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A Novel Extreme Learning Machine Classification Model for e-Nose Application Based on the Multiple Kernel Approach

机译:基于多核方法的电子鼻应用极限学习机分类模型

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摘要

A novel classification model, named the quantum-behaved particle swarm optimization (QPSO)-based weighted multiple kernel extreme learning machine (QWMK-ELM), is proposed in this paper. Experimental validation is carried out with two different electronic nose (e-nose) datasets. Being different from the existing multiple kernel extreme learning machine (MK-ELM) algorithms, the combination coefficients of base kernels are regarded as external parameters of single-hidden layer feedforward neural networks (SLFNs). The combination coefficients of base kernels, the model parameters of each base kernel, and the regularization parameter are optimized by QPSO simultaneously before implementing the kernel extreme learning machine (KELM) with the composite kernel function. Four types of common single kernel functions (Gaussian kernel, polynomial kernel, sigmoid kernel, and wavelet kernel) are utilized to constitute different composite kernel functions. Moreover, the method is also compared with other existing classification methods: extreme learning machine (ELM), kernel extreme learning machine (KELM), k-nearest neighbors (KNN), support vector machine (SVM), multi-layer perceptron (MLP), radical basis function neural network (RBFNN), and probabilistic neural network (PNN). The results have demonstrated that the proposed QWMK-ELM outperforms the aforementioned methods, not only in precision, but also in efficiency for gas classification.
机译:提出了一种基于量子行为粒子群优化(QPSO)的加权多核极限学习机(QWMK-ELM)分类模型。实验验证是使用两个不同的电子鼻(e-nose)数据集进行的。与现有的多核极限学习机(MK-ELM)算法不同,基本核的组合系数被视为单隐藏层前馈神经网络(SLFN)的外部参数。在实现具有复合内核功能的内核极限学习机(KELM)之前,通过QPSO同时优化基本内核的组合系数,每个基本内核的模型参数和正则化参数。四种常见的单核函数(高斯核,多项式核,S形核和小波核)用于构成不同的复合核函数。此外,该方法还与其他现有分类方法进行了比较:极限学习机(ELM),内核极限学习机(KELM),k近邻(KNN),支持向量机(SVM),多层感知器(MLP) ,根基函数神经网络(RBFNN)和概率神经网络(PNN)。结果表明,提出的QWMK-ELM不仅在精度上而且在气体分类效率上都优于上述方法。

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