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首页> 外文期刊>Journal of the Chinese Institute of Engineers >Fuzzy assessment model to judge quality level of machining processes involving bilateral tolerance using crisp data
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Fuzzy assessment model to judge quality level of machining processes involving bilateral tolerance using crisp data

机译:模糊评估模型,以判断涉及脆数据的双边耐受加工过程的质量水平

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摘要

Ongoing pursuit of greater process quality has always granted manufacturers advantage in an increasingly competitive market place. This has prompted numerous researchers to develop quality assessment models for various machining processes. The Six Sigma quality management method, which determines process quality based on yield, is a useful standard of process quality which provides reference to both manufacturers for process improvements and consumers in product selection. This study has employed the loss-based Six Sigma quality index (SSQI) Q(pm) to analyze the quality level of a machining process with bilateral tolerance. The resulting evaluation with Q(pm) not only reflects loss and yield for the machining process; it also directly presents the attained quality level. In practice, Q(pm) must be estimated based on collected data to determine process quality. Unfortunately, uncertainty and imprecision are inevitable features of any data collection. This can lead to erroneous inferences of quality assessment using the crisp-based estimate (Q) over cap (pm). We, therefore, propose a fuzzy estimate of Q(pm) and develop the associated fuzzy statistical testing to increase the reliability of assessment and reduce miscalculation. The proposed fuzzy statistical test method is illustrated via a real-world example from a gear manufacturing plant.
机译:在竞争日益激烈的市场中,不断追求更高的工艺质量始终为制造商提供了优势。这促使许多研究人员为各种加工过程开发质量评估模型。六西格玛质量管理方法是一种有用的过程质量标准,它根据产量确定过程质量,为制造商的过程改进和消费者的产品选择提供参考。本研究采用基于损失的六西格玛质量指数(SSQI)Q(pm)来分析双边公差加工过程的质量水平。用Q(pm)进行的评估结果不仅反映了加工过程的损失和产量;它还直接反映了所达到的质量水平。在实践中,必须根据收集的数据估算Q(pm),以确定工艺质量。不幸的是,不确定性和不精确性是任何数据收集不可避免的特征。这可能导致使用基于crisp的估算(Q)超过cap(pm)对质量评估进行错误推断。因此,我们提出了Q(pm)的模糊估计,并开发了相关的模糊统计测试,以提高评估的可靠性,减少误算。通过一个齿轮制造厂的实例说明了所提出的模糊统计测试方法。

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