An efficient, modular controller for flapping flight composing model-based and model-free components

Abstract

We present a controller that combines model-based methods with model-free data-driven methods hierarchically, utilizing the predictive power of template models with the strengths of model-free methods to account for model error, such as due to manufacturing variability in the RoboBee, a 100 mg flapping-wing micro aerial vehicle (FWMAV). Using a large suite of numerical trials, we show that the model-predictive high-level component of the proposed controller is more performant, easier to tune, and able to stabilize more dynamic tasks than a baseline reactive controller, while the data-driven inverse dynamics controller is able to better compensate for biases arising from manufacturing variability. At the same time, the formulated controller is very computationally efficient, with the MPC implemented at 5 KHz on a Simulink embedded target, via which we empirically demonstrate controlled hovering on a RoboBee.

Document Details

Document Type
Pub Defense Publication
Publication Date
Mar 15, 2022
Source ID
10.1177/02783649211063225

Entities

People

  • Avik De
  • Rebecca McGill
  • Robert J Wood

Organizations

  • Harvard University
  • James S. McDonnell Foundation
  • Office of Naval Research

Tags

Readers

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