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Application research of multi-objective Artificial Bee Colony optimization algorithm for parameters calibration of hydrological model

机译:多目标人工群菌落优化算法应用研究水文模型参数校准

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摘要

Parameter optimization methods for hydrological models have an important impact for the hydrological forecasting. To achieve the parameters' optimization and calibration for the distributed, conceptual watershed Xinanjiang model effectively and accurately, a multi-objective Artificial Bee Colony algorithm named RMOABC which adopts the mechanisms of regulation operator and Adaptive Grid is introduced in the paper. In the evolution of the algorithm, the regulation operator mechanism can balance the weights of local search and global search, and the Adaptive Grid mechanism is utilized to evaluate and maintain the Pareto solutions in the external archive. In the experiments, three commonly used multi-objective optimization algorithms, the NSGA-II, the epsilon-MOEA and the SMPSO, with the RMOABC algorithm were applied in Heihe River Basin, and the parameter optimization problem of Xinanjiang hydrological model was taken as the application case for long-term runoff prediction to validate and compare their performance. The experiments results showed the RMOABC algorithm can provide more comprehensive and reliable parameters sets for practical hydrological forecasting in the study area with lower execution time.
机译:水文模型参数优化方法对水文预报具有重要影响。为了有效准确地实现了分布式的参数的优化和校准,概念概念流域的Xinanjiang模型,在纸上引入了一种名为RMOABC的多目标人造群落群体,该算法采用了调节操作员和自适应网格的机制。在算法的演变中,调节操作员机制可以平衡本地搜索和全局搜索的权重,并且利用自适应网格机制来评估和维护外部存档中的帕累托解决方案。在实验中,利用RMOABC算法,三种常用的多目标优化算法,NSGA-II,EPSILON-MOEA和SMPSO,在黑河河流域应用,并采取了新江水文模型的参数优化问题长期径流预测验证和比较其性能的应用案例。实验结果表明,RMOABC算法可以提供更全面且可靠的参数集,用于具有较低执行时间的研究区域中的实际水文预报。

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