Artificial hydrocarbon networks fuzzy inference systems for CNC machines position controller

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Abstract

This paper proposes a novel position controller for computer numerical control (CNC) machines based on a hybrid fuzzy inference system that uses artificial hydrocarbon networks in its defuzzification step, so-called fuzzy-molecular inference system. The fuzzy-molecular-based position controller is characterized to improve the accuracy in position and the time machining. In order to prove these characteristics, a case study was run over a reconfigurable micromachine tool (RmMT) assembly in lathe configuration. In addition, a workpiece machining in the RmMT assembly serves to realize a comparative analysis between the proposed controller and three other controllers: a classical PID controller manually tuned, a PID controller auto-tuned, and a fuzzy Mamdani controller. Experimental results validate the performance and the implementability of the proposed fuzzy-molecular position controller against the others. © 2014 Springer-Verlag London.

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Molina, A., Ponce, H., Ponce, P., Tello, G., & Ramírez, M. (2014). Artificial hydrocarbon networks fuzzy inference systems for CNC machines position controller. International Journal of Advanced Manufacturing Technology, 72(9–12), 1465–1479. https://doi.org/10.1007/s00170-014-5676-z

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