Estimation of Electrical Energy Consumption in Irrigated Rice Crops in Southern Brazil
Author:
Lemes Daniel Lima1ORCID, Jacques Matheus Mello1, Sousa Natalia Bastos1ORCID, Bernardon Daniel Pinheiro1ORCID, Sperandio Mauricio1ORCID, Silva Juliano Andrade2, Chiara Lucas M.2, Wolter Martin3ORCID
Affiliation:
1. Headquarters Campus, Federal University of Santa Maria, Santa Maria 97105-900, RS, Brazil 2. CPFL Energia, Campinas 13088-900, SP, Brazil 3. Institute for Electrical Energy Systems (IESY), Otto-von-Guericke University Magdeburg (OVGU), 39106 Magdeburg, Sachsen-Anhalt, Germany
Abstract
On average, 70% of the world’s freshwater is used in agriculture, with farmers transitioning to electrical irrigation systems to increase productivity, reduce climate uncertainties, and decrease water consumption. In Brazil, where agriculture is a significant part of the economy, this transition has reached record levels over the last decade, further increasing the impact of energy consumption. This paper presents a methodology that utilizes the U-Net model to detect flooded rice fields using Sentinel-2 satellite images and estimates the electrical energy consumption required to pump water for this irrigation. The proposed approach involves grouping the detected flooded areas using k-means clustering with the electricity customers’ geographical coordinates, provided by the Power Distribution Company. The methodology was evaluated in a dataset of satellite images from southern Brazil, and the results demonstrate the potential of using U-Net models to identify rice fields. Furthermore, comparing the estimated electrical energy consumption required for irrigation in each cluster with the billed energy values provides valuable insights into the sustainable management of rice production systems and the electricity grid, helping to identify non-technical losses and improve irrigation efficiency.
Funder
CPFL Energia Coordenação de Aperfeiçoamento de Pessoal de Nível Superior—CAPES, PROEX PrInt
Subject
Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction
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