- Open Access
- Total Downloads : 0
- Authors : Sina A. Sahidaini
- Paper ID : IJERTV7IS100040
- Volume & Issue : Volume 07, Issue 10 (October – 2018)
- Published (First Online): 05-01-2019
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Electrical Power Quality Improvement through Modeling and Optimization of Passive Harmonic Filter
Electrical Power Quality Improvement through Modeling and Optimization of Passive Harmonic Filter
Sina A. Sahidaini
Department of Electrical Engineering, College of Engineering Mindanao State University-IIT
Iligan City, Philippines College of Maritime Education
Zamboanga State College of Marine Sciences and Technology Zamboanga City, Philippines
Abstract This paper studies on the harmonic distortion and the methods to mitigate the harmonics for a system with Load variation and different harmonic distortion level. A group of passive shunt filter are designed to reduce harmonic distortion and correct power factor. The proposed method optimize the group filter configuration which is suitable for load and distortion level variation to get best scenario out of passive harmonic filters. Maximum level for power factor as long as it is positive, consider as constraint and minimizing harmonics distortion index such as Total Harmonic Distortion (THD) and its Individual Harmonic Distortion (IHD) content are factors for objective function. Genetic Algorithm has been used as Optimization technique and software to simulate are MATLAB for genetic algorithm and ETAP for filter simulation in power system.
Keywords–Load Variation, Harmonic Distortion, Power Quality.
-
INTRODUCTION
Recently, there is an increasing concern about the environment. The need to generate pollution-free energy has triggered considerable effort toward renewable energy (RE). RE sources such as solar, wind, flowing water and biomass offer the promise of clean and abundant energy. They do not generate any greenhouse gases and are inexhaustible. Solar Power, in particular, is especially attractive for Philippines. In the era of renewable energy, wind power and solar Energy are mostly developed and matured technology around the globe. It is converted into a more convenient alternating current (AC) power through an inverter system. [1]
Advance in technology of semiconductor devices has led to a revolution in electronic technology over the past decade and have more tendency in future.
However rise in the Power Quality problem is due to power equipment which include adjustable-speed motor drives (ASDs), electronic power supplies, direct current (DC) motor drives, battery chargers, electronic ballasts. Power sources act as non-linear loads, drawing a distorted waveform that contains harmonics. These harmonics can cause problems ranging from telephone transmission interference to degradation of conductors and insulating material in motors and transformers. Therefore it is important to gauge the total effect of these harmonics [2]. Schwanz and Bollen have conducted a comprehensive review on solutions of harmonic
mitigation techniques using active and passive filters [3]. Jain and Sing estimated harmonics in modern power systems narrowing down key issues and challenges [4].
A paper presented by Adel M. Sharaff, Michael E. Fisher a novel optimization design technique for power system shunt filters to ensure harmonic reduction and noise mitigation on the electrical utility grid. The proposed filter design is based on the minimization of a composite objective function depicting the three main filter objectives of minimum harmonic current penetration into the electric grid system, maximum current absorption by the harmonic filter and minimum harmonic voltage distortion at points of common coupling.
Theory for the Design of C-type Filter by Yao XIAO, Jie ZHAO, Shijie MAO Based on the theoretical analysis, the paper introduces an algorithm for calculating the parameters of C-type filter that has not been published before. Firstly, the relationships of all parameters are established and discussed. Then, Parameters with least cost of the filter are also derived. Finally, the method is testified by the parameters of C-type filters having been used in some HVDC projects. Young-Sik Cho and Hanju Cha present how to select tuning factor and quality factor in designing of a single-tuned passive harmonic filter. Tuning factor and quality factor must be considered before a decision of filter parameters(R, L and C). Rampant rise in population, energy demand, economic growth and emissions have popularized renewable energy sources [6-7].
Flow of currents in longer HVDC and HVAC lines and overloaded distribution transformers cause line losses [8].
-
FILTER DESIGN
The most common type of passive filter is the single- tuned notch filter. This is the most economical type and is frequently sufficient for the application. The notch filter is series-tuned to present a low impedance to a particular harmonic current and is connected in shunt with the power system. Notch filters can provide power factor correction in addition to harmonic suppression. In fact, power factor correction capacitors may be used to make notch filters.
The notch harmonic h notch is related to the fundamental frequency reactance by:
(1)
Note that XC in this case is the reactance of one leg of the delta rather than the equivalent line-to-neutral capacitive reactance. If phase-to phase voltage and three-phase kvar are used to compute XC, as previously described, the factor 3 would be omitted. Also, filters must be designed with the capacity of the bus in mind. The temptation is to size the current-carrying capability based solely on the load that is producing the harmonic. However, a small amount of background voltage distortion on a very strong bus may impose excessive duty on the filter.
Fig. 1 Creating a fifth-harmonic notch filter and its effect on system response.
-
Harmonic Filter Design Procedure
In order to design a harmonic filter, information about the local power system, including environmental data, is required. Power system information includes characteristics, such as:
The nominal line-to-line voltage,
-
Typical equipment Basic Insulation Level (BIL) for the system voltage level,
-
Fundamental frequency,
-
System configuration, and
-
Impedance of system components
A clear understanding of equipment location (i.e. indoor or outdoor), operating constraints, equipment current duty-cycle,
switching operation rates, environmental data (such as ambient temperature and wind loading), harmonic measurements or manufacturer harmonic characteristics, is important to consider before starting the filter design process.
-
-
Determine Harmonic Filter Bank kVAr Size
As described previously, the filter equipment provides the system with capacitive, reactive power for power factor improvement, which helps maintain voltage during heavy loads, in addition to filtering the harmonics. The Effective kVAr size (2) of the filter depends on the capacitive, reactive power requirements for power factor, as well as voltage control, where the required value is commonly determined by power flow programs.
(2)
-
Select Initial Harmonic Filter Tuning
Filter tuning is necessary to reduce harmonic voltage and current distortion, in order to meet the required harmonic performance. The harmonic filter will typically be tuned to the lower frequency of the most significant harmonic. However, it is recommended that the harmonic filter be tuned between 3 to 15% below the desired frequency to provide sufficient harmonic filtering, and also to allow room for possible filter detuning. Harmonic filter performance across the whole frequency spectrum, at the filter location side(for both normal and contingency conditions) should be considered.
If the level of harmonic distortion is not crucial, the customer may want to avoid overloading the harmonic filter capacitor with harmonic currents, without creating resonance with the system. Then the filter has to be ungrounded to avoid 3rd harmonic resonance with system and tuned below the 5th harmonic to avoid resonance at the characteristic harmonic.
-
Optimize the Harmonic Filter Configuration to Meet Harmonic Guidelines
The IEEE Standard 519-1992 provides recommendations to satisfy harmonic distortion limits. The filter is supposed to meet current and voltage distortion requirements for normal system configuration, as well as abnormal conditions. In cases where the distortion levels remain high, a new parallel resonance with the system may be a possible cause. Filter re- tuning or multiple-tuned harmonic filter installations can help to solve this problem:
-
The number of harmonic filters.
-
Filter tuning and side locations.
-
Values of capacitance, inductance and reactance,
-
Allowable tolerances for capacitance, inductance and resistance,
-
Q (X/R ratio) of the harmonic filter reactor at the tuned frequency,
-
As well as steady-state energy dissipation requirements for the harmonic filter resistors,
Can be the results of the harmonic study analysis. The harmonic voltage and current spectra, with fundamental and all significant harmonic frequencies for normal and contingency system conditions, is also important outcome of the analysis.
There is a common practice to use a harmonic simulation programs for possible operating conditions over frequency spectrum of the harmonic loads, meanwhile for a simple system this can be manually estimated.
-
-
Series (Single-Tuned) Filter
Figure 2 shows the circuit schematic and a typical impedance characteristic for the series or single-tuned filter.
Fig 2. Series (single-tune) Filter
This lter is tuned to suppress a single frequency and is designed based on three quantities:
-
The harmonic current order that requires blocking,
-
The capacitive reactive power that it is going to provide,
-
And its quality factor.
-
The voltage level and the fundamental frequency, which are given by the
System, must also be considered during the design process. In summary, the values used to dene the input parameters are:
h Tuning point of the lter (harmonic order) Reactive power of the lter [MVAr]
Q Quality factor
F System frequency [Hz]
V System voltage [kV]
The quality factor is a quantity that defines the bandwidth of the lter and, in this case, is expressed as the ratio between the reactance and the resistance of the lter. A typical range for Q is between 30 and 60.
The following equations can be applied for designing the lter:
(3)
(4)
(5)
(6)
(7)
Where, X is the reactance of the inductor or the capacitor at the tuned frequency. [5]
-
-
GENETIC ALGORITHM
Genetic algorithm is one of the main paradigms within evolutionary algorithms, which uses an analogy of nature. GA are a part of evolutionary computing, which is a rapidly growing area of artificial intelligence. These are search algorithms based on the mechanics of natural selection and natural genetics. It is an example of iterative search procedure that uses random choice as a tool to guide a highly explorative search through a coding of a parameter space and the reliability is improved by the principle of natural genetics. GA mimic the evolutionary process in nature, which is based on Darwins theory called the survival of the fittest, only the fittest individuals likely to survive and reproduce. In GA, instead of trying to optimize a single solution, works with a population of candidate solutions that are encoded as chromosomes. These chromosomes are having separate genes that represent the independent variables for the problem at hand. Algorithm begins with a set of solutions called population. New combinations of genes are generated from previous ones by exchanging segments of genetic material among chromosomes (known as crossover). In every generation, a new set of artificial creatures (strings) are created using bits and pieces of the fittest of the old and an occasional new part is tried for good measure. This is motivated by a hope, that the new population will be better than the older one. A fitness function must be provided for evaluating each string. Each solution is associated with a fitness value, based on the fitness function, to reflect how good it is. Solutions which are selected to form new solutions (offspring) are reproduced according to their fitness.
-
-
PROBLEM FORMULATION
Fig. 3. Flowchart for Harmonic Mitigation
Based on data were collected and statistical information, following cases are selected to be simulated:
TABLE 1. INHD% for 3rd and 5th
Line A
Line B
Line C
3rd
5th
3rd
5th
3rd
5th
Case A
10
14
10
15
12
15
Case B
14
15
15
16
16
17
Case C
16
16
16
17
20
20
Case D
17
21
19
23
25
28
TABLE 2. System Power
KW
Kvar
P.F
Case A
52.52
26.37
89.4
Case B
61.2
36.31
86.0
Case C
64.66
45.79
81.6
Case D
69.26
54.32
78.6
TABLE 3-system Harmonic Before implementation of Harmonic Filter
Fig. 4. Equivalent circuit Diagram
Five passive, three phase filter as shown in figure 4. Are used for 5th and 7th harmonic mitigation. While load are connected are in delta, with 240 line voltage at low side and 13.6 kv in high side and primary of transformer. Y/ connection of transformer minimize the 3rd harmonic at PCC.
-
RESULT AND DISCUSSION
Case A
Fig. 5. Harmonic spectrum for Case A without filter.
Case a consider minimum average load which can consider for actual operation of power system therefor computation for Filter for case A are presented in table 4.
Table 4. Computed Filter size for eliminating 5th harmonic only for
Qeff(Kvar) |
(Kvar) |
() |
C(µF) |
L(mH) |
|
10.4 |
3.614 |
0.6910 |
250 |
153.26 |
1.836 |
10.6 |
3.6770 |
0.6799 |
250 |
156.21 |
1.8017 |
10.8 |
3.7500 |
0.6667 |
250 |
159.15 |
1.768 |
11.00 |
3.8200 |
0.6545 |
250 |
162.1 |
1.736 |
11.20 |
3.8800 |
0.6428 |
250 |
165.05 |
1.7052 |
11.40 |
3.9580 |
0.6316 |
250 |
168 |
1.6753 |
11.60 |
4.0280 |
0.6207 |
250 |
170.95 |
1.6464 |
11.80 |
4.0970 |
0.6102 |
250 |
173.88 |
1.618 |
12.00 |
4.1667 |
0.6000 |
250 |
176.84 |
1.5915 |
12.20 |
4.2360 |
0.5901 |
250 |
179.79 |
1.5654 |
12.40 |
4.3050 |
0.5806 |
250 |
182.73 |
1.5402 |
12.60 |
4.3750 |
0.5714 |
250 |
185.68 |
1.5158 |
12.80 |
4.4440 |
0.5625 |
250 |
188.63 |
1.492 |
13.00 |
4.5140 |
0.5539 |
250 |
191.56 |
1.469 |
13.180 |
4.5780 |
0.5461 |
250 |
194.3 |
1.448 |
simulation
THD% |
I(%)5th |
I(A) 5th |
I(%)7th |
I(A) 7th |
|
Case A |
16.66 |
14.573 |
20.4 |
7.331 |
10.3 |
Case B |
18.71 |
15.924 |
27 |
7.93 |
13.4 |
Case C |
21.28 |
16.512 |
31.2 |
9.192 |
17.3 |
Case D |
28.36 |
24.08 |
50.4 |
9.592 |
20.1 |
Where:
: Effective Kvar of filter per Phase
In table 6. The filter of case a. are simulated on case b, but it only fit up to 12 kvar, because more than 12 kvar, the system power factor become negative. Result that 13.18 kvar filter are not fit for case b. like the processes in case b, must be applied for other cases to find a range which is suitable for all cases.
: Filter Inductive resistance of filter
: Capacitor Voltage
C (µF): Capacitor Size in micro Farad
L (mH): Inductance of Filter Reactor in mili-Henry
As far as Power factor is constraint, to kept positive and maximum for case a, two identical 13.18KVar are in parallel taking down fifth harmonic for minimum average load, a range from 10.4 Kvar to 13.18 kvar are computed, to be simulated one by one to produce our fitness function for genetic algorithm(GA). The result in table 4 are simulated in three identical filter for case b, four identical filter for case c and five identical filter for case d. to ensure that whether case a can be basis for filter configuration, the result must pass constraint of maximum power factor and positive for safer operation and avoid over voltage at Point of Common Coupling PCC.
Table 5. Filter simulation result for case a.
THD% |
P.F |
(A) |
|||
10.4 |
8.65 |
2.48 |
0.014 |
99.4 |
3.1 |
10.6 |
8.58 |
2.248 |
0.014 |
99.48 |
2.8 |
10.8 |
8.56 |
2.181 |
0.014 |
99.55 |
2.8 |
11.00 |
8.54 |
2.144 |
0.015 |
99.62 |
2.7 |
11.20 |
8.52 |
2.105 |
0.015 |
99.69 |
2.7 |
11.40 |
8.51 |
2.065 |
0.015 |
99.74 |
2.6 |
11.60 |
8.49 |
2.031 |
0.016 |
99.79 |
2.6 |
11.80 |
8.48 |
1.999 |
0.016 |
99.84 |
2.5 |
12.00 |
8.46 |
1.968 |
0.016 |
99.88 |
2.5 |
12.20 |
8.44 |
1.938 |
0.016 |
99.91 |
2.4 |
12.40 |
8.45 |
2.006 |
0.017 |
99.94 |
2.5 |
12.60 |
8.41 |
1.883 |
0.017 |
99.97 |
2.4 |
12.80 |
8.41 |
1.915 |
0.017 |
99.98 |
2.4 |
13.00 |
8.39 |
1.882 |
0.017 |
99.99 |
2.4 |
13.180 |
8.36 |
0.041 |
0.018 |
100 |
1.803 |
Simulation result by ETAP are presented in Table 5. In which shows that THD% is minimum at 13.18 Kvar, filter size while result in a power factor unity as well. Taking note that table 5. Are points in which will help us to build up a fitness function for genetic algorithm by interpolation and curve fitting method. So far this is the best filter size but only when the system are on average minimum system load. However this filter range must be simulated for other cases to fit the constraint.
THD% |
P.F |
(A) |
|||
10.4 |
10.39 |
1.891 |
0.014 |
99.61 |
2.8 |
10.6 |
10.35 |
1.71 |
0.015 |
99.69 |
2.5 |
10.8 |
10.34 |
1.685 |
0.015 |
99.76 |
2.5 |
11.00 |
10.32 |
1.655 |
0.015 |
99.83 |
2.4 |
11.20 |
10.32 |
1.782 |
0.015 |
99.87 |
2.6 |
11.40 |
10.28 |
1.597 |
0.016 |
99.92 |
2.3 |
11.60 |
10.26 |
1.57 |
0.016 |
99.96 |
2.3 |
11.80 |
10.24 |
1.546 |
0.016 |
99.98 |
2.3 |
12.00 |
10.21 |
1.522 |
0.017 |
100 |
2.2 |
Table 6. Filter simulation result for case b. but base on case a.
Because compare to active filter passive filters are fixed even though load changes.
TABLE 7. Filter simulation result for case c. but base on case a.
THD% |
P.F |
(A) |
|||
10.4 |
14.51 |
1.554 |
0.014 |
99.75 |
2.4 |
10.6 |
14.48 |
1.419 |
0.015 |
99.83 |
2.2 |
10.8 |
14.45 |
1.394 |
0.015 |
99.9 |
2.2 |
11.00 |
14.42 |
1.37 |
0.015 |
99.95 |
2.1 |
11.20 |
14.4 |
1.463 |
0.015 |
99.97 |
2.3 |
11.40 |
14.36 |
1.322 |
0.016 |
100 |
2 |
TABLE 8. Filter simulation result for case d. but base on case a.
THD% |
P.F |
(A) |
|||
10.4 |
14.51 |
1.554 |
0.014 |
99.75 |
2.4 |
10.6 |
14.48 |
1.419 |
0.015 |
99.83 |
2.2 |
10.8 |
14.45 |
1.394 |
0.015 |
99.9 |
2.2 |
11.00 |
14.42 |
1.37 |
0.015 |
99.95 |
2.1 |
11.20 |
14.4 |
1.463 |
0.015 |
99.97 |
2.3 |
11.40 |
14.36 |
1.322 |
0.016 |
100 |
2 |
Table 5 to 6 are evidently showing sizing filter base on minimum average load result in negative power factor for other cases at case (a) optimal filter size. This process are through for all cases to find a fitness function which is fit for only constraint for all cases. The finding are presented in table 9.
TABLE 9. Acceptable filter size for all cases base on constraint of pf 100.
Qeff(Kvar) |
(Kvar) |
() |
C(µF) |
L(mH) |
|
8 |
2.777 |
0.9 |
250 |
117.89 |
2.387 |
8.2 |
2.8472 |
0.878 |
250 |
120.84 |
2.3291 |
8.4 |
2.9166 |
0.8571 |
250 |
123.79 |
2.274 |
8.6 |
2.986 |
0.8372 |
250 |
126.73 |
2.221 |
8.8 |
3.0555 |
0.8182 |
250 |
129.68 |
2.17 |
9 |
3.125 |
0.8 |
250 |
132.63 |
2.1221 |
9.2 |
3.194 |
0.7826 |
250 |
135.57 |
2.0759 |
9.4 |
3.263 |
0.766 |
250 |
138.52 |
2.0318 |
9.6 |
3.333 |
0.75 |
250 |
141.47 |
1.9894 |
9.8 |
3.403 |
0.7347 |
250 |
144.42 |
1.9488 |
10 |
3.472 |
0.72 |
250 |
147.37 |
1.9098 |
10.2 |
3.542 |
0.7059 |
250 |
150.31 |
1.872 |
10.4 |
3.6111 |
0.6923 |
250 |
153.26 |
1.8364 |
10.6 |
3.6806 |
0.6792 |
250 |
156.21 |
1.802 |
10.8 |
3.75 |
0.6667 |
250 |
159.15 |
1.7684 |
According table 9 are more convenient with the constraint of pf 100. Table 9 are proper to build up the fitness function for Genetic algorithm in the way that each result in simulation is representing a function in which decision variable is the,
only and it is depend on of reactance and Kvar of the filter.
Therefore, based on the result on table 9 we formulate our optimization process as follows:
Optimization |
Process |
|
1 |
Decision Variable |
filter |
2 |
Objective function |
minimize : THD%, IHD (%) IHD(A) Maximize: System Power factor |
3 |
Constraint |
System P.F 1.00 |
TABLE 10. Optimization process
Figure 8. 5th harmonic filter result for IHD%
Fig. 6. Curve fitting of Table 9 done by Matlab interpolation
Figure 6 is made out of data in table 9. By Matlabe curve fitting interpolation Informative regarding filter size throughout harmonic mitigation, wherein how filter size change in capacitor and reactance for duration of finding optimize size of filter.
TABLE 11. Result of filter optimization for 5th harmonic only
IHD5th%
30
25
20
15
10
5
0
case A Case B Case C Case D
Old New
Figure 9. 5th harmonic filter Result for System P.F
THD% |
I(%)5th |
P.F |
|
Case A |
8.56 |
2.181 |
99.55 |
Case B |
10.34 |
1.685 |
99.76 |
Case C |
14.45 |
1.394 |
99.9 |
Case D |
16.37 |
1.698 |
99.99 |
TABLE 12. . Result of optimization for 7th harmonic filter only
Fig. 7. 5th harmonic filter only result for THD%
THD% |
I(%)7th |
P.F |
|
Case A |
18.21 |
0.425 |
99.55 |
Case B |
22.18 |
0.322 |
99.76 |
Case C |
26.29 |
3.19 |
99.73 |
Case D |
40.46 |
2.634 |
99.91 |
Fig. 9. 7th only harmonic filter result for THD%
Figure Labels: Use 8 point Times New Roman for Figure
Figure 10. 7th only harmonic filter result for IHD%
\
Fig. 11. 7th only harmonic filter result for system P.f
Fig. 12. THD% for all cases and different filter set
Fig. 13. IHD% 5th for all cases and different filter set up
Fig.14. System Power Factor for different Load cases
Four cases for load study and five filters configuration are optional, and depend on system study and monitoring period. In Figure 14. Represent propose filter configuration constraint has been well maintained for all load cases and different filter setup and system power factor well maintained. In 5th only filter configuration has a better limiting on their respective tuning frequency, to limit Individual harmonic. In 7th only harmonic THD% system for all cases, dramatically has been increased, therefor contradicting objective function to minimize THD%. In spite minimizing IHD7th % in lowest for all cases compare to other filter set up. To achieve optimization, objective function must be fulfilled.
Filters configuration outcomes are summarized in table 14.
And assessed by objective function.
Filter configuration |
Objective Function |
||
THD% |
IHD% |
P.F | |
5TH harmonic filter |
Reduced |
Reduced |
Optimized |
7th Harmonic Filter |
Worsen |
Reduced |
Optimized |
Both 5th & 7th harmonic filter |
Optimized |
Optimized |
Optimized |
TABLE 14. Table of summaries of filter configuration for different cases.
IV. CONCLUSION
In this paper, study on harmonic mitigation by optimizing passive harmonic filter set for load changing and THD% variation has been carried out. Optimized filter configuration by implementing Genetic Algorithm on various fitness function or multi-objective function to maximize system power factor, minimize THD% and IHD% for 5th and 7th harmonic. To avoid over voltage, power factor must be Less than 1.0, and it is consider optimization constraint. The result shows that 5th harmonic has acceptable performance and in all cases perform well while 7th harmonic filter worsen THD%. A combination of 5th and 7th harmonic filter configuration has better performance compare to other set up. However we have to take note filter set up depend on period of data collection and power system output in data analysis, for example in this study data were collected for a period of one week, if it is extended can have smoother or clear view of load changes in system will be provided. The importance we have to figure it out how load in system are changing and how it is effecting system harmonic.
The advantage of this study optimization carried out by finding
of filter, therefor it can be implemented to not just single tune but C-type filter as well. The hassle of solving for filter elements is eased by , which is the same for either single tune or c-type filter.
ACKNOWLEDGMENT
The authors acknowledge the Mindanao State University- Iligan Institute of Technology (MSU-IIT), The Zamboanga State College of Marine Sciences and Technology for their support for performing this work. This work was supported and funded by Commission on Higher Education (CHED) under CHED K to 12 scholarship program.
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