Chemical plant fault diagnosis through a hybrid symbolic- connectionist approach and comparison with neural networks
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Aydin K. Sunol | B. Özyurt | P. Mogili | Lawrence O. Hall | M. C. Çamurdan | L. Hall | A. Sunol | M. Camurdan | P. Mogili | B. Özyurt
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