应用激光2024,Vol.44Issue(5) :154-160.DOI:10.14128/j.cnki.al.20244405.154

基于红外光谱和AdaBoost算法的印泥紫外老化状态定量分析

Quantitative Analysis of the UV Light Aging Condition of Inkpad Based on Infrared Spectroscopy and AdaBoost Algorithm

刘猛 申思
应用激光2024,Vol.44Issue(5) :154-160.DOI:10.14128/j.cnki.al.20244405.154

基于红外光谱和AdaBoost算法的印泥紫外老化状态定量分析

Quantitative Analysis of the UV Light Aging Condition of Inkpad Based on Infrared Spectroscopy and AdaBoost Algorithm

刘猛 1申思2
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作者信息

  • 1. 浙江警察学院侦查系,浙江杭州 310053
  • 2. 浙江警察学院刑事科学技术系,浙江杭州 310053
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摘要

针对紫外老化文件,设计一套基于红外光谱分析和机器学习的印泥紫外老化时间分析方法,构建不同老化程度的印泥-红外光谱数据库,使用多元散射校正(MSC)、标准正态变量变换(SNV)和Savitzky-Golay卷积平滑(SG)3种方法对光谱数据进行平滑处理以提高信噪比;利用AdaBoost算法建立印泥紫外老化时间回归模型,并通过网格搜索法对模型参数调优;将优化后的最佳模型与支撑向量机回归、随机森林回归和梯度增强回归等方法进行对比.实验结果显示,经SNV处理后的印泥红外光谱数据建模效果优于MSC和SG预处理的数据;选择决策树模型作为AdaBoost算法的基础模型,决策树深度d=4时,决策树数量n≥50即可获得最佳表现,随着决策树深度增加,最佳模型需要的决策树数量相应降低;AdaBoost模型的最佳均方误差、相对绝对误差、决定系数与可释方差分别为0、0、1、1,与对比算法相比,各项指标均存在显著提升.

Abstract

This paper presents a method for analyzing the UV light aging time of inkpads using infrared spectroscopy coupled with machine learning techniques.A spectral database reflecting various degrees of aging was established,and the spectral data were refined using multiplicative scatter correction(MSC),standard normal variate transform(SNV),and Savitzky-Golay con-volution smoothing(SG)to enhance the signal-to-noise ratio.An AdaBoost regression model for predicting the UV light aging time of inkpads was developed,with its parameters optimized through a grid search approach.This optimized model was bench-marked against support vector regression,random forest regression,and gradient boosting regression models.The study found that the SNV preprocessed infrared spectrum yielded the most accurate modeling results,outperforming those preprocessed with MSC and SG.The AdaBoost algorithm performed optimally with a decision tree depth of 4 and when the number of trees was 50 or more.As the decision tree depth increased,the optimized model required fewer trees.The AdaBoost model achieved perfect scores in mean square error,relative absolute error,coefficient of determination,and explainable variance,all of which were significantly better than the comparative algorithms.

关键词

AdaBoost回归/红外光谱/紫外老化文件/印泥老化状态

Key words

AdaBoost regression/infrared spectroscopy/UV light aging document/aging condition of inkpad

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基金项目

全国教育信息技术研究课题(186140083)

浙江省第一批课程思政教学研究项目(241)

出版年

2024
应用激光
上海市激光技术研究所

应用激光

CSTPCDCSCD北大核心
影响因子:0.461
ISSN:1000-372X
参考文献量9
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