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基于離散曲率的溫室CO2優(yōu)化調(diào)控模型研究
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國家自然科學基金項目(31671587,、31501224)、陜西省重點研發(fā)計劃項目(2018TSCXL-NY-05-02)和中央高校基本科研業(yè)務費專項資金項目(2452017124)


Carbon Dioxide Optimal Control Model Based on Discrete Curvature
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    摘要:

    提出了基于離散曲率算法的溫室CO2優(yōu)化調(diào)控模型,通過設計嵌套試驗采集溫室不同溫度、光照強度,、CO2濃度組合下的番茄光合速率,,利用支持向量機回歸算法(Support vector regression algorithm,,SVR)構(gòu)建光合速率預測模型,;以預測模型網(wǎng)絡為目標函數(shù),,采用L弦長曲率算法實現(xiàn)CO2響應曲線離散曲率的計算,利用爬山法獲得不同溫度,、光照強度組合條件的CO2響應曲線曲率最大點,,以此作為效益最優(yōu)的調(diào)控目標值,進而基于SVR構(gòu)建CO2優(yōu)化調(diào)控模型,。結(jié)果表明,,調(diào)控模型的決定系數(shù)為0.99、均方根誤差為4.42μmol/mol,、平均絕對誤差為3.17μmol/mol,,擬合效果良好。與CO2飽和點目標值的調(diào)控效果對比發(fā)現(xiàn),,理論上CO2供需量平均下降61.81%,,光合速率平均減少15.58%;驗證試驗中,,相較飽和點調(diào)控下光合速率平均下降15.14%,,CO2供需量下降57.61%,相較自然條件下光合速率升高26.70%,。說明此溫室CO2優(yōu)化調(diào)控模型具有高效節(jié)能特點,,為設施作物CO2高效精準調(diào)控和節(jié)本增效提供了理論基礎。

    Abstract:

    CO2 is one of the main resources for plant photosynthesis. The slope of CO2 response curve represents the effect of CO2 concentration on photosynthetic rate. The first curvature maximum point represents the characteristic point where the effect of CO2 concentration on photosynthetic rate becomes weak. Therefore, the acquisition of this point is the key to realize the optimal benefit control of CO2. A CO2 optimal control model based on discrete curvature algorithm was proposed. Firstly, a photosynthetic rate experiment was designed. The subject of the experiment was tomato. The experimental conditions were the different combinations of temperature, photonic flux density and CO2 concentration. In the experiment, temperature, photon flux density and CO2 concentration gradients were set as 6, 10 and 20, respectively. Totally 1200 sets of CO2 response data were obtained by LI-6800 portable photosynthetic rate instrument. And 80% data were used to construct photosynthetic rate prediction model based on the support vector regression, and the rest of the data were used for model verification. Then, the CO2 response curves under the nested conditions were obtained by using the established photosynthetic rate prediction model. Next, the discrete curvature value of every response curve was calculated by the L-chord discrete curvature algorithm. Using hill-climbing method, the maximum curvature value of every response curve was obtained. The CO2 concentrations corresponding to the maximum curvature values were taken as the control target values. Finally, the CO2 optimal control model was constructed based on the support vector regression. The results showed that the decision coefficient of the control model was 0.99, the mean square error was 4.42μmol/mol, and the average absolute error was 3.17μmol/mol. Compared with the CO2 saturation point, the CO2 demand was decreased by 61.81%, but the photosynthetic rate was decreased by 15.58%. In the verification experiment, compared with the saturation point regulation, the average photosynthetic rate was decreased by 15.14% by using the proposed regulation method, the supply of CO2 was decreased by 57.61%. Compared with the natural method without any regulation, the photosynthetic rate was increased by 26.70% with the regulation proposed method. This indicated that the CO2 optimization control model was of high efficiency and energy saving. This control model could provide theoretical basis for efficient and precise regulation of CO2 for facility crops.

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胡瑾,田紫薇,汪健康,盧有琦,辛萍萍,張海輝.基于離散曲率的溫室CO2優(yōu)化調(diào)控模型研究[J].農(nóng)業(yè)機械學報,2019,50(9):337-346. HU Jin, TIAN Ziwei, WANG Jiankang, LU Youqi, XIN Pingping, ZHANG Haihui. Carbon Dioxide Optimal Control Model Based on Discrete Curvature[J]. Transactions of the Chinese Society for Agricultural Machinery,2019,50(9):337-346.

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  • 收稿日期:2019-06-02
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  • 在線發(fā)布日期: 2019-09-10
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