Prediction of Potato (Solanum tuberosum L.) Yield Based on Machine Learning Methods
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Published:2023-12-11
Issue:12
Volume:13
Page:2259
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ISSN:2077-0472
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Container-title:Agriculture
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language:en
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Short-container-title:Agriculture
Author:
Kurek Jarosław1ORCID, Niedbała Gniewko2ORCID, Wojciechowski Tomasz2ORCID, Świderski Bartosz1ORCID, Antoniuk Izabella1ORCID, Piekutowska Magdalena3ORCID, Kruk Michał1ORCID, Bobran Krzysztof4
Affiliation:
1. Department of Artificial Intelligence, Institute of Information Technology, Warsaw University of Life Sciences, Nowoursynowska 159, 02-776 Warsaw, Poland 2. Department of Biosystems Engineering, Faculty of Environmental and Mechanical Engineering, Poznań University of Life Sciences, Wojska Polskiego 50, 60-627 Poznań, Poland 3. Department of Botany and Nature Protection, Institute of Biology, Pomeranian University in Słupsk, 22b Arciszewskiego St., 76-200 Słupsk, Poland 4. Seth Software sp. z o.o., Strefowa 1, 36-060 Głogów Małopolski, Poland
Abstract
This research delves into the application of machine learning methods for predicting the yield of potato varieties used for French fries in Poland. By integrating a comprehensive dataset comprising agronomical, climatic, soil, and satellite-based vegetation data from 36 commercial potato fields over five growing seasons (2018–2022), we developed three distinct models: non-satellite, satellite, and hybrid. The non-satellite model, relying on 85 features, excludes vegetation indices, whereas the satellite model includes these indices within its 128 features. The hybrid model, combining all available features, encompasses a total of 165 features, presenting the most-comprehensive approach. Our findings revealed that the hybrid model, particularly when enhanced with SVM outlier detection, exhibited superior performance with the lowest Mean Absolute Percentage Error (MAPE) of 5.85%, underscoring the effectiveness of integrating diverse data sources into agricultural yield prediction. In contrast, the non-satellite and satellite models displayed higher MAPE values, indicating less accuracy compared to the hybrid model. Advanced data-processing techniques such as PCA and outlier detection methods (LOF and One-Class SVM) played a pivotal role in model performance, optimising feature selection and dataset refinement. The study concluded that machine learning methods, particularly when leveraging a multifaceted approach involving a wide array of data sources and advanced processing techniques, can significantly enhance the accuracy of agricultural yield predictions. These insights pave the way for more-efficient and -informed agricultural practices, emphasising the potential of machine learning in revolutionising yield prediction and crop management.
Funder
European Union from the European Regional Development Fund under the Smart Growth Operational Programme National Centre for Research and Development, within the 1.1.1 programme for R&D projects of enterprises “Fast track–Agrotech”
Subject
Plant Science,Agronomy and Crop Science,Food Science
Reference94 articles.
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