Litcius/Paper detail

State Constrained Stochastic Optimal Control Using LSTMs

Bolun Dai, P. Krishnamurthy, Andrew C. Papanicolaou, Farshad Khorrami

202112 citationsDOI

Abstract

In this paper, we propose a new methodology for state constrained stochastic optimal control (SOC) problems. The solution is based on past work in solving SOC problems using forward-backward stochastic differential equations (FB-SDE). Our approach in solving the FBSDE utilizes a deep neural network (DNN), specifically Long Short-Term Memory (LSTM) networks. LSTMs are chosen to solve the FBSDE to address the curse of dimensionality, non-linearities, and long time horizons. In addition, the state constraints are incorporated using a hard penalty function, resulting in a controller that respects the constraint boundaries. Numerical instability that would be introduced by the penalty function is dealt with through an adaptive update scheme. The control design methodology is applicable to a large class of control problems. The performance and scalability of our proposed algorithm are demonstrated by numerical simulations.

Topics & Concepts

Computer scienceCurse of dimensionalityPenalty methodMathematical optimizationConstraint (computer-aided design)ScalabilityArtificial neural networkState (computer science)Optimal controlStochastic differential equationController (irrigation)Stochastic controlStability (learning theory)Scheme (mathematics)AlgorithmApplied mathematicsMathematicsArtificial intelligenceMachine learningAgronomyGeometryDatabaseMathematical analysisBiologyAdvanced Control Systems OptimizationReinforcement Learning in RoboticsStochastic processes and financial applications
State Constrained Stochastic Optimal Control Using LSTMs | Litcius