An improved genetic algorithm for hydrological model calibration

Jungang Luo, Jiancang Xie, Yuxin Ma, Gang Zhang
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引用次数: 2

Abstract

In order to overcome the disadvantages of quasi-genetic algorithm of slow convergence speed and premature convergence, an improved genetic algorithm of directional self-learning (DSLGA) is proposed in this paper. The directional information is introduced in local search process of the self-learning operator. And the search direction is guided by the pseudo-gradient of the function. By competition, cooperation and learning among the individuals, best solution is updated continuously. And a deletion operator is proposed in order to increase the population diversity, which avoid premature convergence and improve the algorithm convergence speed. Theoretical analysis has proved that DSLGA has the characteristic of global convergence. In experiment, DSLGA was tested by 5 unconstrained high-dimensional functions, and the results were compared with MAGA. Finally, the DSLGA was applied to optimal parameters estimation for Muskingum model, and compared with GAGA and MAGA. The experiment and application results show that DSLGA performs much better than the above algorithms both in quality of solutions and in computational complexity. So the effectiveness of algorithm is obvious.
一种用于水文模型标定的改进遗传算法
为了克服准遗传算法收敛速度慢和过早收敛的缺点,提出了一种改进的定向自学习遗传算法。在自学习算子的局部搜索过程中引入方向信息。搜索方向由函数的伪梯度引导。通过个体之间的竞争、合作和学习,不断更新最佳解决方案。为了增加种群的多样性,提出了一种删除算子,避免了过早收敛,提高了算法的收敛速度。理论分析证明了DSLGA具有全局收敛的特点。实验中,采用5个无约束高维函数对DSLGA进行了测试,并与MAGA进行了比较。最后,将DSLGA应用于Muskingum模型的最优参数估计,并与GAGA和MAGA进行了比较。实验和应用结果表明,DSLGA在解质量和计算复杂度方面都优于上述算法。因此,该算法的有效性是显而易见的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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