A Decision Support System Tool to Manage the Flexibility in Renewable Energy-Based Power Systems
Abstract
:1. Introduction
2. The PLANET Solution: System Architecture
- The user interface and orchestration module: the Integrated Decision Support System and Orchestration Cockpit (IDOC) component;
- Energy Demand, Supply, and Asset (P2G, P2H, VES) modules;
- The optimization module: District-level Storage/Conversion Coordination Engine (SCCE) module;
- The Grid Simulation component.
2.1. The PLANET DSS ICT Tool
2.1.1. PLANET Middleware
- it is currently used to set up simulators as devices, in such a way that the operator is able to select between different simulator providers. After its configuration, the middleware routes the simulation control commands from the PLANET IDOC (web-app UI) to the preconfigured simulator;
- in the next PLANET prototype, it will be used to route the communications between the central simulator that calculates the power flow of the grid section under investigation and the remote simulators that model the operation of the P2X and VES units, that is, it will a) transmit flexibility information from the unit models to the central simulator and b) receive unit operating points from the SCCE. Once this has been achieved, the “co-simulation” scenarios that implement an envisioned real-world system operation will be tested and evaluated.
2.1.2. Backend Orchestration Scripts
- scripts that can be used to retrieve topology information about the grid and the energy resources connected to the grid nodes. This information is created by the user, via the IDOC UI, and the scripts translate these parameters into properly structured files (JavaScript Object Notation JSON) that are then used by the simulator;
- scripts that can be used to retrieve uncontrollable electricity and heat demands and formulate them according to the simulation time-step and horizon that the user selects via the UI. These files are currently stored statically in the backend of the platform. This information is supposed to be provided by the Distribution System Operators of electric and heat networks (DSO-e, DSO-h). For the grid-planning use of the PLANET system, this information comes from historical measurements covering a timespan of one year. It has been envisioned that for the operational use, these files will be dynamically created, as outputs of the load (heat and electricity) forecasting algorithms that the DSOs employ;
- scripts that can be used to retrieve meteorological, photovoltaic (PV), and Wind turbine generation data utilizing the renewable.ninja service [30] according to the location chosen by the user. The scripts retrieve the physical and operating characteristics of the PV and wind turbines that may be connected to the electric branch nodes and create the request according to the appropriate structure dictated by the renewables.ninja Application Program Interface (API). The results are then stored in the PLANET DB for use by the simulator. The RES parameters and their connection nodes are specified by the user, via the IDOC UI, as part of the simulation scenario creation process;
- scripts that can be used to retrieve simulation results and (a) present them to the user via visualizations and charts and (b) store them in the PLANET MongoDB database. Other scripts that fall into the same category are the ones that handle the comparison of results from two or more previously executed simulations.
2.1.3. Frontend Web User Interface
- scenario creator: in this UI section, the user is able to create a simulation scenario in a step-by-step manner so as to avoid overloading the user. The scenario includes the name, description, the selection of the electric grid template from those already stored in the system (provided by the DSOs), the adding, editing, and deleting of renewables, loads, and flexibility units at each grid node, the editing of the properties of each of the aforementioned technologies, and the adding of economic parameters regarding the CAPEX and OPEX of the units, as well as emissions-related costs;
- simulation execution: in this section, the user is able to select a previously created scenario and instruct the remote simulator to execute it. This is done via the previously mentioned backend scripts. After the simulation has been performed, the results are visualized for the user. The results include energy flows between the energy networks, the power timeseries values and energy values over the entire simulation horizon, economic results (e.g., Levelized Cost of Electricity (LCOE)), carbon dioxide (CO2) emissions, and the Simple Payback period (SP) of the technologies;
- simulation comparison: in this section, the user is able to select two or more previously run simulations and compare the results.
3. Flexibility in the PLANET Architecture
- pure load units (e.g., Electric vehicle charging stations [33]) can provide positive and negative flexibility by increasing/decreasing their electric load;
- energy storage systems can offer positive flexibility by absorbing energy from the grid or negative flexibility by releasing stored energy [34];
- energy conversion units (P2G, P2H) can offer both positive and negative flexibility by modifying their operation set-points [35];
- generation units (e.g., Combined Heat and Power CHP) can increase/decrease the power introduced into the network and they therefore offer flexibility [36];
- [MWh] is the internal storage capacity (, for a non-buffered unit);
- is the normalized State of Charge;
- [MW] is the electric consumption of the device and is the charging/conversion efficiency;
- [MW] is the electric generation of the device and is its efficiency;
- [MW] is the energy flow that exits the system ( e.g., Synthetic Natural Gas SNG, heat) or the energy flow that enters into the system (, e.g., Natural Gas NG, wind energy) by the device;
- [MW] represents an unserved load (, e.g., demand curtailment) or an enforced energy loss (, e.g., RES curtailment);
- [MW] is the energy storage loss.
4. Use Case Development
4.1. The Analyzed Scenario
4.2. P2G Flexibility and the Objective Function
5. Results and Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Grid Node | Electric Peak Load [MW] | PV Nominal Power [MW] | CHP -Nominal Power [MW] | P2G-Nominal Power [MW] |
---|---|---|---|---|
1 | 0.3 | 1.0 | - | - |
2 | 0.2 | 2.0 | - | 1.5 |
3 | 0.5 | - | - | - |
4 | 0.5 | 1.0 | 0.4 | - |
5 | 0.4 | 2.0 | - | - |
6 | 0.2 | 1.0 | - | - |
7 | 0.3 | 1.0 | - | - |
8 | 0.6 | - | 0.3 | - |
tot | 3.0 | 8.0 | 0.7 | 1.5 |
Parameter | Value | Unit |
---|---|---|
Time horizon | 1 | years |
Location | Turin | - |
Time step | 60 | minutes |
DH heat peak power | 6.0 | MW |
G2H nominal power | 6.0 | MW |
Electrolysis efficiency [42] | 0.75 | - |
Methanation efficiency [42] | 0.80 | - |
CHP electric efficiency [13] | 0.40 | - |
CHP thermal efficiency [13] | 0.45 | - |
P2G CAPEX 1 [43] | 750–1550 | €/kWe |
P2G OPEX 2 [43] | 4.0 | % CAPEX |
P2G Lifetime [43] | 25 | years |
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Badami, M.; Fambri, G.; Mancò, S.; Martino, M.; Damousis, I.G.; Agtzidis, D.; Tzovaras, D. A Decision Support System Tool to Manage the Flexibility in Renewable Energy-Based Power Systems. Energies 2020, 13, 153. https://doi.org/10.3390/en13010153
Badami M, Fambri G, Mancò S, Martino M, Damousis IG, Agtzidis D, Tzovaras D. A Decision Support System Tool to Manage the Flexibility in Renewable Energy-Based Power Systems. Energies. 2020; 13(1):153. https://doi.org/10.3390/en13010153
Chicago/Turabian StyleBadami, Marco, Gabriele Fambri, Salvatore Mancò, Mariapia Martino, Ioannis G. Damousis, Dimitrios Agtzidis, and Dimitrios Tzovaras. 2020. "A Decision Support System Tool to Manage the Flexibility in Renewable Energy-Based Power Systems" Energies 13, no. 1: 153. https://doi.org/10.3390/en13010153
APA StyleBadami, M., Fambri, G., Mancò, S., Martino, M., Damousis, I. G., Agtzidis, D., & Tzovaras, D. (2020). A Decision Support System Tool to Manage the Flexibility in Renewable Energy-Based Power Systems. Energies, 13(1), 153. https://doi.org/10.3390/en13010153