Dual Energy Management and an Energy-Saving Model for the Internet of Things Using Solar Energy Harvesting
Abstract
1. Introduction
- The proposed work introduces a dual energy management model that combines energy-harvesting techniques with a novel clustering routing approach. This approach involves grouping IoT nodes into clusters, where each cluster is managed by a cluster head (CH). By integrating this clustering and predefined routing technique with energy harvesting, the network can efficiently manage energy resources while harvesting environmental energy, such as solar or kinetic energy, to power network operations. This combination optimizes energy utilization and extends the network’s operational lifespan.
- The proposed idea focuses on energy-efficient clustering in IoT networks. The proposed work integrates energy-harvesting methods into the clustering process to optimize energy utilization and prolong the network lifetime.
- By integrating energy harvesting with clustering and routing approaches, the proposed work aims to improve the network’s overall efficiency. Energy harvesting provides an additional energy source, reducing the reliance on battery power and enhancing the network’s resilience and sustainability.
- Energy harvesting techniques can help replenish the energy resources of the network, reducing the frequency of battery replacements or recharging. This extended network lifetime can be a significant advantage, particularly in remote or inaccessible areas where frequent maintenance is challenging.
- The proposed work holds potential for real-world implementation, as energy-harvesting techniques are increasingly being explored and utilized in IoT deployments. By integrating these techniques with existing research methods, the proposed work can enhance the way practical and energy-efficient IoT networks are developed.
2. Literature Study
3. Background and Analysis of Related Work
4. Mathematical Model
4.1. Network Parameters
- N is the number of nodes in the network.
- is the energy level of node i (in Joule).
- is the optimal energy level (in Joule) by optimal data slot prediction and sleep mode adjustment of node i.
- is the overall energy saving of node i.
- is the power consumed by node (in Watt) i for data transmission.
- is the solar energy harvesting rate of node i (in Joule).
- T is the time duration for data transmission.
- is the cluster assignment of node i in the setup phase.
- M is the number of clusters formed in the setup phase.
- is the number of optimal clusters formed in the setup phase.
- is the data traffic generated by node i in the steady state.
- is the time slot allotted to sensor node i in the steady state.
- is the time slot allotted to cluster head node i in the steady state.
- is the sleep time duration (in second) of node i in the steady state.
- is the predicted data traffic rate of node i.
- is the energy conversion efficiency of the energy-harvesting system (J/s).
- is the energy consumption coefficient for data transmission in Joule/bit.
- p is the traffic generation probability for each node.
4.2. Optimal Clustering
4.3. Energy-Efficient Optimal Mapping TDMA (EEOM-TDMA) Approach in the Steady State
4.3.1. Cluster Head Device
4.3.2. Sensor Node Device
4.4. Sleep Mode Approach for Data Traffic Prediction
4.5. Power Consumption Model
4.6. Traffic Generation Probability
4.7. Lifetime Comparison
5. Results and Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Reference | Objective | Contribution | Findings | Conclusion |
---|---|---|---|---|
[7] Ping Luo et al. | Review solar energy harvesting technologies in IoT applications. | Highlights MPPT, DC-DC converters, and charge pumps for improving energy conversion efficiency. | Charge pumps significantly enhance voltage gain and conversion ratio, making solar energy harvesting viable for IoT. | Continuous improvements in MPPT and charge pumps boost harvester efficiency. |
[8] T. Sanislav et al. | Analyze the role of low-power wireless sensors in IoT and their energy demands. | Discusses case studies on energy-harvesting techniques in transportation, healthcare, defense, etc. | Battery dependency poses cost and lifespan challenges; ambient energy sources improve sustainability. | Energy harvesting extends sensor lifespan and contributes to green IoT. |
[9] H. A. Illias et al. | Develop a smart hybrid renewable energy-harvesting system using water flow. | Demonstrates integration of water-flow-based energy harvesting with IoT monitoring. | Water flow rate, harvester orientation, and sensor deployment influence efficiency. | IoT-enabled real-time monitoring improves energy management efficiency. |
[10] L. Roselli et al. | Explore RFID and wearable RF electronics benefiting from multi-source energy harvesting. | Investigates smart surfaces within Large Area Electronics (LAE) systems. | Identifies multidimensional aspects of RFID, chipless structures, and antennas in energy harvesting. | Combining multiple energy sources can power smart surfaces effectively. |
[11] N. Garg et al. | Emphasize the need for self-powered IT devices and alternatives to battery-based power. | Reviews different energy-harvesting architectures and strategies. | Renewable energy sources significantly enhance the sustainability of IoT devices. | Energy harvesting methods are crucial for achieving long-lasting IoT power solutions. |
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[16] Daning Hao et al. | Review solar energy-harvesting (SEH) methods for photovoltaic (PV) applications. | Identifies key design considerations for reliable PV self-powered systems. | Highlights factors ensuring efficient PV self-powered application performance. | PV-based self-powered systems promote green energy alternatives. |
[17] A. S. Adila et al. | Examine the impact of rechargeable battery lifespan on IoT growth. | Reviews ambient energy harvesting as an alternative power source. | Battery lifespan constraints limit IoT device scalability. | Energy harvesting solutions support sustainable IoT deployment. |
[18] M. Esgaghi et al. | Investigate millimeter-wave energy harvesting using 5G for IoT devices. | Designs an energy-harvesting circuit at 11.02 GHz using ADS. | Demonstrates feasibility of 5G-enabled energy harvesting. | 5G-based energy harvesting can power large-scale IoT applications. |
[19] S. K. Ram et al. | Develop an ultra-low power solar energy-harvesting system for IoT end nodes. | Integrates solar cells with a DC-DC converter and charge pump for optimization. | Frequency tuning, capacitor modulation, and hill-climbing techniques enhance energy harvesting efficiency. | The system enables self-sustaining, uninterrupted power supply for IoT devices. |
Parameter | Description |
---|---|
Simulation Area | x = 100 m, y = 100 m |
Base Station | (50 m, 50 m) |
Number of Nodes | |
Election Probability | |
Packet Lengths | = 500 Bytes |
Energy Capacities | = 1800 mAh, = 200 mAh |
Initial Energy | = 0.5 J |
Energy Constants | = 50 nJ, = 50 nJ |
= 10 nJ, = 0.0013 nJ | |
Data Aggregation | = 5 nJ |
Maximum Rounds | R = 2000 |
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Albalawi, N.S.; Rozenblit, J.W.; Satam, P.; Roveda, J.M. Dual Energy Management and an Energy-Saving Model for the Internet of Things Using Solar Energy Harvesting. Energies 2025, 18, 3555. https://doi.org/10.3390/en18133555
Albalawi NS, Rozenblit JW, Satam P, Roveda JM. Dual Energy Management and an Energy-Saving Model for the Internet of Things Using Solar Energy Harvesting. Energies. 2025; 18(13):3555. https://doi.org/10.3390/en18133555
Chicago/Turabian StyleAlbalawi, Nasser S., Jerzy W. Rozenblit, Pratik Satam, and Janet Meiling Roveda. 2025. "Dual Energy Management and an Energy-Saving Model for the Internet of Things Using Solar Energy Harvesting" Energies 18, no. 13: 3555. https://doi.org/10.3390/en18133555
APA StyleAlbalawi, N. S., Rozenblit, J. W., Satam, P., & Roveda, J. M. (2025). Dual Energy Management and an Energy-Saving Model for the Internet of Things Using Solar Energy Harvesting. Energies, 18(13), 3555. https://doi.org/10.3390/en18133555