Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/122841
Title: Evaluating the riparian forest quality index (QBR) in the Luchena River by integrating remote sensing, machine learning and GIS techniques
Authors: Segura-Méndez, Francisco J.
Pérez Sánchez, Julio 
Senent-Aparicio, Javier
UNESCO Clasification: 3308 Ingeniería y tecnología del medio ambiente
2508 Hidrología
Keywords: Riparian quality
QBR
Remote sensing
Vegetation index
Machine learning
Issue Date: 2023
Journal: Ecohydrology and Hydrobiology 
Abstract: The Water Framework Directive (WFD 2000/60/EU) is a mandatory standard that aims to improve and protect water quality in Europe. It covers, among other issues, the need to establish particular reference conditions for assessing river ecosystems and defines the ecological status of water bodies and conserve the hydromorphological characteristics of rivers. The quality of riparian vegetation is an important component of stream status and contributes directly to a river's ecological stability. QBR index (“Qualitat del Bosc de Ribera”) is one of the most widely used methods of evaluating riparian quality. This paper presents a new methodological version of the QBR index (QBR-GIS) to assess the ecological status of riparian forests. For this purpose, we have considered the four major conceptual blocks of the QBR index (total vegetation cover, cover structure, cover quality and channel alteration) using geographically referenced information, remote sensing and machine learning techniques. To obtain the cover quality indicator, several vegetation indices were calculated and a sensitivity analysis was performed. The QBR-GIS was validated from the results obtained from the QBR index. QBR-GIS provides greater reliability and objectivity in the results. Furthermore, it reduces the time spent on field visits and increases accuracy in obtaining the status of riparian quality. Furthermore, it is a useful tool for landscape planning and management, improved ability to apply the QBR Index to larger areas of the river catchment, resulting in more information on riparian quality.
URI: http://hdl.handle.net/10553/122841
ISSN: 1642-3593
DOI: 10.1016/j.ecohyd.2023.04.002
Source: Ecohydrology and Hydrobiology [ISSN 1642-3593], (Abril 2023)
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