Waveband Selection Based Feature Extraction Using Genetic Algorithm

Yujun Li, Kun Liang, Xiaojun Tang, Keke Gai
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引用次数: 4

Abstract

In order to explain the geological structure accurately and quickly, we analyze the gas mixture gathered from the well by Infrared Spectroscopy Fourier Transform Spectrometer instead of gas chromatograph. In the process of the spectrum analysis, the reduction of the spectrum data dimention is very neccessary to perform. In this paper, we propose a feature extraction method is based on waveband selections using genetic algorithm, which is named FEWSGA. This approach can directly selecte eigenvalues from the limited waveband spectrum data instead of using mathematical transformation, such as the PCA (principal component analysis) and PLS (partial least squares) algorithm. Experiments results show that our method can reduce the spectrum data dimention from 1866 to 317, and the mean relative error (MRE) of the analysis model decrease from 34.68% to 26.59%. Moreover, the feature extraction from the whole waveband spectrum data using GA only reduce the data dimention from 1866 to 937. The MRE of the analysis model only reduces from 34.68% to 32.97%. Our approach has a better performance.
基于波段选择的遗传算法特征提取
为了准确、快速地解释地质构造,我们用红外光谱傅立叶变换光谱仪代替气相色谱仪对井中采集的混合气体进行分析。在频谱分析过程中,对频谱数据进行降维是非常必要的。本文提出了一种基于遗传算法的波段选择特征提取方法,并将其命名为FEWSGA。该方法可以直接从有限的波段频谱数据中选择特征值,而不是使用数学变换,如PCA(主成分分析)和PLS(偏最小二乘)算法。实验结果表明,该方法可将光谱数据维数从1866降至317,分析模型的平均相对误差(MRE)从34.68%降至26.59%。此外,利用遗传算法对全波段频谱数据进行特征提取时,数据维数仅从1866降至937。分析模型的MRE仅从34.68%下降到32.97%。我们的方法有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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