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Modeling Alabama Tornado Emergency Relief (MATER). Joe Cordell Spencer Timmons Michael Fleischmann. Overview. Background Problem Abstract Network Overview (Nodes, Arcs) Mathematical Model Scenarios Results Conclusions Further Work Video Link. Background. State of Alabama
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Modeling Alabama Tornado Emergency Relief (MATER) Joe Cordell Spencer Timmons Michael Fleischmann
Overview • Background • Problem Abstract • Network Overview (Nodes, Arcs) • Mathematical Model • Scenarios • Results • Conclusions • Further Work • Video Link
Background • State of Alabama • Major Cities: Birmingham, Montgomerey, Huntsville, Mobile, Tuscaloosa • Population: 4.7 million • Average 23 Tornados Per Year • $13 million in average annual damages
Background • Tornado Outbreak on April 27th 2011 • 165 tornados across the United States • 248 fatalities • Over $16 billion in damages over 3 days • Listed by NOAA as the fourth deadliest in United States history
April 27th, 2011 – Tornados • 62 Tornados in Alabama alone • 2219 injuries • 192 fatalities • Only the second day in history that there were three or more F5 or EF5 tornadoes.
Background • Cordova • Population: 2260 • Two tornados • Four fatalities
Problem Abstract • Relief supply flow as a Min-Cost Flow Model • Goal: To supply damaged cities in the least amount of time and determine if prepositioning of supplies will affect total travel time • Key modifications to the basic model • Randomized delay • Interdiction represented by arc delays • Measures of Effectiveness: • Total travel time • Access to damaged cities
Nodes Huntsville Birmingham Tuscaloosa
Arcs Huntsville Birmingham Tuscaloosa
April 27th, 2011 – Tornados We Modeled Jasper, AL Area
Mathematical Model MIN-COST FLOW Objective: Move humanitarian supplies to damaged towns in shortest time where costs are hours of movement required to deliver supplies. There is a demand for supplies at each damaged town. MATER looks at worst case scenario by implementation of a “smart” tornado which seeks to damage roads so as to inflict the greatest cost on the operator. C=24 City C=0 s t AirPort C=5 City C=20
Mathematical Model MIN-COST FLOW Objective: Move humanitarian supplies to damaged towns in shortest time where costs are hours of movement required to deliver supplies. There is a demand for supplies at each damaged town. MATER looks at worst case scenario by implementation of a “smart” tornado which seeks to damage roads so as to inflict the greatest cost on the operator. C=50 C=24 City 1 C=0 s t AirPort C=5 City -1 C=20
Scenario 1aDestroyed Roads-Jasper Only Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1bDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 1cDestroyed Roads-Jasper and Blount Springs Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2cDelays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 2c Delays Roads-Jasper, Blount Springs and Oneonta Damaged City City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node
Scenario 3Prepositioned Aid Damaged City Prepositioned Stocks City Node Airport Node