Calibration of channel depth and friction parameters in the LISFLOOD-FP hydraulic model using medium resolution SAR data and identifiability techniques
Single satellite synthetic aperture radar (SAR) data are now regularly used
to estimate hydraulic model parameters such as channel roughness, depth and
water slope. However, despite channel geometry being critical to the
application of hydraulic models and poorly known a priori, it is not
frequently the object of calibration. This paper presents a unique method to
simultaneously calibrate the bankfull channel depth and channel roughness
parameters within a 2-D LISFLOOD-FP hydraulic model using an archive of
moderate-resolution (150 m) ENVISAT satellite SAR-derived flood extent maps
and a binary performance measure for a 30 × 50 km domain covering the
confluence of the rivers Severn and Avon in the UK. The unknown channel
parameters are located by a novel technique utilising the information content
and dynamic identifiability analysis (DYNIA) (Wagener et al., 2003) of single and combinations of SAR flood extent maps to find the optimum satellite images for model calibration. Highest information content is found in those SAR flood maps acquired near the peak of the flood hydrograph, and improves when more
images are combined. We found that model sensitivity to variation in channel depth is greater than for channel roughness and a successful calibration for depth could only be obtained when channel roughness values were confined to a
plausible range. The calibrated reach-average channel depth was within 0.9 m
(16 % error) of the equivalent value determined from river cross-section
survey data, demonstrating that a series of moderate-resolution SAR data can
be used to successfully calibrate the depth parameters of a 2-D hydraulic model