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Use of geostatistical and crop growth modelling to assess the variability of greenhouse tomato yield caused by spatial temperature variations

机译:使用地统计和作物生长模型评估由空间温度变化引起的温室番茄产量的变异性

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Users of potential crop growth models have generally assumed homogenous greenhouse climate conditions for simulation purposes. Geostatistics offers the possibility to represent the spatial dependence of climate variables such as temperature distribution in greenhouses. In order to obtain insight in the relevance of temperature distribution on the performance of a crop, geostatistical and crop growth modeling tools were combined in the present work. A plastic greenhouse with the size used in commercial practices, was used to assess temperature distribution by installing a 25-sensor grid, during a 28-day measurement period. Geostatistical analyses were performed on the temperature data, previously divided in five ranges that were established as a function of solar radiation intensity. Estimated semivariograms were fitted to theoretical spherical model for posterior estimation at unsampled points by ordinary kriging method. Results of this analysis indicated an increasing temperature spatial dependence as global radiation augmented. Crop growth simulations with the Tomgro model applied to the estimated temperature distribution, quantified the faster plant development rates in the central zone of the greenhouse, resulting in plants with one additional truss and a significant higher yield, when compared to plants next to the side walls. The results of this work suggest that the location of the climate sensor station is a sensible factor when using crop simulation models for greenhouse conditions. Final predictions done by crop growth simulation models may be biased and the results cannot be generalized for the entire greenhouse area when microclimate patterns are not considered. Application of geostatistics enabled to assess temperature patterns inside greenhouse and to analyze the relationship with global outside radiation.
机译:潜在作物生长模型的用户通常出于模拟目的而假定温室气候条件均一。地统计学提供了代表气候变量(例如温室温度分布)的空间依赖性的可能性。为了了解温度分布与农作物性能的相关性,在当前工作中结合了地统计学和农作物生长建模工具。在28天的测量期间,通过安装25个传感器的栅格,使用了具有商业惯例尺寸的塑料温室来评估温度分布。对温度数据进行了地统计分析,以前将温度分为根据太阳辐射强度确定的五个范围。将估计的半变异函数拟合到理论球面模型,以便通过普通克里格法在未采样点进行后验估计。分析的结果表明,随着整体辐射的增加,温度空间依赖性也在增加。将Tomgro模型应用于估计的温度分布,对作物生长进行模拟,量化了温室中心区域中较快的植物生长速度,与旁边的植物相比,植物具有一个额外的桁架和明显更高的产量。这项工作的结果表明,在温室条件下使用作物模拟模型时,气候传感器站的位置是一个明智的因素。如果不考虑微气候模式,则由作物生长模拟模型完成的最终预测可能会产生偏差,并且无法将结果推广到整个温室区域。地统计学的应用使得能够评估温室内部的温度模式并分析与全球外部辐射的关系。

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