Litcius/Paper detail

Bayesian Information Engine that Optimally Exploits Noisy Measurements

Tushar K. Saha, Joseph N. E. Lucero, Jannik Ehrich, David A. Sivak, John Bechhoefer

2022Physical Review Letters27 citationsDOI

Abstract

We have experimentally realized an information engine consisting of an optically trapped, heavy bead in water. The device raises the trap center after a favorable "up" thermal fluctuation, thereby increasing the bead's average gravitational potential energy. In the presence of measurement noise, poor feedback decisions degrade its performance; below a critical signal-to-noise ratio, the engine shows a phase transition and cannot store any gravitational energy. However, using Bayesian estimates of the bead's position to make feedback decisions can extract gravitational energy at all measurement noise strengths and has maximum performance benefit at the critical signal-to-noise ratio.

Topics & Concepts

Noise (video)SIGNAL (programming language)Bayesian probabilityEnergy (signal processing)BeadGravitationPosition (finance)Signal-to-noise ratio (imaging)ThermalPhysicsAcousticsComputer scienceMaterials scienceOpticsClassical mechanicsArtificial intelligenceThermodynamicsQuantum mechanicsComposite materialImage (mathematics)EconomicsFinanceProgramming languageAdvanced Thermodynamics and Statistical MechanicsStatistical Mechanics and EntropyQuantum Mechanics and Applications