A distributed penalty-based zeroing neural network for time-varying optimization with both equality and inequality constraints and its application to cooperative control of redundant robot manipulators
Liu He, Hui Cheng, Yunong Zhang

TL;DR
This paper introduces a new neural network algorithm for solving time-varying optimization problems in multi-agent systems, with applications to robot control.
Contribution
A novel distributed penalty-based zeroing neural network is proposed for time-varying constrained optimization in multi-agent systems.
Findings
The PB-ZNN model achieves consensus and constraint satisfaction in a semi-centralized manner.
The DPB-ZNN algorithm solves discrete-time problems in a fully distributed way with proven convergence.
Numerical experiments confirm the algorithm's effectiveness in cooperative robot manipulator control.
Abstract
This study addresses the distributed optimization problem with time-varying objective functions and time-varying constraints in a multi-agent system (MAS). To tackle the distributed time-varying constrained optimization (DTVCO) problem, each agent in the MAS communicates with its neighbors while relying solely on local information, such as its own objective function and constraints, to compute the optimal solution. We propose a novel penalty-based zeroing neural network (PB-ZNN) to solve the continuous-time DTVCO (CTDTVCO) problem. The PB-ZNN model incorporates two penalty functions: The first penalizes agents for deviating from the states of their neighbors, driving all agents to reach a consensus, and the second penalizes agents for falling outside the feasible range, ensuring that the solutions of all agents remain within the constraints. The PB-ZNN model solves the CTDTVCO problem…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Advanced Memory and Neural Computing · Neural Networks Stability and Synchronization
