Options
Snow cover monitoring by remote sensing and evaluating melting water efects on karstic springs discharges (a case study from Lasem area)
Auteur(s)
Date de parution
2020-5
In
Carbonates and Evaporites
No
2020
De la page
35
A la page
53
Résumé
Snowfall is the dominant form of precipitation in high mountainous areas and its driving melt water has an indispensable
role in the hydrological cycle and groundwater recharge, particularly in karstic landscapes with high infltration capacity.
Monitoring snow cover area (SCA) and its melting process is essential for the investigation of climatic variables, hydrology,
hydrogeology, and water resource management. Prodigious advances of satellite imaginary technology in the past decades
made it possible to monitor spatiotemporal distribution of snow and its melting process. In this research, SCA was investigated using cloud-free images of Landsat-8 from December 2014 to June 2016 and Sentinel-2 from November 2015 to June
2016 at Lasem area (north of Iran) by normalized diference snow index. Simultaneously, the discharges of the main karstic
springs were monitored over May 2015 to June 2016. The catchment subdivided into three sub-zones based on the hydrogeological characteristics and snow melting time. Fractional SCA time series within each subdomain used to develop snow
melting curve in each subzone. Comparison of melting peaks between the 2014–2015 and 2015–2016 water years shows that
melting shifted in average 20 days later in 2016 at north-facing subdomains. North-facing slopes show quite fast transmitting
time (20–35 days) of the peak snowmelt to the springs, while the south-facing springs are more silent to the recharge pulses
(70–80 days), indicating a higher degree of karstifcation in north-facing domains. More concentrated snowmelt in 2016 led
to increasing peak fow by an average of 15% in the springs fed by north-facing domains.
role in the hydrological cycle and groundwater recharge, particularly in karstic landscapes with high infltration capacity.
Monitoring snow cover area (SCA) and its melting process is essential for the investigation of climatic variables, hydrology,
hydrogeology, and water resource management. Prodigious advances of satellite imaginary technology in the past decades
made it possible to monitor spatiotemporal distribution of snow and its melting process. In this research, SCA was investigated using cloud-free images of Landsat-8 from December 2014 to June 2016 and Sentinel-2 from November 2015 to June
2016 at Lasem area (north of Iran) by normalized diference snow index. Simultaneously, the discharges of the main karstic
springs were monitored over May 2015 to June 2016. The catchment subdivided into three sub-zones based on the hydrogeological characteristics and snow melting time. Fractional SCA time series within each subdomain used to develop snow
melting curve in each subzone. Comparison of melting peaks between the 2014–2015 and 2015–2016 water years shows that
melting shifted in average 20 days later in 2016 at north-facing subdomains. North-facing slopes show quite fast transmitting
time (20–35 days) of the peak snowmelt to the springs, while the south-facing springs are more silent to the recharge pulses
(70–80 days), indicating a higher degree of karstifcation in north-facing domains. More concentrated snowmelt in 2016 led
to increasing peak fow by an average of 15% in the springs fed by north-facing domains.
Identifiants
Type de publication
journal article
Dossier(s) à télécharger