气候智能型农业信息物理系统多变量传感器数据的混合分类方法

Ankur Pandey, Piyush Tiwary, Sudhir Kumar, Sajal K. Das
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引用次数: 5

摘要

在本文中,我们提出了一种用于精准农业的新型气候智能农业信息物理系统(ACPS)。ACPS的主要目的是利用多变量传感器数据对农业现场进行实时故障定位跟踪。ACPS中的计算模型采用了一种新的混合分类方法,将两个分类器结合在一起进行传感器节点的位置估计。该方法的新颖之处在于利用传感器数据预测需要更多灌溉、土壤养分或立即人工干预的位置。我们还推导了该方法的计算复杂度。与现有的定位方法相比,定位精度有了一定的提高。
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A hybrid classifier approach to multivariate sensor data for climate smart agriculture cyber-physical systems
In this paper, we propose a novel climate-smart Agriculture Cyber-Physical System (ACPS) for precision farming. The primary motive of the ACPS is to perform real-time fault location tracking in the agricultural field using multivariate sensor data. The computing model in the ACPS uses a novel hybrid classification approach which combines two classifiers for the location estimation of the sensor node. The novelty of the proposed method lies in predicting the locations that need more irrigation, soil nutrients or immediate human intervention using the sensor data. We also derive the computational complexity of the proposed method. The location accuracy improves reasonably as compared to the current-state-of-the-art methods.
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