Integrating artificial neural network and imperialist competitive algorithm (ICA), to predict the energy consumption for land leveling

被引:5
作者
Alzoubi I. [1 ]
Delavar M. [1 ]
Mirzaei F. [2 ]
Nadjar Arrabi B. [3 ]
机构
[1] Department of Surveying and Geometric Engineering, Engineering Faculty, University of Tehran, Tehran
[2] College of Agriculture and Natural Resources, University of Tehran, Tehran
[3] School of Electrical and Computer Engineering, College of Engineering, University of Tehran, Tehran
来源
Delavar, Mahmoud (hiazzabi@yahoo.com) | 1600年 / Emerald Group Holdings Ltd.卷 / 11期
关键词
ANFIS; ANN; Energy; Energy sector; Environmental research; Fossil fuel; Fuzzy adaptive PSO; Land levelling; Neural networks; Optimization; Particle swarm optimization (PSO); Sensitivity analysis;
D O I
10.1108/IJESM-01-2017-0003
中图分类号
学科分类号
摘要
Purpose: This work aims to determine the best linear model using an artificial neural network (ANN) with the imperialist competitive algorithm (ICA-ANN) and ANN to predict the energy consumption for land leveling. Design/methodology/approach: Using ANN, integrating artificial neural network and imperialist competitive algorithm (ICA-ANN) and sensitivity analysis (SA) can lead to a noticeable improvement in the environment. In this research, effects of various soil properties such as embankment volume, soil compressibility factor, specific gravity, moisture content, slope, sand per cent and soil swelling index on energy consumption were investigated. Findings: According to the results, 10-8-3-1, 10-8-2-5-1, 10-5-8-10-1 and 10-6-4-1 multilayer perceptron network structures were chosen as the best arrangements and were trained using the Levenberg–Marquardt method as the network training function. Sensitivity analysis revealed that only three variables, namely, density, soil compressibility factor and cut-fill volume (V), had the highest sensitivity on the output parameters, including labor energy, fuel energy, total machinery cost and total machinery energy. Based on the results, ICA-ANN had a better performance in the prediction of output parameters in comparison with conventional methods such as ANN or particle swarm optimization (PSO)-ANN. Statistical factors of root mean square error (RMSE) and correlation coefficient (R2) illustrate the superiority of ICA-ANN over other methods by values of about 0.02 and 0.99, respectively. Originality/value: A limited number of research studies related to energy consumption in land leveling have been done on energy as a function of volume of excavation and embankment. However, in this research, energy and cost of land leveling are shown to be functions of all the properties of the land, including the slope, coefficient of swelling, density of the soil, soil moisture and special weight dirt. Therefore, the authors believe that this paper contains new and significant information adequate for justifying publication in an international journal. © 2017, © Emerald Publishing Limited.
引用
收藏
页码:522 / 540
页数:18
相关论文
共 34 条
[1]  
Abdechiri M., Faez K., Bahrami H., Adaptive Imperialist Competitive Algorithm (AICA), Cognitive Informatics (ICCI), pp. 940-945, (2010)
[2]  
Abdi B., Mozafari H., Ayob A., Kohandel R., Imperialist competitive algorithm and its application in optimization of laminated composite structures, European Journal of Scientific Research, 55, 2, pp. 174-187, (2011)
[3]  
Ahmadi M.A., Golshadi M., Neural network based swarm concept for prediction asphaltene precipitation due to natural depletion, Journal of Petroleum Science and Engineering, 98, pp. 40-49, (2012)
[4]  
Ahmadi M.A., Shadizadeh S.R., New approach for prediction of asphaltene precipitation due to natural depletion by using evolutionary algorithm concept, Fuel, 102, 2, pp. 716-723, (2012)
[5]  
Ahmadi M.-A., Bahadori A., Shadizadeh S.R., A rigorous model to predict the amount of dissolved Calcium Carbonate Concentration throughout oil field brines: side effect of pressure and temperature, Fuel, 139, pp. 154-159, (2015)
[6]  
Ahmadi M.A., Soleimani R., Bahadori A., A computational intelligence scheme for prediction equilibrium water dew point of natural gas in TEG dehydration systems, Fuel, 137, 2, pp. 145-154, (2014)
[7]  
Ahmadi M.A., Ahmadi M.R., Shadizadeh S.R., Evolving artificial neural network and imperialist competitive algorithm for prediction permeability of the reservoir, Applied Soft Computing, 23, 13-4, pp. 1085-1098, (2013)
[8]  
Azadeh A., Ghaderi S.F., Sohrabkhani S., Annual electricity consumption forecasting by neural network in high energy consuming industrial sectors, Energy Conversion and Management, 49, 8, pp. 2272-2278, (2008)
[9]  
Brye K.R., Slaton N.A., Norman R.J., Soil physical and biological properties as affected by land leveling in a clayey Aquent, Soil Science Society of America Journal, 70, 2, pp. 631-642, (2006)
[10]  
Cassel D., Wood M., Bunge R.P., Classer L., Mitogenicity of brain axolemma membranes and soluble factors for dorsal root ganglion Schwann Cells, Journal of Cellular Biochemistry, 18, 4, pp. 433-445, (1982)