Exploring Digital Innovations in Agriculture: A Pathway to Sustainable Food Production and Resource Management
2024, Niedbała, Gniewko, Kujawa, Sebastian, Piekutowska, Magdalena, Wojciechowski, Tomasz
Today’s agriculture faces numerous challenges due to climate change, a growing population and the need to increase food productivity [...]
Predicting Starch Content in Early Potato Varieties Using Neural Networks and Regression Models: A Comparative Study
2024, Piekutowska, Magdalena, Hara, Patryk, Pentoś, Katarzyna, Lenartowicz, Tomasz, Wojciechowski, Tomasz, Kujawa, Sebastian, Niedbała, Gniewko
Starch content serves as a crucial indicator of the quality and palatability of potato tubers. It has become a common practice to evaluate the polysaccharide content directly in tubers freshly harvested from the field. This study aims to develop models that can predict starch content prior to the harvesting of potato tubers. Very early potato varieties were cultivated in the northern and northwestern regions of Poland. The research involved constructing multiple linear regression (MLR) and artificial neural network (ANN-MLP) models, drawing on data from eight years of field trials. The independent variables included factors such as sunshine duration, average daily air temperatures, precipitation, soil nutrient levels, and phytophenological data. The NSM demonstrated a higher accuracy in predicting the dependent variable compared to the RSM, with MAPE errors of 7.258% and 9.825%, respectively. This study confirms that artificial neural networks are an effective tool for predicting starch content in very early potato varieties, making them valuable for monitoring potato quality.
Combining Machine Learning Algorithms with Earth Observations for Crop Monitoring and Management
2025, Piekutowska, Magdalena, Niedbała, Gniewko, Kujawa, Sebastian, Wojciechowski, Tomasz
Combining machine learning algorithms with Earth observations has great potential in the context of crop monitoring and management, which is essential in the face of global challenges related to food security and climate change [...]
Insights into Drought Tolerance of Tetraploid Wheat Genotypes in the Germination Stage Using Machine Learning Algorithms
2024, Benlioğlu, Berk, Demirel, Fatih, Türkoğlu, Aras, Haliloğlu, Kamil, Özaktan, Hamdi, Kujawa, Sebastian, Piekutowska, Magdalena, Wojciechowski, Tomasz, Niedbała, Gniewko
Throughout germination, which represents the initial and crucial phase of the wheat life cycle, the plant is notably susceptible to the adverse effects of drought. The identification and selection of genotypes exhibiting heightened drought tolerance stand as pivotal strategies aimed at mitigating these effects. For the stated objective, this study sought to evaluate the responses of distinct wheat genotypes to diverse levels of drought stress encountered during the germination stage. The induction of drought stress was achieved using polyethylene glycol at varying concentrations, and the assessment was conducted through the application of multivariate analysis and machine learning algorithms. Statistical significance (p < 0.01) was observed in the differences among genotypes, stress levels, and their interaction. The ranking of genotypes based on tolerance indicators was evident through a principal component analysis and biplot graphs utilizing germination traits and stress tolerance indices. The drought responses of wheat genotypes were modeled using germination data. Predictions were then generated using four distinct machine learning techniques. An evaluation based on R-square, mean square error, and mean absolute deviation metrics indicated the superior performance of the elastic-net model in estimating germination speed, germination power, and water absorption capacity. Additionally, in assessing the criterion metrics, it was determined that the Gaussian processes classifier exhibited a better performance in estimating root length, while the extreme gradient boosting model demonstrated superior performance in estimating shoot length, fresh weight, and dry weight. The study’s findings underscore that drought tolerance, susceptibility levels, and parameter estimation for durum wheat and similar plants can be reliably and efficiently determined through the applied methods and analyses, offering a fast and cost-effective approach.