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Applying EGO to Large Dimensional Optimizations: A Wideband Fragmented Patch Example

机译:将EGO应用于大规模优化:宽带碎片补丁示例

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Efficient Global Optimization (EGO) minimizes expensive cost function evaluations by correlating evaluated parameter sets and respective solutions to model the optimization space. For optimizations requiring destructive testing or lengthy simulations, this computational overhead represents a desirable tradeoff. However, the inspection of the predictor space to determine the next evaluation point can be a time-intensive operation. Although DACE predictor evaluation may be conducted for limited parameters by exhaustive sampling, this method is not extendable to large dimensions. We apply EGO here to the 11-dimensional optimization of a wide-band fragmented patch antenna and present an alternative genetic algorithm approach for selecting the next evaluation point. We compare results achieved with EGO on this optimization problem to previous results achieved with a genetic algorithm.
机译:高效全局优化(EGO)通过关联评估的参数集和相应的解决方案来对优化空间进行建模,从而将昂贵的成本函数评估减至最少。对于需要破坏性测试或冗长模拟的优化,此计算开销代表了理想的折衷。但是,检查预测变量空间以确定下一个评估点可能是耗时的操作。尽管可以通过穷举采样对有限的参数进行DACE预测器评估,但是该方法无法扩展到较大的尺寸。我们在这里将EGO应用于宽带分段贴片天线的11维优化,并提出了用于选择下一个评估点的替代遗传算法方法。我们将EGO在此优化问题上获得的结果与以前使用遗传算法获得的结果进行比较。

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