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Learning fuzzy controllers in mobile robotics with embedded preprocessing
Affiliation:1. Université du Québec en Outaouais, 101 Saint-Jean-Bosco, Gatineau, QC J8X 3X7, Canada;2. University of Ottawa, 800 King Edward, Ottawa, ON K1N 6N5, Canada;1. Department of Materials Science and Engineering, Carnegie Mellon University, Pittsburgh, PA, 15213, USA;2. Aix-Marseille Univ, CNRS, CINaM, Marseille, France;3. NCEM-Molecular Foundry, LBNL, Berkeley, CA, 94720, USA;1. Computer Science, Faculty of Computers and Informatics, Suez Canal University, Egypt;2. National Authority of Remote Sensing and Space Sciences, Cairo, Egypt;1. Department of Computer Science, Palacky University, 17. listopadu 12, Olomouc, Czech Republic;2. Department of Electrical Engineering, RIMT Institute, Mandi Gobindgarh 147301, India;3. School of Mathematics and Computer Applications, Thapar University, Patiala 147004, India
Abstract:The automatic design of controllers for mobile robots usually requires two stages. In the first stage, sensorial data are preprocessed or transformed into high level and meaningful values of variables which are usually defined from expert knowledge. In the second stage, a machine learning technique is applied to obtain a controller that maps these high level variables to the control commands that are actually sent to the robot. This paper describes an algorithm that is able to embed the preprocessing stage into the learning stage in order to get controllers directly starting from sensorial raw data with no expert knowledge involved. Due to the high dimensionality of the sensorial data, this approach uses Quantified Fuzzy Rules (QFRs), that are able to transform low-level input variables into high-level input variables, reducing the dimensionality through summarization. The proposed learning algorithm, called Iterative Quantified Fuzzy Rule Learning (IQFRL), is based on genetic programming. IQFRL is able to learn rules with different structures, and can manage linguistic variables with multiple granularities. The algorithm has been tested with the implementation of the wall-following behavior both in several realistic simulated environments with different complexity and on a Pioneer 3-AT robot in two real environments. Results have been compared with several well-known learning algorithms combined with different data preprocessing techniques, showing that IQFRL exhibits a better and statistically significant performance. Moreover, three real world applications for which IQFRL plays a central role are also presented: path and object tracking with static and moving obstacles avoidance.
Keywords:Mobile robotics  Quantified Fuzzy Rules  Iterative Rule Learning  Genetic fuzzy system
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