To Well 17 (Killagurra) is a 0.3 km 4WD trail in Little Sandy Desert, Western Australia, Australia.
You'll discover a fascinating piece of outback history at To Well 17, a remote water point located near the Little Sandy Desert in Western Australia. This short but intriguing destination appeals to 4WD enthusiasts interested in exploring historical pastoral infrastructure and experiencing genuine desert exploration. The trail offers a unique glimpse into how early settlers and station operators managed water resources in one of Australia's most unforgiving landscapes.
The drive to Well 17 takes you through classic desert terrain characteristic of the Little Sandy Desert region. You'll navigate relatively straightforward tracks across sparse vegetation and sandy ground, with minimal elevation changes making this accessible for most capable 4WD vehicles. The landscape unfolds with wide-open vistas typical of inland Western Australia, where the isolation and silence create an authentic outback atmosphere. Upon arrival, you'll find the well structure itself—a tangible reminder of the ingenuity required to sustain operations in this remote corner of the continent.
While the short distance and flat terrain present no major technical challenges, preparation remains essential for desert travel. Ensure you carry adequate water, fuel, and supplies, as this location is far from services. Navigation tools are invaluable in this sparse environment, and checking current track conditions is recommended. The minimal visitor traffic means you should be self-sufficient in case of mechanical issues. This trail rewards curious explorers willing to venture into Australia's red centre and experience the heritage of desert pastoralism firsthand.
Explore To Well 17 (Killagurra) in the app
Offline maps, live conditions & more
0.3 km
Distance
--
Avg Time
--
Avg Speed
--
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?
Get offline topo maps, live conditions, and data-driven difficulty ratings.