Towards turnpike-based performance analysis of risk-averse stochastic predictive control
Towards turnpike-based performance analysis of risk-averse stochastic predictive control
In this paper, we present performance estimates for stochastic economic MPC schemes with risk-averse cost formulations. For MPC algorithms with costs given by the expectation of stage cost evaluated in random variables, it was recently shown that the guaranteed near-optimal performance of abstract MPC in random variables coincides with its implementable variant coincide using measure path-wise feedback. In general, this property does not extend to costs formulated in terms of risk measures. However, through a turnpike-based analysis, this paper demonstrates that for a particular class of risk measures, this result can still be leveraged to formulate an implementable risk-averse MPC scheme, resulting in near-optimal averaged performance.
Jonas Schie?l、Ruchuan Ou、Michael H. Baumann、Timm Faulwasser、Lars Grüne
自动化技术经济自动化基础理论
Jonas Schie?l,Ruchuan Ou,Michael H. Baumann,Timm Faulwasser,Lars Grüne.Towards turnpike-based performance analysis of risk-averse stochastic predictive control[EB/OL].(2025-04-01)[2025-05-15].https://arxiv.org/abs/2504.00701.点此复制
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