The Impact of AI on ECOWAS Energy Regulation Development
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Keywords:
Energy regulations , Artificial intelligence, Regional electricity authority , Chinese AI regulationsAbstract
The ECOWAS Regional Electrical Regulatory Authority (ERERA) is the regional body responsible for overseeing cross-border electrical interconnections in West Africa. The desire of ECOWAS member states to realize electricity interconnections through the cooperative implementation and sharing of the region's energy resources is manifested in adopting an Energy Protocol, which aims to establish the proper institutional and legal framework for the growth of West Africa's electricity industry. Within the Energy Protocol and the West African Power Pool (WAPP) Program scope, the Member States of ECOWAS formed the ECOWAS Regional Electricity Regulatory Authority (ERERA) in January 2008 as a specialized institution of ECOWAS. Applying AI to the energy sector presents both challenging regulatory barriers and hitherto unrealized prospects. While AI enhances smart grids and revolutionizes oil drilling, it also raises questions about accountability and culpability. As we move toward an AI-driven future, collaboration in integrating legal, technological, and ethical matters is essential. By implementing this plan, we can leverage AI's disruptive potential in the energy sector, reduce risks, and ensure a fair and sustainable energy future.
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