Zhang Yunong, Wang Jun, Xia Youshen
Dept. of Autom. and Comput.-Aided Eng., Chinese Univ. of Hong Kong, Shatin, China.
IEEE Trans Neural Netw. 2003;14(3):658-67. doi: 10.1109/TNN.2003.810607.
In this paper, a recurrent neural network called the dual neural network is proposed for online redundancy resolution of kinematically redundant manipulators. Physical constraints such as joint limits and joint velocity limits, together with the drift-free criterion as a secondary task, are incorporated into the problem formulation of redundancy resolution. Compared to other recurrent neural networks, the dual neural network is piecewise linear and has much simpler architecture with only one layer of neurons. The dual neural network is shown to be globally (exponentially) convergent to optimal solutions. The dual neural network is simulated to control the PA10 robot manipulator with effectiveness demonstrated.
本文提出了一种名为对偶神经网络的递归神经网络,用于运动学冗余机器人的在线冗余度求解。诸如关节极限和关节速度极限等物理约束,以及作为次要任务的无漂移准则,被纳入到冗余度求解的问题表述中。与其他递归神经网络相比,对偶神经网络是分段线性的,并且具有更简单的架构,仅含一层神经元。结果表明,对偶神经网络全局(指数)收敛于最优解。通过对PA10机器人机械手进行控制仿真,验证了对偶神经网络的有效性。