Prediction of surface treatment effects on the tribological performance of tool steels using artificial neural networks

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Abstract

The present paper discussed the development of a reliable and robust artificial neural network (ANN) capable of predicting the tribological performance of three highly alloyed tool steel grades. Experimental results were obtained by performing plane-contact sliding tests under non-lubrication conditions on a pin-on-disk tribometer. The specimens were tested both in untreated state with different hardening levels, and after surface treatment of nitrocarburizing. We concluded that wear maps via ANN modeling were a user-friendly approach for the presentation of wear-related information, since they easily permitted the determination of areas under steady-state wear that were appropriate for use. Furthermore, the achieved optimum ANN model seemed to be a simple and helpful design/educational tool, which could assist both in educational seminars, as well as in the interpretation of the surface treatment effects on the tribological performance of tool steels.

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Cavaleri, L., Asteris, P. G., Psyllaki, P. P., Douvika, M. G., Skentou, A. D., & Vaxevanidis, N. M. (2019). Prediction of surface treatment effects on the tribological performance of tool steels using artificial neural networks. Applied Sciences (Switzerland), 9(14). https://doi.org/10.3390/app9142788

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