[Prediction of winter wheat yield based on crop biomass estimation at regional scale].

Jian-Qiang Ren, Xing-Ren Liu, Zhong-Xin Chen, Qing-Bo Zhou, Hua-Jun Tang
Author Information
  1. Jian-Qiang Ren: Key Laboratory of Resources Remote Sensing & Digital Agriculture, Ministry of Agriculture, Beijing 100081, China. hebjqren1975@126.com

Abstract

Based on the 2004 in situ data of crop yield, remote sensing inversed photosynthetically active radiation (PAR), fraction of photosynthetically active radiation (f(PAR)), climate, and soil moisture in 83 typical winter wheat sampling field of 45 counties in Shijiazhuang, Hengshui, and Xingtai of Hebei Province, a simplified model for calculating the light use efficiency (epsilon) of winter wheat in Huanghuaihai Plain was established. According to the crop accumulated biomass from March to May and corrected by harvest index, the quantitative relationship between crop biomass and crop yield for winter wheat was set up, and applied in the 235 counties in Huanghuaihai Plain region of Hebei Province and Shandong Province and validated by the official crop statistical data at county level in 2004. The results showed that the root mean square error (RMSE) of predicted winter wheat yield in study area was 238.5 kg x hm(-2), and the relative error was 4.28%, suggesting that it was feasible to predict winter wheat yield by crop biomass estimation based on remote sensing data.

MeSH Term

Biomass
Forecasting
Models, Theoretical
Photosynthesis
Seasons
Triticum
Weather

Word Cloud

Created with Highcharts 10.0.0cropwinterwheatyieldbiomassdataProvince2004remotesensingphotosyntheticallyactiveradiationPARcountiesHebeiHuanghuaihaiPlainerrorestimationbasedBasedsituinversedfractionfclimatesoilmoisture83typicalsamplingfield45ShijiazhuangHengshuiXingtaisimplifiedmodelcalculatinglightuseefficiencyepsilonestablishedAccordingaccumulatedMarchMaycorrectedharvestindexquantitativerelationshipsetapplied235regionShandongvalidatedofficialstatisticalcountylevelresultsshowedrootmeansquareRMSEpredictedstudyarea2385kgxhm-2relative428%suggestingfeasiblepredict[Predictionregionalscale]

Similar Articles

Cited By