1. Introduction
The power system continuously deals with power imbalances coming from fluctuations caused by imbalances between generation and demand. However, when the power system faces a severe power imbalance, such as the one caused by an abrupt increase of demand or a sudden disconnection of single/multiple generation units, several emergency control actions must be taken. One of those emergency control actions is under-frequency load shedding (UFLS) [
1]. Its primary purpose is to stop the frequency from declining and to try and re-establish the balance between power demand and power generation by disconnecting an appropriate amount of load [
2].
The classical automatic UFLS scheme uses under-frequency relays (UFRs), which are designed to operate any time the frequency drops below a predefined threshold using the instantaneous value of the local frequency [
3]. The classical load shedding (LS) is performed at the same location where the frequency is sensed, and it can be done over one or multiple steps. The implementation of the classical UFLS scheme implies identifying the most severe possible power imbalance and estimating the total amount of load disconnection, ensuring the frequency recovers above a minimum permissible value [
4]. Once the total amount of LS is calculated, the parameters of the UFRs (number of load shedding stages, block size of load to be shed, frequency threshold and the time delay for each stage) must be set [
5]. Typically, power system operators determine the fixed settings of UFRs using a trial and error procedure based on experience [
3].
All parameters of UFRs require careful calculation, but the block size of LS and the number of LS steps require special attention. If these two parameters have inappropriate settings, it can cause undesirable results: (i) over-frequency conditions and/or loss of power service continuity produced by excessive LS at the initial stages of the frequency response and (ii) inability to arrest the frequency drop, leading to further loss of generation units or even system-wide blackout, produced by underestimated load shedding in the initial stages. Therefore, the total amount of LS is an extremely important factor for security and economic operation of a power system [
6,
7].
The main disadvantage of implementing the UFLS scheme using the traditional method is that errors can easily be made at the time when parameters of the UFRs are set. This is because the number of parameters to compute increases as the number of UFRs connected to the system increases, thereby becoming a complex problem and increasing the risk of inappropriate performance.
Although there are a vast number of methodologies to implement the traditional UFLS scheme that propose several sets of parameters depending on the country/company utility requirements [
8,
9,
10,
11], recent methods have focused on solving the problem of calculating the UFR parameters using computational algorithms. Authors of [
12] used the genetic algorithm to minimise the LS and the dynamic frequency deviation of the power system. In [
13], an adaptative UFLS scheme based on an artificial neuronal network (ANN) was proposed to estimate the power imbalance and then define the settings of UFRs. In [
14], a methodology that combines UFLS with online fuzzy control strategy was presented to reduce the LS value. The authors of [
15] introduced a method to compute the optimal values of load shedding, frequency threshold and time delay considering the high penetration of renewable generation resources. In [
16], a technique was presented to assess the optimal load capacity and load disconnection sequence during a power system emergency. The particle swarm optimisation (PSO) algorithm has been implemented to estimate the amount of power imbalance and then calculate the size of LS [
17], to solve a multi-objective function and determine the optimal amount of LS [
18], and to compute the optimal amount of LS in an islanded operation scenario [
19]. The trajectory sensitivity technique has been used to minimise the total LS cost of the power system [
20]. Meanwhile, wide-area measurements (WAMs) have been used to create an intelligent UFLS scheme. For instance, the authors of [
21] introduced a method based on artificial intelligence (AI) techniques and WAMs to calculate the optimal UFLS settings, [
22] proposed an intelligent under-frequency and under-voltage scheme using WAMs to recover the frequency and voltage and the authors of [
23] presented an adaptative UFLS model based on WAM information to set up an emergency LS strategy. Furthermore, several techniques are focused on addressing the effect of the measurement time delay on the performance of UFLS schemes [
24,
25,
26]. A detailed literature review of the UFLS scheme is out of scope of this paper. For further information, the authors of [
27] have presented a comprehensive analysis of UFLS schemes available in the literature.
The main drawback of most of the previous methodologies is that they assume the settings are the same for all UFRs as it can be a practical way to simplify the optimisation problem. However, that assumption can overestimate the total amount of load shedding and the frequency recovery because each load has a different active power value. Even if all the UFRs are set with the same block size of load shedding, the resulting load to be disconnected will be different. This fact can produce an over-frequency condition.
Moreover, another drawback of several methodologies, such as [
14,
18,
19,
21,
22], is that they simplify the optimisation problem by considering only the block size of LS as a control variable and keep the number of load shedding stages, frequency threshold and time delay as fixed values. However, not considering all parameters of UFRs limits the solution of the optimisation problem and can produce a wrong estimation of the optimal settings because the number of load shedding stages, frequency threshold and time delay have an impact on the frequency response.
The main objective of this research paper was to overcome the disadvantages of existing methodologies by introducing a novel method to optimally calculate the settings of the UFLS scheme. In this new approach, the principal parameters of the UFRs (number of load shedding stages, block size of load shedding, frequency threshold and the time delay for each stage) are considered in order to minimise the total amount of disconnected load. The significant contributions unfolding from this paper are listed below:
The proposed methodology was formulated to consider and individually adjust each parameter of each UFR (number of load shedding stages, block size of load shedding, frequency threshold and the time delay for each stage) of the UFLS scheme. Thus, it allows all parameters that impact the frequency response to be taken into account, therefore obtaining the optimal settings and avoiding over/under load disconnection.
A co-simulation framework (DIgSILENT® PowerFactoryTM + Python) dedicated to performing optimisation of the UFLS scheme was developed by implementing the improved harmony search metaheuristic algorithm in Python and using time-domain simulations and discrete events from DIgSILENT® PowerFactoryTM.
The optimal UFLS scheme was tested in the Altai-Uliastai regional power system of Mongolia. It was modelled in DIgSILENT® PowerFactoryTM using the data of the real system. Simulation results showed the optimal UFLS scheme had superior performance compared to the traditional scheme currently installed in the Altai-Uliastai regional power system.
The optimal settings of the UFLS scheme were assessed by carrying out a sensitivity analysis to ensure the optimisation reached the optimal solution.
The remainder of the paper is organised as follows.
Section 2 presents a brief description of the Mongolian power system as well as the Altai-Uliastai regional power system.
Section 3 introduces the implementation principles of the traditional UFLS scheme and describes the main characteristics of the Altai-Uliastai regional power system’s UFLS scheme.
Section 4 gives a detailed description of the formulation of optimal UFLS proposed in this research work.
Section 5 depicts the methodology used to implement optimal UFLS, including a brief review of the optimisation method used.
Section 6 describes the test system and the case studies used to assess the proposed methodology.
Section 7 presents the results and the sensitivity analysis of the optimal setting. Finally,
Section 8 presents the principal observations and conclusions.
6. Description of the Test System
The real model of the AURPS was implemented in DIgSILENT
® PowerFactory
TM version 2020, and it was used to obtain the optimal settings of UFRs of the UFLS scheme. The schematic single-line diagram of the AURPS is shown in
Figure 5. It consists of 46 loads, 39 lines, 25 two-winding transformers, six three-winding transformers and 13 synchronous generators.
The AURPS is radially interconnected to CRPS, and its power demand–supply highly depends on the power import from CRPS. Because the interconnector is exceptionally long, it is susceptible to frequent trips due to weather conditions. During interconnection outages, AURPS must be islanded and secure operation tried to be kept by activating the UFLS scheme. At this point, the islanded AURPS has a significant lack of power generation, and depending on the operational season (summer or winter), the inertia/demand levels significantly changes, directly impacting the UFLS performance. Currently, the traditional UFLS scheme of AURPS considers the same settings of UFRs for both operational seasons (summer and winter). However, the system operating conditions change significantly during winter compared to the summer season, as depicted in
Table 1. During the winter season, local power production decreases 34.78%, and the power consumption increases 94.84% compared to the summer season. The decrease in power production and the increase in power demand in the winter season creates a significant reduction of system inertia. These operational conditions make the AURPS extremely vulnerable to any system event, and the UFLS scheme must be carefully adjusted to ensure secure operation of the AURPS. Consequently, in this paper, the settings of UFRs were computed for two operational scenarios: (i) high inertia—summer season, characterised by a high inertia level and low demand, and (ii) low inertia—winter season, characterised by a low inertia level and high demand requiring special attention in calculating the setting of UFRs.
The most significant frequency disturbance in the AURPS is the sudden disconnection of the Murun-Telmen 110 kV transmission line, causing a critical operational condition due to significant infeed loss. Therefore, this frequency event was used as the worst possible disturbance in AURPS. The sudden disconnection of the Murun-Telmen 110 kV transmission line was applied at t = 1.00 s.
The UFRs installed in the loads were based on a multi-step UFR, function ANSI 81, and the UFRs installed in the lines used the model SEL-751A provided in the DIgSILENT® PowerFactoryTM Global Library. The UFRs of the loads only had one stage as in the real network; therefore, Ns = 1.
The boundaries of the frequency control variables were set following the technical and operational requirements of AURPS.
fmin must not reach values below 47 Hz to avoid intervention of the UFP of the generators that are pre-set at 46.0 Hz; therefore,
flimit = 47 Hz. The continuous operating range of the generation units must be kept between 49.8 and 50.2 Hz; therefore
fss,min = 49.8 Hz and
fss,max = 50.2 Hz. The frequency threshold (
fT) should be between 47.6 and 49.4 Hz; therefore, F
min = 47.6 and F
max = 49.4 Hz.
td should be at least six cycles (0.1 s) and should not exceed 18 cycles (0.3 s); therefore, T
min = 0.1 s and T
max = 0.3 s [
29].
The set of parameters of IHS algorithm were set as those reported in the literature [
37] as:
HMS = 1.0,
HMCR = 0.90,
PARmin = 0.35,
PARmax = 0.99,
bwmin = 1 × 10
−5,
bwmax = 1.0 and
NI = 500.
8. Conclusions
The optimal UFLS scheme developed in this paper allows computation of the optimal settings of UFRs and minimisation of the total amount of load shedding. Moreover, the set of frequency constraints that are defined to ensure the operational frequency requirements are satisfied, and the sensitivity analysis demonstrates that the calculated parameters of UFRs are globally optimal. This methodology can be used to calculate optimal settings of the UFLS scheme of any power system and allows the user to choose which variables they want to include in the optimisation process.
The computation of the UFR parameters of the UFLS scheme is carried out by applying a new approach that calculates the parameters of each UFR instead of assuming that UFRs have the same parameters. In this new methodology, the IHS metaheuristic algorithm is used; the set of frequency constraints defined in the optimal UFLS scheme allowing the minimum frequency as well as the steady-state frequency to be limited into desired values, even in significantly deteriorated operational scenarios, such as the ones with low inertia and high demand. This represents the main advantage as an unnecessary load shedding is prevented, and it is ensured that the frequency will be within the operational requirements of the power system.
The proposed optimal UFLS scheme was tested on the model of one regional power system belonging to the Mongolian power system, obtaining satisfactory results. The optimal UFLS scheme is suitable for replacement of the traditional UFLS scheme of AURPS as it was calculated using real data to model AURPS in DIgSILENT® PowerFactoryTM and to perform the optimisation. Moreover, the optimal UFLS scheme overcomes the current UFLS scheme of AURPS, providing optimal settings for two operational scenarios: high and low inertia.