CRITICAL ANALYSIS OF STATES’ POSITIONS ON CLIMATE CHANGE LAWS AND THE OIL AND GAS SECTOR: NIGERIA AS A CASE STUDY

2021 ◽  
Author(s):  
Boluwatife Olu-Ashake V.

Significance As in 2020 and 2021, this projected growth will be driven by the ongoing expansion of the oil and gas sector, and related investment and state revenues. These rising revenues will support the government’s ambitious national development plans, which include both increased social and infrastructure spending. Impacts The government will prioritise enhancing the oil and gas investment framework. Investment into joint oil and gas infrastructure with Suriname will benefit the growing oil industry in both countries. The expansionary fiscal policy may lead to a rise in inflation, leading to further calls for wage increases. In the medium term, strong growth in the oil and gas sector could lead to increased climate change activism in the country.


2020 ◽  
Author(s):  
Yaghoub rashnavadi ◽  
Sina Behzadifard ◽  
Reza Farzadnia ◽  
sina zamani

<p>Communication has never been more accessible than today. With the help of Instant messengers and Email Services, millions of people can transfer information with ease, and this trend has affected organizations as well. There are billions of organizational emails sent or received daily, and their main goal is to facilitate the daily operation of organizations. Behind this vast corpus of human-generated content, there is much implicit information that can be mined and used to improve or optimize the organizations’ operations. Business processes are one of those implicit knowledge areas that can be discovered from Email logs of an Organization, as most of the communications are followed inside Emails. The purpose of this research is to propose an approach to discover the process models in the Email log. In this approach, we combine two tools, supervised machine learning and process mining. With the help of supervised machine learning, fastText classifier, we classify the body text of emails to the activity-related. Then the generated log will be mined with process mining techniques to find process models. We illustrate the approach with a case study company from the oil and gas sector.</p>


Author(s):  
Mathew Chidube Udechukwu ◽  
Ubanozie Julian Obibuike ◽  
Anthony Chemazu Igbojionu ◽  
Stanley Toochukwu Ekwueme

Energy Policy ◽  
2021 ◽  
Vol 148 ◽  
pp. 111932
Author(s):  
Mônica Cavalcanti Sá de Abreu ◽  
Kernaghan Webb ◽  
Francisco Sávio Maurício Araújo ◽  
Jaime Phasquinel Lopes Cavalcante

Energy ◽  
2014 ◽  
Vol 64 ◽  
pp. 462-472 ◽  
Author(s):  
Mohammed A. Khatita ◽  
Tamer S. Ahmed ◽  
Fatma. H. Ashour ◽  
Ibrahim M. Ismail

2020 ◽  
Author(s):  
Yaghoub rashnavadi ◽  
Sina Behzadifard ◽  
Reza Farzadnia ◽  
sina zamani

<p>Communication has never been more accessible than today. With the help of Instant messengers and Email Services, millions of people can transfer information with ease, and this trend has affected organizations as well. There are billions of organizational emails sent or received daily, and their main goal is to facilitate the daily operation of organizations. Behind this vast corpus of human-generated content, there is much implicit information that can be mined and used to improve or optimize the organizations’ operations. Business processes are one of those implicit knowledge areas that can be discovered from Email logs of an Organization, as most of the communications are followed inside Emails. The purpose of this research is to propose an approach to discover the process models in the Email log. In this approach, we combine two tools, supervised machine learning and process mining. With the help of supervised machine learning, fastText classifier, we classify the body text of emails to the activity-related. Then the generated log will be mined with process mining techniques to find process models. We illustrate the approach with a case study company from the oil and gas sector.</p>


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