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Ensemble modelling technique for a micro-drilling process based on a two-stage bootstrap

机译:基于两级举靴的微钻过程集合建模技术

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摘要

Quality improvement in micro-manufacturing processes relies on empirical models. However, if an estimated model varies from the true model because of random errors in experiments, the resulting operating conditions may be located far from the true optimal operating conditions. Using the Pareto chart, which highlights the most important among a set of factors, this article develops a novel ensemble modelling technique which considers the model selection via bootstrap methods. In addition, an integrative optimization strategy is proposed based on interval-data theory, in which the squared bias and the reliability of operating conditions are incorporated into a single framework of a strategy. The proposed method is illustrated with a micro-drilling process, which clearly shows how useful and effective the proposed method is. Through comparative studies, it is also shown that the proposed method has a good robustness property and it provides a reliable scheme for optimizing the machining parameters.
机译:微制造过程的质量改进依赖于实证模型。然而,如果估计模型因实验中的随机误差而从真实模型变化,则产生的操作条件可能位于远离真实的最佳操作条件。使用Pareto图表,该图表在一组因素中突出显示最重要的是,这篇文章开发了一种新颖的集合建模技术,它通过引导方法考虑了模型选择。此外,基于间隔数据理论提出了一种综合优化策略,其中将平方偏置和操作条件的可靠性结合到策略的单个框架中。所提出的方法用微钻井过程说明,这清楚地表明了所提出的方法是多么有用和有效。通过比较研究,还表明该方法具有良好的鲁棒性特性,并且提供了优化加工参数的可靠方案。

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