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作物学报 ›› 2006, Vol. 32 ›› Issue (10): 1458-1465.

• 研究论文 • 上一篇    下一篇

江淮平原小麦渍害预警系统(WWWS)

金之庆;石春林   

  1. 江苏省农业科学院农业资源与环境研究所, 江苏南京 210014
  • 收稿日期:2005-10-09 修回日期:1900-01-01 出版日期:2006-10-12 网络出版日期:2006-10-12
  • 通讯作者: 金之庆

An Early Warning System to Predict Waterlogging Injuries for Winter Wheat in the Yangtze- Huai Plain (WWWS)

JIN Zhi-Qing,SHI Chun-Lin   

  1. Institute of Agricultural Resources and Environments, Jiangsu Academy of Agricultural Sciences, Nanjing 210014, Jiangsu, China
  • Received:2005-10-09 Revised:1900-01-01 Published:2006-10-12 Published online:2006-10-12
  • Contact: JIN Zhi-Qing

摘要:

针对江淮平原小麦生长期常见的渍害问题,对笔者等早先自主研制的小麦栽培模拟优化决策系统(WCSODS)加以精简与改造,即删去小麦栽培优化模型部分,增加渍害对小麦光合作用、干物质分配和叶片衰老等生理生态过程的影响模块,并结合土壤水分的计算,实现了渍害逆境下冬小麦生长与产量的模拟。在此基础上,围绕研制目标,就建立渍害警级预警指标、生成支持小麦生长模型(WMOD)运行的未来天气文件、调试与确定地区性参数,以及WMOD与区域性气候模式(RGCM)的结合等,论述了小麦渍害预报的实现途径。利用南京、南通地区近10年(1991—2000)的气候与产量资料,对建成的小麦渍害预警系统(WWWS)进行了可靠性检验,历史渍害的拟合率达到90%;还利用WWWS和RGCM的输出值对南京、南通、合肥3地区近3年(2002—2005)的渍害发生程度进行了试预报,取得了满意的结果。

关键词: 江淮平原, 冬小麦, 渍害, 模拟模型, 预警系统

Abstract:

Waterlogging is one of the most common meteorological injuries for winter wheat in the Yangtze-Huai Plain, China. Waterlogging not only reduces wheat root activity, photosynthesis and nutrient metabolism when it occurs during the critical growth stages, but also makes it easy for wheat to be damaged by weed, insects and diseases.
In recent 20 years, with global climate warming, the temperature during wheat growing season has significantly increased in the studied region, in company with reduction of sunshine duration. The combined effect has enhanced waterlogging and often results in reduction of wheat yield.
An early warning system to predict waterlogging injuries for winter wheat (WWWS) was established in this study, aiming at improving meteorological service for local wheat production.
The WWWS consists of two wheat models, i.e., models with and without waterlogging consideration. The latter was rebuilt based on the Wheat Cultivational Simulation, Optimization and Decision- Making System (WCSODS) developed by the authors, i.e., cutting off some optimization models and adding to the submodels of dry matter partitioning, root dry matter increase and leaf senescence in late period, as well as linking directly the LAI dynamics with dry matter production. The former was constructed by increasing several submodels to the wheat model without considering waterlogging, which described the effects of waterlogging on wheat photosynthesis, dry matter partitioning and leaf senescence, respectively. After running these two models under same meteorological condition, the yield difference (ΔY) simulated would give the degree of waterlogging for wheat, i.e., the lager the ΔY, the severer the waterlogging for wheat, and vice versa. In other words, ΔY serves as a criterion of the WWWS to predict if wheat waterlogging occurs or not.
The results of sensitivity analyses for the model considering waterlogging showed that wheat responded more slightly to waterlogging in early stage (tillering and elongation) than in late stage (booting and filling) and the yield loss percentage increased with increasing of waterlogging duration in days. These results are coincident with the knowledge of local wheat experts, indicting that the model with waterlogging consideration is rather reasonable.
The methodologies in development of the WWWS for early warning purpose were also discussed, including building soil moisture submodel to estimate the waterlogging coefficient (fSW), constructing the future weather database files during wheat growing period, regulating and determining the regional parameters of wheat model using the long-term yield data after deducting the part of yield increase due to scientific and technological progress, establishing the indices for warning waterlogging injuries and connection of the WWWS with the Regional Global Climate Change Model (RGCM) etc. Finally, the WWWS was validated using the historical data (1991–2000) both of climates and wheat yields in Nanjing and Nantong areas. The results showed a good prediction for water- logging injuries with 90% correctness. Testing forecasts were also made to predict wheat waterlogging injuries in recent 3 years (2002–2005) using the WWWS and RGCM output in Nanjing, Hefei and Nantong areas and the results showed that predictions in two years were correct and a supplement forecast also gave a correct prediction in another year.
In summary, the WWWS can be used as a useful tool to predict waterlogging injuries for winter wheat in the Yangtze-Huai Plain.

Key words: Yangtze-Huai Plain, Winter wheat, Waterlogging injury, Simulation model, Early warning system

中图分类号: 

  • S512
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