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The Classic Swine Fever Morbidity Forecasting Research Based on Combined Model

机译:基于组合模型的经典猪瘟发病率预测研究

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This paper proposes the combined forecasting model which study on the classic swine fever (CSF) morbidity, using the forecasting results of ARIMA and GM (1, 1) model as the inputs of the majorizing BP neural network. Analyzing the monthly data from 2000 to 2009 and the accuracy of the forecasting results is 97.379%, more accurate and more steady than traditional methods. This research provides efficient Analytical tools for animals' diseases forecasting work, and can provide reference to other animal diseases.
机译:本文以ARIMA和GM(1,1)模型的预测结果作为主要BP神经网络的输入,提出了一种研究经典猪瘟(CSF)发病率的组合预测模型。对2000年至2009年的月度数据进行分析,预测结果的准确性为97.379%,比传统方法更准确,更稳定。这项研究为动物疾病的预测工作提供了有效的分析工具,并可以为其他动物疾病提供参考。

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