非线性无约束优化的四项共轭梯度

A. Mustafa
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引用次数: 0

摘要

非线性共轭梯度(GJG)技术是解决大规模最小化问题的有效工具。它可以用于各种应用。本文提出了一种基于两个假设的共轭梯度方法,并对两个假设进行了均衡化,得到了较好的参数。为了得到一个新的共轭梯度,我们将新参数乘以一个控制参数,并代入第二个方程。提出了一个新的关于时延时延的方程。它具有全局收敛的特性。与两种最常见的共轭梯度技术相比,我们的算法在迭代次数(NOIS)和函数数量(NOFS)方面都优于它们。数值结果表明,新方法在实际计算中是有效的,在许多情况下优于以前的类似方法。
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Conjugated Gradient with Four Terms for Nonlinear Unconstrained Optimization
The nonlinear conjugate gradient (GJG) technique is an effective tool for addressing minimization on a huge scale. It can be used in a variety of applications., We presented a novel conjugate gradient approach based on two hypotheses, and we equalized the two hypotheses and retrieved the good parameter in this article. To get a new conjugated gradient, we multiplied the new parameter by a control parameter and substituted it in the second equation. a fresh equation for 𝛽𝑘 is proposed. It has global convergence qualities. When compared to the two most common conjugate gradient techniques, our algorithm outperforms them in terms of both the number of iterations (NOIS) and the number of functions (NOFS). The new technique is efficient in real computing and superior to previous comparable approaches in many instances, according to numerical results.
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