Title: Finding Optimal Solutions to Cooperative Pathfinding Problems
1Finding Optimal Solutions to Cooperative
Pathfinding Problems
- Trevor Standley and Rich Korf
- Computer Science Department
- University of California, Los Angeles
2Introduction
- Pathfinding Problems
- A single agent must find a path from a start
state to a goal state - Cooperative Pathfinding Problems
- Multiple agents interact
- Want to minimize the total cost
3Motivation
4Motivation
5My Formulation
6Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
7Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
8Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
9Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
10Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
11Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
12Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
13Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
14Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
15Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
16Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
17Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
18Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
19Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
20Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
21Related Work
- Centralized Approaches
- Strengths Typically complete, can be optimal
- Weaknesses Takes forever!
- Decoupled Approaches
- Strengths Fast
- Weaknesses Incomplete and suboptimal
22Our Prior Work (Standley AAAI-10)
- Independence Detection
- Empowers centralized algorithms.
- Combines the strength of centralized and
decentralized approaches. - Maintains optimality and completeness.
23Simple Independence Detection
From (Standley AAAI-10)
24Simple Independence Detection
From (Standley AAAI-10)
- Put each agent into its own group.
- Plan paths for each group independently
- Check for conflicts in new paths
- Combine groups with conflicting paths
- Repeat 2-4 until no conflicts
25Simple Independence Detection
From (Standley AAAI-10)
26Simple Independence Detection Problem
From (Standley AAAI-10)
- Are these agents independent?
27Simple Independence Detection Problem
From (Standley AAAI-10)
- Are these agents independent?
28Better Independence Detection
From (Standley AAAI-10)
- When a conflict is detected between two groups,
try to find an alternative path for one of the
groups - If that fails try to find an alternate path for
the other group - Only as a last resort do we combine the groups
29Best Independence Detection
From (Standley AAAI-10)
- How can we make agent 2 take this path initially?
30Best Independence Detection
From (Standley AAAI-10)
- Try to avoid future conflicts
- avoid the current paths of other agents.
31Reservation Tables
- Illegal move table
- Contains all the ways alternative paths could
result in a conflict with the currently
conflicting group. - Consider such moves illegal.
- Conflict avoidance table
- Contains all the ways alternative paths could
result in a conflict with any other group - Keep track of conflict avoidance table violations
and
32Reservation Tables
From (Standley AAAI-10)
33Reservation Tables
From (Standley AAAI-10)
34Reservation Tables
From (Standley AAAI-10)
35Reservation Tables
- Illegal move table
- Contains all the ways alternative paths could
result in a conflict with the currently
conflicting group. - Consider such moves illegal.
- Conflict avoidance table
- Contains all the ways alternative paths could
result in a conflict with any other group - Keep track of conflict avoidance table violations
36Reservation Tables
From (Standley AAAI-10)
- Conflict avoidance table.
37Reservation Tables
From (Standley AAAI-10)
- Conflict avoidance table.
38Reservation Tables
From (Standley AAAI-10)
- Conflict avoidance table.
39Complete Approximation Algorithms
- Our previous work maintained optimality by
- Only accepting alternate paths if they have the
same cost as original paths. - Coupling independence detection with an optimal
centralized algorithm. - We recognize in our current work that we can drop
these two constraints.
40Complete Approximation Algorithms
- Modifications to the centralized algorithm
- Expand nodes with fewest violations first
- Use cost to break ties
41When to drop these constraints
- Always
- Leads to a fast and complete algorithm
- When doing so avoids the creation of groups
containing more than x agents - Leads to a slower but still fast algorithm
- Produces higher quality paths
42Parameterized Approximation
- Maximum group size parameter x
- Drop constraints to avoid creating groups larger
than x. - x 1 always drop the constraints.
- x 8 never drop the constraints (optimal)
- The algorithm is complete for any choice of x
43Simple Optimal Anytime Algorithm
- Run the parameterized approximation with x 1.
- Then run the parameterized approximation with x
2. -
- When we run out of time, we return the best
solution found by any run.
44Simple Optimal Anytime Algorithm Problem
- The simple anytime algorithm suffers the cost of
unused and incomplete iterations.
45Optimal Anytime Algorithm Problem
- Keep paths and groupings from previous iterations
when possible. - Keep track of groups that might not have optimal
paths. - Fix these paths one at a time starting with the
easiest.
46Optimal Anytime Algorithm
- Keep a lower bound for each group.
- When merging a group, add lower bounds
47Optimal Anytime Algorithm
- Update best path many times within an iteration.
- Whenever the solution is conflict free we update
the best solution found. - When lower bound equals cost, were done
48Results
- Our coarsest approximation is complete, has
competitive running time, and produces superior
solutions. - As an optimal algorithm, our anytime algorithm is
competitive with our previous state-of-the-art. - If our anytime algorithm is terminated early, it
often returns an optimal path.