Saldı, NaciYuksel, S.Linder, T.2021-02-102021-02-102020-010018-9286http://hdl.handle.net/10679/7292https://doi.org/10.1109/TAC.2019.2907172We consider finite model approximations of discrete-time partially observed Markov decision processes (POMDPs) under the discounted cost criterion. After converting the original partially observed stochastic control problem to a fully observed one on the belief space, the finite models are obtained through the uniform quantization of the state and action spaces of the belief space Markov decision process (MDP). Under mild assumptions on the components of the original model, it is established that the policies obtained from these finite models are nearly optimal for the belief space MDP, and so, for the original partially observed problem. The assumptions essentially require that the belief space MDP satisfies a mild weak continuity condition. We provide an example and introduce explicit approximation procedures for the quantization of the set of probability measures on the state space of POMDP (i.e., belief space).engrestrictedAccessAsymptotic optimality of finite model approximations for partially observed markov decision processes with discounted costarticle65113014200050685110001010.1109/TAC.2019.2907172Aerospace electronicsConvergenceQuantization (signal)Markov processesComputational modelingCost functionApproximationsMarkov decision processesNon-linear filteringQuantizationStochastic control2-s2.0-85077786832