Title: Sensing the Earth: From Global to Local
1Sensing the Earth From Global to Local
Gilberto Câmara (INPE, Brazil)
2Slides from LANDSAT
source USGS
Whither GIScience? GIScience branch of
information science that deals with geographical
space GIScience branch of science that deals
with geospatial information
Aral Sea
1973
1987
2000
Bolivia
1975
1992
2000
3My thesis today....
- Change is a key issue in our world
- Geo-sensor webs provide data about change
- Geo-sensor webs already exist and new technology
will improve them - Geo-sensor webs are enablers for a GIScience of
change - A GIScience of change is a growing research agenda
4Global Earth Observation System of Systems
Vantage Points
Capabilities
L1/HEO/GEO TDRSS Commercial Satellites
Far-Space
Permanent
LEO/MEO Commercial Satellites and Manned
Spacecraft
Near-Space
Airborne
Aircraft/Balloon Event Tracking and Campaigns
Deployable
Terrestrial
User Community
Forecasts Predictions
5Environmental geosensor networks
Why are environmental geosensors important?
LBA tower in Amazonia
6The fundamental question of our time
How is the Earths environment changing, and what
are the consequences for human civilization?
source IGBP
7October 21 2007
Charles launches campaign to save ravaged
rainforests
Prince Charles will this week join the battle
against climate change by launching an
organisation which calls for a new green
economics that recognises the world's rainforests
are worth more alive than dead.
Deforestation is responsible for 18-25 per cent
of global carbon emissions, an output second only
to energy production.
8Deforestation is responsible for 18-25 per cent
of global carbon emissions (Prince Charles)
How does anyone know?
Source Carlos Nobre (INPE)
9Despite solid improvements by scientists in
monitoring deforestation, the uncertainties are
still substantial. (Science, 27 April 2007)
10(No Transcript)
11Earth as a system
12Global Change
Where are changes taking place? How much change
is happening? Who is being impacted by the
change?
13Global Land Project
- What are the drivers and dynamics of variability
and change in terrestrial human-environment
systems? - How is the provision of environmental goods and
services affected by changes in terrestrial
human-environment systems? - What are the characteristics and dynamics of
vulnerability in terrestrial human-environment
systems?
14Impacts of global environmental change By 2020 in
Africa, agriculture yields could be cut by up to
50
sources IPCC and WMO
15Earth observation satellites provide key
information about global change
161986
1975
Global remote sensing shows the big picture
1992
17Global data is not enoughwe need to know what
happens in the local scale
Local data calibrates global models
18Aerosol Concentrations in Amazonia Changes from
very low values of 5-12 µg/m³ to very high 500
µg/m³ In areas affected by biomass burning
19Collapse of Amazon Rain Forest?
2100
2000
savanna
forest
caatinga
pastures
desert
Is there a tipping point for Amazonia?
source Oyama and Nobre, 2003
20Global Earth Observation System of Systems
Vantage Points
Capabilities
L1/HEO/GEO TDRSS Commercial Satellites
Far-Space
Permanent
LEO/MEO Commercial Satellites and Manned
Spacecraft
Near-Space
Airborne
Aircraft/Balloon Event Tracking and Campaigns
Deployable
Terrestrial
User Community
Forecasts Predictions
21EO data benefits to everyone
Is there an opportunity for GIScience in the
geosensors aimed at global environmental change?
22GIScience provides crucial links between nature
and society
Nature Physical equations Describe processes
Society Decisions on how to Use Earths
resources
23Slides from LANDSAT
source USGS
Aral Sea
1973
1987
2000
The geo-sensor web is an enabler for GIScience
research on modeling change
Bolivia
1975
1992
2000
24The Greek vision of spatial data
(x y)2 x2 2xy y2
Euclid
Egenhofer
spatial topology
25The Greek vision of spatial data
Aristotle
categories - kathgoria
Smith
SPAN ontologies
26Slides from LANDSAT
source USGS
GIScience and Change A Research
Programme Understanding how humans use
space Predicting changes resulting from human
actions Modeling the interaction between
society and nature
Aral Sea
1973
1987
2000
Bolivia
1975
1992
2000
27The Renaissance vision for space
Kepler
Frank
28The Renaissance vision
Galileo
Batty
29Geo-sensor webs already exist
LBA tower in Amazonia
30A Potential Geo-sensor Web The Land Surface
Imaging Constellation
TERRA (ASTER MODIS)
IRS
LANDSAT
RESOURCESAT
ALOS
SAC-C
SPOT
CBERS
Source Daniel Vidal-Madjar (France)
31Mount Etna (2002 eruption)
32Weather and climate
11,000 land stations (3000 automated) 900
radiosondes, 3000 aircraft 6000 ships, 1300
buoys 5 polar, 6 geostationary satellites
source WMO
33Brazils Data Collecting Satellite Network
34A vision for environmental geosensors in Brazil
Vision geosensors microsatellites glocal
35ARGOS Data Collection System (16000 plats)
650,000 messages processed daily
36Data collection services
Tracking Positions collected over a fixed period
of time
Monitoring Data from remote stations, fixed or
mobile
37ARGOS Marine Fisheries Service
source ARGOS
vessel name and ID, positions and routes
catch reports,.
Argos and GPS.
38Argo bouy network
39I am the Walrus
40Geosensor networks
Network of sensors that observe, record and
disseminate geographically referenced information
41Geosensor networks
Challenge send data from sensors to base station
maximizing quality and minimizing energy
consumption
42Geosensors new directions in IC technology
Projeto Smart Dust
Spec mote UC Berkeley
MICA mote
Intel mote
43Potential Benefits of Geosensor networks
Energy
Ecosystems
Health
Water Resources
Agriculture
Climate
Hazards
Biodiversity
44Environmental Monitoring
- Redwood trees
- (Sonoma County, CA, USA)
- Temperature, humidity and light sensors
measure the micro-climate of a redwood tree
www.eecs.berkeley.edu/get/sonoma/
45Geosensor networks
- Flood monitoring in England
Bird monitoring in Maine
http//envisense.org/floodnet/floodnet.htm
46Monitoring Tropical Forests
La Selva Biological Station in Costa Rica
Carbon Fluxes
47Disaster Monitoring
- Geo-sensor network installed in a volcano in
Equador
http//www.eecs.harvard.edu/mdw/proj/volcano/
48Geosensors for monitoring forests a vision
source Deborah Estrin (CENS, UCLA)
49 In-network and multi-scale processing
algorithms Scalability for densely deployed
sensors Low-latency for interactivity,
triggering, adaptation Integrity for challenging
system deployments
source Deborah Estrin (CENS, UCLA)
50Trends
source Deborah Estrin (CENS, UCLA)
51Dengue monitoring in Recife (Brazil)
52Recife 3D Morro da Conceição
Slides MNT e Animação 3D - Produzido pelos
Projetos SAUDAVEL , Defesa Civil /Recife e Depto
Cartografia UFPE Resp. José Constatino e José
Luis Potugal
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55Geo-sensorsfrom practice to theory
A GIScience-oriented theory of geo-sensors
56A sensor (data-centric view)
Sensor measurements measure (S x T) ? V S is
the set of location T is the set of times V is
the set of values
57What is a geo-sensor?
What is a geo-sensor?
Field (static) field S ? V The function field
gives the value of every location of a space
measure (s,t) v s ? S - set of locations in
space t ? T - is the set of times. v ? V - set
of values
58Slides from LANDSAT
snap (1973)
snap (1987)
snap (2000)
Aral Sea
Snapshots snap T ? Field snap T ? (S ? V)
The function snap produces a field with the
state of the space at each time.
1987
2000
Bolivia
snap (1975)
snap (1992)
snap (2000)
59Time series (deforestation in Amazonia)
series T ? V The function gives a set of values
in time
60History
Well 30 Well 40 Well 56 Well 57
hist S ? (T?V) hist S ? Series The function
hist produces the history of a location in space
61Trajectory
trajectory (T?S) a trajectory is a changing
location in time
62Moving data
mdata (T?S) ? V mdata Trajectory ? V a point
moving in space with changing values
63Our aim....
state (S x T) ?V ) We want the state of the
world at all locations and all times
64In practice....
1. hist1(s1),...., histn(sn) We have a set of
time series for fixed locations
2. snap1(t1),...., snapn(tn) We have a set of
space-based snapshots
3. mdata1(s1, t1),...., mdatan(tn) We have a
set of moving data
65Case 1 - Water monitoring in Brazilian Cerrado
- Wells observation
- 50 points (space and time)
- 50 semimonthly time series
- 11/10/03 06/03/2007
Rodrigo Manzione, Gilberto Câmara, Martin Knotters
66Cerrado (Brazilian savannah)
- Long dry season (may-october) supports a unique
array of drought- and fire- adapted plant species
and animals
67The Scientific Problem
- What is the impact of agriculture in water
content and water table depth? - What are the consequences and risk assessment for
water management?
68Data content case 1
Well 30 Well 40 Well 56 Well 57
hist1(s1),...., histn(sn) a set of time
series for fixed locations
69Handling a set of time series
Time Series Modeling (PIRFICT-model)
Model Parameters
Interpolate Map (Kriging)
70Fitting the model to the data
71Data from all geosensors in a time spatial field
Map of Water Table Depths levels (meters) for Oct
1st-15th 2004
72Accumulated data from geosensors space-time
series
MAY
JUNE
JULY
AUGUST
SEPTEMBER
Increase/decrease of water table depths (meters)
at Jardim River watershed (May, June, July,
August and September, 2004)
73Case Study 2 How do people use space in
Amazonia?
Loggers
Competition for Space
Source Dan Nepstad (Woods Hole)
74Case 2 Land intensification in Rondônia (BR)
Peasants were given lots with sizes of 25 ha to
100 ha in 1970s. What happened from 1970s to
2000s?
TM/Landsat, 5, 4, 3 (2000)
Prodes (INPE, 2000)
Escada, 2003.
75Landscape Analysis Land units and agents
Space Partitions in Rondônia
linking human activities to the landscape
76Agent Typology A simple example
Tropical Deforestation Spatial Patterns
Corridor, Diffuse, Fishbone, Geometric (Lambin,
1997)
77Landscape Ecology Metrics
- Patterns and differences are immediately
recognized by the eye brain - Landscape Ecology Metrics allow these patterns in
space to be described quantitatively
Source Phil Hurvitz
78Fragstats (patch metrics)
79Some patch metrics
- PARA perimeter/area ratio
- SHAPE perimeter/ (perimeter for a compact
region) - FRAC fractal dimension index
- CIRCLE circle index (0 for circular, 1 for
elongated) - CONTIG average contiguity value
- GYRATE radius of gyration
80Land use patterns Clearing size Actors Main land use Description
Linear (LIN) Variable Small households Subsistence agriculture Settlement parcels less than 50 ha
Irregular (IRR) Small (lt50 ha) Small farmers Cattle ranches subsistence agriculture Settlement parcels less than 50 ha. Irregular clearings near roads following settlement parcels.
Regular (REG) Medium- large (gt50 ha) Midsized and large farms Cattle ranching Patterns produced by land concentration.
irregular, linear, regular
81Decision tree for Vale do Anari
82- Changes in Incra parcels configuration by (Coy,
1987 Pedlowski e Dale, 1992 Escada 2003) - Fragmentation
- Transference
- Land concentration
83Vale do Anari 1982 -1985
REG
Patterns/Typology IRR Irregular Colonist
parcels LIN Linear roadside parcels REG
Regular agregation parcels
Pereira et al, 2005 Escada, 2003
84Vale do Anari 1985 - 1988
REG
Pereira et al, 2005 Escada, 2003
85Vale do Anari 1988 - 1991
REG
Pereira et al, 2005 Escada, 2003
86Vale do Anari 1991 - 1994
Pereira et al, 2005 Escada, 2003
87Vale do Anari 1994 - 1997
REG
Pereira et al, 2005 Escada, 2003
88Vale do Anari 1997 - 2000
REG
Pereira et al, 2005 Escada, 2003
89Vale do Anari 1985 - 2000
REG
REG
Pereira et al, 2005 Escada, 2003
90Marked land concentration Government plan for
settling many colonists in the area has failed.
Large farmers have bought the parcels in an
illicit way
91In practice....
state (S x T) ?V ) the previous state of the
world (or a theory about it)
hist1(s1),...., histn(sn) a set of time
series for fixed locations
theory_time (T ?V ) a theory about the time
evolution
state (S x T) ?V ) (NEW) a new guess about
the state of the world
92In practice....
state (S x T) ?V ) the previous state of the
world (or a theory about)
snap1(t1),...., snapn(tn) a set of
space-based snapshots
theory_space (S ?V ) a theory about the
process that describe space
state (S x T) ?V ) (NEW) a new guess about
the state of the world
93Models From Global to Local
Athmosphere, ocean, chemistry climate model
(resolution 200 x 200 km) Atmosphere only
climate model (resolution 50 x 50 km) Regional
climate model Resolution e.g 10 x 10
km Hydrology, Vegetation Soil Topography (e.g, 1
x 1 km) Regional land use change Socio-economic
changes Adaptative responses (e.g., 10 x 10 m)
94Models From Global to Local
snap T ? (S1 ? V) snap1(t1),., snapn(tn)
space-based snapshots
hist S2 ? (T?V) the history of a location in
space
95The Renaissance vision for space
Principia
Newton
Multiscale theory of space
Your picture here
????
96The trouble with current theories of scale
- Conservation of energy national demand is
allocated at local level - No feedbacks are possible people are guided from
the above
97The search for a new theory of scale
- Non-conservative feedbacks are possible
- Linking climate change and land change
- Future of cities and landscape integrate to the
earth system
98Why is it so hard to model change?
Uncertainty on basic equations
Social and Economic Systems
Quantum Gravity
Particle Physics
Living Systems
Global Change
Hydrological Models
Chemical Reactions
Meteorology
Solar System Dynamics
Complexity of the phenomenon
source John Barrow (after David Ruelle)
99Some references
Frank, A.U., One Step up the Abstraction Ladder
Combining Algebras - From Functional Pieces to a
Whole. COSIT'99, 1999. Galton, A., Fields and
Objects in Space, Time, and Space-time . Spatial
Cognition and Computation, 4(1), 2004. Grenon,
P. and Smith,B. SNAP and SPAN Towards Dynamic
Spatial Ontology.Spatial Cognition
Computation, Vol. 4, No. 1 pages 69-104. M
Goodchild, M Yuan, T Cova. Towards a general
theory of geographic representation in GIS, IJGIS
2007 Marcelino P.S. Silva, G Câmara, M Escada,
Ricardo Cartaxo M. Souza, Remote Sensing Image
Mining Detecting Agents of Land Use Change in
Tropical Forest Areas. International Journal of
Remote Sensing,in press, 2008. Gilberto Câmara,
M.Egenhofer, F.Fonseca, A.Monteiro. "Whats in An
Image?" COSIT01, Conference on Spatial
Information Theory, Morro Bay, EUA, 2001. Lecture
Notes in Computer Science, vol. 2205, pp.
474-488.
100Thank you!