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Wear Scar Prediction Based on Wear Simulator Input Data-A Preliminary Artificial Neural Network Approach

机译:基于磨损模拟器输入数据的磨损痕迹预测-一种人工神经网络的初步方法

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A significant difference in wear scar formation between tested and retrieved knee implants of the same type has been reported. In this study, an Artificial Neural Network (ANN) model has been designed with the aim to gain knowledge of relationships between simulator input parameters and generated wear scars. One hundred twenty-four short-term tests were conducted with four implants of a single design using a four-station knee simulator in load control mode. Data points of the wear scar boundaries were transferred into bitmap images for computer analysis. Eighty percent of these discretized wear scars formed the output training set for a back-propagation neural network. The input training set was selected from the related simulator input motion and load parameters. The remainder of the testing matrix was used for network cross-validation and testing. Training resulted in 82.9% accuracy of the input-to-output relationship and 69.3% predictive capability. The predictive capabilities of the network may be further enhanced by utilizing a modification of the learning algorithm.
机译:据报导,相同类型的经过测试和收回的膝关节植入物在磨损疤痕形成方面存在显着差异。在这项研究中,已设计了一个人工神经网络(ANN)模型,目的是了解模拟器输入参数与产生的磨损痕迹之间的关系。使用四工位膝部模拟器在负荷控制模式下,对四个单一设计的植入物进行了124个短期测试。磨损痕迹边界的数据点被传输到位图图像中以进行计算机分析。这些离散的磨损痕迹中有80%形成了反向传播神经网络的输出训练集。从相关的模拟器输入运动和负载参数中选择了输入训练集。测试矩阵的其余部分用于网络交叉验证和测试。培训导致投入产出关系的准确性为82.9%,预测能力为69.3%。通过利用学习算法的修改,可以进一步增强网络的预测能力。

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