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Master-Leader-Slave Cuckoo Search with Parameter Control for ANN Optimization and Its Real-World Application to Water Quality Prediction

机译:基于参数控制的主从奴杜鹃搜索及其在水质预测中的实际应用

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摘要

Artificial neural networks (ANNs) have been employed to solve a broad variety of tasks. The selection of an ANN model with appropriate weights is important in achieving accurate results. This paper presents an optimization strategy for ANN model selection based on the cuckoo search (CS) algorithm, which is rooted in the obligate brood parasitic actions of some cuckoo species. In order to enhance the convergence ability of basic CS, some modifications are proposed. The fraction Pa of the n nests replaced by new nests is a fixed parameter in basic CS. As the selection of Pa is a challenging issue and has a direct effect on exploration and therefore on convergence ability, in this work the Pa is set to a maximum value at initialization to achieve more exploration in early iterations and it is decreased during the search to achieve more exploitation in later iterations until it reaches the minimum value in the final iteration. In addition, a novel master-leader-slave multi-population strategy is used where the slaves employ the best fitness function among all slaves, which is selected by the leader under a certain condition. This fitness function is used for subsequent Lévy flights. In each iteration a copy of the best solution of each slave is migrated to the master and then the best solution is found by the master. The method is tested on benchmark classification and time series prediction problems and the statistical analysis proves the ability of the method. This method is also applied to a real-world water quality prediction problem with promising results.
机译:人工神经网络(ANN)已被用来解决各种各样的任务。选择具有适当权重的ANN模型对于获得准确的结果很重要。本文提出了一种基于布谷鸟搜索(CS)算法的神经网络模型选择优化策略,该策略植根于某些布谷鸟物种专心的寄生行为。为了增强基本CS的收敛能力,提出了一些修改。在基本CS中,被新嵌套替换的n个嵌套的分数Pa是固定参数。由于Pa的选择是一个具有挑战性的问题,并且对勘探以及因此对收敛能力有直接影响,因此在这项工作中,将Pa设置为初始化时的最大值,以在早期迭代中实现更多勘探,并且在搜索过程中将其降低在后续迭代中获得更多利用,直到最终迭代中达到最小值为止。另外,当从属在所有从属中具有最佳适应性功能时,使用一种新颖的主-从-从多人口策略,该功能由领导者在特定条件下选择。此健身功能用于后续的Lévy航班。在每次迭代中,将每个从属服务器的最佳解决方案副本迁移到主服务器,然后由主服务器找到最佳解决方案。对基准分类和时间序列预测问题进行了测试,统计分析证明了该方法的有效性。该方法也被应用于具有预期结果的现实世界水质预测问题。

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