Nowcasting of high-intensity rainfall for urban applications in the Netherlands

Guo-Shiuan Lin, R. Imhoff, Marc Schleiss, R. Uijlenhoet
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Abstract

Radar rainfall nowcasting has mostly been applied to relatively large (often rural) domains (e.g., river basins), although rainfall nowcasting in small urban areas is expected to be more challenging. Here, we selected 80 events with high rainfall intensities (at least one 1-km2 grid cell experiences precipitation > 15 mm h−1 for 1-h events or 30 mm d−1 for 24-h events) in five urban areas (Maastricht, Eindhoven, The Hague, Amsterdam, and Groningen) in the Netherlands. We evaluated the performance of 9,060 probabilistic nowcasts with 20 ensemble members by applying the short-term ensemble prediction system (STEPS) from Pysteps to every 10-min issue time for the selected events. We found that nowcast errors increased with decreasing (urban) areas especially when below 100 km2. In addition, at 30-min lead time, the underestimation of nowcasts was 38% larger and the discrimination ability was 11% lower for 1-h events than for 24-h events. A set of gridded correction factors for the Netherlands, CARROTS (Climatology-based Adjustments for Radar Rainfall in an Operational Setting) could adjust the bias in real-time QPE and nowcasts by 70%. Yet, nowcasts were still found to underestimate rainfall more than 50% above 40-min lead time compared to the reference, which indicates that this error originates from the nowcasting model itself. Also, CARROTS did not adjust the rainfall spatial distribution in urban areas much. In summary, radar-based nowcasting for urban areas (between 67 and 213 km2) in the Netherlands exhibits a short skillful lead time of about 20 minutes, which can only be used for last-minute warning and preparation.
为荷兰城市应用进行高强度降雨预报
雷达降雨预报大多应用于相对较大(通常是农村)的区域(如河流流域),但在小城市地区进行降雨预报预计更具挑战性。在此,我们在荷兰的五个城市地区(马斯特里赫特、埃因霍温、海牙、阿姆斯特丹和格罗宁根)选择了 80 个降雨强度较高的事件(至少有一个 1 平方公里的网格单元在 1 小时事件中的降水量大于 15 毫米/小时,或在 24 小时事件中的降水量大于 30 毫米/天)。我们采用 Pysteps 公司的短期集合预测系统 (STEPS),对选定事件的每 10 分钟发布时间,评估了 9,060 次包含 20 个集合成员的概率即时预报的性能。我们发现,预报误差随着(城市)面积的减少而增大,尤其是当面积低于 100 平方公里时。此外,与 24 小时事件相比,在 30 分钟前导时间内,1 小时事件的正预报低估率增加了 38%,判别能力降低了 11%。荷兰的一套网格校正因子 CARROTS(基于气候学的业务环境雷达降雨调整)可将实时 QPE 和即时预报的偏差调整 70%。然而,与参考值相比,预报在 40 分钟前仍低估了 50%以上的降雨量,这表明误差来自预报模式本身。此外,CARROTS 对城市地区的降雨空间分布调整不大。总之,基于雷达的荷兰城市地区(67 至 213 平方公里之间)预报显示出约 20 分钟的短技能提前期,只能用于最后一分钟的预警和准备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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