Estimation of thermal time model parameters for seed germination in 15 species: the importance of distribution function

IF 2.1 3区 生物学 Q2 PLANT SCIENCES
Dali Chen, Xianglai Chen, Jingjing Wang, Zuxin Zhang, Yan Wang, Cunzhi Jia, Xiaowen Hu
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引用次数: 5

Abstract

Abstract Thermal time models have been widely applied to predict temperature requirements for seed germination. Generally, a log-normal distribution for thermal time [θT(g)] is used in such models at suboptimal temperatures to examine the variation in time to germination arising from variation in θT(g) within a seed population. Recently, additional distribution functions have been used in thermal time models to predict seed germination dynamics. However, the most suitable kind of the distribution function to use in thermal time models, especially at suboptimal temperatures, has not been determined. Five distributions (log-normal, Gumbel, logistic, Weibull and log-logistic) were used in thermal time models over a range of temperatures to fit the germination data for 15 species. The results showed that a more flexible model with the log-logistic distribution, rather than the log-normal distribution, provided the best explanation of θT(g) variation in 13 species at suboptimal temperatures. Thus, at least at suboptimal temperatures, the log-logistic distribution is an appropriate candidate among the five distributions used in this study. Therefore, the distribution of parameters [θT(g)] should be considered when using thermal time models to prevent large deviations; furthermore, an appropriate equation should be selected before using such a model to make predictions.
15种植物种子萌发热时间模型参数的估计:分布函数的重要性
热时间模型被广泛应用于预测种子萌发所需的温度。通常,热时间的对数正态分布[θT(g)]在次优温度下用于这种模型,以检查种子群体中θT(g)变化引起的萌发时间变化。近年来,在热时间模型中引入了附加分布函数来预测种子萌发动态。然而,在热时间模型中,特别是在次优温度下,最适合使用的分布函数类型尚未确定。采用对数正态分布、甘贝尔分布、logistic分布、威布尔分布和对数logistic分布对15种植物的萌发数据进行了拟合。结果表明,在次优温度下,13个物种的θT(g)变化最好的解释是一个更灵活的模型,该模型具有对数-logistic分布,而不是对数-正态分布。因此,至少在次优温度下,在本研究中使用的五个分布中,逻辑-逻辑分布是一个合适的候选分布。因此,在使用热时间模型时,应考虑参数[θT(g)]的分布,防止出现较大偏差;此外,在使用该模型进行预测之前,应该选择合适的方程。
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来源期刊
Seed Science Research
Seed Science Research 生物-植物科学
CiteScore
3.60
自引率
4.80%
发文量
23
审稿时长
>12 weeks
期刊介绍: Seed Science Research, the official journal of the International Society for Seed Science, is a leading international journal featuring high-quality original papers and review articles on the fundamental aspects of seed science, reviewed by internationally distinguished editors. The emphasis is on the physiology, biochemistry, molecular biology and ecology of seeds.
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