Author_Institution :
Dept. of Aeronaut. & Astronaut., Stanford Univ., Stanford, CA, USA
Abstract :
In this paper we present a dynamic programming approach to stochastic optimal control problems with dynamic, time-consistent risk constraints. Constrained stochastic optimal control problems, which naturally arise when one has to consider multiple objectives, have been extensively investigated in the past 20 years; however, in most formulations, the constraints are formulated as either risk-neutral (i.e., by considering an expected cost), or by applying static, single-period risk metrics with limited attention to “time-consistency” (i.e., to whether such metrics ensure rational consistency of risk preferences across multiple periods). Recently, significant strides have been made in the development of a rigorous theory of dynamic, time-consistent risk metrics for multi-period (risk-sensitive) decision processes; however, their integration within constrained stochastic optimal control problems has received little attention. The goal of this paper is to bridge this gap. First, we formulate the stochastic optimal control problem with dynamic, time-consistent risk constraints and we characterize the tail subproblems (which requires the addition of a Markovian structure to the risk metrics). Second, we develop a dynamic programming approach for its solution, which allows to compute the optimal costs by value iteration. Finally, we present a procedure to construct optimal policies.
Keywords :
Markov processes; cost optimal control; decision theory; dynamic programming; iterative methods; risk analysis; stochastic systems; Markovian structure; constrained stochastic optimal control problem; dynamic programming approach; dynamic time-consistent risk constraint; multiperiod decision process; optimal cost computation; optimal policy construction; risk preference; risk-neutral constraint; risk-sensitive decision process; static single-period risk metrics; tail subproblem; time-consistency; value iteration; Aerospace electronics; Dynamic programming; Equations; Markov processes; Measurement; Optimal control; Optimization;