An Overview of Probabilistic Dimensioning of Frequency Restoration Reserves with a Focus on the Greek Electricity Market
Abstract
:1. Introduction
1.1. Context
1.2. Reserve Dimensioning Methods
1.2.1. Heuristic Reserve Sizing
1.2.2. Probabilistic Methods
1.2.3. Bottom-Up Unit Commitment/Economic Dispatch Models
1.3. The Taxonomy of Reserve Dimensioning
- Sizing methodology: The sizing methodology refers to how the decision-making problem of sizing reserves is quantified. The three predominant approaches in this respect that were listed in Section 1.2 are heuristic methods, probabilistic methods, and bottom-up unit commitment and economic dispatch models.
- Adaptiveness: Adaptiveness refers to whether the sizing methodology is adaptive to the forecast conditions of the system or not. Two options in this respect are static sizing and dynamic sizing.
- Stochastic models: This dimension refers to the way in which uncertainty is modeled. Two options are possible among stochastic models: parametric or non-parametric.
1.4. Contributions and Outline of the Paper
2. Sizing Methodology in the Greek Electricity Market
2.1. Sizing before the Target Model
2.2. Target Model Methodology
- The minimum FRR requirement (which in itself is a function of maximum load in the system);
- A constant corresponding to the technical minimum of a typical thermal unit (meant to capture the possibility that a unit is asked to turn on but fails to do so);
- The scheduled interchange;
- The scheduled demand.
- Upward/downward aFRR;
- Renewable forecasts;
- Demand ramps;
- Scheduled interchanges;
- An indicator for extreme conditions (indicatively, unfavorable weather, large renewable forecast deviations, reduced adequacy, contingencies, strikes, reduced fuel reserves for thermal units, low hydro energy levels, or a combination of the above).
3. Model of Imbalances in the Greek System
3.1. Modeling Imbalances
- Load data with hourly resolution from 1 January 2018 until 31 October 2020, thereby spanning 2 years and 10 months (namely, 1035 days).
- Renewable energy supply data with the same characteristics.
- Import/export data with the same characteristics.
- Imbalances are driven by both contingencies and “normal” imbalance drivers, such as forecast errors.
- Imbalances can be explained by a number of factors in the system, such as renewable energy forecasts, load forecasts, and scheduled imports. These factors are referred to as imbalance drivers. Other imbalance drivers may include the change of the hour (due to market ramps), temperature, and so on. Higher forecasts tend to result in higher imbalances.
- On the other hand, a significant portion of the system imbalance signal may not be possible to explain based on imbalance drivers. Past analyses of the Belgian system [2] have shown that approximately half of the imbalance signal may not be attributable to imbalance drivers. It is assumed that this portion of the imbalances can be represented by white noise.
- Imbalance drivers do not have symmetric distributions in the upward and downward directions. For example, high renewable supply forecasts are more likely to lead to significant negative imbalances (under-supply) and low positive imbalances (over-supply) since the renewable supply will mostly decrease during periods of high output.
- Use representative “day types” to model contingency risk in the system. The idea is presented in Section 3.2.
- Use imbalance drivers (load, RES and imports) to model factors that contribute to the system imbalance based on skewed distributions, the variance of which depends on the imbalance drivers. The idea is presented in Section 3.3.
- Use “white noise” to model the part of the imbalance signal that cannot be explained by imbalance drivers. The idea is presented in Section 3.4.
- Tune the parameters of the model so that the resulting imbalance is consistent with the reliability achieved by the reserve dimensioning that is employed in the Greek market. The idea is presented in Section 3.5.
- The baseline dimensioning methodology is then compared to the probabilistic dimensioning methods that are described in Section 4.
3.2. Contingencies
- Winter weekday: 15 January 2018
- Winter weekend: 7 January 2018
- Spring weekday: 8 March 2018
- Spring weekend: 11 March 2018
- Summer weekday: 7 June 2018
- Summer weekend: 10 June 2018
- Fall weekday: 6 September 2018
- Fall weekend: 9 September 2018
3.3. Imbalance Drivers
- The minimum load in the dataset is 2840 MW; the maximum load is 9529 MW.
- The minimum renewable supply within the dataset is 103 MW; the maximum renewable supply is 4245 MW.
- The minimum amount imported was −1428 MW (i.e., the maximum amount that has been exported historically is 1428 MW); the maximum amount imported was 2041 MW (i.e., the maximum amount that has been imported historically is 2041 MW).
3.4. Idiosyncratic Noise
3.5. Matching the Model to a Static Sizing Methodology
4. Probabilistic Dimensioning Methodology
4.1. Overview of k-Means Clustering Applied to Probabilistic Dimensioning
4.2. Implementation of Probabilistic Dimensioning Based on k-Means
- Step 1: Cluster imbalance drivers in order to determine the day types.
- Step 2: Approximate imbalances, e.g., using kernel density estimation or the empirical distribution of the data.
- Step 3: Determine the reserve requirement of each day type from the appropriate quantile of the distribution computed in step 2.
- The upward capacity requirement of Figure 1 served all but 4/99,360 incidents, as noted in Section 3.5.
- The downward capacity requirement of Figure 1 served all but 30/99,360 incidents, as noted in Section 3.5.
5. Case Study of Probabilistic Dimensioning
5.1. Case Study Description
- Load data with hourly resolution from 1 January 2018 until 31 October 2020, thus spanning 2 years and 10 months (namely, 1035 days).
- Renewable energy supply data with the same characteristics.
- Import/export data with the same characteristics.
- Average reserves committed, measured in MW.
- Unreliability: a measure of how many incidents of oversupply or undersupply occur per year, measured in hours per year. This corresponds to the loss of load expectation (LOLE) measure in reliability studies, but is here measured in both the case of upward and downward imbalances.
- Shortage or oversupply, measured in MWh/year. This corresponds to expected energy not served in adequacy studies, but is also measured in the downward direction (in the sense of quantity of energy oversupplied).
5.2. Reserve Requirements
5.3. Risk Profile
5.4. Integration with System Operations
6. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Heuristic | Probabilistic | UC/ED | Static | Dynamic | Parametric pdfs | Non-Parametric pdfs | |
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[24] | X | ||||||
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[13] | X | X | X | ||||
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[20] | X | X | X | X | |||
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[1] | X | X | |||||
[22] | X | X | |||||
[34] | X | X | |||||
[2] | X | X | X | ||||
[35] | X | X | |||||
[36] | X | X | |||||
[21] | X | X | X | ||||
[37] | X |
Load | Renewables | Imports | Reserve Up | Reserve Down |
---|---|---|---|---|
6810 (H) | 2091 (H) | 1331 (H) | 1383 | 1085 |
6810 (H) | 2091 (H) | 471 (L) | 1282 | 1043 |
6810 (H) | 782 (L) | 1331 (H) | 1119 | 1028 |
6810 (H) | 782 (L) | 471 (L) | 1187 | 919 |
4886 (L) | 2091 (H) | 1331 (H) | 981 | 855 |
4886 (L) | 2091 (H) | 471 (L) | 912 | 845 |
4886 (L) | 782 (L) | 1331 (H) | 991 | 802 |
4886 (L) | 782 (L) | 471 (L) | 970 | 737 |
Figure 1 | Probabilistic | |
---|---|---|
Res-Up (MW) | 1392 | 1111 |
Unrel.-Up (hours/y) | 0.3 | 0.4 |
Shortage (MWh/y) | 40.2 | 21.5 |
Res-Down (MW) | 993 | 950 |
Unrel.-Down (hours/y) | 2.8 | 1.9 |
Oversupply (MWh/y) | 208.4 | 159.1 |
Interval Type | No. Occurrences | Fails Prob. (h/yr) | Fails Figure 1 (h/yr) |
---|---|---|---|
LoH-ReH-ImH | 13,292 (13.4%) | 0.44 (18.5%) | 0.44 (14.3%) |
LoH-ReH-ImL | 9644 (9.7%) | 0.09 (3.7%) | 0.09 (2.9%) |
LoH-ReL-ImH | 12,144 (12.2%) | 0.09 (3.7%) | 0.26 (8.6%) |
LoH-ReL-ImL | 10,812 (10.9%) | 0.53 (22.2%) | 0.09 (2.9%) |
LoL-ReH-ImH | 7960 (8.0%) | 0.26 (11.1%) | 0.18 (5.7%) |
LoL-ReH-ImL | 6952 (7.0%) | 0.09 (3.7%) | 0.09 (2.9%) |
LoL-ReL-ImH | 26,296 (26.5%) | 0.53 (22.2%) | 1.59 (51.4%) |
LoL-ReL-ImL | 12,260 (12.3%) | 0.35 (14.8%) | 0.35 (11.4%) |
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Papavasiliou, A. An Overview of Probabilistic Dimensioning of Frequency Restoration Reserves with a Focus on the Greek Electricity Market. Energies 2021, 14, 5719. https://doi.org/10.3390/en14185719
Papavasiliou A. An Overview of Probabilistic Dimensioning of Frequency Restoration Reserves with a Focus on the Greek Electricity Market. Energies. 2021; 14(18):5719. https://doi.org/10.3390/en14185719
Chicago/Turabian StylePapavasiliou, Anthony. 2021. "An Overview of Probabilistic Dimensioning of Frequency Restoration Reserves with a Focus on the Greek Electricity Market" Energies 14, no. 18: 5719. https://doi.org/10.3390/en14185719
APA StylePapavasiliou, A. (2021). An Overview of Probabilistic Dimensioning of Frequency Restoration Reserves with a Focus on the Greek Electricity Market. Energies, 14(18), 5719. https://doi.org/10.3390/en14185719