Title

Optimal Site Selection Of Watershed Hydrological Monitoring Stations Using Remote Sensing And Grey Integer Programming

Keywords

Grey integer programming; Hydrological monitoring; Locational theory; Remote sensing; Vegetation indexes; Water cycle

Abstract

Precipitation, infiltration and percolation, stream flow, plant transpiration, soil moisture changes, and groundwater recharge are all intimately related with each other to form water balance dynamics on the surface of the Earth. To monitor change in hydrological systems with minimum effort, however, hydrological monitoring networks at the watershed scale should be deployed at critical locations to advance the monitoring and sensing capability. One of the science questions is how to develop an optimum arrangement/distribution strategy of those monitoring platforms with respect to hydrological components subject to technical and resources constraints. While the complexities arise from the integration of highly heterogeneous data streams in the hydrological cycle under uncertainty, there is an acute need to develop a site screening and sequencing procedure permitting a cost-effective search for final site selection. This paper purports to develop such an approach to address the optimal site selection strategy by integrating satellite remote sensing images with a grey integer programming (GIP) model. The approach uses spatial information on the range of likely values temporally encountered for a number of biophysical descriptors in support of the optimization analysis under uncertainty. Practical implementation was assessed by a case study in a semi-arid watershed-the Choke Canyon Reservoir watershed, south Texas. GIS-based GIP modeling technique successfully supports the screening and sequencing mechanism based on the composite satellite images, which smoothly prioritizes the relative importance and provides the rank order scores across all candidate sites. With the aid of such a synergistic approach, seven locations out of 563 candidate sites were eventually selected and confirmed by a field investigation. © 2009 Springer Science+Business Media B.V.

Publication Date

1-1-2010

Publication Title

Environmental Modeling and Assessment

Volume

15

Issue

6

Number of Pages

469-486

Document Type

Article

Personal Identifier

scopus

DOI Link

https://doi.org/10.1007/s10666-009-9213-7

Socpus ID

78049286395 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/78049286395

This document is currently not available here.

Share

COinS