The time-dependent quadratic minimization (TDQM) problem appears in many applications and research projects. It has been reported that the zeroing neural network (ZNN) models can effectively solve the TDQM problem. However, the convergent and robust performance of the existing ZNN models are restricted for lack of a joint-action mechanism of adaptive coefficient and integration enhanced term. Consequently, the residual-based adaption coefficient zeroing neural network (RACZNN) model with integration term is proposed in this paper for solving the TDQM problem. The adaptive coefficient is proposed to improve the performance of convergence and the integration term is embedded to ensure the RACZNN model can maintain reliable robustness while perturbed by variant measurement noises. Compared with the state-of-the-art models, the proposed RACZNN model owns faster convergence and more reliable robustness. Then, theorems are provided to prove the convergence of the RACZNN model. Finally, corresponding quantitative numerical experiments are designed and performed in this paper to verify the performance of the proposed RACZNN model.
翻译:在许多应用和研究项目中,都出现了基于时间的二次峰值最小化(TDQM)问题,据报告,零神经网络(ZNN)模型能够有效解决TDQM问题,然而,由于缺乏适应系数和一体化强化条件的联合行动机制,现有的ZNN模型的趋同和稳健性表现受到限制,因此,本文件提出了基于剩余调整系数零神经网络(RACZNN)模型与整合术语相结合,以解决TDQM问题。建议采用适应系数是为了改进趋同性,并嵌入整合术语,以确保RACZNN模型能够保持可靠的稳健性,同时受到变异测量噪音的干扰。与最新模型相比,拟议的RACZNN模型拥有更快的趋同性和更可靠的稳健性。随后,提供了这些符号,以证明RACZNN模型的趋同性。最后,本文件设计和进行了相应的量化实验,以核实拟议的RACZNN模型的性能。