All about Delay-Tolerant Networking (DTN) Contributions to Future Internet
Abstract
:1. Introduction
- Space.
- Information-Centric and Named Data Networking.
- Internet of Things and Smart Cities.
- Underwater.
2. Concept and Challenges
- Intermittent/Disruptive Connectivity and Link Disruptions: Deals with occasional breaks or interruptions in network connectivity, e.g., space missions, remote areas, or disaster zones with limited connectivity. Mechanisms are utilized to store and forward messages until connectivity is restored or alternative routes become available.
- High Latencies/Round Trip Time (RTT) and Low Throughput: Encounters long delays in message transmission and acknowledgment due to long-distance communication or congestion in the network. Also, issues achieving high data transfer rates due to limited bandwidth, intermittent connectivity, or congestion.
- Data Losses, Message Fragmentation, and Reassembly: Occur due to network congestion, link disruptions, or node failures. Also, in cases of limited bandwidth or size restrictions on transmitted data, large messages need to be fragmented into smaller pieces for transmission and afterward reassembled to accurately reconstruct the original message.
- Storage and Energy Constraints: Limitations regarding the availability of storage space for storing and forwarding messages or the energy consumption, especially in resource-constrained devices or networks. Storage management techniques, as well as prioritization, scheduling, or energy-efficient protocols and algorithms are employed.
- Routing and Forwarding: Determining optimal paths for message delivery in scenarios with dynamic network topologies, intermittent connectivity, or limited routing information requires the utilization of adaptive routing protocols and forwarding strategies.
- Security and Privacy: Ensuring data confidentiality, integrity, and authenticity across heterogeneous, decentralized, and potentially adversarial environments is crucial, particularly when transmitting sensitive information.
- Heterogeneity: Need to support seamless communication among diverse devices and networks with varying capabilities and characteristics, e.g., different protocols or data rates.
- Quality of Service (QoS): Due to the inherent constraints of DTN environments such as network disruptions and intermittent connectivity, there is a need for mechanisms to ensure reliable message delivery while meeting specified performance criteria, e.g., throughput, latency, and reliability.
3. Related Work
3.1. Space
3.1.1. Space Protocols
- Advanced Orbiting Systems (AOSs) Space Data Link Protocol [23]: Includes mechanisms for error detection and correction and link synchronization between spacecrafts and GS.
- Delay-Tolerant Payload Conditioning (DTPC) Protocol [28]: Adding an application-independent protocol layer to provide end-to-end transport services to the ION-DTN implementation.
- Deep Space Transport Protocol (DS-TP) [29]: Includes novel proactive transmission and retransmission scheduling rules.
- Space Packet Protocol (SPP) [30]: Provide unidirectional space data transfer service containing an application process identifier to identify packet streams.
- Encapsulation Packet Protocol (EPP) [31]: Encapsulate higher-layer protocol data units using Space Data Link protocols without authorized packet version Numbers over space links.
3.1.2. Satellites
- 1.
- Internet Service and Relay Systems: (i) Provide global internet coverage primarily facilitated by the rapid deployment of LEO satellites and constellations (e.g., Globalstar, Starlink, OneWeb) [39,40]. They can serve as complementary solutions to traditional internet services (e.g., in cases of emergency) or as effective substitutes in areas lacking terrestrial connectivity. Various proposals for communication enhancements have also been proposed. For instance, ref. [41] describes a transmission scheduling algorithm for LEO satellites involving a broadcasting mechanism with randomized retransmissions and a Peer-to-Peer (P2P) multicast ground distribution scheme. The paper by [42] proposes enhancements between LEO/MEO intersatellite communication systems through modulation techniques and electrical pulse generators or tools to predict delivery time, e.g., Bundle Delivery Time Estimation (BDTE) [43]. (ii) Data Relay Satellites (DRSs) transmit information to and from satellites, spacecraft, vehicles/vessels, and fixed Earth GSs, e.g., the European Data Relay System (EDRS) [44], U.S. Tracking and Data Relay Satellite System (TDRSS) [45], or Earth-to-Moon communication [46].
- 2.
- Remote Sensing and Earth Observation: (i) Environmental/climate monitoring (e.g., the GR01-DUTHSat for upper atmosphere measurements [47]); (ii) meteorology phenomena and atmospheric tracking (e.g., the Leonardo Bidirectional Reflectance Distribution Function (BRDF) constellation and Cyclone Global Navigation Satellite System (CYGNSS)); (iii) pollution monitoring (e.g., oil spill detection); and (iv) surveillance and high-resolution photography.
- 3.
- Power Energy Networks and Smart Grids: Provide robust and flexible network management and interconnection of distributed and heterogeneous energy infrastructures (e.g., supervisory control and data acquisition) while efficiently utilizing the bandwidth and minimizing installation and maintenance costs [48,49].
- 4.
- Maritime and Agriculture: Enable communication among devices/sensors in the field and drones/satellites. They allow for remote monitoring and the management of operations for (i) satellite–terrestrial communication networks at sea [50,51,52]; (ii) gathering data, e.g., meteorological, moisture levels, temperature, humidity, crop health [53]; and (iii) precision agriculture [54,55] and Machine Learning (ML) techniques [56].
- 5.
Challenges | Papers | Focus | Solution/Protocol |
---|---|---|---|
Extreme delay, intermittent connectivity, security and authentication, mobility, resource constraints, infrastructure damage | [2,8] | BP | |
[15,16] | (B-)DTN7 | ||
[17,18] | IBR-DTN | ||
[19] | LTP | ||
[24] | ION-DTN | ||
[23] | AOS | ||
[26,27] | Protocol definition | QUIC and QUICL | |
[28] | DTPC | ||
[29] | DS-TP | ||
[30] | SPP | ||
[31] | EPP | ||
[32,33,34,35] | Routing protocols | ||
[10] | Testbeds for space | DEN | |
[11] | SPICE | ||
[38] | Multimedia content delivery | BSS | |
[12] | Microservice-based | A2C and DQN-based | |
[13,14] | approaches | HDTN project | |
[41] | P2P decentralized simulation tool | ||
[42] | Enchantments for scheduling | Modulation techniques for | |
and prediction | electrical pulse generators | ||
[43] | BDTE tool and CGR | ||
[48] | Energy and smart grids | AURA-NMS performance | |
[49] | SATCOM systems in smart grids | ||
[50,51,52] | Maritime | Networking, UAV-enhanced Hybrid Networks | |
[54,55,56] | Agriculture | Precision agriculture with ML and DL | |
[57,58] | Military support | Lasers and military satellites |
3.2. Information-Centric Networking (ICN) and Named Data Networking (NDN)
3.2.1. DTN-ICN in IoT
3.2.2. DTN-ICN in Emergency Scenarios
3.2.3. DTN-ICN-VANETs
3.3. Internet of Things and Smart Cities
Challenges | Papers | Focus | Solution/Protocol |
---|---|---|---|
Heterogeneity, integration with IP-based networks, data prioritization, security, intermittent connectivity | [62,65,66,70,73] | NDN/DTN architectures | NoD, ICN-over-LoRa |
[77] | NDN/DTN platforms for IoT | UMOBILE | |
[76] | RICE | ||
[62,67,68,69] | Adaptive multiprotocols | NoD and ML | |
for smart cities | |||
[63] | Caching in IoT | EFPCaching | |
[71] | CoAP | ||
[72] | IoT protocols and concepts | Content islands | |
[74,75] | CCN and reflexive forwarding | ||
[81] | DID | ||
[83] | ICN Data muling | ||
[84] | Name-based push and pull service | ||
[85] | Disaster scenarios and | Popularity estimation scheme | |
[87] | prioritization of interests | Image prioritization method | |
[86] | NREP scheme | ||
[88] | Opportunistic named functions | ||
[89] | Reputation-based trust | ||
[94] | Protocols/Solutions | iMMM-VNDN | |
[95] | for VANETs | DADT | |
[91] | V-NDN | ||
[90] | ICN VANETs architecture | SEVeN | |
[97] | CSPC and PPCCR mechanism | ||
[98] | Caching in VANETs | Content prefetching optimization | |
[99] | RSUC and ReA schemes | ||
[100] | Prioritization in VANETs | LISIC protocol | |
[101] | Push-based VNDN |
3.3.1. IoT and Smart Cities Protocols
- Bundle Protocol (BP) [7]: Enables the transmission of data in challenged environments by encapsulating data into bundles and routing them opportunistically.
- Spray and Wait (SNW) [113]: Distributes messages by spraying multiple copies and then waiting for successful delivery, thus storing and forwarding messages opportunistically.
- Epidemic Routing [5]: Disseminates data by reproducing and pushing messages to all the nodes it encounters, thus ensuring final delivery through opportunistic encounters in latency-tolerant networks.
- MaxProp [114]: Prioritizes message forwarding on the basis of maximum probability for a successful delivery, thus optimizing the efficiency of communication in delay-tolerant networks.
- Prophet [115]: Utilizes probabilistic forwarding based on historical encounter information for improving message delivery in intermittent networks.
- MQTT: A widely used TCP-based publish/subscribe protocol within IoT deployments. It is proposed to be combined with the DTN and IBR-DTN for real IoT Sensor Networks (MQTT-SN) [116] and IoT environment cases [117]; to be utilized complementarily to DTN under various disruption patterns [118,119] utilizing the 5.0 MQTT version (https://docs.oasis-open.org/mqtt/mqtt/v5.0/mqtt-v5.0.html accessed on 4 March 2024); run over the QUIC protocol (i.e., MQTT over QUIC) [120]; or leveraged as the next generation IoT standard protocol, thereby offering substantial performance advantages and resource footprint reduction.
- Licklider Transmission Protocol (LTP) [121].
3.3.2. IoT and Smart Cities Applications
- Remote Environmental Monitoring: The process of collecting data on various environmental parameters in areas that are difficult to access or far from settlements. Delay-Tolerant Wireless Sensor Networks (DTWSNs) have been established to assist with the collection of data, as well as the tracking and monitoring of animals. For instance, [122] describes the design of a GPS tracking device that utilizes the DTN suite in order to monitor, collect data, and track the Galápagos pink land iguana.
- Data Aggregation and Data Collection: The collection and integration of dispersed data points from various sources into a central system for analysis and decision making frequently address challenges related to limited connectivity. A typical example is the usage of DTN on Wireless Body Area Networks (WBANs), which are used in a plethora of scenarios, such as hospital data, military situations, and in the recognition of dangerous diseases for animals, as mentioned in [123]. Furthermore, DTN assists in data collection from Vehicular Delay-Tolerant Networks (VDTNs), particularly in applications for smart cities. An example is the Data Collection for Low Energy Devices (DC4LED), which is a hierarchical VDTN routing tested in the city of Helsinki [124].
- Disaster Management and Emergency Reports: Aim to address issues related to natural or man-made disasters. Typical examples are the utilization of the DTN protocols to ensure effective communication for the prioritization of messages in disaster scenarios [125], the organization of recovery operations in areas with limited network availability, and in proactive disaster management applications to predict patterns of human and vehicle mobility [126,127].
- Healthcare Monitoring in Rural Areas: Leveraging solutions to remotely monitor and manage patients’ health, particularly in regions with limited access to medical facilities and health professionals. Such a delay-tolerant data communication system for the transmission of health and environmental data to areas of developing countries is presented in [87].
- Public Transportation and Mobility: The provision of common transport services facilitate efficient movement in both urban and rural areas, thereby improving accessibility and reducing congestion. An example of DTN application in this domain is the DTN routing algorithm as presented in [128].
- Energy Management: The efficient use, monitoring, and optimization of energy resources to minimize consumption, reduce costs, and mitigate environmental impact. A combination of energy-efficient architectures is provided by [129] and evaluated in the ONE simulation.
- Location Monitoring: The Real-Time Location System (RTLS) is a technology that tracks and identifies the current geographic location of objects or people in real time. RTLS is integrated in IoT cases, thereby allowing for the monitoring of the environmental and health conditions of workers. In underground scenarios such as miners’ reconnaissance, RTLS plays a crucial role in location monitoring, as discussed in [130]. Additionally, the proposed architecture includes Bluetooth Low-Energy (BLE) beacon-based devices, while it also analyzes key factors for a future 6G IoT system.
3.3.3. MANETs, VANETs, V2X, WSN
3.4. Underwater
Challenges | Papers | Focus | Solution/Protocol |
---|---|---|---|
Heterogeneity, mobility, scalability, variable delay, resource/(energy) constraints, security and privacy | [7] | BP | |
[113] | SNW | ||
[5] | Epidemic routing | ||
[114] | Protocols definition | MaxPro | |
[115] | Prophet | ||
[116,117,118,119,120] | MQTT-DTN | ||
[121] | LTP | ||
[87,122,123,124] | Data collection and monitoring | BP, VDTN, epidemic routing | |
[125,126,127,129] | Disaster and energy management | Routing protocols | |
[108,128] | Public transportation and mobility | Review, routing protocols | |
[130] | Location monitoring | RTLS, LoRaWAN, Zigbee | |
[131] | VANETs | IQDN | |
[132,133] | MANETs | Routing protocols | |
[134] | LoRAgent: LoRa and BP | ||
[135] | Mobile computing in disaster | IBR-DTN and DTN2 | |
[137] | UAVs in V2X | UGV and UAV |
3.4.1. Underwater Protocols
- Spray and Wait (SNW) [146].
- Resource Allocation Protocol for Intentional DTN (RAPID) [147]: Optimizes resource allocation and scheduling for data transmission in DTNs, thereby enhancing efficiency and reliability.
- Underwater DTN with Probabilistic Spraying (UDTN-Prob) [146]: Broadcasts underwater messages using probabilistic copy transmission, thereby optimizing data delivery in difficult underwater communication environments.
- Q Learning-Based DTN Routing Protocol (QDTR) [138]: Uses reinforcement learning techniques to adjust routing decisions dynamically and optimize message delivery.
- Redundancy-Based Adaptive Routing (RBAR) [148]: Optimizes message delivery in delay-tolerant networks by dynamically adjusting routing decisions based on redundancy levels to enhance reliability.
- Prediction-Based Delay-Tolerant Protocol (PBDTR) [149] and Prediction-Assisted Single-copy Routing (PASR): Employ prediction information to improve message routing and enhance delivery efficiency.
- Delay-Tolerant Data Dolphin (DDD) [144]: Utilizes dolphin-inspired communication strategies to optimize data transmission and improve efficiency.
3.4.2. Underwater Applications
- Underwater Environmental Monitoring: The systematic collection of data to evaluate and understand ecological conditions and changes in underwater ecosystems, as presented in [150] with a deepwater monitoring system in the Cambos Basin offshore area.
- Underwater Exploration and Surveillance: Utilized to explore and monitor underwater environments for scientific research, safety, or commercial purposes. This application employs technologies such as the Coastal Patrol and Surveillance Application (CPSA) and introduces novel protocols like Reed–Solomon (RS) [151].
- Underwater Acoustic Communication: Involves the transmission of data through sound waves in underwater environments, thus allowing communication among underwater devices, vehicles, and surface stations [152].
- Underwater Remote Sensing and Mapping: The integration of technologies to harvest data from underwater environments to generate detailed maps and comprehend underwater topography, habitats, and resources [152].
- Underwater Disaster Prevention: Deals with the implementation of measures and strategies to mitigate risks and minimize the impact of natural or man-made disasters in underwater environments, such as oil spills, tsunamis, or industrial accidents. An example is the utilization of DTN for the Underwater Internet of Things (UIoT) and its various applications, as demonstrated in [153].
Challenges | Papers | Focus | Solution/Protocol |
---|---|---|---|
Propagation delay, multivariate attenuation, limited bandwidth, high transmission power, bit error rate, intermittent connectivity, no position information, limited energy demands | [146] | SNW | |
[147] | RAPID | ||
[146] | UDTN-Prob | ||
[138] | QDTR | ||
[148] | RBAR | ||
[149] | Protocols definition | PBDTR | |
[149] | PASR | ||
[144] | DDD | ||
[143] | ORIT | ||
[150] | Monitoring surveillance and sensing | Prophet and epidemic routing | |
[151] | UDTN-RS | ||
[152] | Acoustic communication | Network and routing protocols | |
[154] | Reinforcement learning-based selection | ||
[153] | Disaster prevention and UIoT | Survey | |
[155] | Underwater DTN network simulator | DTN Aqua-Sim | |
[156] | Overlay networking WSN | DTN-Janus |
4. Discussion and Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Koukis, G.; Safouri, K.; Tsaoussidis, V. All about Delay-Tolerant Networking (DTN) Contributions to Future Internet. Future Internet 2024, 16, 129. https://doi.org/10.3390/fi16040129
Koukis G, Safouri K, Tsaoussidis V. All about Delay-Tolerant Networking (DTN) Contributions to Future Internet. Future Internet. 2024; 16(4):129. https://doi.org/10.3390/fi16040129
Chicago/Turabian StyleKoukis, Georgios, Konstantina Safouri, and Vassilis Tsaoussidis. 2024. "All about Delay-Tolerant Networking (DTN) Contributions to Future Internet" Future Internet 16, no. 4: 129. https://doi.org/10.3390/fi16040129
APA StyleKoukis, G., Safouri, K., & Tsaoussidis, V. (2024). All about Delay-Tolerant Networking (DTN) Contributions to Future Internet. Future Internet, 16(4), 129. https://doi.org/10.3390/fi16040129