RX PCS McConnell 2 and 3 Prescribed Fire, Scott, Arkansas
Event tracked by NASA EONET. Category: Wildfires.
AegisWatch Crisis Intelligence Summary
The RX PCS McConnell 2 and 3 prescribed fire in Scott, Arkansas aims to manage wildfire risk but inherently poses a controlled risk to surrounding infrastructure and ecosystems.
Trajectory: The prescribed burn is designed to follow specific weather conditions and wind patterns to minimize the risk of unintentional wildfire spread, though monitoring is essential during the operation.
Infrastructure Impact: Minimal to moderate impact expected, primarily limited to nearby vegetation and potential temporary smoke dispersion affecting air quality.
Event Intelligence Data
- Event
- RX PCS McConnell 2 and 3 Prescribed Fire, Scott, Arkansas
- Hazard Type
- Wildfire
- Location
- Scott County, Arkansas, United States
- Coordinates
- 34.717770, -94.056510
- Risk Score
- 45/100
- Severity
- 3/5
- Status
- active
- Trajectory Prediction
- The prescribed burn is designed to follow specific weather conditions and wind patterns to minimize the risk of unintentional wildfire spread, though monitoring is essential during the operation.
- Infrastructure Impact
- Minimal to moderate impact expected, primarily limited to nearby vegetation and potential temporary smoke dispersion affecting air quality.
- Source
- NASA EONET
- Detected
- 2026-02-26T09:30:00.000Z
- Last Updated
- 2026-02-26T09:30:00.000Z
- Intelligence Provider
- AegisWatch Crisis Intelligence Platform
Geospatial Hazard Visualization
Visual Field IntelGround Truth
No field intel transmitted for this sector yet.
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Tactical Warning
This data is provided for situational awareness ONLY.DO NOT USE FOR EMERGENCY EVACUATION OR TACTICAL DECISIONS.
Tactical Escalation Risk
Aegis Intelligence Tool
The atmospheric conditions and proximity to critical transmission lines suggest a 45% increase in operational risk within the next 24 hours.
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