Wang Yufei, Hua Cheng, Khan Ameer Hamza
College of Computer Science and Engineering, Jishou University, Jishou 416000, China.
Smart City Research Institute (SCRI), Hong Kong Polytechnic University, Kowloon, Hong Kong.
Biomimetics (Basel). 2025 Apr 29;10(5):279. doi: 10.3390/biomimetics10050279.
Zeroing neural networks (ZNN), as a specialized class of bio-Iinspired neural networks, emulate the adaptive mechanisms of biological systems, allowing for continuous adjustments in response to external variations. Compared to traditional numerical methods and common neural networks (such as gradient-based and recurrent neural networks), this adaptive capability enables the ZNN to rapidly and accurately solve time-varying problems. By leveraging dynamic zeroing error functions, the ZNN exhibits distinct advantages in addressing complex time-varying challenges, including matrix inversion, nonlinear equation solving, and quadratic optimization. This paper provides a comprehensive review of the evolution of ZNN model formulations, with a particular focus on single-integral and double-integral structures. Additionally, we systematically examine existing nonlinear activation functions, which play a crucial role in determining the convergence speed and noise robustness of ZNN models. Finally, we explore the diverse applications of ZNN models across various domains, including robot path planning, motion control, multi-agent coordination, and chaotic system regulation.
归零神经网络(ZNN)作为一类特殊的受生物启发的神经网络,模拟生物系统的自适应机制,能够根据外部变化进行持续调整。与传统数值方法和普通神经网络(如基于梯度的神经网络和递归神经网络)相比,这种自适应能力使ZNN能够快速准确地解决时变问题。通过利用动态归零误差函数,ZNN在解决复杂时变挑战方面展现出显著优势,包括矩阵求逆、非线性方程求解和二次优化。本文全面回顾了ZNN模型公式的演变,特别关注单积分和双积分结构。此外,我们系统地研究了现有的非线性激活函数,它们在决定ZNN模型的收敛速度和噪声鲁棒性方面起着关键作用。最后,我们探讨了ZNN模型在各个领域的多样化应用,包括机器人路径规划、运动控制、多智能体协调和混沌系统调节。