Expert Level control of Ramp Metering based on Multi-task Deep Reinforcement Learning

January 30, 2017 Β· Declared Dead Β· πŸ› IEEE transactions on intelligent transportation systems (Print)

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Authors Francois Belletti, Daniel Haziza, Gabriel Gomes, Alexandre M. Bayen arXiv ID 1701.08832 Category cs.AI: Artificial Intelligence Citations 144 Venue IEEE transactions on intelligent transportation systems (Print) Last Checked 3 months ago
Abstract
This article shows how the recent breakthroughs in Reinforcement Learning (RL) that have enabled robots to learn to play arcade video games, walk or assemble colored bricks, can be used to perform other tasks that are currently at the core of engineering cyberphysical systems. We present the first use of RL for the control of systems modeled by discretized non-linear Partial Differential Equations (PDEs) and devise a novel algorithm to use non-parametric control techniques for large multi-agent systems. We show how neural network based RL enables the control of discretized PDEs whose parameters are unknown, random, and time-varying. We introduce an algorithm of Mutual Weight Regularization (MWR) which alleviates the curse of dimensionality of multi-agent control schemes by sharing experience between agents while giving each agent the opportunity to specialize its action policy so as to tailor it to the local parameters of the part of the system it is located in.
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