Design and Implementation of a Flexible Manufacturing Control System Using Neural Network |
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Authors: | Magdy M. Abdelhameed and Farid A. Tolbah |
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Affiliation: | (1) Design and Production Engineering Department, Faculty of Engineering, Ain Shams University, Abbasiah, Cairo, Egypt |
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Abstract: | Design and implementation of a sequential controller based on the concept of artificial neural networks for a flexible manufacturing system are presented. The recurrent neural network (RNN) type is used for such a purpose. Contrary to the programmable controller, an RNN-based sequential controller is based on a definite mathematical model rather than depending on experience and trial and error techniques. The proposed controller is also more flexible because it is not limited by the restrictions of the finite state automata theory. Adequate guidelines of how to construct an RNN-based sequential controller are presented. These guidelines are applied to different case studies. The proposed controller is tested by simulations and real-time experiments. These tests prove the successfulness of the proposed controller performances. Theoretical as well as experimental results are presented and discussed indicating that the proposed design procedure using Elman's RNN can be effective in designing a sequential controller for event-based type manufacturing systems. In addition, the simulation results assure the effectiveness of the proposed controller to outperform the effect of noisy inputs. |
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Keywords: | Elman's network finite state automata flexible manufacturing systems ladder language learning noisy inputs pneumatic system programmable controller recurrent neural network sequential control |
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