Abstract

In this study, we present an operational methodology for mapping irrigated areas at plot scale, which overcomes the limitation of terrain data availability, using Sentinel-1 (S1) C-band SAR (synthetic-aperture radar) and Sentinel-2 (S2) optical time series. The method was performed over a study site located near Orléans city of north-central France for four years (2017 until 2020). First, training data of irrigated and non-irrigated plots were selected using predefined selection criteria to obtain sufficient samples of irrigated and non-irrigated plots each year. The training data selection criteria is based on two irrigation metrics; the first one is a SAR-based metric derived from the S1 time series and the second is an optical-based metric derived from the NDVI (normalized difference vegetation index) time series of the S2 data. Using the newly developed irrigation event detection model (IEDM) applied for all S1 time series in VV (Vertical-Vertical) and VH (Vertical-Horizontal) polarizations, an irrigation weight metric was calculated for each plot. Using the NDVI time series, the maximum NDVI value achieved in the crop cycle was considered as a second selection metric. By fixing threshold values for both metrics, a dataset of irrigated and non-irrigated samples was constructed each year. Later, a random forest classifier (RF) was built for each year in order to map the summer agricultural plots into irrigated/non-irrigated. The irrigation classification model uses the S1 and NDVI time series calculated over the selected training plots. Finally, the proposed irrigation classifier was validated using real in situ data collected each year. The results show that, using the proposed classification procedure, the overall accuracy for the irrigation classification reaches 84.3%, 93.0%, 81.8%, and 72.8% for the years 2020, 2019, 2018, and 2017, respectively. The comparison between our proposed classification approach and the RF classifier built directly from in situ data showed that our approach reaches an accuracy nearly similar to that obtained using in situ RF classifiers with a difference in overall accuracy not exceeding 6.2%. The analysis of the obtained classification accuracies of the proposed method with precipitation data revealed that years with higher rainfall amounts during the summer crop-growing season (irrigation period) had lower overall accuracy (72.8% for 2017) whereas years encountering a drier summer had very good accuracy (93.0% for 2019).

Highlights

  • The current changing climate has altered the frequency and severity of extreme hydrological events [1] causing adverse impacts on crop production [2] and endangering food security [3]

  • After selecting the training dataset that corresponds to the plots deemed as irrigated and nonirrigated with a high confidence degree, the second step consists of implementing S1 data, S2 data (NDVI), and the selected training plots into a random forest classifier to build a classifier for mapping irrigated areas (Irrigation Classifier)

  • To address the main issue related to the dependency of supervised classification models on in situ terrain campaigns for irrigation mapping, the methodology presented in this study is capable of automatically generating reference dataset of irrigated and non-irrigated plots to be used in a supervised classification model

Read more

Summary

Introduction

The current changing climate has altered the frequency and severity of extreme hydrological events [1] causing adverse impacts on crop production [2] and endangering food security [3]. Insufficient precipitation and the significant increase in evaporative demand due to higher air temperatures have already affected agricultural regions in Remote Sens. Water demand for crop cultivation has increased in the last decades [5] despite the significant decrease in water resources in many regions worldwide [6]. Given the regional water shortage, new agricultural policies should be adapted for a transition towards a more efficient and sustainable agriculture system to conserve water and enhance crop productivity. Imposing sustainable water conservation policies at the core requires quantifying the spatial extent of the irrigated areas. The extent of irrigated areas at global scales is principally derived from country-level statistics and remains uncertain [9,10,11,12]. With the availability of several operational cost-free and open access satellites (e.g., Landsat, Sentinels), remote sensing has been widely used for monitoring and managing agricultural crops from the field level [4,17] to large domains [18,19,20,21]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call