Return to search

The use of remote sensing and GIS in the identification and vulnerability detection of coastal erosion as a hazard in False Bay, South Africa

Thesis (MSc)--Stellenbosch University, 2014. / ENGLISH ABSTRACT: Coastal erosion is a worldwide hazard of which the consequences can only be mitigated via
thorough and efficient monitoring of erosion and vulnerability to erosion. This study aimed to
establish the accuracy, efficacy and efficiency of various remote sensing techniques for the
detection and monitoring of coastal erosion and vulnerability occurring in False Bay, South
Africa. There is a need to monitor the erosion in this area as well as to determine the most
effective techniques for monitoring the erosion in False Bay and other similar environments
in the future. This study provides an assessment of the usefulness of different data sources
and techniques for change detection in the coastal environment.
The data sources used were Landsat TM/ETM+ imagery and aerial photographs. Image
differencing, tasselled cap transformations, vegetation index differencing, Boolean change
detection, and post-classification change detection were all performed on the Landsat
imagery. The aerial photographs were assessed using the Digital Shoreline Analysis System
(DSAS) add-on for ArcGIS which determines statistical differences in the shoreline position
as digitised in vector format. The results showed that while the resolution of the Landsat imagery was not sufficient to
analyse erosion along the beach itself, the larger area covered by the satellite images
enabled vulnerability indicators to be seen. Notably, the post-classification change detection
indicated consistent increases in built-up areas, while sand dune, beach, and sand (not
beach) all decreased. NDVI differencing showed consistent decreases in NDVI indicating
decreasing plant health and density. The results of image differencing with both band 4 and
the brightness band led to conclusions that vegetation health was decreasing while reflective
surfaces such as bare sand and roads were increasing. All of these indicate an increased
vulnerability to coastal erosion. The Boolean change detection method was found not to be
useful in this case.
Aerial photographs were studied on four focus areas: Bayview Heights, Macassar Beach,
Strand, and Pringle Bay. The results showed erosion at all four areas, with Strand
experiencing only erosion (no accretion) at an average of 53 cm erosion per year. Erosion at
Macassar Beach and Pringle Bay was also severe, with Bayview Heights being the least
severe and showing a combination of erosion and accretion. The higher resolution available
on the aerial photographs was vital to view changes on the beach itself.
In future studies requiring assessment of changes in the position or condition of the beach
itself, aerial photographs or high resolution satellite data should be used. Studies of
vulnerability extending over the entire coastal zone may make use of Landsat TM images. Post-classification change detection provides powerful change direction information and can
indicate the percentage of area change from one class to another. However, image
differencing and vegetation index differencing are much faster to perform and can provide
information about general trends in the changes occurring. Therefore post-classification
change detection might be used in areas of high and rapid change while image differencing
and vegetation index differencing can be useful to cover vast areas where little change is
expected. / AFRIKAANSE OPSOMMING: Kus-erosie is ‘n wêreldwye gevaar waarvan die gevolge slegs deur deeglike en doeltreffende
monitering van erosie en kwesbaarheid vir erosie verminder kan word. Hierdie studie poog
om die akkuraatheid, doeltreffendheid en effektiwiteit van verskillende afstandswaarneming
tegnieke vas te stel vir die opsporing en monitering van kus-erosie en kwesbaarheid in
Valsbaai, Suid Afrika. Daar is ‘n behoefte aan die monitering van erosie in hierdie area,
sowel as om die mees doeltreffende tegnieke van die monitering hiervan in Valsbaai en
ander soortgelyke omgewings in die toekoms te bepaal. Hierdie studie bied ‘n evaluering
van die nut van verskillende data-bronne en tegnieke vir die opsporing van verandering in ‘n
kusomgewing.
Die data-bronne wat gebruik is, is Landsat TM/ETM+ beelde asook lugfoto’s. Beeld
differensievorming, “tasselled cap” transformasies, plantegroei indeks differensievorming,
Boolse verandering en post-klassifikasie verandering is toegepas op die Landsat beelde. Die
lugfotos is ge-evalueer deur die Digitale Kuslyn Analise Stelsel (Digital Shoreline Analysis
System – DSAS). DSAS is ‘n bykomstige sagteware vir ArcGIS wat statistiese verskille in
gedigitaliseerde kuslyn posisie bepaal. Die resultate toon dat terwyl die resolusie van die Landsat beelde nie voldoende was om
strand-erosie self te analiseer, die groter area wat deur die satellietbeelde gedek word
toegelaat het om kwesbaarheid aanwysers te ontleed. Spesifiek die post-klassifikasie
verandering het aangedui dat konsekwente toenames in beboude areas voorkom, terwyl
afnames in sandduine, strand en sand-areas voorgekom het. NDVI differensievorming het
konsekwente afnames in NDVI getoon, wat dui op afnames in die gesondheid en digtheid
van plantegroei. Die resultate van die beeld differensievorming met beide Landsat Band 4 en
die helderheid-band het gelei tot die gevolgtrekking dat die gesondheid van plantegroei
afgeneem het, terwyl reflektiewe oppervlaktes soos oop sand en paaie aan die toeneem is.
Al hierdie resultate dui op die verhoogde kwesbaarheid vir kus erosie. Die Boolse
verandering metode is bevind om nie van nut te wees in hierdie geval nie.
Lugfoto’s van vier fokus-areas is bestudeer: Bayview Heights, Macassar Strand, Strand en
Pringlebaai. Resultate van die DSAS analise het gevind dat oorwegend erosie by al vier
areas plaasvind, met Strand die enigste area wat slegs erosie (geen aanwas) ervaar teen ‘n
gemiddelde koers van 0.53 m per jaar. Erosie by Macassar Strand en Pringlebaai was ook
ernstig, terwyl Bayview Heights die minste erosie ervaar het, met ‘n kombinasie van erosie
en aanwas. Die hoër resolusie beskikbaar deur die lugfoto’s was noodsaaklik om
veranderinge in strand areas waar te neem. In toekomstige studies wat die assessering van verandering in die posisie of toestand van
strande noodsaak behoort lugfotos of hoë-resolusie satellietbeeld data gebruik te word.
Studies oor die kwesbaarheid van ‘n hele kusstreek kan wel gebruik maak van Landsat data.
Post-klassifikasie verandering bied kragtige informasie oor die rigting van verandering en
kan die persentasie van verandering van een klas na ‘n ander aandui. Beeld en NDVI
differensievorming is egter veel vinniger om uit te voer en kan informasie rakende die
algemene tendense in verandering lewer. Post-klassifikasie verandering kan dus gebruik
word in gebiede van vinnige en beduidende verandering plaasvind, terwyl beeld en NDVI
differensievorming nuttig kan wees om groot areas te dek waar min verandering verwag
word.

Identiferoai:union.ndltd.org:netd.ac.za/oai:union.ndltd.org:sun/oai:scholar.sun.ac.za:10019.1/86611
Date04 1900
CreatorsCallaghan, Kerry Lee
ContributorsKemp, J. N., Stellenbosch University. Faculty of Arts and Social Sciences. Dept. of Geography and Environmental Studies.
PublisherStellenbosch : Stellenbosch University
Source SetsSouth African National ETD Portal
Languageen_ZA
Detected LanguageUnknown
TypeThesis
Format169 p. : ill., maps
RightsStellenbosch University

Page generated in 0.0029 seconds