基于物联网传感器网络的葡萄树监测土壤参数采集与分析

M. Hnatiuc, M. Paun, Domnica Alpetri
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摘要

近年来,物联网(IoT)的概念已经在大多数领域传播,因为它提供了多种好处,所以它最近开始与人工智能(AI)一起用于葡萄栽培。这两种创新技术与传统方法相结合,可以更有效、更快速地预测葡萄藤栽培中可能发生的疾病。本研究旨在通过最小化病原体发展的有利环境,在进化仍然可以预防的时期检测疾病。这种预防可以使用算法来预测和比较来自物联网传感器的数据与农民传统收集的数据。为获取环境参数信息而开发的物联网传感器系统在罗马尼亚的Murfatlar葡萄园进行了测试。本实验采用未经处理的赤霞珠和长相思两种品种进行实验研究,目的是降低化学处理浓度。所有传感器的数据都存储在云端。本文介绍了由土壤参数(如温度、湿度、电导率、氮(N)、磷(P)和钾(K))组成的传感器数据的分析。使用机器学习(ML)进行聚类和预测的大数据算法进行了测试,以识别葡萄病害。论文的最后对结果进行了详细说明。
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Acquisition and Analysis of Soil Parameters for Vine Monitoring using the IoT Sensor Network
In recent years, the concept of the Internet of Things (IoT) has spread in most fields due to the multiple benefits it offers, so it recently started to be used in viticulture, together with artificial intelligence (AI). These two innovative technologies combined with classical methods can lead to a much more efficient and rapid prediction of diseases that may occur in grapevine culture. The present study aims to detect diseases in the period when evolution can still be prevented, by minimizing the favorable environment in which the pathogen can develop. This prevention can be achieved using algorithms for predicting and comparing the data from IoT sensors with the data classically gathered by farmers. The IoT sensors system developed to acquire information about environmental parameters is tested in the Murfatlar vineyard, Romania. Two types of untreated Cabernet and Sauvignon Blanc varieties are used in the experimental study with the aim of reducing the chemical treatment concentration. All the sensors’ data are stored in a cloud. This paper presents an analysis of sensor data consisting of soil parameters such as temperature, humidity, conductivity, nitrogen (N), phosphorus (P), and potassium (K). Big data algorithms using machine learning (ML) for clustering and prediction are tested to identify the vine diseases. The results are detailed at the end of the paper.
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