The review of dynamic monitoring technology for crop growth

In this paper, crop growth monitoring methods are described elaborately. The crop growth models, Netherlands-Wageningen model system, the United States-GOSSYM model and CERES models, Australia APSIM model and CCSODS model system in China, are introduced here more focus on the theories of mechanism, applications, etc. The methods and application of remote sensing monitoring methods, which based on leaf area index (LAI) and biomass were proposed by different scholars at home and abroad, are highly stressed in the paper. The monitoring methods of remote sensing coupling with crop growth models are talked out at large, including the method of "forced law" which using remote sensing retrieval state parameters as the crop growth model parameters input, and then to enhance the dynamic simulation accuracy of crop growth model and the method of "assimilation of Law" which by reducing the gap difference between the value of remote sensing retrieval and the simulated values of crop growth model and thus to estimate the initial value or parameter values to increasing the simulation accuracy. At last, the developing trend of monitoring methods are proposed based on the advantages and shortcomings in previous studies, it is assured that the combination of remote sensing with moderate resolution data of FY-3A, MODIS, etc., crop growth model, "3S" system and observation in situ are the main methods in refinement of dynamic monitoring and quantitative assessment techniques for crop growth in future.

[1]  A. Skidmore,et al.  Discriminating tropical grass (Cenchrus ciliaris) canopies grown under different nitrogen treatments using spectroradiometry , 2003 .

[2]  Jason A. Cole,et al.  Hyperspectral Remote Sensing and Its Applications , 2005 .

[3]  Gregory J. Carbone,et al.  Application of remote sensing and GIS technologies with physiological crop models , 1996 .

[4]  Graeme L. Hammer,et al.  APSIM: a novel software system for model development, model testing and simulation in agricultural systems research , 1996 .

[5]  Cao Weixing,et al.  RELATIONSHIP BETWEEN SPECTRAL VEGETATION INDICES AND LAI IN RICE , 2004 .

[6]  Stephan J. Maas,et al.  Using Satellite Data to Improve Model Estimates of Crop Yield , 1988 .

[7]  A. Schapendonk,et al.  Evaluation of breeding strategies for drought tolerance in potato by means of crop growth simulation , 1990, Plant and Soil.

[8]  L. Dente,et al.  Assimilation of leaf area index derived from ASAR and MERIS data into CERES - wheat model to map wheat yield , 2008 .

[9]  Yuan Wang,et al.  The models for estimation of dry biomass from different components of rapeseed using canopy spectral data , 2004 .

[10]  José Luis Araus,et al.  Relationship between Growth Traits and Spectral Vegetation Indices in Durum Wheat , 2002 .

[11]  Mark Cutler,et al.  Estimating Canopy Chlorophyll Concentration from Field and Airborne Spectra , 1999 .

[12]  Wang Xiu,et al.  Study on Hyperspectral Remote Sensing Estimation Models for the Ground Fresh Biomass of Rice , 2003 .

[13]  Stephan J. Maas,et al.  Use of remotely-sensed information in agricultural crop growth models , 1988 .

[14]  Cao Lian-pu,et al.  Models for estimating cotton aboveground fresh biomass using hyperspectral data , 2007 .

[15]  C. Jordan Derivation of leaf-area index from quality of light on the forest floor , 1969 .

[16]  J. R. Kiniry,et al.  CERES-Maize: a simulation model of maize growth and development , 1986 .

[17]  John H. Prueger,et al.  Application of MODIS-derived parameters for regional yield assessment , 2002, SPIE Remote Sensing.

[18]  H. van Keulen,et al.  The 'School of de Wit' crop growth simulation models: a pedigree and historical overview. , 1996 .

[19]  H. Berge,et al.  Simulation of Ecophysiological Processes of Growth in Several Annual Crops , 1989 .

[20]  J. R. Ritchie,et al.  Description and performance of CERES-Wheat: a user-oriented wheat yield model , 1985 .

[21]  Liangzhi Gao,et al.  Rice clock model―a computer model to simulate rice development , 1992 .

[22]  C. T. Wit,et al.  Simulation of assimilation, respiration, and transpiration of crops , 1978 .

[23]  James W. Jones,et al.  Modeling Soybean Growth for Crop Management , 1983 .

[24]  John R. Miller,et al.  Quantitative characterization of the vegetation red edge reflectance 1. An inverted-Gaussian reflectance model , 1990 .

[25]  M. Guérif,et al.  Calibration of the SUCROS emergence and early growth module for sugar beet using optical remote sensing data assimilation , 1998 .

[26]  James W. Jones,et al.  Modeling Growth, Development, and Yield of Grain Legumes using Soygro, Pnutgro, and Beangro: A Review , 1992 .

[27]  C. T. Wit Photosynthesis of leaf canopies , 1965 .

[28]  A. Gitelson,et al.  Novel algorithms for remote estimation of vegetation fraction , 2002 .

[29]  J. Schjoerring,et al.  Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression , 2003 .

[30]  G. Uehara,et al.  Overview of IBSNAT , 1998 .

[31]  Joe T. Ritchie,et al.  Model for predicting evaporation from a row crop with incomplete cover , 1972 .

[32]  James W. Jones,et al.  BEANGRO: a process-oriented dry bean model with a versatile user interface , 1994 .

[33]  J. Clevers,et al.  Combined use of optical and microwave remote sensing data for crop growth monitoring , 1996 .

[34]  Zhao Yan-xia,et al.  Study on Combinations of Remote Sensing and Cotton Model to Retrieve Initial Inputs and Parameters , 2005 .

[35]  S. Dutta,et al.  Study of crop growth parameters using Airborne Imaging Spectrometer data , 2001 .

[36]  F.W.T. Penning de Vries,et al.  Simulation of growth processes and the model BACROS , 1982 .

[37]  Jan G. P. W. Clevers,et al.  A simplified approach for yield prediction of sugar beet based on optical remote sensing data , 1997 .

[38]  L. D. Miller,et al.  Remote mapping of standing crop biomass for estimation of the productivity of the shortgrass prairie, Pawnee National Grasslands, Colorado , 1972 .

[39]  A. J. Richardsons,et al.  DISTINGUISHING VEGETATION FROM SOIL BACKGROUND INFORMATION , 1977 .

[40]  F.W.T. Penning de Vries,et al.  The simulation of photosynthetic systems , 1970 .

[41]  H. van Keulen,et al.  A summary model for crop growth , 1982 .

[42]  Wang Ke Study on the correlation between biophysical parameter and spectral variable , 2002 .