The serious environmental, economic and social consequences of oil spillages could devastate any nation of the world. Notable aftermath of this effect include loss of (or serious threat to) lives, huge financial losses, and colossal damage to the ecosystem. Hence, understanding the pattern and making precise predictions in real time is required (as opposed to existing rough and discrete prediction) to give decision makers a more realistic picture of environment. This paper seeks to address this problem by exploiting oil spillage features with sets of collected data of oil spillage scenarios. The proposed system integrates three state-of-the-art tools: self organizing maps, (SOM), ensembles of deep neural network (k-DNN) and adaptive neuro-...
Acknowledgment This study is sponsored by the Angolan National Oil Company (Sonangol EP) and the aut...
Crude oil is an integral component of the modern world economy. With the growing demand for crude oi...
A new predicting system is presented in which the aim is to forecast the presence of oil slicks in a...
Applying machine learning (ML) and fuzzy inference systems (FIS) requires large datasets to obtain m...
In this paper, a forecasting system is presented. It predicts the presence of oil slicks in a certai...
Oil spills represent one of the most destructive environmental disasters. Predicting the possibility...
This study discusses the problem of oil and gas faults that lead to spills or explosions that lead t...
Environmental modelling is an important approach of environmental engineering and management since i...
It’s so easy to know the accidents as it’s already happened and solving these accidents is immediate...
The problem of oil displacement was solved using neural networks and machine learning classifiers. T...
The main goal of the present article is to propose a machine learning model which was constructed by...
Oil spills represent one of the most destructing environmental disasters. Predicting the possibility...
An accurate identification of oil spill types is the basis of determining the source of leakage, eva...
The oil industry carries enormous environmental risks and can cause consequences at different levels...
Conventional machine learning methods are incapable of handling several hypotheses. This is the main...
Acknowledgment This study is sponsored by the Angolan National Oil Company (Sonangol EP) and the aut...
Crude oil is an integral component of the modern world economy. With the growing demand for crude oi...
A new predicting system is presented in which the aim is to forecast the presence of oil slicks in a...
Applying machine learning (ML) and fuzzy inference systems (FIS) requires large datasets to obtain m...
In this paper, a forecasting system is presented. It predicts the presence of oil slicks in a certai...
Oil spills represent one of the most destructive environmental disasters. Predicting the possibility...
This study discusses the problem of oil and gas faults that lead to spills or explosions that lead t...
Environmental modelling is an important approach of environmental engineering and management since i...
It’s so easy to know the accidents as it’s already happened and solving these accidents is immediate...
The problem of oil displacement was solved using neural networks and machine learning classifiers. T...
The main goal of the present article is to propose a machine learning model which was constructed by...
Oil spills represent one of the most destructing environmental disasters. Predicting the possibility...
An accurate identification of oil spill types is the basis of determining the source of leakage, eva...
The oil industry carries enormous environmental risks and can cause consequences at different levels...
Conventional machine learning methods are incapable of handling several hypotheses. This is the main...
Acknowledgment This study is sponsored by the Angolan National Oil Company (Sonangol EP) and the aut...
Crude oil is an integral component of the modern world economy. With the growing demand for crude oi...
A new predicting system is presented in which the aim is to forecast the presence of oil slicks in a...