Analytical, Dynamic, and Interactive Platform for Generation and Managing Predictive Models Focused on Energy Sector

Author:

Romero Inés1ORCID,Ochoa-Zezzati Alberto2ORCID

Affiliation:

1. Programa de Desarrollo Sostenible y Energías Renovables, Universidad Internacional Iberoamericana, Campeche 24560, Mexico

2. Departamento/Facultad: Inteligencia Artificial Aplicada, Universidad Autónoma de Ciudad Juárez, Chihuahua 32310, Mexico

Abstract

Ensuring the supply of electricity in a reliable and safe way is not an easy task, especially when considering renewable and clean energy generated with wind turbines given the intermittency or variability of the wind; also considering different time horizons increases complexity. Mexico has great potential for wind energy in the Eastern region and, to meet this challenge, a platform capable of generating forecast models automatically through mathematical techniques and artificial intelligence and managing them is proposed aimed at providing support based on knowledge and presenting the information graphically through a flexible dashboard, which is customizable and accessible when and where required. In this investigation, components related to the generation of electrical energy in this area are identified and a centralized system is proposed, with information segmentation, management of 3 user profiles, 6 KPIs, 5 configurable parameters, 7 different forecast models using statistical techniques, support vector machines, and automatic and deep learning, with 2 ways of visualization, to carry out analyses at 3 different time horizons. It is built in a modular way with free and open-source software. The results in the energy sector show that it allows focusing on priority activities avoiding rework, ensures reliability and completeness, is scalable, avoids duplication, allows resources to be shared, responds quickly to hypotheses, and has a global and summarized view of relevant data according to the interested party for different periods of time in an agile way, reducing times and offering support to the decision maker.

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,General Computer Science,Signal Processing

Reference57 articles.

1. An Introduction to Machine Learning

2. En México se tiene capacidad instalada para generar electricidad a través de energía renovable en 31 por ciento;R. Nahle,2020

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