Advances in Energy Harvesting for Sustainable Wireless Sensor Networks: Challenges and Opportunities
Abstract
:1. Introduction
2. Background and Motivation
- Solar Energy: This energy is derived from sunlight and the solar panels are used to convert it into electrical energy.
- Thermal Energy: Manufactured from temperature via thermoelectric generators that transform warmth electricity into electric power.
- Kinetic Energy: generated through vibrations or motion, and piezoelectric materials are employed to transmute in an electric power.
- RF Energy: RF harvesting modules are used to harvest energy from radio frequency signals.
3. Energy Harvesting Techniques
3.1. Solar Energy Harvesting
- High Power Output: Solar panels can generate substantial amounts of energy, suitable for various applications.
- Mature Technology: Well-established technology with extensive research and development.
- Environmentally Friendly: Solar energy is renewable and does not produce emissions.
- Intermittent Availability: Solar energy depends on weather conditions and time of day.
- Space Requirement: Efficient solar panels require adequate surface area, which might be challenging in some applications.
3.2. Thermal Energy Harvesting
- Continuous Operation: Can operate as long as there is a temperature gradient, which can be constant in many environments.
- Compact Design: TEGs are generally small and can be integrated into various devices.
- Low Efficiency: TEGs typically have low conversion efficiency, making them suitable for low-power applications.
- Temperature Gradient Requirement: Requires a consistent temperature difference to generate power effectively.
3.3. Kinetic Energy Harvesting
- Versatility: Can be used in various settings, including wearable devices and industrial equipment.
- Low Maintenance: Passive energy harvesting requires minimal maintenance compared to battery-powered systems.
- Variable Power Output: Power generation depends on the intensity and frequency of mechanical motion.
- Complex Integration: Integrating kinetic energy harvesters into existing systems can be challenging.
3.4. RF Energy Harvesting
- Non-Intrusive: Can capture energy from existing RF sources without additional infrastructure.
- Can be deployed in various environments with prevalent RF signals.
- Low Power Density: RF energy is typically low in power density, making it suitable for low-power applications.
- Distance Dependent: Efficiency decreases with increasing distance from the RF source.
4. Energy Management Strategies
4.1. Energy Storage Solutions
- Batteries: Because of their ability to store large amounts of energy, batteries can be recharged and are extensively utilized in WSN. There are several varieties of batteries, including lithium-ion, nickel-metal hydride (NiMH), and lead-acid. The positives are high energy density and known technology, while the disadvantages are limited cycle life, temperature sensitivity, and a relatively expensive cost.
- Super-capacitor: Has a high power density and the ability to deliver energy in short bursts. Greater cycle life and quicker charge/discharge rates in comparison to batteries are the benefits. The drawbacks are more expensive than standard batteries and a lower energy density.
- Hybrid System: Combines batteries and super-capacitors to maximize the benefits of both technologies. Its advantages include balancing energy and power density, which improves total system efficiency. The restrictions include design complexity and cost.
4.2. Energy Consumption Optimization
- Adaptive Sampling: Adjusts the frequency of data collection based on environmental conditions or application needs.
- Compression Techniques: Reduces the amount of data transmitted by compressing sensor data before transmission.
- Duty Cycling: Alternates between active and sleep modes to reduce energy consumption during idle periods.
- Low-Power Communication Protocols: Utilizes energy-efficient communication protocols that minimize power usage during data transmission.
- Efficient Algorithms: Implements algorithms that minimize computational complexity and energy consumption.
- Edge Computing: Processes data locally on the sensor node to reduce the amount of data transmitted and save energy.
4.3. Energy Management Protocols
4.3.1. Energy-Efficient Routing Protocols
- Objective: Optimize the path for data transmission to minimize energy consumption.
4.3.2. Energy Harvesting Aware Protocols
- Objective: Incorporate energy-harvesting capabilities into routing and data management strategies.
4.3.3. Load Balancing Protocols
- Objective: Distribute energy consumption evenly across the network to prevent early depletion of energy in specific nodes.
4.4. Integration with Wireless Sensor Networks
4.4.1. System Design Considerations
- Compatibility: Ensuring that energy harvesting components are compatible with the sensor node and network architecture [84].
4.4.2. Implementation Challenges
5. Energy-Harvesting Applications
5.1. Cognitive Radio for Wireless Sensor Networks
5.1.1. Overview of Cognitive Radio
- Spectrum Sensing: Detects the presence of primary users (licensed users) and identifies unused spectrum bands.
- Dynamic Spectrum Access: Allows secondary users (unlicensed users) to access spectrum bands when primary users are not active.
- Adaptive Transmission: Adjusts transmission parameters based on the spectrum environment.
5.1.2. Spectrum Sensing and Management
- Energy Detection: Measures the energy of the received signal to determine the presence of primary users.
- Matched Filtering: Uses known characteristics of primary user’s signals to detect their presence.
- Cyclo-stationary Feature Detection: Exploits the periodicity of signals to detect primary users.
- Spectrum Allocation: Assigning spectrum bands to users based on their requirements and availability.
- Spectrum Sharing: Allowing multiple users to share the same spectrum band using different access strategies.
5.1.3. Energy-Efficient Spectrum Usage
- Spectrum Optimization: By keeping away congested or under-utilized bands, it uses spectrum bands more intelligently.
- Adaptive Power Control: Modifies the transmission power based upon the observed spectrum environment in order to reserve the energy.
5.1.4. Challenges and Solutions
- Interference Management: Making sure that the secondary users (SUs) do not obstruct primary users (PUs) or other secondary users.
- Security Concerns: Keeping CR systems safe from malicious attacks and certifying steady spectrum access.
- Complexity in Implementation: It would be complex and costly to integrate the CR technology into existing WSN infrastructure.
5.2. PLS in Energy-Harvesting Networks
- Secrecy Capacity: The maximum amount of information that can be safely transmitted over a communication channel.
- The Signal-to-Noise Ratio (SNR): This ratio is a comparison of the level of the desired signal to the level of background noise.
- Channel State Information (CSI): It states that knowledge of the channel conditions is crucial for optimal scheduling and allocation of radio resources.
- Energy-Harvesting-Based Security: Employing the energy-harvesting abilities of the network, in order to assist secure communication.
- Secure Data Transmission: Making sure that data are transmitted securely using PLS methods, even with less energy resources.
- Reduced Computational Overhead: PLS does not need complex cryptographic algorithms, bringing down the computational burden.
- Enhanced Security in Adverse Conditions: PLS can preserve security even in demanding environments with excessive levels of interference.
6. Routing Protocols in EH-WSNs
- Direct Routing Protocols: Send data directly from the source to the destination without intermediate nodes.
- Hierarchical Routing Protocols: Use a tiered structure where nodes are grouped into clusters, and data are routed through cluster heads.
- Geographic Routing Protocols: Utilize the geographic location of nodes to determine the routing path.
- Energy-Aware Routing: Select routes based on the energy levels of nodes to extend the network’s lifetime.
- Load Balancing: Distribute the data transmission load evenly across the network to avoid energy depletion in specific nodes.
- Sleep Scheduling: Implement sleep–wake cycles to conserve energy by putting nodes into low-power modes when not actively transmitting data.
- Multi-hop Routing: Data are transmitted through multiple intermediate nodes before reaching the destination, which helps in overcoming long-distance transmission challenges.
- Multi-path Routing: Multiple paths are used for data transmission, providing redundancy and load balancing to improve reliability and fault tolerance.
- Data Encryption: Encrypt data during transmission to prevent unauthorized access.
- Authentication: Verify the identity of nodes to prevent malicious nodes from participating in the network.
- Secure Routing Protocols: Implement routing protocols designed to resist security threats and ensure data integrity.
7. Challenges, Opportunities, and Future Trends
7.1. Challenges Faced by EH-WSNs
7.2. Opportunities for Improvement and Innovation
7.3. Future Trends in Energy Harvesting and Security
7.3.1. Emerging Technologies
- Advanced Energy-Harvesting Materials: Research into novel materials, such as nano-materials and meta-materials, has the potential to improve the efficiency and scope of energy-harvesting technology [125,126]. These compounds can enhance the performance of solar cells, thermoelectric generators, and other energy-harvesting systems.
7.3.2. Innovations in Energy Management
7.3.3. Advances in Security Mechanisms
8. Summary of Key Findings
8.1. Comparison of Energy-Harvesting Techniques
8.2. Energy Management Strategies
8.3. Cognitive Radio Benefits and Challenges
8.4. Physical Layer Security Techniques
8.5. Routing Protocols Overview
9. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
References
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Feature | Physical Layer Security (PLS) | Traditional Encryption |
---|---|---|
Computational Overhead [99] | Low | High |
Security Level [100] | High in adverse Conditions | High with proper key management |
Implementation Complexity [101] | Low | High |
Challenge | Description |
---|---|
Energy Efficiency [116] | Manage limited energy resources while ensuring reliable data transmission and network functionality |
Network Scalability [117] | Addressing issues related to performance and lifetime as the network grows in size |
Data Security [118] | Ensuring secure data transmission and protection against unauthorized access |
Dynamic Topologies [119] | Handling changes in node availability and network structure |
Integration with Existing Technologies [119] | Ensuring compatibility and interoperability with existing systems |
Opportunity | Description |
---|---|
Advanced Energy Harvesting Technologies [120] | Innovations in harvesting technologies for better energy capture |
Smart Energy Management Systems [121] | Systems that dynamically manage energy based on availability and network needs |
Enhanced Routing Protocols [122] | Development of routing protocols that optimize data transmission and network performance |
Integration of AI and Machine Learning [123] | Use of AI and ML for adaptive energy management and routing |
Improved Security Mechanisms [124] | Enhancing security protocols to protect data and resist attacks |
Technique | Advantages | Limitations |
---|---|---|
Solar Energy [61,144] | High Power Output, Mature Technology | Intermittent availability, Space requirement |
Thermal Energy [63,64] | Continuous Operation, Compact Design | Low efficiency, Temperature gradient requirement |
Kinetic Energy [65,66,67] | Versatility, Low Maintenance | Variable power output, Complex integration |
RF Energy [68,69,70,71,72] | Non-Intrusive, Scalable | Low power density, Distance-dependent |
Technique | Advantages | Limitations |
---|---|---|
Solar Energy [61,144] | High energy yield in sunny conditions | Dependent on sunlight availability |
Thermal Energy [63,64] | Can be harvested from waste heat | Low efficiency compared to other methods |
Kinetic Energy [65,66,67] | Suitable for dynamic environments | Limited energy output and efficiency |
RF Energy [68,69,70,71,72] | Can be harvested from ambient RF signals | Low energy density and range |
Strategy | Description | Impact |
---|---|---|
Energy Storage [145] | Utilization of batteries and supercapacitors to store the energy | Increases reliability and operational lifespan |
Energy-Aware Routing [146] | Routing decisions based on current energy levels | Enhances energy efficiency and network performance |
Load Balancing [147] | Distributing data transmission to prevent node overuse | Balances energy consumption across the network |
Aspects | Benefits | Challenges |
---|---|---|
Spectrum Efficiency [148] | Improved utilization of available spectrum | Requires sophisticated spectrum management |
Dynamic Access [149] | Ability to access unused spectrum bands | Complexity in spectrum sensing and adaptation |
Integration Issues [150] | Compatibility with existing systems and technologies | Integration with current network infrastructure |
Techniques | Description | Challenges |
---|---|---|
Energy Harvesting Based Security [151] | Security using harvested energy for data protection | Effectiveness in various environmental conditions |
Encryption Alternatives [152] | Reduces need for traditional encryption methods | Requires robust physical layer security mechanisms |
Protocol | Description | Key Considerations |
---|---|---|
Direct Routing [153] | Direct path from source to destination | Effectiveness in various environmental conditions |
Hierarchical Routing [154] | Data passed through cluster heads in a tiered structure | Efficient for large networks but adds complexity |
Geographic Routing [155] | Routing based on geographic location of nodes | Requires accurate location data and may not scale well |
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Mushtaq, M.U.; Venter, H.; Singh, A.; Owais, M. Advances in Energy Harvesting for Sustainable Wireless Sensor Networks: Challenges and Opportunities. Hardware 2025, 3, 1. https://doi.org/10.3390/hardware3010001
Mushtaq MU, Venter H, Singh A, Owais M. Advances in Energy Harvesting for Sustainable Wireless Sensor Networks: Challenges and Opportunities. Hardware. 2025; 3(1):1. https://doi.org/10.3390/hardware3010001
Chicago/Turabian StyleMushtaq, Muhammad Umer, Hein Venter, Avinash Singh, and Muhammad Owais. 2025. "Advances in Energy Harvesting for Sustainable Wireless Sensor Networks: Challenges and Opportunities" Hardware 3, no. 1: 1. https://doi.org/10.3390/hardware3010001
APA StyleMushtaq, M. U., Venter, H., Singh, A., & Owais, M. (2025). Advances in Energy Harvesting for Sustainable Wireless Sensor Networks: Challenges and Opportunities. Hardware, 3(1), 1. https://doi.org/10.3390/hardware3010001