Dai Jianhua, Jia Lei, Xiao Lin
IEEE Trans Neural Netw Learn Syst. 2021 Apr;32(4):1668-1677. doi: 10.1109/TNNLS.2020.2986275. Epub 2021 Apr 2.
The zeroing neural network (ZNN) activated by nonlinear activation functions plays an important role in many fields. However, conventional ZNN can only realize finite-time convergence, which greatly limits the application of ZNN in a noisy environment. Generally, finite-time convergence depends on the original state of ZNN, but the original state is often unknown in advance. In addition, when meeting with different noises, the applied nonlinear activation functions cannot tolerate external disturbances. In this article, on the strength of this idea, two prescribed-time and robust ZNN (PTR-ZNN) models activated by two nonlinear activation functions are put forward to address the time-variant Stein matrix equation. The proposed two PTR-ZNN models own two remarkable advantages simultaneously: 1) prescribed-time convergence that does not rely on original states and 2) superior noise-tolerance performance that can tolerate time-variant bounded vanishing and nonvanishing noises. Furthermore, the detailed theoretical analysis is provided to guarantee the prescribed-time convergence and noise-tolerance performance, with the convergence upper bounds of steady-state residual errors calculated. Finally, simulative comparison results indicate the effectiveness and the superiority of the proposed two PTR-ZNN models for the time-variant Stein matrix equation solving.
由非线性激活函数激活的归零神经网络(ZNN)在许多领域发挥着重要作用。然而,传统的ZNN只能实现有限时间收敛,这极大地限制了ZNN在噪声环境中的应用。一般来说,有限时间收敛取决于ZNN的初始状态,但初始状态往往事先未知。此外,当遇到不同噪声时,所应用的非线性激活函数无法容忍外部干扰。在本文中,基于这一思想,提出了由两种非线性激活函数激活的两种预设时间且鲁棒的ZNN(PTR-ZNN)模型,以解决时变斯坦因矩阵方程。所提出的两种PTR-ZNN模型同时具有两个显著优点:1)不依赖初始状态的预设时间收敛;2)能够容忍时变有界消失和非消失噪声的卓越抗噪性能。此外,还提供了详细的理论分析,以保证预设时间收敛和抗噪性能,并计算了稳态残余误差的收敛上界。最后,仿真比较结果表明了所提出两种PTR-ZNN模型在求解时变斯坦因矩阵方程方面的有效性和优越性。