Oil formation volume factor (OFVF) is considered one of the main parameters required to characterize the crude oil. OFVF is needed in reservoir simulation and prediction of the oil reservoir performance. Existing correlations apply for specific oils and cannot be extended to other oil types. In addition, big errors were obtained when we applied existing correlations to predict the OFVF. There is a massive need to have a global OFVF correlation that can be used for different oils with less error.The objective of this paper is to develop a new empirical correlation for oil formation volume factor (OFVF) prediction using artificial intelligent techniques (AI) such as; artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFI...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Summarization: Reservoir characterization and asset management require comprehensive information abo...
Neural-network, machine-learning algorithms are effective prediction tools but can behave as black ...
The Oil Formation Volume Factor parameter is a very important fluid property in reservoir engineerin...
The necessity of oil formation volume factor (Bo) determination does not need to be greatly emphasiz...
Bubble point pressure is one of the most important pressure–volume–temperature properties of crude o...
PVT properties are very important in the reservoir engineering computations. There are many empirica...
AbstractThere are various types of oils in distinct situations, and it is essential to discover a mo...
In this paper, two correlations for oil formation volume factor (Bo) for volatile oil reservoirs are...
AbstractIn this paper, two correlations for oil formation volume factor (Bo) for volatile oil reserv...
The porosity of the petroleum reservoirs is considered one of the most important parameters in reser...
AbstractKnowledge about reservoir fluid properties such as bubble point pressure (Pb) plays a vital ...
Saturation pressure is a vital parameter of oil reservoir which can reflect the oilfield characteris...
The exactitude of petroleum fluid molecular weight correlations affects significantly the precision ...
One of the challenging conditions in wellbore management is high-pressure, high-temperature wells th...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Summarization: Reservoir characterization and asset management require comprehensive information abo...
Neural-network, machine-learning algorithms are effective prediction tools but can behave as black ...
The Oil Formation Volume Factor parameter is a very important fluid property in reservoir engineerin...
The necessity of oil formation volume factor (Bo) determination does not need to be greatly emphasiz...
Bubble point pressure is one of the most important pressure–volume–temperature properties of crude o...
PVT properties are very important in the reservoir engineering computations. There are many empirica...
AbstractThere are various types of oils in distinct situations, and it is essential to discover a mo...
In this paper, two correlations for oil formation volume factor (Bo) for volatile oil reservoirs are...
AbstractIn this paper, two correlations for oil formation volume factor (Bo) for volatile oil reserv...
The porosity of the petroleum reservoirs is considered one of the most important parameters in reser...
AbstractKnowledge about reservoir fluid properties such as bubble point pressure (Pb) plays a vital ...
Saturation pressure is a vital parameter of oil reservoir which can reflect the oilfield characteris...
The exactitude of petroleum fluid molecular weight correlations affects significantly the precision ...
One of the challenging conditions in wellbore management is high-pressure, high-temperature wells th...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Summarization: Reservoir characterization and asset management require comprehensive information abo...
Neural-network, machine-learning algorithms are effective prediction tools but can behave as black ...