基于三重长短期记忆神经网络的工具磨损监测方法

Bo Qin, Yongqing Wang, Kuo Liu, Shi Qiao, Mengmeng Niu, Yeming Jiang
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引用次数: 0

摘要

人工智能的进步极大地改善了对加工过程中刀具磨损的监测,从而提高了整体加工质量。然而,刀具磨损样本的稀缺对提高模型精度构成了挑战。因此,有必要探索即使样本量较小也能有效监测的技术。本文介绍了一种涉及三重长短期记忆(LSTM)神经网络的方法,该方法即使在训练数据有限的情况下也有可能实现更高的精度。在加工过程中,使用三轴加速度计采集主轴振动。原始数据由三元组网络处理,该网络使用 LSTM 作为基础模型,从而促进了类内的聚合和类间的分离。随后,一个软最大分类层被集成到模型中,从而能够精确确定刀具磨损状态。在将基础模型扩展为三元组网络之前,使用遗传算法对其进行了优化,以确保模型的效率和准确性。立式加工中心的实验结果证实,与标准 LSTM 网络相比,三重 LSTM 网络具有更高的精度,即使样本量很小。
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A tool wear monitoring approach based on triplet long short-term memory neural networks
Advancements in artificial intelligence have significantly improved the monitoring of tool wear in machining processes, thereby enhancing the overall quality of machining. However, the scarcity of tool wear samples poses a challenge to the enhancement of model precision. This necessitates the exploration of monitoring techniques that are effective even with small sample sizes. A method involving a triplet long short-term memory (LSTM) neural network is introduced, which offers the potential for superior accuracy even with limited training data. During the machining process, spindle vibrations are captured using a triaxial accelerometer. The raw data is processed by a triplet network, which uses an LSTM as the base model, thereby facilitating the aggregation within classes and separation between classes. A soft-max classification layer is subsequently integrated into the model, which enables the precise determination of tool wear states. The base model is optimized using a Genetic Algorithm to ensure model efficiency and accuracy before it is expanded into a triplet network. Experimental results from a vertical machining center confirm that the triplet LSTM network offers superior accuracy compared to a standard LSTM network, even when the sample size is small.
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来源期刊
CiteScore
5.10
自引率
30.80%
发文量
167
审稿时长
5.1 months
期刊介绍: Manufacturing industries throughout the world are changing very rapidly. New concepts and methods are being developed and exploited to enable efficient and effective manufacturing. Existing manufacturing processes are being improved to meet the requirements of lean and agile manufacturing. The aim of the Journal of Engineering Manufacture is to provide a focus for these developments in engineering manufacture by publishing original papers and review papers covering technological and scientific research, developments and management implementation in manufacturing. This journal is also peer reviewed. Contributions are welcomed in the broad areas of manufacturing processes, manufacturing technology and factory automation, digital manufacturing, design and manufacturing systems including management relevant to engineering manufacture. Of particular interest at the present time would be papers concerned with digital manufacturing, metrology enabled manufacturing, smart factory, additive manufacturing and composites as well as specialist manufacturing fields like nanotechnology, sustainable & clean manufacturing and bio-manufacturing. Articles may be Research Papers, Reviews, Technical Notes, or Short Communications.
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