Activities per year
Abstract
Effective plant growth and yield prediction is an essential task for greenhouse growers and for agriculture in general. Developing models which can effectively model growth and yield can help growers improve the environmental control for better production, match supply and market demand and lower costs. Recent developments in Machine Learning (ML) and, in particular, Deep Learning (DL) can provide powerful new analytical tools. The proposed study utilises ML and DL techniques to predict yield and plant growth variation across two different scenarios, tomato yield forecasting and Ficus benjamina stem growth, in controlled greenhouse environments. We deploy a new deep recurrent neural network (RNN), using the Long Short-Term Memory (LSTM) neuron model, in the prediction formulations. Both the former yield, growth and stem diameter values, as well as the microclimate conditions, are used by the RNN architecture to model the targeted growth parameters. A comparative study is presented, using ML methods, such as support vector regression and random forest regression, utilising the mean square error criterion, in order to evaluate the performance achieved by the different methods. Very promising results, based on data that have been obtained from two greenhouses, in Belgium and the UK, in the framework of the EU Interreg SMARTGREEN project (2017-2021), are presented.
Original language | English |
---|---|
Title of host publication | Acta Horticulturae |
Subtitle of host publication | Greensys 2019 - International Symposium on Advanced Technologies and Management for Innovative Greenhouses |
Publisher | International Society for Horticultural Science |
Pages | 425-431 |
Number of pages | 7 |
Volume | 1296 |
ISBN (Electronic) | 2406-6168 |
ISBN (Print) | 0567-7572 |
DOIs | |
Publication status | Published - 23 Nov 2020 |
Publication series
Name | Acta Horticulturae |
---|---|
ISSN (Print) | 0567-7572 |
Bibliographical note
Funding Information:This work is part of EU Interreg SMARTGREEN project (2017-2021). We would like to thank all the growers (UK & EU), for providing the data. Their valuable feedback, suggestions and comments are highly appreciated to increase the overall quality of this work.
Keywords
- Deep learning
- Ficus
- Growth
- Prediction
- Recurrent LSTM neural networks
- Stem diameter
- Tomato
- Yield rate
Fingerprint
Dive into the research topics of 'Using Deep Learning to Predict Plant Growth and Yield in Greenhouse Environments'. Together they form a unique fingerprint.Activities
- 1 Research citation in policy documents
-
Artificial intelligence in the agri-food sector: Applications, risks and impacts
Leontidis, G. (Advisor)
Mar 2023Activity: Industry Engagement, External Engagement, Consultancy, Spinouts, CPD and Licensing › Research citation in policy documents