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Artificial Neural Network for Assembly Line Balancing
Author(s) -
Pius Ucheagwu,
Johnmary Ugochukwu Okeke,
Christian I. Okonta,
Efosa Osamuyimwen
Publication year - 2019
Publication title -
american international journal of sciences and engineering research
Language(s) - English
Resource type - Journals
eISSN - 2641-0311
pISSN - 2641-0303
DOI - 10.46545/aijser.v2i2.121
Subject(s) - assembly line , artificial neural network , computer science , heuristic , genetic algorithm , artificial intelligence , line (geometry) , machine learning , engineering , mathematics , mechanical engineering , geometry
This study examines an assembly line balancing using artificial neural network. An organization that balances the unique workloads must respect the limits and restrictions that hinder the assembly. To optimize the very specific operations, balancing an assembly line may require different methods, including: genetic algorithm, heuristic approach, simulation techniques, the ant colony optimization (ACO), etc., but in this study, artificial neural networks was applied to solving problems of assembly line balancing.  This study also explores the characteristics of the assembly line and the classification of the assembly balancing problems, suggesting as an artificial neural network solve.

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