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Cooperative recurrent modular neural networks for constrained optimization: a survey of models and applications

机译:协作循环模块化神经网络用于约束优化:模型和应用的概述

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摘要

Constrained optimization problems arise in a wide variety of scientific and engineering applications. Since several single recurrent neural networks when applied to solve constrained optimization problems for real-time engineering applications have shown some limitations, cooperative recurrent neural network approaches have been developed to overcome drawbacks of these single recurrent neural networks. This paper surveys in details work on cooperative recurrent neural networks for solving constrained optimization problems and their engineering applications, and points out their standing models from viewpoint of both convergence to the optimal solution and model complexity. We provide examples and comparisons to shown advantages of these models in the given applications.
机译:约束的优化问题出现在各种各样的科学和工程应用中。由于当将多个单个递归神经网络用于解决实时工程应用的约束优化问题时显示出一些局限性,因此已经开发了协作式递归神经网络方法来克服这些单个递归神经网络的缺点。本文详细研究了用于解决约束优化问题的协同递归神经网络及其工程应用,并从收敛到最优解和模型复杂性的角度指出了它们的站立模型。我们提供示例和比较,以显示在给定应用中这些模型的优势。

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