Wagner Clemens, Stucki Jörg W
Institute of Pharmacology, University of Bern, Friedbuehlstr. 49, CH-3010 Bern, Switzerland.
J Theor Biol. 2002 Apr 7;215(3):375-84. doi: 10.1006/jtbi.2001.2503.
Unstable periodic orbits are the skeleton of a chaotic attractor. We constructed an associative memory based on the chaotic attractor of an artificial neural network, which associates input patterns to unstable periodic orbits. By processing an input, the system is driven out of the ground state to one of the pre-defined disjunctive areas of the attractor. Each of these areas is associated with a different unstable periodic orbit. We call an input pattern learned if the control mechanism keeps the system on the unstable periodic orbit during the response. Otherwise, the system relaxes back to the ground state on a chaotic trajectory. The major benefits of this memory device are its high capacity and low-energy consumption. In addition, new information can be simply added by linking a new input to a new unstable periodic orbit.
不稳定周期轨道是混沌吸引子的骨架。我们基于人工神经网络的混沌吸引子构建了一种联想记忆,它将输入模式与不稳定周期轨道相关联。通过处理输入,系统从基态被驱动到吸引子的一个预定义的分离区域。这些区域中的每一个都与一个不同的不稳定周期轨道相关联。如果控制机制在响应过程中将系统保持在不稳定周期轨道上,我们就称该输入模式已被学习。否则,系统会在混沌轨迹上弛豫回到基态。这种存储设备的主要优点是其高容量和低能耗。此外,通过将新输入与新的不稳定周期轨道相链接,可以简单地添加新信息。