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Investigation on wear prediction model of dental restoration material based on ensemble learning

机译:基于集成学习的牙齿修复材料磨损预测模型研究

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The wear test was performed with TC4 alloy, by changing the normal bite force, sliding frequency and cycles, in artificial saliva. Taking the two results for testing samples and the others for training samples, the radial basis function (RBF) and multilayer perceptron (MLP) neural network model and least mean square (LMS) and K* model were built for predicting wear loss respectively. Then an ensemble learning model was built which integrated all the single models based on the weight determined by mean absolute error. Compared with the testing results, it was obtained that the error for ensemble learning model was between 3 and 4%. Also, its prediction error rate reduced over 50% for the tenth group data, which embodied good stability and high precision on predicting the wear loss for dental restorative material.
机译:使用TC4合金,通过改变人工唾液中的正常咬合力,滑动频率和周期来进行磨损测试。以两个结果作为测试样本,另一个作为训练样本,分别建立了径向基函数(RBF)和多层感知器(MLP)神经网络模型以及最小均方(LMS)和K *模型来预测磨损量。然后建立一个集成学习模型,该模型基于由平均绝对误差确定的权重将所有单个模型集成在一起。与测试结果相比,集成学习模型的误差在3%到4%之间。而且,其第十组数据的预测误差率降低了50%以上,在预测牙科修复材料的磨损损失方面表现出良好的稳定性和高精度。

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