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An improved scheme for online recognition of control chart patterns

机译:一种在线识别控制图模式的改进方案

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This paper proposes two alternative schemes for the online recognition of control chart patterns (CCPs), namely: 1.a scheme based on direct continuous recognition 2.a scheme based on 'recognition only when necessary'. The study focuses on recognition of six CCPs plotted on the Shewhart X-bar chart, namely, random, shift-up, shift down, trend-up, trend-down and cyclic. The artificial neural network (ANN) recogniser used was based on multilayer perceptrons (MLPs) architecture. The performance of the schemes was evaluated based on percentage correct recognition, average run lengths (ARL) and average recognition attempts (ARA). The findings suggest that the online recognition should be made only when necessary. Continuous recognition is not only wasteful, but also results in poorer results. The methodology proposed in this study is a step forward in realising a truly automated and intelligent online statistical process control chart pattern recognition system.
机译:本文提出了两种在线控制图模式(CCP)识别的替代方案,即:1.基于直接连续识别的方案2.基于“仅在必要时进行识别”的方案。该研究的重点是识别在Shewhart X-bar图表上绘制的六个CCP,即随机,上移,下移,趋势上移,趋势下移和循环。使用的人工神经网络(ANN)识别器基于多层感知器(MLP)体系结构。基于正确识别百分比,平均运行长度(ARL)和平均识别尝试次数(ARA)评估了方案的性能。调查结果表明,仅在必要时才进行在线识别。连续识别不仅浪费,而且导致结果更差。本研究中提出的方法是在实现真正的自动化和智能在线统计过程控制图模式识别系统方面迈出的一步。

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