Estimation of friction and wear properties of additively manufactured recycled-ABS parts using artificial neural network approach: effects of layer thickness, infill rate, and building direction
Author:
Bolat Çağın1, Çebi Abdulkadir1, Çoban Sarp2, Ergene Berkay3
Affiliation:
1. Department of Mechanical Engineering, Engineering Faculty , Samsun University , 55420 , Samsun , Türkiye 2. Department of Software Engineering, Engineering Faculty , Samsun University , 55420 , Samsun , Türkiye 3. Department of Mechanical Engineering, Technology Faculty , Pamukkale University , 20160 , Denizli , Türkiye
Abstract
Abstract
This investigation aims to elucidate friction and wear features of additively manufactured recycled-ABS components by utilizing neural network algorithms. In that sense, it is the first initiative in the technical literature and brings fused deposition modeling (FDM) technology, recycled filament-based products, and artificial neural network strategies together to estimate the friction coefficient and volume loss outcomes. In the experimental stage, to provide the required data for five different neural algorithms, dry-sliding wear tests, and hardness measurements were conducted. As FDM printing variables, layer thickness (0.1, 0.2, and 0.3 mm), infill rate (40, 70, and 100 %), and building direction (vertical, and horizontal) were selected. The obtained results pointed out that vertically built samples usually had lower wear resistance than the horizontally built samples. This case can be clarified with the initially measured hardness levels of horizontally built samples and optical microscopic analyses. Besides, the Levenberg Marquard (LM) algorithm was the best option to foresee the wear outputs compared to other approaches. Considering all error levels in this paper, the offered results by neural networks are notably acceptable for the real industrial usage of material, mechanical, and manufacturing engineering areas.
Publisher
Walter de Gruyter GmbH
Reference48 articles.
1. Atakok, G., Kam, M., and Koc, H.B. (2022). Tensile, three-point bending and impact strength of 3D printed parts using PLA and recycled PLA filaments: a statistical investigation. J. Mater. Res. Technol. 18: 1542–1554, https://doi.org/10.1016/j.jmrt.2022.03.013. 2. Bahrami, M.H., Ehteshamfar, M.V., and Adibi, H. (2023). The effect, prediction, and optimization of Fe particles on wear behavior of Fe–ABS composites fabricated by fused deposition modeling. Arabian J. Sci. Eng. 49: 2001–2016, https://doi.org/10.1007/s13369-023-08077-0. 3. Ben Difallah, B., Kharrat, M., Dammak, M., and Monteil, G. (2012). Mechanical and tribological response of ABS polymer matrix filled with graphite powder. Mater. Des. 34: 782–787, https://doi.org/10.1016/j.matdes.2011.07.001. 4. Bolat, Ç., Karakılınç, U., Yalçın, B., Öz, Y., Yavaş, Ç., Ergene, B., Ercetin, A., and Akkoyun, F. (2023). Effect of drilling parameters and tool geometry on the thrust force and surface roughness of aerospace grade laminate composites. Micromachines 14: 1427, https://doi.org/10.3390/mi14071427. 5. Çanti, E., Aydin, M., Yildirim, F., Günay, M., and Kaya, B. (2017) In: Investigation of the FDM process performance at different printing parameters. International Symposium on 3D Printing Technologies 3D-PTS2017. 3D Print Expo Turkey, Karabuk, Available at: https://www.researchgate.net/publication/315897117.
|
|