Keim Nathan C, Paulsen Joseph D, Nagel Sidney R
Department of Mechanical Engineering and Applied Mechanics, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Sep;88(3):032306. doi: 10.1103/PhysRevE.88.032306. Epub 2013 Sep 20.
Multiple transient memories, originally discovered in charge-density-wave conductors, are a remarkable and initially counterintuitive example of how a system can store information about its driving. In this class of memories, a system can learn multiple driving inputs, nearly all of which are eventually forgotten despite their continual input. If sufficient noise is present, the system regains plasticity so that it can continue to learn new memories indefinitely. Recently, Keim and Nagel [Phys. Rev. Lett. 107, 010603 (2011)] showed how multiple transient memories could be generalized to a generic driven disordered system with noise, giving as an example simulations of a simple model of a sheared non-Brownian suspension. Here, we further explore simulation models of suspensions under cyclic shear, focusing on three main themes: robustness, structure, and overdriving. We show that multiple transient memories are a robust feature independent of many details of the model. The steady-state spatial distribution of the particles is sensitive to the driving algorithm; nonetheless, the memory formation is independent of such a change in particle correlations. Finally, we demonstrate that overdriving provides another means for controlling memory formation and retention.
多重瞬态记忆最初是在电荷密度波导体中发现的,它是一个关于系统如何存储其驱动信息的显著且乍一看违反直觉的例子。在这类记忆中,一个系统可以学习多个驱动输入,尽管这些输入持续存在,但几乎所有输入最终都会被遗忘。如果存在足够的噪声,系统会恢复可塑性,从而能够无限期地继续学习新的记忆。最近,凯姆和纳格尔[《物理评论快报》107, 010603 (2011)]展示了多重瞬态记忆如何能够推广到一个带有噪声的一般受驱无序系统,并给出了一个剪切非布朗悬浮液简单模型的模拟作为示例。在此,我们进一步探索循环剪切下悬浮液的模拟模型,重点关注三个主要主题:鲁棒性、结构和过驱动。我们表明多重瞬态记忆是一个与模型的许多细节无关的鲁棒特征。颗粒的稳态空间分布对驱动算法敏感;尽管如此,记忆形成与颗粒相关性的这种变化无关。最后,我们证明过驱动为控制记忆形成和保持提供了另一种手段。