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Chaotic neural network applied to two-dimensional motion control

机译:混沌神经网络在二维运动控制中的应用

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Chaotic dynamics generated in a chaotic neural network model are applied to 2-dimensional (2-D) motion control. The change of position of a moving object in each control time step is determined by a motion function which is calculated from the firing activity of the chaotic neural network. Prototype attractors which correspond to simple motions of the object toward four directions in 2-D space are embedded in the neural network model by designing synaptic connection strengths. Chaotic dynamics introduced by changing system parameters sample intermediate points in the high-dimensional state space between the embedded attractors, resulting in motion in various directions. By means of adaptive switching of the system parameters between a chaotic regime and an attractor regime, the object is able to reach a target in a 2-D maze. In computer experiments, the success rate of this method over many trials not only shows better performance than that of stochastic random pattern generators but also shows that chaotic dynamics can be useful for realizing robust, adaptive and complex control function with simple rules. Keywords Constrained chaos - Chaotic neural network - Motion control - 2-Dimensional maze - Ill-posed problem
机译:在混沌神经网络模型中生成的混沌动力学应用于二维(2-D)运动控制。运动对象在每个控制时间步中的位置变化由运动函数确定,该运动函数是根据混沌神经网络的触发活动计算得出的。通过设计突触连接强度,将与对象在二维空间中向四个方向的简单运动对应的原型吸引子嵌入到神经网络模型中。通过更改系统参数引入的混沌动力学会对嵌入式吸引子之间的高维状态空间中的中间点进行采样,从而导致各个方向的运动。通过在混沌状态和吸引子状态之间自适应地切换系统参数,对象可以在二维迷宫中到达目标。在计算机实验中,该方法在许多试验中的成功率不仅显示出比随机随机模式发生器更好的性能,而且还表明,混沌动力学对于通过简单规则实现鲁棒,自适应和复杂的控制功能很有用。约束混沌-混沌神经网络-运动控制-二维迷宫-不适定问题

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