Title of article :
Biodiesel production from tomato seed and its engine emission test and simulation using Artificial Neural Network
Author/Authors :
Karami, R School of Bio System Engineering - Shiraz University - Shiraz, Iran , Kamgar, S School of Bio System Engineering - Shiraz University - Shiraz, Iran , Karparvarfard, S.H School of Bio System Engineering - Shiraz University - Shiraz, Iran , Rasul, M.G School of Engineering and Technology - Central Queensland University - Rockhampton - Queensland 4702, Australia , Khan, M.M.K School of Engineering and Technology - Central Queensland University - Rockhampton - Queensland 4702, Australia
Abstract :
In this study, tomato seed oil was used to produce
Biodiesel fuel. To reduce the percentage of free
fatty acids, the oil was reacted at a temperature of
40, 50, and 60°C with a mixture of sulphuric acid
and the industrial methanol with different molar
ratios of oil. The best conversion efficiency was
achieved at 60°C and a molar ratio of 1:9. In the
transesterification step, biodiesel was produced
using a mixture of potassium hydroxide reactivity.
Then, functional characteristics and pollutant
gases of ordinary diesel fuel and mixtures of
biodiesel at different speeds and loads were
measured and compared. The tests were carried
out in a 9-kV direct injection (DI) diesel engine. The
results of analysis of variance by SPSS software
showed that there was a significant difference in
the level of R< 0.01 between the production of
pollutants such as NOx, CO, HC, and other fume
gases like CO2 and O2 at different speeds and
loads. Duncan’s multiple range test results also
showed that the lowest emissions were generated
from the B20 blend. An Artificial Neural Network
(ANN) model which was used to predict the
emission of the engine showed an excellent
conformity with R-values of 0.99 for both the
training and test data.
Keywords :
Simulation , Emission , Tomato , Biodiesel
Journal title :
Astroparticle Physics