single-rb.php

JRM Vol.33 No.1 pp. 11-23
doi: 10.20965/jrm.2021.p0011
(2021)

Paper:

Generation of Optimal Coverage Paths for Mobile Robots Using Hybrid Genetic Algorithm

Tobias Rainer Schäfle*, Marcel Mitschke**, and Naoki Uchiyama*

*Department of Mechanical Engineering, Toyohashi University of Technology
1-1 Hibarigaoka, Tempaku, Toyohashi, Aichi 441-8580, Japan

**Andreas Stihl AG & Co. KG
Badstraße 115, Waiblingen 71336, Germany

Received:
September 30, 2019
Accepted:
January 28, 2020
Published:
February 20, 2021
Keywords:
coverage path planning, hybrid genetic algorithm, path optimization, mobile robot
Abstract

This paper presents new optimal offline approaches to solve the coverage path planning problem. A novel hybrid genetic algorithm (HGA), which uses, the turn-away starting point and backtracking spiral algorithms for performing local search, is proposed for grid-based environmental representations. The HGA algorithm is validated using the following three different fitness functions: the number of cell visits, traveling time, and a new energy fitness function based on experimentally acquired energy values of fundamental motions. Computational results show that compared to conventional methods, HGA improves paths up to 38.4%; moreover, HGAs have a consistent fitness for different starting positions in an environment. Furthermore, experimental results prove the validity of the fitness function.

Generation of optimal coverage paths for mobile robots

Generation of optimal coverage paths for mobile robots

Cite this article as:
T. Schäfle, M. Mitschke, and N. Uchiyama, “Generation of Optimal Coverage Paths for Mobile Robots Using Hybrid Genetic Algorithm,” J. Robot. Mechatron., Vol.33 No.1, pp. 11-23, 2021.
Data files:
References
  1. [1] K. R. Simba, N. Uchiyama, and S. Sano, “Real-time smooth trajectory generation for nonholonomic mobile robots using bézier curves,” Robotics and Computer-Integrated Manufacturing, Vol.41, pp. 31-42, 2016.
  2. [2] N. Uchiyama, T. Dewi, and S. Sano, “Collision avoidance control for a human-operated four-wheeled mobile robot,” Proc. of the Institution of Mechanical Engineers, Part C: J. of Mechanical Engineering Science, Vol.228, No.13, pp. 2278-2284, 2014.
  3. [3] S. Thrun et al., “Robotic mapping: A survey,” Exploring Artificial Intelligence in the New Millennium, Vol.1, pp. 1-35, 2002.
  4. [4] S. Mohamed, T. R. Schäfle, and N. Uchiyama, “Robust control of a redundant wheeled drive system for energy saving and fail safe motion,” Advances in Mechanical Engineering, Vol.9, No.5, 1687814017702343, 2017.
  5. [5] B. Yang, C. Guo, C. S. Jensen, M. Kaul, and S. Shang, “Stochastic skyline route planning under time-varying uncertainty,” Proc. of 2014 IEEE 30th Int. Conf. on Data Engineering, pp. 136-147, 2014.
  6. [6] C. Guo, B. Yang, O. Andersen, C. S. Jensen, and K. Torp, “Ecosky: Reducing vehicular environmental impact through eco-routing,” Proc. of 2015 IEEE 31st Int. Conf. on Data Engineering, pp. 1412-1415, 2015.
  7. [7] B. Yang, C. Guo, Y. Ma, and C. S. Jensen, “Toward personalized, context-aware routing,” The VLDB J. of the Int. J. on Very Large Data Bases, Vol.24, No.2, pp. 297-318, 2015.
  8. [8] A. Farid and T. Matsumaru, “Path planning in outdoor pedestrian settings using 2d digital maps,” J. Robot. Mechatron., Vol.31, No.3, pp. 464-473, 2019.
  9. [9] R. Takemura and G. Ishigami, “Traversability-based rrt* for planetary rover path planning in rough terrain with lidar point cloud data,” J. Robot. Mechatron., Vol.29, No.5, pp. 838-846, 2017.
  10. [10] E. M. Arkin, S. P. Fekete, and J. S. B. Mitchell, “Approximation algorithms for lawn mowing and milling,” Computational Geometry, Vol.17, Nos.1-2, pp. 25-50, 2000.
  11. [11] E. Galceran and M. Carreras, “A survey on coverage path planning for robotics,” Robotics and Autonomous Systems, Vol.61, No.12, pp. 1258-1276, 2013.
  12. [12] A. Khan, I. Noreen, and Z. Habib, “On complete coverage path planning algorithms for non-holonomic mobile robots: Survey and challenges,” J. Inf. Sci. Eng., Vol.33, No.1, pp. 101-121, 2017.
  13. [13] H. Choset and P. Pignon, “Coverage path planning: The boustrophedon cellular decomposition,” Field and Service Robotics, pp. 203-209, 1998.
  14. [14] E. U. Acar, H. Choset, A. A. Rizzi, P. N. Atkar, and D. Hull, “Morse decompositions for coverage tasks,” The Int. J. of Robotics Research, Vol.21, No.4, pp. 331-344, 2002.
  15. [15] E. U. Acar, H. Choset, and J. Y. Lee, “Sensor-based coverage with extended range detectors,” IEEE Trans. on Robotics, Vol.22, No.1, pp. 189-198, 2006.
  16. [16] A. Zelinsky, R. A. Jarvis, J. C. Byrne, and S. Yuta, “Planning paths of complete coverage of an unstructured environment by a mobile robot,” Proc. of Int. Conf. on Advanced Robotics, Vol.13, pp. 533-538, 1993.
  17. [17] Y. Gabriely and E. Rimon, “Spanning-tree based coverage of continuous areas by a mobile robot,” Annals of Mathematics and Artificial Intelligence, Vol.31, Nos.1-4, pp. 77-98, 2001.
  18. [18] Y. Gabriely and E. Rimon, “Competitive on-line coverage of grid environments by a mobile robot,” Computational Geometry, Vol.24, No.3, pp. 197-224, 2003.
  19. [19] E. Gonzalez, O. Alvarez, Y. Diaz, C. Parra, and C. Bustacara, “BSA: a complete coverage algorithm,” Proc. of the 2005 IEEE Int. Conf. on Robotics and Automation (ICRA), pp. 2040-2044, 2005.
  20. [20] S. X. Yang and C. Luo, “A neural network approach to complete coverage path planning,” IEEE Trans. on Systems, Man, and Cybernetics, Part B (Cybernetics), Vol.34, No.1, pp. 718-724, 2004.
  21. [21] C. Luo and S. X. Yang, “A bioinspired neural network for real-time concurrent map building and complete coverage robot navigation in unknown environments,” IEEE Trans. on Neural Networks, Vol.19, No.7, pp. 1279-1298, 2008.
  22. [22] M. Kapanoglu, M. Ozkan, O. Parlaktuna et al., “Pattern-based genetic algorithm approach to coverage path planning for mobile robots,” Proc. of Int. Conf. on Computational Science, pp. 33-42, 2009.
  23. [23] X. Miao, J. Lee, and B.-Y. Kang, “Scalable coverage path planning for cleaning robots using rectangular map decomposition on large environments,” IEEE Access, Vol.6, pp. 38200-38215, 2018.
  24. [24] J. Song and S. Gupta, “ϵ*: An online coverage path planning algorithm,” IEEE Trans. on Robotics, Vol.34, pp. 526-533, 2018.
  25. [25] M. Mitschke, N. Uchiyama, and O. Sawodny, “Online coverage path planning for a mobile robot considering energy consumption,” IEEE Int. Conf. on Automation Science and Engineering (CASE), pp. 1473-1478, 2018.
  26. [26] T. Sasaki, G. Enriquez, T. Miwa, and S. Hashimoto, “Adaptive path planning for cleaning robots considering dust distribution,” J. Robot. Mechatron., Vol.30, No.1, pp. 5-14, 2018.
  27. [27] P. A. Jimenez, B. Shirinzadeh, A. Nicholson, and G. Alici, “Optimal area covering using genetic algorithms,” Proc. of the 2007 IEEE/ASME Int. Conf. on Advanced Intelligent Mechatronics, pp. 1-5, 2007.
  28. [28] R. Mannadiar and I. Rekleitis, “Optimal coverage of a known arbitrary environment,” Proc. of the 2010 IEEE Int. Conf. on Robotics and Automation (ICRA), pp. 5525-5530, 2010.
  29. [29] T.-K. Lee, S.-H. Baek, Y.-H. Choi, and S.-Y. Oh, “Smooth coverage path planning and control of mobile robots based on high-resolution grid map representation,” Robotics and Autonomous Systems, Vol.59, No.10, pp. 801-812, 2011.
  30. [30] S. Bochkarev and S. L. Smith, “On minimizing turns in robot coverage path planning,” Proc. of the 2016 IEEE Int. Conf. on Automation Science and Engineering (CASE), pp. 1237-1242, 2016.
  31. [31] A. E. F. Ryerson and Q. Zhang, “Vehicle path planning for complete field coverage using genetic algorithms,” Agricultural Engineering Int.: CIGR J., Vol.IX, pp. 1-11, 2007.
  32. [32] M. A. Yakoubi and M. T. Laskri, “The path planning of cleaner robot for coverage region using genetic algorithms,” J. of Innovation in Digital Ecosystems, Vol.3, No.1, pp. 37-43, 2016.
  33. [33] M. G. Sadek, A. E. Mohamed, and A. M. El-Garhy, “Augmenting multi-objective genetic algorithm and dynamic programming for online coverage path planning,” Proc. 13th Int. Conf. on Computer Engineering and Systems (ICCES), pp. 475-480, 2018.
  34. [34] T. R. Schäfle, S. Mohamed, N. Uchiyama, and O. Sawodny, “Coverage path planning for mobile robots using genetic algorithm with energy optimization,” Proc. of Int. Electronics Symp. (IES), pp. 99-104, 2016.
  35. [35] R. Siegwart, I. R. Nourbakhsh, and D. Scaramuzza, “Introduction to Autonomous Mobile Robots,” MIT Press, 2011.
  36. [36] D. E. Goldberg, “Genetic algorithms in search optimization and machine learning,” Addison-Wesley Professional, 1989.
  37. [37] M. Mitchell, “An Introduction to Genetic Algorithms,” MIT Press, 1998.
  38. [38] E. H. L. Aarts and J. K. Lenstra, “Local Search in Combinatorial Optimization,” Princeton University Press, 2003.
  39. [39] P. Moscato, “Memetic algorithms,” P. M. Pardalos and M. G. C. Resende (Eds.), “Handbook of Applied Optimization,” pp. 157-167, Oxford University Press, 2002.
  40. [40] P. Moscato and C. Cotta, “A gentle introduction to memetic algorithms,” F. Glover and G. A. Kochenberger (Eds.), “Handbook of Metaheuristics,” pp. 105-144, Springer, 2003.

*This site is desgined based on HTML5 and CSS3 for modern browsers, e.g. Chrome, Firefox, Safari, Edge, Opera.

Last updated on Apr. 22, 2024