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Detecting Long-Term Trends in Precipitable Water over the Tibetan Plateau by Synthesis of Station and MODIS Observations

机译:利用台站和MODIS观测资料发现青藏高原降水的长期趋势

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Long-term trends in precipitable water (PW) are an important component of climate change assessments for the Tibetan Plateau (TP). PW products from Moderate Resolution Imaging Spectroradiometer (MODIS) are able to provide good spatial coverage of PW over the TP but limited in time coverage, while the meteorological stations in the TP can estimate long-term PW but unevenly distributed. To detect the decadal trend in PW over the TP, Bayesian inference theory is used to construct long-term and spatially continuous PW data for the TP based on the station and MODIS observations. The prior information on the monthly-mean PW from MODIS and the 63 stations over the TP for 2000-06 is used to get the posterior probability knowledge that is utilized to build a Bayesian estimation model. This model is then operated to estimate continuous monthly-mean PW for 1970-2011 and its performance is evaluated using the monthly MODIS PW anomalies (2007-11) and annual GPS PW anomalies (1995-2011), with RMSEs below 0.65 mm, to demonstrate that the model estimation can reproduce the PW variability over the TP in both space and time. Annual PW series show a significant increasing trend of 0.19 mm decade(-1) for the TP during the 42 years. The most significant PW increase of 0.47 mm decade(-1) occurs for 1986-99 and an insignificant decrease occurs for 2000-11. From the comparison of the PW data from JRA-55, ERA-40, ERA-Interim, MERRA, NCEP-2, and ISCCP, it is found that none of them are able to show the actual long-term trends and variability in PW for the TP as the Bayesian estimation.
机译:可降水量(PW)的长期趋势是青藏高原(TP)气候变化评估的重要组成部分。中分辨率成像光谱仪(MODIS)的PW产品能够在TP上提供良好的PW空间覆盖,但时间覆盖范围有限,而TP中的气象站可以估算长期PW,但分布不均匀。为了检测TP上PW的年代际趋势,贝叶斯推理理论基于站和MODIS的观测数据,为TP构造长期和空间连续的PW数据。使用来自MODIS和2000-06年TP上63个站点的月均PW的先验信息来获取后验概率知识,该后验知识可用于构建贝叶斯估计模型。然后,该模型用于估算1970-2011年的连续月平均PW,并使用月平均MODIS PW异常(2007-11)和年度GPS PW异常(1995-2011)(RMSE小于0.65 mm)来评估其性能,证明了模型估计可以在时空上再现TP上的PW变异性。在42年中,TP的年度PW系列显示TP显着增加趋势,为0.19 mm十年(-1)。在1986-99年,PW增加最明显,为0.47 mm October(-1),而在2000-11年,PW却没有明显减少。通过比较JRA-55,ERA-40,ERA-Interim,MERRA,NCEP-2和ISCCP的PW数据,发现它们都无法显示PW的实际长期趋势和可变性TP作为贝叶斯估计。

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