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Limits to Nonlinear Inversion

机译:非线性反演的极限

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For non-linear inverse problems, the mathematical structure of the mapping from model parameters to data is usually unknown or partly unknown. Absence of information about the mathematical structure of this function prevents us from presenting an analytical solution, so our solution depends on our ability to produce efficient search algorithms. Such algorithms may be completely problem-independent (which is the case for the so-called 'meta-heuristics' or 'blind-search' algorithms), or they may be designed with the structure of the concrete problem in mind. We show that pure meta-heuristics are inefficient for large-scale, nonlinear inverse problems, and that the 'no-free-lunch' theorem holds. We discuss typical objections to the relevance of this theorem. A consequence of the no-free-lunch theorem is that algorithms adapted to the mathematical structure of the problem perform more efficiently than pure meta-heuristics. We study problem-adapted inversion algorithms that exploit the knowledge of the smoothness of the misfit function of the problem. Optimal sampling strategies exist for such problems, but many of these problems remain hard.
机译:对于非线性逆问题,从模型参数到数据的映射的数学结构通常是未知的或部分未知的。缺少有关此函数的数学结构的信息使我们无法提出分析解决方案,因此我们的解决方案取决于我们产生有效搜索算法的能力。这样的算法可能是完全独立于问题的(所谓的“元启发式”或“盲搜索”算法就是这种情况),或者可能在设计时考虑到具体问题的结构。我们证明了纯粹的元启发式方法对于大规模的非线性逆问题是无效的,并且“无午餐”定理成立。我们讨论了对该定理相关性的典型反对。非自由午餐定理的结果是,适合于问题的数学结构的算法比纯元启发式算法更有效地执行。我们研究了适应问题的反演算法,该算法利用了问题错配函数的平滑度的知识。存在针对此类问题的最佳采样策略,但是许多问题仍然很难解决。

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