FAN Deqin, ZHU Wenquan, PAN Yaozhong, et al. Identifying an optimal method for estimating green-up date of Kobresia pygmaea alpine meadow in Qinghai-Tibetan Plateau[J]. Journal of Remote Sensing, 2014, 18(5): 1117-1127. DOI: 10.11834/jrs.20143299.
The Kobresia pygmaea alpine meadow is a main vegetation type in the Qinghai-Tibetan Plateau. An accurate detection of the green-up dates for K. pygmaea is important to simulate and predict vegetation phenology shifts under the influence of c limate change in the Qinghai-Tibetan Plateau. Green-up date estimation methods from remote sensing data generally include two processes: reconstruction of high-quality vegetation index time-series data through noise removal and calculation of green-up dates from the reconstructed vegetation index time series. The reconstruction methods for vegetation index time-series d ata can be divided into two categories: filter fitting and curve fitting methods. The green-up date retrieval methods include the threshold
maximum slope
curvature
and moving average methods. The green-up date identification method is a combination of the reconstruction methods for vegetation index time-series data and the retrieval methods for green-up dates under different study conditions. The a ccuracy of the green-up date identification methods is usually affected by many factors
such as specific geographic location
prior experience
parameterization
and initial parameters. In this study
we adopted a simulated annealing algorithm to optimize the r econstruction process and thus avoid the problems of low efficiency and local optimum caused by traditional optimal methods. We first used the double-Gaussian
double-Logistic
and polynomial functions to reconstruct the Normalized Difference Vegetation I ndex( NDVI)time series. After evaluations with visual inspections and root mean square error
we identified the most feasible r econstruction method. We then used the maximum slope
threshold
curvature
and dynamic threshold methods to derive the green-up dates from the best reconstructed NDVI time series. The performance of these three methods for green-up date identification were tested using the green-up data from 34 ground observation samples and their corresponding National Oceanic and A tmospheric Administration NDVI time-series data at 8-kilometer resolution. We selected additional 153 samples
which were e venly distributed in the K. pygmaea alpine meadow in the Qinghai-Tibetan Plateau
to test the identified optimal green-up estimation method and to investigate the changes in green-up dates in the study area. The reconstructed NDVI time series with the double-Gaussian function had the smallest deviation from the original NDVI time series
and the noises can be reduced effectively through the double-Gaussian fitting process.Therefore
the aforementioned method was the most suitable for describing the intra-annual growth cycle of the K. pygmaea alpine meadow. The reconstructed NDVI time series with the double-Gaussian function method indicated that the green-up dates identified with the maximum slope threshold method agreed with the observed ground phenology data. The correlation coefficients between the identified green-up dates and the observed dates were 0. 823( P < 0. 001) and 0. 646( P < 0. 01) at the Haiyan and Gande stations
respectively. The average green-up dates for the K. pygmaea alpine meadow in the Qinghai-Tibetan Plateau were mainly located between DOY( Day of Year) 120( i. e.
30 April) and 140( i. e.
20 May). The green-up onset date advanced by an average of 7 days from 1982 to 2011 in the study region.