Spiking neural network is a kind of neuromorphic computing which is believed to improve on the level of intelligence and provide advabtages for quantum computing. In this work, we address this issue by designing an optical spiking neural network and prove that it can be used to accelerate the speed of computation, especially on the combinatorial optimization problems. Here the spiking neural network is constructed by the antisymmetrically coupled degenerate optical parametric oscillator pulses and dissipative pulses. A nonlinear transfer function is chosen to mitigate amplitude inhomogeneities and destabilize the resulting local minima according to the dynamical behavior of spiking neurons. It is numerically proved that the spiking neural network-coherent Ising machines has excellent performance on combinatorial optimization problems, for which is expected to offer a new applications for neural computing and optical computing.
翻译:Spik 神经神经网络是一种神经形态计算,被认为可以提高智能水平并为量子计算提供适应性。在这项工作中,我们通过设计一个光学喷射神经网络来解决这个问题,并证明它可以用来加速计算速度,特别是在组合优化问题上。这里,喷射神经网络是由反对称并存的低度光学参数振荡脉冲和消散脉冲建造的。选择一种非线性转移功能,以缓解振荡性不均匀性,并根据振动神经的动态行为来稳定由此产生的本地微型市场。从数字上证明,螺旋网络对焦的闭塞机器在组合优化问题上表现极佳,预计这将为神经计算和光学计算提供新的应用。