首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Converting general nonlinear programming problems into separable programming problems with feedforward neural networks.
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Converting general nonlinear programming problems into separable programming problems with feedforward neural networks.

机译:使用前馈神经网络将一般的非线性规划问题转换为可分离的规划问题。

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摘要

In this paper we present a method for converting general nonlinear programming (NLP) problems into separable programming (SP) problems by using feedforward neural networks (FNNs). The basic idea behind the method is to use two useful features of FNNs: their ability to approximate arbitrary continuous nonlinear functions with a desired degree of accuracy and their ability to express nonlinear functions in terms of parameterized compositions of functions of single variables. According to these two features, any nonseparable objective functions and/or constraints in NLP problems can be approximately expressed as separable functions with FNNs. Therefore, any NLP problems can be converted into SP problems. The proposed method has three prominent features. (a) It is more general than existing transformation techniques; (b) it can be used to formulate optimization problems as SP problems even when their precise analytic objective function and/or constraints are unknown; (c) the SP problems obtained by the proposed method may highly facilitate the selection of grid points for piecewise linear approximation of nonlinear functions. We analyze the computational complexity of the proposed method and compare it with an existing transformation approach. We also present several examples to demonstrate the method and the performance of the simplex method with the restricted basis entry rule for solving SP problems.
机译:在本文中,我们提出了一种使用前馈神经网络(FNN)将一般非线性规划(NLP)问题转换为可分离规划(SP)问题的方法。该方法背后的基本思想是使用FNN的两个有用功能:以所需的精度逼近任意连续非线性函数的能力,以及根据单变量函数的参数化组成表达非线性函数的能力。根据这两个特征,NLP问题中的任何不可分离的目标函数和/或约束都可以近似表示为具有FNN的可分离函数。因此,任何NLP问题都可以转换为SP问题。所提出的方法具有三个突出特征。 (a)比现有的转换技术更为笼统; (b)即使其精确的分析目标函数和/或约束条件未知,也可以将优化问题表述为SP问题; (c)通过所提出的方法获得的SP问题可以极大地促进网格点的选择,以用于非线性函数的分段线性逼近。我们分析了该方法的计算复杂度,并将其与现有的转换方法进行了比较。我们还提供了一些示例来说明具有受限基本输入规则的单纯形法的方法和性能,以解决SP问题。

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