基于遗传算法的粒子群算法在数控机床故障诊断中的应用

Ma Xiao
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引用次数: 0

摘要

数控机床的可靠性试验对供应企业学习和进一步提高产品质量具有重要意义。但全面和长期的测试往往需要付出很多代价。灰色模型可以从少量的短期样本中预测出长期的故障信息。在建模过程中,灰色模型采用均值逼近来分散一阶微分方程。本文采用粒子群优化作为一种多维搜索方法来寻找最优比例点。实验表明,优化后的灰色模型的预测结果得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A PSO Method of GM to Fault Diagnosis in NC Machine Tool
The reliability tests of NC machine tools are with great importance for supply corporations to learn and further improve their products quality. But the overall and long-term tests are often with many costs. The grey model could forecast the long-term fault information from few short-term samples. During modeling, the grey model adopts a mean approximation to disperse the first order differential equation. The particle swarm optimization, as a multi-dimension search method is adopted here to find the optimal proportion point. The experiments show that the forecasting result of the optimized grey model is improved.
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