Grouping Method of Semiconductor Bonding Equipment Based on Clustering by Fast Search and Find of Density Peaks for Dynamic Matching According to Processing Tasks
Abstract
:1. Introduction
2. Semiconductor Bonding Device Grouping Method Based on Processing Task Matching
2.1. Equipment Marshalling Process
2.2. Analysis of Equipment Grouping Methods Based on Processing Task Matching
3. Grouping Method of Semiconductor Bonding Equipment Based on CFSFDP Algorithm for Dynamic Matching According to Processing Tasks
3.1. Overview of CFSFDP Clustering Algorithm
3.2. Application of CFSFDP Clustering Algorithm in Equipment Marshalling Process
4. Simulation Verification and Results Analysis
4.1. Simulation Experiment Design Related Information
4.2. Definition of Evaluation Indicators
4.3. Analysis of Experimental Results
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Equipment Scale | Distance Parameter | Device Grouping Method Based on Processing Task Matching | Machining Task Matching Semiconductor Bonding Device Grouping Method Based on CFSFDP Algorithm | ||||
---|---|---|---|---|---|---|---|
3 × 4 | 0.20 | 113.15 | 1.60 | 89.90 | 108.52 | 0 | 90.20 |
4 × 5 | 0.40 | 113.35 | 2.10 | 80.80 | 106.84 | 1.40 | 83.80 |
7 × 7 | 0.63 | 139.21 | 9.42 | 97.70 | 120.69 | 6.84 | 97.30 |
10 × 10 | 1.16 | 256.92 | 22.10 | 92.30 | 123.79 | 11.61 | 95.00 |
15 × 15 | 2.93 | 303.39 | 52.30 | 93.90 | 307.30 | 50.50 | 94.80 |
Equipment Scale | Distance Parameter | Device Grouping Method Based on Processing Task Matching | Machining Task Matching Semiconductor Bonding Device Grouping Method Based on CFSFDP Algorithm | ||||
---|---|---|---|---|---|---|---|
3 × 4 | 0.20 | 134.82 | 1.50 | 77.00 | 133.92 | 0 | 78.70 |
4 × 5 | 0.40 | 89.17 | 1.30 | 88.50 | 87.03 | 1.02 | 91.10 |
7 × 7 | 0.63 | 154.31 | 9.59 | 96.40 | 106.20 | 6.80 | 98.40 |
10 × 10 | 1.16 | 258.46 | 22.3 | 92.50 | 110.502 | 11.52 | 94.80 |
15 × 15 | 2.93 | 282.82 | 52.23 | 95.90 | 273.852 | 44.80 | 94.20 |
Demand Capacity | Difference Coefficient | Device Grouping Method Based on Processing Task Matching | Machining Task Matching Semiconductor Bonding Device Grouping Method Based on CFSFDP Algorithm | ||||
---|---|---|---|---|---|---|---|
fo | |||||||
GW1 | 0.09 | 102.24 | 0.93 | 74.00 | 101.59 | 0.64 | 76.50 |
GW2 | 0.11 | 115.04 | 1.03 | 83.30 | 108.94 | 0.63 | 86.82 |
GW3 | 0.28 | 114.06 | 0.86 | 84.51 | 112.77 | 0.55 | 87.40 |
GW4 | 0.39 | 112.04 | 0.95 | 83.10 | 108.13 | 0.71 | 85.70 |
GW5 | 0.47 | 114.14 | 0.97 | 80.35 | 112.79 | 0.65 | 85.00 |
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Gao, Z.; Si, W.; Han, Z.; Peng, J.; Qiao, F. Grouping Method of Semiconductor Bonding Equipment Based on Clustering by Fast Search and Find of Density Peaks for Dynamic Matching According to Processing Tasks. Processes 2019, 7, 566. https://doi.org/10.3390/pr7090566
Gao Z, Si W, Han Z, Peng J, Qiao F. Grouping Method of Semiconductor Bonding Equipment Based on Clustering by Fast Search and Find of Density Peaks for Dynamic Matching According to Processing Tasks. Processes. 2019; 7(9):566. https://doi.org/10.3390/pr7090566
Chicago/Turabian StyleGao, Zhijun, Wen Si, Zhonghua Han, Jiayu Peng, and Feng Qiao. 2019. "Grouping Method of Semiconductor Bonding Equipment Based on Clustering by Fast Search and Find of Density Peaks for Dynamic Matching According to Processing Tasks" Processes 7, no. 9: 566. https://doi.org/10.3390/pr7090566
APA StyleGao, Z., Si, W., Han, Z., Peng, J., & Qiao, F. (2019). Grouping Method of Semiconductor Bonding Equipment Based on Clustering by Fast Search and Find of Density Peaks for Dynamic Matching According to Processing Tasks. Processes, 7(9), 566. https://doi.org/10.3390/pr7090566