A Market-Driven Management Model for Renewable-Powered Undergrid Mini-Grids
Abstract
:1. Introduction
- How does the connection to the main-grid impact the optimal operation of a mini-grid?
- What are the most relevant uncertain parameters in the operation of an UMG?
- Does the UMG dispatch strategy impact the optimal sizing of components?
1.1. Literature Review
1.2. Contributions
- To develop a new analytical model for the market-logic-based UMG operation with its corresponding MILP formulation. In this way, through price signaling, one algorithm can incorporate the optimal management of different UMG services, including dispatch scheduling, smart curtailment in terms of reliability requirements, load shift, grid spot-pricing to manage complex distributed systems, storage management and export/import schemes from/to the unreliable main grid.
- To provide an UMG management tool when the frequency and duration of the main grid’s outages can be well predicted or programmed in advance.
- To assess the relevance of different uncertain variables including main grid’s power outages, main grid’s prices, demand, and solar irradiance.
- To compare predictive strategies based on MILP with typical dispatch strategies like load following and cycle charging from HOMER Pro.
2. Undergrid Mini-Grid Architecture and Modelling Assumptions
3. The UMG Market-Logic Operation Strategy
4. Mathematical Formulation: Undergrid Mini-Grid’s Market-Driven Unit Commitment
4.1. Objective Function
4.2. Constraints
5. Case Study
5.1. Description of Inputs
5.2. Results and Discussion
6. Comparison
6.1. Description of Inputs
6.2. Discussion
7. Conclusions and Further Developments
- (i)
- It successfully integrates the multiple elements of the undergrid mini-grid problem: diverse technologies for local generation and storage, trading energy with the grid, multiple types of demand in terms of reliability and priority, and load/generation shifts based on grid spot prices.
- (ii)
- Connecting an isolated mini-grid to the main grid impacts the optimal operation and design of the battery and diesel generation units.
- (iii)
- It performs better in terms of optimal cost reduction with respect to heuristic methodologies.
- (iv)
- It provides a policy tool for the design of retail tariffs schemes in developing countries and a management tool for countries where the main grid outages can be almost surely anticipated.
- In the deterministic model, the behaviour depends critically on the accurate forecast of uncertain variables. It provides useful insights about the importance and value of predictions and about possible strategies to handle uncertainties.
- Uncertainty is critical in general, but it depends on the sources of uncertainty. Failures of the main grid have high influence on the dispatch solution and are not easily predictable. Grid prices also have high influence on the optimal dispatch solution. Solar irradiation and demand have less influence and are more predictable. If the frequency and duration of main grid outages could be well predicted or programmed, and the grid prices agreed in advanced, the economic results of managing an UMG could improve significantly.
- The optimal sizing of components will be highly dependent on the expected scenarios and the realistic dispatch strategy to be implemented (in addition to physical and financial constraints).
- Defining different values of CNSE for the several types of demand is a simple and flexible method to implement smart curtailment policies. However, rigid CNSE values could lead to extreme solutions for reliability. To meet specific reliability targets, CNSE values could be considered independent variables at the design stage, together with the sizing of components. In real-time controllers, CNSE values could be adjusted dynamically, according to the accumulated reliability of each demand type during the considered period.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
T | Set of periods for study of t. |
Marginal cost of energy from PV [$/kWh] | |
Marginal storage energy cost [$/kWh] | |
Marginal cost of diesel [$/L] | |
Number of customers-Type A | |
Number of customers-Type B | |
Rated capacity of the DG [kW] | |
minimum allowable load on the DG [kW] | |
DG start-up cost [$] | |
Minimum running time for DG [h] | |
Minimum resting time for DG [h] | |
b | Intercept coefficient of the fuel curve |
m | Slope coefficient of the fuel curve [L/h/kW] |
Average efficiency parameter of DG | |
Maximum state of charge for BESS [kW] | |
Minimum state of charge for BESS [kW] | |
Initial state of charge for BESS [kWh] | |
Self-discharge rate of the BESS | |
Maximal BESS discharge limit [kW] | |
Minimal BESS charge limit [kW] | |
Efficiency parameter when charging BESS | |
Efficiency parameter when discharging BESS | |
Nominal Power of PV Inverter [kW] | |
Average efficiency of PV Inverter | |
Nominal Power of BESS Inverter-Rectifier [kW] | |
Average efficiency of BESS- Inverter | |
Average efficiency of rectifier | |
Maximum power flow of the Grid [kWh] | |
Minimum power flow of the Grid [kWh] | |
Load forecasting of customers of type A at t [kW] | |
Load forecasting of customers of type B at t [kW] | |
Maximum generation forecasting PV panel at t [kW] | |
FiT for exporting energy to the grid at t [$/kWh] | |
BPT for importing energy from the grid at t [$/kWh] | |
Tariff for customers of type A [$/kWh] | |
Tariff for customers of type B [$/kWh] | |
Cost of NSE for A type customers | |
Cost of NSE for B type customers | |
Penalty for NSE for A type customers | |
Penalty for NSE for B type customers | |
, Outage or Availability of the Grid at t | |
Battery Charge at time t [kW] | |
Battery Discharge at time t [kW] | |
Electricity imported from the Main Grid at time t [kW] | |
Electricity exported to the Main Grid at time t [kW] | |
Electricity output of PV at time t [kW] | |
Electricity output of DG at time t [kW] | |
State of Charge of BESS at time t [kWh] | |
Not served energy for customer A at time t [kW] | |
Not served energy for customer B at time t [kW] | |
Discharge of BESS at time t | |
Charge of BESS at time t | |
Export to the Grid at time t | |
DG is on at time t | |
DG starts to run at time t | |
DG is stopped at time t |
Appendix A
Parameter | Value | Parameter | Value |
---|---|---|---|
$/kWh | 100 kW. | ||
$/kWh | 30 kW. | ||
1 $/L | 4% per month. | ||
$/kWh | 30 kW. | ||
$/kWh | 30 kW. | ||
0 $/kWh | 95% . | ||
0 $/kWh | 95%. | ||
15 kW | 50 kWh. | ||
3 kW. | 30 kW. | ||
$. | 100%. | ||
1 h. | 33 kW. | ||
1 h. | 94%. | ||
b | L/h | 94%. | |
m | L/h/kW | 30 kWh. | |
25%. | 0 kWh. |
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Dry Season (48 h) | |||
---|---|---|---|
Scenarios | Full Grid | Unreliable Grid | Off-Grid |
Total Welfare ($) | 182 | 179 | 150 |
Operat. Costs ($) | −25 | −24 | −18 |
Total Served Demand (kWh) | 679 | 664 | 459 |
MG Generation (kWh) | 464 | 482 | 488 |
Grid Import (kWh) | 244 | 213 | 0 |
Total shortage (kWh) | 0 | 19 | 141 |
Overall reliability (%) | 100 | 96 | 69 |
Reliability of Load B (%) | 100 | 89 | 15 |
Rainy Season (48 h) | |||
---|---|---|---|
Scenarios | Full Grid | Unreliable Grid | Off-Grid |
Total Welfare ($) | 173 | 171 | 146 |
Operat. Costs ($) | −37 | −37 | −54 |
Total Served Demand (kWh) | 610 | 591 | 371 |
MG Generation (kWh) | 317 | 328 | 385 |
Grid Import (kWh) | 321 | 292 | 0 |
Total shortage (kWh) | 0 | 19 | 165 |
Overall reliability (%) | 100 | 96 | 64 |
Reliability of Load B (%) | 100 | 89 | 0 |
Dry Season–Full Grid (48 h) | ||
---|---|---|
Simulations | Homer Pro LF | Market Dispatch |
Total Welfare ($) | 136 | 143 |
Operat. Costs ($) | −43 | −35 |
Total Served Demand (kWh) | 531 | 631 |
MG Generation (kWh) | 275 | 275 |
Grid Import (kWh) | 228 | 248 |
Total shortage (kWh) | 0 | 13 |
Overall reliability (%) | 100 | 97 |
Reliability of Load B (%) | 100 | 91 |
RE fraction on MG demand (%) | 67.1 | 67.2 |
Rainy Season–Unreliable Grid (48 h) | ||
---|---|---|
Simulations | Homer Pro LF | Market Dispatch |
Total Welfare ($) | 119 | 124 |
Operat. Costs ($) | −47 | −38 |
Total Served Demand (kWh) | 481 | 577 |
MG Generation (kWh) | 249 | 197 |
Grid Import (kWh) | 196 | 248 |
Total shortage (kWh) | 1 | 22 |
Overall reliability (%) | 99.7 | 94.6 |
Reliability of Load B (%) | 99.3 | 85.7 |
RE fraction on MG demand (%) | 47.6 | 50.9 |
Dry Season—Unreliable Grid-Increased Load (48 h) | ||
---|---|---|
Simulations | Homer Pro CC | Market Dispatch |
Total Welfare ($) | 201 | 224 |
Operat. Costs ($) | −85 | −55 |
Total Served Demand (kWh) | 748 | 732 |
MG Generation (kWh) | 291 | 275 |
Grid Import (kWh) | 377 | 312 |
Total shortage (kWh) | 0 | 75 |
Overall reliability (%) | 100 | 89 |
Reliability of Load B (%) | 100 | 51 |
RE fraction on MG demand (%) | 37.6 | 46.6 |
Dry Season–Isolated MG (48 h) | |||
---|---|---|---|
Simulations | Homer PS | Market Dispatch | MD 100% Reliability |
Total Welfare ($) | 89 | 112 | 96 |
Operat. Costs ($) | −68 | −21 | −62 |
Total Served Demand (kWh) | 578 | 402 | 492 |
MG Generation (kWh) | 454 | 310 | 450 |
Grid Import (kWh) | 0 | 0 | 0 |
Total shortage (kWh) | 0 | 131 | 0 |
Overall reliability (%) | 100 | 68 | 100 |
Reliability of Load B (%) | 100 | 15 | 100 |
RE fraction on MG demand (%) | 67.1 | 98.8 | 67.2 |
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González Grandón, T.; de Cuadra García, F.; Pérez-Arriaga, I. A Market-Driven Management Model for Renewable-Powered Undergrid Mini-Grids. Energies 2021, 14, 7881. https://doi.org/10.3390/en14237881
González Grandón T, de Cuadra García F, Pérez-Arriaga I. A Market-Driven Management Model for Renewable-Powered Undergrid Mini-Grids. Energies. 2021; 14(23):7881. https://doi.org/10.3390/en14237881
Chicago/Turabian StyleGonzález Grandón, Tatiana, Fernando de Cuadra García, and Ignacio Pérez-Arriaga. 2021. "A Market-Driven Management Model for Renewable-Powered Undergrid Mini-Grids" Energies 14, no. 23: 7881. https://doi.org/10.3390/en14237881
APA StyleGonzález Grandón, T., de Cuadra García, F., & Pérez-Arriaga, I. (2021). A Market-Driven Management Model for Renewable-Powered Undergrid Mini-Grids. Energies, 14(23), 7881. https://doi.org/10.3390/en14237881