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A Novel Swarm-Exploring Neurodynamic Network for Obtaining Global Optimal Solutions to Nonconvex Nonlinear Programming Problems

Yamei Luo, Xingru Li, Zhongxi Li, Jilong Xie, Zhijun Zhang, Xiaoli Li

2024IEEE Transactions on Cybernetics22 citationsDOI

Abstract

A swarm-exploring neurodynamic network (SENN) based on a two-timescale model is proposed in this study for solving nonconvex nonlinear programming problems. First, by using a convergent-differential neural network (CDNN) as a local quadratic programming (QP) solver and combining it with a two-timescale model design method, a two-timescale convergent-differential (TTCD) model is exploited, and its stability is analyzed and described in detail. Second, swarm exploration neurodynamics are incorporated into the TTCD model to obtain an SENN with global search capabilities. Finally, the feasibility of the proposed SENN is demonstrated via simulation, and the superiority of the SENN is exhibited through a comparison with existing collaborative neurodynamics methods. The advantage of the SENN is that it only needs a single recurrent neural network (RNN) interact, while the compared collaborative neurodynamic approach (CNA) involves multiple RNN runs.

Topics & Concepts

Swarm behaviourNonlinear systemComputer scienceMathematical optimizationNonlinear programmingArtificial intelligenceMathematicsPhysicsQuantum mechanicsNeural Networks and ApplicationsMetaheuristic Optimization Algorithms Research
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