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Initialization Mechanism in Kohonen Neural Network Implemented in CMOS Technology

机译:CMOS技术在Kohonen神经网络中的初始化机制

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摘要

An initialization mechanism is presented for Kohonen neural network implemented in CMOS technology. Proper selection of initial values of neurons' weights has a large influence on speed of the learning algorithm and finally on the quantization error of the network, which for different initial parameters can vary even by several orders of magnitude. Experiments with the software model of designed network show that results can be additionally improved when conscience mechanism is used during the learning phase. This mechanism additionally decreases number of dead neurons, which minimizes the quantization error. The initialization mechanism together with experimental Kohonen neural network with four neurons and 3 inputs have been designed in CMOS 0.18 μm technology.
机译:提出了以CMOS技术实现的Kohonen神经网络的初始化机制。正确选择神经元权重的初始值会极大影响学习算法的速度,并最终影响网络的量化误差,对于不同的初始参数,网络的量化误差甚至可能会变化几个数量级。通过设计网络的软件模型进行的实验表明,在学习阶段使用良心机制可以进一步提高结果。该机制还减少了死亡神经元的数量,从而使量化误差最小。初始化机制以及具有4个神经元和3个输入的实验Kohonen神经网络已采用CMOS 0.18μm技术进行了设计。

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