Reedy Track is a 1.8 km 4WD trail in Cohuna, New South Wales, Australia.
You'll discover an intriguing short route near Cohuna that offers 4WD enthusiasts a chance to explore rural New South Wales terrain with minimal fuss. The Reedy Track's compact 1.8 km length makes it perfect for testing your vehicle's capabilities or breaking in new equipment without committing to a full day's expedition. Despite its modest distance, this track winds through characteristic local landscape that rewards careful navigation and attention to detail.
The gentle grades throughout the route mean you can focus on line selection and vehicle control rather than wrestling with steep climbs or technical descents. You'll encounter the kind of conditions typical to this region—conditions that reveal how your 4WD handles varied ground. The relatively flat nature of the drive allows you to observe the surrounding environment and appreciate the quieter side of off-road exploration near this regional centre. There's a relaxed, exploratory feel to this track that appeals to both newcomers building confidence and experienced drivers seeking a casual outing.
Before heading out, ensure your vehicle is in good working order and carry basic recovery gear. The short duration means you can easily fit this into a broader adventure or use it as a warm-up before tackling longer challenges in the area. Track conditions can vary seasonally, so local knowledge or recent reports prove valuable. With the Newtracs app, you can plot your route and track your progress through this distinctive corner of rural NSW.
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1.8 km
Distance
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15°C
Light rain shower
18 km/h NNW
78%
15°C
0.3
7-Day Forecast
Moderate rain
Patchy rain nearby
Partly Cloudy
Patchy rain nearby
Patchy rain nearby
Patchy rain nearby
Mist
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