Xiao Gaoyang, Gong Jiangbin
Department of Physics and Centre for Computational Science and Engineering, National University of Singapore, Singapore 117542.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Nov;90(5-1):052132. doi: 10.1103/PhysRevE.90.052132. Epub 2014 Nov 17.
Understanding and manipulating work fluctuations in microscale and nanoscale systems are of both fundamental and practical interest. For example, aspects of work fluctuations will be an important factor in designing nanoscale heat engines. In this work, an optimal control approach directly exploiting Jarzynski's equality is proposed to effectively suppress the fluctuations in the work statistics, for systems (initially at thermal equilibrium) subject to a work protocol but isolated from a bath during the protocol. The control strategy is to minimize the deviations of individual values of e^{-βW} from their ensemble average given by e^{-βΔF}, where W is the work, β is the inverse temperature, and ΔF is the free energy difference between two equilibrium states. It is further shown that even when the system Hamiltonian is not fully known, it is still possible to suppress work fluctuations through a feedback loop, by refining the control target function on the fly through Jarzynski's equality itself. Numerical experiments are based on linear and nonlinear parametric oscillators. Optimal control results for linear parametric oscillators are also benchmarked with early results based on shortcuts to adiabaticity.
理解和控制微观和纳米尺度系统中的功涨落具有基础和实际意义。例如,功涨落的相关方面将是设计纳米级热机的一个重要因素。在这项工作中,针对(初始处于热平衡状态)遵循功协议但在协议执行期间与热库隔离的系统,提出了一种直接利用雅津斯基等式的最优控制方法,以有效抑制功统计中的涨落。控制策略是使(e^{-\beta W})的各个值与其由(e^{-\beta\Delta F})给出的系综平均值之间的偏差最小化,其中(W)是功,(\beta)是逆温度,(\Delta F)是两个平衡态之间的自由能差。进一步表明,即使系统哈密顿量不完全已知,通过雅津斯基等式本身实时优化控制目标函数,仍有可能通过反馈回路抑制功涨落。数值实验基于线性和非线性参数振荡器。线性参数振荡器的最优控制结果也与基于绝热捷径的早期结果进行了对比。