王小卉,李绪孟,唐启源,等. 水稻群体分蘖动态模型构建与应用[J]. 农业工程学报,2023,39(x):356-364. DOI: 10.11975/j.issn.1002-6819.202309173
    引用本文: 王小卉,李绪孟,唐启源,等. 水稻群体分蘖动态模型构建与应用[J]. 农业工程学报,2023,39(x):356-364. DOI: 10.11975/j.issn.1002-6819.202309173
    WANG Xiaohui, LI Xumeng, TANG Qiyuan, et al. Construction and application of dynamic tillering model in rice population[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(x): 356-364. DOI: 10.11975/j.issn.1002-6819.202309173
    Citation: WANG Xiaohui, LI Xumeng, TANG Qiyuan, et al. Construction and application of dynamic tillering model in rice population[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(x): 356-364. DOI: 10.11975/j.issn.1002-6819.202309173

    水稻群体分蘖动态模型构建与应用

    Construction and application of dynamic tillering model in rice population

    • 摘要: 为定量分析水稻群体茎蘖数量动态变化过程及分蘖动态特征,该研究使用双Logistic模型分别描述分蘖发生与死亡过程,建立水稻群体分蘖动态模型;根据水稻分蘖过程的时序特征定义描述分蘖过程的特征指标,并推导出分蘖特征指标的计算式;基于不同基因型品种、种植方式、种植时期、种植密度下水稻分蘖动态数据集检验模型优度和适应性;并应用分蘖动态模型和指标探索分蘖动态对种植密度的响应规律。结果表明,所建模型对不同基因型水稻品种在不同种植方式、种植时期和种植密度下的分蘖动态数据拟合优度较好,标准均方根误差服从Gamma分布,且均值小于5%,99%的概率小于0.1。基于所建模型计算的分蘖特征指标(包括模型参数)对种植密度有很好的响应;留一法检验表明模型的预测性较好,观测值与模拟值的R2=0.96。所建模型能够精确描述水稻茎蘖数量演变过程,具有很好的拟合优度、适应性和可解释性,可用于分析基因、环境、农艺措施对分蘖动态的影响,分蘖特征指标可望成为分析基因与环境互作的重要表型参数,对指导水稻精准栽培有重要理论价值和实际意义。

       

      Abstract: Here a dynamic model was developed on the tiller number of the rice population. The double Logistic model was also used to quantitatively analyze the dynamic process of the tiller occurrence and the extinction. A set of indicators was defined to describe the tillering dynamics, including the total number of growing tillers(Ng), the total number of dead tillers(Nd), the number of retained tillers(Nr), the start time of tillering(Tst), the peak time of tillering(Tpt), the end time of tillering(Tet), the start time of tillers death(Tsd), the peak time of tillers death(Tpd), the end time of tillers death(Ted), the duration of tillering(Dt), the duration of tillers death(Dd), the inherent rate of tillering(Rit), the inherent rate of tillers death(Rid), the maximum tillering rate(Rmt), the maximum tillers death rate(Rmd). According to the temporal characteristics of the rice tillering, the formula was derived to calculate the indicators of the tillering dynamics. The goodness and adaptability of the model were tested with the dynamic datasets of the rice tillers under different genotypes, transplanting, sowing time, and transplanting density. The model and the indicators were used to explore the dynamic tillering response to the cultivation density. The results were as follows. (1) The model shared the better fitting for the dynamic dataset of rice tillers under different genotypes, transplanting, planting time, and transplanting density. The standard root mean square error (RMSE) was followed by the Gamma distribution, where the mean was less than 5% and less than 0.1 with a probability of 99%. (2) The dynamic indicators and model parameters of tillers after calculation showed a better response to the cultivation density. Taking the planting density test of Huiliangyou 898 as an example, the number of tillers per unit area was accelerated and then slowed down after transplanting at 15 to 33.75 hills/m2. The number of tillers per unit area reached the peak at 45-50 d after transplanting. After the peak, the number of tillers per unit area decreased rapidly and then slowed down slowly. There was no change in the number of tillers per unit area about 70 d after transplanting. Tpt and Tpd were about (26±3) d and (54±3) d after transplantation, respectively. An outstanding trend was achieved in the response of the tillering characteristic index to planting density. Except for Tpt and Tsd, the tillering characteristic index followed the power function. Ng, Rit, Nr, Ted, Dd, Rmt, and Rmd showed a power function increase with the increase of planting density, and the exponent of the power function was less than 1, indicating the slow-down trend. Tpt, Rid, Tst, Tet, and Dt also decreased as a power function with the increase of planting density. The exponent of the power function was greater than -1, that is, the decreasing rate gradually decreased with the increase in planting density. Nd increased as a power function with the increase of planting density, where the exponent of the power function was greater than 1, indicating the accelerated increase. Tpd and Tsd decreased with the increase of planting density and then increased gradually after reaching the minimum. (3) A better prediction was achieved, where the R2 between the observed and simulated values were all 0.96. Therefore, the model can accurately describe the evolution in the number of rice tillers, indicating the better goodness of fitting, adaptability, and interpretability. The model can be applied to the dynamic regularity of the tiller number under the genotypic varieties and the agronomic measures. The tillering dynamic indicators can be expected to serve as the important phenotype in the interaction between genes and environments.

       

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