Citation: A. Nebot et al., MIXED QUANTITATIVE QUALITATIVE MODELING AND SIMULATION OF THE CARDIOVASCULAR-SYSTEM/, Computer methods and programs in biomedicine, 55(2), 1998, pp. 127-155
Citation: Am. Uhrmacher et al., APPLYING FUZZY-BASED INDUCTIVE REASONING TO ANALYZE QUALITATIVELY THEDYNAMIC BEHAVIOR OF AN ECOLOGICAL-SYSTEM, AI applications, 11(2), 1997, pp. 1-10
Citation: A. Nebot et al., SYNTHESIS OF AN ANESTHETIC AGENT ADMINISTRATION SYSTEM USING FUZZY INDUCTIVE REASONING, Artificial intelligence in medicine, 8(2), 1996, pp. 147-166
Citation: M. Otter et al., MODELING OF MULTIBODY SYSTEMS WITH THE OBJECT-ORIENTED MODELING LANGUAGE DYMOLA, Nonlinear dynamics, 9(1-2), 1996, pp. 91-112
Citation: Fe. Cellier et al., COMBINED QUALITATIVE QUANTITATIVE SIMULATION-MODELS OF CONTINUOUS-TIME PROCESSES USING FUZZY INDUCTIVE REASONING TECHNIQUES, International journal of general systems, 24(1-2), 1996, pp. 95-116
Citation: Fe. Cellier et F. Mugica, INDUCTIVE REASONING SUPPORTS THE DESIGN OF FUZZY CONTROLLERS, Journal of intelligent & fuzzy systems, 3(1), 1995, pp. 71-85
Citation: Fe. Cellier, BOND GRAPHS - THE RIGHT CHOICE FOR EDUCATING STUDENTS IN MODELING CONTINUOUS-TIME PHYSICAL SYSTEMS, Simulation, 64(3), 1995, pp. 154-159
Citation: A. Dealbornoz et Fe. Cellier, BUILDING INTELLIGENCE INTO AN AUTOPILOT - USING QUALITATIVE SIMULATION TO SUPPORT GLOBAL DECISION-MAKING, Simulation, 62(6), 1994, pp. 354-364