花生病虫害精准防护的数据挖掘与无线传感器网络

A. Tripathy, J. Adinarayana, S. Merchant, U. Desai, S. Ninomiya, M. Hirafuji, T. Kiura
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引用次数: 18

摘要

最近的技术发展允许设想具有分布式环境传感网络的传感器设备,这可能是在微观层面监测各种自然现象(天气参数,土壤湿度等)的潜在技术。随着越来越多的农业数据与作物一起收获,并被收集/存储在数据库中,如果开发/应用适当的数据挖掘技术,这些数据可以用于生产决策。在印度半干旱地区进行了连续四个(Kharif和Rabi)农业季节的试验,利用无线传感和田间监测数据了解花生作物密切相关和相互依存的病虫害动态,以了解作物-天气-环境-病虫害之间的关系。设计/开发/定制关联规则挖掘和多元回归挖掘技术/算法,将数据转化为有用的信息/知识/关系/趋势,以了解作物-天气-环境-病虫害连续体。这些发现已用于开发预测模型(累积和非累积),然后是基于网络的病虫害决策支持系统,这将有助于决策者采取可行的改进措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data mining and wireless sensor network for groundnut pest/disease precision protection
Recent technological developments allowed envisioning sensor devices with distributed ambient sensory network, which could be a potential technology for monitoring various natural phenomena (weather parameters, soil moisture, etc.) at micro level. As days more and more agricultural data are virtually being harvested along with the crops and are being collected/stored in databases, the same data can be used in productive decision making if appropriate data mining techniques are developed/applied. An experiment was conducted with four consecutive (Kharif and Rabi) agricultural seasons in a semi-arid region of India to understand the crop-weather-environment-pest/diseases relations using wireless sensory and field-level surveillance data on closely related and interdependent pest/disease dynamics of groundnut crop. Association rule mining and multivariate regression mining techniques/algorithms were designed/ developed/tailor-made to turn the data into useful information/ knowledge/relations/trends to know crop-weather-environment-pest/disease continuum. These findings have been used for development of prediction models (cumulative and non-cumulative) followed by a web based pest/disease decision support system, which will help the decision makers to take viable ameliorative measures.
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