Abstract

Recently, the oblique earth-space links (OELs) between satellite and earth station have been used for rainfall monitoring as a supplement to existing observation methods. Most recent studies achieved the rainfall measurement by OELs based on the empirical method such as power-law (PL) model. In practice, two crucial issues need to be addressed: 1) identification of rain and no-rain periods; and 2) determination of attenuation baseline. To solve these problems, this article adopts several machine learning algorithms based on the analysis of earth-space link signal characteristics. For the first issue, we choose the support vector machine as a classifier and the adaptive synthetic sampling algorithm is deployed to eliminate the effects caused by the data imbalance. For the second issue, the long short-term neural network is selected for the determination of attenuation baseline since it has a good ability to solve time-series problem. In terms of the rainfall inversion, we establish a new model by combining the back-propagation (BP) network and genetic algorithm (GA). The PL model is also used as a comparison. To validate the proposed method, we set up an earth-space link that receives the signal from AsiaSat5 in 12.32 GHz. The results demonstrate that the two issues are successfully addressed and the inversion of precipitation is also carried out. Compared to disdrometer, the correlation and mean absolute error of GA-BP model are 0.83 and 1.30 mm/h, respectively, indicating a great potential to use densely OELs for global precipitation monitoring.

Highlights

  • A CCURATE and real-time rainfall measurement plays an important role in many aspects of human life such as agricultural issues, water resource management, and natural disaster warning

  • We set up an antenna in Nanjing to receive 12.32-GHz signal from AsiaSat5 and test our approach by this earth-space link

  • Based on the exploitation of existing radio spectrum sources, the opportunistic use of widely distributed microwave links has a great potential for the global precipitation monitoring

Read more

Summary

Introduction

A CCURATE and real-time rainfall measurement plays an important role in many aspects of human life such as agricultural issues, water resource management, and natural disaster warning. Existing rainfall detection method mainly comprises rain gauge, weather radar, and weather satellite [1]. Based on the exploitation of existing radio spectrum sources, the opportunistic use of microwave links has become a new approach to detect precipitation. Messer et al first suggested the application of commercial wireless communication networks to environmental monitoring [2]. The use of horizontal microwave links (HMLs) has been developed rapidly. Manuscript received April 10, 2020; revised June 7, 2020 and June 18, 2020; accepted June 19, 2020. Date of publication June 23, 2020; date of current version July 6, 2020.

Objectives
Methods
Results
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.