We use Monte Carlo and genetic algorithms to train neural-network feedback-control protocols for simulated fluctuating nanosystems. These protocols convert the information obtained by the feedback process into heat or work, allowing the extraction of work from a colloidal particle pulled by an optical trap and the absorption of entropy by an Ising model undergoing magnetization reversal. The learning framework requires no prior knowledge of the system, depends only upon measurements that are accessible experimentally, and scales to systems of considerable complexity. It could be used in the laboratory to learn protocols for fluctuating nanosystems that convert measurement information into stored work or heat.
翻译:The translated abstract:
我们使用蒙特卡罗和遗传算法来训练神经网络反馈控制协议,以应对模拟起伏的纳米系统。这些协议将通过反馈过程获得的信息转化为热或功,从而允许从光学夹持器拉动的胶体粒子中提取功,并在经历磁化翻转的伊辛模型中吸收熵。学习框架不需要先验地了解系统,仅依赖可通过实验获得的测量结果,并能够扩展到相当复杂的系统。它可以用于学习转换测量信息为储存能量或热量的波动的纳米系统的协议。