Robust Control Design for Systems With Probabilistic Uncertainty
نویسندگان
چکیده
This paper presents a reliabilityand robustness-based formulation for robust control synthesis for systems with probabilistic uncertainty. In a reliability-based formulation, the probability of violating design requirements prescribed by inequality constraints is minimized. In a robustness-based formulation, a metric which measures the tendency of a random variable/process to cluster close to a target scalar/function is minimized. A multi-objective optimization procedure, which combines stability and performance requirements in time and frequency domains, is used to search for robustly optimal compensators. Some of the fundamental differences between the proposed strategy and conventional robust control methods are: (i) unnecessary conservatism is eliminated since there is not need for convex supports, (ii) the most likely plants are favored during synthesis allowing for probabilistic robust optimality, (iii) the tradeoff between robust stability and robust performance can be explored numerically, (iv) the uncertainty set is closely related to parameters with clear physical meaning, and (v) compensators with improved robust characteristics for a given control structure can be synthesized. Several numerical methods for estimation, including the Hammersley sequence sampling method, the First Order Reliability method, and the Firstand SecondMoment-Second-Order-Methods, are compared. Examples using output-feedback and full-state feedback with state estimation are used to demonstrate and validate the methodology.
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تاریخ انتشار 2005