利用气候因子估算巴西甘蔗产区的气温

Q4 Earth and Planetary Sciences
P. A. Lorençone, L. E. D. O. Aparecido, J. A. Lorençone, G. Torsoni, Rafael Fausto Lima
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引用次数: 1

摘要

本研究旨在估计巴西甘蔗产区的最低和最高月气温。来自NASA/POWER平台的30年最高(Tmax)和最低(Tmin)气温历史序列(1988-2018)用于巴西62个甘蔗产地。采用多元线性回归进行数据建模,因变量为Tmin和Tmax,自变量为纬度、经度和海拔。采用统计指标MAPE(精度)和调整后的决定系数R2adj(精度)将估计模型与实际数据进行比较。2月、3月和1月,各模式的最低MAPE值主要出现在北方地区。东南地区1、2、3月的最高气温预报模式最为准确。MAPE和R2adj值在模型中对最高和最低温度的估计均显示出准确性和精密度,表明该方程可用于甘蔗产区的温度估计。东南地区7月份的Tmin估算模型效果最好,MAPE值为1.28,R2adj值为0.94。北方地区9月份的Tmax模型精度和准确度较高,分别为1.28和0.96。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Air Temperature Using Climate Factors in Brazilian Sugarcane Regions
Abstract This study aimed to estimate the minimum and maximum monthly air temperatures in the sugarcane regions of Brazil. A 30-year historical series (1988-2018) of maximum (Tmax) and minimum (Tmin) air temperatures from the NASA/POWER platform was used for 62 locations that produce sugarcane in Brazil. Multiple linear regression was used for data modeling, in which the dependent variables were Tmin and Tmax and the independent variables were latitude, longitude, and altitude. The comparison between estimation models and the real data was performed using the statistical indices MAPE (accuracy) and adjusted coefficient of determination (R2adj) (precision). The lowest MAPE values of the models for estimating the minimum air temperature occurred mainly in the North during February, March, and January. Also, the most accurate models for estimating the maximum air temperature occurred in the Southeast region during January, February, and March. The MAPE and R2adj values showed accuracy and precision in the models for estimating both the maximum and minimum temperatures, indicating that the equations can be used to estimate temperatures in sugarcane areas. The Tmin estimation model for the Southeast region in July shows the best performance, with a MAPE value of 1.28 and an R2adj of 0.94. The Tmax model of the North region for September presents higher precision and accuracy, with values of 1.28 and 0.96, respectively.
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来源期刊
Revista Brasileira de Meteorologia
Revista Brasileira de Meteorologia Earth and Planetary Sciences-Atmospheric Science
CiteScore
1.70
自引率
0.00%
发文量
26
审稿时长
16 weeks
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