A combination model based on a neural network autoregression and Bayesian network to forecast for avoiding brown plant hopper

Duy Vu
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引用次数: 2

Abstract

In this paper, we propose a new approach that is to combine a model of time series with Bayesian networks to create a new forecasting model to predict the occurrence of harmful pests of rice. Ability of forecast system knows when immigrant brown plant hopper (BPH) peaks to make a calendar of sowing rice to avoid them. This is indeed helpful for experts as well as farmers to sow rice of seeds actively and simultaneously on a large scale for each new rice crop. Using knowledge of experts and processing historical data combined with data at present time are able to create more highly accurate forecasts than just relying on historical data. This model is a decision support system for experts in the Plant protection centre of the South of Vietnam to guide farmers to sow cultivation in a specific area, pilot for 22 Southern provinces.
本文提出了一种新的方法,即将时间序列模型与贝叶斯网络相结合,建立一个新的预测模型来预测水稻有害害虫的发生。预报系统能够准确预测褐飞虱的发生高峰,并制定播稻日历以避免褐飞虱的发生。这确实有助于专家和农民积极地同时大规模地为每一种新的水稻作物播种水稻种子。利用专家的知识和处理历史数据与当前数据相结合,能够比仅仅依靠历史数据做出更准确的预测。该模型是越南南部植物保护中心专家的决策支持系统,用于指导农民在特定地区播种种植,在南部22个省份进行试点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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