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Watershed rainfall forecasting using neuro-fuzzy networks with the assimilation of multi-sensor information

机译:融合多传感器信息的神经模糊网络在流域降雨预报中的应用

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摘要

The complex temporal heterogeneity of rainfall coupled with mountainous physiographic context makes a great challenge in the development of accurate short-term rainfall forecasts. This study aims to explore the effectiveness of multiple rainfall sources (gauge measurement, and radar and satellite products) for assimilation-based multi-sensor precipitation estimates and make multi-step-ahead rainfall forecasts based on the assimilated precipitation. Bias correction procedures for both radar and satellite precipitation products were first built, and the radar and satellite precipitation products were generated through the Quantitative Precipitation Estimation and Segregation Using Multiple Sensors (QPESUMS) and the Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks-Cloud Classification System (PERSIANN-CCS), respectively. Next, the synthesized assimilated precipitation was obtained by merging three precipitation sources (gauges, radars and satellites) according to their individual weighting factors optimized by nonlinear search methods. Finally, the multi-step-ahead rainfall forecasting was carried out by using the adaptive network-based fuzzy inference system (ANFIS). The Shihmen Reservoir watershed in northern Taiwan was the study area, where 641 hourly data sets of thirteen historical typhoon events were collected. Results revealed that the bias adjustments in QPESUMS and PERSIANN-CCS products did improve the accuracy of these precipitation products (in particular, 30-60% improvement rates for the QPESUMS, in terms of RMSE), and the adjusted PERSIANN-CCS and QPESUMS individually provided about 10% and 24% contribution accordingly to the assimilated precipitation. As far as rainfall forecasting is concerned, the results demonstrated that the ANFIS fed with the assimilated precipitation provided reliable and stable forecasts with the correlation coefficients higher than 0.85 and 0.72 for one- and two-hour-ahead rainfall forecasting, respectively. The obtained forecasting results are very valuable information for the flood warning in the study watershed during typhoon periods.
机译:降雨的时间异质性复杂,加上山区的自然地理环境,对准确的短期降雨预报的发展提出了巨大挑战。这项研究旨在探讨多种降雨源(仪表测量以及雷达和卫星产品)对于基于同化的多传感器降水估算的有效性,并基于同化的降水量进行多步超前降水预报。首先建立了雷达和卫星降水产品的偏差校正程序,然后通过使用多个传感器进行定量降水估计和隔离(QPESUMS)以及使用人工神经网络从遥感信息进行降水估计来生成雷达和卫星降水产品分类系统(PERSIANN-CCS)。接下来,根据非线性搜索方法优化的三个加权源(权重,雷达和卫星)的各自权重因子,将三个降水源(标尺,雷达和卫星)合并起来,获得合成的同化降水。最后,利用基于自适应网络的模糊推理系统(ANFIS)进行了多步降雨预报。台湾北部的石门水库集水区是研究区域,这里每小时收集641份13次历史性台风事件的数据集。结果表明,QPESUMS和PERSIANN-CCS产品的偏差调整确实提高了这些沉淀产品的准确性(尤其是按RMSE而言,QPESUMS的提高率为30-60%),并且分别调整了PERSIANN-CCS和QPESUMS分别为同化降水提供了10%和24%的贡献。就降雨预报而言,结果表明,采用同化降水量的ANFIS提供了可靠而稳定的预报,提前一小时和两小时降雨的相关系数分别高于0.85和0.72。所获得的预报结果对于台风期研究分水岭的洪水预警具有重要的参考价值。

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