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통계적 방법에 근거한 AMSU-A 복사자료의 전처리 및 편향보정
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  • 통계적 방법에 근거한 AMSU-A 복사자료의 전처리 및 편향보정
  • Pre-processing and Bias Correction for AMSU-A Radiance Data Based on Statistical Methods
저자명
이시혜,김상일,전형욱,김주혜,강전호,Lee. Sihye,Kim. Sangil,Chun. Hyoung-Wook,Kim. Ju-Hye,Kang. Jeon-Ho
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권/호정보
2014년|24권 4호|pp.491-502 (12 pages)
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한국기상학회
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이 논문은 한국과학기술정보연구원과 논문 연계를 통해 무료로 제공되는 원문입니다.
서지반출

기타언어초록

As a part of the KIAPS (Korea Institute of Atmospheric Prediction Systems) Package for Observation Processing (KPOP), we have developed the modules for Advanced Microwave Sounding Unit-A (AMSU-A) pre-processing and its bias correction. The KPOP system calculates the airmass bias correction coefficients via the method of multiple linear regression in which the scan-corrected innovation and the thicknesses of 850~300, 200~50, 50~5, and 10~1 hPa are respectively used for dependent and independent variables. Among the four airmass predictors, the multicollinearity has been shown by the Variance Inflation Factor (VIF) that quantifies the severity of multicollinearity in a least square regression. To resolve the multicollinearity, we adopted simple linear regression and Principal Component Regression (PCR) to calculate the airmass bias correction coefficients and compared the results with those from the multiple linear regression. The analysis shows that the order of performances is multiple linear, principal component, and simple linear regressions. For bias correction for the AMSU-A channel 4 which is the most sensitive to the lower troposphere, the multiple linear regression with all four airmass predictors is superior to the simple linear regression with one airmass predictor of 850~300 hPa. The results of PCR with 95% accumulated variances accounted for eigenvalues showed the similar results of the multiple linear regression.