论文标题
具有连贯激光网络的神经计算
Neural Computing with Coherent Laser Networks
论文作者
论文摘要
我们表明,连贯的激光网络具有新兴的神经计算功能。提出的方案建立在利用激光网络的集体行为上,以将许多相模式存储为管理动态方程的稳定固定点,并通过适当的激发条件检索此类模式,从而表现出关联的内存属性。首先在模拟经典XY模型的被动式耗散耦合激光器网络的强泵化方案中首先讨论关联记忆功能。讨论的是,尽管网络的存储能力较大,但固定点模式之间的较大重叠有效地将模式检索限制在两个图像上。接下来,我们表明,可以通过使用激光器之间的非重复耦合来提升此限制,这可以利用大型存储容量。这项工作为连贯的激光网络作为新型模拟处理器开辟了新的可能性。此外,此处讨论的基本动力学模型提出了一个基于能量的新型复发性神经网络,该网络可以处理连续数据,而不是Hopfield网络和Boltzmann机器,它们是本质上是二进制系统的。
We show that a coherent network of lasers exhibits emergent neural computing capabilities. The proposed scheme is built on harnessing the collective behavior of laser networks for storing a number of phase patterns as stable fixed points of the governing dynamical equations and retrieving such patterns through proper excitation conditions, thus exhibiting an associative memory property. The associative memory functionality is first discussed in the strong pumping regime of a network of passive dissipatively coupled lasers which simulate the classical XY model. It is discussed that despite the large storage capacity of the network, the large overlap between fixed-point patterns effectively limits pattern retrieval to only two images. Next, we show that this restriction can be uplifted by using nonreciprocal coupling between lasers and this allows for utilizing a large storage capacity. This work opens new possibilities for neural computation with coherent laser networks as novel analog processors. In addition, the underlying dynamical model discussed here suggests a novel energy-based recurrent neural network that handles continuous data as opposed to Hopfield networks and Boltzmann machines which are intrinsically binary systems.