An on-board learning scheme for open-loop quadrocopter maneuvers using inertial sensors and control inputs from an external pilot
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Date
2014Type
- Conference Paper
Abstract
We present an iterative learning scheme for improving the performance of highly dynamic open-loop maneuvers with quadrocopters. A probabilistic estimate of the state deviation at the end of the maneuver is obtained by fusing two data sources that are available on-board: 1) an inertial measurement unit, and 2) control inputs from an external pilot that performs a recovery after the open-loop maneuver has been executed. A computationally lightweight policy gradient method is applied in order to adapt a set of characteristic maneuver parameters, which in turn reduces the expected value of the final state deviation for the next execution of the maneuver. The performance of the learning algorithm is demonstrated in the ETH Zurich Flying Machine Arena by improving the performance of a triple flip. Show more
Publication status
publishedExternal links
Book title
2014 IEEE International Conference on Robotics and Automation (ICRA)Pages / Article No.
Publisher
IEEEEvent
Organisational unit
03758 - D'Andrea, Raffaello / D'Andrea, Raffaello
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