Publications

Zuo, WJ; Mao, JJ; Lu, JQ; Zheng, ZW; Han, Q; Xue, RJ; Tian, YC; Zhu, Y; Cao, WX; Zhang, XH (2023). Mapping Irrigated Areas Based on Remotely Sensed Crop Phenology and Soil Moisture. AGRONOMY-BASEL, 13(6), 1556.

Abstract
Artificial irrigation is critical for improving soil moisture conditions and ensuring crop growth. Its irrational deployment can lead to ecological and environmental issues. Mapping and understanding the changes in irrigated areas are vital to effectively managing limited water. However, most researchers map irrigated areas with a single data resource, which makes it hard to detect irrigated signals in complex situations. The case study area for this paper was China's winter wheat region, and an irrigated area map was generated by analyzing the effects of artificial irrigation on crop phenological characteristics and soil moisture time series. The mapping process involved three steps: (1) generating a basic irrigated map by employing the ISODATA classification method on the Kolmogorov-Smirnov test irrigation signals from the microwave remote sensing data and reanalysis data; (2) creating the other map with the maximum likelihood ratio classification and zoning scheme on the phenological parameters extracted from the NDVI time series; and (3) fusing these two maps at the decision level to obtain the final map with a higher spatial resolution of 1 km. The map was evaluated against existing irrigated area data and was highly compatible with GMIA 5.0. The overall accuracy (OA) was 73.49%.

DOI:
10.3390/agronomy13061556

ISSN:
2073-4395