Title of article :
Modeling and Optimization of Energy Inputs and Greenhouse Gas Emissions for Eggplant Production Using Artificial Neural Network and MultiObjective Genetic Algorithm
Author/Authors :
Nabavi Pelesaraei ، Ashkan - University of Tabriz , Shaker Koohi ، Sajjad - University of Tabriz , Bagher Dehpour ، Mohammad - University of Guilan
Abstract :
This paper studies the modeling and optimization of energy use and greenhouse gas emissions of eggplant production using artificial neural network and multiobjective genetic algorithm in Guilan province of Iran. Results showed that the highest share of energy consumption belongs to diesel fuel (49.24%); followed by nitrogen (33.30%). The results indicated that a total energy input of 13910.67 MJ ha1 was consumed for eggplant production. In ANN, the LevenbergMarquardt Algorithm was examined to finding best topology for modeling and optimization of energy inputs an GHG emissions for eggplant production. The results of ANN indicated the best topology with 12992 structure had the highest R2, lowest RMSE and MAPE. Also, the multiobjective optimization was done by MOGA. In this research, 42 optimal was introduced by MOGA based minimum total GHG emissions and maximum yield of eggplant production, in the studied area. Also, the results revealed that the best generation with lowest energy use was consumed about 4597 MJ per hectare. The GHG emissions of best generation was calculated as about 127 kg CO2eq. ha1. The potential of GHG reduction by MOGA was computed as 388.48 kg CO2eq. ha1. Also, the highest reduction of GHG emissions belongs to diesel fuel with 65.05%
Keywords :
Eggplant , energy consumption , Greenhouse gas emissions , Modeling , Optimization
Journal title :
International Journal of Advanced Biological and Biomedical Research
Journal title :
International Journal of Advanced Biological and Biomedical Research