null.page.titleprefix Artificial Neural Network modeling of a hydrogen dual fueled diesel engine characteristics: An experiment approach
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Date
2017
Journal Title
Journal ISSN
Volume Title
Publisher
International journal of hydrogen energy
Abstract
The rapid growth of vehicular pollution; mostly running on the diesel engine, emissions
emerging are the concerns of the day. Owing to clean burn characteristics features,
Hydrogen (H2) as a fuel is the paradigm of the researcher. Extensive research presented in
the literature on H2 dual fueled diesel engine reveals, the significant role of H2 in reducing
emissions and enhancing the performance of a dual fueled diesel engine. With meager
qualitative experiment data, the feasibility to develop an efficient Artificial Neural
Network (ANN) model is investigated, the developed model can be utilized as a tool to
investigate the H2 dual fueled diesel engine further. In the process of developing an ANN
model, engine load and H2 flow rate are varied to register performance and emission
characteristics. The creditability of the experiment is ascertained with uncertainty
analysis of measurable and computed parameters. Leave-out-one method is adopted with
16 data sets; seven training algorithms are explored with eight transfer function combinations
to evolve a competent ANN model. The efficacy of the developed model is
adjudged with standard benchmark statistic indices. ANN model trained with Broyden,
Fletcher, Goldfarb, & Shanno (BFGS) quasi-Newton backpropagation (trainbfg) stand out
the best among other algorithms with regression coefficient ranging between 0.9869 and
0.9996.
Description
Keywords
Artificial Neural Network, Hydrogen dual fueled diesel engine