Sensitivity of Rainfall to Cumulus Parameterization Schemes from a WRF Model over the City of Douala in Cameroon

R. Tanessong, A. J. K. Mbienda, G. M. Guenang, S. Kaissassou, L. Djiotang, D. Vondou, H. B. Lekina, R. H. Mvondo Balla, W. Pokam, P. Igri
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引用次数: 1

Abstract

With the recurrence of extreme weather events in Central Africa, it becomes imperative to provide high-resolution forecasts for better decision-making by the Early warning systems. This study assesses the performance of the Weather Research and Forecasting (WRF) model to simulate heavy rainfall that affected the city of Douala in Cameroon during 19–21 August 2020. The WRF model is configured with two domains with horizontal resolutions of 15 and 5[Formula: see text]km, 33 vertical levels using eight cumulus parameterization schemes (CPSs). The WRF model performance is assessed by investigating the agreement between simulations and observations. Categorical and deterministic statistics are used, which include the probability of detection (POD), the success ratio (SR), the equitable threat score (ETS), the pattern correlation coefficient (PCC), the root mean square error (RMSE), the mean absolute error (MAE), and the BIAS. K-index is finally used to assess the capacity of the WRF model to predict the instability of the atmosphere in Douala during the above-mentioned period. It is found that (1) The POD, SR and ETS decrease when the threshold increases, showing the difficulty of the WRF model to predict and locate heavy rainfall events; (2) There are important differences in the rainfall area simulated by the eight CPSs; (3) The BIAS is negative for the eight CPSs, implying that all of the CPSs tested underestimate the rainfall over the study area; (4) Some of the CPSs have good agreement with observations, especially the new modifed Tiedtke and the Betts–Miller–Janjic schemes; (5) The K-index, an atmospheric instability index, is well predicted by the eight CPSs tested in this work. Overall, the WRF model exhibits a strong ability for rainfall simulation in the study area. The results point out that heavy rainfall events in tropical areas are very sensitive to CPSs and study domain. Therefore, sensitivity tests studies should be multiplied in order to identify most suitable CPSs for a given area.
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喀麦隆杜阿拉市上空WRF模型降雨对积云参数化方案的敏感性
随着中非极端天气事件的再次发生,必须提供高分辨率的预报,以便预警系统更好地做出决策。本研究评估了天气研究和预测(WRF)模型的性能,以模拟2020年8月19日至21日影响喀麦隆杜阿拉市的强降雨。WRF模型配置有两个区域,水平分辨率分别为15和5[公式:见正文]km,33个垂直水平,使用八个积云参数化方案(CPSs)。WRF模型的性能是通过研究模拟和观测之间的一致性来评估的。使用类别和确定性统计,包括检测概率(POD)、成功率(SR)、公平威胁得分(ETS)、模式相关系数(PCC)、均方根误差(RMSE)、平均绝对误差(MAE)和BIAS。K指数最终用于评估WRF模型预测上述期间杜阿拉大气不稳定性的能力。研究发现:(1)POD、SR和ETS随着阈值的增加而降低,表明WRF模型难以预测和定位强降雨事件;(2) 八个CPSs模拟的降雨面积存在重要差异;(3) 八个CPSs的BIAS为阴性,这意味着所有测试的CPSs都低估了研究区域的降雨量;(4) 一些CPSs与观测结果有很好的一致性,特别是新修改的Tiedtke和Betts–Miller–Janjic方案;(5) K指数是一种大气不稳定指数,通过本工作中测试的八个CPSs可以很好地预测。总体而言,WRF模型对研究区域的降雨模拟能力较强。结果表明,热带地区的强降雨事件对CPSs和研究领域非常敏感。因此,灵敏度测试研究应成倍增加,以确定特定区域最合适的CPSs。
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