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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B >Convergence acceleration of the Hopfield neural network by optimizing integration step sizes
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Convergence acceleration of the Hopfield neural network by optimizing integration step sizes

机译:通过优化积分步长来提高Hopfield神经网络的收敛速度

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In our previous work we have clarified global convergence of the Hopfield neural network and showed, by computer simulations, improvement of solution quality by gradually decreasing the diagonal elements of the coefficient matrix. In this paper, to accelerate convergence of the Hopfield network, at each time step the integration step size is determined dynamically so that at least one component of a variable vector reaches the surface of the hypercube. The computer simulation for the traveling salesman problem and an LSI module placement problem shows that convergence is stabilized and accelerated compared to integration by a constant step size.
机译:在我们以前的工作中,我们阐明了Hopfield神经网络的全局收敛性,并通过计算机仿真显示了通过逐渐减少系数矩阵的对角元素来提高解质量的方法。在本文中,为了加速Hopfield网络的收敛,在每个时间步上动态确定积分步长,以使变量矢量的至少一个分量到达超立方体的表面。针对旅行推销员问题和LSI模块放置问题的计算机仿真表明,与集成相比,以恒定步长进行稳定和加速收敛。

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