60,224 research outputs found
Deep reinforcement learning for robust quantum optimization
Machine learning techniques based on artificial neural networks have been
successfully applied to solve many problems in science. One of the most
interesting domains of machine learning, reinforcement learning, has natural
applicability for optimization problems in physics. In this work we use deep
reinforcement learning and Chopped Random Basis optimization, to solve an
optimization problem based on the insertion of an off-center barrier in a
quantum Szilard engine. We show that using designed protocols for the time
dependence of the barrier strength, we can achieve an equal splitting of the
wave function (1/2 probability to find the particle on either side of the
barrier) even for an asymmetric Szilard engine in such a way that no
information is lost when measuring which side the particle is found. This
implies that the asymmetric non-adiabatic Szilard engine can operate with the
same efficiency as the traditional Szilard engine, with adiabatic insertion of
a central barrier. We compare the two optimization methods, and demonstrate the
advantage of reinforcement learning when it comes to constructing robust and
noise-resistant protocols.Comment: 9 pages, 8 figure
- …
