Space-filling designs are important in computer experiments, which are critical for building a cheap surrogate model that adequately approximates an expensive computer code. Many design construction techniques in the existing literature are only applicable for rectangular bounded space, but in real world applications, the input space can often be non-rectangular because of constraints on the input variables. One solution to generate designs in a constrained space is to first generate uniformly distributed samples in the feasible region, and then use them as the candidate set to construct the designs. Sequentially Constrained Monte Carlo (SCMC) is the state-of-the-art technique for candidate generation, but it still requires large number of constraint evaluations, which is problematic especially when the constraints are expensive to evaluate. Thus, to reduce constraint evaluations and improve efficiency, we propose the Constrained Minimum Energy Design (CoMinED) that utilizes recent advances in deterministic sampling methods. Extensive simulation results on 15 benchmark problems with dimensions ranging from 2 to 13 are provided for demonstrating the improved performance of CoMinED over the existing methods.
翻译:空间填充设计在计算机实验中非常重要,因为计算机实验对于建立一个廉价的替代模型来说至关重要,该模型足够接近昂贵的计算机代码。现有文献中的许多设计建筑技术仅适用于矩形封闭空间,但在现实世界应用中,输入空间往往由于投入变量的限制而非矩形。在有限的空间中生成设计的一个解决办法是首先在可行区域生成统一分布的样本,然后将之作为设计设计对象的候选标本。 连续的 Constraced Monte Carlo(SCMC)是候选人最先进的技术,但它仍然需要大量的制约评估,特别是在限制评估费用昂贵的情况下,这很成问题。因此,为了减少限制评估并提高效率,我们建议利用最近在确定性取样方法上取得的进展,采用经过严格训练的最低限度能源设计(CoMINED) 。对涉及2至13个层面的15个基准问题进行了广泛的模拟结果,用于展示CMINED相对于现有方法的改进性能。