6,677 research outputs found

    Recent developments and future trends of industrial agents

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    The agent technology provides a new way to design and engineer control solutions based on the decentralization of control over distributed structures, addressing the current requirements for modern control systems in industrial domains. This paper presents the current situation of the development and deployment of agent technology, discussing the initiatives and the current trends faced for a wider dissemination and industrial adoption, based on the work that is being carried out by the IEEE IES Technical Committee on Industrial Agents

    Special Session on Industry 4.0

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    New Shop Floor Control Approaches for Virtual Enterprises

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    The virtual enterprise paradigm seems a fit response to face market instability and the volatile nature of business opportunities increasing enterprise’s interest in similar forms of networked organisations. The dynamic environment of a virtual enterprise requires that partners in the consortium own reconfigurable shop floors. This paper presents new approaches to shop floor control that meet the requirements of the new industrial paradigms and argues on work re-organization at shop floor level.virtual enterprise; networked organisations

    Developing Measures of Automation Implementation in Indian Industries

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    In the international business market, Automation has increased the competence of Indian Industry by making them fast, error free and providing them with greater customization option. This paper performs the review of automation and attempts to develop a framework for the implementation of automation by validating “IMPLAUT” (IMPLementing AUTomation) for Indian Industries. An exhaustive literature survey proceeded by simple meta-analysis have been carried out to find out various research gaps and further to address these gaps few objectives of this research study have been explored. For developing model for automation, the different variables are explored using ‘Churchill’s approach’ as may be applicable to Indian industrial scenario. It is evident from the model of “IMPLAUT” that automation will lead to the rise of competence in Indian industry provided the various input and output model suggested by the generic model are to be kept in view. It has been observed that the application of “IMPLAUT” reduces the manufacturing and downtime therefore increasing the overall efficiency of the industry. So “IMPLAUT” can be further researched and must be considered as an emerging field for research in engineering discipline. Keywords: Automation, IMPLAUT, classification schemes, Meta analysis, dimension

    Automatic generation of human machine interface screens from component-based reconfigurable virtual manufacturing cell

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    Increasing complexity and decreasing time-tomarket require changes in the traditional way of building automation systems. The paper describes a novel approach to automatically generate the Human Machine Interface (HMI) screens for component-based manufacturing cells based on their corresponding virtual models. Manufacturing cells are first prototyped and commissioned within a virtual engineering environment to validate and optimise the control behaviour. A framework for reusing the embedded control information in the virtual models to automatically generate the HMI screens is proposed. Finally, for proof of concept, the proposed solution is implemented and tested on a test rig

    Design, modelling, simulation and integration of cyber physical systems: Methods and applications

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    The main drivers for the development and evolution of Cyber Physical Systems (CPS) are the reduction of development costs and time along with the enhancement of the designed products. The aim of this survey paper is to provide an overview of different types of system and the associated transition process from mechatronics to CPS and cloud-based (IoT) systems. It will further consider the requirement that methodologies for CPS-design should be part of a multi-disciplinary development process within which designers should focus not only on the separate physical and computational components, but also on their integration and interaction. Challenges related to CPS-design are therefore considered in the paper from the perspectives of the physical processes, computation and integration respectively. Illustrative case studies are selected from different system levels starting with the description of the overlaying concept of Cyber Physical Production Systems (CPPSs). The analysis and evaluation of the specific properties of a sub-system using a condition monitoring system, important for the maintenance purposes, is then given for a wind turbine

    Responsive Production in Manufacturing: A Modular Architecture

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    [EN] This paper proposes an architecture aiming at promoting the convergence of the physical and digital worlds, through CPS and IoT technologies, to accommodate more customized and higher quality products following Industry 4.0 concepts. The architecture combines concepts such as cyber-physical systems, decentralization, modularity and scalability aiming at responsive production. Combining these aspects with virtualization, contextualization, modeling and simulation capabilities it will enable self-adaptation, situational awareness and decentralized decision-making to answer dynamic market demands and support the design and reconfiguration of the manufacturing enterprise.The research leading to these results has received funding from the European Union H2020 project C2 NET (FoF-01-2014) nr 636909.Marques, M.; Agostinho, C.; Zacharewicz, G.; Poler, R.; Jardim-Goncalves, R. (2018). Responsive Production in Manufacturing: A Modular Architecture. 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