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Discrete time-variant nonlinear optimization and system solving via integral-type error function and twice ZND formula with noises suppressed

机译:通过整体型误差函数和具有噪声的两次ZnD公式的离散时变非线性优化和系统抑制

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摘要

In this paper, by using integral-type error function and twice zeroing neural-dynamics (or termed, Zhang neural-dynamics, ZND) formula, continuous-time advanced zeroing neural-dynamics (CT-AZND) model is proposed for solving the continuous time-variant nonlinear optimization problem. Furthermore, a discrete-time advanced zeroing neural-dynamics (DT-AZND) model is first proposed, analyzed, and investigated for solving the discrete time-variant nonlinear optimization (DTVNO) problem. Theoretical analyses show that the proposed DT-AZND model is convergent, and its steady-state residual error has an $$O(g^3)$$ O ( g 3 ) pattern with g denoting the sampling gap. In addition, in the presence of various kinds of noises, the proposed DT-AZND model possesses advantaged performance. In detail, the proposed DT-AZND model converges toward the time-variant theoretical solution of the DTVNO problem with $$O(g^3)$$ O ( g 3 ) residual error in the presence of an arbitrary constant noise and has excellent ability to suppress linear-form time-variant noise and bounded random noise. Illustrative numerical experiments further substantiate the efficacy and advantage of the proposed DT-AZND model for solving the DTVNO problem.
机译:在本文中,通过使用整体型误差函数和两次归零神经动力学(或称为张神经动态,ZnD)公式,提出了连续的高级归零神经动力学(CT-AZND)模型来解决连续时变非线性优化问题。此外,首先提出,分析并研究了用于解决离散时间变体非线性优化(DTVNO)问题的离散时间高级归零神经动力学(DT-AZND)模型。理论分析表明,所提出的DT-AZND模型是收敛的,其稳态残差误差有一个$$ o(g ^ 3)$$ o(g 3)模式,g表示采样间隙。此外,在存在各种噪声的情况下,所提出的DT-AZND模型具有优缺点。详细地,所提出的DT-AZND模型会聚到DTVNO问题的时间变体理论解决方案的DTVNO问题与$$ o(g ^ 3)$$ o(g 3)在存在任意恒定噪声的情况下,并且具有优异的抑制线性形成时间变量噪声和有界随机噪声的能力。说明性数值实验进一步证实了所提出的DT-AZND模型来解决DTVNO问题的功效和优点。

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