基于气候变量和支持向量回归的大麦产量预测精度评价

L. Parviz
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引用次数: 4

摘要

研究作物产量与气候变量之间的关系对农业研究和与作物监测有关的决策至关重要。采用多元线性回归(MLR)和支持向量回归(SVR)对气候变量对大麦产量的影响进行识别和建模。36年(1982-2017)的气候变量来自伊朗三个不同气候的省份:亚兹德(干旱)、赞詹(半干旱)、吉兰(非常湿润)。引入与大麦产量具有高相关系数的气温作为优势气候变量。根据评价标准,SVR比MLR更能准确估计作物产量。从吉兰到亚兹德省,气候多样性影响了作物产量的估算,其UI值为47.77%。利用支持向量机(SVM)捕捉时间序列的非线性特征,可以提高大麦产量的估计精度,对Yazd省的预测精度最小。此外,吉兰省的观测产量与模拟产量之间的相关系数最小。基于GMER计算,SVM预测在三个省份被低估。结果表明,支持向量机能够高效地模拟气候对作物产量的影响。
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Assessing accuracy of barley yield forecasting with integration of climate variables and support vector regression
Investigations of the relation between crop yield and climate variables are crucial for agricultural studies and decision making related to crop monitoring. Multiple linear regression (MLR) and support vector regression (SVR) are used to identify and model the impact of climate variables on barley yield. The climate variables of 36 years (1982–2017) are gathered from three provinces of Iran with different climate: Yazd (arid), Zanjan (semi-arid), Gilan (very humid). Air temperature by high correlation coefficient with barley yield was introduced as the dominant climate variable. According to evaluation criteria, SVR provided accurate estimation of crop yield in comparison with MLR. The diversity of climate impressed the estimated yield in which UI, decreasing from Gilan to Yazd provinces, was 47.77%. Support vector machine (SVM) with capturing the nonlinearity of time series, could improve barley yield estimation, with the minimum UI for Yazd province. Also, the minimum correlation coefficient between the observed and simulated yield was found in Gilan province. Based on GMER calculations, SVM forecasts were underestimated in three provinces. All findings show that SVM is able to have high efficiency to model the climate effect on crop yield.
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