Forest fire notification in Ethiopia, Sudan
On 01/03/2026, a forest fire started in Ethiopia, Sudan, until 08/03/2026.
AegisWatch Crisis Intelligence Summary
A wildfire has been detected in the green forest region between Ethiopia and Sudan, posing significant threats to the local environment and communities.
Trajectory: Forecast models indicate that the fire could spread rapidly due to dry conditions and high winds, potentially affecting wider regions of both countries if not contained swiftly.
Infrastructure Impact: The wildfire is likely to damage roads, bridges, and utility lines, potentially disrupting transportation and communication networks in the affected areas.
Event Intelligence Data
- Event
- Forest fire notification in Ethiopia, Sudan
- Hazard Type
- Wildfire
- Location
- Ulang, Upper Nile أعالى النيل, South Sudan جنوب السودان
- Coordinates
- 8.091236, 33.113626
- Risk Score
- 75/100
- Severity
- 1/5
- Status
- active
- Trajectory Prediction
- Forecast models indicate that the fire could spread rapidly due to dry conditions and high winds, potentially affecting wider regions of both countries if not contained swiftly.
- Infrastructure Impact
- The wildfire is likely to damage roads, bridges, and utility lines, potentially disrupting transportation and communication networks in the affected areas.
- Source
- GDACS
- Detected
- 2026-03-01T00:00:00.000Z
- Last Updated
- 2026-03-09T12:02:43.000Z
- 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.
Intelligence Briefing Locked
Upgrade to PRO to access trajectory modeling and critical infrastructure predictions.
