Visual-Based Positioning of Aerial Maintenance Platforms on Overhead Transmission Lines
Abstract
:1. Introduction
2. Material and Methods
- A commercial UAV is positioned over a transmission grid, controlled by an operator. The distance from the UAV to conductors varies depending on the safety, lighting conditions and camera characteristics, requiring at least 1 m between the conductors and the vehicle.
- The exteroceptive information is acquired with a monocular camera, which is mounted at bottom of the UAV.
- To avoid the direct incidence of sunlight, a two-axis hand-held gimbal changes the camera vision point to avoid sensor saturation.
- The positioning process computes the placement of the camera based on conductors geometric design. In addition, the system is capable of storing a compressed image, with geo-referenced information as a back up and as support to a future inspection work.
- The current version for the positioning system only performs the flight over three-phase transmission grids with conductors approximating straight lines without interruption. Its operating system is flexible in order to add other features. Transmission lines with other distribution can be detected using Hough transform variations since the system is based on the geometric pattern.
- A navigation strategy consists of two stages: (i) power-line detection; and (ii) electrical tower detection. Our visual positioning system is focused on the first goal. Therefore, the system is disabled when the UAV is near an electrical tower, changing to manual mode. The maximum speed is 75 . However, we limit this velocity to 25 kph to increase the probability of power-lines detection and to reduce blurring effects.
- The drone has a flight autonomy of 30 min (empirically determined). If the drone detects a low energy level of its batteries, the vehicle selects between two flight modes: land (attempts to bring the UAV straight down) or return to the launch (the UAV navigates from its current position to hover above the home position), depending on the distance to starting point.
- The drone performs inspection tasks along a length of about 10 km in 1 h intervals (Battery charging time).
- The proposed drone operates in a dry ambient, ideally at a standard environment of 20 C and 50% humidity. However, the aerial platform can also be placed in a rugged ambient, whose temperature is not less than 5 C or more than 40 C and whose humidity is not more than 80%. The apparatus cannot be directly exposed to rain and it is capable of facing wind gusts of up to 10 .
Hardware Design
- The drone deployed in real applications has a flight controller (Type Erle Brain 2 with a 900 MHz quad-core ARM Cortex-A7 CPU processor), which has a flight control unit (a computer that provides basic flight controls) and a companion computer (computational system in charge of image processing and image broadcasting). Additionally, the controller has an inertial measurement unit (IMU), an integrated altimeter and an embedded Kalman Filter for the treatment of signals. The UAV also has a GNSS antenna with an absolute error of 1 m.
- Visual data are acquired with the SJ4000 Turnigy HD ActionCam 1080P Full HD video camera. According to the manufacturer, the visual camera in TV mode has a resolution of pixels.
- The monocular camera has been previously calibrated to find the focal point and to estimate its parameters. Additionally, the camera is aligned with a gimbal that compensates the fast dynamic rotation of the hexacopter and controls the image plane to stay horizontal and parallel to power-lines. This process is essential for smooth target tracking in the image. The visual information is sent to a computational device that is in charge of higher-level behaviors, in an embedded form, such as the image processing and image broadcasting.
- The information extracted is stored locally in a 16 GB internal memory and sent as a data packet at regular intervals to a companion computer to prevent problems occurrence. To perform this process, the drone is equipped with a communication system based on a transmitter/receiver 433 MHz and WIFI connection employed for telemetry operations, and transmitter/receiver 5.8 GHz employed for image broadcasting.
- The UAV works with the Robot Operating System (ROS-Indigo) [50], adapted to the specifications of this problem.
3. Visual-Based Positioning System
3.1. Image Pre-Processing
3.2. Transmission Line Detection
- and are the angles between the real points of power-lines and focal point.
- is the draft angle of the camera around x-axis.
- is the field of view (FOV).
- and are the distorted distances measured in pixels between power-line in the center and power-line left and right, respectively.
- d, and are the real distances measured in pixels between transmission line phases, when the camera plane is parallel to power-lines plane.
3.3. Estimation of the Position Based on Visual Data
4. Results
4.1. Laboratory Validation
- The positioning system was mounted in the clamp of robotic arm to simulate the UAV attitude.
- The parameter reference separation by the acquisition an image set (30 images) at a fixed attitude in off-line mode was proposed.
- The operator set up the robot height with respect to wires of the model, and the path to be followed by the robot.
- The robotic arm automatically moved on the pre-determined path, recording a video sequence.
- Visual data were analyzed in MATLAB programming environment (MathWorks, Natick, MA, USA). The robotic arm position provided by the software from the manufacturer was used as the reference in each experiment.
- The estimated placement of the camera was shown in a graphical user interface (GUI).
4.2. Simulation Results
- First, the parameter reference separation by the acquisition an image set (30 images) at a fixed attitude in off-line mode was proposed.
- Then, the simulated UAV automatically flew on the pre-determinate path, acquiring the visual data.
- Finally, our approach analyzed the data and returned the estimated placement of the UAV in real time. At the same time, the results were plotted in a GUI, developed in MATLAB programming environment.
4.3. Transmission Line Detection Algorithm
4.4. Field Experiment Results
5. Discussion
5.1. Consistency Test
5.2. Comparison with Existing Positioning Techniques
5.2.1. GNSS-IMU
5.2.2. Synthetic Aperture Radars
5.2.3. Light-Pulse Distance Sensing
5.2.4. Sonar-Pulse Distance Sensing
5.2.5. Electric and Magnetic-Field Change Sensing
5.2.6. Photogrammetry and Visual-Based Positioning
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Type of Robot | Ground Vehicles | Brachiating Robots | Unmanned Aerial Vehicles |
---|---|---|---|
Payload Restriction | Low | Medium | High |
Navigation Restriction | Ground accessibility. | Crossing obstacles. | Chilean flight regulation. |
Autonomy | High | Medium | Low |
Maintenance work | Yes | Temporary repairs. | No |
Development cost | Very high | High | Low |
Industrial prototypes | LineMaster [28] Elevator IV [29] ROBTET [30] | LineROVer [31] Expliner [32] LineScout [33] | AIBOT-6 [34] UAV-Borne [35] |
(a) | ||||
Height mm | 650 | 850 | 1050 | |
Analyzed frames | 600 | 600 | 600 | |
True positives | 543 | 575 | 573 | |
Accuracy % | 90.35 | 95.67 | 95.53 | |
RMSE mm | 18.94 | 13.81 | 10.30 | |
(b) | ||||
Radius mm | 550 | 650 | 850 | 950 |
Analyzed frames | 1003 | 1143 | 1247 | 1174 |
True positives | 882 | 898 | 1144 | 984 |
Accuracy % | 87.93 | 78.5 | 91.7 | 83.7 |
RMSE mm | 47.74 | 55.77 | 63.69 | 58.44 |
(c) | ||||
Radius mm | 550 | 650 | 850 | 950 |
Analyzed frames | 1003 | 1143 | 1247 | 1174 |
True positives | 973 | 1061 | 1128 | 1093 |
Accuracy % | 96.9 | 92.7 | 90.4 | 93 |
RMSE mm | 58.81 | 60.97 | 59.32 | 47.12 |
Parameter | Transmission Line 500 kV |
---|---|
Height | 20 m |
-Separation | m between phases |
Distribution | Horizontal |
Parameter | Transmission Line 68 kV |
---|---|
Height | 12 m |
-Separation | m between left and right wire m between left and center wire m between right and center wire |
Distribution | Horizontal |
Frames | True Positi-ves | False Positi-ves | Effici-ency | RMSE X Estimator m | RMSE Z Estimator m |
---|---|---|---|---|---|
549 | 502 | 47 |
Characteristics | Advantages | Disadvantages | Works | |
---|---|---|---|---|
GNSS-IMU | -Proprioceptive, Ambient -GNSS and IMU are the base of a navigation system | -Independent of the grid -High accuracy -Not dependent on external lighting conditions | -Size and weight constraints -High-resolution data is very costly -Not always available (GNSS-denied areas) -At least 3 satellites should be detected -The system can be affected by EMIs | [60,61] |
SAR images | -Exteroceptive, Non-ambient -Mapping of power lines and towers Disaster monitoring, damaged towers | -Covers vast areas with few images -Noise immunity, high accuracy -All-weather imaging capability -Independent of the grid | -Very high-resolution data is very costly -Not easy to interpret -Depending on environmental conditions | [62,63,64] |
LASER | -Exteroceptive, Non-ambient -Mapping of power conductors and towers -Vegetation monitoring | -Detailed 3D data directly available -Noise immunity, high accuracy -Not dependent on external lighting conditions -Flexibility in data acquisition | -Small objects are difficult to detect -High-resolution data is very costly -Depending on the scanning geometry | [38,62,65,66] |
Sonar | -Exteroceptive, Non-ambient -Mapping of conductors and pylons -Inspection of power line components -Detect partial discharges in power lines | -Easy to implements -Non-complex structure -Independent of the grid -Low costs compared to other methods | -Highly affected by noise -Low resolution | [67,68] |
EM-field | -Exteroceptive, Non-ambient -Inspection of power line components -Measures the voltage drop across wires | -Easy to implements -Non-complex structure -Not available when power lines are off | -Requires high and perpetual current flow -Safety vulnerabilities -Mechanical constrains | [69,70] |
Photogrammetry | -Exteroceptive, Non-ambient -Vegetation monitoring -Mapping of conductors and towers -Fault monitoring in power line components | -Very detailed 3D data directly by laser scanning -High flexibility in data acquisition -Low costs compared to other methods -Potential for diverse applications -Noise immunity | -Off-line mode, High computational cost -The method needs landmarks to correct the scale -Camera parameters affect directly to measurements -The technique needs high resolution -It depends on lighting conditions | [41,49] |
Visual | -Exteroceptive, Non-ambient -Vegetation monitoring -Inspection of power line equipment -Mapping of conductors and ground wires | -High spatial resolution -High flexibility in data acquisition -Possibility of height measurements from visual odometry -Low costs compared to other methods -Noise immunity | -Cannot be obtained through clouds or in dark conditions -The image quality can be affected by vibrations. -Camera parameters directly affect the measurements -It depends on lighting and weather conditions -Dependent of the grid | [62,71] |
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Menéndez, O.; Pérez, M.; Auat Cheein, F. Visual-Based Positioning of Aerial Maintenance Platforms on Overhead Transmission Lines. Appl. Sci. 2019, 9, 165. https://doi.org/10.3390/app9010165
Menéndez O, Pérez M, Auat Cheein F. Visual-Based Positioning of Aerial Maintenance Platforms on Overhead Transmission Lines. Applied Sciences. 2019; 9(1):165. https://doi.org/10.3390/app9010165
Chicago/Turabian StyleMenéndez, Oswaldo, Marcelo Pérez, and Fernando Auat Cheein. 2019. "Visual-Based Positioning of Aerial Maintenance Platforms on Overhead Transmission Lines" Applied Sciences 9, no. 1: 165. https://doi.org/10.3390/app9010165
APA StyleMenéndez, O., Pérez, M., & Auat Cheein, F. (2019). Visual-Based Positioning of Aerial Maintenance Platforms on Overhead Transmission Lines. Applied Sciences, 9(1), 165. https://doi.org/10.3390/app9010165