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The Development of an Intelligent Monitoring System for Agricultural Inputs Basing on DBN-SOFTMAX

机译:基于DBN-SOFTMAX的农业投入物智能监控系统的开发

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To solve the problem of unreliability of traceability information in the traceability system, we developed an intelligent monitoring system to realize the real-time online acquisition of physicochemical parameters of the agricultural inputs and to predict the varieties of input products accurately. Firstly, self-developed monitoring equipment was used to realize real-time acquisition, format conversion and pretreatment of the physicochemical parameters of inputs, and real-time communication with the cloud platform server. In this process, LoRa technology was adopted to solve the wireless communication problems between long-distance, low-power, and multinode environments. Secondly, a deep belief network (DBN) model was used to learn unsupervised physicochemical parameters of input products and extract the input features. Finally, these input features were utilized on the softmax classifier to establish the classification model, which could accurately predict the varieties of agricultural inputs. The results showed that when six kinds of pesticides, chemical fertilizers, and other agricultural inputs were predicted through the system, the prediction accuracy could reach 98.5%. Therefore, the system can be used to monitor the varieties of agrarian inputs effectively and use in real-time to ensure the authenticity and accuracy of the traceability information.
机译:为解决可追溯系统中可追溯信息不可靠的问题,我们开发了一种智能监控系统,实现了农业投入物理化参数的实时在线获取,并能准确预测投入物的品种。首先,使用自主研发的监控设备实现输入物理化参数的实时采集,格式转换和预处理,以及与云平台服务器的实时通信。在此过程中,采用了LoRa技术来解决长距离,低功耗和多节点环境之间的无线通信问题。其次,使用深度信念网络(DBN)模型来学习输入产品的无监督理化参数并提取输入特征。最后,利用这些输入特征在softmax分类器上建立分类模型,可以准确地预测农业投入的品种。结果表明,通过该系统对六种农药,化肥等农业投入物进行预测,预测精度可达98.5%。因此,该系统可用于有效监测农业投入物的种类并实时使用,以确保可追溯性信息的真实性和准确性。

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