Title: Elizabeth%20Sayed
1Project 2 Presentation
Spatial Databases GIS Case Studies
Elizabeth Sayed Elizabeth Stoltzfus December 4,
2002
UC Berkeley IEOR 215
2Agenda
- Spatial Database Basics
- Geographic Information Systems (GIS) Basics
- Case Studies
3Spatial Database Basics
4Spatial Databases Background
- Spatial databases provide structures for storage
and analysis of spatial data - Spatial data is comprised of objects in
multi-dimensional space - Storing spatial data in a standard database would
require excessive amounts of space - Queries to retrieve and analyze spatial data from
a standard database would be long and cumbersome
leaving a lot of room for error - Spatial databases provide much more efficient
storage, retrieval, and analysis of spatial data
5Types of Data Stored in Spatial Databases
- Two-dimensional data examples
- Geographical
- Cartesian coordinates (2-D)
- Networks
- Direction
- Three-dimensional data examples
- Weather
- Cartesian coordinates (3-D)
- Topological
- Satellite images
6Spatial Databases Uses and Users
- Three types of uses
- Manage spatial data
- Analyze spatial data
- High level utilization
- A few examples of users
- Transportation agency tracking projects
- Insurance risk manager considering location risk
profiles - Doctor comparing Magnetic Resonance Images (MRIs)
- Emergency response determining quickest route to
victim - Mobile phone companies tracking phone usage
7Spatial Databases Uses and Users
- Three types of uses
- Manage spatial data
- Analyze spatial data
- High level utilization
- A few examples of users
- Transportation agency tracking projects
- Insurance risk manager considering location risk
profiles - Doctor comparing Magnetic Resonance Images (MRIs)
- Emergency response determining quickest route to
victim - Mobile phone user determining current relative
location of businesses
8Spatial Database Management System
- Spatial Database Management System (SDBMS)
provides the capabilities of a traditional
database management system (DBMS) while allowing
special storage and handling of spatial data. - SDBMS
- Works with an underlying DBMS
- Allows spatial data models and types
- Supports querying language specific to spatial
data types - Provides handling of spatial data and operations
9SDBMS Three-layer Structure
- SDBMS works with a spatial application at the
front end and a DBMS at the back end - SDBMS has three layers
- Interface to spatial application
- Core spatial functionality
- Interface to DBMS
DBMS
10Spatial Query Language
- Number of specialized adaptations of SQL
- Spatial query language
- Temporal query language (TSQL2)
- Object query language (OQL)
- Object oriented structured query language (O2SQL)
- Spatial query language provides tools and
structures specifically for working with spatial
data - SQL3 provides 2D geospatial types and functions
11Spatial Query Language Operations
- Three types of queries
- Basic operations on all data types (e.g. IsEmpty,
Envelope, Boundary) - Topological/set operators (e.g. Disjoint, Touch,
Contains) - Spatial analysis (e.g. Distance, Intersection,
SymmDiff)
12Spatial Data Entity Creation
- Form an entity to hold county names, states,
populations, and geographies - CREATE TABLE County(
- Name varchar(30),
- State varchar(30),
- Pop Integer,
- Shape Polygon)
- Form an entity to hold river names, sources,
lengths, and geographies - CREATE TABLE River(
- Name varchar(30),
- Source varchar(30),
- Distance Integer,
- Shape LineString)
13Example Spatial Query
- Find all the counties that border on Contra Costa
county - SELECT C1.Name
- FROM County C1, County C2
- WHERE Touch(C1.Shape, C2.Shape) 1 AND C2.Name
Contra Costa - Find all the counties through which the Merced
river runs - SELECT C.Name, R.Name
- FROM County C, River R
- WHERE Intersect(C.Shape, R.Shape) 1 AND R.Name
Merced
CREATE TABLE County( Name varchar(30),
State varchar(30), Pop Integer,
Shape Polygon)
CREATE TABLE River( Name varchar(30),
Source varchar(30), Distance Integer,
Shape LineString)
14Geographic Information System (GIS) Basics
15GIS Applications
- 1. Cartographic
- Irrigation
- Land evaluation
- Crop Analysis
- Air Quality
- Traffic patterns
- Planning and facilities management
- 2. Digital Terrain Modeling
- Earth science resources
- Civil Engineering Military Evaluation
- Soil Surveys
- Pollution Studies
- Flood Control
- 3. Geographic objects
- Car navigation systems
- Utility distribution and consumption
- Consumer product and services
16GIS Data Format
- Modeling
- Vector geometric objects such as points, lines
and polygons - Raster array of points
- Analysis
- Geomorphometric slope values, gradients,
aspects, convexity - Aggregation and expansion
- Querying
- Integration
- Relationship and conversion among vector and
raster data
17GIS Data Modeling using Objects Fields
(0,4)
Pine Pine
Fir Oak
(0,2)
(0,0)
(2,0)
(4,0)
Object Viewpoint
Field Viewpoint
Pine 0ltxlt4 2ltylt4
Name Shape
Pine (0,2), (4,2), (4,4), (0,4)
Fir (0,0), (2,0), (2,2), (0,2)
Oak (2,0), (4,0), (4,2), (2,2)
Fir 0ltxlt2 0ltylt2
Oak 2ltxlt4 0ltylt2
Source Spatial Pictogram Enhanced Data Models
pg 79
18Conceptual Data Modeling
- Relational Databases ER diagram
- Limitations for ER with respect to Spatial
databases - Can not capture semantics
- No notion of key attributes and unique OIDs in a
field model - ER Relationship between entities derived from
application under consideration - Spatial Relationships are inherent between
objects - Solution Pictograms for Spatial Conceptual
Data-Modeling
19Pictograms - Shapes
- Types Basic Shapes, Multi-Shapes, Derived
Shapes, Alternate Shapes, Any possible Shape,
User-Defined Shapes
Basic Shapes Alternate Shapes
Multi-Shapes Any Possible Shape
Derived Shapes User Defined Shape
N
0, N
!
20Extending the ER Diagram with Spatial Pictograms
State Park Example
Standard ER Diagram
Spatial ER Diagram
LineID
RName
RName
River
Supplies_to
River
Supplies_to
PolygonID
FoName
FoName
FacName
Touches
FacName
Facility
Forest
Forest
Facility
Belongs_to
Belongs_to
PointID
Within
Monitors
Monitors
Fire Station
Fire Station
FiName
FiName
PointID
21Case Studies
- Specific applications of spatial databases
22Case Study Wetlands
- Objective To predict the spatial distribution
of the location of bird nests in the wetlands - Location Darr and Stubble on the shores of lake
Erie in Ohio - Focus
- Vegetation Durability
- Distance to Open Water
- Water Depth
- Assumptions with Classical Data mining
- Data is independently generated no
autocorrelation - Local vs. global trends
- Spatial accuracy
- Predictions vs. actual
- Impact
Location of Nests
A
A
A
Actual Pixel Locations
P
P P A
A A
Case 1 Possible Prediction
P A
P P
A A
Case 2 Possible Prediction
Source Whats Spatial About Spatial Data Mining
pg 490
23Case Study Green House Gas Emission Estimations
- Objective
- To assess the impact of land-use and land cover
changes on ground carbon stock and soil surface
flux of CO2, N2O and CH4 in Jambi Province,
Indonesia - Methodology
- Initiated by development of land-use/land cover
maps and followed by field measurements - Spatial database construction development based
on 1986 and 1992 land-use/land cover maps that
developed from Landsat MSSR and SPOT - Weight of sample components of the tree and
streams, branches, twigs, etc were estimated from
equations and literature - Emission rates were developed by plotting and
analyzing collected air samples - Field data measurements and GIS spatial data were
combined using a Look Up Table of Arc/Info.
Source Spatial Database Development for green
house gas emission Estimation using remote
sensing and GIS
24Case Study Green House Gas Emission Estimations
(cont)
- Results
- Able to quantitatively compare emission changes
between 1986 to 1992 - Determined that there was a loss of 8.3 million
tons of Carbon - Proportion of primary forest decreased from 19.3
to 12.5 - Showed 24 of primary forest was converted into
logged forest, shrub, cash crops - Greenhouse gas emission varied depending on the
site condition and season. - Process gave impacts of greenhouse gas on the
soil surface
25Case Study Pantanal Area, Brazil
- Objective To assess the drastic land use
changes in the Pantanal region since 1985 - Data Source
- 3 Landsat TM images of the Pantal study area from
1985, 1990, 1996 - A land-use survey from 1997
- Assessment Methodology
- Normalized Difference Vegetation Index (NDVI) was
computed for each year - NDVI maps of the three years combined and
submitted to multi-dimensional image segmentation - Classified vegetation
- Produced a color composite by year that
identified the density of vegetation
Source Integrated Spatial Databases pg 116
26Conclusion
- Many varied applications of spatial databases
- Stores spatial data in various formats specific
to use - Captures spatial data more concisely
- Enables more thorough understanding of data
- Retrieves and manipulates spatial data more
efficiently and effectively
27(No Transcript)
28Problem 1 Solution
- a) Find all cities that are located within
Marin County. - SELECT C2.Name
- FROM County C1, City C2
- WHERE Within(C1.Shape, C2.Shape) 1 AND C1.Name
Marin - b) Find any rivers that borders on Mendocino
County. - SELECT R.Name
- FROM County C, River R
- WHERE Touch(C.Shape, R.Shape) 1 AND C.Name
Mendocino - c) Find the counties that do not touch on Orange
County. - SELECT C1.Name
- FROM County C1, County C2
- WHERE Disjoint(C1.Shape, C2.Shape) 1 AND
C2.Name Orange
29Problem 2 Solution
ClosetID
Length
Type
Closet
Hallway
RoomID
Accesses
HallID
Belongs_To
Room
Belongs_To
FurnID
Belongs_To
Furniture
Name