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14 - Estimating Aquifer Depth in Arid and Semi-arid Watersheds using Statistical Modelling of Spectral MODIS Products

from Part II - Climate Risk to Human and Natural Systems

Published online by Cambridge University Press:  17 March 2022

Qiuhong Tang
Affiliation:
Chinese Academy of Sciences, Beijing
Guoyong Leng
Affiliation:
Oxford University Centre for the Environment
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Summary

Nowadays, aquifer studies benefit from fast growing remote sensing technology. MODIS data has been used in hydrology research, inspired by radiometrically high resolution images of advanced day- and night-time sensors. Statistical modelling is also the most frequently used method of estimation in aquifer studies and the main objective of the current research. Standard MOD02B1, MOD02 and MOD11, including their day- and night-time scenes were acquired on May 2017 and 2019, for the study area in Fars province, southern Iran. A set of 34 novel indices were developed based on Difference and Ratio expressions. The results indicated that the dataset covered a full range of aquifer depth, however, within the depth class of 0–5 metres, correlation coefficients increase significantly. εDb28 and TBDb28Db28 - εNb28) and (TBDb28 - TBNb28) are of the highly-correlated indices to the aquifer depth of the plains. Average RE, RMSE and CE are comparatively low (12 per cent, 0.55 metres and 52 per cent, respectively). Band 28 and its corresponding products play an important role, generally because of its high sensitivity to surface water vapour content, representing capillary action of ground water below the surface. The results are also influenced by land management and soil types.

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Publisher: Cambridge University Press
Print publication year: 2022

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