Dissipative iFIR filters for data-driven design
Wang, Zixing, Zhang, Yi, Forni, Fulvio
–arXiv.org Artificial Intelligence
We tackle the problem of providing closed-loop stability guarantees with a scalable data-driven design. We combine virtual reference feedback tuning with dissipativity constraints on the controller for closed-loop stability. The constraints are formulated as a set of linear inequalities in the frequency domain. This leads to a convex problem that is scalable with respect to the length of the data and the complexity of the controller. An extension of virtual reference feedback tuning to include disturbance dynamics is also discussed. The proposed data-driven control design is illustrated by a soft gripper impedance control example.
arXiv.org Artificial Intelligence
Nov-29-2024
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