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Deep Learning Experiments with Skewed Data for Defect Prediction in Plastic Injection Molding

机译:倾斜数据的深度学习实验可预测塑料注射成型中的缺陷

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In this work, we investigate the possibility of predicting defects in plastic injection molding by learning predictive models from time-series process data collected from a molding machine. The model of our choice is an RNN (recursive neural network) model using LSTM (long short-term memory) units in its hidden layer. This model is well known as a deep learning model specialized for processing time-series data. Since defects are rare and thus the dataset is highly skewed, we try to achieve a high average recall rather than a high classification accuracy. We give some initial results of experiments and an outlook to the direction of our future works.
机译:在这项工作中,我们通过从成型机收集的时间序列过程数据中学习预测模型,来研究预测塑料注射成型中的缺陷的可能性。我们选择的模型是RNN(递归神经网络)模型,在其隐藏层中使用LSTM(长期短期记忆)单元。该模型众所周知是专门用于处理时间序列数据的深度学习模型。由于缺陷很少见,因此数据集高度偏斜,因此我们尝试实现较高的平均召回率,而不是较高的分类精度。我们给出了一些初步的实验结果,并对我们未来的工作方向进行了展望。

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