Abstract
SUMMARYIn mobile robot localization with multiple sensors, myriad problems arise as a result of inadequacies associated with each of the individual sensors. In such cases, methodologies built upon the concept of multisensor fusion are well-known to provide optimal solutions and overcome issues such as sensor nonlinearities and uncertainties. Artificial neural networks and fuzzy logic (FL) approaches can effectively model sensors with unknown nonlinearities and uncertainties. In this article, a robust approach for localization (positioning) of a mobile robot in indoor as well as outdoor environments is proposed. The neural network is utilized as a pseudo-sensor that models the global positioning system (GPS) and is used to predict the robot’s position in case of GPS signal loss in indoor environments. The data from proprioceptive sensors such as inertial sensors and GPS are fused using the Kalman and the complementary filter-based fusion schemes in the outdoor case. To eliminate the position inaccuracies due to wheel slippage, an expert FL system (FLS) is implemented and cascaded with the sensor fusion module. The proposed technique is tested both in simulation and in real scenarios of robot movements. The simulations and results from the experimental platform validate the efficacy of the proposed algorithm.
Publisher
Cambridge University Press (CUP)
Subject
Computer Science Applications,General Mathematics,Software,Control and Systems Engineering
Reference43 articles.
1. Cooperative localization algorithm for multiple mobile robot system in indoor environment based on variance component estimation;Sun;Symmetry,2017
2. 16. Sun, Q. , Tian, Y. and Diao, M. , “Cooperative localization algorithm based on hybrid topology architecture for multiple mobile robot system,” IEEE Internet Things J. (2018). ISSN 2327-4662.
3. Advances in sensing and processing methods for three-dimensional robot vision
4. 9. Tanveer, F. and Kadri, M. B. , “A Simulation Framework for Decentralized Formation Control of Non-Holonomic Differential Drive Robots,” In: 2018 SICE International Symposium on Control Systems (SICE ISCS), 9–11 March 2018, Tokyo, Japan (2018).
5. Multisensor fusion and integration: Approaches, applications, and future research directions;Luo;IEEE Sens. J.,2002
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