Institute of Geotechnical Engineer, College of Architecture and Civil Engineering, Beijing University of Technology, Beijing 100124, China.
Int J Environ Res Public Health. 2020 Feb 10;17(3):1108. doi: 10.3390/ijerph17031108.
Bayesian parameter inversion approaches are dependent on the original forward models linking subsurface physical properties to measured data, which usually require a large number of iterations. Fast alternative systems to forward models are commonly employed to make the stochastic inversion problem computationally tractable. This paper compared the effect of the original forward model constructed by the HYDRUS-1D software and two different approximations: the Artificial Neural Network (ANN) alternative system and the Gaussian Process (GP) surrogate system. The model error of the ANN was quantified using a principal component analysis, while the model error of the GP was measured using its own variance. There were two groups of measured pressure head data of undisturbed loess for parameter inversion: one group was obtained from a laboratory soil column infiltration experiment and the other was derived from a field irrigation experiment. Strong correlations between the pressure head values simulated by random posterior samples indicated that the approximate forward models are reliable enough to be included in the Bayesian inversion framework. The approximate forward models significantly improved the inversion efficiency by comparing the observed and the optimized results with a similar accuracy. In conclusion, surrogates can be considered when the forward models are strongly nonlinear and the computational costs are prohibitive.
贝叶斯参数反演方法依赖于将地下物理性质与测量数据联系起来的原始正向模型,这通常需要大量的迭代。为了使随机反演问题在计算上易于处理,通常采用快速替代正向模型的方法。本文比较了由 HYDRUS-1D 软件构建的原始正向模型和两种不同近似方法(人工神经网络(ANN)替代系统和高斯过程(GP)替代系统)的效果。使用主成分分析量化了 ANN 的模型误差,而使用 GP 的方差测量了 GP 的模型误差。有两组未扰动黄土的测压头数据用于参数反演:一组是从实验室土壤柱入渗实验中获得的,另一组是从田间灌溉实验中得到的。随机后验样本模拟的压力头值之间存在很强的相关性,这表明近似正向模型足够可靠,可以包含在贝叶斯反演框架中。通过比较观测值和优化值的结果,近似正向模型在具有相似精度的情况下显著提高了反演效率。总之,当正向模型具有很强的非线性且计算成本过高时,可以考虑使用替代模型。