非线性三次回归在水稻产量预测中的应用

Retno Tri Vulandari, Hendro Wijayanto, Afan Lathofy
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引用次数: 1

摘要

沃诺里摄政的水稻产量有所波动。这一事件发生在2016-2018年。因此,需要进行预测,以了解下一年的水稻产量是增加还是减少。本研究的目的是应用三度多项式非线性回归方法预测水稻产量。本研究采用统一建模语言(UML)作为系统设计,黑盒测试作为功能测试,MSE测试作为有效性测试。计算数据为2016-2018年数据。结果表明,利用收获面积模型对2017-2019年进行预测,计算结果更为准确。收获面积模型人工计算和应用计算的MSE值相同,分别为2017年的405433、1349、2018年的312677、7798和2019年的171183.6347。多项式非线性三次回归是预测水稻产量的一种方法。应用程序的输出是水稻产量的预测信息
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The Application of Non-linear Cubic Regression in Rice Yield Predictions
The rice yields have fluctuated in Wonogiri Regency. This occasion happened in 2016-2018. Therefore, a prediction is needed to know whether rice yields will increase or decrease in the following year. The purpose of this study was to apply the polynomial non-linear regression method of third-degree in predicting rice yields. This study utilized the Unified Modeling Language (UML) as the system design, black-box testing as the functional testing, and MSE testing as the validity testing. The computed data was data of 2016-2018. The results showed that the prediction of 2017-2019 using the harvested area model produced more accurate calculations. The harvested area model produced the same MSE value in manual and application calculations, which were 405433,1349 in 2017, 312677,7798 in 2018, and 171183.6347 in 2019. The polynomial non-linear cubic regression is a solution to predict rice yields. The output of the application is the prediction information for rice yields
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