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Modeling and Control of Soft Robots Using the Koopman Operator and Model Predictive Control

Daniel Bruder, R. Brent Gillespie, C. David Remy, Ram Vasudevan

Year
2019
Citations
13
Access
Open access

Abstract

Controlling soft robots with precision is a challenge due in large part to the difficulty of constructing models that are amenable to model-based control design techniques. Koopman operator theory offers a way to construct explicit linear dynamical models of soft robots and to control them using established model-based linear control methods. This method is data-driven, yet unlike other data-driven models such as neural networks, it yields an explicit control-oriented linear model rather than just a "black-box" input-output mapping. This work describes this Koopman-based system identification method and its application to model predictive controller design. A model and MPC controller of a pneumatic soft robot arm is constructed via the method, and its performance is evaluated over several trajectory following tasks in the real-world. On all of the tasks, the Koopman-based MPC controller outperforms a benchmark MPC controller based on a linear state-space model of the same system.

Keywords

Model predictive controlControl theory (sociology)Benchmark (surveying)Controller (irrigation)TrajectoryComputer scienceRobotControl engineeringOperator (biology)Linear model

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