Abstract
To improve the accuracy of rainfall estimation by microwave links, this article presents a method for classifying wet and dry periods based on the support vector machine (SVM). The average, minimum, and maximum attenuation measurements in 5 min are applied as the feature vector of the SVM after the analysis of the relation between the statistical parameters of the attenuation measurements from seven microwave links and the wet/dry periods. When the baseline attenuation is needed for retrieving the path-averaged rain rate, the method can classify the wet/dry periods and estimate a dynamic baseline with an optimal combination of the statistical parameters of the attenuation measurements based on the prior training. Experiments are conducted to test the classification method. The results show that the classification accuracy is higher than 0.8, which is a satisfactory result. Most values of the true positive rate are higher than 0.9, which indicates that the method can correctly classify most of the wet periods. Additionally, the values of the false positive rate are less than 0.3, and most of the values are less than 0.2, suggesting that the method incorrectly classifies the dry period as the wet period with a low probability. The results demonstrate that the classification method is capable of classifying the wet and dry periods with a high accuracy, which can help improve the precision of the baseline of microwave links and rainfall estimation.
Highlights
R AINFALL monitoring is important for meteorology, hydrology, and climate research
The results show that the values of the TP rate (TPR) by the support vector machine (SVM) are higher than those by the random forest classification method, while the values of the FP rate (FPR) of the SVM are lower than those obtained by the random forest method, which indicates that the method based on the SVM has a higher accuracy than the random forest method for the wet/dry classification
This article proposed a method for classifying wet/dry periods by using the statistical parameters from attenuation measurements measured by microwave links (MLs)
Summary
R AINFALL monitoring is important for meteorology, hydrology, and climate research. Several methods have been developed for estimating the rainfall.
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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