Coarse-grained entropy production with multiple reservoirs: Unraveling the role of time scales and detailed balance in biology-inspired systems

D. M. Busiello, D. Gupta, A. Maritan
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引用次数: 10

Abstract

A general framework to describe a vast majority of biology-inspired systems is to model them as stochastic processes in which multiple couplings are in play at the same time. Molecular motors, chemical reaction networks, catalytic enzymes, and particles exchanging heat with different baths, constitute some interesting examples of such a modelization. Moreover, they usually operate out of equilibrium, being characterized by a net production of entropy, which entails a constrained efficiency. Hitherto, in order to investigate multiple processes simultaneously driving a system, all theoretical approaches deal with them independently, at a coarse-grained level, or employing a separation of time-scales. Here, we explicitly take in consideration the interplay among time-scales of different processes, and whether or not their own evolution eventually relaxes toward an equilibrium state in a given sub-space. We propose a general framework for multiple coupling, from which the well-known formulas for the entropy production can be derived, depending on the available information about each single process. Furthermore, when one of the processes does not equilibrate in its sub-space, even if much faster than all the others, it introduces a finite correction to the entropy production. We employ our framework in various simple and pedagogical examples, for which such a corrective term can be related to a typical scaling of physical quantities in play.
具有多个储层的粗粒度熵生产:揭示时间尺度和生物启发系统中的详细平衡的作用
描述绝大多数受生物学启发的系统的一般框架是将它们建模为随机过程,其中多个耦合同时起作用。分子马达、化学反应网络、催化酶和与不同浴槽交换热量的粒子构成了这种建模的一些有趣的例子。此外,它们通常在失衡状态下运行,其特征是熵的净产生,这意味着效率受限。到目前为止,为了研究同时驱动一个系统的多个过程,所有的理论方法都是在粗粒度的水平上独立地处理它们,或者采用时间尺度的分离。在这里,我们明确地考虑了不同过程的时间尺度之间的相互作用,以及它们自己的进化是否最终在给定的子空间中放松到平衡状态。我们提出了一个多重耦合的一般框架,从这个框架中可以推导出众所周知的熵产公式,这取决于每个单一过程的可用信息。此外,当其中一个过程在其子空间中不平衡时,即使比所有其他过程快得多,它也会引入对熵产生的有限修正。我们在各种简单的教学示例中使用我们的框架,对于这些示例,这样的纠正项可以与游戏中的物理量的典型缩放相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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