4.7 Article

A supervised machine learning approach for the optimisation of the assembly line feeding mode selection

Journal

INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
Volume 59, Issue 16, Pages 4881-4902

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/00207543.2020.1851793

Keywords

Line Feeding Problem; Part Feeding; Machine Learning; optimisation; classification tree

Funding

  1. Fondazione Ing

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This study utilizes the CART algorithm to develop a decision tree for solving the Line Feeding Problem, achieving an average classification accuracy of 78.49%. After implementation, potentially infeasible solutions may arise, but a repair approach is developed to address this issue with an average cost deviation of 0.38% from the optimal solution.
The Line Feeding Problem (LFP) involves the delivery of components to the production area. Previous models minimise the delivery costs and optimally assign each component to a line feeding mode between line stocking, kitting, and sequencing but cannot provide easily comprehensible guidelines. We use the Classification And Regression Tree (CART) algorithm to develop, in a supervised way, a decision tree based on problems that are solved with a Mixed Integer Programming (MIP) model for training purposes. Based on selected attributes of the components and the manufacturing environment, the decision tree suggests a line feeding mode for every component. For a synthetically determined training and evaluation data set, we find that the classification tree can predict the line feeding mode with an average classification accuracy of 78.49%. After the decision tree is implemented and a line feeding mode is selected for each component, an infeasible solution might occur. We develop a repair approach that solves this problem with an average cost deviation from the optimal solution of 0.38%.

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