Active System Management Approach for Flexibility Services to the Greek Transmission and Distribution System
Abstract
:1. Introduction
- Definition of a common market design for Europe: this means standardized products and key parameters for grid services, which aim for the coordination of all actors, from grid operators to customers.
- Definition of a common IT architecture and common IT interfaces: this means not trying to create a single IT platform for all products, but enabling an open architecture of interactions among several platforms so that anybody can join any market across Europe.
- Large-scale demonstrators to implement and showcase the scalable solutions developed throughout the project. These demonstrators are organized in four clusters, including countries in every region of Europe and testing innovative use cases never validated before.
1.1. Scope of the Southern Cluster Demonstrator
1.2. Electricity Market Status in Greece
2. Description of the Platforms, Requirements and Scenarios in the Pilot Projects for Flexibility Services to the Greek Transmission and Distribution System
2.1. F-Channel Approach
2.2. Active System Management (ASM) Approach and Regulatory Framework
- (a)
- Frequency ancillary services (mainly for balancing).
- (b)
- Services for congestion management.
- (c)
- Non-frequency ancillary services, such as voltage control and grid restoration, among others.
- (a)
- Article 32.1 of Electricity directive (CEP), DIRECTIVE (EU) 2019/944 [5].
- (b)
- System Operation Guidelines (SOGL) [9].
- (c)
- Electricity Balancing Guideline (EBGL) [8].
- (d)
- Guideline on Capacity Allocation and Congestion Management (CACM) [10].
- (e)
- Network Code on Requirements for Generators (RfG NC) [35].
- (f)
- Demand Connection NC [36].
2.3. Proposed System Layout and Architecture
- A similar computing engine will be developed for grid analysis and calculation purposes. Regarding data storage, databases and storage accounts are required. Allocated computing resources shall be split into two groups: continuously and per computation/transaction allocation. Power grids, as well as any necessary market data, will be stored on the dedicated protected server, physically located in Energo Info Group (EIG) premises or another partner’s premises, upon agreement. However, power system analysis calculation would still be performed on the server engines l, making the app very fast and of a light capacity at the same time.
- The calculation engine will be robust enough to handle transmission, distribution and any customized microgrid topology with its calculations.
- The database is to be structured in a traditional RDBM rational model. A geographical component-spatial will be implemented, since main datasets are geographically oriented. This provides easier representation, aggregation and query of all datasets. Display of geospatial data is to be provided by developed middleware supporting web map services (WMS) and web feature services (WFS).
- Special care is addressed to the security of server infrastructure. Server access codes to the development environment shall be encrypted with secure shell (SSH) keys. Furthermore, access shall be restricted to specified IP address ranges. Access to the web app on the user side is to be limited to verified accounts created by an administrator.
2.4. AI Algorithms and Methods
2.5. Distribution and Microgrid Points of Interest (POIs)
2.6. Data Requirements
2.6.1. Network Models Data
2.6.2. Geospatial Data
- Substations (GPS coordinates describing the SS area).
- Wind parks (GPS coordinates describing the WPP area).
- Solar parks (GPS coordinates describing the SPP area).
- 400 kV HVAC lines (GPS coordinates of at least the starting and ending point of a line).
- 150 kV HVAC lines (GPS coordinates of at least the starting and ending point of a line),
- 20 kV HVAC lines (GPS coordinates of at least the starting and ending point of a line),
- HVDC lines and cables of interest (GPS coordinates of at least the starting and ending point of a line).
- GPS points for OHLs and cables, including the start and endpoint, together with the corresponding substation names. It is necessary to indicate if the circuit is single or double, and if parallel lines are connecting the same POIs. Conductor type and characteristics (diameter, weight and rated ampacity), as well as the type of conductor bundle arrangement (2-bundle, 3-bundle, etc.).
- GPS points for substations that define the endpoints of the substation surface, describing the surface of the plant.
- GPS coordinates of each WP tower of the analyzed wind parks.
- GPS coordinates of each OHL tower (or preselected number of towers) of the analyzed OHL.
- List of proposed interconnection lines (TSOs).
2.6.3. Technical Data for Wind Turbines and PV Parks
- For each turbine: the turbine type, longitude, latitude, altitude, rotor diameter, tower height, rotor height, A-factor, form factor c, annual average wind speed, vertical average shear component, extreme wind speed (10 min average), survival wind speed (3 s average), automatic stop limit (10 min average), rated power, rotor speed, rated wind speed (30 s average), cut in wind speed (3 s average), cut out wind speed (10 min average), restart wind speed (10 min average), power curves.
- For each section of PV panels in solar parks: longitude, latitude, altitude, power conversion factor, tracking or static panels, panel’s tilt angle.
- For selected overhead lines: longitude, latitude, altitude, tower type, tower total height and wire height. Additionally, it is important to provide the overhead line route cross-section (in PDF preferably) for the OHLs that will be covered by novel forecasting.
- For proposed critical lines (DSOs and TSOs): the names of the two substations they connect, the voltage level, the number of circuits and the parallel OHL index.
- For all VRE production units (DSOs and TSOs): longitude, latitude, altitude, voltage level and installed capacity.
2.6.4. Historic Energy Data
- Historic production data for wind and solar for each of the concerned plants: hourly production for the last 10 years (or any other available period).
- Historic energy data for consumption (for defined SSs): hourly consumption for the last 10 years (or any other available period).
2.6.5. Historic Weather Data
2.6.6. Copernicus Climate Change Service Reanalysis Data
- Pressure/wind speed 10 m
- Pressure/wind speed 100 m
- Pressure/wind
- Clouds
- Convective clouds
- Low clouds
- Rain
- Temperature
- Soil temperature
- 500 hPa temperature
- 850 mb temperature
- Visibility
- Soil wetness
- Snow
- Snow depth
- Rain/snow
- Daily precipitation (acc)
- Daily snow (acc)
- 700 hPa temperature
- 500 hPa wind
- Solar radiation
2.6.7. Energy Policy Information
3. Business Use Case, Products and KPIs of the Southern Cluster
3.1. Business Use Case and KPIs for the F-Channel Demonstration in Greece
3.2. Description of the Business Use Case
- Frequency stability.
- Load flow and contingency monitoring and predictions.
- Predictive congestion management for maintaining secure and stable power system operation.
- Cost-effective operation of the system.
- Early warning on a hazardous power system regime.
- Better flexibility service providers (FSPs), planning and managing flexibility resources.
- Better energy predictions and power system state predictions.
- Improved identification of the available flexibility resources on all power system levels.
- Improved prediction of the system flexibility needs.
- Improved identification of the available flexibility resources.
- Improved prediction of the system flexibility needs.
- Improved system-oriented predictions and forecasting efficiency, which will limit the volume of flexibility needs.
- Identification of the flexibility resources to procure grid services, and
- Better FSPs planning and managing flexibility resources.
- Identification of the available flexibility resources from DSO and microgrid voltage levels.
- DSO, DG and microgrid POI management (point of interest updates, technical data, historic data, forecasted data, etc.).
- Change view–different aggregation level simulations. Energy predictions and system state predictions for different aggregation levels of the DSO grid and local microgrid: unit level (distributed generation unit, OHL tower/section), plant level (solar park, wind park, OHL, substation), local microgrid level (part of the DSO grid), DSO/TSO grid level calculations).
- Improved congestion management process on TSO and RSC side (improved short-term forecasts, contingency analysis and capacity calculations through the utilization of the information from DSO and/or local microgrid operator).
- Improved frequency control on the TSO side.
- Improved voltage control on the DSO and TSO side.
- Improved system adequacy on the DSO and TSO side.
- Improved islanded operation on the DSO and TSO side.
- Makes a forecast of potential flexibility resources.
- Exchanges information about potential flexibility resources.
- Informs potential flexibility resources.
- Optimizes portfolio.
- Defines the prequalification requirements.
- Sends the prequalification requirements.
- FSP notifies that he is interested in providing flexibility services.
- Sends the prequalification requirements.
- Forwards the fulfilled prequalification requirements.
- Valuation of the product and grid prequalification requirements.
- Requests additional prequalification information.
- Sends additional prequalification information.
- Accepts/rejects registration on market.
- Notifies of prequalification result.
- Makes a forecast of possible congestion areas.
- Exchanges information about possible congestion areas.
- Informs possible congestion areas.
- Publishes the possible congestion areas.
- Optimizes portfolio.
- Makes a forecast of the grid status.
- Checks power flows.
- Detects possible congestions.
- System reconfiguration.
- Assesses the amount of flexibility required.
- Exchanges information about the amount of flexibility required.
- Offers active power flexibility products.
- Informs the amount of flexibility required.
- Capacity bids selection.
- Selects the bids that may be a solution.
- Sends the capacity bids.
- Technical evaluation of the bids.
- Accepts bids.
- Sorts the bids by a merit order list.
- Sends the accepted/rejected capacity bids.
- Notifies the result and, if accepted, commits the FSP to make bid available on the ST market.
- Selects the bids that may be a solution.
- Sends the bids.
- Technical evaluation of the bids.
- Accepts bids.
- Sorts the bids by a merit order list.
- Sends the accepted/rejected bids.
- Checks the location of the bids.
- Notifies the result and, if accepted, commits the FSP to make bid available on the ST market.
- Sends the information of the bid.
- Evaluates grid constraints.
- Accepts/rejects bid.
- Notifies the result and, if accepted, commits the FSP to make bid available on the ST market.
- Sharing of accepted bids.
- Checks grid constrains.
- Informs what bids can or cannot be activated.
- Allowing/not allowing bid activation.
- Informs the result.
- Informs the activation of the bid.
3.3. Scenarios to Be Tested in the Greek Demo
3.3.1. Scenario 1: Contingency Identification and Mitigation
3.3.2. Scenario 2: Coordinated Voltage Control
3.3.3. Scenario 3: Improved Power Regulation through mFRR and RR
3.4. Relation to Other Use Cases
3.4.1. SUC 1: Identification of the Available Flexibility Resources from DSO and Microgrid Voltage Levels
- Frequency stability.
- Cost-effective operation of the system.
- Better FSPs planning and managing flexibility resources.
- Better energy predictions and power system state predictions.
- Improved identification of the available flexibility resources on all power system levels.
- Improved prediction of the system flexibility needs.
3.4.2. SUC 2: DSO, DG and Micro-Grid POI Management
- Frequency stability.
- Load flow and contingency monitoring and predictions.
- Predictive congestion management for maintaining secure and stable power system operations.
- Cost-effective operation of the system.
- Early warning on a hazardous power system regime.
- Better FSP planning and managing flexibility resources.
- Better energy predictions and power system state predictions
- Improved identification of the available flexibility resources on all power system levels.
- Improved prediction of the system flexibility needs.
3.4.3. SUC 3: Change View–Different Aggregation Level Simulations
- Frequency stability.
- Load flow and contingency monitoring and predictions.
- Predictive congestion management for maintaining secure and stable power system operation.
- Cost-effective operation of the system.
- Early warning on a hazardous power system regime.
- Better FSP planning and managing flexibility resources.
- Better energy predictions and power system state predictions.
- Improved identification of the available flexibility resources on all power system levels.
- Improved prediction of the system flexibility needs.
3.4.4. SUC 4: Improved Congestion Management Process on TSO and RSC Side
- Frequency stability.
- Load flow and contingency monitoring and predictions.
- Predictive congestion management for maintaining secure and stable power system operation.
- Cost-effective operation of the system.
- Early warning on a hazardous power system regime.
- Better FSP planning and managing flexibility resources.
- Better energy predictions and power system state predictions.
- Improved identification of the available flexibility resources on all power system levels.
- Improved prediction of the system flexibility needs.
- Improved frequency control on the TSO side.
- Improved Voltage control on the DSO and TSO side.
- Improved System adequacy on the DSO and TSO side.
- Improved Islanded operation on the DSO and TSO side.
3.5. Products
4. Implementation Plan for the Southern Cluster Demos and Connection with OneNet Architecture
4.1. Implementation Plan for the F-Channel Platform Demonstration in the Hellenic TSO–DSO-Consumer Value Chain
- First, data collection survey.
- Identification of DSO, TSO, microgrid and DER POIs in Greece (Peloponnese and Crete).
- Second data collection survey: description of existing practice, standards, methodologies and software tools currently used.
- BUCs and SUCs mapping, preliminary list of actors, products and services covered.
- Requirements and system specifications.
- System architecture.
- Necessary resources.
- GIT repository.
- Python development environment.
- Setting up the dedicated and allocated storage resources (Linux server, MySQL/Maria DB).
- Data Base development.
- App GUI development.
- AI algorithms and methods.
- Development of the cloud calculation engines.
- Connection with the external clients.
- Phase 1: Analysis of the predefined POIs through predefined set of Scenarios and cases to be analyzed.
- Phase 2: Benchmark with the existing tools and practice in TSOs and DSOs.
- Phase 3: Evaluation by aggregators, suppliers, consumers, system operators.
- All the solar parks in Peloponnese with installed power, greater than 2 MW.
- All the 50 substations in Peloponnese (in the case of 28 substations both loads alongside RES productions, are connected; while in the remaining 22 stations, only RES productions are connected).
- All the wind parks in Peloponnese.
- From the IPTO point of view, there are two potentially critical lines in the region of Peloponnese. In particular, the first POI is the OHL that connects Korinthos and Megalopoli substations, as it is a critical line concerning congestion issues. Undoubtedly, the interconnection line between Peloponnese and Crete is another POI. The aforementioned interconnection is between the regions of Sklavouna-Neapoli and Chania.
4.2. Connection with OneNet Architecture
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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SUC | Product/s Involved |
---|---|
Improved congestion management process on the TSO and RSC side (improved short-term forecasts, contingency analysis and capacity calculations through utilization of the information from DSOs and/or local microgrid operators) | Predictive congestion management for the TSO/DSO product |
Improved frequency control on the TSO side | Power regulation through mFRR and RR–active power product |
Improved voltage control on the DSO and TSO side | Reactive power support product |
Identification of the available flexibility resources from DSO and microgrid voltage levels | Predictive congestion management for the TSO/DSO product Power regulation through mFRR and RR–active power product Reactive power support product |
DSO, DG and microgrid POI management (point of interest updates, technical data, historic data, forecasted data, etc.). | N/A |
Change view–different aggregation level simulations (energy predictions and system state predictions for different aggregation levels of DSO grid and local microgrid): unit level (distributed generation unit, OHL tower/section), plant level (solar park, wind park, OHL, substation), local microgrid level (part of the DSO grid), DSO/TSO grid level calculations | N/A |
Name | Reference to Mentioned Use Case Objectives |
---|---|
Energy production prediction error |
|
Load prediction error |
|
Load flow prediction error |
|
Capacity prediction error |
|
Transmission losses prediction error |
|
Contingency identification rate |
|
Early warning on hazardous power system regimes rate |
|
Scenario | Scenario Description | Primary Actor | Triggering Event | Pre-Condition | Post-Condition |
---|---|---|---|---|---|
Contingency identification and mitigation | Potential contingencies are identified up front (predicted) in the distribution and transmission grids via improved power system state prediction tools. The flexible resources are coordinated by the DSO and TSO to provide active power regulation services in order to relieve the local contingency of the grid. The flexible resources participating in this scenario were already awarded by the market (declaring their availability through bids), and their bids were pre-qualified by the DSO or TSO in order to participate to the predictive short-term local active product. | -FSP (energy storage, PVs) -Aggregators -Prosumers -DSOs -TSOs | Predicted contingency in the DSO or TSO grid. | High-resolution NWP with the extended geographical coverage and look into the future. Available DSO and TSO voltage level forecasted grid models. | Flexible resources will increase or decrease their active power output to shift an amount of energy to resolve contingency in the distribution or transmission grid. |
Coordinated voltage control | Potential overvoltage or undervoltage severe states are identified, predicted up front. These are the states that can endanger overall power system voltage stability. In case of voltage instability, the DSO will coordinate the flexible resources to provide reactive power flexibility. The flexible resources participating in this scenario were already awarded by the market (declaring their availability through bids), and their bids have been pre-qualified by the DSO in order to participate to the reactive power compensation. It is also possible to use the reactive power from a TSO level through the interconnection transformers with the TAP change possibility. | -FSP (energy storage, PVs) -Aggregators -Prosumers -DSOs -TSOs | Predicted overvoltage or undervoltage severe states in the DSO or TSO grid. | In the occurrence of a predicted overvoltage or under-voltage severe state that can endanger overall power system voltage stability. Provide/absorb of a certain amount of MVarh in specific timeframes in local distribution grid through optimized coordinated tap change control on TSO–DSO interface, through an improved forecasts of the power system state on both TSO and DSO voltage levels. It can be used to regulate voltage and reduce energy losses in the distribution grid and is linked with the voltage control. The reactive support product will be automatically activated, and the flexibility resource will provide reactive compensation to the distribution grid when needed. The activation time could be from 15 min to 1 h. | |
Improved power regulation through mFRR and RR | Provide identification of flexibility resources (primary, secondary and available tertiary reserve) more precisely, as well as the identification of the flexibility needs in a more precise manner and longer time period than is being done today. The activation time could be from 15 min to 1 h. | -FSP (energy storage, PVs) -Aggregators -Prosumers -TSO | Predicted available reserves in the DSO or TSO grid | High-resolution NWP with the extended geographical coverage and look into the future. Available DSO and TSO voltage level forecasted grid models. | Flexible resources will increase or decrease their active power output in order to support the frequency stability. |
Step No | Event | Name of Process/Activity | Description of Process/Activity | Service | Information Producer (Actor) | Information Receiver (Actor) |
---|---|---|---|---|---|---|
1.1 | Weather predictions | Trigger of the scenario | Unit inside the TSO/DSO, or contracted outsourced weather forecast provider company responsible for weather forecasts for selected weather parameters and selected locations in the grid is providing us with the high-resolution NWP. | CREATE | Weather forecast provider | TSO, DSO short term planning departments |
1.2 | Energy predictions | Calculation of energy production and consumption | DSO/TSO Short term planning department production forecasting operator is responsible for wind, solar and hydro, short term, mid-term and long-term production forecasts, later on used for TSO level modelling under F-channel platform coordination: individual grid model (IGM) updates, DACF 1 and 2DACF 2 procedures, contingency analysis and capacity calculations. | CREATE | Production and Load forecasting operator in DSO and TSO | IGM model operators |
1.3 | IGM updates | Updating the INDIVIDUAL Grid Models | TSO/DSO short term planning department Expert/s responsible for development, maintenance and regular updates of an individual grid model, containing: consumption nodes (active and reactive power), production nodes (active power and voltage set), overall voltage profile, assumed power exchanges with the neighbouring systems. IGM models are further used by DACF, 2DACF and ATC calculator for further simulations, calculations and analysis. | CREATE | IGM model operators | DACF and 2DACF operators in TSO and DSO |
1.4 | Contingency predictions | Contingency analysis and identification of the problems in the system | An expert from TSO/DSO short term planning department, responsible for day-ahead congestion forecast simulation and analysis which, as an output, gives the list of critical elements and critical outages with the list of possible mitigation measures. If the DACF is performed by a national TSO, an analyzed system is usually only a national power system and first neighboring systems. Based on energy production and consumption predictions, grid simulation models are formed in order to be able to perform contingency analysis and identify potential contingencies in the grid. | REPORT | DACF and 2DACF operators in TSO and DSO | Power system control expert (TSO/DSO) |
1.5 | Mitigation measure identification | Identification of the list of potential mitigation measures | An expert from TSO/DSO short term planning department, responsible for day-ahead congestion forecast simulation and analysis which, as an output gives, the list of possible mitigation measures. | REPORT | DACF and 2DACF operators in TSO and DSO | Power system control expert (TSO/DSO) |
1.6 | FSP response | Evaluation of the available responsiveness of the flexible resources | Monitoring of the responsiveness of the flexible resources by the TSO and DSO in order to evaluate whether the flexible resources have the proper response to the event. The evaluation report is provided to the market operator. | EXECUTE | TSO and DSO, FSPs | Market operator |
Step No | Event | Name of Process/Activity | Description of Process/Activity | Service | Information Producer (Actor) | Information Receiver (Actor) |
---|---|---|---|---|---|---|
2.1 | Weather predictions | Trigger of the scenario | Unit inside the TSO/DSO, or contracted outsourced weather forecast provider company responsible for weather forecasts for selected weather parameters and selected locations in the grid is providing us with the high-resolution NWP. | CREATE | Weather forecast provider | TSO, DSO short term planning departments |
2.2 | Energy predictions | Calculation of energy production and consumption | DSO/TSO short-term planning department production forecasting operator is responsible for wind, solar and hydro, short term, mid-term and long-term production forecasts, later on used for TSO level modelling under F-channel platform coordination: IGM updates, DACF and 2DACF procedures, contingency analysis and capacity calculations. | CREATE | Production and load forecasting operator in DSO and TSO | IGM model operators |
2.3 | IGM updates | Updating the INDIVIDUAL Grid Models | TSO/DSO short-term planning department Expert/s responsible for development, maintenance and regular updates of an individual grid model containing: consumption nodes (active and reactive power), production nodes (active power and voltage set), overall voltage profile, assumed power exchanges with the neighboring systems. IGM models are further used by DACF, 2DACF and ATC calculator for further simulations, calculations and analysis. | CREATE | IGM model operators | DACF and 2DACF operators in TSO and DSO |
2.4 | Voltage condition prediction | Load flow and voltage profile calculation | Voltage profile for all power system substations that are in operation. | REPORT | DACF and 2DACF operators in TSO and DSO | Power system control expert (TSO/DSO) |
2.5 | Mitigation measure identification | Identification of the list of potential mitigation measures | Identification of FSPs that can contribute to the resolution of the identified over or undervoltage in the system. | REPORT | DACF and 2DACF operators in TSO and DSO | Power system control expert (TSO/DSO) |
2.6 | Provision of reactive power flexibility services | Maintain proper and efficient grid operation | The flexible resources regulate their reactive power injection to the grid to relieve congestion, improve voltage stability and power factor, and symmetrize the grid loading condition. These services are provided according to the DSO coordination set points. The provision of the services is reported back to the DSO. | EXECUTE | FSP, Aggregator, Prosumer | DSO |
Step No | Event | Name of Process/Activity | Description of Process/Activity | Service | Information Producer (Actor) | Information Receiver (Actor) |
---|---|---|---|---|---|---|
3.1 | Weather predictions | Trigger of the scenario | Unit inside the TSO/DSO, or contracted outsourced weather forecast provider company responsible for weather forecasts for selected weather parameters and selected locations in the grid is providing us with the high-resolution NWP. | CREATE | Weather forecast provider | TSO, DSO short term planning departments |
3.2 | Energy predictions | Calculation of energy production and consumption | DSO/TSO Short term planning department production forecasting operator is responsible for wind, solar and hydro, short-term, mid-term and long-term production forecasts, later on used for TSO level modelling under F-channel platform coordination: IGM updates, DACF and 2DACF procedures, Contingency Analysis and Capacity Calculations. | CREATE | Production and Load forecasting operator in DSO and TSO | TSO (transmission monitoring system) |
3.3 | mFRR and RR activation necessary | Trigger of the scenario | TSO needs to activate secondary or tertiary reserve in order to maintain the frequency in the system and maintain the active power exchange on its borders like scheduled. | CREATE | TSO (transmission monitoring system) | TSO, FSP, Aggregator, Prosumer |
3.4 | Active power support | Provision of active power support | The flexible resources (FSP, aggregators, prosumers) provide active power support to the system. The flexible resources report to the TSO and DSO their activation. | EXECUTE | FSP, Aggregator, Prosumer | TSO and DSO |
3.5 | Supervision of the active power support product | Evaluation of the proper responsiveness of the flexible resources | Monitoring of the responsiveness of the flexible resources by the TSO and DSO in order to evaluate whether the flexible resources have the proper response to the event. The evaluation report is provided to the market operator. | REPORT | TSO and DSO | Market operator |
Name | Reference to Mentioned Use Case Objectives |
---|---|
Energy production prediction error |
|
Load prediction error |
|
Name | Reference to Mentioned Use Case Objectives |
---|---|
Energy production prediction error for the selected domain |
|
Load prediction error for the selected domain |
|
Load flow prediction error for the selected domain |
|
Capacity prediction error for the selected domain |
|
Transmission losses prediction error for the selected domain |
|
Contingency identification rate for the selected domain |
|
Early warning on a hazardous power system regimes rate for the selected domain |
|
Name | Reference to Mentioned Use Case Objectives |
---|---|
Load flow prediction error |
|
Capacity prediction error |
|
Transmission losses prediction error |
|
Contingency identification rate |
|
Early warning on a hazardous power system regimes rate |
|
Products Proposed by Greek Demo | Description | Harmonized Products |
---|---|---|
Reactive support | Provide/absorb a certain amount MVarh in specific timeframes in the local distribution grid through optimized coordinated tap change control on the TSO–DSO interface. It can be used to regulate voltage and reduce energy losses in the distribution grid and is linked with voltage control. The reactive support product will be automatically activated, and the flexibility resource will provide reactive compensation to the distribution grid when needed. | Corrective local reactive |
Predictive congestion management for TSO/DSO product | For a situation where forecasted or realized power flows violate the thermal limits of the elements of the grid and voltage stability or the angle stability limits of the power system. [Predictive] For congestions that are forecastable (e.g., redispatch, countertrading as well as the use of active power flexibility) grid- or market-related measures can be procured. | Predictive short-term local active |
Power regulation mFRR | Provide identification of flexibility resources (secondary and available tertiary reserve) more precisely, as well as identification of the flexibility needs in a more precise manner and over longer time period than is being done today. | mFRR |
Power regulation RR | Provide identification of flexibility resources (secondary and available tertiary reserve) more precisely, as well as identification of the flexibility needs in a more precise manner and longer time horizon than it is being done today. | RR |
Severe state prevention/restoration product | Provide improved identification of severe system states and contingencies that can cause severe system states in a more precise manner and longer time horizon than it is being done today together with the improved identification of flexibility resources, as well as improved identification of the flexibility needs. | Predictive long-term local active |
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Sijakovic, N.; Terzic, A.; Fotis, G.; Mentis, I.; Zafeiropoulou, M.; Maris, T.I.; Zoulias, E.; Elias, C.; Ristic, V.; Vita, V. Active System Management Approach for Flexibility Services to the Greek Transmission and Distribution System. Energies 2022, 15, 6134. https://doi.org/10.3390/en15176134
Sijakovic N, Terzic A, Fotis G, Mentis I, Zafeiropoulou M, Maris TI, Zoulias E, Elias C, Ristic V, Vita V. Active System Management Approach for Flexibility Services to the Greek Transmission and Distribution System. Energies. 2022; 15(17):6134. https://doi.org/10.3390/en15176134
Chicago/Turabian StyleSijakovic, Nenad, Aleksandar Terzic, Georgios Fotis, Ioannis Mentis, Magda Zafeiropoulou, Theodoros I. Maris, Emmanouil Zoulias, Charalambos Elias, Vladan Ristic, and Vasiliki Vita. 2022. "Active System Management Approach for Flexibility Services to the Greek Transmission and Distribution System" Energies 15, no. 17: 6134. https://doi.org/10.3390/en15176134
APA StyleSijakovic, N., Terzic, A., Fotis, G., Mentis, I., Zafeiropoulou, M., Maris, T. I., Zoulias, E., Elias, C., Ristic, V., & Vita, V. (2022). Active System Management Approach for Flexibility Services to the Greek Transmission and Distribution System. Energies, 15(17), 6134. https://doi.org/10.3390/en15176134