Taylor Kriging Metamodeling for Simulation Interpolation, Sensitivity Analysis and Optimization Tin-yau Tam Professor Mathematics and Statistics Sensitivity Analysis and Optimization Taylor Kriging Metamodeling for Simulation Interpolation, Sensitivity Analysis and Optimization
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Except where reference is made to the work of others, the work described in this dissertation is my own or was done in collaboration with my advisory committee. This dissertation does not include proprietary or classified information. Permission is granted to Auburn University to make copies of this dissertation at its discretion, upon the request of individuals or institutions and at their expense. The author reserves all publication rights.
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تاریخ انتشار 2009