Power Systems Resilience Metrics: A Comprehensive Review of Challenges and Outlook
Abstract
:1. Introduction
1.1. Disasters
1.2. Power System Resilience
- (1)
- The resilience definition must be practical and not descriptive, i.e., it should be considered that the resilience is a quantity that must be measured in real power systems.
- (2)
- Several measurable resilience components must be defined.
- (3)
- It is essential to determine whether it encompasses planning domain (before the disaster) or operation domain (during and after the disaster) or both. In References [8,15,24,41,44,50,54], resilience is related to the operation domain, whereas power system behavior before disasters is attributed to the quantities such as robustness [15,41,50], hardening [8,44] or service quality [24]. In other references, such as [1,28,55,56], resilience is related to both planning and operation domains.
- (4)
- The difference between resilience and other concepts, especially reliability, must be defined. In Ref. [24], resilience is part of reliability. By contrast, in [25,45,46], reliability is a component of resilience. In other references [15,21,28,33,36,37,41,50,57,58,59], resilience and reliability are two completely distinct concepts, where the difference mostly relates to the nature of the corresponding event (high-impact low-frequency for resilience and low-impact high-frequency for reliability).
- (5)
- The state of the power system after final restoration may differ from the initial state. For example, three years after Hurricane Katrina, the number of electric customers was half of the pre-storm conditions [60]. Thus, the resilience definition must consider the difference.
1.3. Paper Contributions
1.4. Paper Structure
2. Resilience Metrics
- (1)
- Measure the resilience components in compliance with the resilience definition [36].
- (2)
- (3)
- (4)
- (5)
- One metric is required for the simultaneous use in planning and operation [36].
- (6)
- Being extensible; i.e., comply with the technology advancement and new computational techniques [36].
- (7)
- (8)
- Representation of uncertainty which may be computed as a deterministic metric or a probabilistic (e.g., expected value, probability distribution) metric, based on the number of intended fault scenarios [36,37]. However, as mentioned in Section 1.1, the concept of “probability” cannot be defined for most of the HILF events, and using probabilistic RMs is still controversial (see Section 5.2).
- (9)
- (10)
- (11)
- In a performance curve, the initial state, performance level at each state and duration of each state must be considered [28].
- (12)
- The assumption that VOLL (Value Of Lost Load) is not constant, but is time-dependent [24].
- (13)
- Considering different scales, i.e., global, area-specific or component-specific [28].
- (14)
- Being open, transparent, replicable, well documented and simple, to be used or checked by others (with identical data) [6]. The RM computation may need extensive data that do not exist. However, based on the frequency, severity and cost of weather-related natural disasters, all related institutes must make decisions and actions for gathering and recording the required data.
- (15)
- Considering operator control variables and their time dependency [36].
3. The Proposed Conceptual Framework for Resilience Metrics in Power Systems
- (1)
- Power: These metrics show how the load is or is not supplied, or how generation capacity is available. These metrics can be in the form of power or energy, and because energy is calculated based on power, the name “power” is used for this group. Cost metrics related to load or generation does not belong to this group and belong to the consequence metrics (economic group).
- (2)
- Duration: These metrics show the durations and times related to load curtailment, load recovery, etc.
- (3)
- Frequency: These metrics show quantities related to the frequency or number of different aspects of disaster effect on power systems, such as the number of customer outages. Here, the number is only related to system equipment or customers. Metrics that are related to the number of people, households, etc. do not belong to this group and belong to the consequence metrics (social group).
- (4)
- Probability: These metrics show the probability of different aspects of disaster effect on power systems. These metrics may depend on power, duration and frequency metrics.
- (5)
- Curve: These metrics are computed based on the performance curve (system performance versus time) or resilience curve (another RM versus time). The main characteristic of these metrics is that both system performance (or the other RM) and time (period of the variation) are considered simultaneously.
- (1)
- Economic: These metrics show costs and economic impacts of power systems on the society. All cost metrics belong to this group.
- (2)
- Social: These metrics show the social effect of the disaster, such as the effect on employment status.
- (3)
- Geographic: These metrics show the geographic distribution of disaster effect.
- (4)
- Safety and health: These metrics show the effect of the disaster on human life and health.
4. State-of-the-Art of the Resilience Metrics Based on the Proposed Conceptual Framework
4.1. Non-Performance-Based Resilience Metrics
4.2. Performance-Based Resilience Metrics—Performance Metrics
4.2.1. Power Metrics
- (1)
- (2)
- (3)
- (4)
- (5)
- (6)
- Recovered energy, in expected and normalized forms [93].
- (7)
- (8)
- (9)
- (10)
- RAW (Resilience Achievement Worth) [71,72]: The percentage improvement in the EENS (Expected Energy Not Supplied) when each transmission corridor is considered 100% resilient to the weather event. The RAW metrics of the transmission corridors are ranked to determine the most critical corridors for suitable adaptation strategies.
- (11)
- The difference between power plant generation before and after disaster [101].
4.2.2. Duration Metrics
- (1)
- Load or energy curtailment duration (deterministic [88,102], expected [59,88]), including customer outage duration [28,102], CAIDI (Customer Average Interruption Duration Index) [24], LOLE (Loss Of Load Expectation) [29,94], SAIDI (System Average Interruption Duration Index) [24] and STAIDI (STorm Average Interruption Duration Index) [102].
- (2)
- (3)
- (4)
- Pre-degradation duration (between the beginning times of disaster and performance degradation) [103].
- (5)
- Duration of different parts of a curve which is related to a power plant and shows the variations of power generation (or available capacity) with time [101].
4.2.3. Frequency Metrics
- (1)
- (2)
- (3)
- (4)
- (5)
4.2.4. Probability Metrics
4.2.5. Curve Metrics
4.2.6. General Metrics
4.3. Performance-Based Resilience Metrics—Consequence (Outcome) Metrics
4.3.1. Economic Metrics
- (1)
- (2)
- (3)
- (4)
- Loss of GRP (Gross Regional Product) [58].
- (5)
4.3.2. Social Metrics
4.3.3. Geographic Metrics
4.3.4. Safety and Health Metrics
4.3.5. General Metrics
5. Discussion
5.1. Resilience Metrics vs. Reliability Metrics
5.2. Resilience Metrics Based on Disaster Probability
5.3. Comparing the Proposed Framework with the Existing Ones
- (1)
- It has more well-defined groups and details.
- (2)
- The existing metrics are allocated to the framework’s groups to justify its inclusiveness.
- (3)
- It presents an in-depth insight into the existing RMs in power system literature.
- (4)
- It clarifies which groups need more research.
6. Conclusions
- (1)
- As the resilience of power system is related to critical services of the society, there is a need for research regarding consequence metrics, which show the effect of the power system on the society.
- (2)
- Since resilience and reliability are two distinct concepts, using reliability metrics for power system resilience evaluation is not recommended.
- (3)
- Since the probability cannot be defined for most of the disasters, using resilience metrics based on disaster probability is not recommended.
- (4)
- Since the disaster has a spatial-temporal effect on power system, it is recommended to use resilience metrics that consider the system performance variations with time (e.g., curve metrics), instead of using static metrics (e.g., power metrics).
- (5)
- The power system is one of the most important critical infrastructures of the society, and critical infrastructure resilience measurement literature has a very long history. Thus, this literature is full of interesting ideas which can be used by academic researchers to propose new power system resilience metrics.
Author Contributions
Funding
Conflicts of Interest
Abbreviations
CAIDI | Customer Average Interruption Duration Index |
EENS | Expected Energy Not Supplied |
GRP | Gross Regional Product |
HILF | High-Impact Low-Frequency |
HILP | High-Impact Low-Probability |
LOLE | Loss Of Load Expectation |
LOLF | Loss Of Load Frequency |
LOLP | Loss of Load Probability |
RAW | Resilience Achievement Worth |
RI | Resilience Index |
RM | Resilience Metric |
SAIDI | System Average Interruption Duration Index |
SAIFI | System Average Interruption Frequency Index |
STAIDI | STorm Average Interruption Duration Index |
STAIFI | STorm Average Interruption Frequency Index |
VOLL | Value Of Lost Load |
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Raoufi, H.; Vahidinasab, V.; Mehran, K. Power Systems Resilience Metrics: A Comprehensive Review of Challenges and Outlook. Sustainability 2020, 12, 9698. https://doi.org/10.3390/su12229698
Raoufi H, Vahidinasab V, Mehran K. Power Systems Resilience Metrics: A Comprehensive Review of Challenges and Outlook. Sustainability. 2020; 12(22):9698. https://doi.org/10.3390/su12229698
Chicago/Turabian StyleRaoufi, Habibollah, Vahid Vahidinasab, and Kamyar Mehran. 2020. "Power Systems Resilience Metrics: A Comprehensive Review of Challenges and Outlook" Sustainability 12, no. 22: 9698. https://doi.org/10.3390/su12229698
APA StyleRaoufi, H., Vahidinasab, V., & Mehran, K. (2020). Power Systems Resilience Metrics: A Comprehensive Review of Challenges and Outlook. Sustainability, 12(22), 9698. https://doi.org/10.3390/su12229698