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Grammatical Evolution for Neural Network Optimization in the Control System Synthesis Problem

机译:控制系统综合问题中神经网络优化的语法进化

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Grammatical evolution is a perspective branch of the genetic programming. It uses evolutionary algorithm based search engine and Backus – Naur form of domain-specific language grammar specifications to find symbolic expressions. This paper describes an application of this method to the control function synthesis problem. Feed-forward neural network was used as an approximation of the control function, that depends on the object state variables. Two-stage algorithm is presented: grammatical evolution optimizes neural network structure and genetic algorithm tunes weights. Computational experiments were performed on the simple kinematic model of a two-wheel driving mobile robot. Training was performed on a set of initial conditions. Results show that the proposed algorithm is able to successfully synthesize a control function.
机译:语法进化是遗传编程的一个视角分支。它使用基于进化算法的搜索引擎和特定领域语言语法规范的Backus – Naur形式来查找符号表达式。本文介绍了该方法在控制功能综合问题中的应用。前馈神经网络被用作控制函数的近似值,该函数取决于对象状态变量。提出了两阶段算法:语法进化优化神经网络结构,遗传算法调整权重。在两轮驱动移动机器人的简单运动学模型上进行了计算实验。训练是在一组初始条件下进行的。结果表明,该算法能够成功地合成控制函数。

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