首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Comparison of extreme learning machine models for gasoline octane number forecasting by near-infrared spectra analysis
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Comparison of extreme learning machine models for gasoline octane number forecasting by near-infrared spectra analysis

机译:近红外光谱分析汽油辛烷值预测极端学习机模型的比较

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摘要

The octane number is often used in the evaluation of the gasoline quality due to its antiknock property. The traditional ASTM-CFR internal combustion engine method costs an enormous amount of expenditure and time to determine its level of each product upgrade. The extreme learning machine (ELM) and its improved models are a new type of single-hidden layer feedforward neural network (SLFN). This structure has advantages over the traditional neural network technology in regression tasks. Based on the response relationship between the near-infrared spectra and the octane number, 60 groups of collected gasoline data are divided into training and test sets. The ELM, online sequential extreme learning machine (OS-ELM), and selfadaptive evolutionary extreme learning machine (SaDE-ELM) models are applied to the prediction task of the octane number. The statistical parameters RMSE, CORR, and R~2 and the execution time are used as the performance comparison criteria for the three models. The simulation results show that the OS-ELM and the SaDE-ELM improve the prediction accuracy, the generalization ability, the stability of the ELM in different levels.
机译:辛烷值通常用于评估汽油质量由于其Antiknock属性。传统的ASTM-CFR内燃机方法造成了巨大的支出和时间,以确定其每种产品升级的水平。极端学习机(ELM)及其改进的模型是一种新型的单隐式馈电神经网络(SLFN)。这种结构具有在回归任务中传统的神经网络技术方面的优势。基于近红外光谱与辛烷值之间的响应关系,60组收集的汽油数据分为训练和测试集。榆树,在线连续极端学习机(OS-ELM),并selfadaptive进化极端学习机(萨德 - ELM)模型应用于辛烷值的预测任务。统计参数RMSE,COR和R〜2以及执行时间用作三种模型的性能比较标准。仿真结果表明,OS-ELM和SADE-ELM提高了预测精度,泛化能力,ELM在不同层面的稳定性。

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