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LIBRIS Formathandbok  (Information om MARC21)
FältnamnIndikatorerMetadata
00009057naa a2200493 4500
001oai:DiVA.org:hv-19572
003SwePub
008230111s2022 | |||||||||||000 ||eng|
024a https://urn.kb.se/resolve?urn=urn:nbn:se:hv:diva-195722 URI
040 a (SwePub)hv
041 a engb eng
042 9 SwePub
072 7a vet2 swepub-contenttype
072 7a kon2 swepub-publicationtype
100a Hattinger, Monika,d 1969-u Högskolan Väst,Avdelningen för produktionssystem (PS),PTW iAIL LINA4 aut0 (Swepub:hv)kmha
2451 0a Reviewing human-centric themes in intelligent manufacturing research
264 1a Trollhättan :b University West,c 2022
338 a print2 rdacarrier
500 a  The study was carried out within the AHIL-project, Artificial and Human Intelligence through Learning, funded by the Swedish Knowledge Foundation and University West
520 a In the era of Industry 4.0, emergent digital technologies generate profound transformations in the industry toward developing intelligent manufacturing. The technologies included in Industry 4.0 are expected to bring new perspectives to the industry on how manufacturing can integrate new solutions to get maximum output with minimum resource utilization (Kamble et al., 2018). Industry 4.0 technologies create a great impact on production systems and processes, however, affect organizational structures and working life conditions by disrupting employees’ everyday practices and knowledge, in which competence and learning, human interaction, and organizational structures are key. Hence, new digital solutions need to be integrated with work and learning to generate more holistic and sustainable businesses (Carlsson et al., 2021).The core Industry 4.0 technologies are built on cyber-physical systems (CPS), cloud computing, and the Internet of things (IoT) (Kagermann et al., 2013; Zhou et al., 2018). In recent years, an array of additional technologies has been developed further, such as artificial intelligence (AI), big data analytics, augmented and virtual reality (AR/VR), cyber security, robotics, and automation. Industry 4.0 aims to create a potential for faster delivery times, more efficient and automated processes, higher quality, and customized products (Zheng et al., 2021). Hence, the ongoing transformation through the technological shift of production in combination with market demands pushes the industry and its production process.Recent research has substantially contributed to an increased understanding of the technological aspects of Industry 4.0. However, the utilization of technologies is only a part of the complex puzzle making up Industry 4.0 (Kagermann et al., 2013; Zheng et al., 2021). The impact Industry 4.0 technologies and application s have on the industrial context also changes and disrupts existing and traditional work practices (Taylor et al., 2020), management and leadership (Saucedo-Martínez et al., 2018), learning and skills (Tvenge & Martinsen, 2018), and education (Das et al., 2020). This research has shown a growing interest in human-centric aspects of Industry 4.0 (Nahavandi, 2019), i.e., the transformative effects Industry 4.0 has on humans, workplace design, organizational routines, skills, learning, etc. However, these aspects are scarcely considered in-depth. Given this, and from a holistic point of view, there is a need to understand intelligent manufacturing practice from a human-centric perspective, where issues of work practices and learning are integrated, herein refe rred to as industrial work-integrated learning. I-WIL is a research area that particularly pays attention to knowledge production and learning capabilities related to use and development when technology and humans co -exist in industrial work settings (Shahlaei & Lundh Snis, 2022). Even if Industry 4.0 still is relevant for continuous development, a complementary Industry 5.0 has arisen to provide efficiency and productivity as the sole goals to reinforce a sustainable, human-centric, and resilient manufacturing industry (Breque et al., 2021; Nahavandi, 2019).Given this situation, the research question addressed here is: How does state-of-the-art research of Industry 4.0 technologies and applications consider human-centric aspects? A systematic literature review was conducted aiming to identify a future research agenda that emphasizes human-centric aspects of intelligent manufacturing, that will contribute to the field of manufacturing research and practices. This question was based on very few systematic literature reviews, considering Industry 4.0 research incorporating human -centric aspects for developing intelligent manufacturing (Kamble et al., 2018; Zheng et al., 2021). The literature review study was structured by the design of Xiao and Watson’s (2019) methodology consisting of the steps 1) Initial corpus creation, 2) Finalizing corpus, and 3) Analyzing corpus, and we also used a bibliometric approach throughout the search process (Glänzel & Schoepflin, 1999). The keyword selection was categorized into three groups of search terms, “industry 4.0”, “manufacturing”, and “artificial intelligence”, see figure 1. (Not included here)Articles were collected from the meta -databases EBSCOhost, Scopus, Eric, and the database AIS, to quantify the presence of human-centric or human-involved AI approaches in recent manufacturing research. A total of 999 scientific articles were collected and clustered based on a list of application areas to investigate if there is a difference between various areas in which artificial intelligence is used. The application areas are decision -making, digital twin, flexible automation, platformization, predictive maintenance, predictive quality, process optimization, production planning, and quality assessment.Throughout the review process, only articles that included both AI and human -centric aspects were screened and categorized. The final corpus included 386 articles of which only 93 articles were identified as human -centric. These articles were categorized into three themes: 1) organizational change, 2) competence and learning, and 3) human-automation interaction. Theme 1 articles related mostly to the application areas of flexible automation (11), production planning (9), and predictive maintenance (5). Theme 2 concerned the application areas of production planning and quality assessment (7), and process optimization (7).Finally, theme 3 mainly focused on flexible automation (10), digital twin (3), and platformization (3). The rest of the corpus only consisted of one or two articles in related application areas. To conclude, only a few articles were found that reinforce human -centric themes for Industry 4.0 implementations. The literature review identified obstacles and opportu nities that affect manufacturing organizations to reap the benefits of Industry 4.0. Hence, I-WIL is proposed as a research area to inform a new research agenda that captures human and technological integration of Industry 4.0 and to further illuminate human-centric aspects and themes for future sustainable intelligent manufacturing. 
650 7a SAMHÄLLSVETENSKAPx Utbildningsvetenskapx Pedagogik0 (SwePub)503012 hsv//swe
650 7a SOCIAL SCIENCESx Educational Sciencesx Pedagogy0 (SwePub)503012 hsv//eng
650 7a SAMHÄLLSVETENSKAPx Utbildningsvetenskapx Lärande0 (SwePub)503032 hsv//swe
650 7a SOCIAL SCIENCESx Educational Sciencesx Learning0 (SwePub)503032 hsv//eng
653 a Industry 4.0
653 a Industry 5.0
653 a intelligent manufacturing
653 a work-integrated learning
653 a human-centric aspects
653 a literature review
653 a Work Integrated Learning
653 a Arbetsintegrerat lärande
653 a Production Technology
653 a Produktionsteknik
700a de Blanche, Andreas,d 1975-u Högskolan Väst,Avdelningen för Matematik, Data- och Lantmäteriteknik,PTW iAIL LINA4 aut0 (Swepub:hv)imabk
700a Olsson, Anna Karin,d 1966-u Högskolan Väst,Avd för företagsekonomi,iAIL LINA4 aut0 (Swepub:hv)aehako
700a Carlsson, Linneau Högskolan Väst,Avd för informatik,iAIL LINA4 aut0 (Swepub:hv)lincar
700a Lundh Snis, Ulrika,d 1970-u Högskolan Väst,Avd för informatik,iAIL LINA4 aut0 (Swepub:hv)imus
700a Eriksson, Kristina M.,d 1976-u Högskolan Väst,Avdelningen för produktionssystem (PS),PTW iAIL LINA4 aut0 (Swepub:hv)kek
700a Belenki, Stanislavu Högskolan Väst,Avdelningen för Matematik, Data- och Lantmäteriteknik,PTW LINA iAIL4 aut0 (Swepub:hv)imsbe
710a Högskolan Västb Avdelningen för produktionssystem (PS)4 org
773t International Conference on Work Integrated Learningd Trollhättan : University Westg , s. 125-127q <125-127z 9789189325302
856u http://urn.kb.se/resolve?urn=urn:nbn:se:hv:diva-19570y Abstract Book
8564 8u https://urn.kb.se/resolve?urn=urn:nbn:se:hv:diva-19572

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