期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Trace-Norm Regularized Multi-Task Learning for Sea State Bias Estimation 被引量:1
1
作者 ZHONG Guoqiang QU Jianzhang +5 位作者 WANG Haizhen LIU Benxiu JIAO Wencong FAN Zhenlin MIAO Hongli HEDJAM Rachid 《Journal of Ocean University of China》 SCIE CAS CSCD 2020年第6期1292-1298,共7页
Sea state bias(SSB)is an important component of errors for the radar altimeter measurements of sea surface height(SSH).However,existing SSB estimation methods are almost all based on single-task learning(STL),where on... Sea state bias(SSB)is an important component of errors for the radar altimeter measurements of sea surface height(SSH).However,existing SSB estimation methods are almost all based on single-task learning(STL),where one model is built on the data from only one radar altimeter.In this paper,taking account of the data from multiple radar altimeters available,we introduced a multi-task learning method,called trace-norm regularized multi-task learning(TNR-MTL),for SSB estimation.Corresponding to each individual task,TNR-MLT involves only three parameters.Hence,it is easy to implement.More importantly,the convergence of TNR-MLT is theoretically guaranteed.Compared with the commonly used STL models,TNR-MTL can effectively utilize the shared information between data from multiple altimeters.During the training of TNR-MTL,we used the JASON-2 and JASON-3 cycle data to solve two correlated SSB estimation tasks.Then the optimal model was selected to estimate SSB on the JASON-2 and the HY-270-71 cycle intersection data.For the JSAON-2 cycle intersection data,the corrected variance(M)has been reduced by 0.60 cm^2 compared to the geophysical data records(GDR);while for the HY-2 cycle intersection data,M has been reduced by 1.30 cm^2 compared to GDR.Therefore,TNR-MTL is proved to be effective for the SSB estimation tasks. 展开更多
关键词 sea state bias(ssb) radar altimeter geophysical data records(GDR) trace-norm multi-task learning
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部