Thermodynamic Optimization of Finite-Time Feedback Processes

ORAL

Abstract

Elucidating the fundamental energy cost for information processing is one of the central topics in stochastic thermodynamics and the fundamental bound on the energy cost has been established in recent decades. However, since the bound can be achieved only in the quasi-static limit, the energy cost for information processing achieved in finite time has yet to be fully clarified.

In this talk, we will present an achievable bound on energy cost for consuming information through finite-time feedback on Markov jump processes. We will also show the explicit optimal protocol to achieve the bound. Our approach is based on two mathematical tools; one is a tight Fano’s inequality, by which we can optimize the final state under fixed consumed information, and the other is optimal transport theory, which enables us to identify the explicit protocol to achieve the obtained bound. We will also demonstrate the numerical results for the coupled two-level systems, which is experimentally feasible by using the brownian particles. Our results would serve as a design principle of finite-time feedback processes in stochastic systems.

*R.N. is supported by the World-leading Innovative Graduate Study Program for Materials Research, Industry, and Technology (MERIT WINGS) of the University of Tokyo. T.S. is supported by JSPS KAKENHI Grant No. JP19H05796 ,JST, CREST Grant No. JPMJCR20C1 and JSTERATO-FS Grant No. JPMJER2204. T.S. is also supported by the Institute of AI and Beyond of the University of Tokyo and JST ERATO Grant No. JPMJER2302, Japan.

Presenters

  • Rihito Nagase

    • Univ of Tokyo

Authors

  • Rihito Nagase

    • Univ of Tokyo
  • Takahiro Sagawa

    • Univ of Tokyo
    • University of Tokyo
    • The University of Tokyo
    • Department of Applied Physics, The University of Tokyo