Warbiso Track is a 6.3 km Medium 4WD trail in Bonang, Victoria, Australia. Expect max gradient up to 9%. Average drive time is 61.17 minutes.
You'll discover an intriguing medium-difficulty challenge near Bonang that rewards adventurous drivers with a compact but engaging off-road experience. The Warbiso Track's 9% steep grade delivers genuine technical demands without overwhelming inexperienced 4WD operators, making it an excellent progression trail for those building their skills. Over 6.3 kilometres, you'll navigate varied terrain that tests your vehicle's capability while offering authentic Victorian backcountry scenery.
The driving experience combines rocky sections with tighter tree-lined passages that require careful line selection and steady throttle control. You'll encounter steep pitches that demand respect and attention, particularly during wet conditions when grip becomes compromised. The relatively short completion time of around an hour makes this an ideal half-day adventure, though you shouldn't underestimate the concentration required.
Before tackling Warbiso Track, ensure your 4WD is in good mechanical condition with quality tyres and functioning differentials. The steep grades mean recovery situations are possible, so carry appropriate recovery equipment and never drive alone. Weather assessment is crucial—recent rain will significantly increase difficulty. While currently showing limited traffic data, this trail represents authentic off-road driving away from heavily trafficked routes, offering solitude and genuine backcountry atmosphere for those willing to respect its challenges.
Explore Warbiso Track in the app
Offline maps, live conditions & more
6.3 km
Distance
1h 1m
Avg Time
14 km/h
Avg Speed
9%
Steep Grade
See how many vehicles have driven this trail
Already have an account?
See who's driving this trail and when
Already have an account?
5°C
Mist
6 km/h NE
96%
4°C
0
7-Day Forecast
Sunny
Partly Cloudy
Sunny
Partly Cloudy
Sunny
Partly Cloudy
Patchy rain nearby
Get offline topo maps, live conditions, and data-driven difficulty ratings.