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Neurovision-based logic control of an experimental manufacturing plant using neural net le-net5 and automation Petri nets
Authors:B Karlik  M Uzam  M Cinsdikici  A H Jones
Affiliation:(1) Department of Computer Engineering, Haliç University, İstanbul, Turkey, Bahrain;(2) Niğde Üniversitesi, Mühendislik-Mimarlik Fakültesi, Elektrik-Elektronik Mühendisliği Bölümü, Niğde, Turkey;(3) International Computer Institute, Ege University, İzmir, Turkey;(4) School of Computing, Science and Engineering, University of Salford, Salford, Newton Building, Greater Manchester, M5 4WT, UK
Abstract:In this paper, Petri nets and neural networks are used together in the development of an intelligent logic controller for an experimental manufacturing plant to provide the flexibility and intelligence required from this type of dynamic systems. In the experimental setup, among deformed and good parts to be processed, there are four different part types to be recognised and selected. To distinguish the correct part types, a convolutional neural net le-net5 based on-line image recognition system is established. Then, the necessary information to be used within the logic control system is produced by this on-line image recognition system. Using the information about the correct part types and Automation Petri nets, a logic control system is designed. To convert the resulting Automation Petri net model of the controller into the related ladder logic diagram (LLD), the token passing logic (TPL) method is used. Finally, the implementation of the control logic as an LDD for the real time control of the manufacturing system is accomplished by using a commercial programmable logic controller (PLC).
Keywords:Image recognition  neural networks  manufacturing plant control  Petri nets  ladder logic diagrams  Programmable logic controller
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