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The experimental study of population-based parameter optimization algorithms on rule-based ecological modelling

机译:基于规则的生态建模中基于种群的参数优化算法的实验研究

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This study investigates six population-based algorithms for the parameter optimization (PO) within the hybrid methodology developed for modelling algal abundance by rule-based models. These PO algorithms include: (1) Hill Climbing (2) Simulated Annealing (3) Genetic Algorithm (4) Differential Evolution (5) Covariance Matrix Adaptation Evolution Strategy and (6) Estimation of Distribution Algorithm. The effectiveness of algorithms is tested on the Cylindrospermopsis abundance data from Wivenhoe Reservoir in Queensland (Australia). We provide a systematic analysis and comparison of different parameter optimization algorithms as well as the resulting predictive rule models.
机译:这项研究调查了六种基于种群的算法,用于在基于规则的模型对藻类丰度进行建模的混合方法论中进行参数优化(PO)。这些PO算法包括:(1)爬坡(2)模拟退火(3)遗传算法(4)差分演化(5)协方差矩阵适应演化策略和(6)估计分布算法。对算法的有效性进行了测试,该数据来自昆士兰州(澳大利亚)维文霍水库的圆柱精子丰度数据。我们提供了不同参数优化算法以及由此产生的预测规则模型的系统分析和比较。

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