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Section 4.2 Network Flows
By Christina Touhey
Recall from last class
•
•
The flow out of a equals the flow into z.
Algorithm
1. Make vertex a: (0, ).
2. Scan the first vertex and check each incoming and
outgoing edge and label if they are unlabeled.
3. Choose another labeled vertex to scan and label.
4. Find an a-z chain K of slack edges by backtracking.
5. Increase the flow in the edges of K by ( z ) units.
b
10
12
d
8
Example: Find the maximal a-z
flow in the network.
5
L1 a b d z
a
L2 a c e z
z
4
10
L3 a b e z
18
12
c
(a ,3) b
12,9
e
d (b ,3)
10,5
8,0
( , )
b
5
d
3
8
5,5
Slack
a
a
z
z
4
4,4
10,10
18,14
c
12,10
e
5 L1 10 L 2 4 L3
2
c
e
P {a, b, d }
Max Flow=19
Theorem 3
• For any given a-z flow , a finite number of
applications of the augmenting flow
algorithm yields a maximum flow.
• If P is the set of vertices labeled during the
final application of the algorithm ( P , P )
then is a minimal a-z cut set.
Proof of Theorem 3
• If is the current flow and k is the
augmenting a-z unit flow chain, we must
show the new flow + m k is a legal flow.
• and k satisfy flow conditions:
(e) 0 if e In(a ) or e Out( z )
For x a or z ,
eIn(x )
and are integer valued.
(e)
eOut(x )
( e)
Proof of Theorem 3 (cont.)
• Where m and ( z ) is the amount of
additional flow that can be sent from a-z.
m ( z ) is the minimum slack, so m k
satisfies the flow condition.
Proof of Theorem 3 (cont.)
• Since m is a positive integer, each new flow
is increased.
• The capacities and the number of edges are
finite, so eventually z is not labeled.
• Let P be the set of labeled vertices when z is
not labeled.
• Clearly ( P, P ) is an a-z cut since a is labeled
and z is not.
Proof of Theorem 3 (cont.)
• There is no unsaturated edge from labeled vertex p
to unlabeled vertex q or else it would have been
previously labeled.
• Therefore there is no flow between q and p
because k ( P, P) is maximal.
The value of the final flow equals k ( P, P)
and is maximal.
( P, P) is a minimal a z cut.
Max Flow-Min Cut Theorem
• In a directed flow network, the value of a
maximal a-z flow is equal to the capacity of
a minimal a-z cut.
For Class to try
• Find a maximal flow from a to z in the
network. Give a minimal capacity a-z cut.
b
10
30
a
5
10
5
20
20 d
5
20
c
10
L1 a b e z
e
10
30
10
f 30
10
g
20
z
L2 a c g z
L3 a g f z
L4 a b d e f z
L5 a b d f z
10 L1 20 L 2 10 L3 5 L 4 5 L5
(a ,10)
(d ,5)
b
30,20
( , ) a
e
10,10
10,10 10,5
20,0
20,20
5,5
5,5
d (c ,10)5,0
20,0
c
(b ,10)
30,20
10,10
f 30,20
z
10,10 20,20
g
(c ,10)
10,10
Max Flow=50
P { f , z} 50