posted on 2007-01-01, 00:00authored byKian Hsiang Low, Geoffrey Gordon, John M. Dolan, Pradeep Khosla
The exploration problem is a central issue in
mobile robotics. A complete coverage is not practical if the
environment is large with a few small hotspots, and the
sampling cost is high. So, it is desirable to build robot teams
that can coordinate to maximize sampling at these hotspots
while minimizing resource costs, and consequently learn more
accurately about properties of such environmental phenomena.
An important issue in designing such teams is the exploration
strategy. The contribution of this paper is in the evaluation
of an adaptive exploration strategy called Adaptive Cluster
Sampling (ACS), which is demonstrated to reduce the resource
costs (i.e., mission time and energy consumption) of a robot
team, and yield more information about the environment
by directing robot exploration towards hotspots. Due to the
adaptive nature of the strategy, it is not obvious how the
sampled data can be used to provide unbiased, low-variance
estimates of the properties. This paper therefore discusses how
estimators that are Rao-Blackwellized can be used to achieve
low error. This paper also presents the first analysis of the
characteristics of the environmental phenomena that favor
the ACS strategy and estimators. Quantitative experimental
results in a mineral prospecting task simulation show that
our approach is more efficient in exploration by yielding more
minerals and information with fewer resources and providing
more precise mineral density estimates than previous methods.