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Hybrid Chaotic Genetic Algorithms for Optimal Parameter Estimation of Muskingum Flood Routing Model

机译:马斯金格峰洪水泛洪模型最优参数估计的混合混沌遗传算法

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摘要

Accurate flood routing is essential for flood control in water resources planning and management. The Muskingum model continues to be popular method for flood routing. Its parameter estimation is a global optimization problem with the main objective to find a set of optimal model parameter values that attains a best fit between observed and computed flow. In order to improve the flood routing precision, a hybrid chaotic genetic algorithm (HCGA) based on chaotic sequence and GA is proposed for parameter estimation of Muskingum model. Empirical results that involve historical data from existed paper reveal the proposed HCGA outperforms other approaches in the literature.
机译:准确的洪水调度对水资源规划和管理中的防洪至关重要。 Muskingum模型仍然是洪水路线的流行方法。它的参数估计是一个全局优化问题,其主要目标是找到一组最佳模型参数值,以在观测流量和计算流量之间实现最佳拟合。为了提高洪水调度的精度,提出了一种基于混沌序列和遗传算法的混合混沌遗传算法(HCGA),用于Muskingum模型的参数估计。涉及现有论文历史数据的实证结果表明,拟议的HCGA优于文献中的其他方法。

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