| Literature DB >> 30061544 |
Jad Nassar1,2, Matthieu Berthomé3, Jérémy Dubrulle4, Nicolas Gouvy5, Nathalie Mitton6, Bruno Quoitin7.
Abstract
The Smart Grid (SG) aims to transform the current electric grid into a "smarter" network where the integration of renewable energy resources, energy efficiency and fault tolerance are the main benefits. This is done by interconnecting every energy source, storage point or central control point with connected devices, where heterogeneous SG applications and signalling messages will have different requirements in terms of reliability, latency and priority. Hence, data routing and prioritization are the main challenges in such networks. So far, RPL (Routing Protocol for Low-Power and Lossy networks) protocol is widely used on Smart Grids for distributing commands over the grid. RPL assures traffic differentiation at the network layer in wireless sensor networks through the logical subdivision of the network in multiple instances, each one relying on a specific Objective Function. However, RPL is not optimized for Smart Grids, as its main objective functions and their associated metric does not allow Quality of Service differentiation. To overcome this, we propose OFQS an objective function with a multi-objective metric that considers the delay and the remaining energy in the battery nodes alongside with the dynamic quality of the communication links. Our function automatically adapts to the number of instances (traffic classes) providing a Quality of Service differentiation based on the different Smart Grid applications requirements. We tested our approach on a real sensor testbed. The experimental results show that our proposal provides a lower packet delivery latency and a higher packet delivery ratio while extending the lifetime of the network compared to solutions in the literature.Entities:
Keywords: QoS; RPL; Smart Grid; WSN; metric; objective function; routing
Year: 2018 PMID: 30061544 PMCID: PMC6111979 DOI: 10.3390/s18082472
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Smart Grid Communication Network [13].
Figure 2Smart Grid metering data collection.
NAN requirements in terms of reliability [5].
| Data Traffic | Maximum Allowed Delay | Reliability |
|---|---|---|
| DA-Data related to the protection of the distribution network | <3 s | >99.5% |
| DERs (Distributed Energy Resources)—Data related to the protection of the distribution network | <4 s | <99.5 % |
| Critical traffic of: DA, DSM, AMI, DERs | <5 s | >99.5% |
| Electric transport | <10 s | >98% |
| Non critical traffic of DSM & AMI | <15 s | >98% |
| Non critical traffic of DA & AMI | <30 s | >98% |
| Network configuration traffic, normal AMI traffic | <5 min | >98% |
| Normal AMI traffic | <4 h | >98% |
| Network configuration traffic | <Hours/Days | >98% |
Figure 3variation with .
Figure 4Network with different , delay d (in ms) and values.
Paths values for the different metrics used.
| Paths | |||
|---|---|---|---|
| Path 1 | Path 2 | Path 3 | |
|
|
| 6->4->3->1 |
|
| Instance 1 | 7.5 | 9.5 | 10 |
|
| |||
| Instance 2 | - | - | - |
| Instance 1 | 7.5 | 9.5 | 10 |
|
| |||
| Instance 2 | 3 | 3 | 4 |
|
| |||
| Instance 1 | 14.9 | 23.9 | 16.3 |
|
| |||
| Instance 2 | 1.4 | 1.2 | 1.1 |
|
| |||
Figure 5Topology of the deployment on FIT IoT-LAB Lille’s site (https://www.iot-lab.info/lilles-new-physical-topology-released/).
Figure 6Hardware of an IoT-LAB node [36].
Parameters of the experimentation.
| Parameters | Values |
|---|---|
| OS | Contiki master version |
| Testbed | FIT IOT-LAB |
| Communication protocols | CSMA, RDC contikimac, IEEE 802.15.4, ContikiRPL, IPv6 |
| OF | 1-OFQS with 2 instances |
| 2-MRHOF (ETX) & OF0 (HC) | |
| Number of nodes | 67 clients and 1 server |
| Sensors | M3 |
| Microcontroller Unit | ARM Cortex M3, 32-bits, 72 MHz, 64 kB RAM |
| Maximum packet size | 30 kb |
| Sending interval | 1 packet every 1 to 60 s |
Figure 7End-to-End delay variation with time.
Figure 8Network lifetime variation.
Figure 9Remaining energy distribution among the nodes after 30 min.