ФАО АГРИС — международная информационная система по сельскохозяйственным наукам и технологиям

Predictive Modelling of Maize Yield Using Multimodal Deep Learning Integrating Genotypic, Management and Weather Data : Exploring the feasibility of integrating disparate datasets for yield prediction

2025

Nguyen, VINH | Helsingin yliopisto, Maatalous-metsätieteellinen tiedekunta | University of Helsinki, Faculty of Agriculture and Forestry | Helsingfors universitet, Agrikultur-forstvetenskapliga fakulteten


Библиографическая информация
Издатель
Helsingin yliopisto, University of Helsinki, Helsingfors universitet
Другие темы
Agrotechnology; Maize yield prediction; Multimodal deep learning; Magisterprogrammet i lantbruksvetenskaper; Maizesnpdb; Fusion strategy; Snps; Agroteknologi; Maataloustieteiden maisteriohjelma; Morrow plots; Master's programme in agricultural sciences; Agroteknologia; Genotypic simulation; Disparate
Язык
Английский
Формат
application/pdf
Лицензия
In Copyright 1.0
ISBN Международный стандартный книжный номер
2025062732
Тип
Master Thesis; Thesis; Master Thesis; Thesis

2025-07-17
2025-11-19
Dublin Core
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