DOI QR코드

DOI QR Code

Analysis of Smart Factory Research Trends Based on Big Data Analysis

빅데이터 분석을 활용한 스마트팩토리 연구 동향 분석

  • Lee, Eun-Ji (Global Leaders College, Yonsei University) ;
  • Cho, Chul-Ho (Dept. of Business Management, Daegu Haany University)
  • 이은지 (연세대학교 글로벌인재대학) ;
  • 조철호 (대구한의대학교 경영학과)
  • Received : 2021.11.05
  • Accepted : 2021.11.17
  • Published : 2021.12.31

Abstract

Purpose: The purpose of this paper is to present implications by analyzing research trends on smart factories by text analysis and visual analysis(Comprehensive/ Fields / Years-based) which are big data analyses, by collecting data based on previous studies on smart factories. Methods: For the collection of analysis data, deep learning was used in the integrated search on the Academic Research Information Service (www.riss.kr) to search for "SMART FACTORY" and "Smart Factory" as search terms, and the titles and Korean abstracts were scrapped out of the extracted paper and they are organize into EXCEL. For the final step, 739 papers derived were analyzed using the Rx64 4.0.2 program and Rstudio using text mining, one of the big data analysis techniques, and Word Cloud for visualization. Results: The results of this study are as follows; Smart factory research slowed down from 2005 to 2014, but until 2019, research increased rapidly. According to the analysis by fields, smart factories were studied in the order of engineering, social science, and complex science. There were many 'engineering' fields in the early stages of smart factories, and research was expanded to 'social science'. In particular, since 2015, it has been studied in various disciplines such as 'complex studies'. Overall, in keyword analysis, the keywords such as 'technology', 'data', and 'analysis' are most likely to appear, and it was analyzed that there were some differences by fields and years. Conclusion: Government support and expert support for smart factories should be activated, and researches on technology-based strategies are needed. In the future, it is necessary to take various approaches to smart factories. If researches are conducted in consideration of the environment or energy, it is judged that bigger implications can be presented.

Keywords

References

  1. Ann, Juyoung, Ahn, Kyubin, and Song, Min. 2016. Text Mining Driven Content Analysis of Ebola on News Media and Scientific Publications. Journal of the Korean Library and Information Science 50(2):289-307. https://doi.org/10.4275/KSLIS.2016.50.2.289
  2. Cho Hyeji and Kim, Yongkyun. 2018. Smart Factory Technology and Industry Trends. Institute for Information and Communications Technology Promotion 15-25.
  3. Cho, Jihoon and Shin, Wanseon. 2019. Developing a Framework for Assessing Smart Factory Readiness of SMEs and Case Study. Journal of Korean Soceity for Quality Management 47(1):1-15.
  4. Cho, Sugon and Kim, Seoungbum. 2012. Finding Meaningful Pattern of Key Words in IIE Transactions Using Text Mining. Journal of the Korean Institue of Industrial Engineers 38(1):67-73. https://doi.org/10.7232/JKIIE.2012.38.1.067
  5. Cho, Yongju. 2017. Strategies for promoting domestic smart factories in the era of the 4th industrial revolution. Communications of the Korean Institute of Information Scientists and Engineers 35(6):40-48.
  6. Gil, Hyeongcheol. 2019. An Empirical Study on Adoption Factor and Performance Analysis of Smart Factory through Technical Acceptance Model, PhD diss., University of Hansung.
  7. Guang, Mongauck. 2019. Big Data, Korea Software Engineers Association Big Data Strategy Research Institute.
  8. Hwang, Dongryul and Hwang, Goeun. 2016. Examining of Semantic Map of Humanities Contents through Semantic Network Analysis. Korea Humanities Content Society 0(43):229-255.
  9. James, M. and Michael, C. 2011. Big Data: The next frontier for innovation, competition, and productivity, McKinsey Global Institute. https://www.mckinsey.com/business-functions/mckinsey-digital/our-insights/big-data-the-next-frontier-for-innovation(accessed on 10 June 2020).
  10. Jang, Namkyung and Kim, Minjeong. 2017. Research Trend Analysis in Fashion Design Studies in Korea using Topic Modeling. Journal of digital convergence 15(6):415-423. https://doi.org/10.14400/JDC.2017.15.6.415
  11. Jeon, Jiyoung. 2019. A Study of Korea Big Data Research Trends Using Big Data Analysis. Master's Thesis, University of Hanbat.
  12. Joeunnuri and Chang, Taeho. 2018. Topic modeling analysis to understand trends in smart manufacturing technology, The Korean Institute of Industrial Engineers A collection of papers from the Autumn Conference 2018(11):837-864.
  13. Jointly with related ministries. 2015. Manufacturing Innovation 3.0 Strategy Action Measures.
  14. Jung, Yongbok and Park, Euiseob. 2015. Keyword Analysis of Two SCI Journals on Rock Engineering by using Text Mining. Korean Society for Rock Mechanics and Rock Engineering 25(4):303-319.
  15. Kim Hyungchul. 2014. An Empirical Study on the financial characteristic by the growth stage of small and medium-sized enterprise. Master's degree, University of Mokpo.
  16. Kim, Dongnam, Hong, Kumsuk, Koh, Jinhwan, and Jeon, Jeonghwan. 2017. Analysing the Research Trend of Aerospace Field. Industrial Development Institute 33(4):193-226.
  17. Kim, Gangwon. 2017. Big data technology learned in practice. Data collection, loading, processing, analysis, and machine learning. WikiBooks.
  18. Kim, Gyesoo. 2015. Big Data Analysis and Meta Analysis. Hanarae.
  19. Kim, Sangmoon. 2018. The influence of the consultant's competence on the participation and reuse of the clients. Journal of SME finance 38(1):3-26. https://doi.org/10.33219/JSMEF.2018.38.1.001
  20. Kim, Sangmoon. 2019. An Empirical Study on the Smart Factory Acceptance Intension and Management Performance of Big Data-based Small and Medium Sized Manufacturing Companies. Master's degree, University of Hansung.
  21. Kim, Sunghyun, Chang Sokho, and Lee Sangwon. 2017. Digital Convergence Research 15(6):133-143.
  22. Kwak, Minhong. 2019. An Analytical Study on Business Performances According to the Application of Smart Factory Core Technology: Focusing on the application level and the variables affecting business performances. Master's degree, Seoul National University of Science and Technology.
  23. Kwon, Jounghuem and Lee Ho. 2019. A Study on Trends and Perceptions in Smart Factory: News Network Analysis. Korean Society of Knowledge and Information Technology 14(6):605-614. https://doi.org/10.34163/jkits.2019.14.6.003
  24. Kwon, Miboon. 2017. A Corpus Analysis of the Lexical Characteristics of Tourism Research Paper Abstracts and the Research Trends. Journal of Language Sciences 24(3):1-21. https://doi.org/10.14384/kals.2017.24.3.001
  25. Kwon, Sein. 2019. An Empirical Study of Critical Success Factors for Implementation of Smart Factory and Firm Performance: Focused on Small and Medium-Sized Manufacturing Firms. PhD diss., University of Dankook.
  26. Lee, Hoonhye. 2013. A plan to utilize big data to strengthen manufacturing competitiveness, Korea Institute for Industrial Economics and Trade(KIET). ISSUE PAPER.
  27. Lee, Yumi. 2017. Research of Big Data system for Smart Factory. Master's Thesis, University of Korea Aerospace.
  28. Markets and Markets. 2017. Smart Factory Market by Technology(DCS, PLC, MES, ERP, SCADA, PAM, HMI, PLM), Component(Sensors, Industrial Robots, Machine Vision Systems, Industrial 3D Printing), End-User Industry, and Region. Global Forecast to 2022.
  29. Myung, Sangil. 2018. A Study on the Establishment of Smart Factory Automation Management System based on IoT. PhD diss., University of Tongmyong.
  30. Oh, Juhwan. 2019. A Study on Strategic Utilization of Smart Factory: Effects of Building Purposes and Contents on Continuous Usage Intention. PhD diss., University of Chungbuk.
  31. Ree, Sangbok. 2019. Analysis of Research Trends in Journal of Korean Society for Quality Management by Text Mining Processing. Jouranl of Korean SSociety for Quality Management 47(3):597-613.
  32. S. Goldman. 2016. Factory of the Future: Beyond the Assembly Line. Profiles in Innovation.
  33. Shin, Jaehoon. 2018. Research Trend Analysis on Smart Factory Security Factors: Based on Domestic (RISS) and Overseas (SCOPUS) Data. Master's degree, University of Chungbuk.
  34. Shin, Jangchul, Lim, Okkyung, Park, Younghwan, and Song, Sanghwa. 2017. A Study on Determining Priorities of Basic Factors for Implementing Smart Supply Chain. Journal of the Korean Society fo Supply Chain Management 17(1):1-12.
  35. Sjodin, D. R., Parida, V., Leksell. M., and Petrovic. A. 2018. Smart Factory Implementation and Process Innovation. Research-Technology Management 61(5):22-31. https://doi.org/10.1080/08956308.2018.1471277
  36. The Asia-Pacific Economic Team of the Bank of Korea. 2019. Current status and implications of the introduction of smart factories in Japan. International Economic Review.
  37. UURINTUYA, BAYARSAIKHAN. 2021. Analysis of Smart Factory Research Trends using Text Mining., Master's degree, University of Chungbuk.
  38. Veza, I., Mladineo, M., and Gjeldum, N. 2015. Managing Innovative Production Network of Smart Factories. IFAC-Papers On Line 48(3):555-560. https://doi.org/10.1016/j.ifacol.2015.06.139
  39. Wang, J., Ma, Y., Zhang, L., Gao, R. X., and Wu. D. 2018. Deep learning for smart manufacturing: Methods and applications. Journal of Manufacturing Systems 48(2018):144-156. https://doi.org/10.1016/j.jmsy.2018.01.003
  40. Wang, S. J., Wan, D. L., and Zhang, C. 2016. Implementing Smart Factory of Industrie 4.0: An Outlook. International Journal of Distributed Sensor Networks 4:1-10. https://doi.org/10.1080/15501320701810297
  41. Won, Jaongyeon and Park, Minjae. 2020. Smart Factory Adoption in Small and Medium-sized Enterprises : Empirical Evidence of Manufacturing Industry in Korea. Technological Forecasting and Social Change 157.
  42. Yang, Hyunlim and Chang, Taiwoo. 2016. Exploring the Research Trend of Smart Factory in Korea by Journal Abstract Analysis. The Korean Institute of Industrial Engineers A collection of papers from the Autumn Conference 2016(11):412-424.
  43. Yook, Dongin. 2017. Text Mining-Based Analysis for Research Trends in Vocational Studies. Journal of the Korea Academia-Industrial cooperation Society 18(3):586-599. https://doi.org/10.5762/KAIS.2017.18.3.586
  44. Yoon, Yeongho, Lee, Jin, Lee, Eunbin, Moon, Bomyeong, Seo, Jihyung, Lee Jeongcheol, Chang, Taiwoo, and Sung, Siil. 2020. Policy Suggestions on the Smart Factory Based on the Survey Results from Smart Factory Suppliers 48(1):1-11. https://doi.org/10.7469/JKSQM.2020.48.1.1
  45. Yu, Yeongnan. 2016. Analysis on technology level of Big Data for Smart Manufacturing in South Korea: Focused on Domestic Patent Trends. Master's Thesis, University of Yonsei.
  46. https://www.elec4.co.kr/article/articleView.asp?idx=25248
  47. http://kostat.go.kr/portal/korea/index.action
  48. http://kosis.kr/index/index.do
  49. https://www.yna.co.kr/view/AKR20210504128700003
  50. http://it.chosun.com/site/data/html_dir/2017/04/17/2017041785056.html