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Improved finite-time zeroing neural network for time-varying division

机译:改进有限时间归零神经网络,用于时变划分

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摘要

A novel complex varying-parameter finite-time zeroing neural network (VPFTZNN) for finding a solution to the time-dependent division problem is introduced. A comparative study in relation to the zeroing neural network (ZNN) and finite-time zeroing neural network (FTZNN) is established in terms of the error function and the convergence speed. The error graphs of the VPFTZNN design show promising results and perform better than corresponding ZNN and FTZNN graphs. The proposed dynamical systems are suitable tools for overcoming the division by zero difficulty, which appears in the time-varying division. An application of the introduced VPFTZNN model in an output tracking control time-varying linear system is demonstrated.
机译:提出了一种求解含时除法问题的复变参数有限时间零点神经网络(VPFTZNN)。从误差函数和收敛速度两个方面对零点神经网络(ZNN)和有限时间零点神经网络(FTZNN)进行了比较研究。VPFTZNN设计的误差图显示了有希望的结果,并且性能优于相应的ZNN和FTZNN图。所提出的动力系统是克服时变除法中零除法困难的合适工具。介绍了VPFTZNN模型在输出跟踪控制时变线性系统中的应用。

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