Optimization of warpage defects of base pencil box by using backpropagation neural network and genetic algorithm

Wibowo, Eko Ari and Sofyan, Edi and Syahriar, Ary and Nugroho, Albertus Aan Dian and Widiatmoko, Fuad and Arwidhiatma, Paulus Gagat Charisma (2021) Optimization of warpage defects of base pencil box by using backpropagation neural network and genetic algorithm. Mechatronics, 3 (1). pp. 17-22. ISSN 2686-3278

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Official URL: https://proceedings.sgu.ac.id/cmei/index.php/cmei/...

Abstract

The use of plastic products is increasing rapidly nowadays, starting from automotive components, electronics, to office equipment. Injection molding process is a method of making plastic products by injecting the material into the mold. One of the products is a pencil box, but this product has a warpage defect. Defect is indicated by a deflection in the wall, causing misassembles. This study aims to eliminate these defects with parameter optimization. The L27 (34) orthogonal array was used to make the data input design. Data that has been designed is simulated by using MoldFlow to get the value of deflection. Results of the experiment were analyzed by using Backpropagation Neural Network to determine the pattern of relationship between process parameters and response, while Genetic Algorithm method was used for parameter optimization. The composition of the recommended parameters were mold temperature of 15°C, melt temperature of 200°C, packing pressure of 120% and injection time of 6 seconds. As a result, the optimization of deflection reached 44%. The previous maximum deflection of 2.779 mm has decreased to 1.554 mm.

Item Type: Article
Additional Information: Included in "Proceedings of The Conference on Management and Engineering in Industry"
Uncontrolled Keywords: Plastic injection molding; Warpage defect; Backpropagation; Neural Network; Genetic Algorithm
Subjects: 600 Applied sciences & technology > 620 Engineering > 621 Applied Physics
Divisions: Universitas Al-Azhar Indonesia (UAI) > Fakultas Sains dan Teknologi (FST)
Universitas Al-Azhar Indonesia (UAI) > Fakultas Sains dan Teknologi (FST) > Teknik Elektro
Depositing User: Rifda Jilan
Date Deposited: 07 Sep 2022 05:47
Last Modified: 07 Sep 2022 05:47
URI: http://eprints.uai.ac.id/id/eprint/1956

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