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Enhancing Spindle Power Data Application with Neural Network for Real-Time Tool Wear/Breakage Prediction during Inconel Drilling

机译:用神经网络增强主轴电力数据应用,以期间钻孔期间的实时工具磨损/断开预测

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Nowadays, digital manufacturing systems with real-time process monitoring and control are in high demand in industries for productivity and quality improvement. During machining, such a system is anticipated to excerpt reliable data within a short time-lapse, monitor tool wear progress, anticipate its wear and breakage, alert the machinist in real time to avoid unexpected failure, and help obtaining quality products. This is vital, especially, when drilling Ni-/Ti-based superalloys as catastrophic failure and premature breakage of tools occur in random manner due to aggressive welding and chipping of the rake and flank faces. Spindle power data are easy to collect from modern machine tools and can be made available for such real-time data processing. This work aims to evaluate and analyze spindle power data for real-time tool wear/breakage monitoring during drilling of a Ni-based superalloy, Inconel 625. Experiments were performed by varying speed and feed. Power data were collected from the power meter (also called load meter) of the machine spindle to feed into the neural network (NN) for functional processing. As a counterpart, force data were also collected and processed to understand the reliability of the spindle power data. The results show that the trends of these two different types of data are similar for any feed and speed combinations. It is believed that such spindle power data integrated with the artificial intelligence (NN) system can be used for real-time tool wear/breakage monitoring and process control, thus can enhance digital manufacturing systems.
机译:如今,具有实时流程监控和控制的数字制造系统在生产力和质量改进的行业中都有很高的需求。在加工过程中,预计这种系统将在短时间间隔内摘录可靠的数据,监控工具磨损进度,预测其磨损和破损,即时警告机械师,以避免意外的故障,并帮助获得优质产品。这是至关重要的,特别是,当钻井Ni-/ Ti的超合金时,由于耙子和侧面的侵蚀性和侧面的侵蚀性焊接和剥离,以随机的方式发生了灾难性的失效和工具的过早破损。主轴电源数据易于收集现代机床,可用于此类实时数据处理。这项工作旨在评估和分析钻探NI基超合金的钻孔期间的实时工具磨损/破损监测的主轴功率数据,Inconel 625.通过不同的速度和饲料进行实验。从机杆的功率计(也称为负载表)收集电力数据,以进入神经网络(NN)以进行功能处理。作为对应物,还收集和加工以理解主轴功率数据的可靠性。结果表明,这两种不同类型数据的趋势对于任何馈送和速度组合都是类似的。据信,与人工智能(NN)系统集成的这种主轴电力数据可用于实时工具磨损/破坏监测和过程控制,从而可以增强数字制造系统。

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