32 research outputs found
Optimize Planning Heuristics to Rank, not to Estimate Cost-to-Goal
In imitation learning for planning, parameters of heuristic functions are
optimized against a set of solved problem instances. This work revisits the
necessary and sufficient conditions of strictly optimally efficient heuristics
for forward search algorithms, mainly A* and greedy best-first search, which
expand only states on the returned optimal path. It then proposes a family of
loss functions based on ranking tailored for a given variant of the forward
search algorithm. Furthermore, from a learning theory point of view, it
discusses why optimizing cost-to-goal \hstar\ is unnecessarily difficult. The
experimental comparison on a diverse set of problems unequivocally supports the
derived theory.Comment: 10 page
Diverse Planning for UAV Control and Remote Sensing
Unmanned aerial vehicles (UAVs) are suited to various remote sensing missions, such as measuring air quality. The conventional method of UAV control is by human operators. Such an approach is limited by the ability of cooperation among the operators controlling larger fleets of UAVs in a shared area. The remedy for this is to increase autonomy of the UAVs in planning their trajectories by considering other UAVs and their plans. To provide such improvement in autonomy, we need better algorithms for generating alternative trajectory variants that the UAV coordination algorithms can utilize. In this article, we define a novel family of multi-UAV sensing problems, solving task allocation of huge number of tasks (tens of thousands) to a group of configurable UAVs with non-zero weight of equipped sensors (comprising the air quality measurement as well) together with two base-line solvers. To solve the problem efficiently, we use an algorithm for diverse trajectory generation and integrate it with a solver for the multi-UAV coordination problem. Finally, we experimentally evaluate the multi-UAV sensing problem solver. The evaluation is done on synthetic and real-world-inspired benchmarks in a multi-UAV simulator. Results show that diverse planning is a valuable method for remote sensing applications containing multiple UAVs