A Bayesian approach to nonlinear inverse problems is considered where the unknown quantity (input) is a random spatial field. The forward model is complex and non-linear, therefore computationally expensive. An emulator-based methodology is developed, where the Bayesian multivariate adaptive regression splines (BMARS) are used to model the function that maps the inputs to the outputs. Discrete cosine transformation (DCT) is used for dimension reduction of the input spatial field. The posterior sampling is carried out using trans-dimensional Markov Chain Monte Carlo (MCMC) methods. Numerical results are presented by analyzing simulated as well as real data on hydrocarbon reservoir characterization.
翻译:在未知数量(投入)是一个随机空间字段的情况下,可以考虑对非线性反问题采取贝叶斯方法。远期模型复杂且非线性,因此计算成本很高。开发了模拟法,采用贝叶斯多变量适应性回归样条(BMARS)来模拟绘制输出输入图的功能。Discrete cosine 变异(DCT)用于减少输入空间字段的维度。外层取样使用跨维的Markov 链条 Monte Carlo(MCMC)方法进行。通过模拟分析以及碳氢化合物储量定性的真实数据,可以得出数值结果。