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Chebyshev Inequality Based Approach to Chance Constrained Optimization Problems Using Differential Evolution

机译:基于Chebyshev不等式的差分演化机会约束优化问题方法

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A new approach to solve Chance Constrained Optimization Problem (CCOP) without using the Monte Carlo simulation is proposed. Specifically, the prediction interval based on Chebyshev inequality is used to estimate a stochastic function value included in CCOP from a set of samples. By using the prediction interval, CCOP is transformed into Upper-bound Constrained Optimization Problem (UCOP). The feasible solution of UCOP is proved to be feasible for CCOP. In order to solve UCOP efficiently, a modified Differential Evolution (DE) combined with three sample-saving techniques is also proposed. Through the numerical experiments, the usefulness of the proposed approach is demonstrated.
机译:提出了一种无需使用蒙特卡洛模拟即可解决机会约束优化问题的新方法。具体地,基于切比雪夫不等式的预测间隔被用于根据一组样本来估计包括在CCOP中的随机函数值。通过使用预测间隔,将CCOP转换为上限约束优化问题(UCOP)。 UCOP的可行解决方案被证明对于CCOP是可行的。为了有效地解决UCOP问题,还提出了一种结合三种样本节省技术的改进的差分进化(DE)方法。通过数值实验,证明了该方法的有效性。

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