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Deep Neural Networks for Improved, Impromptu Trajectory Tracking of Quadrotors (1610.06283v2)

Published 20 Oct 2016 in cs.RO, cs.LG, cs.NE, and cs.SY

Abstract: Trajectory tracking control for quadrotors is important for applications ranging from surveying and inspection, to film making. However, designing and tuning classical controllers, such as proportional-integral-derivative (PID) controllers, to achieve high tracking precision can be time-consuming and difficult, due to hidden dynamics and other non-idealities. The Deep Neural Network (DNN), with its superior capability of approximating abstract, nonlinear functions, proposes a novel approach for enhancing trajectory tracking control. This paper presents a DNN-based algorithm as an add-on module that improves the tracking performance of a classical feedback controller. Given a desired trajectory, the DNNs provide a tailored reference input to the controller based on their gained experience. The input aims to achieve a unity map between the desired and the output trajectory. The motivation for this work is an interactive "fly-as-you-draw" application, in which a user draws a trajectory on a mobile device, and a quadrotor instantly flies that trajectory with the DNN-enhanced control system. Experimental results demonstrate that the proposed approach improves the tracking precision for user-drawn trajectories after the DNNs are trained on selected periodic trajectories, suggesting the method's potential in real-world applications. Tracking errors are reduced by around 40-50% for both training and testing trajectories from users, highlighting the DNNs' capability of generalizing knowledge.

Citations (70)

Summary

  • The paper integrates deep neural networks into the feedback control loop to generate reference signals from past flight data, reducing tracking errors by up to 50%.
  • The methodology combines classical PID controllers with a DNN module, enhancing real-time adaptability and effectively managing nonlinear quadrotor dynamics.
  • Experimental results validate the approach, enabling precise impromptu trajectory tracking for applications like industrial inspection, search and rescue, and cinematic filming.

Overview of Deep Neural Networks for Impromptu Trajectory Tracking of Quadrotors

The paper "Deep Neural Networks for Improved, Impromptu Trajectory Tracking of Quadrotors" presents an advanced control mechanism using deep neural networks (DNN) to enhance the trajectory tracking accuracy of quadrotors. The proposed method combines classical feedback controllers with a DNN-based module, offering a promising alternative to traditional proportional-integral-derivative (PID) controllers, which often require substantial manual tuning and adjustment.

Key Contributions and Results

The primary contribution of this research is the integration of DNNs into the feedback control loop of quadrotors for online trajectory refinement. Specifically, the network learns to generate reference signals by leveraging past flight experiences stored in the training data, providing more contextually accurate inputs to the quadrotor's control system. This approach is particularly relevant in scenarios where quadrotors must adapt to user-specified trajectories instantaneously, as demonstrated by the "fly-as-you-draw" application.

Experimental evaluations highlight a remarkable reduction in trajectory tracking errors — approximately 40-50% over traditional methods. This improvement is observed across both training and testing phases, not only emphasizing the model's ability to learn effectively from structured data but also showcasing its generalization capabilities on unseen trajectories. Such performance metrics underscore the DNN's potential to address the inherent nonlinearities and unmodeled dynamics that underactuated systems like quadrotors present.

Theoretical and Practical Implications

From a theoretical standpoint, the research underscores the utility of DNNs in learning abstract, nonlinear system mappings that classical controllers rarely capture without loss of precision or increased complexity. By situating DNNs outside the primary feedback loop, the paper ensures system stability and performance consistency — a critical consideration in real-time applications.

On the practical side, the adaptability of the DNN-based module opens avenues for broader deployment in aerial robotics where rapid adaptation to dynamic environments and scenarios is paramount. The paper's approach significantly lowers the entry threshold for using quadrotors in complex operations such as industrial inspection, search and rescue operations, and filming.

Future Directions

While demonstrating substantial efficacy, this work sets the stage for several future explorations:

  • Scalability and Robustness: Future research could investigate how these DNN-enhanced systems scale with more extensive quadrotor fleets or in more cluttered environments, focusing on robustness against external disturbances.
  • Adaptive Learning: Implementing adaptive learning algorithms that update the DNN based on real-time feedback could lead to further enhancements in tracking accuracy, potentially mitigating any drift due to environmental changes or hardware wear and tear.
  • Real-time Constraints: As computational resources improve, the synchronization of DNN processing with high-frequency control loops could provide even tighter performance integration.

By augmenting traditional control strategies with deep learning methods, this research exemplifies the fusion of AI and control theory, driving advancements in autonomous aerial vehicle capabilities.

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