Author_Institution :
Coll. of Autom., Hangzhou Dianzi Univ., Hangzhou, China
Abstract :
This paper deals with the problem of odor source localization by designing and analyzing a decision-control system (DCS) for a group of robots. In the decision level, concentration magnitude information and wind information detected by robots are used to predict a probable position of the odor source. Specifically, the idea of particle swarm optimization is introduced to give a probable position of the odor source in terms of concentration magnitude information. Moreover, an observation model of the position of the odor source is built according to wind information, and a Kalman filter is used to estimate the position of the odor source, which is combined with the position obtained by using concentration magnitude information in order to make a decision on the position of the odor source. In the control level, two types of the finite-time motion control algorithms are designed; one is a finite-time parallel motion control algorithm, while the other is a finite-time circular motion control algorithm. Precisely, a nonlinear finite-time consensus algorithm is first proposed, and a Lyapunov approach is used to analyze the finite-time convergence of the proposed consensus algorithm. Then, on the basis of the proposed finite-time consensus algorithm, a finite-time parallel motion control algorithm, which can control the group of robots to trace the plume and move toward the probable position of odor source, is derived. Next, a finite-time circular motion control algorithm, which can enable the robot group to circle the probable position of the odor source in order to search for odor clues, is also developed. Finally, the performance capabilities of the proposed DCS are illustrated through the problem of odor source localization.
Keywords :
Kalman filters; Lyapunov methods; decision making; electronic noses; intelligent control; mobile robots; motion control; multi-robot systems; particle swarm optimisation; DCS; Kalman filter; Lyapunov approach; concentration magnitude information; decision control system; decision making; finite-time circular motion control algorithm; finite-time convergence; finite-time parallel motion control algorithm; intelligent control; multirobot systems; nonlinear finite-time consensus algorithm; odor clue search; odor source localization problem; particle swarm optimization; position estimation; position prediction; robot group control; wind information; Algorithm design and analysis; Convergence; Motion control; Position measurement; Prediction algorithms; Robot kinematics; Decision theory; intelligent control; multirobot systems; robot motion;