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Latin hypercube sampling with inequality constraints

机译:具有不等式约束的拉丁超立方体采样

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In some studies requiring predictive and CPU-time consuming numerical models, the sampling design of the model input variables has to be chosen with caution. For this purpose, Latin hypercube sampling has a long history and has shown its robustness capabilities. In this paper we propose and discuss a new algorithm to build a Latin hypercube sample (LHS) taking into account inequality constraints between the sampled variables. This technique, called constrained Latin hypercube sampling (cLHS), consists in doing permutations on an initial LHS to honor the desired monotonic constraints. The relevance of this approach is shown on a real example concerning the numerical welding simulation, where the inequality constraints are caused by the physical decreasing of some material properties in function of the temperature.
机译:在一些需要预测和耗时的数值模型的研究中,必须谨慎选择模型输入变量的抽样设计。为此,拉丁超立方体采样具有悠久的历史并显示出其鲁棒性。在本文中,我们提出并讨论了一种新的算法,该算法将考虑采样变量之间的不等式约束来构建拉丁文超立方体样本(LHS)。这项技术被称为约束拉丁超立方体采样(cLHS),在于对初始LHS进行置换以遵守所需的单调约束。这种方法的相关性在关于数值焊接模拟的真实示例中得到了展示,其中不等式约束是由某些材料特性随温度的函数的物理下降而引起的。

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