Optimization of Electronic Product Inspection and Defective Product Handling

Authors

  • Duo Hu

DOI:

https://doi.org/10.54097/rb2zr683

Keywords:

Hypothesis testing model, Cost benefit analysis, Mixed integer linear programming, Decision tree model.

Abstract

This paper establishes a decision optimization model to help enterprises make better decisions on the quality and cost management of electronic products in the production and sales process, and improve product efficiency. At the same time, combined with the production practice, the theoretical mathematical model is applied to the actual production process, and the practicability of the model is tested. The mixed integer linear programming model is established, and the effective production decision-making scheme with multiple decision points in each link is given, which can effectively reduce the defective rate in the production process of enterprises. Due to the sequence of processes, it is necessary to analyze from spare parts to semi-finished products to finished products. The decision tree model is used to decompose each decision point, so that the final result can get the optimal decision scheme.

References

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Published

20-08-2025

Issue

Section

Articles

How to Cite

Hu, D. (2025). Optimization of Electronic Product Inspection and Defective Product Handling. Mathematical Modeling and Algorithm Application, 5(3), 19-22. https://doi.org/10.54097/rb2zr683