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Chapter 114 A Hybrid Prognostics Approach for Motorized Spindle-Tool Holder Remaining Useful Life Prediction

机译:第114章电动主轴刀具架的混合预测方法剩余使用寿命预测

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The quality and efficiency of high-speed machining are restricted by the matching performance of the motorized spindle-tool holder. In high speed cutting process, the mating surface is subjected to alternating torque, repeated clamping wear and centrifugal force, which results in serious degradation of mating performance. Therefore, for the purpose of the optimum maintenance time, periodic evaluation and prediction of remaining useful life (RUL) should be carried out. Firstly, the mapping model between the current of the motorized spindle and matching performance was extracted, and the degradation characteristics of spindle-tool holder were emphatically analyzed. After the original current is de-noised by an adaptive threshold function, the extent of degradation was identified by the amplitudes of wavelet packet entropy. A hybrid prognostics combining Relevance Vector Machine (RVM) i.e. AI-model with power regression i.e. statistical model was proposed to predict the RUL. Finally, the proposed scheme was verified based on a motorized spindle reliability test platform. The experimental results show that the current signal processing method based on wavelet packet and entropy can reflect the change of the degradation characteristics sensitively. Compared with other two similar models, the hybrid model proposed can accurately predict the RUL. This model is suitable for complex and high reliability equipment when Condition Monitoring (CM) data is scarcer.
机译:高速加工的质量和效率受电动主轴托架的匹配性能的限制。在高速切削过程中,配合表面经受交替的扭矩,重复夹紧磨损和离心力,这导致交配性能的严重降低。因此,出于最佳维护时间的目的,应进行剩余使用寿命(RUL)的定期评估和预测。首先,提取电动主轴的电流与匹配性能之间的映射模型,并重省地分析了主轴刀架的劣化特性。在通过自适应阈值函数下发出原始电流之后,通过小波包熵的幅度识别出劣化程度。将相关性矢量机(RVM)(RVM)的混合预测I.E.SI模型提出了统计模型来预测RUL。最后,基于电动主轴可靠性测试平台验证了所提出的方案。实验结果表明,基于小波包和熵的电流信号处理方法可以敏感地反映降解特性的变化。与其他两个类似的模型相比,提出的混合模型可以准确地预测rul。当条件监测(CM)数据稀缺时,该模型适用于复杂和高可靠性设备。

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