In this paper, by employing the asymptotic method, we prove the existence and uniqueness of a smoothing solution for a singularly perturbed Partial Differential Equation (PDE) with a small parameter. As a by-product, we obtain a reduced PDE model with vanished high order derivative terms, which is close to the original PDE model in any order of this small parameter in the whole domain except a negligible transition layer. Based on this reduced forward model, we propose an efficient two step regularization algorithm for solving inverse source problems governed by the original PDE. Convergence rate results are studied for the proposed regularization algorithm, which shows that this simplification will not (asymptotically) decrease the accuracy of the inversion result when the measurement data contains noise. Numerical examples for both forward and inverse problems are given to show the efficiency of the proposed numerical approach.
翻译:在本文中,我们通过使用无症状方法,证明存在一个单一扰动的局部分等(PDE)和一个小参数的平滑解决方案的独特性和独特性。作为一个副产品,我们获得了一个消失高排序衍生术语的减少的PDE模型,该模型与整个域中除可忽略的过渡层以外的这个小参数的任何顺序的原始PDE模型相近。根据这一降低的前沿模型,我们提出了一种高效的两步正规化算法,用于解决原PDE所管辖的反源问题。为拟议的正规化算法研究了趋同率结果,该算法表明这种简化不会(暂时)降低测量数据含有噪音时的反向结果的准确性。提供了前向和反向问题的数字示例,以显示拟议的数字方法的效率。