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Robust learning and identification of patterns in statistical process control charts using a hybrid RBF fuzzy ARTMAP neural network

机译:使用混合RBF模糊ARTMAP神经网络对统计过程控制图中的模式进行强大的学习和识别

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The quality control of the manufacturing process in FMS is a critical factor, requiring flexible and intelligent quality control systems that are capable of autonomous pattern identification. Due to its learning and generalization capabilities, neural networks have good perspectives for this task. One of the most important difficulties in pattern identification with neural networks is the sensibility to the presentation order of the training patterns. This paper presents a hybrid network, RBF fuzzy-ARTMAP, which is capable of online incremental learning, 98% less sensible to the presentation order of training patterns than the fuzzy-ARTMAP network. Also, this work compares the performance of the RBF fuzzy-ARTMAP network with the fuzzy-ARTMAP network in the identification of six different "patterns" in SPC qualify control charts.
机译:FMS中制造过程的质量控制是一个关键因素,因此需要能够自动模式识别的灵活而智能的质量控制系统。由于其学习和泛化能力,神经网络对此任务具有很好的认识。用神经网络进行模式识别的最重要困难之一是对训练模式表示顺序的敏感性。本文提出了一种混合网络RBF Fuzzy-ARTMAP,该网络能够进行在线增量学习,比模糊-ARTMAP网络对训练模式的显示顺序的敏感性降低了98%。同样,这项工作在识别SPC合格控制图中的六个不同“模式”时,将RBF Fuzzy-ARTMAP网络与Fuzzy-ARTMAP网络的性能进行了比较。

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