采用人工智能方法的下铣削刀具监控系统

Ramzi Fayad
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引用次数: 0

摘要

在自动化制造系统中,刀具状态对加工质量有很大影响。例如,刀具过度磨损会导致变形,有时会损坏机器零件;因此,在生产线上产生额外的成本和复杂性。如果可以在损坏之前预测刀具的磨损,那么可以改变加工以补偿损坏,从而产生更好质量的产品。为了实现这一目标,需要一个应用高效技术的智能系统来预测加工过程中的刀具问题。本文提出了一种使用人工智能技术的方法。该方法将遗传算法的选择和优化能力与神经网络的预测特性相结合。这项工作背后的驱动力是在系统中找到一个最佳的权衡,在不影响精度的情况下,将最不需要的传感器数据与刀具磨损相关联。改进后的系统的目标是以相对低廉的成本获得快速的响应时间,同时在潜在的故障发生之前提供警告。该方法的主要优点是除了对噪声和稀疏数据具有鲁棒性外,还具有获得准确结果和处理大量高度非结构化数据的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cutting tool monitoring system for down milling process using AI methods
In automatic manufacturing systems, the quality of machining is greatly affected by the cutting tool condition. For example, excessive cutting tool wear could give rise to distortion, sometimes damaging machine parts; hence, incurring additional costs and complications in the production line. If the wear of the cutting tool can be predicted prior to damage, then machining can be altered to compensate for the damage resulting in better quality products. To accomplish this, an intelligent system applying efficient techniques is needed to predict cutting tool problems during machining. This paper proposes a methodology using artificial intelligence techniques. This methodology combines the selection and optimization abilities of genetic algorithm and the prediction characteristics of the neural network. The drive behind this work is to find an optimal trade-off in the system where the least needed sensory data is correlated to the cutting tool wear, without compromising on the accuracy. The objective of the improved system is to have a fast response time at a relatively cheap cost, while providing a warning in advance of potentially developing faults. The key advantage of this work is its ability to achieve accurate results and to cope with vast amount of highly unstructured data besides its robustness to noisy and sparse data.
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