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A Novel Model Fusion Approach for Greenhouse Crop Yield Prediction

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Version 2 2024-03-13, 10:06
Version 1 2023-12-20, 12:37
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posted on 2024-03-13, 10:06 authored by Liyun GongLiyun Gong, Miao YuMiao Yu, Vassilis Cutsuridis, Stefanos KolliasStefanos Kollias, Simon PearsonSimon Pearson

In this work, we have proposed a novel methodology for greenhouse tomato yield prediction, which is based on a hybrid of an explanatory biophysical model—the Tomgro model, and a machine learning model called CNN-RNN. The Tomgro and CNN-RNN models are calibrated/trained for predicting tomato yields while different fusion approaches (linear, Bayesian, neural network, random forest and gradient boosting) are exploited for fusing the prediction result of individual models for obtaining the final prediction results. The experimental results have shown that the model fusion approach achieves more accurate prediction results than the explanatory biophysical model or the machine learning model. Moreover, out of different model fusion approaches, the neural network one produced the most accurate tomato prediction results, with means and standard deviations of root mean square error (RMSE), r2-coefficient, Nash-Sutcliffe efficiency (NSE) and percent bias (PBIAS) being 17.69 ± 3.47 g/m2 , 0.9995 ± 0.0002, 0.9989 ± 0.0004 and 0.1791 ± 0.6837, respectively.

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Horticulturae

Volume

9

Issue

1

Publisher

MDPI

ISSN

2311-7524

eISSN

2311-7524

Date Submitted

2023-06-14

Date Accepted

2022-12-16

Date of First Publication

2022-12-20

Date of Final Publication

2022-12-20

Date Document First Uploaded

2023-06-06

ePrints ID

54930

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