AdaBoost_wear: Adaboost model-based Python software for predicting the coefficient of friction of babbitt alloy

Mihail Kolev
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Abstract

AdaBoost_wear is a Python software that implements the AdaBoost algorithm to predict the coefficient of friction (COF) of B83 babbitt alloy as a function of time. The software uses data from pin-on-disk tests with different loads to train and test the model. The software also provides performance metrics, such as R2 score, mean squared error, and mean absolute error, to evaluate the accuracy of the predictions. The software also generates plots of the actual and predicted COF values, as well as histograms and boxplots of the COF distribution. The software is open source and released under the MIT license.
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AdaBoost_wear:基于 Adaboost 模型的 Python 软件,用于预测巴氏合金的摩擦系数
AdaBoost_wear 是一款 Python 软件,它实现了 AdaBoost 算法,用于预测 B83 巴比特合金的摩擦系数(COF)随时间变化的函数。该软件使用不同载荷下的针盘测试数据来训练和测试模型。软件还提供 R2 分数、平均平方误差和平均绝对误差等性能指标,以评估预测的准确性。软件还能生成实际 COF 值和预测 COF 值的曲线图,以及 COF 分布的直方图和方框图。该软件是开源软件,采用 MIT 许可发布。
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