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可持续制造磨削过程的能量预测模型与分布式分析

Energy Prediction Models and Distributed Analysis of the Grinding Process of Sustainable Manufacturing.

作者信息

Tian Yebing, Wang Jinling, Hu Xintao, Song Xiaomei, Han Jinguo, Wang Jinhui

机构信息

School of Mechanical Engineering, Shandong University of Technology, Zibo 255049, China.

Department of Planning and Finance, Shandong University of Technology, Zibo 255049, China.

出版信息

Micromachines (Basel). 2023 Aug 14;14(8):1603. doi: 10.3390/mi14081603.

Abstract

Grinding is a critical surface-finishing process in the manufacturing industry. One of the challenging problems is that the specific grinding energy is greater than in ordinary procedures, while energy efficiency is lower. However, an integrated energy model and analysis of energy distribution during grinding is still lacking. To bridge this gap, the grinding time history is first built to describe the cyclic movement during air-cuttings, feedings, and cuttings. Steady and transient power features during high-speed rotations along the spindle and repeated intermittent feeding movements along the x-, y-, and z-axes are also analysed. Energy prediction models, which include specific movement stages such as cutting-in, stable cutting, and cutting-out along the spindle, as well as infeed and turning along the three infeed axes, are then established. To investigate model parameters, 10 experimental groups were analysed using the Gauss-Newton gradient method. Four testing trials demonstrate that the accuracy of the suggested model is acceptable, with errors of 5%. Energy efficiency and energy distributions for various components and motion stages are also analysed. Low-power chip design, lightweight worktable utilization, and minimal lubricant quantities are advised. Furthermore, it is an excellent choice for optimizing grinding parameters in current equipment.

摘要

磨削是制造业中的关键表面精加工工艺。其中一个具有挑战性的问题是,特定磨削能量比普通加工过程中的更大,而能源效率更低。然而,目前仍缺乏磨削过程中的综合能量模型及能量分布分析。为填补这一空白,首先构建磨削时间历程来描述空切、进给和切削过程中的循环运动。还分析了沿主轴高速旋转以及沿x、y、z轴重复间歇进给运动过程中的稳态和瞬态功率特性。随后建立了能量预测模型,该模型包括沿主轴切入、稳定切削和切出等特定运动阶段,以及沿三个进给轴的进给和转动。为研究模型参数,使用高斯-牛顿梯度法对10个实验组进行了分析。四项测试试验表明,所提出模型的精度是可接受的,误差为5%。还分析了各个部件和运动阶段的能量效率及能量分布。建议采用低功率切屑设计、轻量工作台使用以及最少的润滑剂量。此外,这是优化当前设备磨削参数的绝佳选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/740e/10456322/8ee4954b9a93/micromachines-14-01603-g001.jpg

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