Title :
Reinforcement learning in decentralized stochastic control systems with partial history sharing
Author :
Arabneydi, Jalal ; Mahajan, Aditya
Author_Institution :
Dept. of Electr. Eng., McGill Univ., Montreal, QC, Canada
Abstract :
In this paper, we are interested in systems with multiple agents that wish to collaborate in order to accomplish a common task while a) agents have different information (decentralized information) and b) agents do not know the model of the system completely i.e., they may know the model partially or may not know it at all. The agents must learn the optimal strategies by interacting with their environment i.e., by decentralized Reinforcement Learning (RL). The presence of multiple agents with different information makes decentralized reinforcement learning conceptually more difficult than centralized reinforcement learning. In this paper, we develop a decentralized reinforcement learning algorithm that learns ε-team-optimal solution for partial history sharing information structure, which encompasses a large class of decentralized control systems including delayed sharing, control sharing, mean field sharing, etc. Our approach consists of two main steps. In the first step, we convert the decentralized control system to an equivalent centralized POMDP (Partially Observable Markov Decision Process) using an existing approach called common information approach. However, the resultant POMDP requires the complete knowledge of system model. To circumvent this requirement, in the second step, we introduce a new concept called “Incrementally Expanding Representation” using which we construct a finite-state RL algorithm whose approximation error converges to zero exponentially fast. We illustrate the proposed approach and verify it numerically by obtaining a decentralized Q-learning algorithm for two-user Multi Access Broadcast Channel (MABC) which is a benchmark example for decentralized control systems.
Keywords :
Markov processes; approximation theory; control engineering computing; convergence; decentralised control; decision theory; learning (artificial intelligence); multi-agent systems; stochastic systems; ε-team-optimal solution; MABC; approximation error convergence; centralized POMDP; centralized partially observable Markov decision process; common information approach; control sharing; decentralized Q-learning algorithm; decentralized RL; decentralized reinforcement learning algorithm; decentralized stochastic control systems; delayed sharing; finite-state RL algorithm; incrementally expanding representation; mean field sharing; multiple agents; partial history sharing; two-user multiaccess broadcast channel; Decentralized control; Heuristic algorithms; History; Joints; Learning (artificial intelligence); Stochastic processes; Tin;
Conference_Titel :
American Control Conference (ACC), 2015
Conference_Location :
Chicago, IL
Print_ISBN :
978-1-4799-8685-9
DOI :
10.1109/ACC.2015.7172192