Abstract

Accurate precipitation estimation is significant since it matters to everyone on social and economic activities and is of great importance to monitor and forecast disasters. The traditional method utilizes an exponential relation between radar reflectivity factors and precipitation called Z-R relationship which has a low accuracy in precipitation estimation. With the rapid development of computing power in cloud computing, recent researches show that artificial intelligence is a promising approach, especially deep learning approaches in learning accurate patterns and appear well suited for the task of precipitation estimation, given an ample account of radar data. In this study, we introduce these approaches to the precipitation estimation, proposing two models based on the back propagation neural networks (BPNN) and convolutional neural networks (CNN) respectively, to compare with the traditional method in meteorological service systems. The results of the three approaches show that deep learning algorithms outperform the traditional method with 75.84% and 82.30% lower mean square errors respectively. Meanwhile, the proposed method with CNN achieves a better performance than that with BPNN for its ability to preserve the spatial information by maintaining the interconnection between pixels, which improves 26.75% compared to that with BPNN.

Highlights

  • In recent years, the problem of climate change has caused the attention from all over the world

  • The practical Z-R relationship is determined by the distribution of the droplet spectrum while the distribution is restricted by a lot of factors, which means that a constant Z-R relationship in a specific region would bring a large deviation on the precipitation estimation when applied in another region

  • In order to enhance the improvement on precipitation estimation, we introduce two models based on the back propagation neural network and convolutional neural network respectively, which are compared with the traditional method of Z-R relationship, to find a better performance method

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Summary

Introduction

The problem of climate change has caused the attention from all over the world. As one of the most significant factors in water resource ecosystem, precipitation plays an important role in meteorological fields, which has a strong impact on human’s daily lives as well as business such as agriculture and construction [1,2,3]. Prior knowledge of rainfall behavior can help farmers and policy formulation to minimize crop damage. It plays an important role in disaster warning and relief [7,8,9]. With the advantage of the wide measurement range, high spatial and temporal resolution and the real-time data transmission, the ground radar has been widely applied in meteorological industry, including precipitation estimation [13,14,15]. Seeking (2020) 9:22 for a more appropriate method is an inevitable approach to ensure the performance of the estimation [19,20,21]

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