On three-term conjugate gradient method for optimization problems with applications on COVID-19 model and robotic motion control.

Ibrahim Mohammed Sulaiman, Maulana Malik, Aliyu Muhammed Awwal, Poom Kumam, Mustafa Mamat, Shadi Al-Ahmad
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引用次数: 17

Abstract

The three-term conjugate gradient (CG) algorithms are among the efficient variants of CG algorithms for solving optimization models. This is due to their simplicity and low memory requirements. On the other hand, the regression model is one of the statistical relationship models whose solution is obtained using one of the least square methods including the CG-like method. In this paper, we present a modification of a three-term conjugate gradient method for unconstrained optimization models and further establish the global convergence under inexact line search. The proposed method was extended to formulate a regression model for the novel coronavirus (COVID-19). The study considers the globally infected cases from January to October 2020 in parameterizing the model. Preliminary results have shown that the proposed method is promising and produces efficient regression model for COVID-19 pandemic. Also, the method was extended to solve a motion control problem involving a two-joint planar robot.

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三项共轭梯度法在COVID-19模型和机器人运动控制中的应用
三项共轭梯度(CG)算法是求解优化模型的一种有效的CG算法。这是由于它们的简单性和低内存需求。另一方面,回归模型是一种统计关系模型,其解是使用最小二乘法之一,包括类cg方法。本文对无约束优化模型的一种三项共轭梯度法进行了改进,进一步建立了非精确直线搜索下的全局收敛性。将该方法扩展到新型冠状病毒(COVID-19)的回归模型。该研究考虑了2020年1月至10月全球感染病例的参数化模型。初步结果表明,该方法具有较好的应用前景,能够建立有效的COVID-19大流行回归模型。并将该方法推广到两关节平面机器人的运动控制问题。
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