首页> 外文期刊>Arabian journal of geosciences >Scale matching of multiscale digital elevation model (DEM) data and the Weather Research and Forecasting (WRF) model: a case study of meteorological simulation in Hong Kong
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Scale matching of multiscale digital elevation model (DEM) data and the Weather Research and Forecasting (WRF) model: a case study of meteorological simulation in Hong Kong

机译:多尺度数字高程模型(DEM)数据和天气研究与预报(WRF)模型的尺度匹配:以香港​​气象模拟为例

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摘要

It is becoming easier to combine geographical data and dynamic models to provide information for problem solving and geographical cognition. However, the scale dependencies of the data, model, and process can confuse the results. This study extends traditional scale research in static geographical patterns to dynamic processes and focuses on the combined scale effect of multiscale geographical data and dynamic models. The capacity for topographical expression under the combined scale effect was investigated by taking multiscale topographical data and meteorological processes in Hong Kong as a case study. A meteorological simulation of the combined scale effect was evaluated against data from Hong Kong Observatory stations. The experiments showed that (1) a digital elevation model (DEM) using 3 arc sec data with a 1 km resolution Weather Research and Forecasting (WRF) model gives better topographical expression and meteorological reproduction in Hong Kong; (2) a fine-scale model is sensitive to the resolution of the DEM data, whereas a coarse-scale model is less sensitive to it; (3) better topographical expression alone does not improve weather process simulation; and (4) uncertainty arising from a scale mismatch between the DEM data and the dynamic model may account for 38 % of the variance in certain meteorological variables (e.g., temperature). This case study gives a clear explanation of the significance and implementation of scale matching for multiscale geographical data and dynamic models.
机译:结合地理数据和动态模型以提供解决问题和地理认知的信息变得越来越容易。但是,数据,模型和过程的规模依存关系可能会使结果混淆。这项研究将静态地理模式的传统规模研究扩展到动态过程,并着重于多尺度地理数据和动态模型的组合规模效应。以香港的多尺度地形数据和气象过程为例,研究了在联合尺度效应下的地形表达能力。结合香港天文台的数据,对组合尺度效应的气象模拟进行了评估。实验表明:(1)使用3弧秒数据和1 km分辨率的天气研究和预报(WRF)模型的数字高程模型(DEM)在香港具有更好的地形表现和气象再现性; (2)精细模型对DEM数据的分辨率敏感,而粗糙模型对它的敏感性较低; (3)仅靠良好的地形表达并不能改善天气过程模拟; (4)DEM数据与动态模型之间的比例失配引起的不确定性可能占某些气象变量(例如温度)方差的38%。此案例研究清楚地说明了多尺度地理数据和动态模型的尺度匹配的重要性和实现。

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