Simulation of rice biomass accumulation by an extended logistic model including influence of meteorological factors

被引:0
|
作者
Qiang Yu
Jiandong Liu
Yongqiang Zhang
Jun Li
机构
[1] Institute of Geographic Sciences and Natural Resources Research,
[2] Chinese Academy of Sciences,undefined
[3] Building 917,undefined
[4] Datun Road,undefined
[5] Beijing 100101,undefined
[6] China,undefined
[7] Center for Agrometeorology,undefined
[8] Chinese Academy of Meteorological Sciences,undefined
[9] Beijing 100081,undefined
[10] China,undefined
关键词
Rice Biomass Logistic model Solar radiation Temperature;
D O I
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中图分类号
学科分类号
摘要
The biomass (X) of a biological population, described by growth models, depends only on time (t), i.e., X = f(t). Some parameters in these models are frequently taken as constants, but they may vary with growth processes under different ecological conditions. An extended logistic model including changes in the influence of meteorological factors is developed to simulate biomass accumulation processes of rice sown on different dates. The model may be generally described as X = f (p, t), in which p stands for meteorological factors. The model can be used to generalize population growth processes in experiments carried out under different environments. It is shown that the model may account for 96.6% of the variance of rice biomass on the basis of sowing dates, developmental stage, solar radiation and temperature in the Yangtze River valley in China.
引用
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页码:185 / 191
页数:6
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