Journal of Textile Research ›› 2025, Vol. 46 ›› Issue (01): 154-162.doi: 10.13475/j.fzxb.20240500701

• Apparel Engineering • Previous Articles     Next Articles

Production scheduling optimization of shirt component module based on standard man-hour prediction

SHENG Xibin1, ZHAO Songling1, GU Bingfei1,2,3()   

  1. 1. School of Fashion Design & Engineering, Zhejiang Sci-Tech University, Hangzhou, Zhejiang 310018, China
    2. Digital Intelligence Style and Creative Design Research Center, Zhejiang Sci-Tech University, Hangzhou, Zhejiang 310018, China
    3. Key Laboratory of Silk Culture Heritage and Products Design Digital Technology,Ministry of Culture and Tourism, Hangzhou, Zhejiang 310018, China
  • Received:2024-05-06 Revised:2024-09-26 Online:2025-01-15 Published:2025-01-15
  • Contact: GU Bingfei E-mail:gubf@zstu.edu.cn

Abstract:

Objective For the rapid reconfiguration requirement of multi-variety and small-batch clothing production system under the characteristics of modular intelligence. A method based on back propagation (BP) neural network was proposed to predict module man-hours and optimize the application of mixed mode component module production scheduling. The research results can be utilized to optimize production scheduling, predict man-hours and assign processes, and provide reference for quick quotation and production planning.

Method shirt; Taking shirts produced by an enterprise as the research object, a sample set of shirt module man-hour was established, and the influence factors of standard man-hour were analyzed to build a man-hour prediction model. Production of two shirts of the same color and different styles was taken as an example to achieve the arrangement of production by using modules in the mixed assembly line, and the arrangement effect was analyzed.

Results In order to measure the accuracy of prediction results more intuitively, the man-hour prediction model was constructed for all module groups and verified one by one. Based on each evaluation index, the prediction accuracy of the model was evaluated, and the prediction results of 11 types of module groups were obtained. From the perspective of model fitting effect, the accuracy of fit of all module groups was above 0.81. From the perspective of the prediction time value of test samples, the average absolute error of each module group was within 9 s and the error value of 8 module groups was not more than 5 s. The model prediction accuracy rate reached more than 90% peaking at 94.89%. Taking the combinatorial splitter module of class 8 module group as an example, the scatter plot was adopted to compare the real value and predicted value data of the test set samples. The values of the two samples were close to each other for most samples, and the error was within the range of ±10 s. The paired sample T test was adopted to analyze the error between the actual value and the predicted value of the class 8 main process, and the significance Sig. value was greater than 0.05, indicating no significant difference between the two, and the multidimensional proof model achieved good results in the prediction of standard man-hour. Finally, the process allocation of the hybrid production line was achieved based on the module group for the two shirts. The results showed that the average absolute error of each module group was within 9 s and the error value of class 8 module group was not more than 5 s. Compared with single-style production, the efficiency of mixed production mode was more than 90%, the efficiency of modular optimization reached 95.55%, the balance delay rate was reduced by 44.04%, and the smoothing index was reduced by 50.09%.

Conclusion A method based on BP neural network is proposed to predict the man-hour of module group and apply it to the production scheduling optimization of mixed mode components. Based on the 11 types module group of shirt parts, the BP neural network prediction model is built through the weight analysis of the influence factors of standard man-hour. In order to verify the accuracy of the prediction results, the man-hour prediction model was constructed for all module groups, and the optimal network structure was obtained by verifying one by one. The paired sample T-test was conducted for the actual and predicted values of each process of the class 8 module group, and the results showed that Sig. values were all greater than 0.05, indicating no significant difference between them. Finally, based on the module group, the process allocation of the hybrid production line is realized for the two shirts. The results of this study can be used for production scheduling optimization, man-hour prediction and process allocation, which can meet the application requirements of mixed model processing in enterprises to a certain extent, and provide reference for rapid quotation and production planning.

Key words: shirt, BP neural network, standard man-hour, man-hour prediction, module production, flow arrangement

CLC Number: 

  • TS941.17

Tab.1

Module group division of shirt components based on process similarity"

编号 各模块族中部件(部位)类别
1 E-01贴袋
2 g-01褶位
3 g-02省位
4 f-02绲边袖衩、J-04绲边衣摆
5 G-03卷边袖口、J-03卷边衣摆、I-01侧衩
6 H-01前中、A-01领圈、G-01拼接袖口
7 a-01主唛及尺码唛、a-02洗唛、a-03挂耳
8 C-01袖窿、B-01肩缝、F-01侧缝、D-01袖底缝、
K-01后过肩、g-03分割位
9 e-02口袋、d-04连裁前襟、d-05连裁暗门襟、
G-02折边袖口、J-02折边衣摆
10 h-01一片式克夫、d-01一片式装襟、d-03装暗门襟、
f-02大小袖衩、i-01下摆贴、i-02袖口贴、i-03前襟贴
11 b上级领、c下级领、h-02两片式克夫、
e-01袋盖、e-02两片式装襟、H-01贴边前襟、
G-01贴边袖口、J-01贴边衣摆

Tab.2

Original sample example of class 8 module group process"

样本
工序编号
针步
类型
机器
种类
工艺
难度
长度尺寸/
cm
缝纫
形状
缝纫
数量
面料
等级
面料
层数
纹样
图案
标准
工时/s
0001 拷边机 Y 85 2 低等级 2 58.68
0002 平车 W 50 2 中低等级 2 119.16
0003 平车 Y 18 1 低等级 2 条纹 32.58
0004 刀车 Y 42 1 低等级 1 14.04
0005 明缉 平车 X 56 2 低等级 1 77.64
0006 烫倒 烫台 Z 18 2 中等级 1 13.74
0007 拷边 拷边机 Y 50 2 低等级 1 48.60

Tab.3

Weight calculation results of 9 influencing factors of class 8 module"

因素大类 具体因素 标准差 相关系数 信息量 权重/%
工艺要求 工艺难度 0.130 5.526 0.716 4.69
机器种类 0.380 5.761 2.191 14.36
针步类型 0.335 5.518 1.848 12.11
缝纫结构 长度尺寸 0.171 7.480 1.281 8.40
缝纫形状 0.363 7.262 2.637 17.27
缝纫数量 0.150 8.575 1.286 8.43
缝纫对象 面料等级 0.171 7.786 1.333 8.73
面料层数 0.349 6.314 2.205 14.45
纹样图案 0.224 7.874 1.766 11.57

Fig.1

Each factor correlation coefficient heat map of class 8 module"

Fig.2

Training error curves"

Tab.4

Evaluation of standard man-hour prediction model results for each module group"

模块族
编号
模块
类别
拟合
优度
平均绝对
误差/s
平均相对
误差/%
预测
准确率/%
1 E-01 0.91 7.10 9.39 90.61
2 g-01 0.95 2.70 8.86 91.14
3 g-02 0.90 2.06 7.98 92.02
4 f-02、J-04 0.92 1.39 5.11 94.89
5 G-03、J-03、I-01 0.83 7.05 10.19 89.81
6 H-01、A-01、G-01 0.81 8.12 7.55 92.45
7 a-01、a-02、a-03 0.97 1.13 5.70 94.30
8 C-01、B-01、
F-01、D-01、
K-01、g-03
0.95 3.21 6.55 93.45
9 e-02、d-04、d-05、
G-02、J-02
0.86 4.83 10.76 89.24
10 h-01、d-01、
d-03、f-02、i-01、
i-02、i-03
0.92 4.41 9.62 90.38
11 b、c、h-02、e-01、
e-02、H-01、
G-01、J-01
0.96 2.32 9.56 90.44

Fig.3

Test sample prediction results of class 8 module group"

Fig.4

Drawings of two shirts"

Fig.5

Process routes of two shirts of styles A and B"

Tab.5

Process distribution of two shirt modules"

模块族编号 模块 优化前工位分配 优化后分配工位 工序编号 设备
9 d-05连裁暗门襟 1,2 1,2 26,28 IR/SN
d-04连裁里襟 1,2 1,2 27,29 IR/SN
6 g-02省位 2,3 1,2 30,31 IR/SN
10 h-01一片式克夫 3 1,2 12,13,14,15 IR/SN
4 g-01褶位 3 4 18 SN
5 B-01肩缝 3,4 3 32,33,34,35 SN/OL
F-01侧缝 4 3 36,37 SN/OL
D-01袖底缝 4 4,6 20,21 SN/OL
C-01袖窿 6 6 38,39 SN/OL
11 b-01衬衫上领、c-01衬衫下领 1,7,8,9 5,6,7 2,3,4,5,6,8,9,10,11 IR/SN
a-04领飘带 2,7,8 5,6,7 48,49,50 IR/SN
3 f-02绲边袖衩 2,6 6 16,17 SN
C-02绲边袖窿 5,8 6,7 40,41,42 SN/OL
1 a-02洗唛 1,5 2,5,8 22,23,24,25 SN
a-01主唛及尺码唛 7,8 8 44 SN
a-03挂耳 5 8 25,46 SN
7 G-01拼接袖口 6 8 19 SN
A-01领圈 9 9 43 SN
2 J-03卷边衣摆 10 10 47 SN

Fig.6

Load situations of different production preparation modes"

Tab.6

Production indexes of shirts of two styles in different arrangement mode"

编排
方式
标准生产
节拍/s
编制
效率/%
平滑
指数
平衡延
迟率/%
A 166 87. 98 75.79 12.02
B 126 79.23 89.96 20.77
A-B混合款式 262 93.59 87.23 6.41
模块优化A-B
混合款式
257 95.55 43.54 4.45
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