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Ensemble ANN-Based Recognizers to Improve Classification of X-bar Control Chart Patterns

机译:合奏基于安氏的识别器,以改善X-Bar控制图表模式的分类

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Many of the previous research on the control chart pattern recognition were related to fully developed patterns. However, in practice, the process data will appear as a continuous stream of partially developed patterns. Such developing patterns are difficult to recognize since their structure are normally vague and dynamic. This study investigated the merit of a generalized single recognizer (all-class-one-network (ACON), a committee of specialized recognizers (one-class-one network, OCON) and the ensemble of ACON and OCON recognizers. These recognizers were embedded into a monitoring framework to enable on-line recognition. The performance of the schemes was evaluated based on percentage correct classification. The findings suggest that the ensemble of ACON and OCON recognizers with simple summation could significantly improve its discrimination capability. It is concluded that the strategy to configure and consolidate multiple recognizers is very important to achieve good classification performance.
机译:对控制图​​表模式识别的许多先前研究与完全开发的模式有关。然而,在实践中,过程数据将显示为部分开发的模式的连续流。这种显影模式难以识别,因为它们的结构通常模糊和动态。本研究调查了一般性的单一识别器(All-Claser-ober-Network(Acon),专业识别委员会(单级网络,OCON)和Acon和Ocon识别人员的委员会的优点。这些识别人员嵌入了进入监控框架以实现在线识别。根据正确分类的百分比评估方案的性能。调查结果表明,ACON和OCON识别人员具有简单求和的集合可以显着提高其歧视能力。它被判结束了配置和整合多个识别器的策略对于实现良好的分类性能非常重要。

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