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Prediction of Standard Time of the Sewing Process using a Support Vector Machine with Particle Swarm Optimization

Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Standard time is a key indicator to measure the production efficiency of the sewing department, and it plays a vital role in the production forecast for the apparel industry. In this article, the grey correlation analysis was adopted to identify seven sources as the main influencing factors for determination of the standard time in the sewing process, which are sewing length, stitch density, bending stiffness, fabric weight, production quantity, drape coefficient, and length of service. A novel forecasting model based on support-vector machine (SVM) with particle swarm optimization (PSO) is then proposed to predict the standard time of the sewing process. On the ground of real data from a clothing company, the proposed forecasting model is verified by evaluating the performance with the squared correlation coefficient (R2) and mean square error (MSE). Using the PSO-SVM method, the R2 and MSE are found to be 0.917 and 0.0211, respectively. In conclusion, the high accuracy of the PSO-SVM method presented in this experiment states that the proposed model is a reliable forecasting tool for determination of standard time and can achieve good predicted results in the sewing process.
Rocznik
Strony
290--297
Opis fizyczny
Bibliogr. 30 poz.
Twórcy
autor
  • School of International Education, Zhejiang Sci-Tech University, Hangzhou, China
  • Clothing Engineering Research Center of Zhejiang Province, Hangzhou, China
autor
  • School of International Education, Zhejiang Sci-Tech University, Hangzhou, China
  • Jnby Co., Ltd., Hangzhou, Zhejiang, China
autor
  • Excellent Fashion Co., Ltd., Hangzhou, Zhejiang, China
Bibliografia
  • [1] Eraslan, E. (2009). The estimation of product standard time by artificial neural networks in the molding industry. Mathematical Problems in Engineering, 2009. doi: 10.1155/2009/527452.
  • [2] Yu, T., Cai, H. (2015). The prediction of the man-hour in aircraft assembly based on support vector machine particle swarm optimization. Journal of Aerospace Technology and Management, 7, 19–30. doi: 10.5028/jatm.v7i1.409.
  • [3] Maynard, H. B., Hodson, W. K. (2001). Maynard's industrial engineering handbook. McGraw-Hill.
  • [4] Kutschenreiter-Praszkiewicz, I. (2008). Application of artificial neural network for determination of standard time in machining. Journal of Intelligent Manufacturing, 19, 233–240. doi: 10.1007/s10845-008-0076-6.
  • [5] Chen, Y.-L., Li, Yi. (2015). Study on time-quota based on degree of part customization in MC environment. Application Research of Computers.
  • [6] Pan, C. R., Huang, X. J., Chen, H. B., et al. (2012). Application of stopwatch to calculate man-hour quota. Machinery Design & Manufacture.
  • [7] Wang, H., Chen, Y., Zhang, S., (2015). Method for determining man-hour in mass customization based on error correction coefficient. Computer Engineering and Applications, 51(11), 228–232.
  • [8] Li X, Ji W, Jia J. (2013). On stopwatch method-based man-hour quota calculation process and its implementation. Computer Applications and Software, 4, 195–197.
  • [9] Park, H.-S. (2015). A study on the applicability of PTS to establish standard time for agricultural work of Korea. Journal of the ergonomics society of Korea, 34, 145–149. doi: 10.5143/jesk.2015.34.2.145.
  • [10] Ahmed, M., Islam, T., Kibria, G.. (2018). Estimation of the standard minute value of polo shirt by work study. International Journal of Scientific and Engineering Research, 2018, 721–736.
  • [11] Lai, L. K. C., Liu, J. N. K., IEEE (2009). A neural network and CBR-based model for sewing minute value. In: 2009 International Joint Conference on Neural Networks, Vols 1–6, Atlanta, GA, USA, 14–19 June 2009, IEEE, pp. 1567–1572.
  • [12] Ning, Y. E., Yuxiu, Y. (2012). Man-hour quota determination method for garment production of multi-variety in small batch. Journal of Textile Research.
  • [13] Shigang, W. U., Hong, M. U. (2011). Man-hour calculation based on typical procedure in garment making. Journal of Textile Research, 32, 151–154.
  • [14] LIU Deliang. Research on standard time of garment sewing. Textile industry and technology 2018, 047(004):44–46.
  • [15] Jinsong, D., Menglin, Z., Yufang, D., et al. (2018). Action coding for operation process of garment template. Journal of Textile Research, 39, 109–114.
  • [16] Kutschenreiter-Praszkiewicz, I. (2008). Application of artificial neural network for determination of standard time in machining. Journal of Intelligent Manufacturing, 19, 233–240.
  • [17] Chao, G., Danchen, Z. (2010). Man-hour quota system based on genetic neural network. Computer Applications and Software.
  • [18] Tang, J. L., Yang, R. F. (2019). Modeling the electrical conductivity of Ni1−xFex-SDC composite anode by using PSO-SVR. In: 4th International Conference on Advanced Materials Research and Manufacturing Technologies.
  • [19] Hu, Y., Sun, J., Peng, W., et al. (2020). A novel forecast model based on CF-PSO-SVM approach for predicting the roll gap in acceleration and deceleration process. Engineering Computations. doi: 10.1108/ec-08-2019-0370.
  • [20] Shang, Z. G., Yan, H. S. (2011). Product design time forecast based on kernel approximation. Computer Integrated Manufacturing Systems, 17, 1144–1148.
  • [21] Rui, J., Zhang, H., Zhang, D., Han, F., Guo, Q. (2019). Total organic carbon content prediction based on support-vector-regression machine with particle swarm optimization. Journal of Petroleum Science and Engineering, 180, 699–706. doi: 10.1016/j.petrol.2019.06.014.
  • [22] Liu, P., Xie, M., Bian, J., Li, H., Song, L. A hybrid PSO-SVM model based on safety risk prediction for the design process in metro station construction. International Journal of Environmental Research and Public Health, 17. doi: 10.3390/ijerph17051714.
  • [23] He, H., Li, Y. (2013). Calculation of theoretical standard time of garment process with modapts method. Light and Textile Industry and Technology.
  • [24] Wang, L., Yang, Y., Chen, W. (2016). Prediction of garment standard time based on processes similarity. Journal of Textile Research, 037(011):114–119,125.
  • [25] Liu, D. (2018). Research on standard time of garment sewing. Textile Industry and Technology, 047(004):44–46.
  • [26] Joan, B. A., Roger, S. F. (1985). Production efficiency among mexican apparel assembly plants. The Journal of Developing Areas, 19(30), 369–378.
  • [27] Liu, D. L. (2018). Overview of garment production capacity. Light and Textile Industry and Technology, 47(3), 13–16.
  • [28] Rahman, M. H., Amin, M. A. (2016). An empirical analysis of the effective factors of the production efficiency in the garments sector of Bangladesh. European Journal of Advances in Engineering and Technology, 3(3), 30–36.
  • [29] Yukari, S., Yuriko, S., Sachiko, S. (2012). Effect of stitch density on “Shittori” characteristic for interlock knitted fabric of ultla-fine fibers. Journal of Textile Engineering, 58(4), 49.
  • [30] Ma, S. (2020). Measurement and evaluation of economic benefits of marine industry: A grey correlation-based analysis. Journal of Coastal Research, 77–80. doi: 10.2112/si106-020.1.
Uwagi
Opracowanie rekordu ze środków MEiN, umowa nr SONP/SP/546092/2022 w ramach programu "Społeczna odpowiedzialność nauki" - moduł: Popularyzacja nauki i promocja sportu (2022-2023).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-f86dcf80-ec96-4fe9-87b7-b03d7f89cc82
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