Graduate School of Informatics, Kyoto University, Kyoto 606-8501, Japan.
Kobe Design University, Kobe 651-2196, Japan.
Phys Rev E. 2017 Jun;95(6-1):062103. doi: 10.1103/PhysRevE.95.062103. Epub 2017 Jun 2.
With a model for two-dimensional (2D) Brownian rotary ratchets being capable of producing a net torque under athermal random forces, its optimization for mean angular momentum (L), mean angular velocity (ω), and efficiency (η) is considered. In the model, supposing that such a small ratchet system is placed in a thermal bath, the motion of the rotor in the stator is described by the Langevin dynamics of a particle in a 2D ratchet potential, which consists of a static and a time-dependent interaction between rotor and stator; for the latter, we examine a force [randomly directed dc field (RDDF)] for which only the direction is instantaneously updated in a sequence of events in a Poisson process. Because of the chirality of the static part of the potential, it is found that the RDDF causes net rotation while coupling with the thermal fluctuations. Then, to maximize the efficiency of the power consumption of the net rotation, we consider optimizing the static part of the ratchet potential. A crucial point is that the proposed form of ratchet potential enables us to capture the essential feature of 2D ratchet potentials with two closed curves and allows us to systematically construct an optimization strategy. In this paper, we show a method for maximizing L, ω, and η, its outcome in 2D two-tooth ratchet systems, and a direction of optimization for a three-tooth ratchet system.
对于能够在非热随机力下产生净扭矩的二维(2D)布朗旋转棘轮模型,考虑对其平均角动量(L)、平均角速度(ω)和效率(η)进行优化。在该模型中,假设这样一个小的棘轮系统被放置在热浴中,转子在定子中的运动由 2D 棘轮势中的粒子的朗之万动力学来描述,该势由转子和定子之间的静态和时变相互作用组成;对于后者,我们研究了一种力[随机定向直流场(RDDF)],其中只有方向在泊松过程中的一系列事件中瞬时更新。由于势的静态部分的手性,发现 RDDF 在与热涨落耦合时会导致净旋转。然后,为了使净旋转的功率消耗效率最大化,我们考虑优化棘轮势的静态部分。一个关键点是,所提出的棘轮势形式使我们能够捕捉到具有两条闭合曲线的 2D 棘轮势的基本特征,并允许我们系统地构建优化策略。在本文中,我们展示了一种最大化 L、ω 和 η 的方法,以及在 2D 双齿棘轮系统中的结果,以及三齿棘轮系统的优化方向。