Exhaust emissions control and engine parameters optimization using artificial neural network virtual sensors for a hydrogen-powered vehicle

Exhaust emissions control and engine parameters optimization using artificial neural network virtual sensors for a hydrogen-powered vehicle

Title
Publication TypeJournal Article
Year of Publication2012
AuthorsYap, WKean, Ho, T, Karri, V
JournalInternational Journal of Hydrogen Energy
Volume37
Issue10
Pagination8704 - 8715
Date Published5/2012
ISSN03603199
DOI10.1016/j.ijhydene.2012.02.153
Short TitleInternational Journal of Hydrogen Energy

Publications

RIEL Headlines

  • Tue, 08/10/2013

    Representatives from across the Arafura and Timor seas have come together this week to share ideas about sustainable activities for the conservation and management of marine and coastal resources.

  • Thu, 12/09/2013

    A conservation biologist who has spent most of the past 35 years in tropical Australia will suggest that improvements in the listing processes and modifications to legislation could improve the targeting of threatened species investment.

Pages

Jump to NRBL themeJump to CMEM themeJump to FEM themeJump to SMWC themeJump to TRF themeJump to RIEL home

Innovative Research University

© 2011-2013 Charles Darwin University
Research Institute for the Environment and Livelihoods
Privacy Policy
CRICOS Provider No. 00300K | RTO Provider No. 0373

Phone (+61) 8 8946 6413
Email riel@cdu.edu.au