DEDG: Cluster-Based Delay and Energy-Aware Data Gathering in 3D-UWSN with Optimal Movement of Multi-AUV
Abstract
:1. Introduction
- Energy saving in underwater sensors is challenging because the nodes are equipped with an amount of battery within which it can perform sensing and transmission;
- Delay in data transmission increases due to the involvement of multiple intermediate hops and waiting time. Transmitting the data through multiple sensors in a relay pattern, and also the sensor waiting time before the AUV’s arrival for data collection, causes high delays;
- Dynamic topology in the network due to the movement of sensors in relation to the ocean current changes over time.
1.1. Motivation
- The collected sensor information is not transmitted via multiple hops; it is directly sent to the AUV when it arrives near to the sensor. Therefore, the direct transmission of sensed data also reduces the energy consumption of the sensors and the transmission delays;
- Data gathering from CHs also reduces the overall energy consumption of the sensors and the gathering delay, since it is not required for all the sensors to forward their data to the AUV or to wait in order to deliver the data;
- Planning of multiple AUV paths appropriately minimizes the tour length, which reduces the delay in transmitting the data from sensors to sink;
- Allotment of sleep schedules for sensors enables the reduction of a considerable amount of sensing energy.
1.2. Contribution of the Paper
- Clustering and optimal CH selection with multi-objective spotted hyena optimization (MO-SHO), which formulates fitness using a sensor’s lifetime, degree and centrality. The elected CH takes responsibility for allotting sleep slots and redundancy eliminations on the sensor nodes by taking into consideration some parameters, such as sensor’s energy and hop counts, to make an efficient decision on whether the sensor status is to be executed while sleep, awake or idle, and the Hassanat distance metric is used for similarity data measurement for redundancy elimination;
- The data gathering AUVs predict their position dynamically by executing di-factor actor–critic path (DACP) prediction. The mid-point-oriented central position is determined to collect data from four CHs. The ability of the CH is identified by evaluating buffer, data collection delay, received signal strength indicator (RSSI) and data size in DACP prediction;
- A three-step (TS), inter-cluster routing method is executed only when the waiting time for the AUV is exceeded. The TS method firstly discovers the route, secondly, filters long routes and, lastly, validates the route. The fuzzy–LeNet method for route validation is used for estimating energy consumption, fairness, synthesis speed and efficiency;
- Emergency event data are transmitted immediately without any delay by means of selecting a forwarder with heavier weights estimated by distance, load and residual energy.
1.3. Outline of the Paper
2. Literature Review
2.1. Clustering and Data Forwarding
2.2. Data Gathering by AUV Path Planning
3. Problem Description
- In a UWSN, using a single AUV for data collection cannot collect data in a large-scale environment, which increases delay, and also it fails to deliver emergency data promptly. Pre-defined path planning of a single AUV causes a longer waiting time for the nodes before the AUV reaches a nearer position;
- In a UWSN, continuous sensing of the environment consumes more energy, and transmission in multiple hops towards the sink also consumes more energy across all the nodes in the network, which reduces network lifetime.
4. Proposed 3D-UWSN Design
4.1. Network Model
4.2. Clustering
Multi-Objective Spotted Hyena Optimization (MO-SHO) Algorithm
Algorithm 1 Pseudo Code: MO-SHO Algorithm |
Input: Number of Hyenas as Sensors Output: Best Hyena as CH 1. begin 2. initialize , /* */ 3. for do 4. initialize parameters , , , H /*start optimization*/ 5. estimate fitness for each /*using Equations (5)–(7)*/ 6. find best /*using multiple objective*/ 7. while do /* is the total iterations*/ for update position /*using Equation (4)*/ end for 8. update parameters , , , H 9. if ( goes beyond search space) Compute fitness for each Update best solution and End while 10. return best hyena /*selected best CH*/ 11. end /*terminate optimization*/ |
Algorithm 2 Pseudo Code: Member-Balanced Scheduling |
Input: total cluster members Output: Scheduled time slots 1. begin 2. initialize /*sensors in a cluster*/ 3. for each 3. find and /*energy and hop count*/ 4. list and for each 5.if /*comparison with threshold*/ { assign sleep mode else assign wakeup mode } end if 6. end |
4.3. Data Redundancy Elimination
4.4. Data Gathering
4.5. Emergency Event Transmission
5. Performance Evaluation
5.1. Simulation Environment
5.2. Comparative Analysis
- To develop clusters in the network reduces energy consumption, since the data is collected by a CH, and it delivers to the AUV;
- The assignment of sleep slots for sensor nodes enables the reduction of energy consumption in sensors due to the nil processing for certain time period;
- Appropriate path planning of AUV minimizes waiting time in CHs, and that reduces the delay in gathering.
5.2.1. Efficiency of Network Lifetime
- Clustering with optimal CH selection enhances the stability of the CH, and this minimizes frequent selection of the CH as well as cluster formation. Without the knowledge of neighboring nodes, the cluster cannot be constructed, which requires exchange of hello packets with the neighboring nodes, which consumes energy;
- Scheduling the sensor with sleep slots based on their current energy status is the major reason for keeping the sensor alive for multiple rounds;
- The route selected by the CH itself consumes energy, and, hence, a gateway is used for predicting a route that reduces energy consumption.
5.2.2. Efficiency of Data Gathering
5.3. DEDG 3D-UWSN Highlights
- The 3D-UWSN with two AUVs incorporated was designed with the aim of achieving delay-aware data gathering by optimal positioning of AUVs and by using inter-cluster routing in case of exceeded waiting time. To assist a large-scale network and faster data gathering, two AUVs are employed. Incorporation of sleep time for sensor nodes reduces energy consumption;
- The optimal selection of CH using MO-SHO ensures prolonged sustainment of CH, and the reduction of redundant data improves delivery time. Then, data gathering of the AUV from for CHs at optimal position reduces delay. Here, fuzzy–LeNet was used, which performs faster and results in an appropriate solution;
- In conditions with delayed arrival of the AUV, the gathered data are transmitted to the AUV via an inter-cluster route. This is performed in order to make free space in CHs to gather upcoming sensed information from CHs.
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Output | ||||
---|---|---|---|---|
0.5–1 | 0.5–1 | 0.5–1 | 0.5–1 | Medium |
0.5–1 | 0.5–1 | 0.5–1 | 0–0.5 | Low |
0.5–1 | 0.5–1 | 0–0.5 | 0.5–1 | High |
0.5–1 | 0.5–1 | 0–0.5 | 0–0.5 | Medium |
0.5–1 | 0–0.5 | 0.5–1 | 0.5–1 | Low |
0.5–1 | 0–0.5 | 0.5–1 | 0–0.5 | Very low |
0.5–1 | 0–0.5 | 0–0.5 | 0.5–1 | Low |
0.5–1 | 0–0.5 | 0–0.5 | 0–0.5 | Very low |
0–0.5 | 0.5–1 | 0.5–1 | 0.5–1 | Very low |
0–0.5 | 0.5–1 | 0.5–1 | 0–0.5 | Very low |
0–0.5 | 0.5–1 | 0–0.5 | 0.5–1 | Medium |
0–0.5 | 0.5–1 | 0–0.5 | 0–0.5 | Very low |
0–0.5 | 0–0.5 | 0.5–1 | 0.5–1 | Low |
0–0.5 | 0–0.5 | 0.5–1 | 0–0.5 | Low |
0–0.5 | 0–0.5 | 0–0.5 | 0.5–1 | Low |
0–0.5 | 0–0.5 | 0–0.5 | 0–0.5 | Very low |
0–0.5 indicates low, and 0.5–1 indicates high |
Parameter | Specification | |
---|---|---|
3D-UWSN entities | Simulation area | 1000 × 1000 × 1000 |
Number of underwater sensors | 100 | |
Number of sensors in level I | 50 | |
Number of sensors in level II | 50 | |
Number of AUVs | 2 | |
Number of gateways | 1 | |
Number of surface sinks | 1 | |
Number of clusters in each level | 5–7 | |
Simulation time | 300 s | |
Modules used | AquaSim, Antenna, Config Store, CSMA, LTE, AODV, Mesh, Mobility, DSR, Flow Monitor and Internet | |
Underwater sensor parameters | Packet size | 512 kb |
Total number of packets | 200 | |
Packet time interval | 100 ms | |
Data rate | 10–20 Mbps | |
Initial energy per sensor | 100 J | |
Transmission range | 400 m |
Work | Process and # of AUVs | Demerits |
---|---|---|
[43] | AEC mechanism 1. AUV |
|
[44] | ALP 1. AUV |
|
[45] | Bipartite K-means 1. AUV |
|
[46] | ELMPP 2. AUVs |
|
Work | Clustering | Scheduling | AUV Path Prediction | Emergency Event Transmission |
---|---|---|---|---|
[43] | ✓ | ✓ | ✓ | ✕ |
[44] | ✕ | ✕ | ✓ | ✕ |
[45] | ✓ | ✕ | ✓ | ✕ |
[46] | ✕ | ✕ | ✓ | ✕ |
DEDG 3D-UWSN | ✓ | ✓ | ✓ | ✓ |
✓—discussed, ✕—not discussed |
Simulation Time | # of Dead Sensor Nodes | ||||
---|---|---|---|---|---|
AEC | ALP | Bipartite K-Means | ELMPP | DEDG 3D-UWSN | |
100 | 13 | 24 | 15 | 18 | 3 |
200 | 19 | 32 | 19 | 22 | 5 |
300 | 25 | 40 | 23 | 26 | 9 |
# of Sensors | Tour Length (m) | ||||
---|---|---|---|---|---|
AEC | ALP | Bipartite K-Means | ELMPP | DEDG 3D-UWSN | |
20 | 350 | 450 | 390 | 420 | 320 |
40 | 400 | 490 | 420 | 450 | 350 |
60 | 420 | 530 | 470 | 490 | 370 |
80 | 470 | 570 | 520 | 540 | 420 |
100 | 500 | 630 | 580 | 600 | 450 |
Process | Resulting Improvement |
---|---|
Clustering | Reduces energy consumption in data gathering from the CHs |
Optimal CH selection | Reduces energy consumption by mitigating unnecessary selection of CH which needs to exchange node information |
Sleep–wakeup scheduling | Saves energy of the sensor, and also all the data are sensed |
Data gathering | Reduces energy consumption since the AUV is positioned one hop from the CH Reduced collection delay by collecting data from four CHs at a time |
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Alkanhel, R.; Chaaf, A.; Samee, N.A.; Alohali, M.A.; Muthanna, M.S.A.; Poluektov, D.; Muthanna, A. DEDG: Cluster-Based Delay and Energy-Aware Data Gathering in 3D-UWSN with Optimal Movement of Multi-AUV. Drones 2022, 6, 283. https://doi.org/10.3390/drones6100283
Alkanhel R, Chaaf A, Samee NA, Alohali MA, Muthanna MSA, Poluektov D, Muthanna A. DEDG: Cluster-Based Delay and Energy-Aware Data Gathering in 3D-UWSN with Optimal Movement of Multi-AUV. Drones. 2022; 6(10):283. https://doi.org/10.3390/drones6100283
Chicago/Turabian StyleAlkanhel, Reem, Amir Chaaf, Nagwan Abdel Samee, Manal Abdullah Alohali, Mohammed Saleh Ali Muthanna, Dmitry Poluektov, and Ammar Muthanna. 2022. "DEDG: Cluster-Based Delay and Energy-Aware Data Gathering in 3D-UWSN with Optimal Movement of Multi-AUV" Drones 6, no. 10: 283. https://doi.org/10.3390/drones6100283
APA StyleAlkanhel, R., Chaaf, A., Samee, N. A., Alohali, M. A., Muthanna, M. S. A., Poluektov, D., & Muthanna, A. (2022). DEDG: Cluster-Based Delay and Energy-Aware Data Gathering in 3D-UWSN with Optimal Movement of Multi-AUV. Drones, 6(10), 283. https://doi.org/10.3390/drones6100283