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Sparse representations and compressive sampling approaches in engineering mechanics: A review of theoretical concepts and diverse applications

机译:工程力学中的稀疏表示和压缩采样方法:综述理论概念和多样化应用

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摘要

A review of theoretical concepts and diverse applications of sparse representations and compressive sampling (CS) approaches in engineering mechanics problems is provided from a broad perspective. First, following a presentation of well-established CS concepts and optimization algorithms, attention is directed to currently emerging tools and techniques for enhancing solution sparsity and for exploiting additional information in the data. These include alternative to l(1)-norm minimization formulations and iterative re-weighting solution schemes, Bayesian approaches, as well as structured sparsity and dictionary learning strategies. Next, CS-based research work of relevance to engineering mechanics problems is categorized and discussed under three distinct application areas: a) inverse problems in structural health monitoring, b) uncertainty modeling and simulation, and c) computationally efficient uncertainty propagation. Notably, the vast majority of problems in all three areas share the challenge of "incomplete data", addressed by the versatile CS framework. In this regard, incomplete data may manifest themselves in various different forms and can correspond to missing or compressed data, or even refer generally to insufficiently few function evaluations. The primary objective of this review paper relates to identifying and presenting significant contributions in each of the above three application areas in engineering mechanics, with the goal of expediting additional research and development efforts. To this aim, an extensive list of 248 references is provided, composed almost exclusively of books and archival papers, which can be readily available to a potential reader.
机译:从广泛的角度提供了对工程力学问题的稀疏表示和压缩采样(CS)方法的理论概念和多样化应用的综述,是从广义的角度出发的。首先,遵循建立良好的CS概念和优化算法之后,注意目前用于增强解决方案稀疏性的新兴的工具和技术以及用于利用数据中的附加信息。这些包括L(1)的替代方案 - 最小化配方和迭代重加权解决方案方案,贝叶斯方法以及结构化稀疏性和字典学习策略。接下来,基于CS的相关性与工程力学问题的研究工作分类和讨论了三个不同的应用领域:a)结构健康监测中的逆问题,b)不确定性建模和模拟,以及C)计算上的计算上有效的不确定性传播。值得注意的是,所有三个领域的绝大多数问题都在多功能CS框架解决的“不完整数据”中的挑战。在这方面,不完整的数据可以以各种不同的形式表示自己,并且可以对应于缺失或压缩数据,或者甚至甚至指的是少数功能评估。本文的主要目标涉及在工程力学中以上三个应用领域的每个应用领域识别和呈现重大贡献,其目标是加快额外的研发工作。为此目的,提供了一个广泛的248个参考文献列表,几乎完全由书籍和档案论文组成,可以随时可供潜在读者使用。

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