1. Introduction
In recent years, ensuring power-supply reliability has emerged as a critical user demand, driven by economic development. As the power-supply network on the user side, the distribution network in China typically adopts the “closed-loop design, open-loop operation” mode, with a radial network structure [
1,
2]. When the distribution network lines need to handle faults or undergo maintenance, ring switching can achieve load transfer without interrupting the power supply [
3,
4]. However, the “connect-first, disconnect-later” strategy modifies the distribution network’s topology and power flow. During the loop connection process, steady-state circulating currents and inrush currents may occur, leading to protection malfunctions and line overloads, which in turn threaten the safe and stable operation of the power system [
5,
6]. Therefore, a method is needed to safely assess the current generated during the loop closure.
In the field of looped connections in classical distribution networks, relevant research has formed a relatively comprehensive theoretical system. In terms of equivalent models for looped connections in distribution networks, reference [
7] established a 10 kV distribution network equivalent model considering the equivalent of the main network, feeder load, and transformer. Reference [
8] studied the calculation methods for loop current using the superposition theorem and Thevenin’s theorem, and analyzed the key factors affecting the magnitude of the current. Reference [
9] constructed a typical equivalent network for loops, and designed three methods for calculating loop current in medium- and low-voltage distribution networks, taking into account the complexity of calculation and accuracy.
However, with the widespread adoption of renewable energy, photovoltaic (PV) power generation systems are playing an increasingly critical role in distribution networks. The inherent randomness and volatility of their output power significantly complicate the calculation of loop-closing currents in distribution networks [
10,
11]. Currently, theoretical research on loop-closing current assessment techniques remains relatively limited, with many studies focusing on power flow optimization and computation in active distribution networks. For instance, reference [
12] proposed a nonparametric quasi-Monte Carlo (MC) method based on uniform experimental design for efficient probabilistic power flow calculations. This approach introduces a hybrid discrepancy metric to enhance result accuracy while reducing computational burden. Reference [
13] developed a high-order Markov chain-based modeling framework for PV output and load characterization in probabilistic power flow, improving computational efficiency and accuracy through spatio-temporally correlated scenarios generated via joint probability distributions and inverse transform strategies. These studies reveal the potential of integrating probabilistic power flow methodologies into loop-closing current assessment, offering valuable insights for decision support in loop-closing operations. The calculation methods for probabilistic power flow can be categorized into three main classes: the simulation method, analytical method, and approximate method [
14]. The simulation method [
15,
16], represented by the MC method, simulates various uncertain factors through large-scale random sampling. When the sampling is sufficient, the accuracy is high and the applicability is broad, but the computational efficiency is low in complex systems. The approximation method [
17,
18] directly describes the probabilistic statistical properties of the output random variables, but the computational load increases significantly when solving models with a large number of nodes. The analysis method [
19,
20] linearizes uncertain variables to obtain the probability distribution of the output random variables, demonstrating excellent performance in computational efficiency.
The cumulant method (CM) is one of the mainstream analytical methods for probabilistic power flow. However, in medium- and low-voltage distribution networks, the probability distributions of many input variables are often unknown. Traditional CM inevitably introduces computational errors due to its reliance on approximated probability distribution functions [
21]. To address this limitation, reference [
22] improved CM by incorporating maximum entropy-based probability density function approximation, significantly enhancing its accuracy. Building on these advancements, this study focuses on refining the application of CM in loop-closing current assessment. By integrating simulation and analytical approaches, we propose a hybrid method for calculating the probability distribution of loop-closing currents. This approach reduces cumulant calculation errors while maintaining computational efficiency. The technical novelty of the method is summarized as follows:
- (1)
The Integration of LHS and GC Series: The combination of LHS and GC series for loop-closing current probability distribution calculation in active distribution networks retains the flexibility of simulation methods and the efficiency of analytical approaches.
- (2)
The Direct Processing of Discrete Sampling Points: LHS is employed to handle discrete sampling points with minimal dependence on predefined input variable distributions. Correlations between sampling points are mitigated through ranking strategies, yielding more accurate cumulants for input variables.
- (3)
Linear Relationship Between Loop Currents and Nodal Power Injections: By establishing a linear relationship between loop-closing currents and nodal power injections, convolution operations are transformed into algebraic cumulant calculations, significantly enhancing computational efficiency.
- (4)
Two-Dimensional Safety Assessment Framework: A quantitative framework incorporating preliminary loop-closing success rate and the severity of current limit violations is developed, providing comprehensive and precise quantitative support for operational decision making.
- (5)
The proposed method is fundamentally based on linearized power flow equations, making it inherently applicable to distribution networks of diverse scales and configurations. Its effectiveness has been validated through a case study on the IEEE 34-node system, demonstrating robust potential for real-world engineering applications.
4. Solution of Cumulants for Discrete Input Variables
4.1. Latin Hypercube Sampling
When calculating the joint probability of the load considering the randomness of photovoltaic power generation, it is necessary to establish a method based on stochastic power flow calculations. LHS can effectively reflect the overall distribution of random variables through sampling values. This method divides the range of each variable equally and samples uniformly within each interval, thereby improving the accuracy of the simulation. Therefore, compared to MC sampling, it can obtain more accurate sample mean and variance values with fewer sampling numbers.
LHS mainly has two steps of sampling and arrangement. The sampling step ensures that the sample distribution area can be sufficiently collected, assuming
X1,
X2, …, and
Xp are
p input random variables, where the cumulative probability distribution function of
Xp is:
The sampling scale is
N, the value-taking interval (0,1) of Yp is divided into
N intervals, and the length of each interval is 1/
N. By setting the sample point
Yp at the center of each interval, the
i-th sample value of the corresponding input random variable
Xp can be obtained from the inverse function:
The sampling matrix of each input random variable is 1 × N, and all p input random variables are processed to form an initial sampling matrix of p × N, so that the sampling step is finished, and the next order is carried out. The sorting step randomly arranges the position of each element in each row, reduces the correlation between each random variable of the initial sampling matrix, and obtains the final sampling matrix. Calculations of the order of origin moments and cumulants of the input random variable Xp are then performed based on the final sampling matrix.
4.2. Latin Hypercube Sampling for Discrete Data
The LHS requires the cumulative probability distribution function Yp = Fp(Xp) of the random variable Xp as input. However, in engineering applications, many of the operating parameters and historical data of variables are often discrete, making it impossible to directly obtain the cumulative probability distribution function of these discrete data. Therefore, a method is needed to determine semi-variates using LHS based on discrete data.
For a subsample set of the random variable
Xp, when it contains
N discrete observations, it can be represented as {
xp1,
xp2,
xp3, …,
xpN}. Sort the subsample set of each input random variable in ascending order and calculate the empirical distribution function of
Xp:
According to the empirical distribution function
Hp(
Xp), a sample set of
Xp is obtained using LHS, and the moments of different orders of
Xp are calculated, respectively:
Then, based on the relationship between cumulants and the moment about the origin, we obtain the cumulants of each order for Xp.
7. Example Verification
This paper uses the IEEE 34-node distribution network system as an example to verify the proposed method. The standard system is simplified to a single voltage level by removing transformers and voltage regulators from the lines. Due to the text length constraints in the main body, the line impedance data of IEEE 34 nodes and the normal distribution data of loads are presented in
Appendix A and
Appendix B. Based on the simplified distribution network, photovoltaic power sources are configured using solar radiation intensity samples from a region in South China as input data. The system topology and an example of the tie line are shown in
Figure 4. In
Figure 4, the black solid line represents the existing distribution line, and the blue dashed line represents the tie line that has not been closed.
Based on the sample data of solar radiation intensity within a day, the shape parameters of the Beta distribution are calculated to be
α = 0.679 and
β = 1.778, with a maximum solar radiation intensity of 1.134 kW/m
2, as shown in
Figure 5. Take the reference capacity
SB as 1 MVA and the reference voltage
UB as 24.9 kV.
Based on variations in PV integration nodes, loop-closing line locations, and load standard deviations, two cases are defined as shown in
Table 1. These cases are selected to analyze the safety of loop-closing operations and power losses.
7.1. Probabilistic Calculation of Loop-Closing Currents and Power Losses
This case study uses loop-closing currents obtained from MATLAB/SIMULINK simulations as a reference to compare the results of three methods: MC method, traditional cumulant method, and the proposed LHS-GC method, with a sampling size of 500 for both MC and LHS. The cumulative probability distributions of loop-closing currents for Case 1 and Case 2 are illustrated in
Figure 6 and
Figure 7, respectively.
As shown in
Figure 6 and
Figure 7, compared to the MC method and traditional CM, the proposed LHS-GC method achieves higher accuracy, with its cumulative probability distribution curves aligning more closely with simulation results. Due to limitations in sampling scale, the traditional CM demonstrates higher precision than the MC method under the current configuration.
Figure 8 illustrates the deviations of the three methods from simulation values at the 90% cumulative probability level. Taking Case 1 as an example, the calculation errors of the LHS-GC method for steady-state currents and inrush currents in the two feeders are 3.49%, 6.33%, 3.4%, and 3.11% lower than those of the MC method, and 1.72%, 3.1%, 3.09%, and 1.8% lower than those of the CM, respectively. Furthermore, the current calculation errors of the LHS-GC method are consistently below 3%, confirming its superior performance in approximating the cumulative probability distribution function of feeder loop-closing currents. These results validate the reliability of the LHS-GC method for loop-closing safety assessments.
Table 2 compares the computation times of the methods. The LHS-GC method requires shorter single-cycle time and total duration, achieving a 68% speed improvement compared to the MC method. Under identical sampling scales, it exhibits significant speed advantages. Therefore, compared to the traditional CM, the LHS-GC method achieves higher accuracy with only a minor sacrifice in computational efficiency, making it a practical tool for real-time operator decision making.
Under both operating cases, the power losses of the entire network before and after loop closing are shown in
Figure 9. For Case 1, the power losses showed no significant variation between pre- and post-loop-closing operations. In contrast, for Case 2, the power losses decreased after loop closing compared to pre-loop-closing levels, contributing to the economic operation of the distribution network. The proposed LHS-GC method accurately captures the variations in power losses, exhibiting errors within 8% compared to simulation values at the 90% cumulative probability level. This demonstrates its capability to provide a reliable reference for assessing the economic and technical performance of post-loop-closing distribution networks.
7.2. Loop-Closing Safety Assessment
Safety assessments for loop-closing operations are conducted using the cumulative probability distribution curves of feeder loop-closing currents calculated by the LHS-GC method. Based on the 3-sigma principle of load normal distribution, the maximum allowable current-carrying capacity of branches is determined. The instantaneous current protection settings are derived from the maximum short-circuit current at the end of the protected line during a fault. The calculated results for the maximum allowable current-carrying capacity and protection settings under Case 1 and Case 2 are summarized in
Table 3.
The safety assessment results of loop-closing currents are presented in
Table 4 and
Table 5. In Case 1, the proposed LHS-GC method exhibits errors of 0.69% and 1.17% in the maximum violation rates for feeders 26–28 and 32–34 compared to simulation values, respectively. The errors in average exceedance rates are 0.36% and 0.95%, respectively. In Case 2, the errors of maximum violation rates and average exceedance rates calculated by LHS-GC for feeders 4–6 and 11–13 are 1.53%, 0.59%, and 0.86%, 0.67%, respectively, all within 2%. Additionally, the preliminary loop-closing success rates calculated by LHS-GC for both cases closely align with simulation values, exhibiting errors of 1.26% and 1.81%.
In summary, an analysis of these two cases demonstrates that the LHS-GC method can effectively assess the safety of loop-closing operations in active distribution networks, even with limited samples. The entire process—from calculating the cumulative probability distribution of loop-closing currents to deriving safety assessment metrics—requires only 0.76 s, meeting the timeliness requirements for engineering applications.