scholarly journals Data-analytics-based factory operation strategies for die-casting quality enhancement

Author(s):  
Jun Kim ◽  
Ju Yeon Lee
2021 ◽  
Author(s):  
Jun Kim ◽  
Ju Yeon Lee

Abstract This paper proposes data-analytics-based factory operation strategies for the quality enhancement of die-casting. We first define the four main problems of die casting that result in lower quality: [P1] gaps between the input and output casting parameter values, [P2] occurrence of preheat shots, [P3] lateness of defect distinction, and [P4] worker-experience-based casting parameter tuning. To address these four problems, we derived seven tasks that should be conducted during factory operation: [T1] implementation of exploratory data analysis (EDA) for investigating the trends and correlations between data, [T2] deduction of the optimal casting parameter output values for the production of fair-quality products, [T3] deduction of the upper and lower control limits for casting parameter input–output gap management, [T4] development of a preheat shot diagnosis algorithm, [T5] development of a defect prediction algorithm, [T6] development of a defect cause diagnosis algorithm, and [T7] development of a casting parameter tuning algorithm. The details of the proposed data-analytics-based factory operation strategies with regard to the casting parameter input and output data, data preprocessing, data analytics method used, and implementation are presented and discussed. Finally, a case study of a die-casting factory in South Korea that has adopted the proposed strategies is introduced.


2021 ◽  
Vol 1034 (1) ◽  
pp. 012108
Author(s):  
Victor Yuardi Risonarta ◽  
Juliana Anggono ◽  
Setyo Nugrowibowo ◽  
Albert Wibowo ◽  
Fendy Utomo
Keyword(s):  

2012 ◽  
Vol 14 (1) ◽  
pp. 499-502 ◽  
Author(s):  
Štefan Gašpár ◽  
Ján Paško ◽  
Jozef Malik ◽  
Anton Panda ◽  
Jozef Jurko ◽  
...  

2016 ◽  
Vol 16 (3) ◽  
pp. 151-156 ◽  
Author(s):  
C. Yuksel ◽  
O. Tamer ◽  
E. Erzi ◽  
U. Aybarc ◽  
E. Cubuklusu ◽  
...  

AbstractA356 is one of the widely used aluminium casting alloy that has been used in both sand and die casting processes. Large amounts of scrap metal can be generated from the runner systems and feeders. In addition, chips are generated in the machined parts. The surface area with regard to weight of chips is so high that it makes these scraps difficult to melt. Although there are several techniques evolved to remedy this problem, yet the problem lies in the quality of the recycled raw material. Since recycling of these scrap is quite important due to the advantages like energy saving and cost reduction in the final product, in this work, the recycling efficiency and casting quality were investigated. Three types of charges were prepared for casting: %100 primary ingot, %100 scrap aluminium and fifty-fifty scrap aluminium and primary ingot mixture were used. Melt quality was determined by calculating bifilm index by using reduced pressure test. Tensile test samples were produced by casting both from sand and die moulds. Relationship between bifilm index and tensile strength were determined as an indication of correlation of melt quality. It was found that untreated chips decrease the casting quality significantly. Therefore, prior to charging the chips into the furnace for melting, a series of cleaning processes has to be used in order to achieve good quality products.


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