Easter Monday Track is a 2.5 km Medium 4WD trail in Blackwood, Victoria, Australia. Average drive time is 15.03 minutes.
You'll discover why Easter Monday Track has become a favourite among Victorian 4WD enthusiasts—it delivers genuine off-road challenge without overwhelming difficulty. This 2.5 km route near Blackwood combines varied terrain with scenic forest surroundings, offering the perfect balance for drivers looking to build their skills or enjoy a rewarding afternoon adventure. The track winds through natural woodland, presenting you with rocky sections, root-laden passages, and moderate obstacles that test your vehicle control and line selection.
The driving experience here is engaging rather than punishing. You'll navigate through tight forest corridors where careful steering matters, encounter uneven surfaces that demand good suspension geometry, and face enough technical elements to keep you focused. The flat gradient means you won't battle steep climbs or descents, allowing you to concentrate on precision driving. With an average completion time of just 15 minutes, it's ideal for fitting into a day exploring the Blackwood region's network of trails.
Before heading out, ensure your vehicle is in good mechanical condition and your tyres have decent tread—ground clearance is less critical here than reliability. Check weather conditions beforehand, as wet weather can make the track slippery. With 72 vehicles already having successfully tackled Easter Monday Track, you're following a well-tested route. The Newtracs app will help you navigate and track your progress through this medium-difficulty gem.
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2.5 km
Distance
15 min
Avg Time
15 km/h
Avg Speed
--
Steep Grade
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13°C
Clear
9 km/h NNE
52%
12°C
0
7-Day Forecast
Partly Cloudy
Sunny
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Patchy rain nearby
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