Article ID Journal Published Year Pages File Type
491481 Procedia Technology 2012 8 Pages PDF
Abstract

In this work, a neural network model of internal combustion engine is presented. First, we collect data of a 1.6L gasoline engine which was used for deriving an engine neural model. The engine was coupled to a hydraulic dynamometer to provide load. 3 inputs (engine speed, injection angle and the amount of injected fuel) were excited into a specific value range and then emissions were measured. The data of these variables are collected by a real time system. A local linear radial basis function network (LOLIMOT) was used in addition to a training algorithm for online adaptation of neural network parameters, which has a reduced convergence time. The results show the effectiveness of the proposed approach in modeling the studied gasoline engine.

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