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Comparative Study of Machine Learning Models for Bee Colony Acoustic Pattern Classification on Low Computational Resources

Antonio Robles-Guerrero, Tonatiuh Saucedo-Anaya, Carlos Guerrero-Méndez, Salvador Gómez-Jiménez, David Navarro-Solís

2023Sensors20 citationsDOIOpen Access PDF

Abstract

In precision beekeeping, the automatic recognition of colony states to assess the health status of bee colonies with dedicated hardware is an important challenge for researchers, and the use of machine learning (ML) models to predict acoustic patterns has increased attention. In this work, five classification ML algorithms were compared to find a model with the best performance and the lowest computational cost for identifying colony states by analyzing acoustic patterns. Several metrics were computed to evaluate the performance of the models, and the code execution time was measured (in the training and testing process) as a CPU usage measure. Furthermore, a simple and efficient methodology for dataset prepossessing is presented; this allows the possibility to train and test the models in very short times on limited resources hardware, such as the Raspberry Pi computer, moreover, achieving a high classification performance (above 95%) in all the ML models. The aim is to reduce power consumption and improves the battery life on a monitor system for automatic recognition of bee colony states.

Topics & Concepts

Computer scienceProcess (computing)Machine learningArtificial intelligenceBeekeepingPower consumptionCode (set theory)Source codePower (physics)Operating systemBiologySet (abstract data type)Programming languagePhysicsQuantum mechanicsBotanyPlant and animal studiesInsect and Pesticide ResearchInsect and Arachnid Ecology and Behavior
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