A constrained genetic approach for reconstructing Young's modulus of elastic objects from boundary displacement measurements

Yong Zhang, L. Hall, Dmitry Goldgof, S. Sarkar
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引用次数: 2

Abstract

This paper presents a constrained genetic approach (CGA) for reconstructing the Young's modulus of elastic objects. Qualitative a priori information is incorporated using a rank based scheme to constrain the admissible solutions. Balance between the fitness function (adhesion to the measurement data) and the penalty function (fidelity to a priori knowledge) is achieved by a stochastic sort algorithm. The over-smoothing of Young's modulus discontinuity is avoided without the need of computing a deterministic weight coefficient. The experiment on synthetic data indicates that the proposed method not only reconstructed reliable Young's modulus from noisy data, but also expedited the convergence process significantly.
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基于边界位移测量重建弹性物体杨氏模量的约束遗传方法
提出了一种基于约束遗传的弹性物体杨氏模量重建方法。定性先验信息采用基于秩的方案来约束可容许解。适应度函数(对测量数据的粘附性)和惩罚函数(对先验知识的保真度)之间的平衡是通过随机排序算法实现的。避免了杨氏模不连续的过度平滑,而不需要计算确定性的权重系数。在综合数据上的实验表明,该方法不仅能从噪声数据中重构出可靠的杨氏模量,而且显著加快了收敛过程。
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