Estimation of speed, armature temperature, and resistance in brushed DC machines using a CFNN based on BFGS BP
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Carlo Cecati | Rachid Taleb | Kamel Eddine Hemsas | Hacene Mellah | R. Taleb | K. Hemsas | Hacene Mellah | Carlo Cecati
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