Department of Architectural Engineering, Kyung Hee University, 1 Seocheon-dong, Giheung-gu, Yongin-si, Gyeonggi-do 446-701, Republic of Korea.
School of Civil Engineering, The University of Sydney, Sydney, New South Wales, Australia.
Sci Total Environ. 2020 Mar 20;709:136068. doi: 10.1016/j.scitotenv.2019.136068. Epub 2019 Dec 12.
The urban heat island is a vastly documented climatological phenomenon, but when it comes to coastal cities, close to desert areas, its analysis becomes extremely challenging, given the high temporal variability and spatial heterogeneity. The strong dependency on the synoptic weather conditions, rather than on city-specific, constant features, hinders the identification of recurrent patterns, leading conventional predicting algorithms to fail. In this paper, an advanced artificial intelligence technique based on long short-term memory (LSTM) model is applied to gain insight and predict the highly fluctuating heat island intensity (UHII) in the city of Sydney, Australia, governed by the dualistic system of cool sea breeze from the ocean and hot western winds from the vast desert biome inlands. Hourly measurements of temperature, collected for a period of 18 years (1999-2017) from 8 different sites in a 50 km radius from the coastline, were used to train (80%) and test (20%) the model. Other inputs included date, time, and previously computed UHII, feedbacked to the model with an optimized time step of six hours. A second set of models integrated wind speed at the reference station to account for the sea breeze effect. The R ranged between 0.770 and 0.932 for the training dataset and between 0.841 and 0.924 for the testing dataset, with the best performance attained right in correspondence of the city hot spots. Unexpectedly, very little benefit (0.06-0.43%) was achieved by including the sea breeze among the input variables. Overall, this study is insightful of a rather rare climatological case at the watershed between maritime and desertic typicality. We proved that accurate UHII predictions can be achieved by learning from long-term air temperature records, provided that an appropriate predicting architecture is utilized.
城市热岛是一个被广泛记录的气候现象,但对于靠近沙漠地区的沿海城市来说,由于时间变化性和空间异质性很高,其分析变得极具挑战性。强烈依赖天气条件,而不是城市特有的、恒定的特征,阻碍了对重复模式的识别,导致传统的预测算法失败。在本文中,应用了一种基于长短期记忆 (LSTM) 模型的先进人工智能技术,以深入了解和预测澳大利亚悉尼市高度波动的热岛强度 (UHII),该城市受到海洋凉爽海风和内陆广阔沙漠生物群落的炎热西风的双重系统控制。从沿海 50 公里半径内的 8 个不同地点收集了 18 年(1999-2017 年)的每小时温度测量值,用于训练(80%)和测试(20%)模型。其他输入包括日期、时间和之前计算出的 UHII,以优化的 6 小时时间步反馈给模型。第二组模型集成了参考站的风速,以考虑海风的影响。对于训练数据集,R 范围在 0.770 到 0.932 之间,对于测试数据集,R 范围在 0.841 到 0.924 之间,最佳性能恰好与城市热点相对应。出人意料的是,将海风纳入输入变量几乎没有带来好处(0.06-0.43%)。总体而言,这项研究深入了解了海洋性和沙漠性典型性之间分水岭上相当罕见的气候案例。我们证明,通过从长期气温记录中学习,可以实现准确的 UHII 预测,前提是使用适当的预测架构。