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作物发育模式重构及基于甘蔗的模拟检验

马玉平 王培娟 王达 俄有浩 李莉 孙琳丽 杨建莹 霍治国

马玉平, 王培娟, 王达, 等. 作物发育模式重构及基于甘蔗的模拟检验. 应用气象学报, 2021, 32(5): 603-617. DOI:  10.11898/1001-7313.20210508..
引用本文: 马玉平, 王培娟, 王达, 等. 作物发育模式重构及基于甘蔗的模拟检验. 应用气象学报, 2021, 32(5): 603-617. DOI:  10.11898/1001-7313.20210508.
Ma Yuping, Wang Peijuan, Wang Da, et al. Reconstruction of crop development model with its simulation test based on sugarcane. J Appl Meteor Sci, 2021, 32(5): 603-617. DOI:  10.11898/1001-7313.20210508.
Citation: Ma Yuping, Wang Peijuan, Wang Da, et al. Reconstruction of crop development model with its simulation test based on sugarcane. J Appl Meteor Sci, 2021, 32(5): 603-617. DOI:  10.11898/1001-7313.20210508.

作物发育模式重构及基于甘蔗的模拟检验

DOI: 10.11898/1001-7313.20210508
资助项目: 

国家重点研发计划 2019YFD1002203

中国气象科学研究院基本科研业务费专项 2020Z005

详细信息
    通信作者:

    霍治国, 邮箱: huozg@cma.gov.cn

Reconstruction of Crop Development Model with Its Simulation Test Based on Sugarcane

  • 摘要: 发育进程是作物的生理年龄,发育模式是作物生长模型的时间指针。但目前的发育模式只关注某时段(日)气象条件对作物发育的影响,其准确率也难以满足作物生长模拟的需求。根据作物发育速率不仅与气象条件有关、还与其所处发育期有关的理论假设,重构发育进程模式,并利用1980—2019年我国甘蔗发育实测数据进行模式适应性分析,比较传统模式与重构模式的模拟能力。结果表明:重构模式中,发育单位日序模式和温度日序模式对甘蔗发育进程的适应性均较好,尤其在后期温度不断降低的发育进程以及低温年型的模拟中,其适应能力明显优于传统模式。重构及传统模式模拟能力从强到弱依次为发育单位日序模式、温度日序模式、响应适应模式、发育单位模式、发育单位温度修正模式、热量单位模式,均方根误差计算的模拟能力值依次为4.3,3.9,3.7,3.3,3.0,2.8。
  • 图  1  新植蔗全样本发育实测数据对不同发育模式的回代模拟检验

    Fig. 1  Test of different development models based on the whole sample development data of new planted sugarcane

    图  2  发育模式参数值与站点所处纬度相关关系

    Fig. 2  Relationship between parameters of development model and latitude of the station

    图  3  发育模式对新植蔗回代模拟与实测值比较

    Fig. 3  Measurements and simulations of development models based on back training for new planted sugarcane

    图  4  发育模式对新植蔗独立样本模拟值与实测值比较

    Fig. 4  Measurements and simulations of development models based on independent samples for new planted sugarcane

    表  1  研究数据概况

    Table  1  Overview of research data

    作物 站点 所在省份 位置 海拔/m 数据时段
    新植蔗 乌拉特前旗 40.7°N,108.7°E 1022.0 1997—2002年
    新植蔗 临河 40.8°N,107.4°E 1040.8 1992—2002年
    新植蔗 平罗 38.9°N,106.6°E 1099.9 1993—1999年
    新植蔗 赤峰 42.3°N,119.0°E 568.0 1992—2002年
    新植蔗 耿马 23.6°N,99.4°E 1105.4 1993—2020年
    新植蔗 元江 23.4°N,102.0°E 397.6 1994—2020年
    新植蔗 泰和 26.8°N,114.9°E 61.8 1993—2003年
    新植蔗 广丰 28.4°N,118.2°E 96.1 1994—2009年
    新植蔗 仙游 25.4°N,118.7°E 77.0 1993—1997年
    新植蔗 宜山 24.5°N,108.7°E 149.8 2003—2009年
    新植蔗 沙塘 24.5°N,109.4°E 99.1 2003—2010年
    新植蔗 蒙山 24.2°N,110.5°E 147.0 1980—1994年
    新植蔗 平果 23.3°N,107.6°E 112.6 1990—2009年
    新植蔗 来宾 23.8°N,109.2°E 85.2 2003—2009年
    新植蔗 贵县 23.1°N,109.6°E 56.0 1989—2009年
    新植蔗 扶绥 22.6°N,107.9°E 88.9 2003—2012年
    新植蔗 徐闻 20.3°N,110.2°E 69.0 1992—2001年
    宿根蔗 米易 26.9°N,102.1°E 1105.8 1992—1998年
    宿根蔗 德宏州 24.4°N,98.6°E 914.7 1993—2009年
    宿根蔗 耿马 23.6°N,99.4°E 1105.4 2012—2020年
    宿根蔗 蒙自 23.4°N,103.4°E 1301.7 2010—2016年
    宿根蔗 吉安 27.1°N,115.0°E 78.0 2000—2009年
    宿根蔗 泰和 26.8°N,114.9°E 61.8 1992—2009年
    宿根蔗 仙游 25.4°N,118.7°E 77.0 1998—2009年
    宿根蔗 宜山 24.5°N,108.7°E 149.8 2002—2009年
    宿根蔗 沙塘 24.5°N,109.4°E 99.1 2002—2012年
    宿根蔗 蒙山 24.2°N,110.5°E 147.0 2002—2009年
    宿根蔗 漳浦 24.1°N,117.6°E 51.1 2002—2009年
    宿根蔗 平果 23.3°N,107.6°E 112.6 2002—2009年
    宿根蔗 贵县 23.1°N,109.6°E 56.0 1996—2009年
    下载: 导出CSV

    表  2  发育模式在部分站点针对新植蔗的参数率定值

    Table  2  Calibrated parameter of development models at some sites for new planted sugarcane

    站名 纬度 发育模式
    THU CHU CHUa CHUd/105 TAd/105
    乌拉特前旗 40.7°N 1825.6 2149.1 97.4 4.34 6.34
    临河 40.8°N 1741.3 2061.7 94.8 4.04 5.88
    平罗 38.9°N 1737.1 2143.9 108.3 4.38 6.43
    赤峰 42.3°N 1662.9 2043.3 99.7 4.22 6.13
    耿马 23.6°N 3034.5 3723.5 175.2 9.27 13.0
    元江 23.4°N 4569.2 4968.3 178.1 9.93 20.1
    泰和 26.8°N 3415.9 3898.3 157.6 8.29 11.9
    广丰 28.4°N 3190.2 3633.9 145.1 7.30 10.5
    仙游 25.4°N 3804.3 4319.8 175.5 9.04 12.8
    宜山 24.5°N 3584.3 3946.0 150.9 7.82 11.2
    沙塘 24.5°N 3894.0 4366.9 175.4 8.90 12.8
    蒙山 24.2°N 3584.3 4049.9 166.8 8.63 12.4
    平果 23.3°N 4114.0 4560.1 176.2 9.04 12.9
    来宾 23.8°N 3799.4 4149.1 155.4 8.34 11.9
    贵县 23.1°N 3918.3 4315.0 164.3 8.60 12.3
    扶绥 22.6°N 4242.6 4687.0 179.4 10.4 15.0
    徐闻 20.3°N 4888.2 5446.8 207.7 12.9 18.0
    下载: 导出CSV

    表  3  发育模式对新植蔗回代模拟误差

    Table  3  Back training simulation error of development model for new planted sugarcane

    发育阶段 模式 相关系数 平均偏差/d 平均误差/d 平均相对误差/d 均方根误差/d 样本量
    播种-出苗 THU 0.82 1.1 6.2 19.6 8.9 66
    CHU 0.83 0.8 6.0 18.7 8.6 66
    CHUa 0.82 1.3 6.3 19.2 8.9 66
    CHUd 0.83 1.6 6.2 20.5 9.1 66
    TAd 0.83 1.4 6.1 20.0 8.9 66
    RAM 0.84 -1.5 5.4 15.1 8.7 66
    出苗-茎伸长 THU 0.90 0.5 9.5 12.2 14.2 137
    CHU 0.88 0.5 10.3 13.1 14.9 137
    CHUa 0.84 0.6 12.7 16.1 17.3 137
    CHUd 0.91 0.9 8.9 11.2 13.5 137
    TAd 0.90 0.9 8.9 11.2 13.6 137
    RAM 0.86 -0.4 8.3 12.2 16.5 137
    茎伸长-成熟 THU 0.33 8.4 25.2 20.2 43.0 120
    CHU 0.73 1.6 15.5 11.4 23.0 120
    CHUa 0.86 0.1 12.0 8.3 16.5 120
    CHUd 0.86 0.3 11.8 8.5 16.6 120
    TAd 0.76 4.9 14.9 10.3 23.9 120
    RAM 0.55 -1.4 16.2 11.9 36.1 120
    下载: 导出CSV

    表  4  发育模式对新植蔗独立样本模拟误差

    Table  4  Development model simulation errors based on independent samples for new planted sugarcane

    发育阶段 模式 相关系数 平均偏差/d 平均误差/d 平均相对误差/d 均方根误差/d 样本量
    播种-出苗 THU 0.83 2.6 6.6 31.5 9.1 24
    CHU 0.82 2.5 6.5 31.2 9.2 24
    CHUa 0.81 3.3 6.6 32.2 9.6 24
    CHUd 0.81 3.0 6.9 31.7 10.1 24
    TAd 0.81 3.0 6.9 32.0 9.9 24
    RAM 0.81 1.4 6.2 29.1 9.1 24
    出苗-茎伸长 THU 0.92 0.9 9.1 11.8 12.4 52
    CHU 0.92 1.0 9.6 12.3 12.7 52
    CHUa 0.87 1.5 11.5 14.6 15.3 52
    CHUd 0.93 3.6 8.9 11.8 12.9 52
    TAd 0.92 3.1 8.9 11.8 12.9 52
    RAM 0.73 2.7 13.0 20.3 23.2 52
    茎伸长-成熟 THU 0.58 5.0 22.9 15.1 35.0 46
    CHU 0.67 5.2 18.2 12.2 27.5 46
    CHUa 0.85 6.3 12.6 8.8 17.3 46
    CHUd 0.86 6.2 12.4 8.5 17.2 46
    TAd 0.71 14.0 19.8 13.7 32.8 46
    RAM 0.21 12.2 29.1 24.0 70.1 46
    下载: 导出CSV

    表  5  发育模式在不同检验中的模拟能力

    Table  5  Simulation ability of development models in different tests

    发育阶段 模式 新植蔗 宿根蔗 SCV
    全样本 参数率定 独立样本 全样本 参数率定 独立样本
    播种-出苗 THU 2 4 6 4.0
    CHU 5 6 4 5.0
    CHUa 1 3 3 2.3
    CHUd 3 1 1 1.7
    TAd 4 2 2 2.7
    RAM 6 5 5 5.3
    出苗/发株-茎伸长 THU 3 4 6 3 3 4 3.8
    CHU 2 3 5 2 2 3 2.8
    CHUa 1 1 2 1 1 1 1.2
    CHUd 5 6 4 4 5 6 5.0
    TAd 4 5 3 5 4 5 4.3
    RAM 6 2 1 6 6 2 3.8
    茎伸长-成熟 THU 1 1 2 2 1 1 1.3
    CHU 2 4 4 3 2 2 2.8
    CHUa 5 6 5 6 5 4 5.2
    CHUd 6 5 6 4 3 5 4.8
    TAd 4 3 3 5 4 6 4.2
    RAM 3 2 1 1 6 3 2.7
    下载: 导出CSV
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  • 收稿日期:  2021-03-20
  • 修回日期:  2021-06-09
  • 刊出日期:  2021-09-30

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