Title: Diapositiva 1
1Automatic Power Quality Disturbances Detection
and Classification Based on Discrete Wavelet
Transform and Support Vector Machines
Authors MI (C). Valdomiro Vega García Dr.
Gabriel Ordóñez Plata MPE. César A. Duarte
Gualdrón
Universidad Industrial de Santander
2 CONTENT
- Introduction
- Wavelet transform
- Algorithms
- Power quality disturbances
- Detection strategy
- Identification strategy
- Automatic classification strategy
- Simulation results
- Conclusions
3INTRODUCTION
To diagnose the quality of electric energy
service
Electromagnetic disturbances
-
Losses
- Electric sector
- Industry
- Trading
- Domestic
4INTRODUCTION
OBJECTIVES
- To determine patterns based on discrete wavelet
transform to identify voltage sags, swells,
transients, harmonics and flicker. - To establish a detection - time location
strategy. - To set up an automatic classification strategy
5DISCRETE WAVELET TRANSFORM
6DISCRETE WAVELET TRANSFORM
ORTHONORMALITY
Orthogonal
7ALGORITHMS
DECOMPOSITION SCHEME
RECONSTRUCTION SCHEME
8ALGORITHMS
Signal decomposition into approximation and
detail sequences
9ALGORITHMS
FILTERS USING WAVELET DAUBECHIES 4
10ALGORITHMS
MULTIRESOLUTION ANALYSIS
11POWER QUALITY DISTURBANCES
12DETECTION STRATEGY
DISTURBANCE DETAILS AT FIRST LEVEL
13IDENTIFICATION STRATEGY
ENERGY DEVIATION OF WAVELET COEFFICIENTS
14SHIFT NO-INVARIANT PROPERTY
15AUTOMATIC CLASSIFICATION STRATEGY
BAYES DECISION TECHNIQUE
K classes wk X Input Vector P(wk/X) A
posteriori probability P(wk) wk class
probability P(X/wk) a priori probability
JARQUE-BERA TEST 89 of rejection
16AUTOMATIC CLASSIFICATION STRATEGY
ARTIFICIAL NEURAL NETWORK (ANN)
17AUTOMATIC CLASSIFICATION STRATEGY
ARTIFICIAL NEURAL NETWORK (ANN)
18AUTOMATIC CLASSIFICATION STRATEGY
SUPPORT VECTOR MACHINES SVM
19SIMULATION RESULTS
SUCCESS PERCENTAGES BAYES vs. KOHONEN LVQ
200 signals
20SIMULATION RESULTS
SUCCESS PERCENTAGES ANN-PERCEPTRON vs. SVM
200 signals
21SIMULATION RESULTS
SUCCESS PERCENTAGES ANN-PERCEPTRON vs. SVM
Other 200 signals
22CONCLUSIONS
- A DWT SVM automatic classification strategy has
been implemented. - Based on the energy of DWT detail coefficients is
possible to identify voltage disturbances. - SVM could be the best classifier for patterns
obtained in this work. Though, ANNs (supervised)
display good performance.
23CONCLUSIONS
- For most disturbances classes the success
percentage was better than 90 in spite of
pattern resemble. - A disturbance database (17 489 signals) was
generated for training, validating and evaluating
each classification scheme.
24QUESTIONS?
25ELECTRIC POWER SYSTEMS RESEARCH GROUP UNIVERSIDAD
INDUSTRIAL DE SANTANDER Carrera 27, Calle 9.
UIS Bucaramanga Colombia. PO BOX. 678 PBX
(57 7) 6344000, Ext 2360 - 2361 2703 -
2472 TEL (57 7) 6342085 / 6359621 FAX
(57 7) 6359622 BUCARAMANGA
COLOMBIA http//www.uis.edu.co/investigacion/pagin
as/grupos/gisel.htm gaby_at_uis.edu.co,
cedagua_at_uis.edu.co, valdomirovega_at_ieee.org