Men Hong, Fu Songlin, Yang Jialin, Cheng Meiqi, Shi Yan, Liu Jingjing
School of Automation Engineering, Northeast Electric Power University, Jilin 132012, China.
Sensors (Basel). 2018 Jan 18;18(1):285. doi: 10.3390/s18010285.
Paraffin odor intensity is an important quality indicator when a paraffin inspection is performed. Currently, paraffin odor level assessment is mainly dependent on an artificial sensory evaluation. In this paper, we developed a paraffin odor analysis system to classify and grade four kinds of paraffin samples. The original feature set was optimized using Principal Component Analysis (PCA) and Partial Least Squares (PLS). Support Vector Machine (SVM), Random Forest (RF), and Extreme Learning Machine (ELM) were applied to three different feature data sets for classification and level assessment of paraffin. For classification, the model based on SVM, with an accuracy rate of 100%, was superior to that based on RF, with an accuracy rate of 98.33-100%, and ELM, with an accuracy rate of 98.01-100%. For level assessment, the R² related to the training set was above 0.97 and the R² related to the test set was above 0.87. Through comprehensive comparison, the generalization of the model based on ELM was superior to those based on SVM and RF. The scoring errors for the three models were 0.0016-0.3494, lower than the error of 0.5-1.0 measured by industry standard experts, meaning these methods have a higher prediction accuracy for scoring paraffin level.
在进行石蜡检验时,石蜡气味强度是一项重要的质量指标。目前,石蜡气味等级评估主要依赖人工感官评价。本文开发了一种石蜡气味分析系统,用于对四种石蜡样品进行分类和分级。使用主成分分析(PCA)和偏最小二乘法(PLS)对原始特征集进行了优化。将支持向量机(SVM)、随机森林(RF)和极限学习机(ELM)应用于三个不同的特征数据集,以进行石蜡的分类和等级评估。对于分类,基于SVM的模型准确率为100%,优于基于RF的模型(准确率为98.33 - 100%)和基于ELM的模型(准确率为98.01 - 100%)。对于等级评估,与训练集相关的R²大于0.97,与测试集相关的R²大于0.87。通过综合比较,基于ELM的模型的泛化能力优于基于SVM和RF的模型。这三种模型的评分误差为0.0016 - 0.3494,低于行业标准专家测量的0.5 - 1.0的误差,这意味着这些方法对石蜡等级评分具有更高的预测准确率。