Energy-Efficient Handover Algorithm for Sustainable Mobile Networks: Balancing Connectivity and Power Consumption
Abstract
:1. Introduction
- This study introduces a novel approach by incorporating energy-related metrics, such as battery level and energy consumption rate, into the handover decision-making process, addressing a critical gap in existing mechanisms.
- The proposed framework significantly improves energy efficiency in mobile networks, particularly in high-mobility scenarios, without compromising connectivity or network performance.
- By focusing on energy conservation, this research paves the way for more sustainable mobile network management, extending the operational lifespan of mobile devices and reducing the overall energy footprint.
- The study provides a practical algorithm that can be integrated into existing mobile network architectures, offering a scalable solution for future developments in energy-efficient handover strategies.
2. Related Work
3. Problem Overview
4. Proposed Mechanism
4.1. Energy-Efficient Handover Algorithm
Algorithm 1: Energy-Efficient Handover |
Input: RSSI_current, SINR_current, BatteryLevel, Threshold_RSSI, Threshold_SINR, QoS_Requirements. Output: Handover Decision BEGIN IF RSSI_current < Threshold_RSSI or BatteryLevel < CriticalLevel or EnergyEfficiencyRequired THEN TriggerHandover(); //Initial Trigger Detection NeighboringCells = ScanForNeighboringCells(); FOREACH Cell in NeighboringCells DO RSSI_Cell = MeasureRSSI(Cell); SINR_Cell = MeasureSINR(Cell); EnergyConsumption_Cell = EstimateEnergyConsumption(Cell); MobilityPattern = AnalyzeMobilityPattern(); QoS_Cell = EvaluateQoS(Cell); //Network Scanning and Measurement CompositeScore_Cell = CalculateCompositeScore(RSSI_Cell, SINR_Cell, EnergyConsumption_Cell, MobilityPattern, QoS_Cell) IF CompositeScore_Cell > HandoverThreshold THEN AddToViableTargets(Cell, CompositeScore_Cell); // Context-Aware Analysis IF ViableTargets is not empty THEN TargetCell = SelectCellWithHighestCompositeScore; // Target Cell Selection PrepareForHandover(TargetCell); ExecuteHandover(TargetCell); // Handover Preparation and Execution MonitorPerformance(TargetCell); CollectFeedback(TargetCell); UpdateFutureHandoverDecisions(TargetCell); // Post-Handover Optimization ELSE MaintainCurrentConnection() END |
4.2. Handover Decision Process
- Step 1: Context Data Aggregation
- Signal Quality Metrics: Continuously collect Received Signal Strength Indicator (RSSI) and Signal-to-Interference-plus-Noise Ratio (SINR) from neighboring cells.
- Battery Status: Monitor the current battery level of the User Equipment (UE) and its consumption rate .
- Mobility Patterns: Analyze historical and predictive mobility data to anticipate the movement of the UE.
- QoS Requirements: Gather QoS requirements for active applications, including latency, throughput, and reliability parameters .
- Step 2: Parameter Weighting and Scoring
- Weight Assignment: Assign weights to each parameter based on their importance for the specific context, as shown below:: Weight for RSSI: Weight for SINR: Weight for Battery Level: Weight for Energy Consumption: Weight for Mobility Pattern: Weight for QoS Requirements
- Composite Score Calculation: Calculate a composite score for each neighboring cell using the weighted sum of the parameters.
- Step 3: Decision Thresholding
- Threshold Determination: Define a handover threshold that a cell’s composite score must meet or exceed to be considered a viable handover target.
- Threshold Comparison: Compare the composite scores of all candidate cells against the threshold. Cells meeting or exceeding are shortlisted for potential handover.
- Step 4: Handover Execution
- Target Cell Selection: From the shortlisted cells, select the target cell with the highest composite score.
- Energy-Aware Handover: Execute the handover process, ensuring minimal energy consumption and maintaining the required QoS. The UE seamlessly transitions to the target cell with optimal energy efficiency.
- Step 5: Post-Handover Evaluation
- Performance Monitoring: After the handover, continuously monitor the performance to ensure that the QoS is maintained and the energy savings are realized.
- Feedback Integration: Use the feedback from post-handover performance to refine and adjust the handover decision parameters and thresholds. This continuous optimization loop helps in improving future handover decisions.
- Step 6: Adaptive Learning
- Learning Algorithms: Implement machine learning algorithms to adaptively learn from historical handover decisions and outcomes. This enables the system to improve the accuracy and efficiency of future handover processes.
- Context Updates: Periodically update the context information (e.g., mobility patterns, energy consumption trends) to keep the decision-making process aligned with the current network and user dynamics.
5. System Architecture
5.1. Network Model
- Signal Quality: The RSSI and SINR are continuously monitored to assess the signal quality from neighboring cells.
- Battery Level: The current battery status of the UE is factored into the decision-making process to avoid energy-draining handovers.
- Energy Consumption Rate: The algorithm estimates the energy consumption associated with potential handover targets, considering factors like transmission power and expected duration of connection.
- Mobility Patterns: Historical mobility data and predictive analytics are used to anticipate the UE’s movement, enabling proactive handover decisions.
5.2. Notations
6. Performance Analysis
6.1. Performance Measures
6.2. Result Analysis
6.3. Computational Mathematical Investigation
- Energy Consumption Calculation:
- 2.
- Total Energy Consumption ():
- 3.
- Normalized Energy Consumption per User:
6.4. Limitations of the Study
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Study | Approach | Performance Metrics | Key Advantages | Key Limitations | Remarks |
---|---|---|---|---|---|
Arshad et al. [28] | Velocity-aware handover control | User velocity, network performance | Reduces excess handovers | Does not address energy consumption | Focus on mobility aspects |
Arshad et al. [29] | Topology-aware handoff | User location, cell structure | Reduces excess handovers | Limited by network topology | Enhances handover by considering cell structure |
Stamou et al. [30] | Adaptive modeling with context info. | Contextual data | Facilitates accurate quality evaluation | May introduce delays | Integrates context for improved handover quality |
Guidolin et al. [31] | Context-aware optimized handover | User movement, power, traffic load | Optimizes handover using context info | Difficult to predict user trajectory and surroundings | Comprehensive context-aware model |
Vivas et al. [34] | Semantic knowledge-aware handover | Multiple contextual factors | Proactive and contextual handovers | Complexity in evaluation of factors | Considers a wide range of contextual factors |
Honarvar et al. [35] | Network- and user-centric handover choice | User contextual information | Ensures better user experience | Fails to balance network loads | Adapts handover choices based on user context |
Saad et al. [36] | Mobility load balancing in 5G networks | Load balancing, speed scenarios | Improves overall handover performance | May not focus on energy efficiency | Examines load balancing under various speed scenarios |
Shweta et al. [37] | Energy-efficient wireless handover | Wrong decision probability | Reduces energy consumption | Limited to identifying wrong decisions | Focuses on energy-efficient architecture |
Abdulqadder et al. [38] | Context-aware handover with network slicing | Security, resource utilization, service quality | Addresses security and resource issues | Lacks comprehensive background on resources and security | Enhances handover by considering multiple network aspects |
Abdullah et al. [10] | Improved handover with multiple indicators | Decision indicators | Reduces extraneous handovers | Focuses on highly integrated networks | Improves handover decisions with various indicators |
Emam et al. [39] | Adaptive context-aware handover for HetNet | Communication losses, handoff control messages | Decreases communication losses | Complexity in implementation | Adaptive approach to reduce communication losses |
Santi et al. [40] | Location-centric vertical handover | Transmission rate, energy consumption | Lowers energy consumption | Ineffective for heterogeneous networks | Suitable for specific network types (e.g., Wi-Fi) |
Patil et al. [41] | IF-ELSE vertical handover with fuzzy logic | Data rates | Enhances QoS for mobile nodes | Does not include additional contextual data | Uses fuzzy logic to improve handover decisions |
Liu et al. [45] | Two-stage distributed channel allocation | Bands and channel availability | Optimizes network performance | Focuses on channel allocation | Enhances resource utilization and reduces interference |
Parameter | Value |
---|---|
Network Topology | Macro, micro, pico, and femto cells |
Number of Macro Cells | 3 |
Number of Micro Cells | 10 |
Number of Pico Cells | 20 |
Number of Femto Cells | 30 |
Coverage Radius (Macro Cell) | 1000 m |
Coverage Radius (Micro Cell) | 300 m |
Coverage Radius (Pico Cell) | 100 m |
Coverage Radius (Femto Cell) | 30 m |
Number of UEs | 200 |
Mobility Model | Random waypoint |
UE Speed | 1 to 5 m/s |
Initial Battery Level | 50–70% |
RSSI Threshold | −85 dBm |
SINR Threshold | 12 dB |
Composite Score Threshold | 0.75 |
Transmission Power (Ptx) | Macro: 20 W, micro: 5 W, pico: 1 W, femto: 0.1 W |
Energy Consumption Rates | Based on empirical data for each cell type |
Bandwidth Requirement | 1 Mbps per UE |
Latency Requirement | Max 100 ms |
Simulation Duration | 4–6 h |
Simulation Tool | Python with SimPy |
Visualization Libraries | NetworkX, Matplotlib |
Notations | Definition |
---|---|
Received Signal Strength Indicator | |
Signal-to-Interference-plus-Noise Ratio | |
Battery Level of User Equipment | |
Energy Consumption Rate | |
Handover Target | |
Transmission Power | |
Distance to Cell | |
Mobility Pattern of User Equipment | |
Quality of Service | |
Weight for RSSI | |
Weight for SINR | |
Weight for Battery Level | |
Weight for Energy Consumption | |
Weight for Mobility Pattern | |
Weight for QoS | |
Handover Threshold | |
Composite Score | |
Computational Overhead | |
Handover Rate |
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Abdullah, R.M.; Al-Surmi, I.; Qaid, G.R.S.; Alwan, A.A. Energy-Efficient Handover Algorithm for Sustainable Mobile Networks: Balancing Connectivity and Power Consumption. J. Sens. Actuator Netw. 2024, 13, 51. https://doi.org/10.3390/jsan13050051
Abdullah RM, Al-Surmi I, Qaid GRS, Alwan AA. Energy-Efficient Handover Algorithm for Sustainable Mobile Networks: Balancing Connectivity and Power Consumption. Journal of Sensor and Actuator Networks. 2024; 13(5):51. https://doi.org/10.3390/jsan13050051
Chicago/Turabian StyleAbdullah, Radhwan M., Ibrahim Al-Surmi, Gamil R. S. Qaid, and Ali A. Alwan. 2024. "Energy-Efficient Handover Algorithm for Sustainable Mobile Networks: Balancing Connectivity and Power Consumption" Journal of Sensor and Actuator Networks 13, no. 5: 51. https://doi.org/10.3390/jsan13050051
APA StyleAbdullah, R. M., Al-Surmi, I., Qaid, G. R. S., & Alwan, A. A. (2024). Energy-Efficient Handover Algorithm for Sustainable Mobile Networks: Balancing Connectivity and Power Consumption. Journal of Sensor and Actuator Networks, 13(5), 51. https://doi.org/10.3390/jsan13050051