Online prediction of the piston maximum temperature in dual-fuel engine

Diesel–natural gas dual-fuel engine has become a hot research topic in recent years because of its excellent power and economy. However, the reliability of the dual-fuel engine does not meet the requirements of practical application. The piston maximum temperature of dual-fuel engine easily exceeds...

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Main Authors: Youyao Fu, Bing Xiao
Format: Article
Language:English
Published: SAGE Publishing 2017-02-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814017692692
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spelling doaj-679756039c334e268213219fa3bbf6da2020-11-25T03:06:33ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402017-02-01910.1177/1687814017692692Online prediction of the piston maximum temperature in dual-fuel engineYouyao FuBing XiaoDiesel–natural gas dual-fuel engine has become a hot research topic in recent years because of its excellent power and economy. However, the reliability of the dual-fuel engine does not meet the requirements of practical application. The piston maximum temperature of dual-fuel engine easily exceeds the security border. Toward this, this article presents a relational model to real-timely predict the piston maximum temperature of dual-fuel engine. Specifically, some easy-measured engine indirect signals, including NOx emission, excess air coefficient, and engine speed, are employed as the model inputs. The piston maximum temperatures, as the only output, are acquired offline by finite element analysis in ANSYS. Support vector regression is employed to solve the prediction model parameters. Cross-validation is introduced to determine some intermediate variables formed in the process of building model. Experiments revealed that the proposed model produces satisfying predictions with deviations less than 7°C. Thus, this study provides an effective method to monitor the piston maximum temperature state of dual-fuel engine in real time.https://doi.org/10.1177/1687814017692692
collection DOAJ
language English
format Article
sources DOAJ
author Youyao Fu
Bing Xiao
spellingShingle Youyao Fu
Bing Xiao
Online prediction of the piston maximum temperature in dual-fuel engine
Advances in Mechanical Engineering
author_facet Youyao Fu
Bing Xiao
author_sort Youyao Fu
title Online prediction of the piston maximum temperature in dual-fuel engine
title_short Online prediction of the piston maximum temperature in dual-fuel engine
title_full Online prediction of the piston maximum temperature in dual-fuel engine
title_fullStr Online prediction of the piston maximum temperature in dual-fuel engine
title_full_unstemmed Online prediction of the piston maximum temperature in dual-fuel engine
title_sort online prediction of the piston maximum temperature in dual-fuel engine
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2017-02-01
description Diesel–natural gas dual-fuel engine has become a hot research topic in recent years because of its excellent power and economy. However, the reliability of the dual-fuel engine does not meet the requirements of practical application. The piston maximum temperature of dual-fuel engine easily exceeds the security border. Toward this, this article presents a relational model to real-timely predict the piston maximum temperature of dual-fuel engine. Specifically, some easy-measured engine indirect signals, including NOx emission, excess air coefficient, and engine speed, are employed as the model inputs. The piston maximum temperatures, as the only output, are acquired offline by finite element analysis in ANSYS. Support vector regression is employed to solve the prediction model parameters. Cross-validation is introduced to determine some intermediate variables formed in the process of building model. Experiments revealed that the proposed model produces satisfying predictions with deviations less than 7°C. Thus, this study provides an effective method to monitor the piston maximum temperature state of dual-fuel engine in real time.
url https://doi.org/10.1177/1687814017692692
work_keys_str_mv AT youyaofu onlinepredictionofthepistonmaximumtemperatureindualfuelengine
AT bingxiao onlinepredictionofthepistonmaximumtemperatureindualfuelengine
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