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Fuzzy system identification through hybrid genetic algorithms

机译:混合遗传算法的模糊系统辨识

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Proposes a new hybrid genetic algorithm for fuzzy system learning. The algorithm is based on Baldwin's (1896) effect, with the inclusion of biological principles of learning. Rather than considering mutation as a stochastic event, we take into account the results of biological experiences that seem to indicate an individual capability to choose the best mutation. The proposed adaptive model consists of two levels: (a) an evolutionary or global level, which works on the generation of populations at the genetic code level; and (b) a learning or local level, which works during the lifetime of the agents, with the individuals reacting to environmental stimuli. The method has been applied in well-known learning problems, with strong supremacy over other hybrid genetic approaches, particularly in terms of the expressiveness of the learned fuzzy system.
机译:提出了一种用于模糊系统学习的新型混合遗传算法。该算法基于鲍德温(1896)效应,并包含生物学的学习原理。我们没有将突变视为随机事件,而是考虑了生物学经验的结果,这些结果似乎表明了个体选择最佳突变的能力。所提出的自适应模型包括两个层次:(a)进化或全局层次,该层次在遗传密码层次上致力于种群的产生; (b)在个体的生命周期内发挥作用的学习或地方水平,个体对环境刺激做出反应。该方法已应用于众所周知的学习问题中,尤其是在学习的模糊系统的表达能力方面,具有比其他杂种遗传方法强大的优势。

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