ILL-Posedness and Precision in Object Field Reconstruction Problems

W. Root
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引用次数: 23

Abstract

We suppose σ(x), called the object field, is an unknown real or complex-valued function on a set E. Our knowledge of σ is given by observation, with some (small) error, of a real or complex-valued function s(ξ) given by s(ξ)=[Bσ](ξ)=∫ E b(ξ,x)σ(x)dx,     σ ε F The sets E,F are subsets of Rn, where normally n=1,2,3. It is desired to determine σ(x) as well as possible; the result of this determination is denoted σ^(x) (in ideal circumstances σ^(x)=σ(x)) and is called an estimate of σ (the word estimate may or may not have a statistical implication). An inversion problem is determined when the following are specified: (1) the kernel b(ξ,x) of the integral operator; (2) the region E on which σ(x) is defined; (3) the region F over which the observation is made; (4) the set ∑ of functions σ that are allowed. It is assumed that the situation is such that σ ε L2 (E) (the space of square-integrable functions on E) and s ε L2 (F). If ∑ is all of L2 (E), the problem is an unconstrained linear inversion; if ∑ is not all of L2 (E) (∑ may be linear or nonlinear) it is a constrained linear inversion.
目标场重构问题中的病态性和精度
我们假设被称为目标域的σ(x)是集合E上的一个未知实值或复值函数。我们对σ的认识是通过观察一个实值或复值函数s(ξ)给出的,有一些(小)误差:s(ξ)=[Bσ](ξ)=∫E b(ξ,x)σ(x)dx, σ ε F。集合E,F是Rn的子集,通常n=1,2,3。我们希望尽可能确定σ(x);这个决定的结果记为σ^(x)(在理想情况下σ^(x)=σ(x)),称为σ的估计(估计这个词可能有也可能没有统计含义)。当确定以下条件时,确定反转问题:(1)积分算子的核函数b(ξ,x);(2)定义σ(x)的区域E;(3)观测区域F;(4)允许的函数σ的集合∑。假设情况是σ ε L2 (E) (E上的平方可积函数空间)和s ε L2 (F)。如果∑是L2 (E)的全部,则问题是一个无约束的线性反演;如果∑不是L2 (E)的全部(∑可以是线性的也可以是非线性的),它是一个约束线性反演。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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