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Estimation of Weights in Growth Stages of Onions Using Statistical Regression Models and Deep Learning Algorithm

机译:使用统计回归模型和深度学习算法估算洋葱生长阶段的重量

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Generally, the problem of predicting yields of onions grown in a year is of utmost concern to both the farmers who grow vegetables and the government departments that manage them. In this study, we first considered five environmental variables, Mean Wind Speed (MWS), Mean Temperature (MT), Mean Ground Temperature (MGT), Mean Humidity (MH), Daily Sunshine (DS) and Daily Rainfall (DR), which have high influence on onion weight at different stages of growth. Second, we use the partial least square (PLS) regression, support vector machine (SVM) regression, multilayer perceptron (MLP) network as statistical prediction model and LSTM network as deep learning algorithm in order to predict the weight of onion using the collected data. Third, we conducted an experiment to investigate the performance of four prediction models for its weight and the influence of six environmental variables on onion growth. Finally, from the experimental results, we first note that the optimal cultivation strategy to increase onion growth is to lower the MWS, MGT and DR below a certain level and at the same time increase the MT, MS and DS values above a certain level. Secondly, we note that for raw data, the weight of onions is not well predicted at the stages of growth by four prediction methods, but for log transform data, it is well predicted during the growth stages. Thirdly, we can also see that the SVMR method is slightly more predictive than the other three methods, PLS, MLP, and LSTM for both raw data and transformation data.
机译:一般来说,预测在一年中生长的洋葱产量的问题最为关注,这些农民种植蔬菜和管理它们的政府部门。在这项研究中,我们首先考虑了五种环境变量,平均风速(MWS),平均温度(MT),平均接地温度(MH),平均湿度(MH),日常阳光(DS)和每日降雨(DR),哪些对不同生长阶段的洋葱重量影响很高。其次,我们使用部分最小二乘(PLS)回归,支持向量机(SVM)回归,多层Perceptron(MLP)网络作为统计预测模型和LSTM网络作为深度学习算法,以预测使用收集的数据的洋葱的重量。第三,我们进行了实验,以研究四种预测模型的重量和六种环境变量对洋葱生长的影响的性能。最后,从实验结果中,我们首先要注意增加洋葱生长的最佳培养策略是降低MWS,MWT和DR低于一定程度,同时增加MT,MS和DS值高于一定水平。其次,我们注意到,对于原始数据,洋葱的重量在增长的阶段不受四种预测方法预测,而是对于日志变换数据,在生长阶段期间预测得很好。第三,我们还可以看出,对于原始数据和转换数据,SVMR方法比其他三种方法,PLS,MLP和LSTM略微预测。

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