PROACTIVE QUALITY EVALUATION: A NOVEL STRATEGY-ASSISTED EARLY DETECTION IN MANUFACTURING
Journal: Proceedings on Engineering Sciences (Vol.6, No. 1)Publication Date: 2024-03-31
Authors : Swati Singh Raman Batra Keerti Rai S. Sujai;
Page : 343-352
Keywords : Manufacturing Industry; Quality; Modified Gravitational Search Algorithm-Based Decision Tree (EGSA-DT); Z-Score Normalization; Principal Component Analysis (PCA).;
Abstract
The proactive exploration and avoidance of errors or variations from quality standards during the manufacturing process is referred to as “early quality detection” in the manufacturing industry. Post-production inspection, which can be expensive and time-consuming, is used in traditional quality control systems. To overcome this, we proposed a Modified gravitational search algorithm-based decision tree (MGSA-DT) to predict the quality of manufacturing processes at an early stage. We gathered sensors data in the manufacturing industry. In order to prepare the data for principal component analysis (PCA), Z-score normalization is used. Then, the essential features are extracted from the preprocessed data. To assess the effectiveness of the suggested approach in terms of accuracy (98.4%), precision (97.6%) and recall (97.2%), respectively. Implementing early quality detection techniques in manufacturing has demonstrated encouraging outcomes in enhancing the overall quality of products and decreasing production expenses.
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Last modified: 2024-03-23 02:04:13