Precipitable Water Vapor Retrieval for Rainfall Forecasting using BDS-3 PPP-B2b Signal in the Coastal Region of China

Ying Xu, Panpan Zhao, jin wang
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Abstract

Currently, rainfall cannot be accurately forecasted due to poor network communication at ocean. The advantage of the BeiDou Global Navigation Satellite System (BDS-3) PPP-B2b signal, which does not rely on network communication to receive data, can provide Precipitable Water Vapor (PWV) retrieval application services for the open seas in eastern China where communication system is difficult. In this study, the data from the stations in the coastal region of China are used to establish a rainfall forecasting method for monitoring the extreme weather on the sea. Firstly, the service performance of the PPP-B2b is explored. Then, based on 17 Chinese coastal stations, the PWV accuracy is evaluated. Finally, based on the analysis of the relationship between PWV and actual rainfall, a threshold rainfall forecasting method based on sliding window is constructed. The experimental results show that: the PWV accuracy varies slightly depending on the geographic location, in which the mean absolute error (MAE) in the North Sea region is the smallest of 2.1mm, the South China Sea region is the largest of 2.60mm, and the East China Sea region is in the middle of the PWV accuracy of 2.48mm; the optimal predictors of the constructed 12-h sliding-window threshold rainfall prediction method are PWV maximum of 49 mm, PWV increase of 5 mm and PWV increase rate of 1.2 mm/h. The prediction results can reach a Critical Success Index (CSI) value of more than 45%, which has high prediction accuracy and applicability to the coastal region of China in the same period.
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利用 BDS-3 PPP-B2b 信号检索可降水水汽,用于中国沿海地区降雨预报
目前,由于海洋网络通信不畅,无法准确预报降雨量。北斗全球导航卫星系统(BDS-3)PPP-B2b 信号不依赖网络通信接收数据的优势,可以为通信系统不便的中国东部公海提供可降水水汽(PWV)检索应用服务。本研究利用中国沿海地区台站的数据,建立了一种监测海上极端天气的降雨预报方法。首先,探讨了 PPP-B2b 的服务性能。然后,基于 17 个中国沿海站点,评估了 PWV 的精度。最后,在分析 PWV 与实际降雨量关系的基础上,构建了基于滑动窗口的阈值降雨量预报方法。试验结果表明:不同地理位置的 PWV 精确度略有不同,其中北海地区的平均绝对误差(MAE)最小,为 2.1 毫米,南海地区最大,为 2.60 毫米,东海地区的 PWV 精确度居中,为 2.48 毫米;所构建的 12 h 滑动窗阈值降雨预报方法的最优预报因子为最大 PWV 49 毫米、PWV 增加 5 毫米和 PWV 增加率 1.2 毫米/小时。预测结果的临界成功指数(CSI)值大于 45%,具有较高的预测精度,适用于同期中国沿海地区。
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