intelligence surveillance and reconnaissance system for california wildfire detection presented by-...
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Intelligence Surveillance and Reconnaissance System for California Wildfire Detection
Presented by-Shashank TamaskarPurdue [email protected]
Team: ISR FirefightingTeam members: Shashank TamaskarNadir BagaveyevEvan HelmeidTiffany Allmandinger
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Overview
1. Definition2. Abstraction3. Modeling and Implementation 4. Future work
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Definition
Need: In 2008, Arsonist fires burned down 25,000 acres of forest land resulting in 24 million dollar damage to property
Objective: To understand and analyze the problems associated with the wildfire prevention and management system and to suggest improvements to enable faster fire detection in the region
SoS traits: Heterogeneous geographically separated agents (Watchtowers, UAVs, arsonists, other human agents) with different degree of autonomy
Status Quo: Current system consists of watchtowers and the reliance on civilian reports. Intelligence of multiple fires and fire state dependent on ground crews or manned aircraft scouting situation. Manned airplanes limited in allowed exposure to fire conditions. No night flying allowed.
Operational context: To limit the scope of the project we have concentrated on interaction between the resource and operational alpha level entities. The following figure shows our area
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Definition
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Paper Model
Home BaseCalculate UAV path based on coverage of assetsCommand tracking in case of fire detection
Way
poin
tsPo
sitio
n, C
over
age D
ata
Watchtowers
Coverage
Detect
Detect
Environment
Track , Evade
Delay: Call 911 after 20 min
Track
Detect
UAVs
Abstraction -“Framing key descriptors and their evolution”
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Abstraction
UAV Path Calculations
Different operating scenarios:
Zigzag model
AOI divided into sectors
Coverage due to watchtowers ignored
Waypoints predefined
ABM
Waypoints dynamically added depending upon coverage
UAV’s avoid watchtowers
Optimal Path Generation
Optimal path generation to maximize the coverage
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Abstraction: Zigzag model
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Abstraction: ABM
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Implementation
Platform: STK is used for calculation of positions of mobile agents while Matlab is used to implement path algorithms and calculate coverage
Object orientation programming is used to rapidly develop large code(>1000 loc) also the modular architecture of the code helps us keep the effective complexity of the code low
Metrics: Four metrics for system performance1. Coverage2. Cost3. Detection Time4. Response time
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Implementation
Problems addressed:•Coverage Problem: How to efficiently provide coverage to a area given a set of assets•Detection Problem: How to improve the fire detection time
• Random fires• Arsonist fires
•Arsonist tracking: Track the arsonist after the fire is detected
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Implementation
Demonstration of the model
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Implementation
Simulation Results – Verification/Validation
For a constant field of view:
• 1 UAV provides worst coverage
• 2 to 5 UAVs do not present significant coverage differences
• Coverage metric is directly related to the detection time over all simulations
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Implementation
Simulation Results
• 1 UAV has the worst detection time
• 10o, 15o FOV cause significant increase in detection time over 20o, 45o
• 20o FOV provides the best coverage for the cost
• Cost is directly related to the FOV
• Small FOV yields a highly unstable system and requires many more simulations to determine trends
• The larger FOV follows the expected trend: more UAVs faster detection
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Implementation
Simulation Results
• Determine effectiveness of watchtowers and impact on UAV necessity
• UAVs detected the majority of the fires
• Provide significant increase in system performance over the current state
• As the number of simulations were increased the fraction of fires detected by the watchtowers became even less
• Watchtowers are good for random fires but UAVs are good for arsonist fires. UAVs also allow for arsonist tracking
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Implementation
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Implementation
Simulation Results
• 10o and 15o FOV do not provide low enough detection time
• 20o and 45o are the most effective
• 20o is the most cost effective
• Best performance for the money
• 45o does not provide enough benefit increase to justify increased cost over the 20o FOV
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Implementation
Simulation Results: Arsonist detection
• Only 19 out of 132 simulations resulted in arsonist detection
• In most cases fires were detected late after they started so arsonists had sufficient time to flee the scene
• Probability of arsonist detection increases with increase in number of UAVs, Speed, FOV and altitude
• Arsonist detection by Humans was reported too late
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Conclusions
• Simulation:
• Effective and valid: Simulations show a good correlation with paper model
• Metric is accurate: Found a good correlation between detection time and coverage metric
• More iterations and simulations are necessary to draw proper conclusions
• Generated a model which can be applied to other ISR problems
• Conclusions:
• UAVs with greater FOV and Altitude can significantly improve the detection time
• More UAVs provide better coverage, but do not necessarily provide significant benefits
• Arsonist detection may better suited with a fleet mix of UAVs. Slow UAVs for fire detection and Fast for Arsonist detection
• Watchtowers are not well suited for detection of arsonist fires
A SoS approach is beneficial in analyzing the options for improving the current system, but it may not be feasible to implement the SoS
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Future Work
• Implement UAV-avoidance algorithm
• Do not revisit areas that were just scanned
• Limit conflict between UAVs
• Consider refueling time
• Create a detailed cost model
• Determine camera/sensor array to use
• Determine optimal UAV for given parameters
• Pool together the lessons learned by various teams and develop a general purpose tool for ISR applications which can be used for research at Purdue
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System-of-Systems Laboratory: System-of-Systems Laboratory: Aeronautics ApplicationsAeronautics ApplicationsDirector: Director: Prof. Dan DeLaurentis ([email protected])
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Thank you for your
consideration!