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Simple machine learning allied with data-driven methods for monitoring tool wear in machining processes

机译:简单的机器学习,采用数据驱动方法,用于监控加工过程中的工具磨损

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The aim of this work was to identify the occurrence of machine tool wear in carbide inserts applied in a machine turning center with two steel materials. Through the data collected with an open-source communication protocol during machining, eighty trials of twenty runs each were performed using central composite design experiments, resulting in a data set of eighty lines for each tested material. The data set consisted of forty lines with the tool wear condition and forty lines without. Machining parameters were set to be in the range of the usual industrial values. The cutting parameters in the machining process were cutting speed, feed rate, cutting depth, and cutting fluid applied in the abundance condition and without cutting fluid (dry machining). The collected data were the spindle motor load,X-axis motor load, andZ-axis motor load in terms of the percentage used. AISI P20 and AISI 1045 steels workpieces were tested with both new and worn inserts, and a flank tool wear of 0.3 mm was artificially induced by machining with the same material before the data collecting experiment. Two approaches were used in order to analyze the data and create the machine learning process (MLP), in a prior analysis. The collected data set was tested without any previous treatment, with an optimal linear associative memory (OLAM) neural network, and the results showed 65% correct answers in predicting tool wear, considering 3/4 of the data set for training and 1/4 for validating. For the second approach, statistical data mining methods (DMM) and data-driven methods (DDM), known as a self-organizing deep learning method, were employed in order to increase the success ratio of the model. Both DMM and DDM applied along with the MLP OLAM neural network showed an increase in hitting the right answers to 93.8%. This model can be useful in machine monitoring using Industry 4.0 concepts, where one of the key challenges in machining components is finding the appropriate moment for a tool change.
机译:这项工作的目的是识别碳化物插入件中的机床磨损的发生,其在具有两种钢材的机器车削中心中。通过在加工过程中采用开源通信协议收集的数据,使用中央复合设计实验进行二十次运行的八十次试验,导致每个测试材料的数据集的八十线。数据集由四十行包括刀具磨损条件和四十行没有。加工参数设置为通常的工业价值范围。加工过程中的切割参数是在丰度条件下施加的切割速度,进料速率,切削深度和切削液,而不在不切割液(干燥加工)。收集的数据是主轴电机负载,X轴电机负载,ANDZ轴电机负载在所使用的百分比方面。 AISI P20和AISI 1045钢工件用新的且磨损的插入物进行测试,并且在数据收集实验之前用相同的材​​料加工,通过在相同的材料中进行0.3mm的侧翼工具磨损。使用两种方法以分析数据并在先前的分析中创建机器学习过程(MLP)。在没有任何先前的治疗的情况下测试收集的数据集,具有最佳的线性关联存储器(OLAM)神经网络,并且结果显示了预测工具磨损的65%正确答案,考虑到3/4的培训和1/4用于验证。对于第二种方法,采用统计数据挖掘方法(DMM)和数据驱动方法(DDM),称为自组织深度学习方法,以增加模型的成功比率。 DMM和DDM均采用MLP奥拉姆神经网络施加,击中正确答案的增加至93.8%。该模型可用于使用业界4.0概念的机器监控,其中加工组件中的一个关键挑战是换刀的适当时刻。

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