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Assumptions Each node knows its geographic location. Nodes are loosely time synchronized. The deployment of sensor nodes is dense.
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COMMUNICATING VIA FIREFLIES: GEOGRAPHIC
ROUTING ON DUTY-CYCLED SENSORS
S. NATH, P. B. GIBBONS IPSN 2007
Model• A sensor network.• Time is divided into discrete epochs.• At each epoch, each node decides to
sleep or wake up according to some decentralized sleep scheduling protocol.
• Only awake nodes can sense, process and communicate.
• A node can communicate only with its awake neighbors.
Assumptions• Each node knows its geographic
location.• Nodes are loosely time synchronized.• The deployment of sensor nodes is
dense.
Problem• Designing a sleep
scheduling algorithm for sensor nodes which ensures good routing performance.
• Analyzing the expected increase in routing latency as the number of awake nodes decreases.
Motivation• Why Sleep Scheduling ?
– To reduce energy consumption.– And thus increase network lifetime.
• An inefficient sleep scheduling algorithm can result in disconnected networks and increase routing load 10 times.
Related Work• Routing
– Greedy– For obstacles:
• Face • Hull
• Opportunistic Routing– For link failures.– For duty-cycled networks.
Sleep Scheduling
Point/Spatial Coverage Node/Network Coverage
Sleep Scheduling
Point/Spatial Coverage Node/Network Coverage
Geographic Routing• All nodes awake.
Geographic Routing• All nodes awake.
Geographic Routing• All nodes awake.
Geographic Routing• All nodes awake.
Geographic Routing• When some nodes are sleeping
Geographic Routing• When some nodes are sleeping
Geographic Routing• When some nodes are sleeping
Geographic Routing• When some nodes are sleeping
Forward message to best awake neighbor even if the message is going in wrong direction.
Geographic Routing• When some nodes are sleeping
Forward message to best awake neighbor even if the message is going in wrong direction.
Connected K-Neighborhood (CKN)
• The aim of the sleep scheduling algorithm is to ensure that:– Each node (sleeping or awake) has at least k
(given) awake neighbors at all epochs.– All the awake neighbors form a connected
network.– The number of awake nodes in each epoch
is minimized.– In each epoch, a different set of nodes are
awake.
Connected K-Neighborhood (CKN)
• Formulated the problem as an optimization problem
• Proved that it is NP-complete.• Gave an approximate algorithm that is
within logarithmic factor of optimal.• The algorithm is distributed with low
communication, computation and memory costs.
Algorithm
Algorithm
These ranks are assigned so that neighbors can coordinate among themselves to decide which nodes will go to sleep.
Algorithm
If the degree of node is <k , the node has to remain awake all the time.
Algorithm
A node decides to sleep if its neighbors with lesser rank satisfy the two conditions.
Example for k=2• 6 nodes , k=2
Example for k=2• Ranks are generated by a random
generator.
1
23
45
6
Example for k=2
1
23
45
6C = {1,5}
Example for k=2
1
23
45
6C = {1,5}
C = {}
C = {1} C = {1,2}
C = {1,3}
C = {1,4}
1
23
45
6C = {1,5}
C = {}
C = {1} C = {1,2}
C = {1,3}
C = {1,4}
Example for k=2
1
23
45
6C = {1,5}
C = {}
C = {1} C = {1,2}
C = {1,3}
C = {1,4}
Example for k=2
1
23
45
6C = {1,5}
C = {}
C = {1} C = {1,2}
C = {1,3}
C = {1,4}
• Nodes 3,4 and 5 cannot sleep because Condition 2 on C is not satisfied.
Example for k=2
Another Example for k=2• Same graph, but with
different ranks.
6
24
35
1
Another Example for k=2
6
24
35
1C = {}
C = {1,2,3,4,5}
C = {} C = {2,3}
C = {}
C = {1,3}
Another Example for k=2
6
24
35
1C = {}
C = {1,2,3,4,5}
C = {} C = {2,3}
C = {}
C = {1,3}
Another Example for k=2
6
24
35
1C = {}
C = {1,2,3,4,5}
C = {} C = {2,3}
C = {}
C = {1,3}
Another Example for k=2
6
24
35
1C = {}
C = {1,2,3,4,5}
C = {} C = {2,3}
C = {}
C = {1,3}
Nodes 4 and 5 cannot sleep because Condition 1 on C is not satisfied.
Theoretical Analysis• Only the greedy forwarding part is
analyzed.• A lower bound on OPT and upper bound
on CKN is used to prove that :– |CKN| <= O(ln n) |OPT|
• They show that the probability of greedy forwarding making negative progress decreases exponentially with the increase in number of neighbors.