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首页> 外文期刊>Horticulture,Environment,and Biotechnology >Estimating transpiration rates of hydroponically-grown paprika via an artificial neural network using aerial and root-zone environments and growth factors in greenhouses
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Estimating transpiration rates of hydroponically-grown paprika via an artificial neural network using aerial and root-zone environments and growth factors in greenhouses

机译:使用空中和根区环境和温室生长因子来估算水疏入辣椒粉的蒸腾率

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Environmental and growth factors are important variables that affect the transpiration rate of crops, but due to their complex nature, it is difficult to systematically use all these factors to estimate transpiration rates. Application of artificial neural networks (ANNs) can be an efficient way of deriving meaningful results from complex nonlinear data. The objectives of this study were to estimate transpiration rates using an ANN, to compare these estimations with the Penman-Monteith (P-M) equation, and to analyze the estimation accuracy according to cultivation period. Paprika (Capsicum annuum L. cv. Scirocco) was cultivated for two cropping periods in a year. Environmental factors were collected every minute and leaf area index (LAI) as a growth factor was measured every 2 weeks. An ANN consisting of an input layer using eight environmental and growth factors, five hidden layers, and an output layer for transpiration rate was constructed. The estimation accuracy in the ANN was higher than the P-M when using aerial environmental factors, but it was further increased by adding root-zone factors. Using daily average data, ANN accuracy was higher for longer cultivation periods and accompanying data. R-2 values were 0.88 and 0.73 in the ANN and P-M for one year, whereas they were 0.84-0.93 and 0.79-0.83 for the individual seasons, respectively. The accuracy of the ANN tended to increase when the time step (data-averaging time unit) decreased to 10 min and there was no significant difference over 10 min. Using 10-min average data, the ANN showed high accuracies with R-2 = 0.95-0.96 and root mean square error = 0.07-0.10 g m(-2) min(-1), regardless of cultivation period and season. Therefore, it was confirmed that the ANN could accurately estimate transpiration rates at specific times using the data collected from the entire cultivation period. This approach may be useful for developing irrigation strategies by estimating the transpiration rates of crops grown in soilless cultures.
机译:环境和生长因素是影响作物蒸腾率的重要变量,而是由于它们的复杂性,因此难以系统地利用所有这些因素来估算蒸腾速率。人工神经网络(ANNS)的应用可以是从复杂非线性数据中导出有意义的结果的有效方式。本研究的目标是使用ANN估计蒸腾速率,将这些估计与Penman-Monteith(P-M)方程进行比较,并根据培养期分析估计准确性。辣椒粉(Capsicum Annuum L.CV。Scirocco)在一年内为两次种植期培养。每分钟收集环境因素,每分钟和叶区域指数(LAI)每2周测量生长因子。构建了由八个环境和生长因子,五个隐藏层的输入层组成的ANN,以及用于蒸腾速率的输出层。在使用空中环境因素时,ANN中的估计精度高于P-M,但通过添加根区因子进一步增加。使用日常平均数据,在较长的培养期和伴随数据中,ANN精度更高。 ANN和P-M的R-2值为0.88和0.73,一年,分别为个体季节为0.84-0.93和0.79-0.83。当时间步长(数据平均时间单位)降至10分钟时,ANN的准确性趋于增加,并且在10分钟内没有显着差异。使用10分钟的平均数据,ANN显示出高精度,R-2 = 0.95-0.96和根均方误差= 0.07-0.10g m(-2)min(-1),无论栽培期和季节如何。因此,证实,ANN可以使用从整个栽培期间收集的数据在特定时间准确地估计蒸腾速率。通过估计在未来培养物中种植的作物的蒸腾率,这种方法可用于开发灌溉策略。

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