Injected fuel flow forecasting with Online Sequential Extreme Learning Machine
Date
2012-06-18Author
Zuraidi, Saad
Muhammad Khusairi, Osman
Mohd Yusoff, Mashor, Prof. Dr.
Metadata
Show full item recordAbstract
This study deals with Online Sequential Extreme Learning Machine (OS-ELM) modeling
of a gasoline engine to predict the injected fuel flow of the engine. The single hidden layer
feedforward networks (SLFN) trained by OS-ELM algorithm was selected as a black box model for
forecasting purposes. The algorithm is used to train a SLFN using a set of data consists of the
running gasoline engine features such as speed, revolution, fuel volume, current fuel consumption,
gear, distance to empty in volume, distance to empty in kilometer, current distance, and battery
voltage. A total of 700 data were used in forecasting process. The effectiveness of the method has
been demonstrated through analysis of the performance error of the fitted network using a mean
square error (MSE) expressed in decibel (dB), the best learning mode, optimum number of hidden
nodes and forecasting time. Promising result of maximum speed of forecasting has been achieve
with – 62.00 dB of mean square error and 1-by-1 learning mode for the OS-ELM using sinusoidal
activation function.
Collections
- Conference Papers [2600]
- Mohd Yusoff Mashor, Prof. Dr. [85]