Many modern applications of the artificial neural networks ensue large number of layers making traditional digital implementations increasingly complex. Optical neural networks offer parallel processing at high bandwidth, but have the challenge of noise accumulation. We propose here a new type of neural networks using stochastic resonances as an inherent part of the architecture and demonstrate a possibility of significant reduction of the required number of neurons for a given performance accuracy. We also show that such a neural network is more robust against the impact of noise.
翻译:人造神经网络的许多现代应用导致大量层层的变化,使得传统数字实施越来越复杂。 光导神经网络提供高带宽的平行处理,但面临噪音积累的挑战。 我们在此建议新型神经网络,将随机共振作为建筑的固有部分,并表明有可能大幅降低特定性能精确度所需的神经元数量。 我们还表明,这样的神经网络更能抵御噪音的影响。