Landforms form an integral part

Size: px
Start display at page:

Download "Landforms form an integral part"

Transcription

1 Landform classification using GIS by Karsten Drescher, Terralogix Consulting, and Willem de Frey, Ekoinfo Refining existing landform classifications using ESRI s model builder. Landforms form an integral part of the landscape; they reflect the influence of geology and climate [1] on a regional/broad scale. The combination of landform and climate influences the development of soil conditions, which influence the distribution and extent of certain plant communities and associated animal assemblages [2]. The significance of landforms in terms of understanding the potential and constraints within the landscape associated with them, is well documented [3]. Gauteng Province Department of Agriculture, Conservation and Environment Directorate Nature Conservation s Ridges Policy [4] support this statement. On a large/fine scale the different facets/units associated with landforms such as crests, scarps, midslopes, footslopes and valley bottoms present habitat for flora and fauna. The more complex the morphology of the landform is, the higher its potential to support a variety of organisms at a variety of densities [5]. Thus knowing the extent and distribution of landforms, whether complex such as ridges, tablelands, hills and mountains or simple such as highly productive plains and valleys [6], is very important in terms of environmental management to assess the conservation significance and potential of a portion of land within the landscape to be developed or affected by human activities. From a geological and engineering geological perspective, landforms are of specific interest as the landforms were created by geological processes. The existing landforms also play a significant role in the current sedimentary processes. Existing data Existing morphology maps [7, 8], which are part of the environmental Fig. 1: Terrain morphology map of Southern Africa (after Kruger [9]). Fig. 2: Terrain morphological divisions of South Africa (after Breedlove and Fraser [7, 8]). potential atlas, are based on the South Africa (see Fig. 2 ) as well work done by Kruger [9] in 1983 as the finer detailed morphological (Fig. 1) and give the classification units on a provincial scale. Looking of the morphological divisions in at the map for Gauteng (Fig. 3), the 30 PositionIT -Aug/Sept 2009

2 The calculations were done using ESRI s modelbuilder (ArcGIS 9.3 with 3D Analyst and Spatial Analyst extensions). Fig. 3: Terrain morphological units of Gauteng (after Breedlove and Fraser [7, 8]). classifications are still fairly broad. Kruger s map was done at a scale of 1: The Department of Agriculture, Conservation and the Environment of the Gauteng Provincial Government has a policy on ridges [4] which is based on the slope values derived from a digital terrain model (DTM) (Fig. 4). Fig. 4: Ridges as defined by GDACE (after Pfab [4]). Apart for classifying landforms with more detail, the need was also identified to define ridges using more parameters than just the slope values. Methodology and results The landscape classification was done similar to that done by Morgan and Lesh [10]. Two landform classifications were done. The first one was done for the Gauteng province using a digital terrain model (DTM) with a pixel size of 30 m, derived from contour lines with a height interval of 20 m. The second one for South Africa was done using a DTM with a 200 m pixel resolution, based on contour lines with an interval of 100 m. For Gauteng, the GIS process that was followed is described in detail by Morgan and Lesh [10]. The most recent available boundary of Gauteng as defined by the Municipal Demarcation Board [11] was used and projected to Lo 84/29 (WG29), and a buffer of 5 km was added. Although some of the boundary effects are taken care of mathematically, any remaining edge effects are minimised using a 5 km buffer. A rectangle covering the study area (Gauteng plus buffer) was determined. Contour lines with a 20 m interval were merged and the dataset was projected to the Lo 84/29 (WG29) projection and clipped with the above mentioned rectangle. It was discovered that the dataset is too large for a straight Topo to Raster (3D Analyst) process. A TIN dataset was created using this clipped contour dataset. The TIN dataset was then converted to an elevation raster dataset with a 30 m pixel resolution. The Gauteng-plus-buffer feature was converted to a raster dataset such that pixels inside the polygon are assigned a value of one (1) and the pixels outside the polygon are assigned No data. Multiplying this raster with the elevation raster resulted in a DTM raster (see Fig. 5). As the No data pixels are ignored during the processing it speeds up the processing which consists of 37 calculation steps. As far as computing time is concerned the model builder runs the model within 3 hours on a 2,4 GHz quad processor PC with 2 GB RAM. The resulting Dikau [7] landforms are shown on Fig. 6. The results for the Gauteng dataset were analysed further by comparing it to the GDACE ridge dataset. For this purpose the determined landforms Flat or nearly flat plains and Smooth plains with some local relief were classified as No ridges while all the other landforms were classified as Ridges as shown on Fig. 7. The result of the comparative study is shown on Fig. 8. For South Africa the above-mentioned process was repeated with a DTM with PositionIT -Aug/Sept

3 a 200 m pixel size (Fig. 9) and all the data was projected to the Albers projection using the WGS84 datum. The result of the model for South Africa is shown in Fig. 10. Fig. 5: DTM raster dataset for Gauteng. Some problems were encountered with the obtained version of the publication in which the model is described by Morgan and Lesh [10]. At one point in the model ( percent of near level land ), the publication states that for this parameter, the focal statistics were calculated on a 20 pixel radius circular window for the sum of all pixels and on a 1,5 km circular window (1,5 km with 30 m pixels is equivalent to a 50 pixel radius) for the sum of the slope (slope less than 8%) pixels. During this study, this led to some strange results. The parameter should be calculated by taking the sum of the pixels with slope values of less than 8% within a 20 pixel circular window and divide it by the sum of all pixels within a 20 pixel circular window. Furthermore, according to the publication the percent of near level land is reclassified as follows: 0 0,2:400 0,20 0,50:300 0,50 0,80:200 0,80 1,0:100 Fig. 6: Determined landforms for Gauteng. The numbers are part of the Hammond s terrain type codes which are reclassified into Dikau s landform codes. Further on in the publication, the code 411 for example denotes plains. Using the classification as stated above, code 411 would denote hills and mountains. The above classification should read: 0 0,2:100 0,20 0,50:200 0,50 0,80:300 0,80 1,0:400 Discussion Fig. 7: Ridges determined by using landforms. Looking at the Gauteng dataset, Fig. 6, the determined landforms are fairly similar to Breedlove and Fraser s morphological units (Fig. 3) but have much finer detail. To validate the model further a profile was created using the Gauteng DTM and 32 PositionIT -Aug/Sept 2009

4 superimposed onto the landform classification as shown in Fig. 11. Furthermore, using the determined landforms to define ridges compares very well to GDACE s ridge dataset (Fig. 7). For the South African dataset, Fig. 10, the determined landforms compare fairly well to Breedlove and Fraser s morphological divisions (Fig. 2), but have much finer detail. Comparing the landform classification of Gauteng to the one for South Africa (Fig. 6 and Fig. 10), there is similarity between them but not an exact match. This is to be expected as the model uses an elevation range from 940 to 1900 m above sea level for the Gauteng dataset and an elevation range of sea level to 3700 m above sea level for the South African dataset. Furthermore the focal statistics are determined over the same number of pixels (20 pixel circular window) but the pixels size of the South African dataset is 200 m compared to the Gauteng dataset where the pixel size is 30 m. Fig. 8: Comparison between GDACE ridges and landform ridges. Conclusions The above mentioned results show that the model appears to produce acceptable results. It is however important to note that the determined landforms are not necessarily absolute but relative to the dataset. This is more prevalent on the mountainous terrains: a plain on the Gauteng dataset is also a plain on the national dataset but a landform that is a high hill compared to the rest of Gauteng is not necessarily a high hill when compared to the rest of South Africa. A further conclusion made is that the ridges determined by the landforms is mainly in agreement with the GDACE ridge policy based on slopes the ridges policy can however be somewhat refined. Fig. 9: DTM for South Africa. Geospace ¼? Irene size References [1] A N Strahler, & A H Strahler: Modern Physical Geography Third Edition. Wiley and Sons, New York, [2] M G Barbour, J H Burk and W D Pitts: Terrestrial Plant Ecology. Benjamin/ Cummings Publishing Company, California, [3] J A Wiens, M R Moss, M G Turner and Fig. 10: Determined landforms for South Africa. PositionIT -Aug/Sept

5 GIS Fig. 11: Profile (vertically exaggerated) through the Gauteng DTM. D J Mladenoff: Foundation Papers in [7] G Breedlove and F Fraser: Environmental [9] G P Kruger: Terrain morphology map Landscape Ecology. Columbia University Potential Atlas for South Africa: Terrain of Southern Africa, Soil and Irrigation Press, New York, Morphological Divisions, online at Research Institute, Department of [4] M Pfab: Development Guidelines Agriculture, Pretoria, for Ridges. Departmental Policy. nat/images/mdiv.jpg, Department of Department of Agriculture, Conservation, Environmental Affairs and Tourism, Landform Maps Using ESRI's Environment and Land Affairs Directorate University of Pretoria & GIS Business Modelbuilder, online at of Nature Conservation, Solutions, [5] M G Turner, R H Gardner and R V O'Neill: [8] G Breedlove and F Fraser: Environmental [10] J M Morgan and A M Lesh: Developing proc05/papers/pap2206.pdf, Landscape Ecology in Theory and Potential Atlas for Gauteng: Terrain Practice Pattern and Process, Springer, Morphological Units, online at RSA_Prov.zip, online USA, [11] Municipal Demarcation Board. [6] D B Lindenmayer and J Fischer: Habitat prov/gt/gtmorp.jpg, Department of Fragmentation and Landscape Change Environmental Affairs and Tourism, An Ecological And Conservation University of Pretoria and GIS Business Contact Karsten Drescher, Terralogix Consulting, , Synthesis, Island Press, USA, Solutions, terralogix@telkomsa.net 34 PositionIT -Aug/Sept 2009

A Method Using ArcMap to Create a Hydrologically conditioned Digital Elevation Model

A Method Using ArcMap to Create a Hydrologically conditioned Digital Elevation Model A Method Using ArcMap to Create a Hydrologically conditioned Digital Elevation Model High resolution topography derived from LiDAR data is becoming more readily available. This new data source of topography

More information

Notable near-global DEMs include

Notable near-global DEMs include Visualisation Developing a very high resolution DEM of South Africa by Adriaan van Niekerk, Stellenbosch University DEMs are used in many applications, including hydrology [1, 2], terrain analysis [3],

More information

Objectives. Raster Data Discrete Classes. Spatial Information in Natural Resources FANR 3800. Review the raster data model

Objectives. Raster Data Discrete Classes. Spatial Information in Natural Resources FANR 3800. Review the raster data model Spatial Information in Natural Resources FANR 3800 Raster Analysis Objectives Review the raster data model Understand how raster analysis fundamentally differs from vector analysis Become familiar with

More information

Tutorial 8 Raster Data Analysis

Tutorial 8 Raster Data Analysis Objectives Tutorial 8 Raster Data Analysis This tutorial is designed to introduce you to a basic set of raster-based analyses including: 1. Displaying Digital Elevation Model (DEM) 2. Slope calculations

More information

ANALYSIS 3 - RASTER What kinds of analysis can we do with GIS?

ANALYSIS 3 - RASTER What kinds of analysis can we do with GIS? ANALYSIS 3 - RASTER What kinds of analysis can we do with GIS? 1. Measurements 2. Layer statistics 3. Queries 4. Buffering (vector); Proximity (raster) 5. Filtering (raster) 6. Map overlay (layer on layer

More information

San Francisco Bay Margin Conservation Decision Support System (DSS)

San Francisco Bay Margin Conservation Decision Support System (DSS) San Francisco Bay Margin Conservation Decision Support System (DSS) Presented by Brian Fulfrost1, MS David Thomson2, MS 1 Brian Fulfrost and Associates 2 San Francisco Bay Bird Observatory Transitional

More information

Raster Operations. Local, Neighborhood, and Zonal Approaches. Rebecca McLain Geography 575 Fall 2009. Raster Operations Overview

Raster Operations. Local, Neighborhood, and Zonal Approaches. Rebecca McLain Geography 575 Fall 2009. Raster Operations Overview Raster Operations Local, Neighborhood, and Zonal Approaches Rebecca McLain Geography 575 Fall 2009 Raster Operations Overview Local: Operations performed on a cell by cell basis Neighborhood: Operations

More information

Create a folder on your network drive called DEM. This is where data for the first part of this lesson will be stored.

Create a folder on your network drive called DEM. This is where data for the first part of this lesson will be stored. In this lesson you will create a Digital Elevation Model (DEM). A DEM is a gridded array of elevations. In its raw form it is an ASCII, or text, file. First, you will interpolate elevations on a topographic

More information

GIS Analysis of Macro Landform

GIS Analysis of Macro Landform GIS Analysis of Macro Landform Lars Brabyn Department of Geography University of Waikato, Hamilton, New Zealand. Phone: +64 7 8384466, Fax: +64 7 8384633 Email: larsb@waikato.ac.nz Presented at the 10th

More information

Description of Simandou Archaeological Potential Model. 13A.1 Overview

Description of Simandou Archaeological Potential Model. 13A.1 Overview 13A Description of Simandou Archaeological Potential Model 13A.1 Overview The most accurate and reliable way of establishing archaeological baseline conditions in an area is by conventional methods of

More information

3D Model of the City Using LiDAR and Visualization of Flood in Three-Dimension

3D Model of the City Using LiDAR and Visualization of Flood in Three-Dimension 3D Model of the City Using LiDAR and Visualization of Flood in Three-Dimension R.Queen Suraajini, Department of Civil Engineering, College of Engineering Guindy, Anna University, India, suraa12@gmail.com

More information

Understanding Raster Data

Understanding Raster Data Introduction The following document is intended to provide a basic understanding of raster data. Raster data layers (commonly referred to as grids) are the essential data layers used in all tools developed

More information

Assessment of Groundwater Vulnerability to Landfill Leachate Induced Arsenic Contamination in Maine, US - Intro GIS Term Project Final Report

Assessment of Groundwater Vulnerability to Landfill Leachate Induced Arsenic Contamination in Maine, US - Intro GIS Term Project Final Report Assessment of Groundwater Vulnerability to Landfill Leachate Induced Arsenic Contamination in Maine, US - Intro GIS Term Project Final Report Introduction Li Wang Dept. of Civil & Environmental Engineering

More information

Michigan Tech Research Institute Wetland Mitigation Site Suitability Tool

Michigan Tech Research Institute Wetland Mitigation Site Suitability Tool Michigan Tech Research Institute Wetland Mitigation Site Suitability Tool Michigan Tech Research Institute s (MTRI) Wetland Mitigation Site Suitability Tool (WMSST) integrates data layers for eight biophysical

More information

Finance, Mining & Sustainability. The Gamsberg Zinc Project South Africa

Finance, Mining & Sustainability. The Gamsberg Zinc Project South Africa Finance, Mining & Sustainability The Gamsberg Zinc Project South Africa Project Summary Discovered in 1971 Anglo American purchased 33% interest in 1974 and increased interest to 100% in 1998 Feasibility

More information

Introduction to GIS (Basics, Data, Analysis) & Case Studies. 13 th May 2004. Content. What is GIS?

Introduction to GIS (Basics, Data, Analysis) & Case Studies. 13 th May 2004. Content. What is GIS? Introduction to GIS (Basics, Data, Analysis) & Case Studies 13 th May 2004 Content Introduction to GIS Data concepts Data input Analysis Applications selected examples What is GIS? Geographic Information

More information

Managing Lidar (and other point cloud) Data. Lindsay Weitz Cody Benkelman

Managing Lidar (and other point cloud) Data. Lindsay Weitz Cody Benkelman (and other point cloud) Data Lindsay Weitz Cody Benkelman Presentation Context What is lidar, and how does it work? Not this presentation! What can you do with lidar in ArcGIS? What does Esri recommend

More information

GEOLOGY AND GEOMORPHOLOGY Level. bachelor Semester. winter ECTS 9

GEOLOGY AND GEOMORPHOLOGY Level. bachelor Semester. winter ECTS 9 GEOLOGY AND GEOMORPHOLOGY ECTS 9 The subject includes knowledge of the construction of the Earth and the natural processes occurring deeply inside and on the surface of the Earth. It contains characteristics

More information

Global environmental information Examples of EIS Data sets and applications

Global environmental information Examples of EIS Data sets and applications METIER Graduate Training Course n 2 Montpellier - february 2007 Information Management in Environmental Sciences Global environmental information Examples of EIS Data sets and applications Global datasets

More information

Creating Slope-Enhanced Shaded-Relief Using Global Mapper

Creating Slope-Enhanced Shaded-Relief Using Global Mapper Creating Slope-Enhanced Shaded-Relief Using Global Mapper Kent D. Brown Utah Geological Survey Introduction The purpose of this document is to demonstrate that slope-enhanced hillshade, or shaded-relief

More information

GLOSSARY OF TERMS CHAPTER 11 WORD DEFINITION SOURCE. Leopold

GLOSSARY OF TERMS CHAPTER 11 WORD DEFINITION SOURCE. Leopold CHAPTER 11 GLOSSARY OF TERMS Active Channel The channel that contains the discharge Leopold where channel maintenance is most effective, sediment are actively transported and deposited, and that are capable

More information

John F. Cotton College of Architecture & Environmental Design California Polytechnic State University San Luis Obispo, California JOHN F.

John F. Cotton College of Architecture & Environmental Design California Polytechnic State University San Luis Obispo, California JOHN F. SO L I DMO D E L I N GAS A TO O LFO RCO N S T RU C T I N SO G LA REN V E LO PE S by John F. Cotton College of Architecture & Environmental Design California Polytechnic State University San Luis Obispo,

More information

CityGML goes to Broadway

CityGML goes to Broadway CityGML goes to Broadway Thomas H. Kolbe, Barbara Burger, Berit Cantzler Chair of Geoinformatics thomas.kolbe@tum.de September 11, 2015 Photogrammetric Week 2015, Stuttgart The New York City Open Data

More information

Relevance of moving window size in landform classification by TPI

Relevance of moving window size in landform classification by TPI Relevance of moving window size in landform classification by TPI Zbigniew Zwoliński Institute Geoecology and Geoinformation Adam Mickiewicz University in Poznań Dzięgielowa 27, 61-680 Poznań, Poland zbzw@amu.edu.pl

More information

720 Contour Grading. General. References. Resources. Definitions

720 Contour Grading. General. References. Resources. Definitions 720 Contour Grading General Contour grading directs water to a desired point, prevents erosion, provides noise deflection, provides visual fit of the facility into the landscape, and protects desirable

More information

Plan Plus Volume 1 No 1 2002 (117-123)

Plan Plus Volume 1 No 1 2002 (117-123) Plan Plus Volume 1 No 1 2002 (117-123) APPLICATION OF GIS (GEOGRAPHIC INFORMATION SYSTEM) FOR LANDSLIDE HAZARD ZONATION AND MAPPING DISASTER PRONE AREA: A STUDY OF KULEKHANI WATERSHED, NEPAL Purna Chandra

More information

Spatial Analyst Tutorial

Spatial Analyst Tutorial Copyright 1995-2010 Esri All rights reserved. Table of Contents About the ArcGIS Spatial Analyst Tutorial......................... 3 Exercise 1: Preparing for analysis............................ 5 Exercise

More information

Technical Study and GIS Model for Migratory Deer Range Habitat. Butte County, California

Technical Study and GIS Model for Migratory Deer Range Habitat. Butte County, California Technical Study and GIS Model for Migratory Deer Range Habitat, California Prepared for: Design, Community & Environment And Prepared by: Please Cite this Document as: Gallaway Consulting, Inc. Sevier,

More information

Developing sub-domain verification methods based on Geographic Information System (GIS) tools

Developing sub-domain verification methods based on Geographic Information System (GIS) tools APPROVED FOR PUBLIC RELEASE: DISTRIBUTION UNLIMITED U.S. Army Research, Development and Engineering Command Developing sub-domain verification methods based on Geographic Information System (GIS) tools

More information

Spatial support tools for biodiversity management: a case study of Bojanala Platinum District Municipality, South Africa

Spatial support tools for biodiversity management: a case study of Bojanala Platinum District Municipality, South Africa Spatial support tools for biodiversity management: a case study of Bojanala Platinum District Municipality, South Africa by Kanya Middleton, Strategic Environmental Focus Abstract It is a legal requirement

More information

Data source, type, and file naming convention

Data source, type, and file naming convention Exercise 1: Basic visualization of LiDAR Digital Elevation Models using ArcGIS Introduction This exercise covers activities associated with basic visualization of LiDAR Digital Elevation Models using ArcGIS.

More information

Development of an Impervious-Surface Database for the Little Blackwater River Watershed, Dorchester County, Maryland

Development of an Impervious-Surface Database for the Little Blackwater River Watershed, Dorchester County, Maryland Development of an Impervious-Surface Database for the Little Blackwater River Watershed, Dorchester County, Maryland By Lesley E. Milheim, John W. Jones, and Roger A. Barlow Open-File Report 2007 1308

More information

National Inventory of Landscapes in Sweden

National Inventory of Landscapes in Sweden Key messages Approaching the landscape perspective in monitoring experiences in the Swedish NILS program Johan Svensson, Future Forest Monitoring, 091112 Landscape level approaches are necessary to deal

More information

SESSION 8: GEOGRAPHIC INFORMATION SYSTEMS AND MAP PROJECTIONS

SESSION 8: GEOGRAPHIC INFORMATION SYSTEMS AND MAP PROJECTIONS SESSION 8: GEOGRAPHIC INFORMATION SYSTEMS AND MAP PROJECTIONS KEY CONCEPTS: In this session we will look at: Geographic information systems and Map projections. Content that needs to be covered for examination

More information

Implementation Planning

Implementation Planning Implementation Planning presented by: Tim Haithcoat University of Missouri Columbia 1 What is included in a strategic plan? Scale - is this departmental or enterprise-wide? Is this a centralized or distributed

More information

Working with Digital Elevation Models and Digital Terrain Models in ArcMap 9

Working with Digital Elevation Models and Digital Terrain Models in ArcMap 9 Working with Digital Elevation Models and Digital Terrain Models in ArcMap 9 1 TABLE OF CONTENTS INTRODUCTION...3 WORKING WITH DIGITAL TERRAIN MODEL (DTM) DATA FROM NRVIS, CITY OF KITCHENER, AND CITY OF

More information

An Introduction to Point Pattern Analysis using CrimeStat

An Introduction to Point Pattern Analysis using CrimeStat Introduction An Introduction to Point Pattern Analysis using CrimeStat Luc Anselin Spatial Analysis Laboratory Department of Agricultural and Consumer Economics University of Illinois, Urbana-Champaign

More information

A GIS helps you answer questions and solve problems by looking at your data in a way that is quickly understood and easily shared.

A GIS helps you answer questions and solve problems by looking at your data in a way that is quickly understood and easily shared. A Geographic Information System (GIS) integrates hardware, software, and data for capturing, managing, analyzing, and displaying all forms of geographically referenced information. GIS allows us to view,

More information

Integration of GIS and Multivariate Statistical Analysis in Master Plan Study on Integrated Agricultural Development in Lao PDR

Integration of GIS and Multivariate Statistical Analysis in Master Plan Study on Integrated Agricultural Development in Lao PDR Integration of GIS and Multivariate Statistical Analysis in Master Plan Study on Integrated Agricultural Development in Lao PDR GIS Makoto ISHIZUKA, Tetsunari GEJO, Shigeya OOTSUKA and Yukiyasu SUMI GIS

More information

State of Green Infrastructure in the Gauteng City-Region

State of Green Infrastructure in the Gauteng City-Region State of Green Infrastructure in the Gauteng City-Region Valuing Natural Capital Dialogue City of Johannesburg 26 th February 2014 Kerry Bobbins Researcher GCRO kerry.bobbins@gcro.ac.za Overview Structure

More information

The following was presented at DMT 14 (June 1-4, 2014, Newark, DE).

The following was presented at DMT 14 (June 1-4, 2014, Newark, DE). DMT 2014 The following was presented at DMT 14 (June 1-4, 2014, Newark, DE). The contents are provisional and will be superseded by a paper in the DMT 14 Proceedings. See also presentations and Proceedings

More information

Land Cover Mapping of the Comoros Islands: Methods and Results. February 2014. ECDD, BCSF & Durrell Lead author: Katie Green

Land Cover Mapping of the Comoros Islands: Methods and Results. February 2014. ECDD, BCSF & Durrell Lead author: Katie Green Land Cover Mapping of the Comoros Islands: Methods and Results February 2014 ECDD, BCSF & Durrell Lead author: Katie Green About the ECDD project The ECDD project was run by Bristol Conservation & Science

More information

v Software Release Notice -. Acquired Software

v Software Release Notice -. Acquired Software v Software Release Notice -. Acquired Software 1. Software Name: Software Version: ArcView GIs@ 3.3 2. Software Function: ArcView GIS 3.3, developed by Environmental Systems Research Institute, Inc. (ESRI@),

More information

Basic Elements of Reading Plans

Basic Elements of Reading Plans Center for Land Use Education and Research at the University of Connecticut Basic Elements of Reading Plans University of Connecticut. The University of Connecticut supports all state and federal laws

More information

Data Visualization Techniques and Practices Introduction to GIS Technology

Data Visualization Techniques and Practices Introduction to GIS Technology Data Visualization Techniques and Practices Introduction to GIS Technology Michael Greene Advanced Analytics & Modeling, Deloitte Consulting LLP March 16 th, 2010 Antitrust Notice The Casualty Actuarial

More information

Using Google Earth for Environmental Science Research

Using Google Earth for Environmental Science Research Using Google Earth for Environmental Science Research This document is up-to-date as of August 2013. If you have any questions or additions to this material please email dan.friess@nus.edu.sg. Note: this

More information

San Francisco Bay Ecotone Conservation and Management Decision Support System (DSS)

San Francisco Bay Ecotone Conservation and Management Decision Support System (DSS) 1 San Francisco Bay Ecotone Conservation and Management Decision Support System (DSS) Performance Report (June 2015) submitted by Brian Fulfrost (MS) Geospatial Lead Brian Fulfrost and Associates bfaconsult@gmail.com

More information

GIS Data in ArcGIS. Pay Attention to Data!!!

GIS Data in ArcGIS. Pay Attention to Data!!! GIS Data in ArcGIS Pay Attention to Data!!! 1 GIS Data Models Vector Points, lines, polygons, multi-part, multi-patch Composite & secondary features Regions, dynamic segmentation (routes) Raster Grids,

More information

LiDAR Data Management Lessons for Geospatial Data Managers

LiDAR Data Management Lessons for Geospatial Data Managers LiDAR Data Management Lessons for Geospatial Data Managers By: Morris County Department of Planning, Development & Technology Background 2005 Morris County LiDAR Acquisition 5 year Orthophotography Plan

More information

Modeling Fire Hazard By Monica Pratt, ArcUser Editor

Modeling Fire Hazard By Monica Pratt, ArcUser Editor By Monica Pratt, ArcUser Editor Spatial modeling technology is growing like wildfire within the emergency management community. In areas of the United States where the population has expanded to abut natural

More information

GIS MAPPING FOR IRRIGATION DISTRICT RAPID APPRAISALS Daniel J. Howes 1, Charles M. Burt 2, Stuart W. Styles 3 ABSTRACT

GIS MAPPING FOR IRRIGATION DISTRICT RAPID APPRAISALS Daniel J. Howes 1, Charles M. Burt 2, Stuart W. Styles 3 ABSTRACT GIS MAPPING FOR IRRIGATION DISTRICT RAPID APPRAISALS Daniel J. Howes 1, Charles M. Burt 2, Stuart W. Styles 3 ABSTRACT Geographic information system (GIS) mapping is slowly becoming commonplace in irrigation

More information

ERCB/AGS Information Series 136. Digital Mapping and 3D Visualization/ Modelling of Subsurface Geology Using ArcGIS 9.2 and Well Log Data

ERCB/AGS Information Series 136. Digital Mapping and 3D Visualization/ Modelling of Subsurface Geology Using ArcGIS 9.2 and Well Log Data ERCB/AGS Information Series 136 Digital Mapping and 3D Visualization/ Modelling of Subsurface Geology Using ArcGIS 9.2 and Well Log Data ERCB/AGS Information Series 136 Digital Mapping and 3D Visualization/Modelling

More information

3D Building Roof Extraction From LiDAR Data

3D Building Roof Extraction From LiDAR Data 3D Building Roof Extraction From LiDAR Data Amit A. Kokje Susan Jones NSG- NZ Outline LiDAR: Basics LiDAR Feature Extraction (Features and Limitations) LiDAR Roof extraction (Workflow, parameters, results)

More information

5. GIS, Cartography and Visualization of Glacier Terrain

5. GIS, Cartography and Visualization of Glacier Terrain 5. GIS, Cartography and Visualization of Glacier Terrain 5.1. Garhwal Himalayan Glaciers 5.1.1. Introduction GIS is the computer system for capturing, storing, analyzing and visualization of spatial and

More information

ArcGIS Data Models Practical Templates for Implementing GIS Projects

ArcGIS Data Models Practical Templates for Implementing GIS Projects ArcGIS Data Models Practical Templates for Implementing GIS Projects GIS Database Design According to C.J. Date (1995), database design deals with the logical representation of data in a database. The

More information

Optimal Cell Towers Distribution by using Spatial Mining and Geographic Information System

Optimal Cell Towers Distribution by using Spatial Mining and Geographic Information System World of Computer Science and Information Technology Journal (WCSIT) ISSN: 2221-0741 Vol. 1, No. 2, -48, 2011 Optimal Cell Towers Distribution by using Spatial Mining and Geographic Information System

More information

GIS 101 - Introduction to Geographic Information Systems Last Revision or Approval Date - 9/8/2011

GIS 101 - Introduction to Geographic Information Systems Last Revision or Approval Date - 9/8/2011 Page 1 of 10 GIS 101 - Introduction to Geographic Information Systems Last Revision or Approval Date - 9/8/2011 College of the Canyons SECTION A 1. Division: Mathematics and Science 2. Department: Earth,

More information

GEOENGINE MSc in Geomatics Engineering (Master Thesis) Anamelechi, Falasy Ebere

GEOENGINE MSc in Geomatics Engineering (Master Thesis) Anamelechi, Falasy Ebere Master s Thesis: ANAMELECHI, FALASY EBERE Analysis of a Raster DEM Creation for a Farm Management Information System based on GNSS and Total Station Coordinates Duration of the Thesis: 6 Months Completion

More information

AUTOMATED MAPPING OF LAND COMPONENTS FROM DIGITAL ELEVATION DATA

AUTOMATED MAPPING OF LAND COMPONENTS FROM DIGITAL ELEVATION DATA EARTH SURFACE PROCESSES AND LANDFORMS, VOL. 20, 13 1-1 37 (1995) AUTOMATED MAPPING OF LAND COMPONENTS FROM DIGITAL ELEVATION DATA J. R. DYMOND, R. C. DEROSE AND G. R. HARMSWORTH Manaaki Whenua - Landcare

More information

This is Geospatial Analysis II: Raster Data, chapter 8 from the book Geographic Information System Basics (index.html) (v. 1.0).

This is Geospatial Analysis II: Raster Data, chapter 8 from the book Geographic Information System Basics (index.html) (v. 1.0). This is Geospatial Analysis II: Raster Data, chapter 8 from the book Geographic Information System Basics (index.html) (v. 1.0). This book is licensed under a Creative Commons by-nc-sa 3.0 (http://creativecommons.org/licenses/by-nc-sa/

More information

Key words: Laser Scanning, LIDAR, Surveying and Mapping, Point Cloud, Geospatial software

Key words: Laser Scanning, LIDAR, Surveying and Mapping, Point Cloud, Geospatial software Volume 5, Issue 5, May 2015 ISSN: 2277 128X International Journal of Advanced Research in Computer Science and Software Engineering Research Paper Available online at: www.ijarcsse.com Comparative Study

More information

Modelling floods and damage assessment using GIS

Modelling floods and damage assessment using GIS HydroGIS 96: Application of Geographic Information Systems in Hydrology and Water Resources Management (Proceedings of the Vienna Conference, April 1996). IAHS Publ. no. 235, 1996. 299 Modelling floods

More information

APPENDIX H7: POOL SPREAD AREAS FOR INSTANTANEOUS TANK FAILURE

APPENDIX H7: POOL SPREAD AREAS FOR INSTANTANEOUS TANK FAILURE APPENDIX H7: POOL SPREAD AREAS FOR INSTANTANEOUS TANK FAILURE H7.1 Introduction H7.1.1.1 The extent of flow of liquid from a instantaneous tank failure has been assessed based on the physical modelling

More information

BROADBAND TRANSMISSION CAPACITY INDICATORS WTIM 25-27 September 2012, Bangkok, Thailand

BROADBAND TRANSMISSION CAPACITY INDICATORS WTIM 25-27 September 2012, Bangkok, Thailand BROADBAND TRANSMISSION CAPACITY INDICATORS WTIM 25-27 September 2012, Bangkok, Thailand Indicator 1: Transmission network length (Route kilometers) Definition: Transmission network length refers to the

More information

Deliverable 2.1: Multi-scale framework and indicators of hydromorphological processes and forms

Deliverable 2.1: Multi-scale framework and indicators of hydromorphological processes and forms 4 DELINEATION OF SPATIAL UNITS. 4.1 Regional Context: At this scale, no delineation is strictly necessary, since most catchments will fall within a single biogeographic region (various regionalisations

More information

Getting Started With LP360

Getting Started With LP360 Getting Started With LP360 10/30/2014 1 Contents What is LP360?... 3 System Requirements... 3 Installing LP360... 4 How to Enable the LP360 Extension... 4 How to Display the LP360 Toolbar... 4 How to Import

More information

Risk Analysis, GIS and Arc Schematics: California Delta Levees

Risk Analysis, GIS and Arc Schematics: California Delta Levees Page 1 of 7 Author: David T. Hansen Risk Analysis, GIS and Arc Schematics: California Delta Levees Presented by David T. Hansen at the ESRI User Conference, 2008, San Diego California, August 6, 2008 Abstract

More information

Project Title: Project PI(s) (who is doing the work; contact Project Coordinator (contact information): information):

Project Title: Project PI(s) (who is doing the work; contact Project Coordinator (contact information): information): Project Title: Great Northern Landscape Conservation Cooperative Geospatial Data Portal Extension: Implementing a GNLCC Spatial Toolkit and Phenology Server Project PI(s) (who is doing the work; contact

More information

Geography 3251: Mountain Geography Assignment III: Natural hazards A Case Study of the 1980s Mt. St. Helens Eruption

Geography 3251: Mountain Geography Assignment III: Natural hazards A Case Study of the 1980s Mt. St. Helens Eruption Name: Geography 3251: Mountain Geography Assignment III: Natural hazards A Case Study of the 1980s Mt. St. Helens Eruption Learning Objectives: Assigned: May 30, 2012 Due: June 1, 2012 @ 9 AM 1. Learn

More information

PPRD SOUTH ASSESSMENT TOOLS REGIONAL RISK ATLAS. Aim of the Atlas is to build a common risk assessment and

PPRD SOUTH ASSESSMENT TOOLS REGIONAL RISK ATLAS. Aim of the Atlas is to build a common risk assessment and PPRD SOUTH ASSESSMENT TOOLS REGIONAL RISK ATLAS Aim of the Atlas is to build a common risk assessment and mapping methodology among the Partner Countries in view to stimulate discussion on shared approaches

More information

Vector analysis - introduction Spatial data management operations - Assembling datasets for analysis. Data management operations

Vector analysis - introduction Spatial data management operations - Assembling datasets for analysis. Data management operations Vector analysis - introduction Spatial data management operations - Assembling datasets for analysis Transform (reproject) Merge Append Clip Dissolve The role of topology in GIS analysis Data management

More information

A New Map of Global Ecological Land Units

A New Map of Global Ecological Land Units A New Map of Global Ecological Land Units Roger Sayre, Ph.D. Senior Scientist for Ecosystems U.S. Geological Survey rsayre@usgs.gov Dawn Wright, Ph.D. Chief Scientist dwright@esri.com Charlie Frye, M.A.

More information

Introduction to Imagery and Raster Data in ArcGIS

Introduction to Imagery and Raster Data in ArcGIS Esri International User Conference San Diego, California Technical Workshops July 25, 2012 Introduction to Imagery and Raster Data in ArcGIS Simon Woo slides Cody Benkelman - demos Overview of Presentation

More information

METHODOLOGY FOR LANDSLIDE SUSCEPTIBILITY AND HAZARD MAPPING USING GIS AND SDI

METHODOLOGY FOR LANDSLIDE SUSCEPTIBILITY AND HAZARD MAPPING USING GIS AND SDI The 8th International Conference on Geo-information for Disaster Management Intelligent Systems for Crisis Management METHODOLOGY FOR LANDSLIDE SUSCEPTIBILITY AND HAZARD MAPPING USING GIS AND SDI T. Fernández

More information

Representing Geography

Representing Geography 3 Representing Geography OVERVIEW This chapter introduces the concept of representation, or the construction of a digital model of some aspect of the Earth s surface. The geographic world is extremely

More information

Data Sharing System (DSS) Data Entry Instruction for Archaeological Survey

Data Sharing System (DSS) Data Entry Instruction for Archaeological Survey Data Sharing System (DSS) Data Entry Instruction for Archaeological Survey Introduction The following data entry guidelines are to be followed for new Data Sharing System (DSS) entries. When updating previously

More information

Applying GIS Analysis to Archaeological Research in Canada

Applying GIS Analysis to Archaeological Research in Canada Applying GIS Analysis to Archaeological Research in Canada T A L K B Y D R. K I S H A S U P E R N A N T P R E S E N T E D A T G E O A L B E R T A 2 0 1 3 S E P T E M B E R 2 3, 2 0 1 3 Overview Review

More information

GEOGRAPHIC INFORMATION SYSTEMS CERTIFICATION

GEOGRAPHIC INFORMATION SYSTEMS CERTIFICATION GEOGRAPHIC INFORMATION SYSTEMS CERTIFICATION GIS Syllabus - Version 1.2 January 2007 Copyright AICA-CEPIS 2009 1 Version 1 January 2007 GIS Certification Programme 1. Target The GIS certification is aimed

More information

Photo & Image Sources

Photo & Image Sources Photo & Image Sources Module 1 GIS Overview GIS Layers image: MapCruzin.com http://www.mapcruzin.com/what-is-gis.htm 2D Map image: ESRI http://www.esri.com/news/arcnews/winter0607articles/winter0607gifs/p15p1.jpg

More information

The Effect of GIS Data Quality on Infrastructure Planning: School Accessibility in the City of Tshwane, South Africa

The Effect of GIS Data Quality on Infrastructure Planning: School Accessibility in the City of Tshwane, South Africa The Effect of GIS Data Quality on Infrastructure Planning: School Accessibility in the City of Tshwane, South Africa Dr Peter Schmitz 1,2, Sanet Eksteen 3 1 CSIR Built Environment, pschmitz@csir.co.za

More information

DEVELOPMENT OF WEB-BASED GIS INTERFACES FOR APPLICATION OF THE WEPP MODEL

DEVELOPMENT OF WEB-BASED GIS INTERFACES FOR APPLICATION OF THE WEPP MODEL DEVELOPMENT OF WEB-BASED GIS INTERFACES FOR APPLICATION OF THE WEPP MODEL D.C. Flanagan A, J.R. Frankenberger A, C.S. Renschler B and B.A. Engel C A National Soil Erosion Research Laboratory, USDA-ARS,

More information

Expert System for Solar Thermal Power Stations. Deutsches Zentrum für Luft- und Raumfahrt e.v. Institute of Technical Thermodynamics

Expert System for Solar Thermal Power Stations. Deutsches Zentrum für Luft- und Raumfahrt e.v. Institute of Technical Thermodynamics Expert System for Solar Thermal Power Stations Institute of Technical Thermodynamics Stuttgart, July 2001 - Expert System for Solar Thermal Power Stations 2 Solar radiation and land resources for solar

More information

Watershed Delineation

Watershed Delineation ooooo Appendix D: Watershed Delineation Department of Environmental Protection Stream Survey Manual 113 Appendix D: Watershed Delineation Imagine a watershed as an enormous bowl. As water falls onto the

More information

Geospatial Software Solutions for the Environment and Natural Resources

Geospatial Software Solutions for the Environment and Natural Resources Geospatial Software Solutions for the Environment and Natural Resources Manage and Preserve the Environment and its Natural Resources Our environment and the natural resources it provides play a growing

More information

Effects of Florida Under a 10 Meter Sea Level Rise

Effects of Florida Under a 10 Meter Sea Level Rise Effects of Florida Under a 10 Meter Sea Level Rise Chance B. Murray Dec. 7 2009 I. Goal Assess the effects a 10 meter sea level rise would have on Florida. Mission: Determine the length of Florida s coastline

More information

Decision Support System for Selecting Suitable Site for Disposing Solid Waste of Township

Decision Support System for Selecting Suitable Site for Disposing Solid Waste of Township Research Article ISSN 2277 9051 International Journal of Remote Sensing and GIS, Volume 1, Issue 1, 2012, 2-11 Copyright 2012, All rights reserved Research Publishing Group www.rpublishing.org Decision

More information

Request for Proposals for Topographic Mapping. Issued by: Teton County GIS and Teton County Engineering Teton County, Wyoming

Request for Proposals for Topographic Mapping. Issued by: Teton County GIS and Teton County Engineering Teton County, Wyoming Request for Proposals for Topographic Mapping Issued by: Teton County GIS and Teton County Engineering Teton County, Wyoming Proposals due: 2:00PM MDT July 1, 2015 Proposals may be delivered to: Teton

More information

How To Hydrologically Condition A Digital Dam

How To Hydrologically Condition A Digital Dam Program: Funding: Conservation Applications of LiDAR Data http://tsp.umn.edu/lidar Environment and Natural Resources Trust Fund Module: Instructor: Hydrologic Applications Sean Vaughn, DNR GIS Hydrologist

More information

APPLY EXCEL VBA TO TERRAIN VISUALIZATION

APPLY EXCEL VBA TO TERRAIN VISUALIZATION APPLY EXCEL VBA TO TERRAIN VISUALIZATION 1 2 Chih-Chung Lin( ), Yen-Ling Lin ( ) 1 Secretariat, National Changhua University of Education. General Education Center, Chienkuo Technology University 2 Dept.

More information

GIS Analysis for Applied Economists 1

GIS Analysis for Applied Economists 1 GIS Analysis for Applied Economists 1 Melissa Dell Department of Economics, Massachusetts Institute of Technology January, 2009. 1 Prepared for 14.170: Programming for Economists. Suggestions for revisions

More information

INTRODUCTION TO ARCGIS SOFTWARE

INTRODUCTION TO ARCGIS SOFTWARE INTRODUCTION TO ARCGIS SOFTWARE I. History of Software Development a. Developer ESRI - Environmental Systems Research Institute, Inc., in 1969 as a privately held consulting firm that specialized in landuse

More information

Converting GIS Datasets into CAD Format

Converting GIS Datasets into CAD Format Ball State University Libraries GIS Research and Map Collection Converting GIS Datasets into CAD Format Author: Angela Gibson, 6/13/2014 Overview: One of the most common requests from students is for GIS

More information

Composite Surfaces Tutorial

Composite Surfaces Tutorial Composite Surfaces Tutorial 4-1 Composite Surfaces Tutorial This tutorial will use the same model as the Materials & Loading Tutorial (with some modifications), to demonstrate how to perform a circular

More information

Introduction to the use of GIS in spatial epidemiology using ArcGIS9.x

Introduction to the use of GIS in spatial epidemiology using ArcGIS9.x Introduction to the use of GIS in spatial epidemiology using ArcGIS9.x Welcome Welcome to the distance learning course the Introduction to the use of GIS in spatial epidemiology using ArcGIS9.x. This on-line

More information

CIESIN Columbia University

CIESIN Columbia University Conference on Climate Change and Official Statistics Oslo, Norway, 14-16 April 2008 The Role of Spatial Data Infrastructure in Integrating Climate Change Information with a Focus on Monitoring Observed

More information

Calculating Area and Volume of Ponds and Tanks

Calculating Area and Volume of Ponds and Tanks SRAC Publication No. 103 Southern Regional Aquaculture Center August 1991 Calculating Area and Volume of Ponds and Tanks Michael P. Masser and John W. Jensen* Good fish farm managers must know the area

More information

COMPARISON OF OBJECT BASED AND PIXEL BASED CLASSIFICATION OF HIGH RESOLUTION SATELLITE IMAGES USING ARTIFICIAL NEURAL NETWORKS

COMPARISON OF OBJECT BASED AND PIXEL BASED CLASSIFICATION OF HIGH RESOLUTION SATELLITE IMAGES USING ARTIFICIAL NEURAL NETWORKS COMPARISON OF OBJECT BASED AND PIXEL BASED CLASSIFICATION OF HIGH RESOLUTION SATELLITE IMAGES USING ARTIFICIAL NEURAL NETWORKS B.K. Mohan and S. N. Ladha Centre for Studies in Resources Engineering IIT

More information

Burrowing Owl Distribution Modeling

Burrowing Owl Distribution Modeling Burrowing Owl Distribution Modeling Scientific Name: Athene cunicularia Distribution Status: Migratory Summer Breeder State Rank: S3B Global Rank: G4 Inductive Modeling Model Created By: Joy Ritter Model

More information

Earth Coordinates & Grid Coordinate Systems

Earth Coordinates & Grid Coordinate Systems Earth Coordinates & Grid Coordinate Systems How do we model the earth? Datums Datums mathematically describe the surface of the Earth. Accounts for mean sea level, topography, and gravity models. Projections

More information

PERCENTAGE OF TOTAL POPULATION LIVING IN COASTAL AREAS. Name: Percentage of Total Population Living in Coastal Areas.

PERCENTAGE OF TOTAL POPULATION LIVING IN COASTAL AREAS. Name: Percentage of Total Population Living in Coastal Areas. PERCENTAGE OF TOTAL POPULATION LIVING IN COASTAL AREAS Oceans, Seas and Coasts Coastal Zone Core indicator 1. INDICATOR (a) Name: Percentage of Total Population Living in Coastal Areas. (b) Brief Definition:

More information