Artificial neural network based prediction of engine-out responses from a biodiesel fuelled compression ignition engine
Numerical simulations, based on relatively complex physical models developed for CFD, can accurately predict engine-out responses, but they require huge memory space and/or computation time. In terms of resources and computer time, artificial intelligence methodologies are more cost-effective. In th...
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Veröffentlicht in: | Thermal science 2023, Vol.27 (4 Part B), p.3433-3443 |
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Sprache: | eng |
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Zusammenfassung: | Numerical simulations, based on relatively complex physical models developed
for CFD, can accurately predict engine-out responses, but they require huge
memory space and/or computation time. In terms of resources and computer
time, artificial intelligence methodologies are more cost-effective. In this
work, we used an ANN to predict the performance and exhaust emissions of a
single-cylinder Diesel engine running on fossil diesel, biodiesel, and
their blends under various speed and load regimes. To perform the modeling,
we employed multilayer perceptrons and a back-propagation gradient algorithm
with momentum to train the network weights. The modification of the network
weights was done using the second-order method of Levenberg-Marquardt, and
the technique of early termination was utilized to avoid overtraining the
model. The study involved using 70% of the complete experimental data to
train the neural network, allocating 15% for network validation, and
reserving the remaining 15% to evaluate the trained network effectiveness.
The ANN model that was created demonstrated remarkable accuracy in
predicting both engine performance and emissions. This is evident from the
strong correlation coefficients observed, which ranged from 0.987 to 0.999,
as well as the low mean squared errors ranging from 7.44?10-4 to 2.49?10-3. |
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ISSN: | 0354-9836 2334-7163 |
DOI: | 10.2298/TSCI2304433K |