基于机器学习的柴油机颗粒物浓度预测

邹浪,何超,李加强,王艳艳,谭建伟

车用发动机 ›› 2020, Vol. 0 ›› Issue (2) : 84-92.

车用发动机 ›› 2020, Vol. 0 ›› Issue (2) : 84-92.
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基于机器学习的柴油机颗粒物浓度预测

  • 邹浪12,何超1,2,李加强1,2,王艳艳1,2,谭建伟3

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Prediction of Particulate Concentration for Diesel Engine Based on Machine Learning

  • ZOU Lang1,2,HE Chao1,2,LI Jiaqiang1,2,WANG Yanyan1,2,TAN Jianwei3
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摘要

以涡轮增压中冷重型柴油机在4个不同海拔地区的颗粒物排放为研究对象,利用主成分分析与神经网络结合的方法对实际道路的颗粒物粒径浓度进行模拟分析。结果表明:在不同海拔下,气缸压力的前10个主成分即可代表94%的发动机缸内燃烧特性;同时,柴油机燃烧产生的核膜态的微粒偏少,而积聚模态微粒尤其是粒径在57~165 nm的颗粒物较多;此外,与传统模型相比,该模型能够在7~990 nm范围内实现对4个海拔地区颗粒物浓度的有效预测,相对误差降低了6.44%,预测精度分别达到91.37%,92.97%,91.23%和91.99%。该方法的研究为高原地区污染物排放的监控与管制提供了支持。

Abstract

Taking the particulate matter emissions of turbocharged and intercooled heavy-duty diesel engine at four different altitudes as the research object, the particle size concentration under real driving condition was simulated and analyzed by the combination of principal component analysis and neural network. The results show that the first 10 principal components of cylinder pressure can represent 94% of incylinder combustion characteristics at different altitudes. The nuclear modal particles are little and the accumulated modal particles are many, especially for those with particle size of 57 165 nm. In addition, the model can effectively predict the particulate concentration within the range of 7 990 nm at four altitude areas with the relative error reduced by 6.44% and the prediction accuracy of 91.37%, 92.97%, 91.23% and 91.99% respectively compared with the traditional model. The research provides support for monitoring and controlling the pollutant emissions in plateau area.

关键词

重型柴油机 / 海拔 / 主成分分析 / 气缸压力 / 神经网络 / 颗粒物

Key words

heavyduty diesel engine / altitude / PCA / cylinder pressure / neural network / particulate

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导出引用
邹浪,何超,李加强,王艳艳,谭建伟. 基于机器学习的柴油机颗粒物浓度预测[J]. 车用发动机. 2020, 0(2): 84-92
ZOU Lang,HE Chao,LI Jiaqiang,WANG Yanyan,TAN Jianwei. Prediction of Particulate Concentration for Diesel Engine Based on Machine Learning[J]. Vehicle Engine. 2020, 0(2): 84-92

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