Comparison of isotope-based linear and Bayesian mixing models in determining moisture recycling ratioOACSTPCD
Stable water isotopes are natural tracers quantifying the contribution of moisture recycling to local precipitation,i.e.,the moisture recycling ratio,but various isotope-based models usually lead to different results,which affects the accuracy of local moisture recycling.In this study,a total of 18 stations from four typical areas in China were selected to compare the performance of isotope-based linear and Bayesian mixing models and to determine local moisture recycling ratio.Among the three vapor sources including advection,transpiration,and surface evaporation,the advection vapor usually played a dominant role,and the contribution of surface evaporation was less than that of transpiration.When the abnormal values were ignored,the arithmetic averages of differences between isotope-based linear and the Bayesian mixing models were 0.9%for transpiration,0.2%for surface evaporation,and–1.1%for advection,respectively,and the medians were 0.5%,0.2%,and–0.8%,respectively.The importance of transpiration was slightly less for most cases when the Bayesian mixing model was applied,and the contribution of advection was relatively larger.The Bayesian mixing model was found to perform better in determining an efficient solution since linear model sometimes resulted in negative contribution ratios.Sensitivity test with two isotope scenarios indicated that the Bayesian model had a relatively low sensitivity to the changes in isotope input,and it was important to accurately estimate the isotopes in precipitation vapor.Generally,the Bayesian mixing model should be recommended instead of a linear model.The findings are useful for understanding the performance of isotope-based linear and Bayesian mixing models under various climate backgrounds.
XIAO Yanqiong;WANG Liwei;WANG Shengjie;Kei YOSHIMURA;SHI Yudong;LI Xiaofei;Athanassios A ARGIRIOU;ZHANG Mingjun;
Key Laboratory of Resource Environment and Sustainable Development of Oasis of Gansu Province,College of Geography and Environmental Science,Northwest Normal University,Lanzhou 730070,ChinaNorthwest Institute of Eco-Environment and Resources,Chinese Academy of Sciences,Lanzhou 730000,ChinaAtmosphere and Ocean Research Institute,University of Tokyo,Kashiwa 277-8568,JapanSchool of Environmental Science and Engineering,Shaanxi University of Science and Technology,Xi''an 710021,ChinaLaboratory of Atmospheric Physics,Department of Physics,University of Patras,Patras GR-26500,Greece
地球科学
moisture recyclingstable water isotopelinear mixing modelBayesian mixing modelChina
《Journal of Arid Land》 2024 (006)
P.739-751 / 13
This study was supported by the National Natural Science Foundation of China(42261008,41971034);the Natural Science Foundation of Gansu Province,China(22JR5RA074).We thank Prof.ZHAO Liangju and Prof.PENG Tsung-Ren for providing the isotope data used in the study.We also thank Dr.QIU Xue for the discussion about isotope-based mixing model.
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