Forest fire notification in Central African Republic
On 25/02/2026, a forest fire started in Central African Republic, until 02/03/2026.
AegisWatch Crisis Intelligence Summary
A significant wildfire has been reported in the Central African Republic, posing immediate threats to local ecosystems and communities.
Trajectory: The wildfire's trajectory is influenced by current weather patterns and local topography, indicating a potential spread towards populated areas if containment measures are not swiftly implemented.
Infrastructure Impact: The wildfire poses a high risk to infrastructure, potentially damaging homes, roads, and power lines in the affected region.
Event Intelligence Data
- Event
- Green forest fire notification in Central African Republic
- Hazard Type
- Wildfire
- Location
- Haute-Kotto, Ködörösêse tî Bêafrîka / République centrafricaine
- Coordinates
- 8.287283, 21.672492
- Risk Score
- 75/100
- Severity
- 1/5
- Status
- active
- Trajectory Prediction
- The wildfire's trajectory is influenced by current weather patterns and local topography, indicating a potential spread towards populated areas if containment measures are not swiftly implemented.
- Infrastructure Impact
- The wildfire poses a high risk to infrastructure, potentially damaging homes, roads, and power lines in the affected region.
- Source
- GDACS
- Detected
- 2026-02-25T00:00:00.000Z
- Last Updated
- 2026-03-02T08:00:48.000Z
- Intelligence Provider
- AegisWatch Crisis Intelligence Platform
Geospatial Hazard Visualization
Visual Field IntelGround Truth
No field intel transmitted for this sector yet.
Ground observation sync in progress...
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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