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An intelligent sustainability evaluation system of micro milling

机译:微铣削智能可持续性评价体系

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Micro milling is widely used to manufacture complex miniature structure with high quality, and the related sustainability evaluation is a complicated multi-factor decision-making problem. This paper proposes an intelligent system for evaluating sustainability performance of micro milling process based on the principal component analysis (PCA) algorithm and the back propagation (BP) neural network. As a critical influence factor of sustainability evaluation, the non-linear micro cutting tool life can be predicted by integrating the particle filter (PF) algorithm and the long short-term memory (LSTM) network based on the stochastic tool wear. Then, the systematical sustainability assessment metrics of micro milling process are analyzed in the environmental, economic and social perspectives. Considering the nonlinearity and complexity of sustainability evaluation, the intelligent integrated PCA-BP evaluation method is used to improve the calculation efficiency and simply the evaluation process, in which the dimension of multiple sustainability evaluation factors is reduced by the PCA algorithm. The micro milling experiments with workpiece material A16061 were conducted to validate the feasibility of the proposed intelligent evaluation methodology. The intelligent sustainability evaluation results agree with the traditional weighted sustainability performance index analysis on the basis of the manner "higher is better". For the proposed intelligent integrated PCA-BP evaluation method, the training steps reduced from 65 times to 38 times and the prediction accuracy increased from 82.57% to 90.59% compared to the traditional BP network. The comparison results showed that the proposed intelligent integrated PCA-BP evaluation method can obtain the sustainability evaluation value automatically with high efficiency and practicability, and it also provides the decision-making base for the micro milling process optimization.
机译:微铣削广泛用于制造具有高质量的复杂的微型结构,相关的可持续性评估是一个复杂的多因素决策问题。本文提出了一种智能系统,用于评估微铣削过程的可持续性性能,基于主成分分析(PCA)算法和后传播(BP)神经网络。作为可持续性评估的关键影响因素,可以通过基于随机工具磨损集成粒子滤波器(PF)算法和长短期存储器(LSTM)网络来预测非线性微切切削刀具寿命。然后,在环境,经济和社会视角下分析了微铣过程的系统可持续性评估度量。考虑到可持续性评估的非线性和复杂性,智能集成PCA-BP评估方法用于提高计算效率,并且简单地评估过程,其中通过PCA算法减少了多种可持续性评估因子的维度。进行了工件材料A16061的微铣削实验,以验证所提出的智能评估方法的可行性。智能可持续性评估结果与传统的加权可持续性绩效指数分析同意,即“更高更好”的方式。对于提出的智能集成PCA-BP评估方法,培训步骤从65倍降至38次,与传统的BP网络相比,预测精度从82.57%增加到90.59%。比较结果表明,提出的智能集成PCA-BP评估方法可以通过高效率和实用性自动获得可持续性评估值,并且还提供了微铣削过程优化的决策基础。

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