English

Risk-Sensitive Model Predictive Control

Optimization and Control 2022-05-30 v2

Abstract

We present a heuristic policy and performance bound for risk-sensitive convex stochastic control that generalizes linear-exponential-quadratic regulator (LEQR) theory. Our heuristic policy extends standard, risk-neutral model predictive control (MPC); however, instead of ignoring uncertain noise terms, our policy assumes these noise terms turns out either favorably or unfavorably, depending on a risk aversion parameter. In the risk-seeking case, this modified planning problem is convex. In the risk-averse case, it requires minimizing a difference of convex functions, which is done (approximately) using the convex-concave procedure. In both cases, we obtain a lower bound on the optimal cost as a by-product of solving the planning problem. We give a numerical example of controlling a battery to power an uncertain load, and show that our policy reduces the risk of a very bad outcome (as compared with standard certainty equivalent control) with negligible impact on the the average performance.

Keywords

Cite

@article{arxiv.2101.11166,
  title  = {Risk-Sensitive Model Predictive Control},
  author = {Nicholas Moehle},
  journal= {arXiv preprint arXiv:2101.11166},
  year   = {2022}
}