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A Neural Network Model for Solving Nonlinear Optimization Problems with Real-Time Applications

机译:实时应用求解非线性优化问题的神经网络模型

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摘要

A new neural network model is proposed for solving nonlinear optimization problems with a general form of linear constraints. Linear constraints, which may include equality, inequality and bound constraints, are considered to cover the need for engineering applications. By employing this new model in image fusion algorithm, an optimal fusion vector is exploited to enhance the quality of fused images efficiently. The stability and convergence analysis of the novel model are proved in details. The simulation examples are used to demonstrate the validity of the proposed model.
机译:提出了一种新的神经网络模型来解决具有线性约束一般形式的非线性优化问题。线性约束(可能包括相等性,不等式和边界约束)被认为可以满足工程应用的需求。通过在图像融合算法中采用这种新模型,可以利用最佳融合矢量来有效地提高融合图像的质量。详细证明了该模型的稳定性和收敛性。仿真实例证明了所提模型的有效性。

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