Li Jian, Shi Yang, Xuan Hejun
IEEE Trans Neural Netw Learn Syst. 2021 May;32(5):1896-1905. doi: 10.1109/TNNLS.2020.2995396. Epub 2021 May 3.
Many time-varying problems have been solved using the zeroing neural network proposed by Zhang et al. In this article, nine types of time-varying problems, namely time-varying nonlinear equation system, time-varying linear equation system, time-varying convex nonlinear optimization under linear equalities, unconstrained time-varying convex nonlinear optimization, time-varying convex quadratic programming under linear equalities, unconstrained time-varying convex quadratic programming, time-varying nonlinear inequality system, time-varying linear inequality system, and time-varying division, are investigated to better understand the essence of zeroing neutral network. Discrete-form time-varying problems are studied by considering the nature of unknown future and the requirement of real-time computation for time-varying problems. A unified model is proposed in the frame of zeroing neural network to uniformly solve these time-varying problems on the basis of their connections and a newly developed discretization formula. Theoretical analyses and numerical experiments, including the tracking control of PUMA560 robot manipulator, verify the effectiveness and precision of the proposed unified model.
许多时变问题已经通过Zhang等人提出的归零神经网络得到解决。在本文中,为了更好地理解归零神经网络的本质,研究了九种时变问题,即时变非线性方程组、时变线性方程组、线性等式约束下的时变凸非线性优化、无约束时变凸非线性优化、线性等式约束下的时变凸二次规划、无约束时变凸二次规划、时变非线性不等式组、时变线性不等式组和时变除法。通过考虑未知未来的性质和时变问题的实时计算要求,研究了离散形式的时变问题。在归零神经网络的框架下提出了一个统一模型,基于这些时变问题之间的联系和新开发的离散化公式,统一求解这些时变问题。理论分析和数值实验,包括PUMA560机器人操纵器的跟踪控制,验证了所提出统一模型的有效性和精度。