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流变体忆阻器作为弹性流体动力网络中的集体现象。

The fluidic memristor as a collective phenomenon in elastohydrodynamic networks.

机构信息

Princeton Center for Theoretical Science, Princeton University, Princeton, NJ, 08544, USA.

Department of Chemical and Biological Engineering, Princeton University, Princeton, NJ, USA.

出版信息

Nat Commun. 2024 Apr 10;15(1):3121. doi: 10.1038/s41467-024-47110-0.

Abstract

Fluid flow networks are ubiquitous and can be found in a broad range of contexts, from human-made systems such as water supply networks to living systems like animal and plant vasculature. In many cases, the elements forming these networks exhibit a highly non-linear pressure-flow relationship. Although we understand how these elements work individually, their collective behavior remains poorly understood. In this work, we combine experiments, theory, and numerical simulations to understand the main mechanisms underlying the collective behavior of soft flow networks with elements that exhibit negative differential resistance. Strikingly, our theoretical analysis and experiments reveal that a minimal network of nonlinear resistors, which we have termed a 'fluidic memristor', displays history-dependent resistance. This new class of element can be understood as a collection of hysteresis loops that allows this fluidic system to store information, and it can be directly used as a tunable resistor in fluidic setups. Our results provide insights that can inform other applications of fluid flow networks in soft materials science, biomedical settings, and soft robotics, and may also motivate new understanding of the flow networks involved in animal and plant physiology.

摘要

流网络无处不在,可以在广泛的背景下找到,从像水供应网络这样的人为系统到像动物和植物脉管系统这样的生命系统。在许多情况下,形成这些网络的元件表现出高度非线性的压力-流量关系。尽管我们了解这些元件如何单独工作,但它们的集体行为仍然知之甚少。在这项工作中,我们结合实验、理论和数值模拟来理解具有表现出负微分电阻的元件的软流网络的集体行为的主要机制。引人注目的是,我们的理论分析和实验表明,由我们称为“流体忆阻器”的非线性电阻器组成的最小网络表现出依赖于历史的电阻。这种新的元件类可以被理解为一组迟滞回线,允许这个流体系统存储信息,并且它可以直接用作流体装置中的可调电阻。我们的结果提供了可以为软材料科学、生物医学设置和软机器人中的其他流网络应用提供信息的见解,并且可能也激发了对涉及动物和植物生理学的流网络的新理解。

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