Power Plant Detection for Energy Estimation using GIS with Remote Sensing, CNN & Vision Transformers
- URL: http://arxiv.org/abs/2412.04986v1
- Date: Fri, 06 Dec 2024 12:15:11 GMT
- Title: Power Plant Detection for Energy Estimation using GIS with Remote Sensing, CNN & Vision Transformers
- Authors: Blessing Austin-Gabriel, Cristian Noriega Monsalve, Aparna S. Varde,
- Abstract summary: We propose a hybrid model for power plant detection to assist energy estimation applications, by pipelining GIS having Remote Sensing capabilities with CNN (Convolutional Neural Networks) and ViT (Vision Transformers)<n>Our proposed approach enables real-time analysis with multiple data types on a common map via the GIS, entails feature-extraction abilities due to the CNN, and captures long-range dependencies through the ViT.
- Score: 1.563479906200713
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this research, we propose a hybrid model for power plant detection to assist energy estimation applications, by pipelining GIS (Geographical Information Systems) having Remote Sensing capabilities with CNN (Convolutional Neural Networks) and ViT (Vision Transformers). Our proposed approach enables real-time analysis with multiple data types on a common map via the GIS, entails feature-extraction abilities due to the CNN, and captures long-range dependencies through the ViT. This hybrid approach is found to enhance classification, thus helping in the monitoring and operational management of power plants; hence assisting energy estimation and sustainable energy planning in the future. It exemplifies adequate deployment of machine learning methods in conjunction with domain-specific approaches to enhance performance.
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