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Sökning: WFRF:(Agerskans Natalie)

  • Resultat 1-4 av 4
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1.
  • Agerskans, Natalie, et al. (författare)
  • Critical Factors for Selecting and Integrating Digital Technologies to Enable Smart Production : A Data Value Chain Perspective
  • 2023
  • Ingår i: IFIP Advances in Information and Communication Technology. - : Springer Science and Business Media Deutschland GmbH. - 9783031436611 ; , s. 311-325
  • Konferensbidrag (refereegranskat)abstract
    • With the development towards Industry 5.0, manufacturing companies are developing towards Smart Production, i.e., using data as a resource to interconnect the elements in the production system to learn and adapt accordingly for a more resource-efficient and sustainable production. This requires selecting and integrating digital technologies for the entire data lifecycle, also referred to as the data value chain. However, manufacturing companies are facing many challenges related to building data value chains to achieve the desired benefits of Smart Production. Therefore, the purpose of this paper is to identify and analyze the critical factors of selecting and integrating digital technologies for efficiently benefiting data value chains for Smart Production. This paper employed a qualitative-based multiple case study design involving manufacturing companies within different industries and of different sizes. The paper also analyses two Smart Production cases in detail by mapping the data flow using a technology selection and integration framework to propose solutions to the existing challenges. By analyzing the two in-depth studies and additionally two reference cases, 13 themes of critical factors for selecting and integrating digital technologies were identified.
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2.
  • Agerskans, Natalie (författare)
  • Digital Technologies for Enabling Smart Production : Examining the Aspects of Selection and Integration
  • 2023
  • Licentiatavhandling (övrigt vetenskapligt/konstnärligt)abstract
    • With the development towards Industry 5.0, manufacturing companies are developing towards smart production. In smart production, data is used as a resource to interconnect different elements in the production system to learn and adapt to changing production conditions. Common objectives include human-centricity, resource-efficiency, and sustainable production. To enable these desired benefits of smart production, there is a need to use digital technologies to create and manage the entire flow of data. To enable smart production, it is essential to deploy digital technologies in a way so that collected raw data is converted into useful data that can be applied by equipment or humans to generate value or reduce waste in production. This requires consideration to the data flow within the production system, i.e., the entire process of converting raw data into useful data which includes data management aspects such as the collection, analysis, and visualization of data. To enable a good data flow, there is a need to combine several digital technologies. However, many manufacturing companies are facing challenges when selecting suitable digital technologies for their specific production system. Common challenges are related to the overwhelming number of advanced digital technologies available on the market, and the complexity of production system and digital technologies. This makes it a complex task to understand what digital technologies to select and the recourses and actions needed to integrate them in the production system.Against this background, the purpose of this licentiate thesis is to examine the selection and integration of digital technologies to enable smart production within manufacturing companies. More specifically, this licentiate thesis examines the challenges and critical factors of selecting and integrating digital technologies for smart production. This was accomplished by performing a qualitative-based multiple case study involving manufacturing companies within different industries and of different sizes. The findings show that identified challenges and critical factors are related to the different phases of the data value chain: data sources and collection, data communication, data processing and storage, and data visualisation and usage. General challenges and critical factors that were related to all phases of the data value chain were also identified. Moreover, the challenges and critical factors were related to people, process, and technology aspects. This shows that there is a need for holistic perspective on the entire data value chain and different production system elements when digital technologies are selected and integrated. Furthermore, there is a need to define a structured process for the selection and integration of digital technologies, where both management and operational level are involved. 
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3.
  • Agerskans, Natalie, et al. (författare)
  • Enabling Smart Production : The Role of Data Value Chain
  • 2022
  • Ingår i: Advances in Production Management Systems. Smart Manufacturing and Logistics Systems: Turning Ideas into Action. - Cham : Springer Science and Business Media Deutschland GmbH. - 9783031164101 ; , s. 477-485
  • Konferensbidrag (refereegranskat)abstract
    • To stay competitive, manufacturing companies are developing towards Smart Production which requires the use of digital technologies. However, there is a lack of guidance supporting manufacturing companies in selecting and integrating a combination of suitable digital technologies, which is required for Smart Production. To address this gap, the purpose of this paper is twofold: (i) to identify the main challenges of selecting and integrating digital technologies for Smart Production, and (ii) to propose a holistic concept to support manufacturing companies in mitigating identified challenges in order to select and integrate a combination of digital technologies for Smart Production. This is accomplished by using a qualitative-based multiple case study design. This paper identifies current challenges related to selection and integration of digital technologies. To overcome these challenges and achieve Smart production, the concept of data value chain was proposed, i.e., a holistic approach to systematically map and improve data flows within the production system. © 2022, IFIP International Federation for Information Processing.
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4.
  • Leberruyer, Nicolas, et al. (författare)
  • Remanufacturing Components Using Twin Transition – An Exploratory Study in the Heavy-Duty Vehicle Industry
  • 2024
  • Ingår i: Sustainable Production through Advanced Manufacturing, Intelligent Automation and Work Integrated Learning. - 9781643685106 - 9781643685113 ; , s. 520-531
  • Konferensbidrag (refereegranskat)abstract
    • Remanufacturing is a life cycle renewal process by which previously used products such as vehicle components can be maintained and rebuilt. Although knowledge in remanufacturing processes is advanced from a scientific perspective, many traditional technology-driven manufacturing companies are facing challenges related to remanufacturing of various components in their specific industry. An underlying reason is that existing components have been sold for many years, and it is unclear what modifications should be made to the manufacturing process to accommodate both new and remanufactured products. Furthermore, it is unclear what organizational changes such as culture and training of operators are required. At the same time, the manufacturing industry is undergoing a digital transformation. It is therefore relevant to investigate how digitalization and sustainability practices can be combined, commonly referred to as Twin Transition. The purpose of this paper is to explore how a manufacturing company can approach a change towards remanufacturing of components using Twin Transition. This is accomplished by using a qualitative-based case study method at a large manufacturing company in the heavy-duty vehicle industry. The data collection method involved workshops following a SWOT analysis and rich picturing approach. The results from the rich picturing workshop identified four main themes to facilitate remanufacturing. The SWOT analysis identified 20 key aspects related to facilitate remanufacturing. Finally, the paper concludes by proposing five key enablers for achieving remanufacturing using Twin Transition.
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  • Resultat 1-4 av 4

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