Multirotors from Takeoff to Real-Time Full Identification Using the Modified Relay Feedback Test and Deep Neural Networks
Abdulla Ayyad, Mohamad Chehadeh, Pedro Silva, Mohamad Wahbah, Oussama, Abdul Hay, Igor Boiko, and Yahya Zweiri

TL;DR
This paper introduces DNN-MRFT, a novel real-time framework combining Modified Relay Feedback Test and Deep Neural Networks for accurate, fast identification and control of multirotor UAV dynamics, enabling improved performance and accessibility.
Contribution
The paper presents a generalized DNN-MRFT framework for real-time UAV dynamics identification, including exact process gain estimation and in-flight inner loop identification without calibration.
Findings
DNN-MRFT estimates UAV dynamics in about 15 seconds.
UAVs can pass vertical windows and follow trajectories accurately.
The approach achieves state-of-the-art real-time identification performance.
Abstract
Low cost real-time identification of multirotor unmanned aerial vehicle (UAV) dynamics is an active area of research supported by the surge in demand and emerging application domains. Such real-time identification capabilities shorten development time and cost, making UAVs' technology more accessible, and enable a wide variety of advanced applications. In this paper, we present a novel comprehensive approach, called DNN-MRFT, for real-time identification and tuning of multirotor UAVs using the Modified Relay Feedback Test (MRFT) and Deep Neural Networks (DNN). The main contribution is the development of a generalized framework for the application of DNN-MRFT to higher-order systems. One of the notable advantages of DNN-MRFT is the exact estimation of identified process gain, which mitigates the inaccuracies introduced due to the use of the describing function method in approximating the…
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