Intelligent autonomous robots and multiagent systems, having different skills and capabilities for specific subtasks, have the potential to solve problems more efficiently and effectively. In this paper both f i m y logic (FL) and subtractive clustering (SC) are used for the design of autonomous robot behaviours. The design procedure is conducted in two stages: first subtractive clustering is applied to extract fuzzy model from experimental data; then adaptive neuro-fuzzy inference system (ANFIS) is applied to improve the fuzzy model performance. This technique produces good result (0.01% root mean square error) and has the advantage of being closer to natural human language, by describing the robot behavioursusing a set of linguistic rules.