Application of Big Data Technology Combined with Clustering Algorithm in Manufacturing Production Analysis System

Authors

DOI:

https://doi.org/10.31181/dmame712024897

Keywords:

Clustering Algorithm, Big Data, Apriori, Production Analysis, Genetic Algorithm

Abstract

Production data analysis is crucial for production planning in the manufacturing industry, and accurate and a comprehensive and accurate analysis can improve production planning. To analyze the production of manufacturing industry, the research proposes the big data technology research method of the set clustering algorithm. In the process of this research method, the K-means clustering algorithm is first used to build the production measurement data system, and the Apache Hadoop Big data framework is applied. Then it introduces the Apriori algorithm for data association mining, and finally uses the genetic algorithm for production scheduling in view of big data analysis. The experiment showcases that the research method achieved a support level of 0.002 with 729 association rules when testing the number of association rules. When conducting data throughput testing, the research method achieved a data throughput of 7789 threads/s when the number of threads reached 8 in the Sleep scenario. In the analysis error testing, the error rate of the research method in the retained data fluctuates around 3.1%. When testing the number of processing operations in the process, the maximum error in the analysis results of the processing operations in the research method is 2. The results indicate that the research method possesses exceptional computational performance, carrying out manufacturing production analysis effectively and efficiently. The manufacturing production analysis system designed by the research institute offers valuable reference solutions for the informationization and intelligent development of the manufacturing industry.

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Published

2024-01-01

How to Cite

Liu, Y., Zhang, Z., Jiang, S., & Ding, Y. (2024). Application of Big Data Technology Combined with Clustering Algorithm in Manufacturing Production Analysis System. Decision Making: Applications in Management and Engineering, 7(1), 237–253. https://doi.org/10.31181/dmame712024897