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Development of a Simple Empirical Yield Predition Model Based on Dry Matter Production in Sweet Pepper Cover

Development of a Simple Empirical Yield Predition Model Based on Dry Matter Production in Sweet Pepper

Open Access
|Aug 2022

Abstract

The development of models for yield prediction in greenhouse sweet peppers may help improve yield and labour productivity. We aimed to monitor the growth and yield of hydroponically grown sweet pepper plants without destructive sampling. First, we constructed a prediction model and validated it in a cultivation experiment. In the developed model, daily node appearance and light use efficiency were predicted from daily mean air temperature and daytime carbon dioxide (CO2) concentration. The daily light interception was obtained by non-destructive leaf area estimation. Second, we validated the model through the cultivation experiment. The predicted total dry matter production at 200 days after transplanting (DAT), 1,379 g/m2, fell within the range of the observed value, 1,353 ± 46 g/m2 (mean ± SE). The predicted and observed yields at 200 DAT were 7.90 kg/m2 and 7.73 ± 0.82 kg/m2, respectively. We approximately predicted node appearance, total dry matter production, and fruit yield, while partially succeeding in predicting leaf area index and dry matter partitioning to fruit. Our non-destructive prediction model can be an effective tool for growers and to improve the yield of sweet pepper production.

DOI: https://doi.org/10.2478/agri-2022-0002 | Journal eISSN: 1338-4376 | Journal ISSN: 0551-3677
Language: English
Page range: 13 - 24
Submitted on: Mar 17, 2022
Accepted on: Jun 24, 2022
Published on: Aug 12, 2022
Published by: National Agricultural and Food Centre
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2022 Takafumi Watabe, Yukinari Muramatsu, Masaru Homma, Tadahisa Higashide, Dong-Hyuk Ahn, published by National Agricultural and Food Centre
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.