Pioggia G, Ferro M, Francesco F Di, Ahluwalia A, De Rossi D
Interdepartmental Research Center E Piaggio, University of Pisa, Italy.
Bioinspir Biomim. 2008 Mar;3:016004. doi: 10.1088/1748-3182/3/1/016004. Epub 2008 Mar 10.
The increasing complexity of the artificial implementations of biological systems, such as the so-called electronic noses (e-noses) and tongues (e-tongues), poses issues in sensory feature extraction and fusion, drift compensation and pattern recognition, especially when high reliability is required. In particular, in order to achieve effective results, the pattern recognition system must be carefully designed. In order to investigate a novel biomimetic approach for the pattern recognition module of such systems, the classification capabilities of an artificial model inspired by the mammalian cortex, a cortical-based artificial neural network (CANN), are compared with several artificial neural networks present in the e-nose and e-tongue literature, a multilayer perceptron (MLP), a Kohonen self-organizing map (KSOM) and a fuzzy Kohonen self-organizing map (FKSOM). Each network was tested with large datasets coming from a conducting polymer-sensor-based e-nose and a composite array-based e-tongue. The comparison of results showed that the CANN model is able to strongly enhance the performances of both systems.
生物系统人工实现的复杂性不断增加,例如所谓的电子鼻(e-nose)和电子舌(e-tongue),在感官特征提取与融合、漂移补偿和模式识别方面带来了问题,尤其是在需要高可靠性的情况下。特别是,为了取得有效的结果,模式识别系统必须经过精心设计。为了研究此类系统模式识别模块的一种新型仿生方法,将受哺乳动物皮层启发的人工模型——基于皮层的人工神经网络(CANN)的分类能力,与电子鼻和电子舌文献中出现的几种人工神经网络进行了比较,即多层感知器(MLP)、科霍宁自组织映射(KSOM)和模糊科霍宁自组织映射(FKSOM)。每个网络都使用来自基于导电聚合物传感器的电子鼻和基于复合阵列的电子舌的大型数据集进行了测试。结果比较表明,CANN模型能够显著提高这两种系统的性能。