An Improved One-Dimension Variational Method for a Ground-Based Microwave Radiometer
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Temperature and water vapor density profiles in the troposphere (from the surface to 10km) can be retrieved from a ground-based microwave radiometer (MWR) at high temporal and moderate vertical resolution. Back-propagation neural network (BPNN) algorithm is commonly deployed on ground-based microwave radiometers. Some studies have shown that the retrieval accuracy of the BPNN retrieval algorithm is affected by the training set data with a large deviation. In this paper, an improved 1D-VAR method is proposed, which can effectively correct the bias, the results show that the improved 1D-VAR method can provide more accurate inversion results, Compared to the BPNN and 1D-VAR methods, the RMSE of temperature of improved 1D-VAR method are reduced by 60.8% and 29.4% during daytime, and by 54.2% and 49.7% during nighttime,respectively.