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Logical Inference Framework for Experimental Design of Mechanical Characterization Procedures

机译:机械表征过程实验设计的逻辑推理框架

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摘要

Optimizing an experimental design is a complex task when a model is required for indirect reconstruction of physical parameters from the sensor readings. In this work, a formulation is proposed to unify the probabilistic reconstruction of mechanical parameters and an optimization problem. An information-theoretic framework combined with a new metric of information density is formulated providing several comparative advantages: (i) a straightforward way to extend the formulation to incorporate additional concurrent models, as well as new unknowns such as experimental design parameters in a probabilistic way; (ii) the model causality required by Bayes’ theorem is overridden, allowing generalization of contingent models; and (iii) a simpler formulation that avoids the characteristic complex denominator of Bayes’ theorem when reconstructing model parameters. The first step allows the solving of multiple-model reconstructions. Further extensions could be easily extracted, such as robust model reconstruction, or adding alternative dimensions to the problem to accommodate future needs.
机译:当需要一个模型从传感器读数间接重建物理参数时,优化实验设计是一项复杂的任务。在这项工作中,提出了统一机械参数的概率重建和优化问题的公式。信息理论框架与新的信息密度度量相结合,从而提供了多个比较优势:(i)一种直接扩展方法的方法,以合并其他并发模型以及新的未知数,例如概率设计的实验设计参数; (ii)克服了贝叶斯定理所要求的模型因果关系,从而可以对或有模型进行泛化; (iii)一种更简单的公式,在重建模型参数时避免了贝叶斯定理的特征复分母。第一步允许求解多模型重建。可以轻松地提取其他扩展,例如健壮的模型重建,或为问题添加替代尺寸以适应将来的需求。

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