University of Hawaii at Mānoa, Information and Computer Sciences, Honolulu, 96822, USA.
Phys Rev Lett. 2012 Sep 21;109(12):120604. doi: 10.1103/PhysRevLett.109.120604. Epub 2012 Sep 19.
A system responding to a stochastic driving signal can be interpreted as computing, by means of its dynamics, an implicit model of the environmental variables. The system's state retains information about past environmental fluctuations, and a fraction of this information is predictive of future ones. The remaining nonpredictive information reflects model complexity that does not improve predictive power, and thus represents the ineffectiveness of the model. We expose the fundamental equivalence between this model inefficiency and thermodynamic inefficiency, measured by dissipation. Our results hold arbitrarily far from thermodynamic equilibrium and are applicable to a wide range of systems, including biomolecular machines. They highlight a profound connection between the effective use of information and efficient thermodynamic operation: any system constructed to keep memory about its environment and to operate with maximal energetic efficiency has to be predictive.
对随机驱动信号做出响应的系统可以被解释为通过其动力学计算环境变量的隐式模型。系统的状态保留了过去环境波动的信息,其中一部分信息具有对未来的预测能力。其余的非预测信息反映了模型的复杂性,这种复杂性并不能提高预测能力,因此代表了模型的无效性。我们揭示了这种模型效率低下与热力学效率低下之间的根本等价性,后者可以通过耗散来衡量。我们的结果在任意远离热力学平衡的情况下都成立,并且适用于广泛的系统,包括生物分子机器。它们突出了信息的有效利用与高效热力学运行之间的深刻联系:任何构建为保持对环境的记忆并以最大能量效率运行的系统都必须具有预测能力。