Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019)

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Standard

Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019). / Zhang, Wenmin; Brandt, Martin; Prishchepov, Alexander V.; Li, Zhaofu; Lyu, Chunguang; Fensholt, Rasmus.

I: Remote Sensing, Bind 13, Nr. 6, 1170, 02.03.2021.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Zhang, W, Brandt, M, Prishchepov, AV, Li, Z, Lyu, C & Fensholt, R 2021, 'Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019)', Remote Sensing, bind 13, nr. 6, 1170. https://doi.org/10.3390/rs13061170

APA

Zhang, W., Brandt, M., Prishchepov, A. V., Li, Z., Lyu, C., & Fensholt, R. (2021). Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019). Remote Sensing, 13(6), [1170]. https://doi.org/10.3390/rs13061170

Vancouver

Zhang W, Brandt M, Prishchepov AV, Li Z, Lyu C, Fensholt R. Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019). Remote Sensing. 2021 mar. 2;13(6). 1170. https://doi.org/10.3390/rs13061170

Author

Zhang, Wenmin ; Brandt, Martin ; Prishchepov, Alexander V. ; Li, Zhaofu ; Lyu, Chunguang ; Fensholt, Rasmus. / Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019). I: Remote Sensing. 2021 ; Bind 13, Nr. 6.

Bibtex

@article{cadd5ce6a4e44a17a227444365155d69,
title = "Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019)",
abstract = "Monitoring spatio-temporal changes in winter wheat planting areas is of high importance for the evaluation of food security. This is particularly the case in China, having the world{\textquoteright}s largest population and experiencing rapid urban expansion, concurrently, it puts high pressure on food demands and the availability of arable land. The relatively high spatial resolution of Landsat is required to resolve the historical mapping of smallholder wheat fields in China. However, accurate Landsat-based mapping of winter wheat planting dynamics over recent decades have not been conducted for China, or anywhere else globally. Based on all available Landsat TM/ETM+/OLI images (~28,826 tiles) using Google Earth Engine (GEE) cloud computing and a Random Forest machine-learning classifier, we analyzed spatio-temporal dynamics in winter wheat planting areas during 1999–2019 in the North China Plain (NCP). We applied a median value of 30-day sliding windows to fill in potential data gaps in the available Landsat images, and six EVI-based phenological features were then extracted to discriminate winter wheat from other land cover types. Reference data for training and validation were extracted from high-resolution imagery available via Google Earth{\texttrademark} online mapping service, Sentinel-2 and Landsat imagery. We ran a sensitivity analysis to derive the optimal training sample class ratio (β = 1.8) accounting for the unbalanced distribution of land-cover types. We mapped winter wheat planting areas for 1999–2019 with overall accuracies ranging from 82% to 99% and the user{\textquoteright}s/producer{\textquoteright}s accuracies of winter wheat range between 90% and 99%. We observed an overall increase in winter wheat planting areas of 1.42 × 106 ha in the NCP as compared to the year 2000, with a significant increase in the Shandong and Hebei provinces (p < 0.05). This result contrasts the general discourse suggesting a decline in croplands (e.g., rapid urbanization) and climate change-induced unfavorable cropping conditions in the NCP. This suggests adjustments of the winter wheat planting area over time to satisfy wheat supply in relation to food security. This study highlights the application of Landsat images through GEE in documenting spatio-temporal dynamics of winter wheat planting areas for adequate management of cropping systems and assessing food security in China.",
keywords = "Change detection, Cloud computation, Landsat, Machine learning, North China Plain, Time series, Winter wheat",
author = "Wenmin Zhang and Martin Brandt and Prishchepov, {Alexander V.} and Zhaofu Li and Chunguang Lyu and Rasmus Fensholt",
year = "2021",
month = mar,
day = "2",
doi = "10.3390/rs13061170",
language = "English",
volume = "13",
journal = "Remote Sensing",
issn = "2072-4292",
publisher = "M D P I AG",
number = "6",

}

RIS

TY - JOUR

T1 - Mapping the dynamics of winter wheat in the north china plain from dense landsat time series (1999 to 2019)

AU - Zhang, Wenmin

AU - Brandt, Martin

AU - Prishchepov, Alexander V.

AU - Li, Zhaofu

AU - Lyu, Chunguang

AU - Fensholt, Rasmus

PY - 2021/3/2

Y1 - 2021/3/2

N2 - Monitoring spatio-temporal changes in winter wheat planting areas is of high importance for the evaluation of food security. This is particularly the case in China, having the world’s largest population and experiencing rapid urban expansion, concurrently, it puts high pressure on food demands and the availability of arable land. The relatively high spatial resolution of Landsat is required to resolve the historical mapping of smallholder wheat fields in China. However, accurate Landsat-based mapping of winter wheat planting dynamics over recent decades have not been conducted for China, or anywhere else globally. Based on all available Landsat TM/ETM+/OLI images (~28,826 tiles) using Google Earth Engine (GEE) cloud computing and a Random Forest machine-learning classifier, we analyzed spatio-temporal dynamics in winter wheat planting areas during 1999–2019 in the North China Plain (NCP). We applied a median value of 30-day sliding windows to fill in potential data gaps in the available Landsat images, and six EVI-based phenological features were then extracted to discriminate winter wheat from other land cover types. Reference data for training and validation were extracted from high-resolution imagery available via Google Earth™ online mapping service, Sentinel-2 and Landsat imagery. We ran a sensitivity analysis to derive the optimal training sample class ratio (β = 1.8) accounting for the unbalanced distribution of land-cover types. We mapped winter wheat planting areas for 1999–2019 with overall accuracies ranging from 82% to 99% and the user’s/producer’s accuracies of winter wheat range between 90% and 99%. We observed an overall increase in winter wheat planting areas of 1.42 × 106 ha in the NCP as compared to the year 2000, with a significant increase in the Shandong and Hebei provinces (p < 0.05). This result contrasts the general discourse suggesting a decline in croplands (e.g., rapid urbanization) and climate change-induced unfavorable cropping conditions in the NCP. This suggests adjustments of the winter wheat planting area over time to satisfy wheat supply in relation to food security. This study highlights the application of Landsat images through GEE in documenting spatio-temporal dynamics of winter wheat planting areas for adequate management of cropping systems and assessing food security in China.

AB - Monitoring spatio-temporal changes in winter wheat planting areas is of high importance for the evaluation of food security. This is particularly the case in China, having the world’s largest population and experiencing rapid urban expansion, concurrently, it puts high pressure on food demands and the availability of arable land. The relatively high spatial resolution of Landsat is required to resolve the historical mapping of smallholder wheat fields in China. However, accurate Landsat-based mapping of winter wheat planting dynamics over recent decades have not been conducted for China, or anywhere else globally. Based on all available Landsat TM/ETM+/OLI images (~28,826 tiles) using Google Earth Engine (GEE) cloud computing and a Random Forest machine-learning classifier, we analyzed spatio-temporal dynamics in winter wheat planting areas during 1999–2019 in the North China Plain (NCP). We applied a median value of 30-day sliding windows to fill in potential data gaps in the available Landsat images, and six EVI-based phenological features were then extracted to discriminate winter wheat from other land cover types. Reference data for training and validation were extracted from high-resolution imagery available via Google Earth™ online mapping service, Sentinel-2 and Landsat imagery. We ran a sensitivity analysis to derive the optimal training sample class ratio (β = 1.8) accounting for the unbalanced distribution of land-cover types. We mapped winter wheat planting areas for 1999–2019 with overall accuracies ranging from 82% to 99% and the user’s/producer’s accuracies of winter wheat range between 90% and 99%. We observed an overall increase in winter wheat planting areas of 1.42 × 106 ha in the NCP as compared to the year 2000, with a significant increase in the Shandong and Hebei provinces (p < 0.05). This result contrasts the general discourse suggesting a decline in croplands (e.g., rapid urbanization) and climate change-induced unfavorable cropping conditions in the NCP. This suggests adjustments of the winter wheat planting area over time to satisfy wheat supply in relation to food security. This study highlights the application of Landsat images through GEE in documenting spatio-temporal dynamics of winter wheat planting areas for adequate management of cropping systems and assessing food security in China.

KW - Change detection

KW - Cloud computation

KW - Landsat

KW - Machine learning

KW - North China Plain

KW - Time series

KW - Winter wheat

U2 - 10.3390/rs13061170

DO - 10.3390/rs13061170

M3 - Journal article

AN - SCOPUS:85103597694

VL - 13

JO - Remote Sensing

JF - Remote Sensing

SN - 2072-4292

IS - 6

M1 - 1170

ER -

ID: 259849143