[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
research-article

Monitoring maize growth conditions by training a BP neural network with remotely sensed vegetation temperature condition index and leaf area index

Published: 01 May 2019 Publication History

Highlights

VTCI is a near real-time indicator for drought monitoring and highly related to crop growth conditions.
BP ANN model as useful tool to integrate maize growing information of indicators at different stages.
VTCI and LAI values as input variables improves BP ANNs’ simulating accuracy.
The developed IMGMI is very reliable for estimating the regional maize growth conditions.

Abstract

Crop water stress and vegetation status are critical parameters and should be proposed as input variables of an integrated model for crop productivity and yield estimation. In this study, to improve the monitoring of the regional maize growth conditions in the North China Plain, PR China, the remotely sensed vegetation temperature condition index (VTCI) and leaf area index (LAI) at five growth stages of maize (the seeding, jointing, heading, milk and mature stages) during 2010–2015 were generated as inputs of three-layer back propagation (BP) artificial neural networks (ANNs) with different numbers of nodes in the hidden layer to estimate the crop growth. Among these BP ANN models, an architecture with 12 nodes in the hidden layer provided the best training (RMSE = 755.7 kg/ha, MSE = 0.023) and testing (RMSE = 644.3 kg/ha, MSE = 0.037) performance and was selected to simulate values of the integrated growth monitoring index of maize (IGMIM) and to map the regional maize growth conditions pixel by pixel in the North China Plain during 2010–2018. The spatiotemporal characteristics displayed by the maize growth maps based on the IGMIM showed that the best year was 2016, the worst year was 2015, and maize growth in different parts of the plain varied accordingly with variations in the meteorological conditions. Thus, the information reflected by the IGMIM was in good agreement with the actual results. To further validate the accuracy of the integrated index, the correlations between the values of the IGMIM and several growth-related variables, including the measured yield, planting density, plant height and relative soil humidity at the 0–10 cm layer, at thirteen meteorological stations from 2010 to 2012 were analyzed, and the results were meaningful and presented a significant linear relationship. Thus, the BP ANN-based model has the ability to integrate information reflected by multiple maize growth-related factors at each growth stage and provides a better quantification of the monitoring results of regional maize growth conditions.

References

[1]
D.J. Armaghani, M. Hasanipanah, A. Mahdiyar, M.Z.A. Majid, H.B. Amnieh, M.M.D. Tahir, Airblast prediction through a hybrid genetic algorithm-ANN model, Neural Comput. & Appl. 29 (2018) 619–629,.
[2]
A.A. Basma, N. Kallas, Modeling soil collapse by artificial neural networks, J. Geotech. Geoenviron. 22 (3) (2004) 427–438,.
[3]
Matt Buckland, Mark Collins, AI techniques for game programming, 2002, ISBN 1-931841-08-X.
[4]
L. Dente, G. Satalino, F. Mattia, M. Rinaldi, Assimilation of leaf area index derived from ASAR and MERIS data into CERES-Wheat model to map wheat yield, Remote Sens. Environ. 112 (2008) 1395–1407,.
[5]
J.C.D.M. Esquerdo, J. Zullo Junior, J.F.G. Antunes, Use of NDVI/AVHRR time-series profiles for soybean crop monitoring in Brazil, Int. J. Remote Sens. 32 (2011) 3711–3727,.
[6]
H. Fang, S. Liang, J. Townshend, R. Dickinson, Spatially and temporally continuous LAI data sets based on an integrated filtering method: Examples from North America, Remote Sens. Environ. 112 (1) (2008) 75–93,.
[7]
J.H. Garrett, Where and why artificial neural networks are applicable in civil engineering, J. Comput. Civil Eng. 8 (1994) 129–130,.
[8]
M. He, J.S. Kimball, M.P. Maneta, B.D. Maxwell, A. Moreno, S. Beguería, X. Wu, Regional crop gross primary productivity and yield estimation using fused landsat-MODIS data, Remote Sens. 10 (3) (2018) 372,.
[9]
J. Huang, L. Tian, S. Liang, H. Ma, I. Becker-Reshef, Y. Huang, W. Su, X. Zhang, D. Zhu, W. Wu, Improving winter wheat yield estimation by assimilation of the leaf area index from Landsat TM and MODIS data into the WOFOST model, Agric. Forest Meteorol. 204 (2015) 106–121,.
[10]
A. Huete, K. Didan, T. Miura, E.P. Rodriguez, X. Gao, L.G. Ferreira, Overview of the radiometric and biophysical performance of the MODIS vegetation indices, Remote Sens. Environ. 83 (2002) 195–213,.
[11]
A.V.M. Ines, N.N. Das, J.W. Hansen, E.G. Njoku, Assimilation of remotely sensed soil moisture and vegetation with a crop simulation model for maize yield prediction, Remote Sens. Environ. 138 (2013) 149–164,.
[12]
J. Khan, P. Wang, Y. Xie, L. Wang, L. Li, Mapping MODIS LST NDVI imagery for drought monitoring in Punjab Pakistan, IEEE Access 6 (1) (2018) 19898–19911,.
[13]
D.M. Johnson, A comprehensive assessment of the correlations between field crop yields and commonly used MODIS products, Int. J. Earth Observ. Geoinf. 52 (2016) 65–81,.
[14]
S. Khanal, J. Fulton, S. Shearer, An overview of current and potential applications of thermal remote sensing in precision agriculture, Comput. Electron. Agric. 139 (2017) 22–32,.
[15]
F.N. Kogan, Remote sensing of weather impacts on vegetation in non-homogeneous areas, Int. J. Remote Sens. 11 (8) (1990) 1405–1419,.
[16]
F.N. Kogan, Application of vegetation index and brightness temperature for drought detection, Adv. Space Res. 15 (1995) 91–100,.
[17]
M.J. Lambert, P.C.S. Traoré, X. Blaes, P. Baret, P. Defourny, Estimating smallholder crops production at village level from Sentinel-2 time series in Mali's cotton belt, Remote Sens. Environ. 216 (2018) 647–657,.
[18]
Y. Li, P. Wang, J. Liu, S. Zhang, L. Li, Evaluation of drought monitoring effects in the main growth and development stages of winter wheat using vegetation temperature condition index III, Agric. Res. Arid Areas 32 (2014) 218–222. (in Chinese with English abstract).
[19]
M.B. Mahamed, E. Sarobol, H. Tilahun, S. Kaewrueng, J. Verawudh, Effects of soil moisture depletion at different growth stages on yield and water use efficiency of bread wheat grown in semi-arid conditions in Ethiopia, Kasetsart J. Nat. Sci. 45 (2011) 201–208.
[20]
L.K. Mehra, C. Cowger, K. Gross, P.S. Ojiambo, Predicting pre-planting risk of stagonospora nodorum blotch in winter wheat using machine learning models, Front. Plant Sci. 7 (2016) 390–404.
[21]
Myneni, R., 2012. MODIS LAI/FPAR product user’s guide. Retrieved January 12 2016 from https://lpdaac.usgs.gov/sites/default/files/public/modis/docs/MODIS-LAI-FPAR-User-Guide.pdf.
[22]
Y. Pan, L. Li, J. Zhang, S. Liang, X. Zhu, D. Sulla-Menashe, Winter wheat area estimation from MODIS-EVI time series data using the crop proportion phenology index, Remote Sens. Environ. 119 (2012) 232–242,.
[23]
N.R. Patel, B.R. Parida, V. Venus, S.K. Saha, V.K. Dadhwal, Analysis of agricultural drought using vegetation temperature condition index (VTCI) from Terra/MODIS satellite data, Environ. Monit. Assess. 184 (2012) 7153–7163,.
[24]
J. Peng, A. Loew, S. Zhang, J. Wang, J. Niesel, Spatial downscaling of satellite soil moisture data using a vegetation temperature condition index, IEEE Trans. Geosci. Remote Sens. 54 (2016) 558–566,.
[25]
J. Ren, Z. Chen, Q. Zhou, H. Tang, Regional yield estimation for winter wheat with MODIS-NDVI data in Shandong, China, Int. J. Appl. Earth Observ. Geoinf. 10 (2008) 403–413,.
[26]
D.E. Rumelhart, G.E. Hinton, R.J. Williams, Learning representations by back-propagating errors, Nature 323 (6088) (1986) 533–536,.
[27]
T. Sakamoto, A.A. Gitelson, T.J. Arkebauer, MODIS-based corn grain yield estimation model incorporating crop phenology information, Remote Sens. Environ. 131 (2013) 215–231,.
[28]
V.K. Singh, B.P. Singh, O. Kisi, D.P. Kushwaha, Spatial and multi-depth temporal soil temperature assessment by assimilating satellite imagery, artificial intelligence and regression based models in arid area, Comput. Electron. Agric. 150 (2018) 205–219,.
[29]
W. Sun, P. Wang, S. Zhang, D. Zhu, J. Liu, J. Chen, H. Yang, Using the vegetation temperature condition index for time series drought occurrence monitoring in the Guanzhong Plain, PR China, Int. J. Remote Sens. 29 (2008) 5133–5144,.
[30]
M. Tian, P. Wang, J. Khan, Drought forecasting with vegetation temperature condition index using ARIMA models in the Guanzhong Plain, Remote Sens. 8 (2016) 690,.
[31]
Z. Wan, P. Wang, X. Li, Using MODIS Land surface temperature and normalized difference vegetation index products for monitoring drought in the southern Great Plains, USA, Int. J. Remote Sens. 25 (2004) 61–72,.
[32]
L. Wang, P. Wang, L. Li, L. Xun, Q. Kong, S. Liang, Developing an integrated indicator for monitoring maize growth condition using remotely sensed vegetation temperature condition index and leaf area index, Comput. Electron. Agric. 152 (2018) 340–349,.
[33]
P. Wang, Y. Zhou, Z. Huo, L. Han, J. Qiu, Y. Tan, D. Liu, Monitoring growth condition of spring maize in Northeast China using a process-based model, Int. J. Appl. Earth Observ. Geoinf. 66 (2018) 27–36,.
[34]
P. Wang, J. Gong, X. Li, Vegetation temperature condition index and its application for drought monitoring, Geomat. Inform. Sci. Wuhan Univ. 26 (5) (2001) 412–418. (in Chinese with English abstract).
[35]
B. Wu, J. Meng, Q. Li, N. Yan, X. Du, M. Zhang, Remote sensing-based global crop monitoring: experiences with China’s CropWatch system, Int. J. Digit. Earth 7 (2014) 113–137,.
[36]
Z. Xiao, S. Liang, J. Wang, P. Chen, X. Yin, L. Zhang, J. Song, Use of general regression neural networks for generating the GLASS leaf area index product from time series MODIS surface reflectance, IEEE Trans. Geosci. Remote Sens. 52 (1) (2014) 209–223,.
[37]
Y. Xie, P. Wang, X. Bai, J. Khan, S. Zhang, L. Li, L. Wang, Assimilation of the leaf area index and vegetation temperature condition index for winter wheat yield estimation using Landsat imagery and the CERES-Wheat model, Agr. Forest Meteorol. 246 (2017) 194–206,.
[38]
J. Xiong, B. Wu, N. Yan, Y. Zeng, S. Liu, Estimation and validation of land surface evaporation using remote sensing and meteorological data in north China, IEEE J-STARS. 3 (3) (2010) 337–344,.
[39]
P. Yang, R. Shibasaki, W. Wu, Q. Zhou, Z. Chen, Y. Zha, Y. Shi, H. Tang, Evaluation of MODIS land cover and LAI products in cropland of North China plain using in situ measurements and Landsat TM images, IEEE Trans. Geosci. Remote Sens. 45 (10) (2007) 3087–3097,.
[40]
J. Yi, Q. Wang, D. Zhao, J.T. Wen, BP neural network prediction-based variable-period sampling approach for networked control systems, Appl. Math. Comput. 185 (2) (2007) 976–988,.
[41]
X. Zhang, Q. Zhang, Monitoring interannual variation in global crop yield using long-term AVHRR and MODIS observations, ISPRS J. Photogramm. 114 (2016) 191–205,.
[42]
Y. Zhang, L. Wu, Stock market prediction of S&P 500 via combination of improved BCO approach and BP neural network, Expert Syst. Appl. 36 (2009) 8849–8854,.

Cited By

View all
  • (2024)Machine learning techniques and interpretability for maize yield estimation using Time-Series images of MODIS and Multi-Source dataComputers and Electronics in Agriculture10.1016/j.compag.2024.109063222:COnline publication date: 1-Jul-2024
  • (2022)Improving QGA-ELM Inversion Model of Rice Leaf Area Index Based on UAV Remote Sensing ImageMobile Information Systems10.1155/2022/96589662022Online publication date: 1-Jan-2022
  • (2022)Improving wheat yield estimates using data augmentation models and remotely sensed biophysical indices within deep neural networks in the Guanzhong Plain, PR ChinaComputers and Electronics in Agriculture10.1016/j.compag.2021.106616192:COnline publication date: 1-Jan-2022

Index Terms

  1. Monitoring maize growth conditions by training a BP neural network with remotely sensed vegetation temperature condition index and leaf area index
          Index terms have been assigned to the content through auto-classification.

          Recommendations

          Comments

          Please enable JavaScript to view thecomments powered by Disqus.

          Information & Contributors

          Information

          Published In

          cover image Computers and Electronics in Agriculture
          Computers and Electronics in Agriculture  Volume 160, Issue C
          May 2019
          189 pages

          Publisher

          Elsevier Science Publishers B. V.

          Netherlands

          Publication History

          Published: 01 May 2019

          Author Tags

          1. Maize growth
          2. Integrated monitoring
          3. Back propagation
          4. Artificial neural network
          5. Vegetation temperature condition index
          6. Leaf area index

          Qualifiers

          • Research-article

          Contributors

          Other Metrics

          Bibliometrics & Citations

          Bibliometrics

          Article Metrics

          • Downloads (Last 12 months)0
          • Downloads (Last 6 weeks)0
          Reflects downloads up to 09 Jan 2025

          Other Metrics

          Citations

          Cited By

          View all
          • (2024)Machine learning techniques and interpretability for maize yield estimation using Time-Series images of MODIS and Multi-Source dataComputers and Electronics in Agriculture10.1016/j.compag.2024.109063222:COnline publication date: 1-Jul-2024
          • (2022)Improving QGA-ELM Inversion Model of Rice Leaf Area Index Based on UAV Remote Sensing ImageMobile Information Systems10.1155/2022/96589662022Online publication date: 1-Jan-2022
          • (2022)Improving wheat yield estimates using data augmentation models and remotely sensed biophysical indices within deep neural networks in the Guanzhong Plain, PR ChinaComputers and Electronics in Agriculture10.1016/j.compag.2021.106616192:COnline publication date: 1-Jan-2022
          • (2020)Monitoring maize growth on the North China Plain using a hybrid genetic algorithm-based back-propagation neural network modelComputers and Electronics in Agriculture10.1016/j.compag.2020.105238170:COnline publication date: 1-Mar-2020

          View Options

          View options

          Media

          Figures

          Other

          Tables

          Share

          Share

          Share this Publication link

          Share on social media