稳健性(进化)
解算器
汽油
燃烧
计算机科学
计算流体力学
点火系统
柴油
SPARK(编程语言)
压缩比
汽车工程
内燃机
工程类
化学
航空航天工程
有机化学
程序设计语言
废物管理
基因
生物化学
作者
Jihad Badra,Fethi Khaled,Meng Tang,Yuanjiang Pei,Janardhan Kodavasal,Pinaki Pal,Opeoluwa Owoyele,Carsten Fuetterer,Mattia Brenner,Aamir Farooq
出处
期刊:Journal of Energy Resources Technology-transactions of The Asme
[ASME International]
日期:2020-08-27
卷期号:143 (2)
被引量:51
摘要
Abstract Gasoline compression ignition (GCI) engines are considered an attractive alternative to traditional spark-ignition and diesel engines. In this work, a Machine Learning-Grid Gradient Ascent (ML-GGA) approach was developed to optimize the performance of internal combustion engines. ML offers a pathway to transform complex physical processes that occur in a combustion engine into compact informational processes. The developed ML-GGA model was compared with a recently developed Machine Learning-Genetic Algorithm (ML-GA). Detailed investigations of optimization solver parameters and variable limit extension were performed in the present ML-GGA model to improve the accuracy and robustness of the optimization process. Detailed descriptions of the different procedures, optimization tools, and criteria that must be followed for a successful output are provided here. The developed ML-GGA approach was used to optimize the operating conditions (case 1) and the piston bowl design (case 2) of a heavy-duty diesel engine running on a gasoline fuel with a research octane number (RON) of 80. The ML-GGA approach yielded >2% improvements in the merit function, compared with the optimum obtained from a thorough computational fluid dynamics (CFD) guided system optimization. The predictions from the ML-GGA approach were validated with engine CFD simulations. This study demonstrates the potential of ML-GGA to significantly reduce the time needed for optimization problems, without loss in accuracy compared with traditional approaches.
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