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Local-scale spatial modelling for interpolating climatic temperature variables to predict agricultural plant suitability

机译:用于对气候温度变量进行插值以预测农业植物适宜性的局部尺度空间模型

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Assessment of local spatial climatic variability is important in the planning of planting locations for horticultural crops. This study investigated three regression-based calibration methods (i.e. traditional versus two optimized methods) to relate short-term 12-month data series from 170 temperature loggers and 4 weather station sites with data series from nearby long-term Australian Bureau of Meteorology climate stations. The techniques trialled to interpolate climatic temperature variables, such as frost risk, growing degree days (GDDs) and chill hours, were regression kriging (RK), regression trees (RTs) and random forests (RFs). All three calibration methods produced accurate results, with the RK-based calibration method delivering the most accurate validation measures: coefficients of determination (R-2) of 0.92, 0.97 and 0.95 and root-mean-square errors of 1.30, 0.80 and 1.31 degrees C, for daily minimum, daily maximum and hourly temperatures, respectively. Compared with the traditional method of calibration using direct linear regression between short-term and long-term stations, the RK-based calibration method improved R-2 and reduced root-mean-square error (RMSE) by at least 5 % and 0.47 degrees C for daily minimum temperature, 1 % and 0.23 degrees C for daily maximum temperature and 3 % and 0.33 degrees C for hourly temperature. Spatial modelling indicated insignificant differences between the interpolation methods, with the RK technique tending to be the slightly better method due to the high degree of spatial autocorrelation between logger sites.
机译:在规划园艺作物种植地点时,评估当地空间气候变异性很重要。这项研究调查了三种基于回归的校准方法(即传统方法与两种优化方法),以将来自170个温度记录器和4个气象站站点的短期12个月数据序列与附近的澳大利亚气象局长期气候站的数据序列相关联。用来插值气候温度变量(例如霜冻风险,生长度天数(GDDs)和寒冷时间)的试验技术是回归克里金法(RK),回归树(RTs)和随机森林(RFs)。三种校准方法均能产生准确的结果,基于RK的校准方法可提供最准确的验证措施:测定系数(R-2)为0.92、0.97和0.95,均方根误差为1.30、0.80和1.31度C,分别表示每日最低温度,每日最高温度和每小时温度。与在短期和长期站点之间使用直接线性回归的传统校准方法相比,基于RK的校准方法改进了R-2并减少了5%和0.47度的均方根误差(RMSE)每日最低温度为0摄氏度,每日最高温度为1%和0.23摄氏度,每小时温度为3%和0.33摄氏度。空间建模表明插值方法之间的差异不明显,由于记录器站点之间的空间自相关度很高,因此RK技术趋于略好一些。

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  • 来源
    《Theoretical and applied climatology 》 |2016年第4期| 1145-1165| 共21页
  • 作者单位

    Dept Primary Ind Pk Water & Environm, 167 Westbury Rd, Prospect, Tas 7250, Australia|Univ Sydney, Fac Agr & Environm, Eveleigh, NSW, Australia;

    Charles Sturt Univ, Sch Environm Sci, Albury, NSW, Australia|Charles Sturt Univ, Natl Wine & Grape Ind Ctr, Wagga Wagga, NSW, Australia;

    Dept Primary Ind Pk Water & Environm, 167 Westbury Rd, Prospect, Tas 7250, Australia|Univ Sydney, Fac Agr & Environm, Eveleigh, NSW, Australia;

    Univ Sydney, Fac Agr & Environm, Eveleigh, NSW, Australia;

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