Source identification problems have multiple applications in engineering such as the identification of fissures in materials, determination of sources in electromagnetic fields or geophysical applications, detection of contaminant sources, among others. In this work we are concerned with the determination of a time-dependent source in a transport equation from noisy data measured at a fixed position. By means of Fourier techniques can be shown that the problem is ill-posed in the sense that the solution exists but it does not vary continuously with the data. A number of different techniques were developed by other authors to approximate the solution. In this work, we consider a family of parametric regularization operators to deal with the ill-posedness of the problem. We proposed a manner to select the regularization parameter as a function of noise level in data in order to obtain a regularized solution that approximate the unknown source. We find a H\"older type bound for the error of the approximated source when the unknown function is considered to be bounded in a given norm. Numerical examples illustrate the convergence and stability of the method.
翻译:源的识别问题在工程工程中具有多种应用,例如物料裂痕的识别、电磁场或地球物理应用中的源的确定、污染物源的检测等。在这项工作中,我们关心的是从固定位置测量的噪音数据中确定一个迁移方程式中的时间依赖源。通过Fourier技术可以证明,问题存在错误,因为解决办法存在,但与数据没有持续变化。其他作者开发了多种不同技术来接近解决办法。在这项工作中,我们考虑了一组参数正规化操作者来处理问题的不正确性。我们建议了一种方法选择规范化参数,作为数据中噪音水平的函数,以获得接近未知来源的正规化解决办法。我们发现一种H\“老类型,在未知功能被认为受特定规范约束时,与近似来源的错误有关。数字示例说明了方法的趋同性和稳定性。