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Transient feature extraction based on phase space fusion by partial-least-square regression analysis of sensor array signals

机译:基于相空间融合的传感器阵列信号偏最小二乘回归分析瞬态特征提取

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Pattern classification based on transient signal analysis provides an effective method for identification of dynamical systems. The partial-least-square regression (PLSR) is most commonly used to generate parametric representation of phase space defined by measured signals and their time derivatives. The PLS component scores are interpreted as object features for pattern identification. In this paper, we consider sensor array transients, and propose PLSR based fusion of phase spaces of individual sensors into a single virtual phase space. Motivation for this approach comes from realizing that (i) multiplicity of array sensors encodes information about object diversity, and (ii) PLSR models object diversities in terms of small number of latent variables. The approach is validated through a case study of vapor identification by electronic nose based on surface-acoustic-wave (SAW) chemical sensor array. A comparison of results with and without fusion shows substantial improvement in vapor class separability after phase space fusion.
机译:基于瞬态信号分析的模式分类为动态系统的识别提供了一种有效的方法。偏最小二乘回归(PLSR)最常用于生成由测量信号及其时间导数定义的相空间的参数表示。 PLS组件分数被解释为用于模式识别的对象特征。在本文中,我们考虑了传感器阵列的瞬变,并提出了基于PLSR的将单个传感器的相空间融合为单个虚拟相空间的方法。这种方法的动机来自于认识到(i)多个阵列传感器对有关对象多样性的信息进行编码,并且(ii)PLSR根据少量潜在变量对对象多样性进行建模。通过基于表面声波(SAW)化学传感器阵列的电子鼻识别蒸汽的案例研究验证了该方法。具有和不具有熔融的结果的比较表明,相空间熔融之后蒸气类别的可分离性得到了显着改善。

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