1. Introduction
Conservation voltage reduction (CVR) has been implemented by many electric power utilities for decades as a practical method to decrease peak demand and save energy by lowering the voltage level on distribution systems in a controlled manner [
1]. CVR helps secure operating reserve especially during peak times or in emergencies. The economic and environmental effects of CVR are worth mentioning [
2,
3,
4]. Electric energy efficiency programs on distribution systems such as CVR and demand response (DR) have been developed to improve energy efficiency, reliability, and security [
5,
6]. CVR should be non-intrusive to the utility customers, and it needs to be coordinated with the DR program; CVR should be implemented before DR in peak times or emergencies caused by unexpected generation trip or sudden load increase [
7].
It is noteworthy that many utilities have recently evaluated their CVR performance through numerous commissions and strategies as well as the technical and economic benefits of peak demand reduction and energy savings [
1,
2,
3,
4,
5,
6,
8,
9,
10,
11,
12,
13,
14,
15,
16,
17,
18,
19,
20,
21,
22]. The Pacific Northwest National Laboratory (PNNL) reported that the CVR on a national level in the U.S. can be extrapolated to be 3.04% reduction in annual energy consumption [
17]. The study in [
2] achieved 1.2% energy reduction, 1.2% peak demand, and 0.5% economic savings for a voltage reduction of 2.25% in New York City networks. The study in [
18] revealed that the CVR in the Korea electric power system may lead to 0.36%∼0.79% load reduction per 1% voltage reduction. The IEEE Smart Distribution Working Group (SDWG) has the established Distribution Management System Task Force (DMSTF) and Volt-Var Control Task Force (VVTF) to improve energy efficiency using various techniques for monitoring, managing, and controlling the electrical distribution system such as the CVR and Volt-Var Optimization (VVO) [
23]. With the increasing penetration of distributed generation (DG), it now becomes critical to harmoniously integrate the CVR in the VVO with DG controls in order to maintain the voltage level within acceptable limits [
24].
Despite the numerous studies on the benefits of CVR and the success stories mentioned earlier, the CVR performance is often debated because it depends on numerous utility-specific factors, including voltage dependency of customer loads and network topology. This paper is, however, motivated to improve the existing practice of CVR planning. It is often based on a fixed planning case and focuses on demand reduction without investigating other critical aspects of CVR, for example its impacts on actually secured operating reserves and voltage profiles of the adjacent buses, which will be detailed in this paper. It is thus desired to develop a practical framework for evaluating the CVR performance in operations, which can be integrated into existing energy management systems (EMS). Changes in, for example, network topology and loading conditions can be reflected in the study to provide more reliable and predictable CVR performance in conjunction with the network security analysis that EMS performs at every operating period; the desired CVR performance can be specified. Note also that multiple criteria in the decision-making process often lead to inconsistent solutions. Priorities of these multiple criteria may also change in grid operations. In case of emergency and considering the natural and physical constraints of the CVR, it is not desired to deploy CVR more than necessary.
This research thus develops a framework for planning CVR based on the analytic hierarchy process (AHP) [
25,
26,
27,
28] to systematically handle multiple criteria, rank the options based on grid conditions, and optimally select feeders or substations at a particular operating time. The effect of CVR, such as the power transfer distribution factor (PTDF) [
29,
30] and voltage sensitivity factor (VSF) [
31] on the network, on top of CVR factor (CVRf), are incorporated in the framework criteria. The system-wide effect of the CVR can finally be analyzed.
Figure 1 illustrates the proposed framework and its application to the Korean electric power system.
It is still extremely challenging to identify the load characteristics in operations planning. This research, however, envisions that a reasonably accurate identification of load dependency on the feed voltage should be achievable through on-going data gathering and analysis efforts [
2,
19], and parameters of the load model can be obtained and validated through field measurement. The CVRf can then be calculated based on the load model, reflecting the voltage dependency of the load. A field-validated load model should be essential for subsequent network security analysis as well.
This paper is organized as follows:
Section 2 provides a useful background of the CVR. The application of AHP for CVR planning is presented in
Section 3.
Section 4 presents the optimal selection of the substations for CVR execution using integer linear programming (ILP).
Section 5 and
Section 6 show case studies for demonstrating the effectiveness of the proposed CVR followed by concluding remarks in
Section 7.
4. Determination of Candidate Substations
After identifying the order of the candidate locations, we refine the selection to meet the specified reserve requirement by applying ILP. Using the weighting factors obtained from
Section 3, an objective function subject to the constraints for CVR at time
t is formulated as follows:
where
is the unified weighting factor from the results of AHP through analysis of CVRf, PTDF, and VSF.
indicates whether substation
k participates in the CVR or not; it takes either 0 or 1.
could initially be set to 0.
denotes the value of the voltage reduction, which can be 2.5% or 5.0%, according to a two-step voltage reduction. The voltage magnitude of all buses is supposed to meet the specified voltage range: the most frequent set values are 0.95 and 1.05 for
and
, respectively. The emergency voltage range may significantly differ among utilities and their operating conditions.
denotes the desired power reduction by the CVR action at that time. Accordingly, the optimization problem in Equation (
18) effectively searches for the CVR action on the order of the weighting factor.
5. Test System
To demonstrate the efficacy of the proposed method, a series of simulation studies using the Power System Simulator for Engineering (PSS/e)s was conducted for this research [
33].
Simulation was done using an example case, namely, “savnw” in PSS/e. The total generation and load of the case are 3258.7 MW/964.2 MVAR and 3200.0 MW/1950 MVAR, respectively, with six generators and seven loads. This test case is modified by creating a new distribution transformer and a new load bus; each load at bus 153, 154, 203, 205, 3005, and 3008 is moved to new distribution buses, and the original load bus and a new distribution bus are connected through a distribution transformer. The new load bus numbers are designated as 1531, 1541, 1542, 2031, 2051, 30051, and 30081.
Suppose there is an operating case for reducing the load by 50 MW. A detailed flowchart of the proposed CVR plan is detailed in
Figure 1. First, sensitivity analysis that includes CVRf, PTDF, and VSF calculation of network data is conducted. Second, the weighting factors of the substations are calculated and prioritized using AHP. Finally, the substations for CVR deployment are selected using ILP with the desired amount of power reduction.
5.1. CVRf for the Test System
The CVRf can be calculated by Equation (
6), and the coefficients of the ZIP load model are arbitrarily allocated to each load as listed in
Table 2 for this test system. Higher priority is given to a larger CVRf. The CVRf at bus 2051 is the highest because the load is dominant. Nevertheless, the load can be pushed down in the priority list because of load composition. For example, whereas the load at bus 1541 is larger than the one at bus 2031, the CVRf of bus 2031 is higher than that at bus 1541 because the load at bus 2031 has a large coefficient for the constant impedance. A judgment matrix for the CVRf is thus built as expressed in Equation (
19).
5.2. PTDF for the Test System
The generation reduction amount for 100 MW reduction at each load bus is calculated through PTDF analysis, as listed in
Table 3. The generation reduction is the largest at buses 1541 and 1542 and the smallest at bus 30051, which means that reduction at buses 1541 and 1542 can obtain more operating reserve than that in the other cases. Therefore, the load bus with a larger value for PTDF is given a higher priority for CVR. The effect of load reduction on the generation reduction appears insignificant for this small test case, which is different from the case for bulk power systems. A judgment matrix for the PTDF can be built as shown in Equation (
20).
5.3. VSF for the Test System
The VSFs for all buses are calculated by power reduction at each load bus.
Table 4 lists the average increment in the voltage magnitude for 100 MW reduction at each load bus. The value of the average VSF is the highest when demand at bus 30081 is reduced and is the lowest at bus 2051. The effect of the overall voltage profile improvement can be maximized when CVR is conducted at the load bus with highest sensitivity factor, i.e., 30081. A judgment matrix for the VSF is thus formulated as shown in Equation (
20).
5.4. AHP and ILP for the Test System
The weighting factors are calculated by integrating judgment matrices for three factors in Equations (
19)–(
21), which are listed in
Table 5 and shown in
Figure 4. High priority is given to a large value of unified
W. Bus 30081 is the highest priority for the CVR, whereas bus 1531 is the lowest priority. As a result, the three substations at buses 1541, 2051, and 30081 are chosen for the CVR using Equation (
18) to achieve the target load reduction of 50 MW. It is assumed that the three factors have equal importance for the test system. The weighting factors should adapt to changes in the network condition or the purpose of CVR execution. The impact of different weighting factors on the system performance will be investigated in the next section.
5.5. Results
Table 6 presents the results of the CVR action on the test system. When the amount of target load reduction is 50 MW, CVR is implemented at those selected substations as listed in
Table 5. The total load is reduced by 51.67 MW, whereas the total generation reduction is 55.33 MW after CVR. The voltage profile of the whole system has been improved by 0.0048 pu.
7. Conclusions
This paper has presented a practical method for planning CVR on a transmission system based on AHP. The actual operating reserves obtained through the CVR, impact on adjacent bus voltage profile, as well as demand reduction are incorporated as multiple criteria and traded-off in selecting the substations or feeders for optimal CVR performance. Unlike existing practice based on the CVRf only, the proposed method naturally conducts network impact analysis, and identifies potentially conflicting factors. Our optimization framework allows selection of the minimal number of substations, which helps save the substations for the next CVR execution, especially during an emergency. Numerous case studies of the Korea electric power system demonstrated that the proposed method excels in achieving the desired results by changing the relative importance among the factors and deriving priority scales. The weighting factors of criteria can be adjusted to the primary purpose of CVR, e.g., to relieve the congestion or to improve the voltage profile of certain areas as shown in
Figure 5.
The study framework provides a practical decision-support tool in operations; it evaluates the CVR as part of the EMS applications for the changing network topology and loading conditions, as shown in
Figure 1. It also incorporates other important utility-specific factors than the aforementioned three or can even ignore some of the criteria as the grid evolves. It thus can help design and deploy the CVR more reliably and predictably, which is particularly beneficial in coordinating various Volt-Var control options in practice. High accuracy of CVRf or voltage dependency of the load model at a particular operating time is assumed in this study, which may not be the case in today’s operation. Albeit it is very challenging to quantify these factors in practice, it is plausible that the on-going data gathering and analysis would improve the overall accuracy. Our future work includes investigating the regulatory, economical, and technical requirements for CVR implementations.