A Method of Two New Augmented Lagrange Multiplier Versions for Solving Constrained Problems

Hamsa Th. Saeed Chilmeran, Eman T. Hamed, Huda I. Ahmed, A. Al-Bayati
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引用次数: 1

Abstract

One of the more restrictive methods of improvement is the augmented Lagrange method. Two versions are built in the external framework and the internal framework of the proposed method. The first basic version of the proposed algorithm includes a new derivation of Lagrange multiples and different penalty criteria, and the second version is the internal framework in which the unconstrained algorithm known as the conjugate gradient (CG) method was incorporated; also, a new parameter was derived in the search direction. The numerical results are indicative of the stability, efficiency, and speed of the proposed algorithm, based on performance profiles provided by Dolan and More.
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求解约束问题的两种增广拉格朗日乘子的新方法
其中一种限制性更强的改进方法是增广拉格朗日法。在该方法的外部框架和内部框架中构建了两个版本。该算法的第一个基本版本包括一个新的拉格朗日倍数的推导和不同的惩罚准则,第二个版本是一个内部框架,其中被称为共轭梯度(CG)方法的无约束算法;同时,在搜索方向上导出了一个新的参数。基于Dolan和More提供的性能概要,数值结果表明了所提出算法的稳定性、效率和速度。
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