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On the Boundary Conditions and Optimization Methods in Integrated Digital Image Correlation

机译:集成数字图像相关中的边界条件和优化方法

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In integrated digital image correlation (IDIC) methods attention must be paid to the influence of using a correct geometric and material model, but also to make the boundary conditions in the FE simulation match the real experiment. Another issue is the robustness and convergence of the IDIC algorithm itself, especially in cases when (FEM) simulations are slow. These two issues have been explored in this proceeding. The basis of the algorithm is the minimization of the residual. Different approaches for this minimization exist, of which a Gauss-Newton method is used most often. In this paper several other methods are presented as well and their performance is compared in terms of number of FE simulations needed, since this is the most time-consuming step in the iterative procedure. Beside method-specific recommendations, the main finding of this work is that, in practical use of IDIC, it is recommended to start using a very robust, but slow, derivative-free optimization method (e.g. Nelder-Mead) to determine the search direction and increasing the initial guess accuracy, while after some iterations, it is recommended to switch to a faster gradient-based method, e.g. (update-limited) Gauss-Newton.
机译:在集成数字图像相关(IDIC)方法中,必须注意使用正确的几何和材料模型的影响,而且还要使FE模拟中的边界条件与真实实验相匹配。另一个问题是IDIC算法本身的稳健性和融合,特别是在(FEM)模拟速度慢的情况下。在此程序中探讨了这两个问题。算法的基础是剩余的最小化。存在这种最小化的不同方法,其中最常使用高斯-牛顿方法。在本文中,还提供了几种其他方法,并且在所需的FE模拟的数量方面,它们的性能也在比较,因为这是迭代程序中最耗时的步骤。在方法特定的建议旁边,这项工作的主要发现是,在实际使用IDIC中,建议开始使用非常强大,但慢速,无衍生的优化方法(例如Nelder-Mead)来确定搜索方向并提高初始猜测精度,而在一些迭代之后,建议切换到基于梯度的方法,例如(更新限制)高斯牛顿。

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