Investigation of Usage of Artificial Neural Network Algorithms for
Prediction of In-Cylinder Pressure in Direct Injection Engines 2022-01-5089
An extensive set of data is acquired during engine testing, which is then
utilized to evaluate the engine performance characteristics. When engine
modifications are carried out in order to improve performance, the whole testing
process needs to be repeated. Artificial intelligence-based prediction models
can be utilized to reduce the repetitions in engine testing. The data gathered
during testing aids in the development of a prediction model that can estimate
expected test results with a minimum number of trials. The objective of this
study is to predict the in-cylinder pressure of a diesel engine based on the
crank angle and load using a model built using artificial neural networks (ANN)
in machine learning with MATLAB. ANN prediction model is developed from the data
gathered from testing a single-cylinder diesel engine. In ANN, the back
propagation algorithm is used to develop the prediction model, which is then
validated and compared to the real test data. The best ANN prediction
performance is obtained at a mean square error of 0.0012, and the correlation
factor is obtained at around 0.9999 for training, testing, and validation. On
validation, it is revealed that the ANN prediction model had a high level of
accuracy for the outputs and target values. This proven prediction model can
predict the in-cylinder values for any single-cylinder diesel engine. The
proposed predictive model is envisaged to reduce the time and cost involved
during engine development and process improvement.
Citation: Murugesan, S., Srihari, S., and Senthilkumar, D., "Investigation of Usage of Artificial Neural Network Algorithms for Prediction of In-Cylinder Pressure in Direct Injection Engines," SAE Technical Paper 2022-01-5089, 2022, https://doi.org/10.4271/2022-01-5089. Download Citation
Author(s):
Sivanesan Murugesan, S. Srihari, D. Senthilkumar
Affiliated:
Amrita School of Engineering, Amrita Vishwa Vidyapeetham, De
Pages: 8
Event:
Automotive Technical Papers
ISSN:
0148-7191
e-ISSN:
2688-3627
Related Topics:
Neural networks
Diesel / compression ignition engines
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