CO 2与土壤水分交互作用的番茄光合速率预测模型
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国家自然科学基金资助项目(31271619)、高等学校博士学科点专项科研基金资助项目(20110008130006)和中央高校基本科研业务费专项资金资助项目(2015XD001)


Tomato Photosynthetic Rate Prediction Models under Interaction of CO 2 Enrichments and Soil Moistures
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    摘要:

    为了实现不同土壤水分管理下的CO 2气肥精细控制,建立了番茄作物不同生长阶段的光合速率预测模型。实验设置了4个CO 2浓度与3个土壤水分条件的交互处理,利用无线传感器网络长期实时监测温室内环境信息,采用LI-6400XT型光合速率仪定时采集作物净光合速率信息;并用BP神经网络分别建立了番茄苗期、花期和果期的光合速率预测模型。预测模型的验证结果表明,对于苗期预测模型,预测值与实测值之间的决定系数 R 2为0.925;花期预测模型的决定系数 R 2为0.920,果期预测模型的决定系数 R 2为0.958;番茄各生长期的光合速率预测模型均具有较高的预测精度。在不同土壤水分条件下改变CO 2浓度,得到的CO 2浓度与光合速率预测曲线与实测值相近,可反映实际土壤水分管理下的CO 2浓度最优值,对指导不同土壤水分条件下CO 2气肥的精细调控具有重要意义。

    Abstract:

    Abstract: Photosynthesis is the basis of crop growth and metabolism. CO 2 concentration and soil moisture are the important environmental factors affecting plant’s photosynthetic rate under controlled temperature and light intensity in greenhouse. To effectively evaluate the effect on plant’s photosynthesis, reasonably elevating CO 2 concentration under different soil moisture conditions is of great significance to achieve precision regulation of CO 2 concentration. To achieve the requirements, the photosynthetic rate prediction models based on back-propagation (BP) neural network were proposed at different growth stages of tomato plants. The two-factors interaction experiment was designed, in which the CO 2 concentration was set to four different levels ((700±50) (C1), (1 000±50) (C2), (1 300±50) μmol/mol (C3), and ambient CO 2 concentration in greenhouse (450 μmol/mol, CK)) combined with three different soil moisture levels (35%~45% (low), 55%~65% (moderate), 75%~85% of saturated water content (high)). The sensor nodes of WSN were used to realize the real-time monitoring of greenhouse environmental factors, including air temperature and humidity, light intensity, CO 2 concentration and soil moisture. An LI-6400XT photosynthesis analyzer was used to measure net photosynthetic rate of tomato leaf. The environmental factors were used as input variables of models after processed by normalization, and the photosynthetic rate was taken as the output variable. The model verification test was conducted by comparing and analyzing the observed values and predicted data. The results indicated that the training determination coefficient (R 2) of photosynthesis prediction model was 0.953, and root mean square error (RMSE) was 1.019 μmol/(m 2 ·s); testing R 2 of the model was 0.925, RMSE was 1.224 μmol/( m 2 ·s ) at seedling stage. At flowering stage, the training R 2 of the model was 0.958 and RMSE was 0.939 μmol/(m 2 ·s); testing R 2 of the model was 0.920 and RMSE was 1.276 μmol/(m 2 ·s). At fruiting stage, the training R 2 of the model was 0.980 and RMSE was 0.439 μmol/(m 2 ·s); testing R 2 of the model was 0.958 and RMSE was 0.722 μmol/(m 2 ·s). It was concluded that the model based on BP neural network reached high accuracy. Furthermore, the relationship between CO 2 concentration and photosynthetic rate was described by the established BP neural network model aiming at CO 2 saturation points under different soil moisture conditions at different growth stages. The observed and predicted results showed the same trend. The results can provide a theoretical basis for quantitative regulation of CO 2 enrichments to tomato plants in greenhouse.

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李婷,季宇寒,张漫,沙莎,蒋毅琼. CO 2与土壤水分交互作用的番茄光合速率预测模型[J].农业机械学报,2015,46(S1):208-214. Li Ting, Ji Yuhan, Zhang Man, Sha Sha, Jiang Yiqiong. Tomato Photosynthetic Rate Prediction Models under Interaction of CO 2 Enrichments and Soil Moistures[J]. Transactions of the Chinese Society for Agricultural Machinery,2015,46(S1):208-214.

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  • 收稿日期:2015-10-28
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  • 在线发布日期: 2015-12-30
  • 出版日期: 2015-12-31