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Solving Optimization Problems Based on Chaotic Neural Network with Hysteretic Activation Function

机译:基于混沌神经网络的滞回激活功能解决优化问题

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We present a new chaotic neural network whose neuron activation function is hysteretic, called hysteretic transiently chaotic neural network (HTCNN) and with this network, a combinatorial optimization problem is solved. By using hysteretic activation function which is multi-valued, has memory, is adaptive, HTCNN has higher ability of overcoming drawbacks that suffered from the local minimum. We proceed to prove Lyapunov stability for this new model, and then solve a combinatorial optimization problem-Assignment problems. Numerical simulations show that HTCNN has higher ability to search for globally optimal and has higher searching efficiency.
机译:我们提出了一种新的混沌神经网络,其神经元激活功能是滞后,称为滞后瞬态混沌神经网络(HTCNN)和该网络,解决了组合优化问题。通过使用多值的滞后激活功能,具有内存,是自适应的,HTCNN具有更高的潜入局部最小缺点的能力。我们继续证明Lyapunov稳定性的这种新模型,然后解决组合优化问题 - 分配问题。数值模拟表明,HTCNN具有更高的搜索全局最优的能力,并且具有更高的搜索效率。

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