Clustering for Lifetime Enhancement in Wireless Sensor Networks
Abstract
:1. Introduction
2. Related Work
3. Advanced Clustering Approach
3.1. Parameters That Affect Clustering Efficiency
3.2. Parameters Considered in the LEACH Energy Model
3.3. Clustering Efficiency: Analysis Study
4. Simulation Results
4.1. First Scenario: The Base Station (BS) Is Located at the Center of the Area (50, 50)
4.2. Second Scenario: The Base Station (BS) Is Located at the Center of the Area (100, 100)
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Protocol | Cluster-Based | CH Selection Criteria | Routing Strategy | Key Contribution/Feature |
---|---|---|---|---|
LEACH [11] | Yes | Random selection | Single-hop to BS | Foundational protocol, random CH selection |
Improved LEACH [12] | Yes | Residual energy, density | Single/multi-hop | Balanced CH workload withdensity awareness |
EE-LEACH [13] | Yes | Residual energy, density, distance to BS (fuzzy logic) | Not specified | Avoids hotspot, fuzzy logic-based ranking |
Energy-aware LEACH [14] | Yes | Residual energy, position centrality | Not specified | Adaptive CH range based on density |
NM-LEACH [15] | Yes | Residual energy, distance to BS | Not specified | Even CH distribution, improved stability |
Adaptive low energy [16] | Yes | Centrality, residual energy | Not specified | Minimizes intra-cluster distance |
EACR-LEACH [17] | Yes | Residual energy, number of neighbors, CH load history | Not specified | Controls fairness in CH load |
RCBRP [18] | Yes | Residual energy, distance, energy cost | Clustered routing | Optimized path for energy balance |
Honey Badger-based [19] | Yes | Distance, residual energy, neighbors’ degree, centrality | Fuzzy swarm optimization | Hybrid metaheuristic CH selection |
FICZP [20] | Yes | Lifetime of neighbors, residual energy, member lifetime | Fuzzy system | Energy-aware fuzzy zone-based clustering |
Fuzzy-quantum annealing [21] | Yes | Residual energy, number of neighbors, distance, centrality | Quantum routing | Energy thresholding, hybrid IA |
Dragonfly–firefly hybrid [22] | Yes | Energy, delay, distance, security | Hybrid metaheuristic | Focus on secure and efficient CHs |
RBCHS [23] | Yes | Distance to BS, residual energy, number of neighbors | Static clusters + hybrid routing | Heterogeneous networks, zoned CH selection |
Our approach | Yes | Distance to BS, a controlled density | Static topology, adaptive and zone-based, optimal strategy changes with distance from BS | Mathematically validated, proved that clustering is not always optimal; |
Parameter | Value |
---|---|
Packet length (4000 bits). | |
Energy dissipated to run the transmitter or receiver circuitry (50 nJ/bit). | |
Transmitter amplifier, energy-free space model (10 pJ/bit/m2). | |
Transmitter amplifier, energy multipath model (0.0013 pJ/bit/m4). | |
Distance (m). | |
Approximately . | |
Number of packets. |
Topology | FDN | MDN | LDN |
---|---|---|---|
Individual | 1340 | 1912 | 2496 |
Cluster-2 | 1229 | 1361 | 1541 |
Cluster-3 | 816 | 1118 | 1137 |
Topology | FDN | MDN | LDN |
---|---|---|---|
Individual | 302 | 1056 | 2477 |
Cluster-2 | 477 | 1084 | 2477 |
Cluster-3 | 264 | 1121 | 2187 |
Topology | FDN | MDN | LDN |
---|---|---|---|
Individual | 330 | 1142 | 2495 |
Cluster-2 | 510 | 1113 | 2495 |
Cluster-3 | 628 | 1140 | 2495 |
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Khedhiri, K.; Ben Omrane, I.; Djabour, D.; Cherif, A. Clustering for Lifetime Enhancement in Wireless Sensor Networks. Telecom 2025, 6, 30. https://doi.org/10.3390/telecom6020030
Khedhiri K, Ben Omrane I, Djabour D, Cherif A. Clustering for Lifetime Enhancement in Wireless Sensor Networks. Telecom. 2025; 6(2):30. https://doi.org/10.3390/telecom6020030
Chicago/Turabian StyleKhedhiri, Kamel, Ines Ben Omrane, Djamal Djabour, and Adnen Cherif. 2025. "Clustering for Lifetime Enhancement in Wireless Sensor Networks" Telecom 6, no. 2: 30. https://doi.org/10.3390/telecom6020030
APA StyleKhedhiri, K., Ben Omrane, I., Djabour, D., & Cherif, A. (2025). Clustering for Lifetime Enhancement in Wireless Sensor Networks. Telecom, 6(2), 30. https://doi.org/10.3390/telecom6020030