Autonomous UAV Pipeline Near-proximity Inspection via Disturbance-Aware Predictive Visual Servoing
Wen Li, Hui Wang, Jinya Su, Cunjia Liu, Wen-Hua Chen + 1 more
TLDR
An autonomous UAV system uses disturbance-aware visual servoing and predictive control for robust, near-proximity pipeline inspection.
Key contributions
- A novel ESKF-PRE-VMPC framework for robust near-proximity pipeline inspection using visual servoing.
- Unified predictive model couples quadrotor dynamics with image feature kinematics for direct image-space control.
- Extended-state Kalman filtering (ESKF-PRE) estimates and incorporates disturbances into the VMPC.
- Terrain-adaptive velocity design enables constant speed over unknown terrain without prior maps.
Why it matters
This work significantly advances autonomous UAV pipeline inspection, crucial for safe energy transport. It offers a robust solution to challenges like complex terrain and wind, outperforming baselines in real-world tests.
Original Abstract
Reliable pipeline inspection is critical to safe energy transportation, but is constrained by long distances, complex terrain, and risks to human inspectors. Unmanned aerial vehicles provide a flexible sensing platform, yet reliable autonomous inspection remains challenging. This paper presents an autonomous quadrotor near-proximity pipeline inspection framework for three-dimensional scenarios based on image-based visual servoing model predictive control (VMPC). A unified predictive model couples quadrotor dynamics with image feature kinematics, enabling direct image-space prediction within the control loop. To address low-rate visual updates, measurement noise, and environmental uncertainties, an extended-state Kalman filtering scheme with image feature prediction (ESKF-PRE) is developed, and the estimated lumped disturbances are incorporated into the VMPC prediction model, yielding the ESKF-PRE-VMPC framework. A terrain-adaptive velocity design is introduced to maintain the desired cruising speed while generating vertical velocity references over unknown terrain slopes without prior terrain information. The framework is validated in high-fidelity Gazebo simulations and real-world experiments. In real-world tests, the proposed method reduces RMSE by 52.63% and 75.04% in pipeline orientation and lateral deviation in the image, respectively, for straight-pipeline inspection without wind, and successfully completes both wind-disturbance and bend-pipeline tasks where baseline method fails. An open-source nano quadrotor is modified for indoor experimentation.
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