Quantitative assessment of Urmia Lake water using spaceborne multisensor data and 3D modeling

Environ Monit Assess. 2017 Oct 18;189(11):572. doi: 10.1007/s10661-017-6308-5.

Abstract

Preserving aquatic ecosystems and water resources management is crucial in arid and semi-arid regions for anthropogenic reasons and climate change. In recent decades, the water level of the largest lake in Iran, Urmia Lake, has decreased sharply, which has become a major environmental concern in Iran and the region. The efforts to revive the lake concerns the amount of water required for restoration. This study monitored and assessed Urmia Lake status over a period of 30 years (1984 to 2014) using remotely sensed data. A novel method is proposed that generates a lakebed digital elevation model (LBDEM) for Urmia Lake based on time series images from Landsat satellites, water level field measurements, remote sensing techniques, GIS, and 3D modeling. The volume of water required to restore the Lake water level to that of previous years and the ecological water level was calculated based on LBDEM. The results indicate a marked change in the area and volume of the lake from its maximum water level in 1998 to its minimum level in 2014. During this period, 86% of the lake became a salt desert and the volume of the lake water in 2013 was just 0.83% of the 1998 volume. The volume of water required to restore Urmia Lake from benchmark status (in 2014) to ecological water level (1274.10 m) is 12.546 Bm3, excluding evaporation. The results and the proposed method can be used by national and international environmental organizations to monitor and assess the status of Urmia Lake and support them in decision-making.

Keywords: 3D modeling; GIS; Lakebed topography; Long-term monitoring; Remote sensing; Urmia Lake.

MeSH terms

  • Climate Change
  • Desert Climate
  • Ecology
  • Ecosystem
  • Environmental Monitoring / methods*
  • Iran
  • Lakes / chemistry*
  • Models, Theoretical
  • Satellite Imagery*
  • Water
  • Water Supply / statistics & numerical data*

Substances

  • Water