Predefined-Time Noise Immunity ZNN Model for Dynamic Quaternion Least Squares Problem and Application to Synchronization of Hyperchaotic Systems

IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE(2024)

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摘要
Currently, there is a dearth of algorithms for solving the dynamic quaternion least squares problem (DQLSP), and the traditional numerical methods cannot solve dynamic problems effectively. To solve the DQLSP, a predefined-time noise immunity ZNN (PTNIZNN) model and a novel activation function are presented, building upon the traditional zeroing neural network (ZNN) model. The convergence time (CT) of the PTNIZNN model is only related to a predefined-time (PT) parameter, which makes it simpler to adjust the CT than the prior fixed-time convergence ZNN model. It is proved via mathematical deductive reasoning that the PT convergence and noise immunity of the PTNIZNN model hold when solving the DQLSP. In addition, a numerical example is given to demonstrate the correctness of mathematical deductive reasoning and the advantages of the PTNIZNN model. Finally, according to the design scheme of the PTNIZNN model, a new controller is designed to achieve the synchronization of the hyperchaotic Lorenz systems and applied to image encryption.
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关键词
Mathematical models,Quaternions,Computational modeling,Convergence,Numerical models,Synchronization,Computed tomography,Zeroing neural network,dynamic quaternion least squares problem,predefined-time convergence,noise immunity,hyperchaotic Lorenz systems,image encryption
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