Wildfire Monitoring Based on Energy Efficient Clustering Approach for FANETS
Abstract
:1. Introduction
- In this paper, we develop a strategy to cluster WSNs in a way that is both energy-efficient and sensitive to the characteristics of emergencies.
- We try to Improve the CH excerption method by devising a new function that takes energy efficiency, cluster construction time, trust value and other parameters.
- Surpassing existing systems in terms of their energy consumption, the number of live nodes, network development time, and the number of sink sites in catastrophic scenarios, among other metrics.
2. Literature Review
3. Proposed Methodology
3.1. Metrics Used by Our Proposed Algorithm
3.1.1. Residual Energy of the Node
3.1.2. Trust Level Value
3.1.3. Degree Difference
3.1.4. Total Energy Consumed
3.1.5. Distance between the Base Station and Each Sensor
3.1.6. Mobility of a Node
3.2. Our Proposed Algorithm
- Elections for cluster heads take place in a parodic nature.
- Ideally, only M nodes may be supported by each cluster head. The maximum node degree is M.
- It is more stable as a cluster head if the node’s degree is greater. Degree difference DD as |di-M|, where di is the practical degree of node i and M is the maximum degree. The better node I is as a cluster head, the smaller the i.
- Trust level value: value assigned to an anode to anticipate its behavior.
- Mobility: In choosing who will be the cluster head, mobility is a key consideration.
- If two nodes are within a particular transmission range of one other, it requires less power to communicate with each other, i.e., the initial energy can be efficiently used within a certain transmission range. Due to the additional obligations that cluster heads have to perform for their members, they consume more battery power than an ordinary node would do.
- It is also vital to note that the distance between the base station and each sensor node is a key factor in the cluster head section process.
3.3. Network Model
- Sensor nodes are densely distributed and homogeneous in their distribution.
- Sensor nodes are mostly similar in terms of their sensing, processing, and communication capabilities.
- Each sensor node has a unique ID.
- The base station (BS) is stationary and situated a long distance away from the sensors.
- Each node can communicate with the BS on a one-to-one basis
- All nodes are energy restricted and execute tasks that are comparable to one another.
Algorithm 1. Our proposed clustering approach EE-SS |
Input:A set of sensor nodes, each with the Residual energy RES, degree difference Di, mobility speed Mi, its individual residual energy, total energy as Eri, Distance between Base station to each sensor node Dist, and Ti as the trust value for a node are the five coefficients for the weighted function (fitness function). |
Step 1: Find and compute Residual energy, Trust value, degree difference, total energy consumption and the distance between the nodes |
Step 2: Computer the mobility speed of every node |
Step 3: Calculate the combined weight with the help of Equation(7) by adding weight from W1 to W5 W1 for trust value = 0.5, w2 for residual energy = 0.3, w3 for degree difference = 0.1, w4 total energy consumption = 0.2, w5 coefficient for distance between SNs and BS = 0.4 |
Step 4: The node with the lowest Wi should be chosen to serve as the cluster head node |
Step 5: Consider the nodes that are within the transmission range to be member nodes of the cluster for investigation. |
Step 6: First cluster formation takes place as seen in Figure 4. |
Step 7: Remove the cluster head and its neighbor from the original set of sensor nodes after cluster formulation. |
Step 8 Repeat the process Step 1 to Step 7 util all nodes are assigned to a cluster |
Sep 9: if the left-over energy of CH is less the 25 % of its total energy, the CH selection process is again called. |
Step 11: Before sending data to base state an compression techniques is being used by CH known as SPIHT. |
Step 10: for sending data to the destination Semi Random Circular Movement model is being implemented for better getting probability of success. |
Step 11: On the Base Station a basic XOR operation is operated to remove the redundant data received by different CHs |
4. Results and Experimentation
4.1. Clusters Building Time
4.2. Cluster Lifetime
4.3. Alive Node Analysis
4.4. Overall Residual Energy
4.5. Probability of Delivery Success
5. Discussion
6. Conclusions
7. Future Scope
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Protocol | Clustering Type | Energy Efficiency | Clustering Stability | No of CH’s | Cluster STABILITY | Network Type | No. of Nodes in Cluster |
---|---|---|---|---|---|---|---|
LEACH | Random | Low | Low | Indecisive | Low | Homogenous | Changeable |
LEACH-C | Centralized | Medium | Low | Decisive | Medium | Homogenous | Changeable |
TEEN | Probability Centralized | Medium | Low | Indecisive | Low | Homogenous | Changeable |
PSO-HSA | PSO And HSA Centralized | High | Low | Indecisive | High | Homogenous | Changeable |
PSO-SD | Pso Centralized | Moderate | High | Indecisive | High | Homogenous | Changeable |
HSA-N | HSA-Based Centralized | Medium | High | Indecisive | Low | Homogenous | Changeable |
TPSO-CR | PSO-Based Centralized | Moderate | Low | Decisive | High | Homogenous | Changeable |
iCSHS | Cuckoo-Based Distributed | Moderate | High | Indecisive | Low | Homogenous | Changeable |
LEACH-B | Distributed | High | Low | Decisive | Medium | Homogenous | Changeable |
LEACH-ME | Distributed | High | High | Indeterminate | Medium | Homogenous | Changeable |
Protocol | Converge | Routing | Clustering Category | Mobility | Scalability | Complexity |
---|---|---|---|---|---|---|
LEACH | No | Single Hop | Residual Energy | Static | Limited | Low |
LEACH-C | No | Single Hop | Centralization | Static | Good | High |
TEEN | No | Single Hop | Centralization | Static | Very Good | High |
PSO-HSA | Moderate Balanced | Single Hop | Centralization | Static | Very Good | High |
PSO-SD | Moderate | Single Hop | Centralization | Static | Good | Medium |
HSA-N | Medium | Single Hop | Centralization | Static | Good | High |
TPSO-CR | Moderate Balanced | Single Hop | Centralization | Mobile | Good | High |
iCSHS | Moderate Balanced | Multi-Hop | Centralization | Static | Average | High |
LEACH-B | No | Single Hop | Residual Energy | Static | Limited | High |
LEACH-ME | Medium | Single Hop | Mobility | Mobile | Good | High |
Parameter | Default Value |
---|---|
Monitoring field | 100 × 100 |
Count of nodes | 100 |
Minimal distance among nodes | 2 m |
Simulation runs | 10 |
Simulation time | 120 s |
Base station position | (50, 50) |
Initial energy | 0.5 J |
Transmission range | 40 m |
Probability of turning a node as CH | 0.1 |
Energy for transmitting of each bit energy consumed for receiving | 50 × 0.000000001 |
Tx/Rx electronics constant [2] | 50 nJ/bit |
Amplifier constant [1,2] | 10 pJ/bit/m2 |
CH energy threshold [2] | 10–4 J |
Size of packet [2] | 30 bytes |
Packet rate [2] | 1 packet/s |
Sensing range [2] | 10 m |
Cluster radius [2] | 25 m |
Number of Rounds | LEACH | LEACH-C | PSO-HSA | SEED | EE-SS |
---|---|---|---|---|---|
First node dead | 457 | 515 | 1267 | 1542 | 2456 |
Half node dead | 549 | 567 | 2555 | 3601 | 4498 |
Last node dead | 634 | 754 | 3145 | 4242 | 5164 |
Average | 548 | 612 | 2322 | 3128 | 4039.3 |
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Bharany, S.; Sharma, S.; Frnda, J.; Shuaib, M.; Khalid, M.I.; Hussain, S.; Iqbal, J.; Ullah, S.S. Wildfire Monitoring Based on Energy Efficient Clustering Approach for FANETS. Drones 2022, 6, 193. https://doi.org/10.3390/drones6080193
Bharany S, Sharma S, Frnda J, Shuaib M, Khalid MI, Hussain S, Iqbal J, Ullah SS. Wildfire Monitoring Based on Energy Efficient Clustering Approach for FANETS. Drones. 2022; 6(8):193. https://doi.org/10.3390/drones6080193
Chicago/Turabian StyleBharany, Salil, Sandeep Sharma, Jaroslav Frnda, Mohammed Shuaib, Muhammad Irfan Khalid, Saddam Hussain, Jawaid Iqbal, and Syed Sajid Ullah. 2022. "Wildfire Monitoring Based on Energy Efficient Clustering Approach for FANETS" Drones 6, no. 8: 193. https://doi.org/10.3390/drones6080193
APA StyleBharany, S., Sharma, S., Frnda, J., Shuaib, M., Khalid, M. I., Hussain, S., Iqbal, J., & Ullah, S. S. (2022). Wildfire Monitoring Based on Energy Efficient Clustering Approach for FANETS. Drones, 6(8), 193. https://doi.org/10.3390/drones6080193