Abstract
AbstractOmnidirectional mobile platform is essential due to its excellent mobility and versatility. With the development of the manufacturing industry, how to transport oversized or overweight goods has become a new problem. Compared with manufacturing omnidirectional mobile platforms with different specifications, it is more cost-effective and flexible to coordinate two non-physically connected omnidirectional platforms to transport overweight and oversized cargo. The roughness of the actual deployment environment and the mechanical deflection between the two vehicles have a significant impact on the normal operation of the system. This paper combines mechanical wheels, image processing algorithms and collaboration algorithms to create a novel and practical split-type omnidirectional mobile platform based on image deviation prediction for transporting oversized or overweighted goods. The proposed system collects raw measurements from a distance sensor and an image sensor, transmits them to a central processing unit through a wireless communication module and calculates and predicts the relative deflection between the two vehicles based on our derived mathematical model. This information is then fed to a Kalman filter and PID control algorithm to coordinate the two vehicles. The effectiveness and performance of our system have been thoroughly tested, which has already been applied in a bullet train production line.
Funder
the Fundamental Research Funds for the Central Universities
National Natural Science Foundation of China
Science and Technology on Electronic Test & Measurement Laboratory
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Computer Science Applications,Energy Engineering and Power Technology,Control and Systems Engineering
Reference34 articles.
1. Chen, S. Y. (2012). Kalman filter for robot vision: A survey. IEEE Transactions on Industrial Electronics, 59(11), 4409–4420.
2. Chopade, A. S., Khubalkar, S. W., Junghare, A. S., Aware, M. V., & Das, S. (2016). Design and implementation of digital fractional order PID controller using optimal pole-zero approximation method for magnetic levitation system. IEEE/CAA Journal of Automatica Sinica, 5(5), 977–989.
3. de Paula, L. G., Hyttel, K., Geipel, K. R., de Domingo Gil, J. E., Novac, I., & Chrysostomou, D. (2019). Estimation of wildfire size and location using a monocular camera on a semi-autonomous quadcopter. In International conference on computer vision systems (pp. 133–142). Springer.
4. Florentina, A., & Ioan, D. (2011). Practical applications for mobile robots based on mecanum wheels-a systematic survey. The Romanian Review Precision Mechanics, Optics and Mechatronics, 40, 21–29.
5. Freire, F. P., Martins, N. A., & Splendor, F. (2018). A simple optimization method for tuning the gains of PID controllers for the autopilot of cessna 182 aircraft using model-in-the-loop platform. Journal of Control, Automation and Electrical Systems, 29(4), 441–450.
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