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Long J. Neural Dynamics for Time-varying Problems.Advances and Applications 2025

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Long J. Neural Dynamics for Time-varying Problems.Advances and Applications 2025

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Category: Other
Total size: 26.28 MB
Added: 2025-04-11 13:36:02

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Info Hash: 025C9141A1D93A65809BD8D3972F8AF24E5958C6
Last updated: 10.4 hours ago

Description:

Textbook in PDF format This book mainly presents methods based on neural dynamics for the time-varying problems with applications, together with the corresponding theoretical analysis, simulative examples, and physical experiments. Based on these methods, their applications include motion planning of redundant manipulators, filter design, winner-take-all operation, multiple-input multiple-output system configuration, multi-linear tensor equation solving, and manipulability optimization are also presented. In this book, we present the design, proposal, development, analysis, modeling, and simulation of various neural dynamic models, along with their respective applications including motion planning of redundant manipulators, filter design, winner-take-all operation, multiple-input multiple-output system configuration, multi-linear tensor equation solving, and manipulability optimization. Specifically, starting from the top-level considerations of hardware implementation, we integrate computational intelligence methods and control theory to design a series of dynamic and noise-resistant discrete neural dynamic methods. The research work not only owns the theoretical guarantee on its convergence, noise resistance, and accuracy, but demonstrate the effectiveness and robustness in solving various optimization and equation solving problems, particularly in handling time-varying problems and noise perturbations. Moreover, by reducing complexity and avoiding matrix inversion operations, the models’ feasibility and practicality are further enhanced. Front Matter Neural Dynamics Based on Control Theoretical Techniques Complex-Valued Discrete-Time Neural Dynamics Noise-Tolerant Neural Dynamics Computational Neural Dynamics Discrete Computational Neural Dynamics High-Order Robust Discrete-Time Neural Dynamics Collaborative Neural Dynamics Back Matter