Modeling of various life processes of Juniperus excelsa M. Bieb to determine optimal growing conditions in the southern coast of Crimea, Russia

A. Pashtetsky, O. Ilnitsky
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Abstract

Aim. In connection with global climate change and an increase in the intensity of aridisation of the region of the southern coast of Crimea (SCC), the aim is to study the ecophysiological response of Juniperus excelsa M. Bieb is, during its intensive vegetative phase, and the impact of external environmental factors that greatly influence the characteristics of the water regime, which would allow the possible establishment of optimal and unfavorable conditions for the growth of the species.Material and Methods. Measurements of environmental parameters were carried out using a wireless phytomonitoring system. Applied computer programs were used for statistical data processing. Modeling and smoothing of two‐dimensional data was carried out using the least squares method, robust locally weighted regression and a mathematical model of stepwise regression analysis.Results. To assess the ecophysiological response to the impact of external environmental factors during the growing season of Juniperus excelsa M. Bieb, we applied a mathematical model of stepwise regression analysis. As dependent variables, we used the relative water flow velocity in the shoot (Sf, r.u.) and shoot diameter (d, mm), data were obtained from SF‐5P water flow sensors and SD‐10z sensors. The independent variables were the main environmental factors. The share of dispersion of the dependent variable, explained by the applied models, was determined as 98–99%.Conclusions. The development of a model based on a database of plant functions with appropriate quantitative characteristics will make it possible in the future to predict the ecological state of a particular area or region as a whole.
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对俄罗斯克里米亚南部海岸的朱柏(Juniperus excelsa M. Bieb)的各种生命过程进行建模,以确定最佳生长条件
的目标。考虑到全球气候变化和克里米亚南部海岸地区(SCC)干旱化强度的增加,目的是研究在密集的营养阶段,刺柏(Juniperus excelsa M. Bieb is)的生态生理反应,以及外部环境因素的影响,这些因素极大地影响了水状况的特征,从而可能为该物种的生长建立最佳和不利的条件。材料和方法。使用无线植物监测系统对环境参数进行测量。应用计算机程序对统计数据进行处理。利用最小二乘法、鲁棒局部加权回归和逐步回归分析的数学模型对二维数据进行建模和平滑处理。采用逐步回归分析的数学模型,研究了杉木生长季节对外界环境因素影响的生理生态响应。作为因变量,我们使用了茎部相对水流速度(Sf, r.u)和茎部直径(d, mm),数据来自Sf‐5P水流传感器和SD‐10z传感器。自变量是主要的环境因素。因变量的离散度所占的份额,由应用模型解释,确定为98 - 99%。基于具有适当数量特征的植物功能数据库的模型的开发将使将来能够预测特定地区或整个地区的生态状态。
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来源期刊
CiteScore
0.80
自引率
50.00%
发文量
73
审稿时长
8 weeks
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