Fuzzy logic-based control: From fundamentals to applications
DOI:
https://doi.org/10.37135/ns.01.08.01Keywords:
Fuzzy Sets, Fuzzy Inference Systems, Defuzzification, Fuzzy Control, Process ControlAbstract
Since its beginning, Fuzzy logic has shown its usefulness in different areas of knowledge; for the particular case of process control, from the construction of process models to the design of advanced controllers, it has proven its effectiveness and importance on industrial applications. In this work, a guide for the study of systems based on fuzzy logic for process control is presented, starting from the origins, theoretical foundations, and guide for the constructions of some loop controllers implemented on a benchmark plant.
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