In this work, we extend and generalize our solving strategy, first introduced in [1], based on a greedy optimization algorithm and the alternating direction method (ADM) for nonlinear systems computed with multiple load steps. In particular, we combine the greedy optimization algorithm with the direct data-driven solver based on ADM which is firstly introduced in [2] and combined with the Newton-Raphson method for nonlinear elasticity in [3]. We numerically illustrate via one- and two-dimensional bar and truss structures exhibiting nonlinear strain measures and different constitutive datasets that our solving strategy generally achieves a better approximation of the globally optimal solution. This, however, comes at the expense of higher computational cost which is scaled by the number of "greedy" searches. Using this solving strategy, we reproduce the first cycle of the cyclic testing for a nylon rope that was performed at industrial testing facilities for mooring lines manufacturers. We also numerically illustrate for a truss structure that our solving strategy generally improves the accuracy and robustness in cases of an unsymmetrical data distribution and noisy data.
翻译:本文扩展并推广了我们首次在文献[1]中提出的求解策略,该策略基于贪婪优化算法和交替方向法(ADM),用于多荷载步计算的非线性系统。特别地,我们将贪婪优化算法与基于ADM的直接数据驱动求解器相结合——该求解器首次在文献[2]中提出,并于文献[3]中与牛顿-拉弗森方法结合应用于非线性弹性问题。通过具有非线性应变度量和不同本构数据集的一维及二维杆件与桁架结构数值算例,我们证明所提求解策略通常能获得更接近全局最优解的近似解。然而,这以更高的计算成本为代价,其计算量随"贪婪"搜索次数而增加。应用该求解策略,我们复现了在系泊缆制造商工业测试设施中进行的尼龙绳循环测试首周结果。针对桁架结构的数值算例进一步表明,在数据分布不对称及含噪声数据的情况下,我们的求解策略普遍提升了计算精度与鲁棒性。