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Combine historical track issue data
and historical high resolution
meteorological data with machine
learning.
Combine Multiple Datasets
Water
The Motive
Do well with the Details by
embracing the Big Picture
Prof. David Lary
+1 (972) 489-2059
http://davidlary.info
david.lary@utdallas.edu
Center for Space Science
Worst Drought in 1,000 Years Predicted for AmericanĀ West
A paddle wheeler and a small motorboat sail on Lake Mead, North America's largest man-made reservoir. The water is at its
lowest level since the Hoover Dam was built in the 1930s. The white "bathtub ring" of mineral deposits on the rocks marks past
water levels.
PUBLISHED FEBRUARY 12, 2015
Western U.S. Drought Prompts
Disaster Declarations In 11 States
By MICHELLE RINDELS 01/16/14 07:51 PM ET EST
LAS VEGAS (AP) ā€” Federal ofļ¬cials have designated portions of 11 drought-
ridden western and central states as primary natural disaster areas,
highlighting the ļ¬nancial strain the lack of rain is likely to bring to farmers in
those regions.
The announcement by the U.S. Department of Agriculture on Wednesday
included counties in Colorado, New Mexico, Nevada, Kansas, Texas, Utah,
Arkansas, Hawaii, Idaho, Oklahoma and California.
Rancher Ralph Miller, 79, checks on one of many ā€œstock tanksā€ of water that are
receding due to the severe drought. ā€œIā€™d say itā€™s just about as bad as it can get.ā€
Barnhart, Texas
ā€œWater is the new oilā€
Jim Rogers, chief executive of Duke Energy
... and many others
Water crisis in California, Texas threatens
US food security
Western water scarcity issues becoming more severe
Western Farm Press, Jun. 5, 2012
University of Texas at Austin
California and Texas produced agricultural products worth $56 billion
in 2007, accounting for much of the nation's food production. They
also account for half of all groundwater depletion in the U.S.,
mainly as a result of irrigating crops.
The nationā€™s food supply may be vulnerable to rapid groundwater
depletion from irrigated agriculture, according to a new study by
researchers at The University of Texas at Austin and elsewhere.
http://westernfarmpress.com/irrigation/water-crisis-california-texas-threatens-us-food-security
Since 1980 the population
of Texas has more than
doubled, but the reservoir
capacity has remained
almost unchanged.
During 2011the reservoir
levels were the lowest
during Sep-Dec that they
have been since 1990.
In 2015 we are starting out
with lower levels than 2013.
Smarter irrigation control is invaluable!
If we can use existing
infrastructure it is even better!
.... from farm, to corporate campus, to golf course, to your back yard.
When great societal need meets
appropriate scalable solution
there is much societal and
economic beneļ¬t to be
gained
How?
California Children Example
DATE: 12-Feb-2010
DOC NO: 0115056
ISSUE: 02
DMC DATA PRODUCT MANUAL
STATUS: FINAL
Figure 4: Detector and channel layout of the SLIM-6-22 imager
Imager Bank 0
Channel 6
Green
Channel 5
Red
Channel 4
NIR
Imager Bank 1
Channel 1
NIR
Channel 2
Red
Channel 3
Green
Pixel 1
Pixel 14436
Pixel 14436
Pixel 1
uneven irrigation
blown valves lead to ļ¬‚ooding
Sports ļ¬elds
agricultural test plots
22 m resolution
On average, systems have water
losses of about 17 percent.
49
Can you tell which grass has had more water?
Zooming in
Neighborhood
Trees
ā€˜greenā€™
pond
golf
course
gated community
dry grass
Trees
Trees
Sports Field
20 lb Airborne hyperspectral imaging system
385 channels between 400-1,700 nm
Hyperspectral data cube
J S Famiglietti, and M Rodell Science 2013;340:1300-1301
an accuracy of 1.5 cm equivalent water height.
Because GRACE measures changes in
total water storage, it integrates the impacts
of natural climate ļ¬‚uctuations, global change,
and human water use, including groundwater
extraction, which in many parts of the world
is unmeasured and unmanaged. GRACE-
derived rates of groundwater losses in the
worldā€™s major aquifer systems (4ā€“6) under-
score the critical need to improve monitor-
ing and regulation of groundwater systems
before they run dry.
Regional ļ¬‚ooding and drought are driven
by the surplus or deļ¬cit of water in a river
basin or an aquifer, yet few hydrologic
observing networks yield sufļ¬cient data for
comprehensive monitoring of changes in
the total amount of water stored in a region.
GRACE observations have helped to fill
this gap. They have been used to character-
ize regional ļ¬‚ood potential (8) and to assess
water storage deficits in the U.S. Drought
Monitor (9) and are included in annual State
of the Climate reports (10). As an integrated
measure of all surface and groundwater stor-
age changes, GRACE data implicitly contain
a record of seasonal to interannual water stor-
key tools for predicting future water avail-
ability, difļ¬cult to validate. Low-resolution
GRACE data, when combined with higher-
resolution model simulations, provide an
independent constraint on simulated water
balances, while also adding spatial detail to
GRACEā€™s low-resolution perspective (11).
They are widely used to evaluate land surface
models used by weather and climate forecast-
ing centers around the world (12).
Evapotranspiration is a key factor in
interbasin water allocations, yet because it
disperses into the atmosphere in the vapor
phase, it confounds standard measurement
techniques. The ability of GRACE to weigh
changes in water stored in an entire river
basin allows evapotranspiration to be esti-
mated in a water balance framework (13).
Transboundary water availability issues
require sharing hydrologic data across politi-
cal boundaries. However, national hydrolog-
ical records are often withheld for political,
socioeconomic, and defense purposes, com-
plicating regional water management discus-
sions. Several studies have used GRACE data
to circumvent international data denial prac-
tices, including in those involving lakes (14),
higher spatial (<50,000 km ) and tempor
(weekly or biweekly) resolution, for exam
ple through novel orbital conļ¬gurations, s
that smaller river basins and aquifers can b
observed directly.The availability of GRAC
data at these ļ¬ner scales, at which most plan
ning decisions are made, would likely ensu
their broader use in water management.
The GRACE-FO mission is on sched
ule for a 2017 launch, but a next-generatio
improved GRACE mission is still unde
design and as yet unconfirmed. Given i
demonstrated contributions to date and th
potential for much more, a future without
GRACE mission in orbit would be an unfo
tunate and unnecessarily risky backward ste
for regional water management.
References
1. P. J. Durack et al., Science 336, 455 (2012).
2. K. E. Trenberth, Clim. Res. 47, 123 (2011).
3. I. M. Held, B. J. Soden, J. Clim. 19, 5686 (2006).
4. V. M. Tiwari, J. Wahr, S. Swenson, Geophys. Res. Lett. 36,
L18401 (2009).
5. B. R. Scanlon et al., Proc. Natl. Acad. Sci. U.S.A. 109,
9320 (2012).
6. K. A. Voss et al., Water Resour. Res. 49, 904 (2013).
7. B. D. Tapley et al., Science 305, 503 (2004).
8. J. T. Reager, J. S. Famiglietti, Geophys. Res. Lett. 36,
L23402 (2009).
9. R. Houborg et al., Water Resour. Res. 48, W07525 (2012
10. J. Blunden, D. S. Arndt, Eds., Bull. Am. Meteorol. Soc. 9
S1 (2012).
11. B. F. Zaitchik et al., J. Hydrometeorol. 9, 535 (2008).
12. S. C. Swenson, P. C. D. Milly, Water Resour. Res. 42,
W03201 (2006).
13. G. Ramillien et al., Water Resour. Res. 42, W10403 (2006
14. S. Swenson, J. Wahr, J. Hydrol. 370, 163 (2009).
15. J. S. Famiglietti, Abstract GC31D-01, fall meeting, AGU
San Francisco, 3 to 7 December 2012.
Mixed picture. Between 2003 and 2012, GRACE data show water losses in agricultural regions such as Cali-
forniaā€™s Central Valley (1) ( 1.5 Ā± 0.1 cm/year) and the Southern High Plains Aquifer (2) ( 2.5 Ā± 0.2 cm/
year), caused by overreliance on groundwater to supply irrigation water. Regions where groundwater is being
depleted as a result of prolonged drought include Houston (3) ( 2.3 Ā± 0.6 cm/year), Alabama (4) ( 2.1 Ā±
0.8 cm/year), and the Mid-Atlantic states (5) ( 1.8 Ā± 0.6 cm/year). Water storage is increasing in the ļ¬‚ood-
prone Upper Missouri River basin (6) (2.5 Ā± 0.2 cm/year). See ļ¬g. S1 for monthly time series for all hot spots.
Data from (15) and from GRACE data release CSR RL05.
Summary
ā€¢ Vegetation Index is dependent on amount of
irrigation
ā€¢ Regular (weekly) remote sensing inspection
could allow us to:
ā€¢ Appropriate irrigation zones
ā€¢ Help identify regions of over watering
ā€¢ Help identify any burst pipes/valves
ā€¢ Optimize irrigation patterns
ā€¢ Automate sprinkler system controls
ā€¢ Progressively more beneļ¬t as a speciļ¬c history
of the plots/site is built up
Stage 2
FUTURE Water Management
Why Agriculture? ~80% water use US (USDA 2013)
Challenges: Climate change, Drought, Population, non-ag water uses.
Water Use Efficiency: ~50% US (USDA 2004)
Water Mgmt.
ā€œSmart-GRID*ā€
Delivery
Models
Basin
Geodata
Water/Crop
Status & Forecast
Water Need
Status & Forecast
Water
Agric +Others
Status & Forecast
Current Water
Mgmt.
Delivery
Models
Basin
Geodata
Water/Crop
Status & Forecast
Water
Status & Forecast
Water
Agric +Others
Status & Forecast
Water use based on:
Experience Limited estimations
No related info
CURRENT Water Management
CWMIS Case Example: Water Use vs. Delivery
TOP: crop water use vs. water delivery (ac-ft).
BOTTOM: water use difference (ac-ft)
Typically save at least 10%
Can be done on a field by field, campus by campus, home by home,
or golf course by golf course basis or for an entire basin.
Alfonso Torres
Culex tarsalis
West Nile Virus
The same data infrastructure can also
be used to help combat West Nile Virus
by identifying breeding sites.
Malaria Prediction
Using Satellite Data
P. vivax is carried by the female Anopheles mosquito
Plasmodium vivax is a protozoal parasite and a human
pathogen. The most frequent and widely distributed
cause of recurring (Benign tertian) malaria, P. vivax is
one of the six species of malaria parasites that
commonly infect humans.[1] It is less virulent than
Plasmodium falciparum, the deadliest of the six, but
vivax malaria can lead to severe disease and death.[2]
[3] P. vivax is carried by the female Anopheles mosquito,
since it is only the female of the species that bite.
Plasmodium vivax
Plasmodium falciparum http://www.worldmalariareport.org/
Seasonal climatic suitability for malaria transmission (CSMT)
Climatic conditions are considered to be suitable for transmission when the monthly precipitation
accumulation is at least 80 mm, the monthly mean temperature is between 18Ā°C and 32Ā°C and the
monthly relative humidity is at least 60%. These thresholds are based on a consensus of the
literature. In practice, the optimal and limiting conditions for transmission are dependent on the
particular species of the parasite and vector.
Commentary: Web-based climate information resources for malaria control in Africa
Emily K Grover-Kopec, M Benno Blumenthal, Pietro Ceccato, Tufa Dinku, Judy A Omumbo and Stephen J Connor*
Malaria Journal 2006, 5:38 doi:10.1186/1475-2875-5-38
0 500 1,000 Km
Vectorial Capacity
In Zones with Malaria Epidemic Potential
05 August - 12 August 2013
VCAP Values
0
0 - 2
2 - 4
4 - 6
6 - 8
8 - 10
10 - 15
15 - 20
> 20
Country Boundaries
Satellite imagery can be used to track mosquito habitats.
High-resolution (5 m) satellite images can identify
very small water bodies, wetlands and other
malaria-relevant land-cover types.
Of the 225 million annual reported
cases of the disease, 212 million of
these occur in Africa. Of the
800,000 Malaria-related deaths
each year, 90% of these fatalities
occur in sub-Saharan Africa.
http://www.itweb.co.za/index.php?option=com_content&view=article&id=52695
T H R I V E
T I M E LY H E A LT H I N D I C AT O R S U S I N G R E M O T E S E N S I N G &
I N N O VAT I O N F O R T H E V I TA L I T Y O F T H E E N V I R O N M E N T
Why we care so much?
Approximately 50 million Americans have
allergic diseases, including asthma and
allergic rhinitis, both of which can be
exacerbated by PM2.5.
Every day in America 44,000 people have an
asthma attack, and because of asthma
36,000 kids miss school, 27,000 adults miss
work, 4,700 people visit the emergency
room, 1,200 people are admitted to the
hospital, and 9 people die.
Air pollution in Ulaanbaatar, Mongolia
Unprecedented levels of air pollution in Singapore and Malaysia in June led to respiratory illnesses, school closings, and
grounded aircraft.Ā  This year it was so bad that in some affected areas there was a 100 percent rise in the number of asthma
cases, and the government of Malaysia distributed gas masks.
MODIS Aqua July 21, 2013.
David Lary
PM2.5 Invisible Killer
TypesofbiologicalMaterialTypesofDustTypesofParticulatesGasMolecules
0.0001 Ī¼m 0.001 Ī¼m 0.01 Ī¼m 0.1 Ī¼m 1 Ī¼m 10 Ī¼m 100 Ī¼m 1000 Ī¼m
Pollen
Mold Spores
House Dust Mite Allergens
Bacteria
Cat Allergens
Viruses
Heavy Dust
Settling Dust
Suspended Atmospheric Dust
Cement Dust
Fly Ash
Oil Smoke
Smog
Tobacco Smoke
Soot
Gas Molecules
Decreased Lung Function < 10 Ī¼m
Skin & Eye Disease < 2.5 Ī¼m
Tumors < 1 Ī¼m
Cardiovascular Disease < 0.1 Ī¼m
Hair
Pin
Cell
0.0001 Ī¼m 0.001 Ī¼m 0.01 Ī¼m 0.1 Ī¼m 1 Ī¼m 10 Ī¼m 100 Ī¼m 1000 Ī¼m
PM10 particles
PM2.5 particles
PM0.1 ultra ļ¬ne particles PM10-2.5 coarse fraction
0.1 mm 1 mm
Table!1.!PM!and!health!outcomes!(modified!from!Ruckerl*et*al.!(2006)).!
!!
Health*Outcomes!
Short9term*Studies* Long9term*Studies*
PM10! PM2.5! UFP! PM10! PM2.5! UFP!
Mortality* !! !! !! !! !! !!
!!!!All!causes! xxx!! xxx!! x! xx! xx! x!
!!!!Cardiovascular! xxx! xxx! x!! xx! xx! x!
!!!!Pulmonary! xxx! xxx! x! xx! xx! x!
Pulmonary!effects! !! !! !! !! !! !!
!!!!Lung!function,!e.g.,!PEF! xxx! xxx! xx! xxx! xxx! !!
!!!!Lung!function!growth! !! !! !! xxx! xxx! !!
Asthma!and!COPD!exacerbation! !! !! !! !! !! !!
!!!!Acute!respiratory!symptoms! !! xx! x! xxx! xxx! !!
!!!!Medication!use! !! !! x! !! !! !!
!!!!Hospital!admission! xx! xxx! x! !! !! !!
Lung!cancer! !! !! !! !! !! !!
!!!!Cohort! !! !! !! xx! xx! x!
!!!!Hospital!admission! !! !! !! xx! xx! x!
Cardiovascular!effects! !! !! !! !! !! !!
!!!!Hospital!admission! xxx! xxx! !! x! x! !!
ECG@related!endpoints! !! !! !! !! !! !!
!!!!Autonomic!nervous!system! xxx! xxx! xx! !! !! !!
!!!!Myocardial!substrate!and!vulnerability! !! xx! x! !! !! !!
Vascular!function! !! !! !! !! !! !!
!!!!Blood!pressure! xx! xxx! x! !! !! !!
!!!!Endothelial!function! x! xx! x! !! !! !!
Blood!markers! !! !! !! !! !! !!
!!!!Pro!inflammatory!mediators! xx! xx! xx! !! !! !!
!!!!Coagulation!blood!markers! xx! xx! xx! !! !! !!
!!!!Diabetes! x! xx! x! !! !! !!
!!!!Endothelial!function! x! x! xx! !! !! !!
Reproduction! !! !! !! !! !! !!
!!!!Premature!birth! x! x! !! !! !! !!
!!!!Birth!weight! xx! x! !! !! !! !!
!!!!IUR/SGA! x! x! !! !! !! !!
Fetal!growth! !! !! !! !! !! !!
!!!!Birth!defects! x! !! !! !! !! !!
!!!!Infant!mortality! xx! x! !! !! !! !!
!!!!Sperm!quality! x! x! !! !! !! !!
Neurotoxic!effects! !! !! !! !! !! !!
!!!!Central!nervous!system!! !! x! xx! !! !! !!
x, few studies; xx, many studies; xxx, large number of studies.
Hourly Measurements from 55 countries and more than 8,000 measurement sites from 1997-present
Aqua DeepBlue
Rank Source Variable Type
1 Satellite Product Tropospheric NO2 Column Input
2 Satellite Product Solar Azimuth Input
3 Meteorological Analyses Air Density at Surface Input
4 Satellite Product Sensor Zenith Input
5 Satellite Product White-sky Albedo at 470 nm Input
6 Population Density Input
7 Satellite Product Deep Blue Surface Reļ¬‚ectance 470 nm Input
8 Meteorological Analyses Surface Air Temperature Input
9 Meteorological Analyses Surface Ventilation Velocity Input
10 Meteorological Analyses Surface Wind Speed Input
11 Satellite Product White-sky Albedo at 858 nm Input
12 Satellite Product White-sky Albedo at 2,130 nm Input
13 Satellite Product Solar Zenith Input
14 Meteorological Analyses Surface Layer Height Input
15 Satellite Product White-sky Albedo at 1,240 nm Input
16 Satellite Product Deep Blue Surface Reļ¬‚ectance 660 nm Input
17 Satellite Product Deep Blue Surface Reļ¬‚ectance 412 nm Input
18 Satellite Product White-sky Albedo at 1,640 nm Input
19 Satellite Product Sensor Azimuth Input
20 Satellite Product Scattering Angle Input
21 Meteorological Analyses Surface Velocity Scale Input
22 Satellite Product Cloud Mask Qa Input
23 Satellite Product White-sky Albedo at 555 nm Input
24 Satellite Product Deep Blue Aerosol Optical Depth 550 nm Input
25 Satellite Product Deep Blue Aerosol Optical Depth 660 nm Input
26 Satellite Product Deep Blue Aerosol Optical Depth 412 nm Input
27 Meteorological Analyses Total Precipitation Input
28 Satellite Product White-sky Albedo at 648 nm Input
29 Satellite Product Deep Blue Aerosol Optical Depth 470 nm Input
30 Satellite Product Deep Blue Angstrom Exponent Land Input
31 Meteorological Analyses Surface Speciļ¬c Humidity Input
32 Satellite Product Cloud Fraction Land Input
In-situ Observation PM2.5 Target
This is a BigData Problem of
Great Societal Relevance
ā€¢ Collecting data in real time from national and
global networks requires bandwidth.
ā€¢ With the next generation of wearable sensors and
the internet of things this data volume will rapidly
increase.
ā€¢ A variety of applications enabled by BigData,
higher bandwidth and cloud processing.
ā€¢ Future ļ¬ner granularity and two way
communication will dramatically increase the size
of the data bringing air quality to the micro scale,
just like weather data.
Time Taken
10 Mbps 20 Mbps 50 Mbps 1 Gbps
40 TB training data
4 Gb update
185 days 93 days 37 days 1 day 21 hours
54m 27m 11m 32s
Long-Term Average 1997-present
Four Corners Power Plants
Sonoran Dessert
Los Angeles Area
CentralValley
Common Fire Area
Close Ups Showing Good Agreement With Observations
Alaska
(a)
(b) (c)
(d)
Great Salt Lake Desert
Automated trafļ¬c patterns,
driverless cars routing
Flight	
 Ā on	
 Ā Nov	
 Ā 18,	
 Ā 2014	
 Ā clear	
 Ā skies Flight	
 Ā on	
 Ā Dec	
 Ā 04,	
 Ā 2014	
 Ā hazy/overcast
Japan USA WHO/EU
Annual	
 Ā Avg.	
 Ā : 15Ī¼g/m3
ā€Ø Annual	
 Ā Avg.	
 Ā : 12Ī¼g/m3ā€Ø Annual	
 Ā Avg.	
 Ā : 25Ī¼g/m3	
 Ā 
24	
 Ā hour	
 Ā Avg.	
 Ā : 35Ī¼g/m3	
 Ā  24	
 Ā hour	
 Ā Avg.	
 Ā : 35Ī¼g/m3	
 Ā  Annual	
 Ā Avg.	
 Ā :20Ī¼g/m3	
 Ā 
PM2.5	
 Ā Air	
 Ā Quality	
 Ā Standards
Day	
 Ā within	
 Ā EPA	
 Ā Air	
 Ā Quality	
 Ā Standards Day	
 Ā with	
 Ā exceedance	
 Ā of	
 Ā EPA	
 Ā Air	
 Ā Quality	
 Ā Standards
51
Model	
 Ā Airplane	
 Ā Details
A	
 Ā 12s	
 Ā 5400	
 Ā mAh	
 Ā baLery	
 Ā pack	
 Ā per	
 Ā motor	
 Ā (current	
 Ā setup)	
 Ā provides	
 Ā approximately	
 Ā 8	
 Ā minutes	
 Ā of	
 Ā ļ¬‚ight	
 Ā 
Pme.	
 Ā Flight	
 Ā Pme	
 Ā can	
 Ā be	
 Ā increased	
 Ā by	
 Ā using	
 Ā higher	
 Ā capacity	
 Ā baLery	
 Ā packs.
Flight	
 Ā Photos
Accomplishments
To the best of our knowledge the ļ¬rst time the full sub-
pixel aerosol size distribution has been characterized at
high spatial resolution (sub meter) and high temporal
resolution (every second) using:
ā€¢ A zero emission, low cost, electric remote control model
aircraft at multiple vertical levels in the lower most 100
m of the atmosphere.
ā€¢ A car driving daily across a 10 km pixel over an extended
period.
Satellite Pixel
Full Aerosol Size Distribution
G E O L O C AT E D A L L E R G E N S E N S I N G P L AT F O R M
G A S P
Four objectives:
1. Develop and deploy an array of Internet of Things remote airborne
particle sensors within Chattanooga to be used to provide real-time
streamed data on hourly particulate levels, both pollen- sized (10-40
micron) and smaller (<2.5 micron) particles.
2. Deploy an in-situ pollen air sampler in Chattanooga to identify specific
pollen types.
3. Merge locally streamed data with already-collected, satellite-based
NASA data to complement and enhance the newly-collected particulate
data and generate Chattanooga-focused particulate maps.
4. Develop web-based visual tools to provide real-time pollen and smaller
particle alerts to end users such as asthma patients, health institutions,
and businesses and other institutions affected by elevated pollen levels.
Think Big: Holistic & Comprehensive Informatics
Bio	
 Ā InformaPcs
Medical	
 Ā InformaPcs
Environmental	
 Ā InformaPcs
THRIVE	
 Ā 
MulPple	
 Ā Big	
 Ā Data	
 Ā +	
 Ā EMR	
 Ā +	
 Ā Social	
 Ā Media	
 Ā +	
 Ā Machine	
 Ā Learning	
 Ā +	
 Ā Causality	
 Ā 
A	
 Ā Cross-Ā­ā€cuXng	
 Ā PlaYorm	
 Ā for	
 Ā Comprehensive	
 Ā InformaPcs	
 Ā for	
 Ā Data	
 Ā Driven	
 Ā Decisions	
 Ā in	
 Ā Pa<ent	
 Ā 
Centered	
 Ā Care	
 Ā facilitated	
 Ā by	
 Ā High	
 Ā Speed	
 Ā Low-Ā­ā€Latency	
 Ā networks,	
 Ā mulPple	
 Ā massive	
 Ā datasets	
 Ā from	
 Ā 
large	
 Ā distributed	
 Ā sensor	
 Ā networks,	
 Ā EMR,	
 Ā and	
 Ā local	
 Ā cloud	
 Ā compu:ng.
Combine historical track issue data
and historical high resolution
meteorological data with machine
learning.
Combine Multiple Datasets
Satellite Images can be used
to automate the highlighting of
vegetation near the tracks
Highlight Vegetation
1
Routine satellite acquisition of
multispectral and SAR imagery
2
Periodic high resolution ground
truth from aerial surveys
3
Image processing & Machine Learning
BNSF Decision Support
4
The synergy between routine satellite imagery,
periodic high resolution ground truth surveys and
automated machine learning and image processing is
a powerful combination for decision support.
Preparing for Routine Decision Support

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Big Data & Machine Learning for Societal Benefit

  • 1.
  • 2. Combine historical track issue data and historical high resolution meteorological data with machine learning. Combine Multiple Datasets
  • 3. Water The Motive Do well with the Details by embracing the Big Picture Prof. David Lary +1 (972) 489-2059 http://davidlary.info david.lary@utdallas.edu Center for Space Science
  • 4. Worst Drought in 1,000 Years Predicted for AmericanĀ West A paddle wheeler and a small motorboat sail on Lake Mead, North America's largest man-made reservoir. The water is at its lowest level since the Hoover Dam was built in the 1930s. The white "bathtub ring" of mineral deposits on the rocks marks past water levels. PUBLISHED FEBRUARY 12, 2015
  • 5. Western U.S. Drought Prompts Disaster Declarations In 11 States By MICHELLE RINDELS 01/16/14 07:51 PM ET EST LAS VEGAS (AP) ā€” Federal ofļ¬cials have designated portions of 11 drought- ridden western and central states as primary natural disaster areas, highlighting the ļ¬nancial strain the lack of rain is likely to bring to farmers in those regions. The announcement by the U.S. Department of Agriculture on Wednesday included counties in Colorado, New Mexico, Nevada, Kansas, Texas, Utah, Arkansas, Hawaii, Idaho, Oklahoma and California. Rancher Ralph Miller, 79, checks on one of many ā€œstock tanksā€ of water that are receding due to the severe drought. ā€œIā€™d say itā€™s just about as bad as it can get.ā€ Barnhart, Texas
  • 6. ā€œWater is the new oilā€ Jim Rogers, chief executive of Duke Energy ... and many others Water crisis in California, Texas threatens US food security Western water scarcity issues becoming more severe Western Farm Press, Jun. 5, 2012 University of Texas at Austin California and Texas produced agricultural products worth $56 billion in 2007, accounting for much of the nation's food production. They also account for half of all groundwater depletion in the U.S., mainly as a result of irrigating crops. The nationā€™s food supply may be vulnerable to rapid groundwater depletion from irrigated agriculture, according to a new study by researchers at The University of Texas at Austin and elsewhere. http://westernfarmpress.com/irrigation/water-crisis-california-texas-threatens-us-food-security
  • 7. Since 1980 the population of Texas has more than doubled, but the reservoir capacity has remained almost unchanged. During 2011the reservoir levels were the lowest during Sep-Dec that they have been since 1990. In 2015 we are starting out with lower levels than 2013.
  • 8. Smarter irrigation control is invaluable! If we can use existing infrastructure it is even better! .... from farm, to corporate campus, to golf course, to your back yard.
  • 9. When great societal need meets appropriate scalable solution there is much societal and economic beneļ¬t to be gained
  • 11. DATE: 12-Feb-2010 DOC NO: 0115056 ISSUE: 02 DMC DATA PRODUCT MANUAL STATUS: FINAL Figure 4: Detector and channel layout of the SLIM-6-22 imager Imager Bank 0 Channel 6 Green Channel 5 Red Channel 4 NIR Imager Bank 1 Channel 1 NIR Channel 2 Red Channel 3 Green Pixel 1 Pixel 14436 Pixel 14436 Pixel 1
  • 12.
  • 13. uneven irrigation blown valves lead to ļ¬‚ooding Sports ļ¬elds agricultural test plots 22 m resolution
  • 14. On average, systems have water losses of about 17 percent. 49
  • 15. Can you tell which grass has had more water? Zooming in
  • 17.
  • 18. 20 lb Airborne hyperspectral imaging system 385 channels between 400-1,700 nm Hyperspectral data cube
  • 19. J S Famiglietti, and M Rodell Science 2013;340:1300-1301 an accuracy of 1.5 cm equivalent water height. Because GRACE measures changes in total water storage, it integrates the impacts of natural climate ļ¬‚uctuations, global change, and human water use, including groundwater extraction, which in many parts of the world is unmeasured and unmanaged. GRACE- derived rates of groundwater losses in the worldā€™s major aquifer systems (4ā€“6) under- score the critical need to improve monitor- ing and regulation of groundwater systems before they run dry. Regional ļ¬‚ooding and drought are driven by the surplus or deļ¬cit of water in a river basin or an aquifer, yet few hydrologic observing networks yield sufļ¬cient data for comprehensive monitoring of changes in the total amount of water stored in a region. GRACE observations have helped to fill this gap. They have been used to character- ize regional ļ¬‚ood potential (8) and to assess water storage deficits in the U.S. Drought Monitor (9) and are included in annual State of the Climate reports (10). As an integrated measure of all surface and groundwater stor- age changes, GRACE data implicitly contain a record of seasonal to interannual water stor- key tools for predicting future water avail- ability, difļ¬cult to validate. Low-resolution GRACE data, when combined with higher- resolution model simulations, provide an independent constraint on simulated water balances, while also adding spatial detail to GRACEā€™s low-resolution perspective (11). They are widely used to evaluate land surface models used by weather and climate forecast- ing centers around the world (12). Evapotranspiration is a key factor in interbasin water allocations, yet because it disperses into the atmosphere in the vapor phase, it confounds standard measurement techniques. The ability of GRACE to weigh changes in water stored in an entire river basin allows evapotranspiration to be esti- mated in a water balance framework (13). Transboundary water availability issues require sharing hydrologic data across politi- cal boundaries. However, national hydrolog- ical records are often withheld for political, socioeconomic, and defense purposes, com- plicating regional water management discus- sions. Several studies have used GRACE data to circumvent international data denial prac- tices, including in those involving lakes (14), higher spatial (<50,000 km ) and tempor (weekly or biweekly) resolution, for exam ple through novel orbital conļ¬gurations, s that smaller river basins and aquifers can b observed directly.The availability of GRAC data at these ļ¬ner scales, at which most plan ning decisions are made, would likely ensu their broader use in water management. The GRACE-FO mission is on sched ule for a 2017 launch, but a next-generatio improved GRACE mission is still unde design and as yet unconfirmed. Given i demonstrated contributions to date and th potential for much more, a future without GRACE mission in orbit would be an unfo tunate and unnecessarily risky backward ste for regional water management. References 1. P. J. Durack et al., Science 336, 455 (2012). 2. K. E. Trenberth, Clim. Res. 47, 123 (2011). 3. I. M. Held, B. J. Soden, J. Clim. 19, 5686 (2006). 4. V. M. Tiwari, J. Wahr, S. Swenson, Geophys. Res. Lett. 36, L18401 (2009). 5. B. R. Scanlon et al., Proc. Natl. Acad. Sci. U.S.A. 109, 9320 (2012). 6. K. A. Voss et al., Water Resour. Res. 49, 904 (2013). 7. B. D. Tapley et al., Science 305, 503 (2004). 8. J. T. Reager, J. S. Famiglietti, Geophys. Res. Lett. 36, L23402 (2009). 9. R. Houborg et al., Water Resour. Res. 48, W07525 (2012 10. J. Blunden, D. S. Arndt, Eds., Bull. Am. Meteorol. Soc. 9 S1 (2012). 11. B. F. Zaitchik et al., J. Hydrometeorol. 9, 535 (2008). 12. S. C. Swenson, P. C. D. Milly, Water Resour. Res. 42, W03201 (2006). 13. G. Ramillien et al., Water Resour. Res. 42, W10403 (2006 14. S. Swenson, J. Wahr, J. Hydrol. 370, 163 (2009). 15. J. S. Famiglietti, Abstract GC31D-01, fall meeting, AGU San Francisco, 3 to 7 December 2012. Mixed picture. Between 2003 and 2012, GRACE data show water losses in agricultural regions such as Cali- forniaā€™s Central Valley (1) ( 1.5 Ā± 0.1 cm/year) and the Southern High Plains Aquifer (2) ( 2.5 Ā± 0.2 cm/ year), caused by overreliance on groundwater to supply irrigation water. Regions where groundwater is being depleted as a result of prolonged drought include Houston (3) ( 2.3 Ā± 0.6 cm/year), Alabama (4) ( 2.1 Ā± 0.8 cm/year), and the Mid-Atlantic states (5) ( 1.8 Ā± 0.6 cm/year). Water storage is increasing in the ļ¬‚ood- prone Upper Missouri River basin (6) (2.5 Ā± 0.2 cm/year). See ļ¬g. S1 for monthly time series for all hot spots. Data from (15) and from GRACE data release CSR RL05.
  • 20.
  • 21. Summary ā€¢ Vegetation Index is dependent on amount of irrigation ā€¢ Regular (weekly) remote sensing inspection could allow us to: ā€¢ Appropriate irrigation zones ā€¢ Help identify regions of over watering ā€¢ Help identify any burst pipes/valves ā€¢ Optimize irrigation patterns ā€¢ Automate sprinkler system controls ā€¢ Progressively more beneļ¬t as a speciļ¬c history of the plots/site is built up
  • 23. FUTURE Water Management Why Agriculture? ~80% water use US (USDA 2013) Challenges: Climate change, Drought, Population, non-ag water uses. Water Use Efficiency: ~50% US (USDA 2004) Water Mgmt. ā€œSmart-GRID*ā€ Delivery Models Basin Geodata Water/Crop Status & Forecast Water Need Status & Forecast Water Agric +Others Status & Forecast
  • 24. Current Water Mgmt. Delivery Models Basin Geodata Water/Crop Status & Forecast Water Status & Forecast Water Agric +Others Status & Forecast Water use based on: Experience Limited estimations No related info CURRENT Water Management
  • 25. CWMIS Case Example: Water Use vs. Delivery TOP: crop water use vs. water delivery (ac-ft). BOTTOM: water use difference (ac-ft) Typically save at least 10% Can be done on a field by field, campus by campus, home by home, or golf course by golf course basis or for an entire basin. Alfonso Torres
  • 26.
  • 27. Culex tarsalis West Nile Virus The same data infrastructure can also be used to help combat West Nile Virus by identifying breeding sites.
  • 29. P. vivax is carried by the female Anopheles mosquito
  • 30. Plasmodium vivax is a protozoal parasite and a human pathogen. The most frequent and widely distributed cause of recurring (Benign tertian) malaria, P. vivax is one of the six species of malaria parasites that commonly infect humans.[1] It is less virulent than Plasmodium falciparum, the deadliest of the six, but vivax malaria can lead to severe disease and death.[2] [3] P. vivax is carried by the female Anopheles mosquito, since it is only the female of the species that bite. Plasmodium vivax Plasmodium falciparum http://www.worldmalariareport.org/
  • 31. Seasonal climatic suitability for malaria transmission (CSMT) Climatic conditions are considered to be suitable for transmission when the monthly precipitation accumulation is at least 80 mm, the monthly mean temperature is between 18Ā°C and 32Ā°C and the monthly relative humidity is at least 60%. These thresholds are based on a consensus of the literature. In practice, the optimal and limiting conditions for transmission are dependent on the particular species of the parasite and vector. Commentary: Web-based climate information resources for malaria control in Africa Emily K Grover-Kopec, M Benno Blumenthal, Pietro Ceccato, Tufa Dinku, Judy A Omumbo and Stephen J Connor* Malaria Journal 2006, 5:38 doi:10.1186/1475-2875-5-38
  • 32.
  • 33. 0 500 1,000 Km Vectorial Capacity In Zones with Malaria Epidemic Potential 05 August - 12 August 2013 VCAP Values 0 0 - 2 2 - 4 4 - 6 6 - 8 8 - 10 10 - 15 15 - 20 > 20 Country Boundaries
  • 34. Satellite imagery can be used to track mosquito habitats. High-resolution (5 m) satellite images can identify very small water bodies, wetlands and other malaria-relevant land-cover types. Of the 225 million annual reported cases of the disease, 212 million of these occur in Africa. Of the 800,000 Malaria-related deaths each year, 90% of these fatalities occur in sub-Saharan Africa. http://www.itweb.co.za/index.php?option=com_content&view=article&id=52695
  • 35.
  • 36. T H R I V E T I M E LY H E A LT H I N D I C AT O R S U S I N G R E M O T E S E N S I N G & I N N O VAT I O N F O R T H E V I TA L I T Y O F T H E E N V I R O N M E N T Why we care so much? Approximately 50 million Americans have allergic diseases, including asthma and allergic rhinitis, both of which can be exacerbated by PM2.5. Every day in America 44,000 people have an asthma attack, and because of asthma 36,000 kids miss school, 27,000 adults miss work, 4,700 people visit the emergency room, 1,200 people are admitted to the hospital, and 9 people die.
  • 37.
  • 38. Air pollution in Ulaanbaatar, Mongolia
  • 39. Unprecedented levels of air pollution in Singapore and Malaysia in June led to respiratory illnesses, school closings, and grounded aircraft.Ā  This year it was so bad that in some affected areas there was a 100 percent rise in the number of asthma cases, and the government of Malaysia distributed gas masks. MODIS Aqua July 21, 2013. David Lary
  • 40.
  • 42.
  • 43. TypesofbiologicalMaterialTypesofDustTypesofParticulatesGasMolecules 0.0001 Ī¼m 0.001 Ī¼m 0.01 Ī¼m 0.1 Ī¼m 1 Ī¼m 10 Ī¼m 100 Ī¼m 1000 Ī¼m Pollen Mold Spores House Dust Mite Allergens Bacteria Cat Allergens Viruses Heavy Dust Settling Dust Suspended Atmospheric Dust Cement Dust Fly Ash Oil Smoke Smog Tobacco Smoke Soot Gas Molecules Decreased Lung Function < 10 Ī¼m Skin & Eye Disease < 2.5 Ī¼m Tumors < 1 Ī¼m Cardiovascular Disease < 0.1 Ī¼m Hair Pin Cell 0.0001 Ī¼m 0.001 Ī¼m 0.01 Ī¼m 0.1 Ī¼m 1 Ī¼m 10 Ī¼m 100 Ī¼m 1000 Ī¼m PM10 particles PM2.5 particles PM0.1 ultra ļ¬ne particles PM10-2.5 coarse fraction 0.1 mm 1 mm Table!1.!PM!and!health!outcomes!(modified!from!Ruckerl*et*al.!(2006)).! !! Health*Outcomes! Short9term*Studies* Long9term*Studies* PM10! PM2.5! UFP! PM10! PM2.5! UFP! Mortality* !! !! !! !! !! !! !!!!All!causes! xxx!! xxx!! x! xx! xx! x! !!!!Cardiovascular! xxx! xxx! x!! xx! xx! x! !!!!Pulmonary! xxx! xxx! x! xx! xx! x! Pulmonary!effects! !! !! !! !! !! !! !!!!Lung!function,!e.g.,!PEF! xxx! xxx! xx! xxx! xxx! !! !!!!Lung!function!growth! !! !! !! xxx! xxx! !! Asthma!and!COPD!exacerbation! !! !! !! !! !! !! !!!!Acute!respiratory!symptoms! !! xx! x! xxx! xxx! !! !!!!Medication!use! !! !! x! !! !! !! !!!!Hospital!admission! xx! xxx! x! !! !! !! Lung!cancer! !! !! !! !! !! !! !!!!Cohort! !! !! !! xx! xx! x! !!!!Hospital!admission! !! !! !! xx! xx! x! Cardiovascular!effects! !! !! !! !! !! !! !!!!Hospital!admission! xxx! xxx! !! x! x! !! ECG@related!endpoints! !! !! !! !! !! !! !!!!Autonomic!nervous!system! xxx! xxx! xx! !! !! !! !!!!Myocardial!substrate!and!vulnerability! !! xx! x! !! !! !! Vascular!function! !! !! !! !! !! !! !!!!Blood!pressure! xx! xxx! x! !! !! !! !!!!Endothelial!function! x! xx! x! !! !! !! Blood!markers! !! !! !! !! !! !! !!!!Pro!inflammatory!mediators! xx! xx! xx! !! !! !! !!!!Coagulation!blood!markers! xx! xx! xx! !! !! !! !!!!Diabetes! x! xx! x! !! !! !! !!!!Endothelial!function! x! x! xx! !! !! !! Reproduction! !! !! !! !! !! !! !!!!Premature!birth! x! x! !! !! !! !! !!!!Birth!weight! xx! x! !! !! !! !! !!!!IUR/SGA! x! x! !! !! !! !! Fetal!growth! !! !! !! !! !! !! !!!!Birth!defects! x! !! !! !! !! !! !!!!Infant!mortality! xx! x! !! !! !! !! !!!!Sperm!quality! x! x! !! !! !! !! Neurotoxic!effects! !! !! !! !! !! !! !!!!Central!nervous!system!! !! x! xx! !! !! !! x, few studies; xx, many studies; xxx, large number of studies.
  • 44. Hourly Measurements from 55 countries and more than 8,000 measurement sites from 1997-present
  • 45. Aqua DeepBlue Rank Source Variable Type 1 Satellite Product Tropospheric NO2 Column Input 2 Satellite Product Solar Azimuth Input 3 Meteorological Analyses Air Density at Surface Input 4 Satellite Product Sensor Zenith Input 5 Satellite Product White-sky Albedo at 470 nm Input 6 Population Density Input 7 Satellite Product Deep Blue Surface Reļ¬‚ectance 470 nm Input 8 Meteorological Analyses Surface Air Temperature Input 9 Meteorological Analyses Surface Ventilation Velocity Input 10 Meteorological Analyses Surface Wind Speed Input 11 Satellite Product White-sky Albedo at 858 nm Input 12 Satellite Product White-sky Albedo at 2,130 nm Input 13 Satellite Product Solar Zenith Input 14 Meteorological Analyses Surface Layer Height Input 15 Satellite Product White-sky Albedo at 1,240 nm Input 16 Satellite Product Deep Blue Surface Reļ¬‚ectance 660 nm Input 17 Satellite Product Deep Blue Surface Reļ¬‚ectance 412 nm Input 18 Satellite Product White-sky Albedo at 1,640 nm Input 19 Satellite Product Sensor Azimuth Input 20 Satellite Product Scattering Angle Input 21 Meteorological Analyses Surface Velocity Scale Input 22 Satellite Product Cloud Mask Qa Input 23 Satellite Product White-sky Albedo at 555 nm Input 24 Satellite Product Deep Blue Aerosol Optical Depth 550 nm Input 25 Satellite Product Deep Blue Aerosol Optical Depth 660 nm Input 26 Satellite Product Deep Blue Aerosol Optical Depth 412 nm Input 27 Meteorological Analyses Total Precipitation Input 28 Satellite Product White-sky Albedo at 648 nm Input 29 Satellite Product Deep Blue Aerosol Optical Depth 470 nm Input 30 Satellite Product Deep Blue Angstrom Exponent Land Input 31 Meteorological Analyses Surface Speciļ¬c Humidity Input 32 Satellite Product Cloud Fraction Land Input In-situ Observation PM2.5 Target
  • 46. This is a BigData Problem of Great Societal Relevance ā€¢ Collecting data in real time from national and global networks requires bandwidth. ā€¢ With the next generation of wearable sensors and the internet of things this data volume will rapidly increase. ā€¢ A variety of applications enabled by BigData, higher bandwidth and cloud processing. ā€¢ Future ļ¬ner granularity and two way communication will dramatically increase the size of the data bringing air quality to the micro scale, just like weather data. Time Taken 10 Mbps 20 Mbps 50 Mbps 1 Gbps 40 TB training data 4 Gb update 185 days 93 days 37 days 1 day 21 hours 54m 27m 11m 32s
  • 48. Four Corners Power Plants Sonoran Dessert Los Angeles Area CentralValley Common Fire Area Close Ups Showing Good Agreement With Observations Alaska (a) (b) (c) (d) Great Salt Lake Desert
  • 50. Flight Ā on Ā Nov Ā 18, Ā 2014 Ā clear Ā skies Flight Ā on Ā Dec Ā 04, Ā 2014 Ā hazy/overcast Japan USA WHO/EU Annual Ā Avg. Ā : 15Ī¼g/m3 ā€Ø Annual Ā Avg. Ā : 12Ī¼g/m3ā€Ø Annual Ā Avg. Ā : 25Ī¼g/m3 Ā  24 Ā hour Ā Avg. Ā : 35Ī¼g/m3 Ā  24 Ā hour Ā Avg. Ā : 35Ī¼g/m3 Ā  Annual Ā Avg. Ā :20Ī¼g/m3 Ā  PM2.5 Ā Air Ā Quality Ā Standards Day Ā within Ā EPA Ā Air Ā Quality Ā Standards Day Ā with Ā exceedance Ā of Ā EPA Ā Air Ā Quality Ā Standards
  • 51. 51
  • 52. Model Ā Airplane Ā Details A Ā 12s Ā 5400 Ā mAh Ā baLery Ā pack Ā per Ā motor Ā (current Ā setup) Ā provides Ā approximately Ā 8 Ā minutes Ā of Ā ļ¬‚ight Ā  Pme. Ā Flight Ā Pme Ā can Ā be Ā increased Ā by Ā using Ā higher Ā capacity Ā baLery Ā packs.
  • 54. Accomplishments To the best of our knowledge the ļ¬rst time the full sub- pixel aerosol size distribution has been characterized at high spatial resolution (sub meter) and high temporal resolution (every second) using: ā€¢ A zero emission, low cost, electric remote control model aircraft at multiple vertical levels in the lower most 100 m of the atmosphere. ā€¢ A car driving daily across a 10 km pixel over an extended period. Satellite Pixel Full Aerosol Size Distribution
  • 55. G E O L O C AT E D A L L E R G E N S E N S I N G P L AT F O R M G A S P Four objectives: 1. Develop and deploy an array of Internet of Things remote airborne particle sensors within Chattanooga to be used to provide real-time streamed data on hourly particulate levels, both pollen- sized (10-40 micron) and smaller (<2.5 micron) particles. 2. Deploy an in-situ pollen air sampler in Chattanooga to identify specific pollen types. 3. Merge locally streamed data with already-collected, satellite-based NASA data to complement and enhance the newly-collected particulate data and generate Chattanooga-focused particulate maps. 4. Develop web-based visual tools to provide real-time pollen and smaller particle alerts to end users such as asthma patients, health institutions, and businesses and other institutions affected by elevated pollen levels.
  • 56. Think Big: Holistic & Comprehensive Informatics Bio Ā InformaPcs Medical Ā InformaPcs Environmental Ā InformaPcs THRIVE Ā  MulPple Ā Big Ā Data Ā + Ā EMR Ā + Ā Social Ā Media Ā + Ā Machine Ā Learning Ā + Ā Causality Ā  A Ā Cross-Ā­ā€cuXng Ā PlaYorm Ā for Ā Comprehensive Ā InformaPcs Ā for Ā Data Ā Driven Ā Decisions Ā in Ā Pa<ent Ā  Centered Ā Care Ā facilitated Ā by Ā High Ā Speed Ā Low-Ā­ā€Latency Ā networks, Ā mulPple Ā massive Ā datasets Ā from Ā  large Ā distributed Ā sensor Ā networks, Ā EMR, Ā and Ā local Ā cloud Ā compu:ng.
  • 57. Combine historical track issue data and historical high resolution meteorological data with machine learning. Combine Multiple Datasets
  • 58. Satellite Images can be used to automate the highlighting of vegetation near the tracks Highlight Vegetation
  • 59. 1 Routine satellite acquisition of multispectral and SAR imagery 2 Periodic high resolution ground truth from aerial surveys 3 Image processing & Machine Learning BNSF Decision Support 4 The synergy between routine satellite imagery, periodic high resolution ground truth surveys and automated machine learning and image processing is a powerful combination for decision support. Preparing for Routine Decision Support