基于改进粒子群算法的Muskingum模型最优参数估计

Wenchuan Wang, Y. Kang, Lin Qiu
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引用次数: 9

摘要

Muskingum模型参数的准确估计为水资源规划和管理中的防洪预报提供了依据。虽然已经使用了一些方法来估计Muskingum模型的参数,但仍然缺乏一种有效的方法来估计校准过程中的参数。为了减少参数估计的计算量,提高参数估计的计算精度,提出了一种改进的粒子群算法(MPSO)用于Muskingum模型的参数优化。该方法根据最小残差绝对值的和找到了与以往结果相比的最佳参数值。涉及现有论文历史数据的实证结果表明,所提出的MPSO优于文献中的其他方法。
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Optimal Parameter Estimation for Muskingum Model Using a Modified Particle Swarm Algorithm
The accurate parameter estimation for Muskingum model is to be useful to give the flood forecasting for flood control in water resources planning and management. Although some methods have been used to estimate the parameters for Muskingum model, an efficient method for parameter estimation in the calibration process is still lacking. In order to reduce the computational amount and improve the computational precision for parameter estimation, a modified particle swarm algorithm (MPSO) is presented for parameter optimization of Muskingum model. The technique found the best parameter values compared to previous results in terms of the sum of least residual absolute value. Empirical results that involve historical data from existed paper reveal the proposed MPSO outperforms other approaches in the literature.
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