TY - JOUR
T1 - Location Information-Aided Task-Oriented Self-Organization of Ad-Hoc Sensor Systems
AU - Premaratne, Kamal
AU - Zhang, Jinsong
AU - Doǧruel, Mural
PY - 2004/2
Y1 - 2004/2
N2 - A novel task-oriented self-organization algorithm that accounts for mostly location-dependent tasks and heterogeneous sensors inherent in dense ad-hoc sensor systems is proposed. It forms a sensor group for an announced task by sequentially selecting the best matched sensors using a leader election algorithm and a residual task calculation algorithm. To improve the associated communication overhead, the sensor node location information is used in task broadcasting, thus confining the algorithm implementation to a dynamically maintained contributor group which comprises of those sensors which may contribute to the task. Sensor localization is based on a refinement of an algorithm in [1] which utilizes only the neighborhood information of each sensor node corresponding to its each preset radio transmission power level. The proposed self-organization algorithm and how various system parameters affect its performance are examined via extensive simulations. In a densely deployed sensor system, when the refined localization scheme is demonstrated to achieve very good localization, the proposed self-organization algorithm consistently yields a sensor group that covers the announced task.
AB - A novel task-oriented self-organization algorithm that accounts for mostly location-dependent tasks and heterogeneous sensors inherent in dense ad-hoc sensor systems is proposed. It forms a sensor group for an announced task by sequentially selecting the best matched sensors using a leader election algorithm and a residual task calculation algorithm. To improve the associated communication overhead, the sensor node location information is used in task broadcasting, thus confining the algorithm implementation to a dynamically maintained contributor group which comprises of those sensors which may contribute to the task. Sensor localization is based on a refinement of an algorithm in [1] which utilizes only the neighborhood information of each sensor node corresponding to its each preset radio transmission power level. The proposed self-organization algorithm and how various system parameters affect its performance are examined via extensive simulations. In a densely deployed sensor system, when the refined localization scheme is demonstrated to achieve very good localization, the proposed self-organization algorithm consistently yields a sensor group that covers the announced task.
KW - Ad-hoc sensor systems
KW - Localization
KW - Self-organization
KW - Sensor selection
UR - https://www.scopus.com/pages/publications/2342625309
U2 - 10.1109/JSEN.2003.822213
DO - 10.1109/JSEN.2003.822213
M3 - Article
AN - SCOPUS:2342625309
SN - 1530-437X
VL - 4
SP - 85
EP - 95
JO - IEEE Sensors Journal
JF - IEEE Sensors Journal
IS - 1
ER -