ICT Scalability and Replicability Analysis for Smart Grids: Methodology and Application
Abstract
:1. Introduction
- A standalone step-by-step methodology to quantitatively analyse the scalability and replicability of ICT systems involved in smart grid solutions. The methodology makes use of the SGAM to identify the most critical part of the system to be analysed. It allows for the establishment of a clear relationship between the requirements and the performance indicators used and does not depend on the type of technology (wired or wireless) or the quantitative approach followed (simulations or experiments). This methodology covers the existing gap in guidelines on how to carry out a quantitative SRA focused on the ICT of smart grid solutions.
- The novel introduction of ICT scalability and replicability maps as the outcome of ICT SRAs. To the best of the authors’ knowledge, these maps have not been introduced before. The use of these maps allows for a quick overview of the scalability and replicability of a system in different scenarios and could be used to estimate the feasibility of non-analysed scenarios.
- The validation and application of the proposed methodology to two real case studies involving different technologies and smart grid use cases. In both cases, the methodology is applied step by step and the usefulness of ICT SRA maps is exemplified.
2. Scalability
- Load scalability: Whether the system works well with both light and heavy workloads. A high workload can be due to an increase in the number of elements interacting (size) or an increase in the number of interactions or information exchanged between the elements (density).
- Space scalability: Whether memory limits are exceeded when increasing the number of elements in the system (scalability in size).
- Space-time scalability: Whether the system works well while significantly increasing the number of elements (scalability in size).
- Distance scalability: Whether the system works well with short and long distances. This is related to the scalability in density since the number of elements does not vary.
- Speed/distance scalability: Whether the system works well with short and long distances, regardless of the speed required (scalability in density).
- Structural scalability: Whether the standards implemented constrain the system. This is a type of qualitative analysis based on the technical specifications of communication protocols and technologies.
3. Description of Quantitative ICT SRA Methodology
3.1. Map the ICT System into the SGAM
3.2. Scalability Questions and System Characteristics
3.2.1. Scalability Questions
- Will the communications between the station and field zone work properly if the number of field devices increases?
- Will the TSO operation system be able to cope with an increment in the amount of data exchanged with the DSO operation system?
3.2.2. Characterise the ICT System
3.3. Minimum Requirements and Technical Constraints
- Latency. When an application requires real-time communication, latency is typically the most important factor to take into account, making it the primary performance measure for the system, as it can affect the reliability of the smart grid [21,22] and is an essential requirement when designing control schemes for DER [23]. Scalability requires that as the system grows, latency should remain below the limit set by the application. Replicability involves making sure that the system can maintain the same latency level under different conditions.
- Aggregated communication time. The aggregated communication time is the total time taken for all communications within the system over a given period. For example, a smart metering data collector may need to collect all smart meters’ data in less than 15 min. Scalability and replicability involve maintaining aggregated communication times below the limit under different conditions.
- Bandwidth. The bandwidth indicates how much data can be transmitted through the communication channel in a given time. This can constitute a very important requirement when the communication channel is shared with other applications. As the system scales, it should maintain the bandwidth used at acceptable values.
- Reliability. This concept is related to the system’s ability to correctly deliver the information being transmitted. This is an important requirement in all ICT, but especially in those that rely on wireless communications, as the signal may not reach its destination under certain conditions (e.g., weather conditions). Data loss can reduce the stability of the grid [23] and have an economic impact on the grid [24]. A scalable system must be able to maintain high reliability, regardless of size and conditions.
- Coverage. This refers to the geographical or network extent to which the communication system can serve effectively. It is a very important requirement in wireless communications to guarantee scalability and replicability and is deeply related to the reliability of the system.
- Memory. Memory usage refers to the Random Access Memory (RAM) and storage consumption of the components that make up the system. Scalability requires efficient memory management of the different components to face increasing loads and avoid information bottlenecks that end up affecting the final application of the system.
3.4. Development of Scenarios
3.5. Definition of Key Performance Indicators
- They must allow for evaluating whether the ICT system meets the minimum requirements identified in step 3. Therefore, the Key Performance Indicator (KPI)s should be related to these requirements and technical constraints.
- It must be possible to measure or calculate them in all the scenarios analysed.
- For each KPI defined, an acceptance threshold must be stated. This, again, is determined by the requirements of the use case.
3.6. Development of a Simulation Model or Experiment
3.7. Run Scenarios and Analysis of Results
4. Application of the Quantitative ICT SRA Methodology
4.1. Case Study A: Control and Monitoring System for DER
4.1.1. Map the ICT System into the SGAM
4.1.2. Scalability and Replicability Questions
- What would be the effect of placing the EMPAIR in the distribution domain? This would mean increasing the size of the Local Area Network (LAN) or, in other words, increasing the distance (i.e., the length of the Ethernet cables) between the connected devices. There may be a maximum distance under which the operational requirements cannot be satisfied.
- What would be the effect of increasing the number of devices connected to the EMPAIR? This question could also be studied in combination with the previous one. When placed at a Positive Energy Block (PEB) level, the results would show the maximum number of devices that can be controlled within a building; when placed at a Positive Energy District (PED) level, the operational contour defined by the distance and number of devices could be obtained.
4.1.3. Characterise the ICT System
4.1.4. Minimum Requirements and Technical Constraints
4.1.5. Development of Scenarios
4.1.6. Define KPIs
4.1.7. Simulation Model
4.1.8. Results
4.2. Case Study B: Smart Metering and Sensing System
4.2.1. Map the ICT System into the SGAM
4.2.2. Scalability and Replicability Questions
- What would be the effect of increasing the area to be covered by the edge hub? This would mean increasing the distance between the edge sense devices and the edge hub, as well as increasing the number of sensors.
- What would be the effect of increasing the number of sensors connected to the same edge hub? Since modifying the distance would be limited by the wireless communication, increasing the number of sensors connected to a single edge hub could pose a significant challenge: the wireless medium is shared by all the sensors, and all of them need to send their measurements at a minimum time interval.
4.2.3. Characterise the ICT System
4.2.4. Minimum Requirements and Technical Constraints
- The presence of obstacles to the wireless transmission, such as walls, objects, etc.
- The presence of background noise due to other devices.
- The probability of message collision. If sensors send information to the edge hub at the same time, messages could collide and be missed. To avoid this, the wireless M-Bus defines a first-transmission and a retransmission scheme. To achieve a probability of reception of 95%, each message must be sent at least twice within the update period (15 min). Based on the EN 13757-4:2019 specification, the first transmission time for the baseline system is defined by a uniform distribution between 0 and 300 s (5 min). The retransmission time interval, , of each message is determined using (2). The nominal transmission time () is set to 300 s, and is the access number, which must be between 0 and 255. Each sensor randomly generates a new when installed and increases it by one every 15 min, restarting when it reaches 255.
4.2.5. Development of Scenarios
4.2.6. Define KPIs
4.2.7. Simulation Model
- Transfer S-mode of the wireless M-Bus is used.
- Messages have a total size of 38B in the baseline scenario.
- Communications are unidirectional (i.e., S1 mode) from the sensors to the edge hub.
- Sensors take new measurements every 15 min.
- The only impediments to the wireless signals taken into account are the walls and floors of the buildings, assuming they are constructed of concrete. To this end, the 3D model of the PEB, depicted in Figure 14 (top view), was created in OMNeT++.
- The transmission medium model implements three models included in the INET library [43]: the free-space path loss model (FSPL), the isotropic dimensional background noise model (background noise model), and the dielectric obstacle loss model. These are implemented following the formulation described in [44]. The FSPL model + obstacles was chosen for the simulation because it provides an appropriate performance level (not too optimistic, not too pessimistic) when an empirical model is not possible [45].
4.2.8. Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
BER | Bit-Error Ratio |
BMS | Battery Management System |
DER | Distributed Energy Resources |
DSO | Distribution System Operator |
FSPL | Free-Space Path Loss |
GSM | Global System Mobile |
ICT | Information and Communication Technologies |
KER | Key Exploitable Results |
KPI | Key Performance Indicator |
MV | Medium Voltage |
OSI | Open Systems Interconnection |
PEB | Positive Energy Block |
PED | Positive Energy District |
QoS | Quality of Service |
RAM | Random Access Memory |
SD | Standard Deviation |
SGAM | Smart Grid Architecture Model |
SRA | Scalability and Replicability Analysis |
TCP | Transport Control Protocol |
UTP | Unshielded Twisted Pair |
WAN | Wide-Area Network |
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Server | Information | Frequency of Exchange | Size (B) | Modbus Function |
---|---|---|---|---|
BMS | Measurements | 1/h | 48 | 0x03 |
Alarms | 1/min | 1 | 0x01 | |
Control | 1/h | 16 | 0x10 | |
PV data logger | Measurements | 1/min | 4 | 0x03 |
Alarms | 1/min | 1 | 0x01 |
# | Topology | Distance (m) | Device Type | BER | Processing Delay (ms) |
---|---|---|---|---|---|
A1 | Star | 20 | 50–50% | 10−12 10−6 10−5 | 9 |
A2 | Star | 20 | 100–0% | 9 | |
A3 | Star | 20 | 0–100% | 9 | |
A4 | Star | 20 | 50–50% | 4.5 | |
A5 | Star | 20 | 50–50% | 13.5 | |
A6 | Star | 20 | 50–50% | 0 | |
A7 | Star | 100 | 50–50% | 10−12 | 9 |
A8 | Bus | ≤100 | 50–50% | 10−12 | 9 |
A9 | Bus | ≤100 | 100–0% | 10−12 | 9 |
A10 | Bus | ≤100 | 0–100% | 10−12 | 9 |
Scenario | Objective |
---|---|
A1-A2-A3 A8-A9-A10 | Impact of device type |
A1-A4-A5-A6 | Impact of processing delay |
A1-A7 | Impact of distance |
A1-A8 A2-A9 A3-A10 | Impact of topology |
Edge Hub | Sensors | |
---|---|---|
Standards | EN 13757-3/4:2013, and OMS 4.0.2 | EN 13757-3/4:2013, and OMS 4.0.2 |
Frequency | 868.3 and 868.95 MHz | 868.3 and 868.95 MHz |
Sensitivity | −112 dBm for S-mode | <14 dBm |
Antenna | External | Dual Internal Diversity |
# | Area (m2) | Wall Thickness (cm) | Information Size (B) | Background Noise (dBm) | Statistical Distribution |
---|---|---|---|---|---|
B1 | 2500 | 10 | 38 | −90 | Uniform |
B2 | 2500 | 10 | 19 | −90 | Uniform |
B3 | 2500 | 10 | 57 | −90 | Uniform |
B4.1 | 2500 | 10 | 38 | −70 | Uniform |
B4.2 | 2500 | 10 | 38 | −60 | Uniform |
B5 | 2500 | 10 | 38 | −90 | Gaussian |
B6 | 2500 | 10 | 19 | −90 | Gaussian |
B7 | 2500 | 10 | 57 | −90 | Gaussian |
B8 | 2500 | 20 | 38 | −90 | Uniform |
B9 | 5000 | 20 | 38 | −90 | Uniform |
B10 | 5000 | 10 | 38 | −90 | Uniform |
B11.1 | 5000 | 10 | 38 | −70 | Uniform |
B11.2 | 5000 | 10 | 38 | −60 | Uniform |
B12 | 5000 | 10 | 38 | −90 | Gaussian |
Scenario | Objective |
---|---|
B1-B2-B3 B5-B6-B7 | Impact of information size |
B1-B4 B10-B11 | Impact of background noise |
B1-B5 B2-B6 B3-B7 B10-B12 | Impact of the statistical distribution of the first-transmission time |
B1-B8 B9-B10 | Impact of wall thickness |
B1-B10 | Impact of area size |
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Rodríguez-Pérez, N.; Matanza Domingo, J.; López López, G. ICT Scalability and Replicability Analysis for Smart Grids: Methodology and Application. Energies 2024, 17, 574. https://doi.org/10.3390/en17030574
Rodríguez-Pérez N, Matanza Domingo J, López López G. ICT Scalability and Replicability Analysis for Smart Grids: Methodology and Application. Energies. 2024; 17(3):574. https://doi.org/10.3390/en17030574
Chicago/Turabian StyleRodríguez-Pérez, Néstor, Javier Matanza Domingo, and Gregorio López López. 2024. "ICT Scalability and Replicability Analysis for Smart Grids: Methodology and Application" Energies 17, no. 3: 574. https://doi.org/10.3390/en17030574
APA StyleRodríguez-Pérez, N., Matanza Domingo, J., & López López, G. (2024). ICT Scalability and Replicability Analysis for Smart Grids: Methodology and Application. Energies, 17(3), 574. https://doi.org/10.3390/en17030574