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Sensor Drift Compensation Algorithm based on PDF Distance Minimization

机译:基于PDF距离最小化的传感器漂移补偿算法

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In this paper, a new unsupervised classification algorithm is introduced for the compensation of sensor drift effects of the odor sensing system using a conducting polymer sensor array. The proposed method continues updating adaptive Radial Basis Function Network (RBFN) weights in the testing phase based on minimizing Euclidian Distance between two Probability Density Functions (PDFs) of a set of training phase output data and another set of testing phase output data. The output in the testing phase using the fixed weights of the RBFN are significantly dispersed and shifted from each target value due mostly to sensor drift effect. In the experimental results, the output data by the proposed methods are observed to be concentrated closer again to their own target values significantly. This indicates that the proposed method can be effectively applied to improved odor sensing system equipped with the capability of sensor drift effect compensation.
机译:在本文中,引入了一种新的无监督分类算法,用于使用导电聚合物传感器阵列来补偿气味传感系统的传感器漂移效果。该方法基于最小化一组训练阶段输出数据的两个概率密度函数(PDF)与另一组测试阶段输出数据之间的欧几里德距离,继续更新测试阶段的自适应径向基函数网络(RBFN)权重。使用RBFN的固定权重的测试阶段的输出显着分散并从每个目标值移动到大多数到传感器漂移效果。在实验结果中,观察到通过所提出的方法的输出数据显着地集中在其自身目标值上。这表明可以有效地应用于改进具有传感器漂移效果补偿能力的改进的气味传感系统的方法。

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