IntelliSPC: a hybrid intelligent tool for on-line economical statistical process control

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摘要

Statistical process control (SPC) has become one of the most commonly used tools, for maintaining an acceptable and stable level of quality characteristics in today's manufacturing. With the movement towards a computer integrated manufacturing (CIM) environment, computer based algorithms need to be developed to implement the various SPC tasks automatically.This paper presents a hybrid intelligent tool (IntelliSPC) in which a neural network based control chart pattern recognition system, an expert system based control chart alarm interpretation system and a quality cost simulation system were integrated for on-line SPC. IntelliSPC was designed to provide the quality practitioners with the status of the process (in-control or out-of-control), the plausible causes for the out-of-control situation and cost-effective actions against the out-of-control situation. This tool was intended to be implemented in a scenario where sample data are being collected on-line by automated inspection devices and monitored by control charts.An implementation example is provided to demonstrate how the proposed hybrid system could be usefully applied in a real-world automated production line. This work confirms the potential synergies of hybrid artificial intelligence (AI) techniques in a complex problem solving procedure, such as an automated SPC scheme.

论文关键词:Statistical process control,Neural network,Pattern recognition,Expert system,Quality cost stimulation,Control charts

论文评审过程:Available online 18 October 1999.

论文官网地址:https://doi.org/10.1016/S0957-4174(99)00034-2