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Effects of Device Characteristics on the Performance of Optical Neural Networks

机译:器件特性对光学神经网络性能的影响

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摘要

An optical neuron architecture model incorporating optical devices is given. From the fabrication point of view the permissible density of neurons in the network with light Emitting Diode (LED) and Laser as transmitter are evaluated. For this model an optical feed-forward neural network is simulated and trained using the back propagation algorithm. Further, it has also been demonstrated that optoelectronic neural networks using either LED or laser, can learn and function satisfactorily even in the presence of non-ideal network characteristics such as optical cross-talk optoelectronic device performance variations and nonlinear response of optoelectronic output devices. While cross talk up to about 60/100 is acceptable both during learning and recalling process, the performance of the model is practically independent of device behaviour.
机译:给出了包含光学装置的光学神经元架构模型。从制造的角度,评估了以发光二极管(LED)和激光作为发射器的网络中神经元的允许密度。对于该模型,使用反向传播算法对光学前馈神经网络进行了仿真和训练。此外,还已经证明,即使在存在诸如光学串扰光电器件性能变化和光电输出器件的非线性响应之类的非理想网络特性的情况下,使用LED或激光的光电神经网络也可以令人满意地学习和运行。虽然在学习和回忆过程中串扰最多可以达到60/100,但是该模型的性能实际上与设备行为无关。

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