AUTOMAÇÃO ROBÓTICA: SOLUÇÕES SUSTENTÁVEIS E INCLUSIVAS: TECNOAGRO
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Date
2025-02-12
Journal Title
Journal ISSN
Volume Title
Publisher
Centro Universitário de Ensino Octávio Bastos
Abstract
The object of this project consists of the development of a robot assistant
sustainable agriculture, an innovative autonomous system that aims to optimize agricultural practices
through advanced technologies. Aligned with the Sustainable Development Goal
(SDG), a worldwide appeal to make planet Earth prosperous (UN, 2015). The proposal
meets the following SDGs: Zero Hunger and Sustainable Agriculture (SDG 2), Consumption and
Responsible Production (SDG 12) and Land Life (SDG 15).
The robot will be able to identify and remove diseased plants with high precision,
reducing the need for manual interventions and the use of chemical inputs, promoting
thus a more sustainable and efficient approach to plantation management.Automation in agriculture has benefited from learning technologies
machine and robotics to improve processes and optimize plant management. An example is the
development of robots with advanced capabilities to identify and remove plants
sick. This system follows a two-step approach: identification of diseased plants
and precise removal of these plants.
In the first step, the system is designed to identify diseases in plants
specific, using machine learning. Convolutional neural networks (CNNs) are
especially efficient for this purpose due to their ability to learn and
recognize complex visual patterns (LeCun et al., 2015). These networks have been widely
used in agriculture for tasks such as detecting diseases in crops, in which
can analyze visual characteristics of diseases, such as spots and changes in
leaf coloration (Ferentinos, 2018). The robot's cameras capture images in time
real life of plants, which are then analyzed by CNNs to identify signs of diseases with
precision. The training database used contains images of healthy and
sick, which allows the system to distinguish with high accuracy between healthy plants and
plants with signs of disease such as yellowing leaves, spots and wilting (Mohanty et
al., 2016).
Description
Keywords
Machine Learning, Cálculo Diferencial, Robótica, Álgebra Linear, Inteligencia Artificial, Arduino Mega 2560