Robust self-localization and repositioning strategies are essential capabilities for robots operating in highly dynamic environments. Environments are considered highly dynamic, if objects of interest move continuously and quickly, and if chances of hitting or getting hit by other robots are quite s
Fuzzy dynamic localization for mobile robots
β Scribed by K. Demirli; M. Molhim
- Publisher
- Elsevier Science
- Year
- 2004
- Tongue
- English
- Weight
- 708 KB
- Volume
- 144
- Category
- Article
- ISSN
- 0165-0114
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β¦ Synopsis
In this paper, we introduce a new fuzzy logic-based approach for dynamic localization of mobile robots equipped with a ring of sonar sensors. In this approach, the angular uncertainty and radial imprecision of sonar data are modeled by possibility distributions. From sonar data, a local fuzzy composite map is constructed and ΓΏtted to the given global map of the environment to identify robot's location. As a result of this ΓΏt, either a unique fuzzy location or multiple candidate fuzzy locations are obtained. To reduce the multiple candidate locations, the robot is moved to a new location and a new local fuzzy composite map is constructed. Then, a new set of candidate fuzzy locations is obtained. By considering the robot's movement, a set of hypothesized locations is identiΓΏed from the old set of candidate locations. The hypothesized locations are matched with the new candidate locations and the candidates with low degree of match are eliminated. This process is continued until a unique location is obtained. The matching process is performed by using the fuzzy pattern matching technique. The proposed method is implemented on a Nomad 200 robot and the results are reported.
π SIMILAR VOLUMES
The objective of this paper is to identify the robot's location in a global map from solely sonar based information. This is achieved by using fuzzy sets to model sonar data and by using fuzzy triangulation to identify robot's position and orientation. As a result we obtain a fuzzy position region w