Title: Constrained Integer Network Flows
1Constrained Integer Network Flows
2Constrained Integer Network Flows
- Traditional Network Problems With
Side-Constraints and Integrality Requirements - Motivated By Applications in Diverse Fields,
Including - Military Mission-Planning
- Logistics
- Telecommunications
3Minimum-Cost Network Flows
- Definition
- Minimize Flow Cost
- b Represents Demands and Supplies
- Special Properties
- Spanning Tree Basis
- A Is Totally Unimodular
- Integer Solutions if b, l, and u Are Integer
- Row Rank of A Is V-1
MCNF
- Special Structure Has Lead To Highly Efficient
Algorithms
4Shortest-Path Problems
- One-to-One (SP)
- Find Shortest-Path From s To t
- b et - es
- One-to-All (ASP)
- Find Shortest-path From s To All Other Vertices
- b 1 - Ves
SP/ ASP
- Special Solution Algorithms
- Label Setting
- Label Correcting
5Resource-Constrained Shortest Path
- Find Shortest Path From s To t Limited By
Constraint on a Resource - Side-Constraint Destroys Special Structure of
MCNF
RCSP
- Solutions Non-Integer Unless Integrality Enforced
6RCSP Aircraft Routing
- Time-Critical-Target Available For Certain Time
Period - Aircraft Need To Be Diverted To Target
- Planners Wish To Minimize Threats Encountered by
Aircraft - Multiple Aircraft ( 100s or 1000s ) Considered
for Diversion
7RCSP Aircraft Routing
- Grid Network Representation
- Arc Cost Threat
- Arc Side-Constraint Value Time
- Total Time, Including Decision Making, Is
Constrained
Diagonal Arcs Are Included, But Not Shown
8Multicommodity Network Flow
- Minimize Cost of Flows For All Commodities
- Total Flow for All Commodities on Arcs Is
Restricted - Non-Integer Solutions
- Solution Strategies
- Primal Partitioning
MCF
- Price Resource Directive Decompositions
- Heuristics
9Origin-Destination Integer MCF
- Specialization of MCF
- One Origin One Destination Per Commodity
- Commodity Flow Follows a Single Path
- Integer-Programming Problem
- Two Formulations
- Node-Arc
- Path-Based
10Origin-Destination Integer MCF
ODIMCF2
ODIMCF1
- ODIMCF2 Path-Based Formulation
- Rows K E
- Variables Dependent on Network Structure
- ODIMCF1 Node-Arc Formulation
- Rows VK E
- Variables KE
11ODIMCF Rail-Car Movement
- Grain-Cars Are Blocked for Movement
- Blocks Move From Origin To Destination through
Intermediate Stations - Grain-Trains Limited on Total Length and Weight
- Blocks Need To Reach Destinations ASAP
12ODIMCF Rail-Car Movement
- Arcs - Catching a Train or Remaining at a Station
- Vertex - StationTrain Arrival/Departure
Stations
Remain at A
A
a2
a3
a4
a1
Catch a Train
B
b2
b5
b1
b3
b4
C
c2
c3
c4
c1
Time
13ODIMCF MPLS Networks
- Traffic Is Grouped by Origin-Destination Pair
- Each Group Moves Across the Network on a
Label-Switched Path (LSP) - LSPs Need Not Be Shortest-Paths
- MPLSs Objective Is Improved Reliability, Lower
Congestion, Meeting Quality-of-Service (QoS)
Guarantees
14ODIMCF MPLS Networks
MPLS Switches
LSP
LSR
LSR
IP Net
IP Net
LSR
LSR
MPLS Network
LSR Label-Switch Router
15Binary MCF
- MCF Specialization
- xk Binary
- l 0
- bk et - es
- ODIMCF Variant
- qk 1 for all k
BMCF
16(No Transcript)
17Current Proposed Algorithmic Approaches
18RCSP Current Algorithms
- Lagrangian Relax-ation, RRCSP(?)
- Lagrangian 1
- Network Reduction Techniques
- Use Subgradient Optimization To Find Lower Bound
- Tree Search to Build a Path
RRCSP(?)
- Lagrangian 2
- Bracket Optimal Solution Changing ?
- Finish Off With k-shortest Paths
19RCSP Proposed Algorithm
- Objectives
- Solve RCSP For One Origin, s, and Many
Destinations, T - Reduce Cumulative Solution Time Compared To
Current Strategies
- Overview
- Solves Relaxation (ASP(?))
- Relaxation Costs Are Convex Combination of c and
s - ASP(?) Solved Predetermined Number of Times
20RCSP Proposed Algorithm
- Algorithm
- Relax Side-Constraint Forming ASP(?)
- ASP With s As Origin
- Select n Values for ?
- 0 ? ? ? 1
- Solve ASP(?) For Each Value of ?
ASP(?)
- For Each t in T Find Smallest ? Meeting
Side-Constraint For t
21RCSP Proposed Algorithm
- Aircraft Routing Example
- c - Threat on Arcs
- s - Time To Traverse Arcs
- 10 Values for ? Evaluated
- Results Recorded For 2 Points And Target
22RCSP Proposed Algorithm
Intermediate Routing Option ? 0.44
Minimum Threat Routing ? 0.0
23RCSP Proposed Algorithm
Minimum Time Routing ? 1.0
Accumulated Threat vs Time To Target
24RCSP Proposed Algorithm
- Further Considerations
- Normalization of c and s
- Reoptimization of ASP(?)
- Number of Iterations (Values of ?)
- Usage As Starting Solution For RCSP
- Other Uses
25ODIMCF Current Algorithms
- Techniques For Generic Binary IP
- Branch-and-Price-and-Cut
- Designed Specifically For ODIMCF
- Incorporates
- Path-Based Formulation (ODIMCF2)
- LP Relaxations With Price-Directive Decomposition
- Branch-and-Bound
- Cutting Planes
26ODIMCF Current Algorithms
- Branch-and-Price-and-Cut (cont.)
- Algorithmic Steps
- Solve LP Relaxation At Each Node Using
- Column-Generation
- Pricing Done As SP
- Lifted-Cover Inequalities
- Branch By Forbidding a Set of Arcs For a
Commodity - Select Commodity k
- Find Vertex d At Which Flow Splits
- Create 2 Nodes in Tree Each Forbidding Half the
Arcs at d - Has Difficulty
- Many Commodities
- A/V ? 2
27ODIMCF Proposed Algorithm
- Heuristic Based On Market Prices
- Circumstances
- Large Sparse Networks
- Many Commodities
- Arcs Capable of Supporting Multiple Commodities
28ODIMCF Proposed Algorithm
- Arc Costs, cij f(rij, uij, cij, qk)?R
- Uses Non-Linear Price Curve, p(z, uij) ?R
- Based On
- Original Arc Cost, cij
- Upper Bound, uij
- Current Capacity Usage, rij
- Demand of Commodity, qk
29ODIMCF Proposed Algorithm
cij f(rij, uij, cij, qk) As an Area
p(z, uij)
Demand, qk
Current Usage, rij
Area Arc Cost, cij
Marginal Arc Cost
Upper Bound, uij
30ODIMCF Proposed Algorithm
Arc Cost For Increasing rij
31ODIMCF Proposed Algorithm
Total System Cost
Total Additional System Cost
Additional Cost To Other Commodities
Arc Cost To Commodity
Current Usage, rij
Current System Cost
32ODIMCF Proposed Algorithm
- Basic Algorithm
- Initial SP Solutions
- Update r
- Until Stopping Criteria Met
- Randomly Choose k
- Calculate New Arc Costs
- Solve SP
- Update r
- Selection Strategy
- Iterative
- Randomized
- Infeasible Inter-mediate Solutions
- Stopping Criteria
- Feasible
- Quality
- Iteration Limit
33ODIMCF Proposed Algorithm
4
3
2
- Considerations
- Form of p(z, uij)
- Commodity Differentiation
- Under-Capacitated Net
- Preferential Routing
- Selection Strategy
- Advanced Start
1
0
- Cooling Off of p(z, uij)
- Step 0 - SP
- Steps 1 Increasing Enforcement of u
34ODIMCF Proposed Algorithm
35ODIMCF Proposed Algorithm
36ODIMCF Proposed Algorithm
37ODIMCF Proposed Algorithm
CPLEX65 Used MIP To Find Integer Solution. All
Other Problems Solved As LP Relaxations With No
Attempt At Integer Solution.
38BMCF Proposed Algorithm
- Modification of Proposed Algorithm For ODIMCF
- Commodities Are Aggregated By Origin
- A is the Set of Aggregations
- Pure Network Sub-Problems Replace SPs of ODIMCF
39BMCF Proposed Algorithm
- Aggregations
- Demands ? 1
- Single Origin
- Multiple Destinations
- MCNF
- Original Commodities
- Demands of 1
- Single Origin Destination
- SP
40BMCF Proposed Algorithm
- Aggregation MCNFs Solved On Modified Network
- Each Original Arc Is Replaced With qa Parallel
Arcs - Parallel Arcs Have
- Convex Costs Derived From p(z, uij)
- Upper Bounds of 1
41BMCF Proposed Algorithm
Parallel Arc Costs
p(z, uij)
Demand, qa 3
Current Usage, rij
cij3
cij2
cij1
Upper Bound, uij
One Unit of Flow
42BMCF Proposed Algorithm
- Basic Algorithm
- Form Aggregates
- Solve Initial MCNFs
- Update r
- Until Stopping Criteria Met
- Randomly Choose a
- Create Parallel Arcs
- Calculate Arc Costs
- Solve MCNF
- Update r
- Considerations
- ODIMCF Considerations
- ODIMCF vs BMCF
- Aggregation Strategy
- Multiple Aggregations per Vertex
- Which Commodities To Group
43Expected Contributions
- Will Address Important Problems With Wide Range
of Applications - Efficient Algorithms Will Have a Significant
Impact in Several Disparate Fields
44Notation
- A - Matrix
- x - Vector
- 0 - Vector of All 0s
- 1 - Vector of All 1s
- ei - 0 With a 1 at ith Position
- xi - ith element of x
- x - Scalar
- A - Set
- A - Cardinality of A
- ? - Empty Set
- R - Set of Reals
- B - 0,1, Binary Set
- Rmxn - Set of mxn Real Matrices
- Bm - Set of Binary, m Dimensional Vectors
45Notation Networks
- A - Node-Arc Incidence Matrix
- x - Arc Flow Variables
- c - Arc Costs
- s - Arc Resource Constraint Values
- u - Arc Upper Bounds
- l - Arc Lower Bounds
- b - Demand Vector
- All Networks Are Directed
- xij Is the Flow Variable for ( i, j )
- E - Set of Arcs
- V - Set of Vertices
46Notation Problem Abbreviations
- MCNF - Minimum-Cost Network Flow
- SP - Shortest Path
- ASP - One-To-All Shortest-Path
- RCSP - Resource Constrained Shortest-Path
- MCF - Multi-commodity Flow
- ODIMCF - Origin Destination Integer
Multicommodity Network Flow - BMCF - Binary Multicommodity Network Flow