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Stochastic Simulations Metamodels: RBF Neural Networks in Manufacturing Domain

机译:随机模拟元模型:制造领域的RBF神经网络

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Research into emerging technological approaches to make computer simulations more effective and efficient is an essential ingredient to developing successful manufacturing models. This study is a premiere study in using neural networks in metamodeling stochastic simulation in manufacturing domain. A new iterative RBF neural network was developed rather than the baseline ANN models which were used in stochastic simulation metamodeling in domains such as combat simulations in the military, service industries, and transportation companies. Given the fact that typical stochastic simulation metamodeling approaches involves the use of regression models in response surface methods, RBF become a natural target for such an attempt because they use a family of surfaces each of which naturally divides an input space into 2 regions and the n patterns will be assigned either class X+ or X-. This dichotomy of the points is said to be separable with respect to the family of surfaces if there exists a surface in the family that separates the points in the class X+ from those in the class X-. In fact, for the evaluation of the quality of a ball steel, RBF metamodel trained on 1521 training examples from a set of 13000 different simulation runs and was able to outperform direct simulation on 120 additional test examples which were not included in the training set
机译:对使计算机仿真更加有效和高效的新兴技术方法的研究,对于开发成功的制造模型至关重要。这项研究是在制造领域中使用神经网络进行元建模随机模拟的一项首要研究。开发了一种新的迭代RBF神经网络,而不是用于军事,服务业和运输公司中的作战模拟等领域的随机模拟元模型中的基线ANN模型。鉴于典型的随机模拟元建模方法涉及在响应面方法中使用回归模型这一事实,RBF成为此类尝试的自然目标,因为它们使用一系列曲面,每个曲面自然将输入空间划分为2个区域,而n模式将被分配为X +或X-类。如果族中存在一个将X +类中的点与X-类中的点分开的表面,则这些点的二分法相对于表面族是可分离的。实际上,为了评估球钢的质量,RBF元模型在13000个不同模拟运行的集合中的1521个训练示例上进行了训练,并且能够胜过训练集中未包含的120个其他测试示例的直接模拟

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