T. Stocker, F. Sukowski, Julius Mehringer, Henning Frechen, Felix Schäfer, Dennis Freier
{"title":"Reduction of rejects by combining data from the casting process and automatic X-ray inspection","authors":"T. Stocker, F. Sukowski, Julius Mehringer, Henning Frechen, Felix Schäfer, Dennis Freier","doi":"10.58286/28227","DOIUrl":null,"url":null,"abstract":"\nAutomatic inspection of castings with X-rays (radiographic and computed tomography)\n\nis widespread for parts that are relevant for safety or have high quality requirements.\n\nExamples in the automotive sector are aluminum wheels, chassis parts and new parts\n\nwithin the electric power train. Those parts are automatically inspected, which means\n\nthat both the image acquisition and the evaluation of the images is done fully\n\nautomatically. Today, in most industrial implementations, the generated data with a size\n\nup to several gigabytes per part is summarized to a simple good or bad decision,\n\naccording to specification. All other data is dismissed, although this information can be\n\nvaluable to optimize production processes and thus minimize rejects.\n\nThis contribution gives an overview about the results of the project Cast Control, which\n\nis a collaboration of Fraunhofer Development Center for X-ray Technology EZRT,\n\nFraunhofer Center for Applied Research on Supply Chain Services SCS and industry\n\npartner RONAL GROUP. RONAL GROUP is a major aluminum wheel manufacturer,\n\nmainly for the OEM market. Within the project we combined serial production data\n\nfrom the low pressure die casting process from a foundry of the RONAL GROUP with\n\nthe data generated in the automatic X-ray inspection. After collecting a large base of\n\nsample data, we were able train a neural network for the prediction of error metrics\n\nobtained by X-ray inspection. We apply a combination of layer-wise relevance\n\npropagation and dimensionality reduction to find correlations between data of the\n\ncasting machines (process and sensor) and the characteristics of anomalies detected\n\nduring X-ray inspection.\n\nWith this information, it is possible to adjust the casting process in an early stage – even\n\nbefore rejects are produced. This enables the foundry to reduce their rejects rate, which\n\nsaves costs and energy and results in a better competitivenessin a better competitiveness.\n","PeriodicalId":383798,"journal":{"name":"Research and Review Journal of Nondestructive Testing","volume":"33 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Research and Review Journal of Nondestructive Testing","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.58286/28227","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Automatic inspection of castings with X-rays (radiographic and computed tomography)
is widespread for parts that are relevant for safety or have high quality requirements.
Examples in the automotive sector are aluminum wheels, chassis parts and new parts
within the electric power train. Those parts are automatically inspected, which means
that both the image acquisition and the evaluation of the images is done fully
automatically. Today, in most industrial implementations, the generated data with a size
up to several gigabytes per part is summarized to a simple good or bad decision,
according to specification. All other data is dismissed, although this information can be
valuable to optimize production processes and thus minimize rejects.
This contribution gives an overview about the results of the project Cast Control, which
is a collaboration of Fraunhofer Development Center for X-ray Technology EZRT,
Fraunhofer Center for Applied Research on Supply Chain Services SCS and industry
partner RONAL GROUP. RONAL GROUP is a major aluminum wheel manufacturer,
mainly for the OEM market. Within the project we combined serial production data
from the low pressure die casting process from a foundry of the RONAL GROUP with
the data generated in the automatic X-ray inspection. After collecting a large base of
sample data, we were able train a neural network for the prediction of error metrics
obtained by X-ray inspection. We apply a combination of layer-wise relevance
propagation and dimensionality reduction to find correlations between data of the
casting machines (process and sensor) and the characteristics of anomalies detected
during X-ray inspection.
With this information, it is possible to adjust the casting process in an early stage – even
before rejects are produced. This enables the foundry to reduce their rejects rate, which
saves costs and energy and results in a better competitivenessin a better competitiveness.