Correction Test of Microwave Radiometer Atmospheric Temperature Profile Based on Multi-observation Data Fusion
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摘要: 为增加大气探空站点,提高微波辐射计大气温度探测精度,利用 FY-4A气象卫星温度产品和 BP神经网络、遗传算法,分别实施杭州站、南京站微波辐射计的温度订正仿真试验,并获得准确的连续性大气温度垂直廓线;结合探空资料和民航AMDAR气温资料,评估模型订正效果。研究结果表明:(1) 微波辐射计温度产品存在一定误差,两站均在高度2 km处平均偏差最大,同站有雨时的偏差均大于无雨时的偏差;(2) 经过BP神经网络模拟订正后的微波辐射计测温精度较原温度产品提升幅度较大;杭州站MAE、MSE、RMSE的降低幅度分别为45~55%、65~78%、41~53%,南京站的降低幅度分别为58~66%、83~88%、55~59%;(3) 经过遗传算法优化初始权值和阈值后的神经网络订正模型模拟效果有进一步的提升,其中有雨模型提升效果明显,RMSE降低幅度11~15 %。微波辐射计的上述订正方法,可以推广到微波辐射计站点应用,具有实际使用价值。Abstract: To increase the number of atmospheric sounding stations and improve the accuracy of groundbased microwave radiometers in measuring temperatures, a correction method has been developed. This method utilizes temperature products from the FY-4A meteorological satellite along with a BP neural network and genetic algorithm to refine the temperature profiles measured by microwave radiometers. The performance of this method was tested through simulation experiments on two MP-3000 ground-based microwave radiometers located at Hangzhou and Nanjing stations. The quality of the corrections was evaluated by comparing the adjusted temperature profiles with independent temperature data from radiosonde measurements and Civil Aviation AMDAR. The results show that: (1) there is a certain error between the temperature product of the microwave radiometer and the true value of the temperature. At the height of 2km, the average deviation of the two stations is the largest, and the deviation of the same station with rain is greater than that without rain. (2) The temperature measurement precision of the microwave radiometer, after being refined through BP neural network simulation, has seen a significant enhancement compared to the original temperature data. At Hangzhou station, the reductions in MAE (Mean Absolute Error), MSE (Mean Squared Error), and RMSE (Root Mean Square Error) are in the ranges of 45-55%, 65-78%, and 41-53% respectively, while at Nanjing station, these metrics have decreased by 58-66%, 83-88%, and 55-59% respectively. (3) The simulation model of the neural network, after it’s initial weights and thresholds were optimized using a genetic algorithm, has demonstrated further improved performance. There has been a significant enhancement in the rain model, with reductions in RMSE (Root Mean Square Error) ranging from 11-15%. The above-mentioned correction method for microwave radiometers can be extended to microwave radiometer stations and has practical application value.
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Key words:
- microwave radiometer /
- FY-4A satellite /
- AMDAR /
- BP neural network /
- genetic algorithm /
- profile correction
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