Advancements in Machine Learning Algorithms for Precision Crop Yield Prediction: A Comprehensive Review with focus on European Union

Publications, UC1 — Crop Yield & Land Bonitation

Advancements in Machine Learning Algorithms for Precision Crop Yield Prediction: A Comprehensive Review with focus on European Union

Advancements in Machine Learning Algorithms for Precision Crop Yield Prediction: A Comprehensive Review with focus on European Union
Carmen Anton, Anca Avram, Oliviu Matei, Laura Andreica, Bogdan Văduva

Abstract. Accurate crop yield prediction is a key enabler of precision agriculture, helping farmers, policy-makers and supply-chain actors to anticipate production and to manage resources efficiently. This paper provides a comprehensive review of recent advancements in machine learning algorithms for crop yield prediction, with a specific focus on the European Union context. The review systematises the main classes of models (classical regression, ensemble methods, deep learning, hybrid and physics-informed approaches), the most commonly used data sources (remote sensing, weather, soil and crop management records) and the typical evaluation protocols. Particular attention is given to the regulatory, agronomic and climatic specificities of the EU and to open challenges that remain to be addressed.

Keywords: crop yield prediction; machine learning; precision agriculture; European Union; literature review

📋 Cite this publication



Carmen Anton, Anca Avram, Oliviu Matei, Laura Andreica, Bogdan Văduva, "Advancements in Machine Learning Algorithms for Precision Crop Yield Prediction: A Comprehensive Review with focus on European Union", Proc. 19th SOCO Int. Conf. on Soft Computing Models in Industrial and Environmental Applications, Springer, 2024, 2023.


Reference: Proc. 19th SOCO Int. Conf. on Soft Computing Models in Industrial and Environmental Applications, Springer, 2024.

Evaluation of Feature Selection Methods in Estimation  of Precipitation Based on Deep Learning Artificial  Neural Networks

Evaluation of Feature Selection Methods in Estimation of Precipitation Based on Deep Learning Artificial Neural Networks

Precipitation is the most important element of the water cycle and an indispensable element of water resources management. This paper aims to model the monthly precipitation in 8 precipitation observation stations. The effects and role of different feature weights pre-processing methods (Weight by deviation, Weight by PCA, Weight by correlation, and Weight by Support Vector Machine) on artificial intelligence modeling were investigated.

read more
A Comparison of different crossover operators in genetic algorithms for clusters shortest-path tree problem

A Comparison of different crossover operators in genetic algorithms for clusters shortest-path tree problem

The clustered shortest-path tree (CluSPT) problem is an extension of the classical shortest path problem, given a graph with the nodes partitioned into several mutually exclusive and collectively exhaustive clusters looks for a shortest-path spanning tree from a predefined source node to all the other nodes of the graph, with the property that every cluster should generate a connected subgraph.

read more
A comprehensive survey on the generalized traveling salesman problem

A comprehensive survey on the generalized traveling salesman problem

The generalized traveling salesman problem (GTSP) is an extension of the classical traveling salesman
problem (TSP), and it is among the most researched combinatorial optimization problems due to its theoretical properties, complexity aspects, and real-life applications in various areas: location-routing problems, material flow design problem, distribution of medical supplies, urban waste collection management, airport selection and routing the courier airplanes, image retrieval and ranking, digital garment manufacturing, etc.

read more

Other publications

0 Comments