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Modeling of Soft Sensor Based on DBN-ELM and Its Application in Measurement of Nutrient Solution Composition for Soilless Culture

机译:基于DBN-ELM的软传感器建模及其在无土培养营养溶液组合物测量中的应用

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At present, the detection of important components of nutrient solution in soilless culture is high cost, difficult and low precision. A soft measurement method of nutrient solution component based on deep belief network and extreme learning machine (DBN-ELM) is proposed. The component concentration in nutrient solution was selected as the dominant variable, and the variables that were easy to be measured and correlated with the ion concentration were the auxiliary variables, including PH value, conductivity, nutrient solution circulation speed and temperature. The deep belief network is used to extract the features of the auxiliary variables, then the extracted features are input into the ultimate learning machine for training, and the soft measurement model is obtained. Finally, the data of soil - free tomato culture nutrient solution was used to verify the experiment. The results show that this method has higher comprehensive measurement accuracy than the method using the extreme learning machine or the least square method, and is of great significance for improving the yield and quality of the soilless cultivated crops.
机译:目前,无土培养营养液重要组分的检测是高成本,难度低的精度。提出了一种基于深度信仰网络和极限学习机(DBN-ELM)的营养溶液组分的软测量方法。选择营养溶液中的组分浓度作为优势变量,并且易于测量和与离子浓度相关的变量是辅助变量,包括pH值,电导率,营养溶液循环速度和温度。深度信念网络用于提取辅助变量的特征,然后将提取的特征输入到训练的最终学习机中,获得软测量模型。最后,使用土壤免番茄培养营养溶液的数据来验证实验。结果表明,该方法具有比使用极端学习机或最小二乘法的方法更高的综合测量精度,对提高无土栽培作物的产量和质量具有重要意义。

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