Towards an Explainable Multi-Target Regression, for Wear and Friction Prediction for Brake Pad Materials
Sellami, Amira
Rekik, Mouna
Njima, Chakib Ben
Elleuch, Riadh
2025-08-18T12:57:03Z
2025-08-18T12:57:03Z
2024
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/32342
The primary objective of this study is to create an effective multi-target regression
model able to predict friction coefficient and wear rate, which are critical parameters for the
tribological performance of brake systems. Two models, namely Random Forest (RF) and
eXtreme Gradient Boosting (XG), were evaluated using performance metrics such as mean
squared error, mean absolute error, and R-squared. In comparing to 1.2, 0.567, 0.59 for RF
algorithm, the XG algorithm proves to be the more accurate model with MSE, MAE and R-
squared respectively equal to 0.857, 0.4138, 0.756. XG (Extreme Gradient Boosting)
outperforms RF (Random Forest) in terms of predictive accuracy in the specified prediction
scenario, and the predicted results show good concordance with real values. However, a
notable challenge with this model is the lack of interpretability, often referred to as a "black-
box." In response to this issue, the study offers a comprehensive explanation, regarding as
to how the XG model learns. Shapely Additive explanation model demonstrates that sliding
speed is the most influential factor, positively affecting friction coefficient and wear rate of
brake pad materials. In summary, the study contributes to the development of a machine
learning model, that is accurate and explainable for the prediction of tribological
performance in the field of brake pad materials.
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Towards an Explainable Multi-Target Regression, for Wear and Friction Prediction for Brake Pad Materials
hu_HU
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Óbudai Egyetem
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Budapest
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Óbudai Egyetem
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