Litcius/Paper detail

Design and Comprehensive Analysis of a Noise-Tolerant ZNN Model With Limited-Time Convergence for Time-Dependent Nonlinear Minimization

Lin Xiao, Jianhua Dai, Rongbo Lu, Shuai Li, Jichun Li, Shoujin Wang

2020IEEE Transactions on Neural Networks and Learning Systems79 citationsDOI

Abstract

Zeroing neural network (ZNN) is a powerful tool to address the mathematical and optimization problems broadly arisen in the science and engineering areas. The convergence and robustness are always co-pursued in ZNN. However, there exists no related work on the ZNN for time-dependent nonlinear minimization that achieves simultaneously limited-time convergence and inherently noise suppression. In this article, for the purpose of satisfying such two requirements, a limited-time robust neural network (LTRNN) is devised and presented to solve time-dependent nonlinear minimization under various external disturbances. Different from the previous ZNN model for this problem either with limited-time convergence or with noise suppression, the proposed LTRNN model simultaneously possesses such two characteristics. Besides, rigorous theoretical analyses are given to prove the superior performance of the LTRNN model when adopted to solve time-dependent nonlinear minimization under external disturbances. Comparative results also substantiate the effectiveness and advantages of LTRNN via solving a time-dependent nonlinear minimization problem.

Topics & Concepts

Robustness (evolution)Nonlinear systemMinificationConvergence (economics)Artificial neural networkComputer scienceMathematical optimizationNoise (video)Control theory (sociology)MathematicsArtificial intelligencePhysicsGeneChemistryEconomicsImage (mathematics)Quantum mechanicsBiochemistryControl (management)Economic growthRobotic Mechanisms and DynamicsPiezoelectric Actuators and ControlNeural Networks and Applications