Feng Chunhua, Li Meng, Guo Haohao, Qiu Binbin, Zhang Jingyang
School of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai, China.
Sci Rep. 2024 Aug 16;14(1):19004. doi: 10.1038/s41598-024-69979-z.
The energy efficiency identification of machining process plays an indispensable part in achieving energy-efficient manufacturing and improving energy utilization as well as productivity and surface quality. However, there is a great difficulty to track energy efficiency in real-time based on one kind of traditional power signal. Because energy consumption is affected by many factors such as machine tool current performance, tool wear conditions and cutting parameters selection. This paper puts forward an energy efficiency recognition method as well as surface roughness prediction model based on the cutting force signals. The CEEMDAN (Complete Ensemble Empirical Mode Decomposition with Adaptive Noise) algorithm is employed to decompose the cutting force signal into multiple IMF (intrinsic mode function) components; and characterization of energy efficiency of machining process is recognized through proportion of components based on PCA-Fast ICA algorithm. Then, a surface roughness prediction model is proposed using support vector regression (SVR) based on specific cutting energy consumption (SCEC). The orthogonal test is designed considering spindle speed, feed rate, depth of cutting and width of cutting in 3 levels to obtain the influence degree of cutting parameters on cutting force, specific energy consumption, and the surface roughness. The energy efficiency of 27 group experiments is classified into high, medium and low levels according to energy efficiency value. Finally, using the data of orthogonal test, energy efficiency state was identified. The result show that time-frequency of cutting force signals for high, medium and low energy efficiency could be extracted, and the average absolute error of surface roughness predict is 0.058. That illustrated that the proposed method could meet the industry requirement for energy efficiency monitoring and surface roughness prediction to achieve sustainable manufacturing.
加工过程的能量效率识别在实现节能制造、提高能源利用率以及生产率和表面质量方面发挥着不可或缺的作用。然而,基于一种传统功率信号实时跟踪能量效率存在很大困难。因为能量消耗受许多因素影响,如机床当前性能、刀具磨损状况和切削参数选择等。本文提出了一种基于切削力信号的能量效率识别方法以及表面粗糙度预测模型。采用CEEMDAN(带自适应噪声的完全集成经验模态分解)算法将切削力信号分解为多个IMF(本征模态函数)分量;并基于PCA - Fast ICA算法通过分量比例识别加工过程能量效率特征。然后,基于比能消耗(SCEC)提出了一种使用支持向量回归(SVR)的表面粗糙度预测模型。考虑主轴转速、进给速度、切削深度和切削宽度3个水平设计正交试验,以获得切削参数对切削力、比能消耗和表面粗糙度的影响程度。根据能量效率值将27组实验的能量效率分为高、中、低三个等级。最后,利用正交试验数据识别能量效率状态。结果表明,能够提取高、中、低能量效率下切削力信号的时频特征,表面粗糙度预测的平均绝对误差为0.058。这表明所提出的方法能够满足工业对能量效率监测和表面粗糙度预测的要求,以实现可持续制造。