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Title: Decision Analysis and Risk Analysis Applications


1
Decision Analysis and Risk Analysis Applications
  • D. Warner North
  • MSE 290
  • Tuesday, January 25, 2005

2
New York Times - Sunday, August 11, 2002
  • If the Big One Hits the Big Easy, the Good Times
    May Be Over Forever By ADAM COHEN (NYT) 1018
    words Late Edition - Final , Section 4 , Page 12
    , Column 1
  • ABSTRACT - Adam Cohen Editorial Observer on grave
    threat that big hurricane could wipe out
    low-lying city of New Orleans describes
    complacency of its people and inadequate
    preparations by government Dot Wilson knows how
    bad the Big One could be. When Hurricane Betsy
    hit New Orleans in 1965 with 125 m.p.h. winds,
    leaving 75 dead in Louisiana and South Florida,
    she walked more than a mile in chest-high water,
    holding her infant daughter overhead. But when
    Ms. Wilson held a hurricane-preparedness teach-in
    recently at the community center she heads,
    attendance was sparse. ''A lot of people don't
    see storms as serious,'' she said with a sigh.
    But people who have been around for a while know
    better, she said, adding, ''We saw the bodies.''
  • New Orleans -- home to the French Quarter's
    iron-latticed buildings and the Garden District's
    stately Greek Revival mansions, to Preservation
    Hall jazz and Mardi Gras parades -- may be
    America's most architecturally distinctive and
    culturally rich city. But it is also a disaster
    waiting to happen. New Orleans is the only major
    American city below sea level, and it is wedged
    between Lake Pontchartrain and the Mississippi.
    If a bad hurricane hit, experts say, the city
    could fill up like a cereal bowl, killing tens of
    thousands and laying waste to the city's
    architectural heritage. If the Big One hit, New
    Orleans could disappear.

3
New York Times, Thursday, October 3, 2002
  • Thousands Seek Safety as Hurricane Nears Gulf
    Coast By JEFFREY GETTLEMAN (NYT) 1308 words
    Late Edition - Final , Section A , Page 24 ,
    Column 3
  • ABSTRACT - About half million people flee
    southern Louisiana and Texas with approach of
    Hurricane Lili, which is heading toward Gulf
    Coast with winds of more than 140 miles per hour,
    making it daunting Category 4 storm map chart
    of five most intense hurricanes to hit US since
    1928 photos (M) Highways across southern
    Louisiana and Texas were solid columns of steel
    today as more than half a million people grabbed
    their valuables and fled their homes, looking for
    higher, safer ground before Hurricane Lili hit.
  • The exodus of cars and trucks, some with
    furniture lashed down on their roofs, began in
    low-lying areas but quickly spread inland as the
    storm intensified and threatened to become the
    worst natural disaster here in decades.

4
Hurricane Lili
October 4, 2002 Using state-of-the-art
equipment, including a radar collaboratively
built by the NOAA National Severe Storms
Laboratory, research scientists captured
Hurricane Lili Thursday morning as she came
onshore along the southern Louisiana coast. Three
mobile Doppler radars, as well several
instrumented towers, were strategically placed
near Lafayette, La., in order to study the
structure of the rainfall and wind flow around
the storm. The data collected may help scientists
develop better estimates of rainfall amounts,
which could lead to more accurate and timely
forecasts of inland flooding in the future.
5
New York Times, Friday, October 4, 2002
  • Hurricane Hits Gulf Coast, Weakened but Still
    Punishing By JEFFREY GETTLEMAN (NYT) 1052 words
    Late Edition - Final , Section A , Page 18 ,
    Column 1
  • ABSTRACT - Hurricane Lili slams into Louisiana,
    but with winds sharply diminished as storm
    devolves from Category 4 to Category 2 by time it
    makes landfall still, there is widespread
    damage, with community of Abbeville being hardest
    hit map chart of Lili's wind speeds map photo
    (M) Hurricane Lili slammed into Louisiana today
    with tornado-force winds that ripped trees from
    the ground, smashed mobile homes and caused
    widespread blackouts that may last for weeks.
  • But it could have been worse. The storm lost
    significant strength overnight, dwindling from a
    Category 4 hurricane to Category 2, and no deaths
    or serious injuries were reported.

6
The Decision to Seed Hurricanes
R.A. Howard, J.E. Matheson, D.W. North
  • Science, 176, 1191-1202, 1972
  • (paper on class website, pdf file)

7
Decision Analysis of Hurricane Modification
  • Background
  • The Cost of Hurricanes Average Annual Cost of
    Hurricane Damage 400 Million Hurricane Betsy,
    1965 1.4 Billion Hurricane Camille, 1969
    1.4 Billion
  • The Hurricane Debbie Experiment,
    1969 Reductions of 31, 15 in Maximum Wind
    Speed Were Observed in the Two Seeding
    Experiments

8
Decision Analysis of Hurricane Modification
  • Decisions
  • Strategic Decision Should Operational Seeding
    by the U.S. Government be Permitted?
  • Research Policy Decision Should the Present
    Level of Research and Experimentation be
    Changed?
  • Tactical Operational Decision Should a
    Particular Hurricane be Seeded? (not analyzed in
    SRI study)

9
The Operational Seeding Decision Conceptual
Overview
Property Damage
Economical Model
Meteorological Knowledge
Hurricane Model
Decision Criteria
Storm Parameters
Critical Storm Characteristics Maximum
Sustained Wind
Legal/Social Model
Government Responsibility Cost
Seeding Decision Strategic
10
Maximum Sustained Winds Over Time
Maximum Sustained Winds, w
w(t) Without Seeding
w(t1)
w(t1)
w(t) With Seeding
w(t)
w(t0)
12 Hours
t0
t1
Seeding Initiated
Landfall
11
The Seeding Decision Decision Tree
Resolution of Uncertainty Change in Maximum
Sustained Surface Wind
Decision Alternatives
Consequences
Property Damage Government Responsibility
Seed
Do Not Seed
Property Damage Government Responsibility
12
Probabilistic Model for 12-Hour Change in Maximum
Sustained Wind, Natural Hurricane
Prob. Density Function
  • No Predictability from Meteorological Environment
    Assumed.
  • Probability Distribution Based on
  • Observations of 12-Hour Changes in Central
    Pressure
  • Empirical Formula Relating Central Pressure to
    Maximum Sustained Wind

time t 0 (seeding initiated)
40
70
100
130
160
Maximum Sustained Wind, mph (or )
Prob. Density Function
time t 12 hours (landfall)
? 15.6
40
70
100
130
160
Maximum Sustained Wind, mph (or )
13
Probabilistic Model for 12-Hour Change in Maximum
Sustained Wind, Natural Hurricane
Probabilities Assigned to Hypotheses
m 85 ? 18.6
H1 Stormfury Hypothesis Seeding Causes an
Average Reduction in maximum Sustained Wind
  • Probability Distribution Based on
  • Probability Distribution for 12-Hour Change in
    Natural Hurricane
  • Expert Judgment on Average Effect of Seeding
  • Expert Judgment on Fluctuations From Average
    Effect in Seeding a Particular Storm

0.49
m 100 ? 15.6
0.49
H2 Null Hypothesis Seeding Has No Effect on
Maxium Sustained Winds
0.02
m 110 ? 18.6
H3 Pessimistic Hypothesis Seeding Causes an
Average Increase in Maximum Sustained wind
40
70
100
130
160
Maximum Sustained Wind, mph (or )
14
Probabilities for the Three Models
  • Judgments from Hurricane Experts
  • Before Debbie, P(H1) gt P(H3)
  • After Debbie, P(H1) P(H2)
  • Resulting Probabilities
  • Before the Hurricane Debbie Seeding
  • P(H1) 0.15 P(H2) 0.75 P(H3) 0.10
  • After Hurricane Debbie Seeding
  • P(H1) 0.49 P(H2) 0.49 P(H3) 0.02
  • Before and After Probabilities Related by Bayes
    Rule

H1 Stormfury Hypothesis Seeding Causes an
Average Reduction in maximum Sustained Wind
H2 Null Hypothesis Seeding Has No Effect on
Maximum Sustained Winds
H3 Pessimistic Hypothesis Seeding Causes an
Average Increase in Maximum Sustained wind
15
Summary of Current Meteorological Information
1.0 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0.0
Unseeded Hurricane
Probability the Wind Speed is Greater Than
Amount Shown
Seeded Hurricane
60
70
80
90
100
110
120
130
Maximum Sustained Wind 12 Hours After Seeding
Decision ()
16
Maximum Sustained Wind Versus Property Damage
100 x 106
Total Equivalent Residential Property Damage
(1969 )
10 x 106
d c1wc2
c2 4.363
1 x 106
50
60
70
80
90
100
110
120
130
140
150
160
180
200
w, Maximum Sustained Surface wind Speed (mph)
17
Probability Distributions on Property Damage for
the Seeded and Unseeded Hurricane
1.0 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0.0
Unseeded
Probability That Property Damage is Greater than
Amount Shown
Seeded
0
50
100
150
200
250
300
350
400
Property Damage (M)
18
The Seeding Decision for the Nominal Hurricane
Resolution of Uncertainty
Change in Maximum Sustained Wind
Property Damage Loss (M)
Probabilities Assigned to Outcomes
32 16 0 -16 -34
335.8 191.1 100.0 46.7 16.3
0.038
0.143
Seed Expected Loss
0.392
94.08 0.25 94.33
0.255
0.172
Cost of Seeding 0.25
32 16 0 -16 -34
335.8 191.1 100.0 46.7 16.3
0.054
Do Not Seed Expected Loss
0.206
116.00
0.480
0.206
0.054
Expected Value (M)
Economic Value of Seeding 21.67 million (18.7
reduction in loss) Decision not sensitive to
specific assumptions.
19
Government Responsibility Costs
When a Hurricane Labeled U.S. Government
Seeded it is No longer a Natural Disaster
  • If a Seeded
  • Hurricane
  • Intensifies
  • Public Outrage? Lawsuits?

Concept What Increment of Property Damage
Reduction Justifies the Assumption of
Responsibility Entailed by Seeding a Hurricane?
20
Government Responsibility Cost Assumed for
Strategic Analysis(100 Million Storm)
21
The Seeding Decision for the Nominal Hurricane
(Government Responsibility Cost Included)
Government Responsibility Cost ( of property
damage)
Change in Maximum Sustained Wind
Property Damage Loss (M)
Probabilities Assigned to Outcomes
Total Cost (M)
32 16 0 -16 -34
335.8 191.1 100.0 46.7 16.3
503.7 248.4 105.0 46.7 16.3
50 30 5 0 0
0.038
0.142
Seed Expected Loss
0.392
110.67 0.25 110.92
0.255
0.172
Cost of Seeding 0.25
32 16 0 -16 -34
335.8 191.1 100.0 46.7 16.3
335.8 191.1 100.0 46.7 16.3
- - - - -
0.054
Do Not Seed Expected Loss
0.206
116.00
0.480
0.206
0.054
Expected Value (M)
Value of Seeding 5.08 million (4.4 reduction)
22
Legal findings No firm Legal Basis for
Operational Seeding Currently Appears to Exist
  • Sovereign ImmunityIn conclusion, existing
    immunity law provides only partial and
    unpredictable protection at best. There are also
    grounds for recognizing that immunity defenses
    may be avoided in most cases if the plaintiff
    carefully chooses his remedy, his legal theory,
    and his forum. Only specific Congressional
    action offers a prospect of substantial,
    predictable immunity protection.
  • - Appendix D, p. 9
  • Basis for LawsuitsThe common law and inverse
    condemnation theories appear to offer plaintiff's
    attorneys substantial grounds for recovering
    damages where they can prove that modification
    activities caused injury, death, or property
    damage. This is particularly significant in the
    light of recent procedural developments
    (especially the decline of immunity defenses as
    discussed in an earlier memorandum). These
    tentative results suggest that the project agency
    may wish specific Congressional authorization for
    its project.
  • - Appendix E, p. 15

23
The Value of an Expanded Research and
Experimentation Program
  • Limiting Case
  • What is the Value of Perfect Information
  • Concept
  • How Much Should the Government be Willing to Pay
    a Clairvoyant to Learn Which of the Three
    Hypotheses,
  • H1 H2 or H3
  • Is Actually True Before making the Operational
    Seeding Decision For a Single Hurricane?

24
Expected Value of the Clairvoyants Information
Which Hypothesis Describes the Effect of Seeding?
Property Damage Loss (M)
Seeding Decision
Choice of Whether to Gather Information
Outcomes
Results of Information
32 16 0 -16 -34 32 16 0 -16 -34
32 16 0 -16 -34 32 16 0 -16 -34 3
2 16 0 -16 -34 32 16 0 -16 -34 32
16 0 -16 -34 32 16 0 -16 -34
335.8 191.1 100.0 46.7 16.3 335.8 191.1 1
00.0 46.7 16.3 335.8 191.1 100.0 46.7 16.3
335.8 191.1 100.0 46.7 16.3 335.8 191.1 10
0.0 46.7 16.3 335.8 191.1 100.0 46.7 16.3
335.8 191.1 100.0 46.7 16.3 335.8 191.1 100
.0 46.7 16.3
69.42
H1 True
Seed
Do Not Seed
69.42
116.00
0.49
116.25
H2 True
Seed
93.17
0.49
Do Not Seed
0.02
116.00
Obtain Information
116.00
167.61
93.17
H3 True
Seed
Do Not Seed
116.00
94.33
116.00
Do not Obtain Information
94.33
Seed
Expected Value (M)
Do Not Seed
Value 1.16 property damage only Value 13.63
property damage plus government responsibility
cost. Value is Higher if Seeding is not Permitted
with Present Information.
94.33
116.00
25
Value of A Seeding Experiment(Government
Responsibility Cost Included)
Total Cost (millions of dollars)
Outcomes
Operational Seeding Decision
Results of Experiment
Choice of Whether to Perform Experiment
116.00
0.038
0.143
32 16 0 -16 -34 32 16 0 -16 -34
32 16 0 -16 -34 32 16 0 -16 -
34
503.7 248.4 105.0 46.7 16.3 503.7 248.4 105.0
46.7 16.3 503.7 248.4 105.0 46.7 16.3 503.7 248.
4 105.0 46.7 16.3
116.00
0.392
103.44
Perform Experiment
116.00
0.255
Seed
107.96
Do Not Seed
103.44
0.172
116.00
87.83
110.92
110.92
Do not Perform Experiment
Seed
Do Not Seed
110.92
Expected Value (M)
116.00
Value 2.96 million Actual cost 0.25 million
26
Summary of the Value of Additional Information on
the Effect of Seeding (Values in Millions of
Dollars)
Considering only the 50 of hurricanes that are
assumed to be possible candidates for seeding
because of tactical consideration. If all
hurricanes are assumed to be candidates for
operational seeding, the figures of the last two
columns should be doubled.
27
Findings and Recommendations
  • Findings
  • 1. Current meteorological and economic
    information indicates that the seeding
    alternative stochastically dominated the
    non-seeding alternative
  • 2. No firm legal basis for operational seeding
    appears to exist
  • 3. The decision to seed a particular hurricane
    should take into account its specific
    characteristics
  • 4. Resolving meteorological uncertainty on the
    effect of hurricane modification is worth over
    20 millions/year
  • Recommendations
  • 1. The present policy prohibiting seeding any
    hurricane threatening the U.S. should be
    rescinded
  • 2. A hurricane modification agency with authority
    to seed operationally should be established
  • 3. Decision procedures supported by further
    analysis should be developed
  • 4. Modification experiments should be conducted
    on an expanded scale to provide a more refined
    basis for making each operational seeding decision

28
http//www.csmonitor.com/2003/0102/p10s02-sten.htm
l
  • Tinkering with clouds
  • Researchers say evolving technologies could allow
    manipulation of major weather patterns. But
    should humans tamper?
  • By Peter N. Spotts Staff writer of The
    Christian Science Monitor, Jan 2, 2003
  • On Sept. 11, 1992, hurricane Iniki slammed into
    the Hawaiian island of Kauai, packing winds
    gusting up to 175 m.p.h.
  • The storm inflicted an estimated 2 billion in
    damage and 105 casualties, damaged or destroyed
    10,000 homes and businesses, and left once-lush
    tropical mountainsides looking as though they'd
    been mowed by a giant weed-whacker

29
http//www.csmonitor.com/2003/0102/p10s02-sten.htm
l
  • Tinkering with clouds (2)
  • Over the past two decades, the idea of modifying
    large-scale storms such as hurricanes has lain
    dormant, following 20 years of inconclusive
    research. Now, however, a small group of
    atmospheric scientists is giving the concept a
    fresh look.
  • Researchers seeded hurricanes in a 20-year
    federal research project dubbed Project Storm
    Fury. Scientists were testing the idea that
    seeding could be used to take some of the punch
    out of hurricanes before they made landfall. But
    the program foundered on inconclusive results.

30
http//www.csmonitor.com/2003/0102/p10s02-sten.htm
l
  • Tinkering with clouds (3)
  • during the Vietnam War, the US military seeded
    monsoon clouds in Operation Popeye in an attempt
    to use weather to hamper troop and supply
    movements along the Ho Chi Minh Trail. When
    information about the program was declassified in
    the mid-1970s, the international community
    established the UN Convention on the Prohibition
    of Military or Any Other Hostile Use of
    Environmental Modification Techniques.
  • Federal funds for weather-modification research
    have dried up as well. According to Colorado
    State University atmospheric scientist William
    Cotton, federal dollars for weather modification
    research peaked at roughly 19 million a year in
    the 1970s. They dropped to less than 5 million a
    year during the '90s, and now hover at about
    500,000.
  • The field has entered what Dr. Cotton calls the
    "dark ages," where weather-modification programs
    are forging ahead with little or no scientific
    research programs to back them.

31
New Methodology for Assessing the Probability of
Contaminating Mars
  • D. W. North, B.R. Judd, and J.P. Pezier, Life
    Sciences and Space Research XIII, P. A. Sneath,
    ed., Akademie-Verlag, Berlin, pp. 103-109, 1975.
  • Limitations, Definitions, Principles, and
    Methods of Risk Analysis, Risk Assessment for
    Veterinary Biologicals, special issue, Office
    International des Epizooties, Scientific and
    Technical Review, Vol. 14, pp. 913-923, 1995.
    (on class website)

32
Assessment of the Probability of Contaminating
Mars
  • Carried out during 1972-3 for NASA Headquarters,
    Office of Planetary Programs, NASA Contracts
    2451, 2535
  • Background Committee on Space Research (COSPAR)
    Resolution
  • Total probability of contaminating Mars
    during the quarantine period shall be less than
    10-3.
  • Mariner 9 photos evidence of past liquid
    water
  • Difficulties of dry-heat sterilization for 1975
    Viking Lander

33
Mission Contamination Model
34
Bio-burden Submodel
  • Input Elements
  • Pre-sterilization burden by location
  • Sensitivity to sterilization
  • Sterilization regime
  • Recontamination
  • Inflight mortality or proliferation
  • Contamination and subsequent
    amplification in biology experiment
  • (probability 10-6)
  • Outputs
  • Bio-burden estimates by Viking Project
  • Expected number of Viable Terrestrial
  • Organisms (VTOs), by location on
  • spacecraft

35
Release Submodel
  • Input Elements
  • Bioburden by location
  • (from bio-burden submodel)
  • Probability of hard landing
  • Fracture ratio for hard landing
  • Lethality for release, given location and
    landing
  • (hard versus nominal)
  • Outputs
  • Implantation microbes (VTOs) directly
  • deposited in Martian soil, without UV
    exposure
  • Erosion VTOs relaeased through aeolian
  • erosion of spacecraft into Martian
    atmosphere
  • Vibration VTOs fall from spacecraft onto
  • surface of Mars due to mechanical
    vibration,
  • thermal effects, etc. VTOs require
    shielding to
  • survive UV exposure.

36
Transport Submodel
  • Input Elements
  • Expected number of VTOs released, by mechanism
  • Lethality of UV radiation, in normal atmosphere
    and dust storm (probability that a VTO survives
    transit)
  • Extent of usable water
  • Probability it exists anywhere
  • Portion of surface covered
  • Output
  • Expected number of VTOs that will reach usable
    water

37
Reproduction Submodel
  • Input Elements
  • Fraction of VTOs that are facultatively anaerobic
    and psychrophilic (0.05)
  • Probability that nutrients needed for
    reproduction will be present in the water
    microenvironment (0.10)
  • Output
  • Expected number of VTOs that reproduce at least
    once, defined as contamination

38
Mission Contamination Model Results
39
Mission Contamination Model Marginal Sensitivity
Analysis
Probability of Contamination Probability of Contamination Probability of Contamination
Contamination Model Variables Values Units 10-6 Units 10-6
Extreme Intermed. Intermed. Extreme Nominal 5.9 Nominal 5.9
Low Low NOMINAL High High Low High
Bio-Burden Variables
1. bio External 2.2 5.5 11 22 55 5 10.7
2. bio Covered 3.2 8 16 32 80 3.1 20.2
3. bio Encapsulated 4,000 10,000 20,000 40,000 100,000 5 10.4

Release Variables
1. rel Hard Landing Probability 0.0004 0.001 0.002 0.004 0.01 5.2 9.6
3. rel Newly Exposed/Hard, Encaps 0.0001 0.0002 0.001 0.005 0.01 5.4 10.9
4. rel Implanted, Soft 0.0001 0.0002 0.001 0.005 0.01 5.7 8.7
6. rel VTO/Vibration 0.001 0.002 0.01 0.05 0.01 5.4 11.1
9. rel VTO/Erosion, Encaps 0.00001 0.00002 0.0001 0.0005 0.001 5.4 10.9
40
Mission Contamination Model Marginal Sensitivity
Analysis -2
Probability of Contamination Probability of Contamination Probability of Contamination
Contamination Model Variables Values Units 10-6 Units 10-6
Extreme Intermed. Intermed. Extreme Nominal 5.9 Nominal 5.9
Low Low NOMINAL High High Low High
Transport Variables
1 tra Survive Transit 0.001 0.002 0.01 0.05 0.1 2.2 45.2
2 tra Find Water 0.0005 0.001 0.005 0.025 0.05 1.5 49.9
4 tra Water Deposition 0.00005 0.0001 0.0005 0.0025 0.005 5 15.2
5 tra Stay Lodged 0.1 0.2 0.5 0.8 0.9 5.5 10

Reproduction Variables
1 rep Pyschrophic, Anaerobic 0.005 0.01 0.05 0.1 0.25 0.6 29.6
2 rep Availability of Nutrients 0.01 0.02 0.1 0.2 0.5 0.6 29.6
41
National Academy of Sciences, Viewpoint -1992
  • it is the unanimous opinion of the task
    group that terrestrial organisms have almost no
    chance of multiplying on he surface of Mars and
    in fact have little chance of surviving for long
    periods of time, especially if they are exposed
    to wind and to UV radiation.
  • ---- Space Studies Board, National Research
    Council, Biological Contamination of Mars,
    1992, page 49.

42
Retrospective
  • Impact of our analysis
  • Acceptance of mission risk by scientific leaders
  • NASAs decision to eliminate the mid-course
    correction on the Mars Orbiter
  • Planetary Quarantine since Viking
  • Not a major concern, perhaps excepting Mars
    sample return
  • Example of Quantitative Risk Analysis built on
    highly judgmental information
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