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Research on Dynamic Forecast of Flowering Period Based on Multivariable LSTM and Ensemble Learning Classification Task

机译:基于多变量LSTM和集合学习分类任务的开花时期动态预测研究

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The flowering forecast provides recommendations for orchard cleaning, pest control, field management and fertilization, which can help increase tree vigor and resistance. Flowering forecast is not only an important part of the construction of agro-meteorological index system, but also an important part of the meteorological service system. In this paper, by analyzing local meteorological data and phenological data of “Red Fuji” apples in Fen County, Linfen City, Shanxi Province, with the help of machine learning and neural networks, we proposed a method based on the combination of time series forecasting and classification forecasting is proposed to complete the dynamic forecasting model of local flowering in Ji County. Then, we evaluated the effectiveness of the model based on the number of error days and the number of days in advance. The implementation shows that the proposed multivariable LSTM network has a good effect on the prediction of meteorological factors. The model loss is less than 0.2. In the two-category task of flowering judgment, the idea of combining strategies in ensemble learning improves the effect of flowering judgment, and its AUC value increases from 0.81 and 0.80 of single model RF and AdaBoost to 0.82. The proposed model has high applicability and accuracy for flowering forecast. At the same time, the model solves the problem of rounding decimals in the prediction of flowering dates by the regression method.
机译:开花预测为果园清洁,害虫控制,现场管理和施肥提供了建议,这有助于提高树木活力和抵抗力。开花预测不仅是农业气象指标体系建设的重要组成部分,也是气象服务体系的重要组成部分。本文通过分析山西省临汾市汾县“红色富士”苹果的局部气象数据和鉴效数据,借助机器学习和神经网络,我们提出了一种基于时间序列预测的方法的方法提出了分类预测,以完成济县当地开花的动态预测模型。然后,我们根据错误天数和提前天数评估模型的有效性。实施表明,所提出的多变量LSTM网络对气象因素的预测具有良好的影响。模型损耗小于0.2。在开花判断的两类任务中,集合学习中的策略结合的思想提高了开花判断的影响,其AUC值从0.81和0.80增加了单一模型RF和Adaboost 0.82的0.81。拟议的模型具有高适用性和开花预测的准确性。同时,模型通过回归方法解决了在开花日期预测中的舍入小数的问题。

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