Blanking processes belong to the most widely used manufacturing techniques due to their economic efficiency. Their economic viability depends to a large extent on the resulting product quality and the associated customer satisfaction as well as on possible downtimes. In particular, the occurrence of increased tool wear reduces the product quality and leads to downtimes, which is why considerable research has been carried out in recent years with regard to wear detection. While processes have widely been monitored based on force and acceleration signals, a new approach is pursued in this paper. Blanked workpieces manufactured by punches with 16 different wear states are photographed and then used as inputs for Deep Convolutional Neural Networks to classify wear states. The results show that wear states can be predicted with surprisingly high accuracy, opening up new possibilities and research opportunities for tool wear monitoring of blanking processes.
翻译:脱衣工艺因其经济效率而属于最广泛使用的制造技术,其经济可行性在很大程度上取决于所产生的产品质量和相关客户满意度以及可能的停工时间。特别是,工具磨损的增加降低了产品质量并导致停工时间,这也是近年来对磨损检测进行了大量研究的原因。虽然根据力和加速信号对工艺进行了广泛监测,但本文采用了新的方法。用16个不同磨损状态的拳头制造的脱衣工件被拍照,然后用作深革命神经网络对磨损状态进行分类的投入。结果显示,可以以惊人的高度精度预测磨损状态,为工具磨损过程监测开辟了新的可能性和研究机会。