Combining artificial neural network and multi-objective optimization toreduce a heavy-duty diesel engine emissions and fuel consumption
来源期刊:中南大学学报(英文版)2015年第11期
论文作者:Amir-Hasan Kakaee Pourya Rahnama Amin Paykani Behrooz Mashadi
文章页码:4235 - 4245
Key words:engine; fuel consumption; emissions; neural networks; multi objective optimization
Abstract: Nondominated sorting genetic algorithm II (NSGA-II) is well known for engine optimization problem. Artificial neural networks (ANNs) followed by multi-objective optimization including a NSGA-II and strength pareto evolutionary algorithm (SPEA2) were used to optimize the operating parameters of a compression ignition (CI) heavy-duty diesel engine. First, a multi-layer perception (MLP) network was used for the ANN modeling and the back propagation algorithm was utilized as training algorithm. Then, two different multi-objective evolutionary algorithms were implemented to determine the optimal engine parameters. The objective of the present study is to decide which algorithm is preferable in terms of performance in engine emission and fuel consumption optimization problem.
Amir-Hasan Kakaee, Pourya Rahnama, Amin Paykani, Behrooz Mashadi
(School of Automotive Engineering, Iran University of Science and Technology Tehran, Iran)
Abstract:Nondominated sorting genetic algorithm II (NSGA-II) is well known for engine optimization problem. Artificial neural networks (ANNs) followed by multi-objective optimization including a NSGA-II and strength pareto evolutionary algorithm (SPEA2) were used to optimize the operating parameters of a compression ignition (CI) heavy-duty diesel engine. First, a multi-layer perception (MLP) network was used for the ANN modeling and the back propagation algorithm was utilized as training algorithm. Then, two different multi-objective evolutionary algorithms were implemented to determine the optimal engine parameters. The objective of the present study is to decide which algorithm is preferable in terms of performance in engine emission and fuel consumption optimization problem.
Key words:engine; fuel consumption; emissions; neural networks; multi objective optimization