Petroleum is the live wire of modern technology and its operations, with economic development being positively linked to petroleum consumption. Many meta-heuristic algorithms have been proposed in literature for the optimization of Neural Network (NN) to build a forecasting model. In this paper, as an alternative to previous methods, we propose a new flower pollination algorithm with remarkable balance between consistency and exploration for NN training to build a model for the forecasting of petroleum consumption by the Organization of the Petroleum Exporting Countries (OPEC). The proposed approach is compared with established meta-heuristic algorithms. The results show that the new proposed method out performs existing algorithms by advan...
Crude oil is one of the most traded non-food products or commodities in the world. In Indonesia, cru...
Awareness of the future oil demand is essential for OPEC member countries to determine priorities an...
The consumption of energy has significantly increased in theworld during the preceding decade. Two-...
Previous studies proposed several bio-inspired algorithms for the optimization of Neural Network (N...
In this paper, we develop a function of population, GDP, import, and export by applying a hybrid bat...
<div><p>Background</p><p>Global warming is attracting attention from policy makers due to its impact...
In this study, we select Middle East countries involving Jordan, Lebanon, Oman, and Saudi Arabia for...
Human activities in todays modern world would not be possible without energy. The energy consumed by...
The purpose of this paper is to forecast demand for crude oil of Iran using Artificial Neural Networ...
When the literature regarding applications of neural networks is investigated, it appears that a sub...
Energy is a central element to achieve the interrelated economic, social, and environmental goals to...
In economies that are dependent on fossil fuel revenues, Realization of long-term plans, mid-term an...
This paper deals with the global energy consumption to forecast future projections based on primary ...
The forecasting and prediction of crude oil are necessary in enabling governments to compile their e...
This paper presents an artificial neural network (ANN) approach to gasoline consumption (GC) forecas...
Crude oil is one of the most traded non-food products or commodities in the world. In Indonesia, cru...
Awareness of the future oil demand is essential for OPEC member countries to determine priorities an...
The consumption of energy has significantly increased in theworld during the preceding decade. Two-...
Previous studies proposed several bio-inspired algorithms for the optimization of Neural Network (N...
In this paper, we develop a function of population, GDP, import, and export by applying a hybrid bat...
<div><p>Background</p><p>Global warming is attracting attention from policy makers due to its impact...
In this study, we select Middle East countries involving Jordan, Lebanon, Oman, and Saudi Arabia for...
Human activities in todays modern world would not be possible without energy. The energy consumed by...
The purpose of this paper is to forecast demand for crude oil of Iran using Artificial Neural Networ...
When the literature regarding applications of neural networks is investigated, it appears that a sub...
Energy is a central element to achieve the interrelated economic, social, and environmental goals to...
In economies that are dependent on fossil fuel revenues, Realization of long-term plans, mid-term an...
This paper deals with the global energy consumption to forecast future projections based on primary ...
The forecasting and prediction of crude oil are necessary in enabling governments to compile their e...
This paper presents an artificial neural network (ANN) approach to gasoline consumption (GC) forecas...
Crude oil is one of the most traded non-food products or commodities in the world. In Indonesia, cru...
Awareness of the future oil demand is essential for OPEC member countries to determine priorities an...
The consumption of energy has significantly increased in theworld during the preceding decade. Two-...