;62(11):1539-1572. doi: 10.1175/JAMC-D-22-0142.1.
Urban climate model evaluation often remains limited by a lack of trusted urban weather observations. The increasing density of personal weather sensors (PWSs) make them a potential rich source of data for urban climate studies that address the lack of representative urban weather observations. In our study, we demonstrate that carefully quality-checked PWS data not only improve urban climate models' evaluation but can also serve for bias correcting their output prior to any urban climate impact studies. After simulating near-surface air temperatures over London and south-east England during the hot summer of 2018 with the Weather Research and Forecasting (WRF) Model and its building Effect parameterization with the building energy model (BEP-BEM) activated, we evaluated the modeled temperatures against 402 urban PWSs and showcased a heterogeneous spatial distribution of the model's cool bias that was not captured using official weather stations only. This finding indicated a need for spatially explicit urban bias corrections of air temperatures, which we performed using an innovative method using machine learning to predict the models' biases in each urban grid cell. This bias-correction technique is the first to consider that modeled urban temperatures follow a nonlinear spatially heterogeneous bias that is decorrelated from urban fraction. Our results showed that the bias correction was beneficial to bias correct daily minimum, daily mean, and daily maximum temperatures in the cities. We recommend that urban climate modelers further investigate the use of quality-checked PWSs for model evaluation and derive a framework for bias correction of urban climate simulations that can serve urban climate impact studies.
城市气候模型评估往往因缺乏可靠的城市气象观测数据而受到限制。个人气象传感器(PWS)密度的不断增加,使其成为城市气候研究潜在的丰富数据来源,可解决城市气象观测代表性不足的问题。在我们的研究中,我们证明经过仔细质量检查的PWS数据不仅能改善城市气候模型的评估,还可在任何城市气候影响研究之前用于校正其输出偏差。在用天气研究和预报(WRF)模型模拟2018年炎热夏季伦敦和英格兰东南部近地面气温,并激活其建筑效应参数化与建筑能源模型(BEP - BEM)后,我们针对402个城市PWS评估了模拟温度,并展示了模型冷偏差的异质空间分布,而仅使用官方气象站无法捕捉到这种分布。这一发现表明需要对气温进行空间明确的城市偏差校正,我们使用一种创新的机器学习方法来预测每个城市网格单元中模型的偏差,从而进行了校正。这种偏差校正技术首次考虑到模拟的城市温度遵循与城市面积分数不相关的非线性空间异质偏差。我们的结果表明,偏差校正有利于校正城市中每日最低、每日平均和每日最高气温的偏差。我们建议城市气候模型开发者进一步研究使用经过质量检查的PWS进行模型评估,并推导一个可用于城市气候影响研究的城市气候模拟偏差校正框架。