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Flood damage modelling
using the Flood Impact Assessment Tool
Dennis Wagenaar
Delft3D User Days 2019
Why model flood impacts?
2
Intervention
costs Reduction
expected
flood
damages
• Cost Benefit Analyses
• Benefits of detailed measures
• Optimal design
• Spatial planning
• Impact forecasting
• Forecasting what the weather will do rather
than what the weather will be
• Insurance
• Settings premiums
Application of impact modelling
3
CBA infrastructure investments
Risk screening studies
Adaptive delta management
Setting insurance premiums
Climate change impact
Impact Based Forecasting:
Warning information and
preparation event.
Where to send aid first
How much money to free
up for recovery.
Initial distribution of
recovery funds
Flood damage
4
Category Tangible Intangible
Direct • Capital (houses, crops,
cars, factory buildings)
• Production losses, income
losses
• Casualties, injuries,
ecosystems, monuments
• Social disruption, emotional
damage
Indirect • Production losses / loss of
utility services outside
flooded area;
• Unemployment, migration.
• Cutting of infrastructure
lines
• Loss of potential for attracting
investors
• Reputation damage
Use of multiplication factor for everything that is difficult to
model!
• Damage and loss
• Modelling needs
• Scope Delft-FIAT
Direct tangible - Business Interruption
• A flood can last between hours up to sometimes 1 year (e.g. Zeeland
1953).
• If water can flow away naturally it is short.
• If water needs to be pumped and dikes need to be repaired this can be
long.
• Recovery time can also be long (easily 1 year)
• Shortage of contractors, waiting for permits.
• Experts need to check for mold.
• Larger total disasters need more recovery time.
• Recaptured value
• Often a lot of interruption damage can be recaptured elsewhere (e.g.
competitor does more).
• Damage depends on definition.
5
Indirect tangible
• Production losses outside flooded area
• (e.g. production process halted because crucial component cannot be
made).
• Famous case of hard drives in Thailand
• Part of the losses recaptured by competition
• Modeled with several types
of economic models, highly
uncertain.
• Cutting of infrastructure lines
• E.g. Traffic problems,
power outages, etc.
New York Times – Nov 6, 2011
Direct intangible
• Deadly casualties differ very strongly among floods.
(often 0 sometimes 1000s).
• Deadly casualties when: large water depths, rapid
rise rate, unexpected and unprepared people.
• Casualties are more often sick and elderly.
• Poor people in developing countries might die from
hunger or disease.
• Poor people in developing countries may become
homeless and get into major trouble.
7
Demand surge
• After a flood there are often shortages in construction labour and
expertise.
• Shortages drive up prices as people compete for limited resources.
• Especially important when a flood is focused on one densely populated
area (e.g. dike breach near city).
Including demand surge
• Demand surge is a loss for some but an equal profit for others. Therefore,
often not used in an economic analysis.
• Insurance companies do take it into account.
8
Correcting for inequality in Cost Benefit Analyses
9
0
0,2
0,4
0,6
0,8
1
1,2
1,4
1,6
1,8
2
0 20 40 60 80 100
Utilityorwell-being
Income
Equal decrease in
income/wealth
Unequal decrease in
well-being
10
Hazard Vulnerability
Delft-FIAT – Damage only
Exposure
Inputs Delft-FIAT
11
Statistical models
Hydrological models
Hydrodynamic models
Delft3D FM Suite:
• D-Flow FM
• D-Hydrology (wflow)
Probabilistic Toolkit (PTK) Delft-FIAT
?
- Mostly expert judgment
- Only few techniques available
Available approaches damage functions
Expert/synthetic approach
• Expert or group of experts come
together and estimate a damage
function.
• Elements of object of interest
can be assessed individually.
• Weakness is that experts
typically have one setting in
mind.
12
Data-driven approach (empirical)
• Regression analysis on available
data points of past flood damage.
• Weakness: Data availability and
bad fits.
Absolute and relative damage functions
0
20
40
60
80
100
120
-1 1 3 5
Damage(MEURO)
Water depth (m)
0
0,2
0,4
0,6
0,8
1
-1 1 3 5
Damagefactor(-)
Water depth (m)
0
0,2
0,4
0,6
0,8
1
-1 1 3 5
Damagefactor(-)
Water depth (m)
Max. damage = 240 k€ Max. damage = 120 k€
=
14
Flood risk
Delft-FIAT - Risk
15
From damage to flood risk (EAD)
• Flood damage can be calculated for an event. Yet many possible events
might occur.
• The flood damage of one event alone is therefore too little to get a
complete picture and hence too little for rational decision making.
Flood risk: Expected Annual Damage (EAD)/Annual Average Loss (ALL)
• Summary statistic that combines all possible flood events, their
probabilities and their damages into one figure.
• The unit is: Euro/year
• Very useful for decision making!
16
Calculating flood risk (EAD)
• Combine many different flood
events into maps (or aggregate
damages) for different
exceedance probabilities .
• Take the integral to get the
expected annual damage.
• In practice calculate the area
under the graph.
17
𝑅𝑖𝑠𝑘 = න 𝐷𝑎𝑚𝑎𝑔𝑒 𝑝 𝑑𝑝
0
20
40
60
80
100
0 1/20 1/10 3/20 1/5 1/4
Damage(M$)
Exceedance probability (1/y)
AAL
Future risks
18
• A risk reduction measure needs to
function for a long time
• A cost-benefit requires future risks as
input and not just current
• Hazard, Exposure and Vulnerability
changes over time
• Change needs to be predicted
Change in hazard
19
• Climate change
• Sea level rise
• More extremes (rain, droughts,
wind)
• Changes to the system:
• Land subsidence
• Erosion, sedimentation
• Deforestation
• Wetland encroachment
• Change in impervious area
Increasing hazard?
Change in exposure
20
• Extra buildings
• Population growth
• Fewer people per building
• More value per building
• GDP per capita growth
Change in vulnerability
21
• Often neglected, little
research..
• Bangladesh example of
reduction in vulnerability of
loss of life
Changing vulnerability?
Mechler & Bouwer (2015) Climatic Change
Bangladesh
Beyond Delft-FIAT: Machine Learning for better impact predictions
From: Damage fraction = f(water depth)
To: Damage fraction = f(water depth, warning time, wave height, …..)
DF = f(water depth) DF = f(water depth, warning time, waves height, …..)
Multi-variable damage models can be build from data with Machine
learning methods!
• My PhD and project to prioritize
humanitarian aid in the Philippines
• Use of historical data on damages
Machine Learning for macro level impact forecasting
2012
Now
2016
2013
RedCross data: 12 typhoons, 2012 - 2016
1600 damage data
Response
% Total damaged houses in a municipality
Predictors (~40)
Hazard : Average wind speed, rainfall
Exposure : building, people (2010)
Vulnerability : roof & wall type, GDP, slope
(2008)
24
Example project
Situation Flood risk Colombo
• Recent floods
• Combination river
discharge, local rainfall
and sea level
• Wetland encroachment
• Proposed interventions
• WorldBank loan
Project Setup
MIKE model
80 runs (30m) different
boundary conditions
Probabilistic part
Return period maps
per cell.
Impact part
FIAT model,
projections and CBA.
Delft-FEWS pilot
Training 1 Training 2 Training 3
Ruben Dahm
Local partners
Ferdinand Diermanse Laurens Bouwer
Dennis Wagenaar
Local partners
Marc van Dijk
Simplified method outer areas
carried out completely by local partners
Damage calculation
Exposur
e
Exposure and damage functions
Exposure
• Detailed data on building level
• Collected for this project
• Building type, number of floors, shanty.
• 57 damage categories
• Also vehicles, electricity and telecom.
Damage functions
• Created by experts
• Workshop
• Bills of quantities
0
0,2
0,4
0,6
0,8
1
1,2
0 5 10
Damageindex
Inundation depth (m)
Expected Annual Damage
Intervention
package 1 (M$/y)
Intervention
package 2 (M$/y)
Reference 45.9 45.9
New 43.8 42.5
Difference 2.1 3.4
Future damage projections
- Damage assumed to
increase with GDP per capita
- Population growth not
included because expected
move to high rise buildings
- Population growth in wetland
areas considered separately
- 5 growth scenarios
Cost Benefit Analysis
• Sum of future risk reductions should be smaller than the investment costs
of the intervention.
• Risk reductions in the future count less (discount rate)
• Discount rate Colombo difficult to estimate.
• Internal Rate of Return is the discount rate for which the sum of future risk
reductions is equal to the investment costs.
• Indirect damage discussion
More information
Details about this project and
all additional assessments
are available in article:
“Evaluating adaptation
measures for reducing flood
risk”

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DSD-INT 2019 Flood damage modelling-Wagenaar

  • 1. Flood damage modelling using the Flood Impact Assessment Tool Dennis Wagenaar Delft3D User Days 2019
  • 2. Why model flood impacts? 2 Intervention costs Reduction expected flood damages • Cost Benefit Analyses • Benefits of detailed measures • Optimal design • Spatial planning • Impact forecasting • Forecasting what the weather will do rather than what the weather will be • Insurance • Settings premiums
  • 3. Application of impact modelling 3 CBA infrastructure investments Risk screening studies Adaptive delta management Setting insurance premiums Climate change impact Impact Based Forecasting: Warning information and preparation event. Where to send aid first How much money to free up for recovery. Initial distribution of recovery funds
  • 4. Flood damage 4 Category Tangible Intangible Direct • Capital (houses, crops, cars, factory buildings) • Production losses, income losses • Casualties, injuries, ecosystems, monuments • Social disruption, emotional damage Indirect • Production losses / loss of utility services outside flooded area; • Unemployment, migration. • Cutting of infrastructure lines • Loss of potential for attracting investors • Reputation damage Use of multiplication factor for everything that is difficult to model! • Damage and loss • Modelling needs • Scope Delft-FIAT
  • 5. Direct tangible - Business Interruption • A flood can last between hours up to sometimes 1 year (e.g. Zeeland 1953). • If water can flow away naturally it is short. • If water needs to be pumped and dikes need to be repaired this can be long. • Recovery time can also be long (easily 1 year) • Shortage of contractors, waiting for permits. • Experts need to check for mold. • Larger total disasters need more recovery time. • Recaptured value • Often a lot of interruption damage can be recaptured elsewhere (e.g. competitor does more). • Damage depends on definition. 5
  • 6. Indirect tangible • Production losses outside flooded area • (e.g. production process halted because crucial component cannot be made). • Famous case of hard drives in Thailand • Part of the losses recaptured by competition • Modeled with several types of economic models, highly uncertain. • Cutting of infrastructure lines • E.g. Traffic problems, power outages, etc. New York Times – Nov 6, 2011
  • 7. Direct intangible • Deadly casualties differ very strongly among floods. (often 0 sometimes 1000s). • Deadly casualties when: large water depths, rapid rise rate, unexpected and unprepared people. • Casualties are more often sick and elderly. • Poor people in developing countries might die from hunger or disease. • Poor people in developing countries may become homeless and get into major trouble. 7
  • 8. Demand surge • After a flood there are often shortages in construction labour and expertise. • Shortages drive up prices as people compete for limited resources. • Especially important when a flood is focused on one densely populated area (e.g. dike breach near city). Including demand surge • Demand surge is a loss for some but an equal profit for others. Therefore, often not used in an economic analysis. • Insurance companies do take it into account. 8
  • 9. Correcting for inequality in Cost Benefit Analyses 9 0 0,2 0,4 0,6 0,8 1 1,2 1,4 1,6 1,8 2 0 20 40 60 80 100 Utilityorwell-being Income Equal decrease in income/wealth Unequal decrease in well-being
  • 11. Inputs Delft-FIAT 11 Statistical models Hydrological models Hydrodynamic models Delft3D FM Suite: • D-Flow FM • D-Hydrology (wflow) Probabilistic Toolkit (PTK) Delft-FIAT ? - Mostly expert judgment - Only few techniques available
  • 12. Available approaches damage functions Expert/synthetic approach • Expert or group of experts come together and estimate a damage function. • Elements of object of interest can be assessed individually. • Weakness is that experts typically have one setting in mind. 12 Data-driven approach (empirical) • Regression analysis on available data points of past flood damage. • Weakness: Data availability and bad fits.
  • 13. Absolute and relative damage functions 0 20 40 60 80 100 120 -1 1 3 5 Damage(MEURO) Water depth (m) 0 0,2 0,4 0,6 0,8 1 -1 1 3 5 Damagefactor(-) Water depth (m) 0 0,2 0,4 0,6 0,8 1 -1 1 3 5 Damagefactor(-) Water depth (m) Max. damage = 240 k€ Max. damage = 120 k€ =
  • 16. From damage to flood risk (EAD) • Flood damage can be calculated for an event. Yet many possible events might occur. • The flood damage of one event alone is therefore too little to get a complete picture and hence too little for rational decision making. Flood risk: Expected Annual Damage (EAD)/Annual Average Loss (ALL) • Summary statistic that combines all possible flood events, their probabilities and their damages into one figure. • The unit is: Euro/year • Very useful for decision making! 16
  • 17. Calculating flood risk (EAD) • Combine many different flood events into maps (or aggregate damages) for different exceedance probabilities . • Take the integral to get the expected annual damage. • In practice calculate the area under the graph. 17 𝑅𝑖𝑠𝑘 = ŕśą 𝐷𝑎𝑚𝑎𝑔𝑒 𝑝 𝑑𝑝 0 20 40 60 80 100 0 1/20 1/10 3/20 1/5 1/4 Damage(M$) Exceedance probability (1/y) AAL
  • 18. Future risks 18 • A risk reduction measure needs to function for a long time • A cost-benefit requires future risks as input and not just current • Hazard, Exposure and Vulnerability changes over time • Change needs to be predicted
  • 19. Change in hazard 19 • Climate change • Sea level rise • More extremes (rain, droughts, wind) • Changes to the system: • Land subsidence • Erosion, sedimentation • Deforestation • Wetland encroachment • Change in impervious area Increasing hazard?
  • 20. Change in exposure 20 • Extra buildings • Population growth • Fewer people per building • More value per building • GDP per capita growth
  • 21. Change in vulnerability 21 • Often neglected, little research.. • Bangladesh example of reduction in vulnerability of loss of life Changing vulnerability? Mechler & Bouwer (2015) Climatic Change Bangladesh
  • 22. Beyond Delft-FIAT: Machine Learning for better impact predictions From: Damage fraction = f(water depth) To: Damage fraction = f(water depth, warning time, wave height, …..) DF = f(water depth) DF = f(water depth, warning time, waves height, …..) Multi-variable damage models can be build from data with Machine learning methods!
  • 23. • My PhD and project to prioritize humanitarian aid in the Philippines • Use of historical data on damages Machine Learning for macro level impact forecasting 2012 Now 2016 2013 RedCross data: 12 typhoons, 2012 - 2016 1600 damage data Response % Total damaged houses in a municipality Predictors (~40) Hazard : Average wind speed, rainfall Exposure : building, people (2010) Vulnerability : roof & wall type, GDP, slope (2008)
  • 25. Situation Flood risk Colombo • Recent floods • Combination river discharge, local rainfall and sea level • Wetland encroachment • Proposed interventions • WorldBank loan
  • 26. Project Setup MIKE model 80 runs (30m) different boundary conditions Probabilistic part Return period maps per cell. Impact part FIAT model, projections and CBA. Delft-FEWS pilot Training 1 Training 2 Training 3 Ruben Dahm Local partners Ferdinand Diermanse Laurens Bouwer Dennis Wagenaar Local partners Marc van Dijk Simplified method outer areas carried out completely by local partners
  • 28. Exposure and damage functions Exposure • Detailed data on building level • Collected for this project • Building type, number of floors, shanty. • 57 damage categories • Also vehicles, electricity and telecom. Damage functions • Created by experts • Workshop • Bills of quantities 0 0,2 0,4 0,6 0,8 1 1,2 0 5 10 Damageindex Inundation depth (m)
  • 29. Expected Annual Damage Intervention package 1 (M$/y) Intervention package 2 (M$/y) Reference 45.9 45.9 New 43.8 42.5 Difference 2.1 3.4
  • 30. Future damage projections - Damage assumed to increase with GDP per capita - Population growth not included because expected move to high rise buildings - Population growth in wetland areas considered separately - 5 growth scenarios
  • 31. Cost Benefit Analysis • Sum of future risk reductions should be smaller than the investment costs of the intervention. • Risk reductions in the future count less (discount rate) • Discount rate Colombo difficult to estimate. • Internal Rate of Return is the discount rate for which the sum of future risk reductions is equal to the investment costs. • Indirect damage discussion
  • 32. More information Details about this project and all additional assessments are available in article: “Evaluating adaptation measures for reducing flood risk”