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Article

Reliability Enhancement of Electric Distribution Network Using Optimal Placement of Distributed Generation

Department of Electrical Engineering, CECOS University of Information Technology and Emerging Sciences, Peshawar 25000, Pakistan
*
Author to whom correspondence should be addressed.
Sustainability 2021, 13(20), 11407; https://doi.org/10.3390/su132011407 (registering DOI)
Submission received: 25 August 2021 / Revised: 29 September 2021 / Accepted: 11 October 2021 / Published: 15 October 2021

Abstract

:
As energy demand is increasing, power systems’ complexities are also increasing. With growing energy demand, new ways and techniques are formulated by researchers to increase the efficiency and reliability of power systems. A distribution system, which is one of the most important entities in a power system, contributes up to 90% of reliability problems. For a sustainable supply of power to customers, the distribution system reliability must be enhanced. Distributed generation (DG) is a new way to improve distribution system reliability by bringing generation nearer to the load centers. Artificial intelligence (AI) is an area in which much innovation and research is going on. Different scientific areas are utilizing AI techniques to enhance system performance and reliability. This work aims to apply DG as a distributed source in a distribution system to evaluate its impacts on reliability. The location of the DG is a design criteria problem that has a relevant effect on the reliability of the distribution system. As the distance of load centers from the feeder increases, outage durations also increase. The reliability was enhanced, as the SAIFI value was reduced by almost 40%, the SAIDI value by 25%, and the EENS value by 25% after injecting DG into the distribution network. The artificial neural network (ANN) technique was utilized to find the optimal location of the DG; the results were validated by installing DG at prescribed localities. The results showed that the injection of DG at proper locations enhances the reliability of a distribution system. The proposed approach was applied to thte Roy Billinton Test System (RBTS). The implementation of the ANN technique is a unique approach to the selection of a location for a DG unit, which confirms that applying this computational technique could decrease human errors that are associated with the hit and trial methods and could also decrease the computational complexities and computational time. This research can assist distribution companies in determining the reliability of an actual distribution system for planning and expansion purposes, as well as in injecting a DG at the most optimal location in order to enhance the distribution system reliability.

1. Introduction

Energy needs are typically managed through energy generated in generating plants. Figure 1 depicts a typical electric power system with generating plants, a transmission system, and distribution networks that are connected with each other. The power produced depends upon the capacity of generation. This ability ranges from megawatts to gigawatts [1]. These huge levels of power-generating stations are situated far away from load points. The transmission system and distribution system supply electrical power from power-generating plants to different load centers [2,3].
The three most important entities in power systems are the power generation, power transmission, and power distribution systems. The distribution system comprises different components, such as transformers, circuit breakers, cables and wires, poles, etc. The failure of one component in a distribution system can affect consumers’ supply. An electric power distribution network contributes up to 90% of reliability problems due to the complex nature of its service, that contributes a large number of reliability issues.
The fundamental function of an electric power system is to provide an uninterrupted, reliable, and economical electric supply to its consumers [5]. Consumer or load-point interruptions are power quality concerns; when the voltage is reduced to zero, the consumers are disconnected from the power grid. Reliability is a subset of power quality, and therefore, it is related to consumer or load-point interruptions [6].
DG is a completely novel approach that is based on the contributions of conventional and renewable resources as important entities in electric power systems, as energy demand around the globe is increasing day by day. DG can also be defined as an electric-power-generating unit that is installed near the load center. When injecting DG into the distribution system, one should first know about the location, size, and type of DG unit in order to achieve the highest reliability standards. Locating a DG unit in a distribution network will affect the voltage profile, reliability, harmonics, and many other parameters of the distribution system [6]. There are two main approaches used to evaluate the reliability of distribution networks—namely, (a) the analytical method and (b) the Monte Carlo method.
The Monte Carlo method samples network component failures to compute the probabilities of the reliability indices, while analytical techniques use different mathematical expressions to calculate the reliability indices.
An ANN is an innovative machine learning methodology that is developed and derived from humans’ ability to copy or imitate once they learn. A power system is one of the potential areas in which an ANN can be utilized to achieve the highest standards [7]. Electric power reliability is one of the areas that has not received much attention in this regard.
This paper demonstrates the impact of DG on reliability, and an ANN approach was applied to find the optimal location of the DG. The Electrical Transient and Analysis Program (ETAP) tool was used to validate the results. For modeling of the network and system, reliability data that were available in RBTS were utilized. Based on the analytical method, the reliability indices were calculated. After injecting the DG at different locations, the reliability indices were evaluated in terms of their enhancement. The complete framework of this work is shown in Figure 2. This paper has seven sections; Section 1 gives a brief introduction to this work. Section 2 presents the literature about reliability. Section 3 gives a brief introduction of DG and its impacts. Section 4 presents a critical review of related work and describes how the problem was formulated. Section 5 presents the mathematical modeling. Section 6 provides a description of the simulations. Section 7 and Section 8 present discussions on the results and conclusions, respectively.

2. Electric Power System Reliability

In electric power systems, the main focus is to supply continuous energy to consumers or load points. Reliability is a subset of power quality and may be defined as the variation from standard voltage and standard frequency; lesser deviations from the standard voltage and frequency result in better power quality [6]. Figure 3 shows different aspects of sinusoidal waveforms in the context of reliability problems.
An electric power distribution network contributes up to 90% of the reliability problems due to the complex nature of its service, which contributes a large number of reliability issues; the other 10% is contributed by transmission and generation systems. Therefore, electric companies and utilities give importance to uplifting the reliability of distribution systems in order to improve the electric supply to load points [8].

3. Distribution Generation

DG can be defined as an electric-power-generating unit that is installed near the load center. By installing a DG near load centers, electric power transmission lines are bypassed, thus bringing the generation closer to the load centers [9], as shown in Figure 4.
A conventional electric supply system is a centralized system comprising generating units, transmission lines, and the distribution system. A conventional power system has poor reliability due to its complex configuration. A fault at one location can make the whole feeder trip, due to which all consumers connected at that feeder are affected. Therefore, with the help of modern technologies, power systems are changing, and new techniques are being implemented to make the current power systems more reliable [4].
A DG uses on-site power generation, and before it is connected to an electric distribution network, it feeds the distribution system with information about the exact location, its type (either non-conventional or conventional), and, most importantly, the size of the DG, which are all are important parameters to be considered [10].

4. Reliability and DG (Critical Review)

In [11], the optimal location of a DG was evaluated based on the performance indices derived for the reliability index and the total cost of power consumed by the system. Only three reliability parameters were analyzed, i.e., energy not supplied, total cost, and electricity market price; these do not show the complete picture of the reliability of a particular network. The most important parameters that are considered worldwide for analysis are SAIDI, SAIFI, and EENS.
Reconfigurations of distribution systems for constant loads and for optimal DG allocation and sizing problems were studied simultaneously to find an optimal condition for a distribution network based on operational thresholds and reliability improvements [12]. Energy that is not supplied and power losses are calculated by using network the reconfiguration approach in order to improve the reliability or reduce power losses, which looks impossible in the real world, as the reconfiguration of an existing network will create more problems regarding consumer’s localities and connectivity.
In [13], the proposed schemes were evaluated in a test workbench that used digital relays in different scenarios, which comprised DG penetration levels and changing network topologies. A self-healing system uses negotiations among agents to maximize the number of restored loads, while the agents of an adaptive protection system (APS) reset the protection settings after changes occur in the network topology and the state of the DGs. Relying on the capabilities of the APS scheme and making suppositions that it will change the current setting after DG penetration seems to be presumptive.
The transformation of a distribution grid from passive to active imposes the need to consider the effects of a DG during planning [14]. This literature overview does not address the importance of reliability in the context of DG in planning and designing distribution networks, as it has now been established that 90 percent of outages or interruptions are due to reliability problems. This establishes that reliability is one of the most important factors to consider in the planning and design of a distribution network.
An analytical method was used in [15], where the impacts of using photovoltaics, a wind turbine generator, an electricity storage system, and a diesel generator on the reliability of a power distribution system were investigated. It was not established in the work how the authors modeled the DG sources, nor was it demonstrated how active and passive failure rates of the sources were incorporated and from where they were taken, as every component in a distribution system has its own active and passive failure rates.
In [16], the optimal planning of a DG was shown to have great importance in ensuring that the performance of the distribution network could meet the expected power quality and reliability. All analytical techniques with applications in assessing the voltage profile, power losses, etc. were discussed in detail, while information about the analytical techniques used for the reliability analysis was inadequately discussed or was not provided.
To investigate the impact of DG on reliability, modified particle swarm optimization was used for optimize the size and location of the DG [17]. Power loss reduction was analyzed through the injection of DG into different bus bars. The optimal size and location were identified with the hit and trial method. Reliability analyses were performed with only two cases. Two DG units were installed un-deterministically at different locations, and reliability indices were recorded.
In [18], the reliability of a network with and without DG units was investigated. The network that was modeled did not have specified data of the failure rates of the components. Normally, a standard system is modeled so that the results can be validated with other techniques or approaches. The hit and trial method was used to plant the DG units.
Power transmission and distribution companies provide reliable power with minimal customer interruptions (CIs) and customer interruption minutes (CMIs). The reliability block diagram (RBD) technique was used to develop precise reliability models for 120 substations by using field data [19]. It is not only the restoration factor that plays an important role, but also parameters such as failure rates and their nature. Analyses were performed by considering only one factor. There are many other factors that affect reliability as a whole. The main factors that affect the reliability of any electric system are the type of configuration of the network (either radial or ring), the nature of the consumers, and the distance of the feeder from the load points.
In [20], an analytical technique was used for an evaluation of the reliability of electrical power distribution networks. All of the possible failures of each component were considered, and the reliability was evaluated in terms of system reliability indices such as SAIFI, SAIDI, ENS, and ASAI. No remedial actions were suggested for future networks if a particular network lags from a reliability perspective. However, the reconfiguration of existing or real electric distribution systems will have diverse impacts, as the localities of load centers cannot be changed.

5. Problem Formulation

The methodologies applied for modeling DG units and their impacts on reliability have not been adequately addressed in the current scientific literature. The location/placement and size of the DG are design criteria problems that have relevant effects on the reliability of a distribution system. Methodologies for determining the optimal location, size, and type of DG are of particular interest.
In this research work, a reliability assessment of modern distribution networks was conducted with an integrated DG source, which was modeled in the Electrical Transients and Analysis Program (ETAP), and its impact was analyzed. Different tests based on the hit and trial method were conducted to find the optimal location in the distribution system.
After that, an ANN technique was used to find the optimal location for the DG, and the results were validated with an analytical approach. The applied approach was implemented on RBTS bus 2 [21] to validate our findings. A flowchart of the proposed approach is given in Figure 5.

6. Reliability Modeling and Evaluation

The modeling process was based on component modeling and network modeling, as detailed below.

6.1. Component Modeling

Every component in distribution system has its own interruption frequency, which can be denoted by λ. The sums of the active failures ( λ a ) and passive failures ( λ p ) combine to form λ. The equation is given below:
λ = λ a + λ b
The active failure rates of components are due to short circuits or foul weather conditions. These faults or failures of components are restored after replacement or repair. However, passive failures are scheduled maintenance or open-circuit faults [22].

6.2. Network Modeling

Network modeling is a component-based approach in which components arranged in series and parallel combine to make a network. Figure 6 and Figure 7 show the configurations when components are arranged in series or parallel, while Equations (3) and (4) show how they are solved.
For series configurations:
λ s y s t e m = λ s 1 + λ s 2
r s y s t e m = λ s 1 · r s 1 + λ s 2 · r s 2 + λ s 1 · r s 1 λ s 2 · r s 2 λ s y s t e m
For parallel configurations:
λ s y s t e m = λ s 1 · λ s 2 r s 1 + r s 2 1 + λ s 1 · r s 1 + λ s 2 · r s 2   λ s 1 · λ s 2 r s 1 + r s 2
r s y s t e m = r s 1 · r s 2 r s 1 + r s 2
λ s 1 :   f a i l u r e   r a t e   o f   t h e   1 s t   c o m p o n e n t .
λ s 2 :   f a i l u r e   r a t e   o f   t h e   2 n d   c o m p o n e n t .
λ s y s t e m :   f a i l u r e   r a t e   o f   t h e   s y s t e m .
r s 1 :   o u t a g e   d u r a t i o n   o f   t h e   1 s t   c o m p o n e n t .
r s 2 :   o u t a g e   d u r a t i o n   o f   t h e   2 n d   c o m p o n e n t .
r s y s t e m :   o u t a g e   d u r a t i o n   o f   t h e   s y s t e m .

6.3. System Modeling

The IEEE has defined reliability indices based on load-point indices and system indices [23]. Evaluation of these indices helps us to know about the reliability of a distribution system. Load-point indices are calculated on the basis of component failure rates when arranged in parallel and series, while system indices are calculated on the basis of interruption frequency and interruption durations for all customers connected to the system. Mathematically, these indices are written as follows.

6.3.1. Load-Point Indices

Equations (6)–(9) show the mathematical expressions for failure rates, annual outages, and average outages, and the cost of interruptions at a given load point.
Average Failure Rate at Load Point i, λ i (failures per year):
λ i   = Σ j ϵ N e λ e , j
Annual Outage Duration at Load Point i, U i hours   per   year :
U i = Σ j ϵ N e λ e , j · r i   j
Average Outage Duration at Load Point i, r i   hours :
A v e r a g e   o u t a g e   d u r a t i o n   a t   l o a d   p o i n t   i ,   r i = A n n u a l   o u t a g e   d u r a t i o n   a t   l o a d   p o i n t   i ,   U i A v e r a g e   f a i l u r e   r a t e   a t   l o a d   p o i n t   i ,   λ i
Expected Interruption Cost Index at Load Point, E C O S T i   dollars   per   year :
E C O S T i = P i   Σ j ϵ N e   f r i   j · λ e , j
  λ i = A v e r a g e   f a i l u r e   r a t e   a t   p o i n t   i .
U i = A n n u a l   o u t a g e   d u r a t i o n   a t   l o a d   p o i n t   i .
  r i   j = F a i l u r e   d u r a t i o n   a t   l o a d   p o i n t   i   d u e   t o   a   f a i l e d   e l e m e n t   j .
Σ = f u n c t i o n   o f   S u m m a t i o n .
  N e   = T o t a l   n u m b e r   o f   e l e m e n t s   w h o s e   f a u l t   w i l l   i n t e r u p t   l o a d   p o i n t   i .
  λ e , j = A v e r a g e   f a i l u r e   r a t e .
  P i = A v e r a g e   l o a d   o f   l o a d   p o i n t   i .
f r i   j = C o m p o s i t e   c u s t o m e r   d a m a g e   f u n c t i o n .

6.3.2. System Indices

The IEEE has defined many system indices to evaluate reliability, but only some are used by distribution companies around the globe for the evaluation of reliability. This research will also focus on these indices. Their mathematical expressions are given in Equations (10)–(12) [6]:
System Average Interruption Frequency Index (SAIFI):
SAIFI = Σ N i   N T
System Average Interruption Duration Index (SAIDI):
SAIDI = Σ r i N i N T
Expected Energy Not Supplied Index at Load Point,
E E N S i   ( M W   h o u r s   p e r   y e a r ):
E E N S i = P i   · U i
Σ :   F u n c t i o n   u s e d   f o r   s u m m a t i o n .
  r i :   R e s t o r a t i o n   t i m e   i n   m i n u t e s .
  N i :   T o t a l   n u m b e r   o f   i n t e r u p t e d   c u s t o m e r s .
  N T :   T o t a l   n u m b e r   o f   s e r v e d   c u s t o m e r s .

6.4. Injecting a DG Source

A wind turbine with 1 MW capacity is modeled as a DG source that injects both real and reactive power into the system. The wind turbine generator is connected to the distribution network with a protection device, i.e., a circuit breaker in series to isolate the DG in faulty conditions. Based on operational observations, the failure rate is considered to be 0.03 f/year, while the repair time is 50 h [24]. Figure 8 depicts the DG set when injected into the distribution system.

6.5. Modeling in ETAP

The ETAP tool was selected for the modeling of the test cases in order to validate the results. ETAP is a powerful electric power simulation tool with the help of which many analyses related to power systems can be performed. The reliability analysis with the help of ETAP used an analytical approach to evaluate the distribution system reliability. RBTS bus 2 [25] was modeled in ETAP, as shown in Figure 9. The active and passive failure rates of the components, load-point capacity, and cable lengths were taken as per RBTS.

7. Results and Discussion

Four cases in different scenarios are created, evaluated, and analyzed in order to depict different impacts. The cases included:
  • Reliability analysis with no DG connected.
  • Reliability cost analysis.
  • Injecting the DG at different locations to find the optimal location.
  • Using the ANN technique to find the optimal location for DG.

7.1. Case 1: Reliability Analysis with No DG Connected

According to the IEEE standards, the SAIFI index must be less than 1.765 f/yr. The reliability indices of the test system models were calculated after evaluating the SAIFI, SAIDI, and EENS, as shown in Table 1, which shows a higher reliability than the IEEE standard value.

7.2. Case 2: Reliability Cost Analysis

Many customers, such as residential, industrial, commercial, and governmental customers, that are connected to different feeders in a distribution system are affected by interruptions that are caused due to component failures or deficits in the energy supplied to the load centers. This deficiency in energy that is not supplied can cost millions of dollars for utility companies in minutes. Cost-wise analysis was performed with case 1 as a reference. Table 2 shows how interruptions in different load centers, such as commercial, industrial, and residential centers, can cause cost utility companies.

7.3. Case 3: Injecting DG at Different Locations to Find the Optimal Location

In this case, DG units were installed at different points in the distribution system, and the system reliability indices were evaluated. By installing DG sources at seven localities in the system, the recorded indices showed that the optimal or best place to install DG was location A. Figure 10 shows the DG placement at location A. The same was repeated for all other locations. Table 3 depicts the best location in the distribution system.
The graphical representation in Figure 11 shows the comparison of the SAIFI index at different locations, from which it is clear that location A is the best location for injecting DG.

7.4. Implementation of an ANN

An ANN is a machine learning methodology that was developed and derived from humans’ ability to copy or imitate once they learn. There is now a trend of applying techniques such as the ANN to the power system domain. Electric power reliability is one of the areas that has not received any attention in this regard. Reliability problems associated with distribution systems have a large impact on consumer outages. The complex nature of distribution systems with unlimited components attached in series and parallel contributes to reliability. DG is one way to increase the reliability of a distribution system; an ANN can be used to formulate a possible solution for improving the reliability.
The main interest in using an ANN in this research was to model the most suitable algorithm for finding the best possible location for DG in a distribution network, which can lead to the improvement of the reliability of the distribution network in terms of SAIDI, SAIFI, and EENS. In implementing the ANN-based model, the intention was to evaluate the predictive capabilities of the proposed ANN in such a way that it stood a reasonable chance of performing well in terms of selecting the right location for the DG in the given distribution network, to establish its effectiveness, and to validate its implementation. Figure 12 shows the layers and how these layers were modeled.
A Matlab tool was used to code the ANN technique. Two types of datasets were formulated: a training dataset and a testing dataset. The ANN was trained on 70 data points or load points; the x-axis in the graph shows the load points with four different types of input scenarios, as shown in the input layer in Figure 12. Based on these inputs, the y-axis shows the location of the DG unit, which is to be placed at a particular distance from the feeder. Figure 13 shows the training dataset of 70 load points in graphical form.
After the ANN was trained with the RBTS training dataset, random tests of 25 datasets or load-point data were used to find the best possible location of the DG for installation at that particular node point. Figure 14 shows the plotting of the testing dataset, in which three points were selected for validation. After placing the DG at these localities, reliability tests were performed in ETAP, and the system indices were recorded.

7.4.1. Case 4—Scenario 1: Validation in ETAP at Point 1

The DG was placed near load point 1 at a distance of approximately 500 m from the feeder, as per the test dataset. Figure 14 shows the placement of the DG. After placing the DG at a specified distance, as shown in Figure 15, a reliability test was performed and the indices were recorded. Table 4 shows that the reliability indices slightly decreased compared to when no DG was installed. This depicts a slight improvement in reliability.

7.4.2. Case 4—Scenario 2: Validation in ETAP at Point 12

The DG was placed near load point 12 at a distance of approximately 1200 m from the feeder, as per the test dataset in Figure 14. After placing the DG at a specified distance, as shown in Figure 16, a reliability test was performed and the indices were recorded. Table 5 shows that the reliability indices slightly decreased as compared to point 1. This depicts a slight improvement in reliability.

7.4.3. Case 4—Scenario 3: Validation in ETAP at Point 14

The DG was placed 1400 m from load point 14, as shown in Figure 14. Figure 17 shows the injection of the DG at the optimal location predicted by the ANN. The results in Table 6 show that the indices had the greatest decrease as compared to the previous positions. From the indices recorded here, it can be concluded that point 14, which was predicted by the ANN as the best location for the DG, was validated, as the system indices were further decreased and the reliability was enhanced.
As evidenced by Table 6, SAIFI, SAIDI, and EENS showed a reduction to acceptable IEEE levels and the system reliability improved when using the ANN technique to determine the DG location. The implementation of the ANN technique is a completely new approach to the selection of locations for DG units, which confirms that applying such a computational technique could decrease human errors that are associated with hit and trial methods and decrease the computational complexities and computational time. Table 7 shows a comparative analysis between the results achieved here and previously published related work.

8. Conclusions and Future Work

From the results generated here, it can be established that the proper installation of DG at a suitable location in a distribution network increases the reliability of the distribution network. The distribution system reliability can be further enhanced by installing DG at locations near load centers in the distribution system. The reliability was enhanced, as the SAIFI value was reduced by almost 40%, SAIDI by 25%, and EENS by 25% after injecting DG into the distribution network.
The implementation of an ANN technique is a unique approach for the selection of locations for DG units, which confirms that applying such a computational technique could decrease human errors that are associated with hit and trial methods and decrease computational complexities and computational time. The ANN technique showed improved results when applied here, as the system indices were decreased to acceptable levels according to the IEEE.
Since this work utilized a existing static distribution networks, dynamic models must be addressed for future long-term planning of DG units. More advanced versions of AI techniques could be used for the optimal placement and sizing of DG units in order to address reliability issues as well.

Author Contributions

Conceptualization, S.A. and A.u.A.; methodology, S.A.; validation, S.A. and A.u.A.; writing—original draft preparation, S.A.; writing—review and editing, S.A. and A.u.A.; supervision, A.u.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Typical power system [4].
Figure 1. Typical power system [4].
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Figure 2. Framework for the proposed work.
Figure 2. Framework for the proposed work.
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Figure 3. Reliability problems in the context of sinusoidal waveforms.
Figure 3. Reliability problems in the context of sinusoidal waveforms.
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Figure 4. DG unit and storage capabilities.
Figure 4. DG unit and storage capabilities.
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Figure 5. Flowchart of the proposed method.
Figure 5. Flowchart of the proposed method.
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Figure 6. Block diagram of series components.
Figure 6. Block diagram of series components.
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Figure 7. Block diagram of parallel components.
Figure 7. Block diagram of parallel components.
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Figure 8. DG unit injecting both real and reactive power [6].
Figure 8. DG unit injecting both real and reactive power [6].
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Figure 9. RBTS bus 2 was modeled in ETAP [25].
Figure 9. RBTS bus 2 was modeled in ETAP [25].
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Figure 10. DG placement at location A.
Figure 10. DG placement at location A.
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Figure 11. Comparison of the SAIFI index at different locations after injecting DG.
Figure 11. Comparison of the SAIFI index at different locations after injecting DG.
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Figure 12. The layers and how these layers were modeled.
Figure 12. The layers and how these layers were modeled.
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Figure 13. Graphical presentation of DG locations using the ANN training dataset.
Figure 13. Graphical presentation of DG locations using the ANN training dataset.
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Figure 14. Outcome of the test dataset with marked locations for validation.
Figure 14. Outcome of the test dataset with marked locations for validation.
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Figure 15. Implementation in ETAP for validation of the results.
Figure 15. Implementation in ETAP for validation of the results.
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Figure 16. Implementation in ETAP for validation of the results.
Figure 16. Implementation in ETAP for validation of the results.
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Figure 17. Implementation in ETAP for validation of the results.
Figure 17. Implementation in ETAP for validation of the results.
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Table 1. Systems’ reliability indices with no DG connected.
Table 1. Systems’ reliability indices with no DG connected.
S.No.System IndicesResults
1SAIFI (f/Customer. year)1.97720
2SAIDI (h/Customer. year)7.95680
3EENS (MWh/year)117.8540
Table 2. ECOST for interruptions at selected load points.
Table 2. ECOST for interruptions at selected load points.
Sector NameLoad PointsOutage Rate (f/year)Avg. Outage Duration (h)Yearly Outage Duration (h/year)ECOST
Commercial SectorCommercial 12.70104.2711.544045,251.25 $/year
Commercial 23.13054.3713.682553,056.410 $/year
Industrial SectorIndustrial 11.73053.896.739545,251.25 $/year
Industrial 22.11154.098.635566,215.125 $/year
ResidentialResidential 11.59053.796.03354186.485 $/year
Residential 21.72053.886.68354683.128 $/year
Table 3. Systems indices at different locations.
Table 3. Systems indices at different locations.
SAIFI (f/Customer. year)SAIDI (h/Customer. year)EENS (MWh/year)
Without DG1.97727.9568117.854
A1.19796.009388.267
B1.32366.6311101.492
C1.20416.039189.672
D1.21106.072194.885
E1.32906.651498.689
F1.25376.286390.089
G1.25646.299791.254
Table 4. System indices at location 1 selected by the ANN.
Table 4. System indices at location 1 selected by the ANN.
S.No.System Indiceswith No DG UnitDG at Point 1 Selected by ANN
1SAIFI (f/Customer. year)1.97721.3323
2SAIDI (h/Customer. year)7.95688.7651
3EENS (MWh/year)117.8540124.715
Table 5. System indices at locations 1 and 12 selected by the ANN.
Table 5. System indices at locations 1 and 12 selected by the ANN.
S.No.System IndicesDG at Point 1 Selected by ANNDG at Point 12 Selected by ANN
1SAIFI (f/Customer. year)1.33231.2168
2SAIDI (h/Customer. year)8.76517.4972
3EENS (MWh/year)124.715111.820
Table 6. System indices at the optimal location selected by the ANN.
Table 6. System indices at the optimal location selected by the ANN.
S.No.System IndicesNo DGDG at Point 1 Selected by ANNDG at Point 12 Selected by ANNDG at Point 14 Selected by ANN
1SAIFI (f/Customer. year)1.97721.33231.21681.2065
2SAIDI (h/Customer. year)7.95688.76517.49726.0904
3EENS (MWh/year)117.8540124.715111.820100.731
Table 7. Comparison of the proposed approach with related work.
Table 7. Comparison of the proposed approach with related work.
Proposed ApproachBattu, N. et al. (2015)Adefarati, T. et al. (2017)
Technique Used for Assessment of ReliabilityAnalytical.Analytical.Analytical.
Approach Used for Improving ReliabilityInjection of DG at the optimal location.Injection of DG at different locations.Injection of a DG unit at different locations.
InnovationAn ANN model was utilized, as errors associated with hit and trial methods and computational complexities were decreased.No innovation; the hit and trial method was used. Decision of DG placement based on trade-off between location and quantum of DG.No innovation; the hit and trial method was used for injection of DG into RBTS.
Results of ImprovementReduction of SAIFI by 40%, SAIDI by 25%, and EENS by 25%.Improvement of reliability based on reduction of the energy not supplied (ENS) index.Reduction in ECOST and EENS indices.
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Ahmad, S.; Asar, A.u. Reliability Enhancement of Electric Distribution Network Using Optimal Placement of Distributed Generation. Sustainability 2021, 13, 11407. https://doi.org/10.3390/su132011407

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Ahmad S, Asar Au. Reliability Enhancement of Electric Distribution Network Using Optimal Placement of Distributed Generation. Sustainability. 2021; 13(20):11407. https://doi.org/10.3390/su132011407

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Ahmad, Sanaullah, and Azzam ul Asar. 2021. "Reliability Enhancement of Electric Distribution Network Using Optimal Placement of Distributed Generation" Sustainability 13, no. 20: 11407. https://doi.org/10.3390/su132011407

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