Ruppert David, Shoemaker Christine A, Wang Yilun, Li Yingxing, Bliznyuk Nikolay
School of Operations Research and Information Engineering and Department of Statistical Science, Cornell University, Comstock Hall, Ithaca, NY 14853, USA.
School of Civil and Environmental Engineering and School of Operations Research and Information Engineering, Cornell University, Hollister Hall, Ithaca, NY 14853, USA.
J Agric Biol Environ Stat. 2012 Dec;17(4):623-640. doi: 10.1007/s13253-012-0091-0. Epub 2012 May 12.
Bayesian MCMC calibration and uncertainty analysis for computationally expensive models is implemented using the SOARS (Statistical and Optimization Analysis using Response Surfaces) methodology. SOARS uses a radial basis function interpolator as a surrogate, also known as an emulator or meta-model, for the logarithm of the posterior density. To prevent wasteful evaluations of the expensive model, the emulator is built only on a high posterior density region (HPDR), which is located by a global optimization algorithm. The set of points in the HPDR where the expensive model is evaluated is determined sequentially by the GRIMA algorithm described in detail in another paper but outlined here. Enhancements of the GRIMA algorithm were introduced to improve efficiency. A case study uses an eight-parameter SWAT2005 (Soil and Water Assessment Tool) model where daily stream flows and phosphorus concentrations are modeled for the Town Brook watershed which is part of the New York City water supply. A Supplemental Material file available online contains additional technical details and additional analysis of the Town Brook application.
使用SOARS(基于响应面的统计与优化分析)方法对计算成本高昂的模型进行贝叶斯MCMC校准和不确定性分析。SOARS使用径向基函数插值器作为后验密度对数的替代模型,也称为模拟器或元模型。为避免对昂贵模型进行不必要的评估,仅在通过全局优化算法定位的高后验密度区域(HPDR)上构建模拟器。在HPDR中对昂贵模型进行评估的点集由另一篇论文中详细描述但此处概述的GRIMA算法顺序确定。引入了GRIMA算法的改进以提高效率。一个案例研究使用了一个八参数的SWAT2005(土壤和水资源评估工具)模型,对作为纽约市供水一部分的城镇溪流域的日溪流流量和磷浓度进行建模。在线提供的补充材料文件包含有关城镇溪应用的更多技术细节和额外分析。