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The analysis of sensor array data with various pattern recognition techniques

机译:使用各种模式识别技术分析传感器阵列数据

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A sensor array composed of selective and partially selective electrodes is applied to milk recognition. The task of the system is to distinguish among five brands of milk. For this purpose, five pattern recognition (PARC) procedures are employed: three linear (K-nearest neighbours, partial least squares, soft independent modelling of class analogy) and two nonlinear (back propagation neural networks and learning vector quantization). Classification accuracy is compared and some analogies with general rules referring to electronic nose were found. LVQ networks are proved to exhibit the best performance. Their further advantages, such as fast training and robustness, make them the suggested pattern classifiers for sensor array data.
机译:由选择性和部分选择性电极组成的传感器阵列应用于牛奶识别。该系统的任务是区分五个品牌的牛奶。为此,采用了五个模式识别(PARC)程序:三个线性(K近邻,偏最小二乘法,类比法的软独立建模)和两个非线性(反向传播神经网络和学习矢量量化)。比较了分类的准确性,发现了一些与通用规则有关的电子鼻的类比。事实证明,LVQ网络具有最佳性能。它们的进一步优势(例如快速训练和鲁棒性)使其成为传感器阵列数据的建议模式分类器。

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