Fine-Tuning Artificial Neural Networks to Predict Pest Numbers in Grain Crops: A Case Study in Kazakhstan
Metadatos
Mostrar el registro completo del ítemAutor
Anarbekova, Galiya; Baca Ruiz, Luis Gonzaga; Akanova, Akerke; Sharipova, Saltanat; Ospanova, NaziraEditorial
MDPI
Materia
artificial neural networks bread striped flea agriculture
Fecha
2024-05-23Referencia bibliográfica
Anarbekova, G. et. al. Mach. Learn. Knowl. Extr. 2024, 6, 1154–1169. [https://doi.org/10.3390/make6020054]
Patrocinador
Ministry of Science and Higher Education of the Republic of Kazakhstan, IRN “AP 19675312 Analytical system for forecasting the dynamics of the number of pests of grain crops in Kazakhstan based on a neural network model”Resumen
This study investigates the application of different ML methods for predicting pest outbreaks
in Kazakhstan for grain crops. Comprehensive data spanning from 2005 to 2022, including
pest population metrics, meteorological data, and geographical parameters, were employed to train
the neural network for forecasting the population dynamics of Phyllotreta vittula pests in Kazakhstan.
By evaluating various network configurations and hyperparameters, this research considers the application
of MLP, MT-ANN, LSTM, transformer, and SVR. The transformer consistently demonstrates
superior predictive accuracy in terms of MSE. Additionally, this work highlights the impact of several
training hyperparameters such as epochs and batch size on predictive accuracy. Interestingly, the
second season exhibits unique responses, stressing the effect of some features on model performance.
By advancing our understanding of fine-tuning ANNs for accurate pest prediction in grain crops,
this research contributes to the development of more precise and efficient pest control strategies. In
addition, the consistent dominance of the transformer model makes it suitable for its implementation
in practical applications. Finally, this work contributes to sustainable agricultural practices by
promoting targeted interventions and potentially reducing reliance on chemical pesticides.