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Adaptive grid based multi-objective Cauchy differential evolution for stochastic dynamic economic emission dispatch with wind power uncertainty

机译:基于自适应网格的多目标柯西微分演化用于风能不确定的随机动态经济排放调度

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摘要

Since wind power is integrated into the thermal power operation system, dynamic economic emission dispatch (DEED) has become a new challenge due to its uncertain characteristics. This paper proposes an adaptive grid based multi-objective Cauchy differential evolution (AGB-MOCDE) for solving stochastic DEED with wind power uncertainty. To properly deal with wind power uncertainty, some scenarios are generated to simulate those possible situations by dividing the uncertainty domain into different intervals, the probability of each interval can be calculated using the cumulative distribution function, and a stochastic DEED model can be formulated under different scenarios. For enhancing the optimization efficiency, Cauchy mutation operation is utilized to improve differential evolution by adjusting the population diversity during the population evolution process, and an adaptive grid is constructed for retaining diversity distribution of Pareto front. With consideration of large number of generated scenarios, the reduction mechanism is carried out to decrease the scenarios number with covariance relationships, which can greatly decrease the computational complexity. Moreover, the constraint-handling technique is also utilized to deal with the system load balance while considering transmission loss among thermal units and wind farms, all the constraint limits can be satisfied under the permitted accuracy. After the proposed method is simulated on three test systems, the obtained results reveal that in comparison with other alternatives, the proposed AGB-MOCDE can optimize the DEED problem while handling all constraint limits, and the optimal scheme of stochastic DEED can decrease the conservation of interval optimization, which can provide a more valuable optimal scheme for real-world applications.
机译:由于风电已集成到火电操作系统中,动态经济排放调度(DEED)由于其不确定的特性而成为新的挑战。提出了一种基于自适应网格的多目标柯西微分进化算法(AGB-MOCDE),用于求解具有风能不确定性的随机DEED。为了正确处理风电不确定性,通过将不确定性域划分为不同的区间,生成了一些情景来模拟那些可能的情况,可以使用累积分布函数来计算每个区间的概率,并且可以在不同的情况下建立随机的DEED模型。场景。为了提高优化效率,利用柯西突变操作通过在种群进化过程中调整种群多样性来改善差异进化,并构建了一个自适应网格来保留帕累托锋的多样性分布。考虑到生成的场景数量众多,采用减少机制来减少具有协方差关系的场景数量,从而可以大大降低计算复杂度。此外,约束处理技术还被用来处理系统负载平衡,同时考虑到热力单元和风电场之间的传输损失,所有的约束限制都可以在允许的精度下得到满足。在三种测试系统上对提出的方法进行仿真后,所得结果表明,与其他方法相比,提出的AGB-MOCDE可以在处理所有约束限制的同时优化DEED问题,而随机DEED的最优方案可以减少对DEED的守恒。间隔优化,可以为实际应用提供更有价值的优化方案。

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