Analysis and evaluation of a dynamic model for greenhouse lettuce growth

IF 0.8 4区 农林科学 Q3 AGRICULTURE, MULTIDISCIPLINARY Spanish Journal of Agricultural Research Pub Date : 2022-10-20 DOI:10.5424/sjar/2022204-18658
Chuyun Tan, Shanhong Zhang, Yu Guo, Yang Wang
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Abstract

Aim of study: We analyzed and evaluated a nonlinear dynamic crop growth model called NICOLET B3, which can predict the dry and fresh matter content of lettuce in greenhouses. Area of study: Calibration was performed using experimental data obtained from the literature. The experiment was carried out in Saltillo, Mexico, and in a greenhouse in Beijing, China. Material and methods: We identified and discussed the feasibility of the studied model with multi-dimensional evaluation criteria. Meanwhile, a sensitivity analysis of input variables was conducted. After that, the least square identification method was used to calibrate the most sensitive parameter values to improve the robustness of the model. Main results: Results demonstrate that: i) the NICOLET B3 model is able to predict the fresh and dry matter production of lettuce with satisfactory accuracy verified (R2 = 0.9939 for fresh matter and R2 = 0.9858 for dry matter); ii) temperature has the most obvious impact on the model performance, compared with photosynthetically active radiation and CO2 concentration; iii) the model could perform well with only two inputs. Research highlights: Simulation results of evaluated NICOLET B3 model have a perfect goodness-of-fit. A method of calibrating parameters of the model and sensitivity analysis of three input variables of the model can facilitate its application.
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温室莴苣生长动态模型的分析与评价
研究目的:对预测温室生菜干、鲜物质含量的非线性动态作物生长模型NICOLET B3进行了分析和评价。研究领域:使用从文献中获得的实验数据进行校准。该实验分别在墨西哥萨尔提略和中国北京的一个温室中进行。材料与方法:采用多维评价标准对研究模型的可行性进行了鉴定和探讨。同时,对输入变量进行了敏感性分析。然后,利用最小二乘辨识法对最敏感的参数值进行标定,提高模型的鲁棒性。主要结果:结果表明:i) NICOLET B3模型能够预测生菜鲜物质和干物质产量,准确度验证满意(鲜物质R2 = 0.9939,干物质R2 = 0.9858);ii)与光合有效辐射和CO2浓度相比,温度对模型性能的影响最为明显;Iii)该模型可以在只有两个输入的情况下表现良好。研究重点:评估的NICOLET B3模型仿真结果具有很好的拟合优度。对模型参数进行标定,并对模型的三个输入变量进行灵敏度分析,有利于模型的应用。
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来源期刊
Spanish Journal of Agricultural Research
Spanish Journal of Agricultural Research 农林科学-农业综合
CiteScore
2.00
自引率
0.00%
发文量
60
审稿时长
6 months
期刊介绍: The Spanish Journal of Agricultural Research (SJAR) is a quarterly international journal that accepts research articles, reviews and short communications of content related to agriculture. Research articles and short communications must report original work not previously published in any language and not under consideration for publication elsewhere. The main aim of SJAR is to publish papers that report research findings on the following topics: agricultural economics; agricultural engineering; agricultural environment and ecology; animal breeding, genetics and reproduction; animal health and welfare; animal production; plant breeding, genetics and genetic resources; plant physiology; plant production (field and horticultural crops); plant protection; soil science; and water management.
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