SlideShare ist ein Scribd-Unternehmen logo
1 von 58
MULTILEVEL INVERTER SIMULATION
FAULT CLASSIFICATION AND DIAGNOSIS
SURYAKANT TRIPATHI
12117081
SUMAN KUMAR
12117080
1
AGENDA
• INTRODUCTION
• LITERATURE SURVEY
• PROPOSED WORK
• FUTURE WORK
• CONCLUSION
• REFERENCES
2
INTRODUCTION
 Nowadays most of the electrical projects are based on fault
identification and rectification as the society wants an
automated system that can not only run the plant smoothly but
also automatically rectifies the fault within it.
 Today’s demand is to run the system continuously, even at the
time of fault so that the production during a particular time
interval should be maximum to maximise the profit of any
industry.
3
LITERATURE SURVEY
 In December 1998 Raphael, Stephen and Jean produced a paper on fault
detection on three phase inverters by using Concordia transform or alpha
beta transform
 During switching fault conditions due to unbalance in the three phase
currents the relation between the alpha beta currents changes and the
type of fault can be classified. The relations for switching fault is given as-:
4
LITERATURE SURVEY
 In 2007 Surin Komfoi released his 22nd volume on fault detection technique
using neural networks. He implemented his theory on cascaded H-bridge
inverter.
 The basic steps for fault detection and remedies according to him is
 Step 1 - Feature extraction for different kind of faults(THD).
 Step 2 - Arranging these features in a matrix form and arrange
another matrix (target matrix) in which the type of fault are given.
 Step 3 - Arrange these data column wise feature extraction of n parameters
in first n columns and the target matrix in another column. This is called the
training data set.
 Step 4 - Fed this training data set to a neural network for training .
 Step 5 - Once the network is trained connect this network to a simulated
inverter in which feature extraction data has been taken and test for different
kind of faults.
5
LITERATURE SURVEY
PROPOSED MODEL
6
BASIC INVERTER
• A basic inverter is able to convert dc to pulsating form of ac
• These are basically of two types called CSI and VSI.
• CSI or current source inverters are those in which the source current
remains constant independent load, a VSI or voltage source inverter are
those in which voltage is kept constant.
• On the basis of construction inverter is classified as Cascaded H-Bridge,
flying capacitor type and diode clamped inverter
7
BASIC INVERTER 8
BASIC INVERTER 9
BASIC INVERTER 10
NO FAULT
BASIC INVERTER 11
FAULT
MULTI LEVEL INVERTER
 Unlike basic type inverters multi-level inverters have more than one
voltage levels
 They are meant to make the output voltage and current waveform more
sinusoidal.
 Actually we are getting a stair-case waveform, capacitive and inductive
filters are used to make the waveform smoothen and the resulting
waveform becomes sinusoidal.
 As the level of voltage level increases the size of the smoothening reactor
filter reduced to make the stair case waveform more sinusoidal.
 The main heart of inverter is its pulse sequence. PWM technique is
generally used for firing the IGBTS.
12
MULTILEVEL INVERTER
 If there are n level of inverter the no of PWM saw tooth waves required for
supplying the pulse in the IGBTs is P and the no of IGBTS are I then:-
P = I/2
I = 2(n – 1)
P = n-1
13
Neural Network
 Neural network is a highly interconnected sets of neurons which can be
trained and then can be used as a human brain .
 Its application is not only in engineering ,mathematics and science but also
in medicine ,business ,finance and literature as well.
 Most NNs have some sort of training rule. In other words, NNs learn from
examples (as children learn to recognize dogs from examples of dogs) and
exhibit some capability for generalization beyond the training data.
 Neural computing requires a number of neurons, to be connected together
into a neural network. neurons are arranged in layers.
14
Neural Network Architecture
Inputs Weights
Output
Bias
1
3p
2p
1p
f a
3w
2w
1w
     bwpfbwpwpwpfa ii332211
15
Learning Methods
 Supervised learning
 In supervised training, both the inputs and the outputs are provided.
 The network then processes the inputs and compares its resulting outputs
against the desired outputs.
 Examples-multi-layer perceptron
 Unsupervised learning
 In unsupervised training, the network is provided with inputs but not with
desired outputs.
 The system itself must then decide what features it will use to group the
input data.
 Examples-kohonen ,ART
16
THREE LEVEL INVERTER 17
VOLTAGE WAVEFORM 18
FIVE LEVEL INVERTER 19
VOLTAGE WAVEFORM 20
SEVEN LEVEL INVERTER 21
VOLTAGE WAVEFORM 22
NINE LEVEL INVERTER 23
VOLTAGE WAVEFORM 24
NINE LEVEL INVERTER WITH
CAPACITOR IN PARALLEL
 When a capacitor of suitable value is connected in parallel to the resistive
load It produces a sinusoidal voltage waveform. For a resistance of 1 ohm
0.1 F capacitor is required
25
ELEVEN LEVEL INVERTER 26
VOLTAGE WAVEFORM 27
THIRTEEN LEVEL INVERTER 28
VOLTAGE WAVEFORM 29
T TYPE INVERTER 30
T TYPE INVERTER VOLTAGE
WAVEFORM
31
T- TYPW INVERTER PULSES 32
CYCLOCONVERTER
 Cycloconverter i is an ac to ac converter by changing the input frequency.
 There are two types of cycloconverters step up and step down.
 The step up cycloconverter steps up the frequency of output waveform as
compared to input voltage waveform.
 The step down cycloconverter steps down the frequency of input voltage
waveform
33
CYCLOCONVERTER 34
CYCLOCONVERTER WAVEFORM
STEP DOWN 2:1
35
CYCLOCONVERTER WAVEFORM
STEP DOWN 2:1
36
INVERTER USED IN FAULT
IDENTIFICATION SYSTEM
37
FEATURE EXTRACTION
 For feature extraction process we have to separate the output waveform
in its frequency components.
 1st ,3rd,5th, ………19th harmonics are taken.
 This can be done by Fourier transformation block.
 Total Harmonic Distortion of each harmonic has been taken for each and
every switch fault conditions.
 For test purpose one switch at a time get faulted.
 The simulated results of fault condition of five level inverter is taken.
38
RESULTS (TRAINING DATA) 39
SWITCH/PARAMETER MI-1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1
s1c 19.25 16.97 15.2 10.3 6.63 7.36 8.94 13.8 20.91 48.07
s1o 19.33 17.06 15.25 10.33 6.6 7.2 8.73 13.66 20.49 46.76
s2c 19.03 16.76 15.03 10.3 6.73 7.39 8.99 13.86 21.02 48.5
s2o 19.11 16.83 15.07 10.31 6.59 7.2 8.73 13.55 20.49 46.76
s3c 19.33 17.06 15.25 10.33 6.6 7.2 8.73 13.55 20.49 46.76
s3o 18.05 18.46 22 28.94 35 41.68 40.96 43.43 43.1 48.03
s4c 19.11 16.83 15.07 10.31 6.59 7.2 8.73 13.55 20.49 46.76
s4o 18.18 19.8 22.41 22.41 36.43 42.3 41.72 44.43 44.28 48.45
s5c 18.3 18.93 22.63 29.48 36.13 43.52 42.55 45.02 44.46 48.06
s5o 19.42 19.09 22.78 29.53 36.11 43.11 42.51 43.41 44.95 48.45
s6c 18.18 18.59 22.22 29.41 35.74 42.7 41.8 44.04 43.37 48.49
s6o 18.28 18.76 22.37 29.45 35.69 42.49 41.75 44.22 43.77 48.03
s7c 18.57 19.26 23.03 29.93 36.72 43.94 43.31 46.02 45.64 48.49
s7o 18.05 18.46 22 28.94 35 41.68 40.96 43.43 43.1 48.03
s8c 18.44 18.92 22.63 29.85 36.3 43.31 42.55 45.01 44.45 48.06
s8o 18.18 18.8 22.41 29.01 35.43 42.3 41.72 44.43 44.28 48.46
normal 3.2 3.36 4.53 4.4 5.07 7.2 8.73 13.55 20.49 46.76
TESTING DATA 40
SWITCH/PARAMETER 0.95 0.85 0.75 0.65 0.55 0.45 0.35 0.25 0.15 0.05
s1c 18.09 16.41 13.31 9.28 6.58 6.4 9.68 13.02 21.66 48.07
s1o 18.18 16.49 13.37 9.27 6.48 6.2 9.36 12.71 21.17 46.76
s2c 19.03 16.04 13.15 9.16 6.5 6.46 9.63 13.1 21.77 48.5
s2o 17.97 16.09 13.18 9.13 6.36 6.2 9.36 12.71 21.17 46.76
s3c 18.18 16.49 13.37 9.27 6.48 6.2 9.36 12.71 21.17 46.76
s3o 19.37 20.28 23.31 30.23 39.29 42.74 41.81 43.59 47.41 48.03
s4c 17.97 16.09 13.18 9.13 6.36 6.2 9.36 12.71 21.17 46.76
s4o 19.66 20.83 23.73 30.69 40.03 43.41 42.61 44.59 48.64 48.45
s5c 19.8 21 23.95 31.22 40.96 44.44 43.43 45.21 48.96 48.06
s5o 19.9 21.14 24.11 31.24 40.79 44.26 42.51 45.4 49.4 48.45
s6c 19.52 20.47 23.55 30.76 40.23 43.78 42.65 44.24 47.83 48.49
s6o 19.61 20.59 23.68 30.77 40.05 43.59 42.62 44.39 48.17 48.03
s7c 20.08 21.35 24.38 31.68 41.5 45.11 44.22 46.21 50.19 48.49
s7o 19.37 20.28 23.31 30.23 39.29 42.74 41.81 43.59 47.41 48.03
s8c 19.79 20.8 23.95 31.22 40.76 44.44 43.42 45.2 48.95 48.06
s8o 19.66 20.83 23.73 30.69 40.03 43.41 42.61 44.59 48.64 48.46
normal 2.74 3.25 4.14 3.58 5.93 6.2 9.36 12.71 21.17 46.76
TRAINING PROGRAM 41
TESTING PROGRAM 42
PROGRAM FOR CREATING P MATRIX 43
PROCEDURE FOLLOWED
 For fault diagnosis two neural networks are required for analysis, one for
open circuit fault and one for short circuit fault
 Total harmonic distortion of each case is taken for open circuit switch fault
classification.
 Neural network creation for open circuit switching faults.
 The THD matrix for open circuit switch fault classification is x
=[ 28.43 34.73 18.86 18.15 18.43 18.66 18.39 18.15 18.43]
 t = [0 1 2 37 48 5 6 37 48]
44
PROCEDURE FOLLOWED 45
Number of layers - 4(two hidden layers, one input
and one output layer)
Input layer - 10 neurons
Hidden layer 1- 8 neurons
Hidden layer 2 – 6 neurons
Output layer - 1 neuron
Function used – tangent sigmoid
PROCEDURE FOLL0WED 46
PROCEDURE FOLLOWED 47
PROCEDURE FOLLOWED 48
PROCEDURE FOLLOWED 49
PROCEDURE FOLLOWED
 Neural network creation for short circuit switching fault.
 the THD values are stored in the matrix x = [28.43 21.31 21.89 43.89
20.85 35.97 18.02 43.95 18.55]
 t = [0 1 2 3 4 5 6 7 8]
50
PROCEDURE FOLLOWED 51
Number of layers - 4(two hidden layers, one input
and one output layer)
Input layer - 11 neurons
Hidden layer 1- 6 neurons
Hidden layer 2 – 5 neurons
Output layer - 1 neuron
Function used – tangent sigmoid for input layer and
hidden layer 1
Pure linear for hidden layer 2 and output layer.
PROCEDURE FOLLOWED 52
PROCEDURE FOLLOWED 53
PROCEDURE FOLLOWED 54
PROCEDURE FOLLOWED 55
FUTURE WORK
 Simulation of T type inverter
 Fault diagnosis of both 5 level cascaded inverter and T type inverter
56
CONCLUSION
 Our project was the fault diagnosis in the multilevel inverter with the help
of ANN. We started with the study of neural network so that we would be
familiar with what we have exactly to do.
 In the neural network we studied about the basic neural network , its
biological interpretation, application, architecture, classification perceptron
neuron model, training rules and some examples.
 Then we move towards multilevel inverter we started with the basic
inverter knowledge and then we go towards multilevel inverter. In this we
studied about three level, five level, seven level and nine level inverter
and simulated these inverters to find out voltage waveforms
 We then found out voltage waveforms in the 1st, 3rd ,5th up to 19th
harmonics.
57
REFRENCES
 Fault diagnostic system for multilevel inverter using ANN by SURIN
KHOMFOI VOLUME 2 2007.
 Unique fault tolerant design for flying capacitor multilevel inverter by
XIAOMI N KUO
58

Weitere ähnliche Inhalte

Was ist angesagt?

BLDC motor control reference design press presentation
BLDC motor control reference design press presentationBLDC motor control reference design press presentation
BLDC motor control reference design press presentation
Silicon Labs
 
Shunt active power filter
Shunt active power filterShunt active power filter
Shunt active power filter
Ranganath
 
Vaccum Circuit Breaker
Vaccum Circuit BreakerVaccum Circuit Breaker
Vaccum Circuit Breaker
RAHUL-GOPU
 

Was ist angesagt? (20)

Testing of circuit breakers
Testing of circuit breakersTesting of circuit breakers
Testing of circuit breakers
 
BLDC motor control reference design press presentation
BLDC motor control reference design press presentationBLDC motor control reference design press presentation
BLDC motor control reference design press presentation
 
Inplant training about 110kv/11kv substation
Inplant training about 110kv/11kv substationInplant training about 110kv/11kv substation
Inplant training about 110kv/11kv substation
 
Pwm techniques for converters
Pwm techniques for convertersPwm techniques for converters
Pwm techniques for converters
 
Industrial summer training on 220 kv substation ppt
Industrial summer training on 220 kv substation pptIndustrial summer training on 220 kv substation ppt
Industrial summer training on 220 kv substation ppt
 
Training report on substation presentation
Training report on substation presentationTraining report on substation presentation
Training report on substation presentation
 
66 kv substation
66 kv substation66 kv substation
66 kv substation
 
Presentation Design of Computer aided design of power transformer
Presentation Design of Computer aided design of power transformerPresentation Design of Computer aided design of power transformer
Presentation Design of Computer aided design of power transformer
 
Speed Control of DC Motor using Microcontroller
Speed Control of DC Motor using MicrocontrollerSpeed Control of DC Motor using Microcontroller
Speed Control of DC Motor using Microcontroller
 
220 KV Switchyard general overview
220 KV Switchyard general overview220 KV Switchyard general overview
220 KV Switchyard general overview
 
Shunt active power filter
Shunt active power filterShunt active power filter
Shunt active power filter
 
Low cost automatic water level control for domestic or industrial applicat...
Low cost  automatic water level control for domestic  or industrial  applicat...Low cost  automatic water level control for domestic  or industrial  applicat...
Low cost automatic water level control for domestic or industrial applicat...
 
Speed control of DC motor using pulse width modulation technique
Speed control of DC motor using pulse width modulation technique Speed control of DC motor using pulse width modulation technique
Speed control of DC motor using pulse width modulation technique
 
Power system fault analysis ppt
Power system fault analysis pptPower system fault analysis ppt
Power system fault analysis ppt
 
PPT ON SUMMER TRAINING FROM UPPCL 132/33 KV SUB STATION
PPT ON SUMMER TRAINING FROM UPPCL 132/33 KV SUB STATIONPPT ON SUMMER TRAINING FROM UPPCL 132/33 KV SUB STATION
PPT ON SUMMER TRAINING FROM UPPCL 132/33 KV SUB STATION
 
Vaccum Circuit Breaker
Vaccum Circuit BreakerVaccum Circuit Breaker
Vaccum Circuit Breaker
 
Synchronous generator
Synchronous generatorSynchronous generator
Synchronous generator
 
Bus Bar Protection
Bus Bar ProtectionBus Bar Protection
Bus Bar Protection
 
DETECTING POWER GRID SYNCHRONISATION FAILURE ON SENSING BAD VOLTAGE OR FREQUENCY
DETECTING POWER GRID SYNCHRONISATION FAILURE ON SENSING BAD VOLTAGE OR FREQUENCYDETECTING POWER GRID SYNCHRONISATION FAILURE ON SENSING BAD VOLTAGE OR FREQUENCY
DETECTING POWER GRID SYNCHRONISATION FAILURE ON SENSING BAD VOLTAGE OR FREQUENCY
 
Three level inverter
Three level inverterThree level inverter
Three level inverter
 

Andere mochten auch

cascaded multilevel inverter project
cascaded multilevel inverter projectcascaded multilevel inverter project
cascaded multilevel inverter project
Shiva Kumar
 
Inductorless DC-AC Cascaded H-bridge Multilevel Boost Inverter for Electric/...
Inductorless DC-AC Cascaded H-bridge MultilevelBoost Inverter for Electric/...Inductorless DC-AC Cascaded H-bridge MultilevelBoost Inverter for Electric/...
Inductorless DC-AC Cascaded H-bridge Multilevel Boost Inverter for Electric/...
mkanth
 
1. control of real time traffic with the help of image processing
1. control of real time traffic with the help of image processing1. control of real time traffic with the help of image processing
1. control of real time traffic with the help of image processing
Nitish Kotak
 

Andere mochten auch (20)

Multilevel inverter technology
Multilevel inverter technologyMultilevel inverter technology
Multilevel inverter technology
 
Multi level inverter
Multi level inverterMulti level inverter
Multi level inverter
 
multilevel inverter
multilevel invertermultilevel inverter
multilevel inverter
 
Multilevel inverter
Multilevel  inverterMultilevel  inverter
Multilevel inverter
 
cascaded multilevel inverter project
cascaded multilevel inverter projectcascaded multilevel inverter project
cascaded multilevel inverter project
 
ABC, an effective tool for selective harmonic elimination in multilevel inve...
ABC, an effective tool for selective  harmonic elimination in multilevel inve...ABC, an effective tool for selective  harmonic elimination in multilevel inve...
ABC, an effective tool for selective harmonic elimination in multilevel inve...
 
Cascaded multilevel inverter
Cascaded multilevel inverterCascaded multilevel inverter
Cascaded multilevel inverter
 
Inductorless DC-AC Cascaded H-bridge Multilevel Boost Inverter for Electric/...
Inductorless DC-AC Cascaded H-bridge MultilevelBoost Inverter for Electric/...Inductorless DC-AC Cascaded H-bridge MultilevelBoost Inverter for Electric/...
Inductorless DC-AC Cascaded H-bridge Multilevel Boost Inverter for Electric/...
 
Cascaded multilevel converter for Photovoltaic applications
Cascaded multilevel converter for Photovoltaic applicationsCascaded multilevel converter for Photovoltaic applications
Cascaded multilevel converter for Photovoltaic applications
 
High Voltage Dc (HVDC) transmission
High Voltage Dc (HVDC) transmissionHigh Voltage Dc (HVDC) transmission
High Voltage Dc (HVDC) transmission
 
Final Project Report on Image processing based intelligent traffic control sy...
Final Project Report on Image processing based intelligent traffic control sy...Final Project Report on Image processing based intelligent traffic control sy...
Final Project Report on Image processing based intelligent traffic control sy...
 
Multi level inverter
Multi level inverterMulti level inverter
Multi level inverter
 
A New Topology for High Level Hybrid Cascaded Multilevel Inverter Motor Drive...
A New Topology for High Level Hybrid Cascaded Multilevel Inverter Motor Drive...A New Topology for High Level Hybrid Cascaded Multilevel Inverter Motor Drive...
A New Topology for High Level Hybrid Cascaded Multilevel Inverter Motor Drive...
 
Embedded system Basic
Embedded system BasicEmbedded system Basic
Embedded system Basic
 
Indian penal code
Indian penal codeIndian penal code
Indian penal code
 
OPAL-RT RT14 Conference: Three level inverter SynRM drive
OPAL-RT RT14 Conference: Three level inverter SynRM driveOPAL-RT RT14 Conference: Three level inverter SynRM drive
OPAL-RT RT14 Conference: Three level inverter SynRM drive
 
A comparative study of cascaded h bridge and reversing voltage multilevel inv...
A comparative study of cascaded h bridge and reversing voltage multilevel inv...A comparative study of cascaded h bridge and reversing voltage multilevel inv...
A comparative study of cascaded h bridge and reversing voltage multilevel inv...
 
Simulation and analysis of multilevel inverter with reduced number of switches
Simulation and analysis of multilevel inverter with reduced number of switchesSimulation and analysis of multilevel inverter with reduced number of switches
Simulation and analysis of multilevel inverter with reduced number of switches
 
1. control of real time traffic with the help of image processing
1. control of real time traffic with the help of image processing1. control of real time traffic with the help of image processing
1. control of real time traffic with the help of image processing
 
Hybrid topology of asymmetric cascaded multilevel inverter with renewable ene...
Hybrid topology of asymmetric cascaded multilevel inverter with renewable ene...Hybrid topology of asymmetric cascaded multilevel inverter with renewable ene...
Hybrid topology of asymmetric cascaded multilevel inverter with renewable ene...
 

Ähnlich wie MULTILEVEL INVERTER AND NEURAL NETWORK INTRODUCTION

56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
56211728 automatic-room-light-controller-with-bidirectional-visitor-counter56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
Ann Francis Olita
 
final poster AMSIC lab
final poster AMSIC labfinal poster AMSIC lab
final poster AMSIC lab
Cameron Young
 
DIGITAL HEART BEAT COUNTER
DIGITAL HEART BEAT COUNTERDIGITAL HEART BEAT COUNTER
DIGITAL HEART BEAT COUNTER
Deevanshu Swani
 
Automatic room-light-controller-visitor-counter
Automatic room-light-controller-visitor-counterAutomatic room-light-controller-visitor-counter
Automatic room-light-controller-visitor-counter
Mohit Awasthi
 

Ähnlich wie MULTILEVEL INVERTER AND NEURAL NETWORK INTRODUCTION (20)

final report
final reportfinal report
final report
 
56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
56211728 automatic-room-light-controller-with-bidirectional-visitor-counter56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
56211728 automatic-room-light-controller-with-bidirectional-visitor-counter
 
IRJET- Power Theft Detection using Probabilistic Neural Network Classifier
IRJET- Power Theft Detection using Probabilistic Neural Network ClassifierIRJET- Power Theft Detection using Probabilistic Neural Network Classifier
IRJET- Power Theft Detection using Probabilistic Neural Network Classifier
 
final poster AMSIC lab
final poster AMSIC labfinal poster AMSIC lab
final poster AMSIC lab
 
DIGITAL HEART BEAT COUNTER
DIGITAL HEART BEAT COUNTERDIGITAL HEART BEAT COUNTER
DIGITAL HEART BEAT COUNTER
 
Lab 4
Lab 4Lab 4
Lab 4
 
ECG DENOISING USING NN.pp
ECG DENOISING USING NN.ppECG DENOISING USING NN.pp
ECG DENOISING USING NN.pp
 
MRA Analysis for Faults Indentification in Multilevel Inverter
MRA Analysis for Faults Indentification in Multilevel InverterMRA Analysis for Faults Indentification in Multilevel Inverter
MRA Analysis for Faults Indentification in Multilevel Inverter
 
Design and Implementation of Astable Multivibrator using 555 Timer
Design and Implementation of Astable Multivibrator using 555 Timer Design and Implementation of Astable Multivibrator using 555 Timer
Design and Implementation of Astable Multivibrator using 555 Timer
 
Automatic room-light-controller-visitor-counter
Automatic room-light-controller-visitor-counterAutomatic room-light-controller-visitor-counter
Automatic room-light-controller-visitor-counter
 
IRJET- Three Phase Line Fault Detection using Artificial Neural Network
IRJET- Three Phase Line Fault Detection using Artificial Neural NetworkIRJET- Three Phase Line Fault Detection using Artificial Neural Network
IRJET- Three Phase Line Fault Detection using Artificial Neural Network
 
POSITION ANALYSIS OF DIGITAL SYSTEM
POSITION ANALYSIS OF DIGITAL SYSTEMPOSITION ANALYSIS OF DIGITAL SYSTEM
POSITION ANALYSIS OF DIGITAL SYSTEM
 
ANN Approach for Fault Classification in Induction Motors using Current and V...
ANN Approach for Fault Classification in Induction Motors using Current and V...ANN Approach for Fault Classification in Induction Motors using Current and V...
ANN Approach for Fault Classification in Induction Motors using Current and V...
 
Detection of power grid synchronization failure on sensing of frequency and v...
Detection of power grid synchronization failure on sensing of frequency and v...Detection of power grid synchronization failure on sensing of frequency and v...
Detection of power grid synchronization failure on sensing of frequency and v...
 
Park’s Vector Approach to detect an inter turn stator fault in a doubly fed i...
Park’s Vector Approach to detect an inter turn stator fault in a doubly fed i...Park’s Vector Approach to detect an inter turn stator fault in a doubly fed i...
Park’s Vector Approach to detect an inter turn stator fault in a doubly fed i...
 
Autotuning of pid controller for robot arm and magnet levitation plant
Autotuning of pid controller for robot arm and magnet levitation plantAutotuning of pid controller for robot arm and magnet levitation plant
Autotuning of pid controller for robot arm and magnet levitation plant
 
Synchronization of Photo-voltaic system with a Grid
Synchronization of Photo-voltaic system with a GridSynchronization of Photo-voltaic system with a Grid
Synchronization of Photo-voltaic system with a Grid
 
Lec 8,9,10 (interfacing)
Lec 8,9,10 (interfacing)Lec 8,9,10 (interfacing)
Lec 8,9,10 (interfacing)
 
M010527678
M010527678M010527678
M010527678
 
Dynamic solar powered robot using dc dc sepic topology
Dynamic solar powered robot using   dc dc sepic topologyDynamic solar powered robot using   dc dc sepic topology
Dynamic solar powered robot using dc dc sepic topology
 

Kürzlich hochgeladen

Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoorTop Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
dharasingh5698
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
ankushspencer015
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
MsecMca
 
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
dharasingh5698
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
ssuser89054b
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 

Kürzlich hochgeladen (20)

FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced LoadsFEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdf
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPT
 
Booking open Available Pune Call Girls Koregaon Park 6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Koregaon Park  6297143586 Call Hot Ind...Booking open Available Pune Call Girls Koregaon Park  6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Koregaon Park 6297143586 Call Hot Ind...
 
Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024
 
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
 
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoorTop Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
 
(INDIRA) Call Girl Meerut Call Now 8617697112 Meerut Escorts 24x7
(INDIRA) Call Girl Meerut Call Now 8617697112 Meerut Escorts 24x7(INDIRA) Call Girl Meerut Call Now 8617697112 Meerut Escorts 24x7
(INDIRA) Call Girl Meerut Call Now 8617697112 Meerut Escorts 24x7
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
 
Block diagram reduction techniques in control systems.ppt
Block diagram reduction techniques in control systems.pptBlock diagram reduction techniques in control systems.ppt
Block diagram reduction techniques in control systems.ppt
 
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.ppt
 
Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
 

MULTILEVEL INVERTER AND NEURAL NETWORK INTRODUCTION

  • 1. MULTILEVEL INVERTER SIMULATION FAULT CLASSIFICATION AND DIAGNOSIS SURYAKANT TRIPATHI 12117081 SUMAN KUMAR 12117080 1
  • 2. AGENDA • INTRODUCTION • LITERATURE SURVEY • PROPOSED WORK • FUTURE WORK • CONCLUSION • REFERENCES 2
  • 3. INTRODUCTION  Nowadays most of the electrical projects are based on fault identification and rectification as the society wants an automated system that can not only run the plant smoothly but also automatically rectifies the fault within it.  Today’s demand is to run the system continuously, even at the time of fault so that the production during a particular time interval should be maximum to maximise the profit of any industry. 3
  • 4. LITERATURE SURVEY  In December 1998 Raphael, Stephen and Jean produced a paper on fault detection on three phase inverters by using Concordia transform or alpha beta transform  During switching fault conditions due to unbalance in the three phase currents the relation between the alpha beta currents changes and the type of fault can be classified. The relations for switching fault is given as-: 4
  • 5. LITERATURE SURVEY  In 2007 Surin Komfoi released his 22nd volume on fault detection technique using neural networks. He implemented his theory on cascaded H-bridge inverter.  The basic steps for fault detection and remedies according to him is  Step 1 - Feature extraction for different kind of faults(THD).  Step 2 - Arranging these features in a matrix form and arrange another matrix (target matrix) in which the type of fault are given.  Step 3 - Arrange these data column wise feature extraction of n parameters in first n columns and the target matrix in another column. This is called the training data set.  Step 4 - Fed this training data set to a neural network for training .  Step 5 - Once the network is trained connect this network to a simulated inverter in which feature extraction data has been taken and test for different kind of faults. 5
  • 7. BASIC INVERTER • A basic inverter is able to convert dc to pulsating form of ac • These are basically of two types called CSI and VSI. • CSI or current source inverters are those in which the source current remains constant independent load, a VSI or voltage source inverter are those in which voltage is kept constant. • On the basis of construction inverter is classified as Cascaded H-Bridge, flying capacitor type and diode clamped inverter 7
  • 12. MULTI LEVEL INVERTER  Unlike basic type inverters multi-level inverters have more than one voltage levels  They are meant to make the output voltage and current waveform more sinusoidal.  Actually we are getting a stair-case waveform, capacitive and inductive filters are used to make the waveform smoothen and the resulting waveform becomes sinusoidal.  As the level of voltage level increases the size of the smoothening reactor filter reduced to make the stair case waveform more sinusoidal.  The main heart of inverter is its pulse sequence. PWM technique is generally used for firing the IGBTS. 12
  • 13. MULTILEVEL INVERTER  If there are n level of inverter the no of PWM saw tooth waves required for supplying the pulse in the IGBTs is P and the no of IGBTS are I then:- P = I/2 I = 2(n – 1) P = n-1 13
  • 14. Neural Network  Neural network is a highly interconnected sets of neurons which can be trained and then can be used as a human brain .  Its application is not only in engineering ,mathematics and science but also in medicine ,business ,finance and literature as well.  Most NNs have some sort of training rule. In other words, NNs learn from examples (as children learn to recognize dogs from examples of dogs) and exhibit some capability for generalization beyond the training data.  Neural computing requires a number of neurons, to be connected together into a neural network. neurons are arranged in layers. 14
  • 15. Neural Network Architecture Inputs Weights Output Bias 1 3p 2p 1p f a 3w 2w 1w      bwpfbwpwpwpfa ii332211 15
  • 16. Learning Methods  Supervised learning  In supervised training, both the inputs and the outputs are provided.  The network then processes the inputs and compares its resulting outputs against the desired outputs.  Examples-multi-layer perceptron  Unsupervised learning  In unsupervised training, the network is provided with inputs but not with desired outputs.  The system itself must then decide what features it will use to group the input data.  Examples-kohonen ,ART 16
  • 25. NINE LEVEL INVERTER WITH CAPACITOR IN PARALLEL  When a capacitor of suitable value is connected in parallel to the resistive load It produces a sinusoidal voltage waveform. For a resistance of 1 ohm 0.1 F capacitor is required 25
  • 31. T TYPE INVERTER VOLTAGE WAVEFORM 31
  • 32. T- TYPW INVERTER PULSES 32
  • 33. CYCLOCONVERTER  Cycloconverter i is an ac to ac converter by changing the input frequency.  There are two types of cycloconverters step up and step down.  The step up cycloconverter steps up the frequency of output waveform as compared to input voltage waveform.  The step down cycloconverter steps down the frequency of input voltage waveform 33
  • 37. INVERTER USED IN FAULT IDENTIFICATION SYSTEM 37
  • 38. FEATURE EXTRACTION  For feature extraction process we have to separate the output waveform in its frequency components.  1st ,3rd,5th, ………19th harmonics are taken.  This can be done by Fourier transformation block.  Total Harmonic Distortion of each harmonic has been taken for each and every switch fault conditions.  For test purpose one switch at a time get faulted.  The simulated results of fault condition of five level inverter is taken. 38
  • 39. RESULTS (TRAINING DATA) 39 SWITCH/PARAMETER MI-1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 s1c 19.25 16.97 15.2 10.3 6.63 7.36 8.94 13.8 20.91 48.07 s1o 19.33 17.06 15.25 10.33 6.6 7.2 8.73 13.66 20.49 46.76 s2c 19.03 16.76 15.03 10.3 6.73 7.39 8.99 13.86 21.02 48.5 s2o 19.11 16.83 15.07 10.31 6.59 7.2 8.73 13.55 20.49 46.76 s3c 19.33 17.06 15.25 10.33 6.6 7.2 8.73 13.55 20.49 46.76 s3o 18.05 18.46 22 28.94 35 41.68 40.96 43.43 43.1 48.03 s4c 19.11 16.83 15.07 10.31 6.59 7.2 8.73 13.55 20.49 46.76 s4o 18.18 19.8 22.41 22.41 36.43 42.3 41.72 44.43 44.28 48.45 s5c 18.3 18.93 22.63 29.48 36.13 43.52 42.55 45.02 44.46 48.06 s5o 19.42 19.09 22.78 29.53 36.11 43.11 42.51 43.41 44.95 48.45 s6c 18.18 18.59 22.22 29.41 35.74 42.7 41.8 44.04 43.37 48.49 s6o 18.28 18.76 22.37 29.45 35.69 42.49 41.75 44.22 43.77 48.03 s7c 18.57 19.26 23.03 29.93 36.72 43.94 43.31 46.02 45.64 48.49 s7o 18.05 18.46 22 28.94 35 41.68 40.96 43.43 43.1 48.03 s8c 18.44 18.92 22.63 29.85 36.3 43.31 42.55 45.01 44.45 48.06 s8o 18.18 18.8 22.41 29.01 35.43 42.3 41.72 44.43 44.28 48.46 normal 3.2 3.36 4.53 4.4 5.07 7.2 8.73 13.55 20.49 46.76
  • 40. TESTING DATA 40 SWITCH/PARAMETER 0.95 0.85 0.75 0.65 0.55 0.45 0.35 0.25 0.15 0.05 s1c 18.09 16.41 13.31 9.28 6.58 6.4 9.68 13.02 21.66 48.07 s1o 18.18 16.49 13.37 9.27 6.48 6.2 9.36 12.71 21.17 46.76 s2c 19.03 16.04 13.15 9.16 6.5 6.46 9.63 13.1 21.77 48.5 s2o 17.97 16.09 13.18 9.13 6.36 6.2 9.36 12.71 21.17 46.76 s3c 18.18 16.49 13.37 9.27 6.48 6.2 9.36 12.71 21.17 46.76 s3o 19.37 20.28 23.31 30.23 39.29 42.74 41.81 43.59 47.41 48.03 s4c 17.97 16.09 13.18 9.13 6.36 6.2 9.36 12.71 21.17 46.76 s4o 19.66 20.83 23.73 30.69 40.03 43.41 42.61 44.59 48.64 48.45 s5c 19.8 21 23.95 31.22 40.96 44.44 43.43 45.21 48.96 48.06 s5o 19.9 21.14 24.11 31.24 40.79 44.26 42.51 45.4 49.4 48.45 s6c 19.52 20.47 23.55 30.76 40.23 43.78 42.65 44.24 47.83 48.49 s6o 19.61 20.59 23.68 30.77 40.05 43.59 42.62 44.39 48.17 48.03 s7c 20.08 21.35 24.38 31.68 41.5 45.11 44.22 46.21 50.19 48.49 s7o 19.37 20.28 23.31 30.23 39.29 42.74 41.81 43.59 47.41 48.03 s8c 19.79 20.8 23.95 31.22 40.76 44.44 43.42 45.2 48.95 48.06 s8o 19.66 20.83 23.73 30.69 40.03 43.41 42.61 44.59 48.64 48.46 normal 2.74 3.25 4.14 3.58 5.93 6.2 9.36 12.71 21.17 46.76
  • 43. PROGRAM FOR CREATING P MATRIX 43
  • 44. PROCEDURE FOLLOWED  For fault diagnosis two neural networks are required for analysis, one for open circuit fault and one for short circuit fault  Total harmonic distortion of each case is taken for open circuit switch fault classification.  Neural network creation for open circuit switching faults.  The THD matrix for open circuit switch fault classification is x =[ 28.43 34.73 18.86 18.15 18.43 18.66 18.39 18.15 18.43]  t = [0 1 2 37 48 5 6 37 48] 44
  • 45. PROCEDURE FOLLOWED 45 Number of layers - 4(two hidden layers, one input and one output layer) Input layer - 10 neurons Hidden layer 1- 8 neurons Hidden layer 2 – 6 neurons Output layer - 1 neuron Function used – tangent sigmoid
  • 50. PROCEDURE FOLLOWED  Neural network creation for short circuit switching fault.  the THD values are stored in the matrix x = [28.43 21.31 21.89 43.89 20.85 35.97 18.02 43.95 18.55]  t = [0 1 2 3 4 5 6 7 8] 50
  • 51. PROCEDURE FOLLOWED 51 Number of layers - 4(two hidden layers, one input and one output layer) Input layer - 11 neurons Hidden layer 1- 6 neurons Hidden layer 2 – 5 neurons Output layer - 1 neuron Function used – tangent sigmoid for input layer and hidden layer 1 Pure linear for hidden layer 2 and output layer.
  • 56. FUTURE WORK  Simulation of T type inverter  Fault diagnosis of both 5 level cascaded inverter and T type inverter 56
  • 57. CONCLUSION  Our project was the fault diagnosis in the multilevel inverter with the help of ANN. We started with the study of neural network so that we would be familiar with what we have exactly to do.  In the neural network we studied about the basic neural network , its biological interpretation, application, architecture, classification perceptron neuron model, training rules and some examples.  Then we move towards multilevel inverter we started with the basic inverter knowledge and then we go towards multilevel inverter. In this we studied about three level, five level, seven level and nine level inverter and simulated these inverters to find out voltage waveforms  We then found out voltage waveforms in the 1st, 3rd ,5th up to 19th harmonics. 57
  • 58. REFRENCES  Fault diagnostic system for multilevel inverter using ANN by SURIN KHOMFOI VOLUME 2 2007.  Unique fault tolerant design for flying capacitor multilevel inverter by XIAOMI N KUO 58