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A Comparison of Optimization Algorithms for Biological Neural Network Identification

机译:生物神经网络识别优化算法的比较

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Recently, the identification of biological neural networks has been reformulated as an optimization problem based on a framework of adaptive synchronization. In this paper, four different optimization algorithms, including genetic algorithm, jumping gene genetic algorithm (JGGA), tabu search, and simulated annealing, have been applied for this optimization problem. Based on the simulation results, their performances are compared, and it is concluded that JGGA can outperform the other three methods in term of minimizing the synchronization and parameter estimation errors.
机译:最近,基于自适应同步的框架,生物神经网络的识别已被重新构造为一个优化问题。本文针对此优化问题应用了四种不同的优化算法,包括遗传算法,跳跃基因遗传算法(JGGA),禁忌搜索和模拟退火。根据仿真结果,对它们的性能进行了比较,得出结论,在最小化同步和参数估计误差方面,JGGA可以优于其他三种方法。

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