1. 1
Suman Sahoo Roll No : 97/ELM/124005
By
Sumanta Kundu Roll No: 97/ELM/124013
Agniv Mukherjee Roll No : 97/ELM/124016
Raju Ray Roll No : 97/ELM/124017
Under Guidance of
Prof. Jitendra Nath Bera
Department of Applied Physics,
University College of Science & Technology,
University of Calcutta
92, A.P.C. Road, Kolkata-700009
West Bengal, India
Date: 26-05-2015
3. 3
Information regarding real time specific data for energy consumption and
corresponding tariff
Remote control of different Home Appliances
Remote notification of usage of energy consumption
Managing and storing vast quantities of metering data
Ensuring the security of metering data
Extra energy (if generated) can be sent back to Grid
Today’s Demands
Performance degradation analysis of a particular appliance
4. 4
Decarbonise electricity
Greater visibility to distribution network
Participation of the consumers into power system operation through Smart
Meter, Smart Plug.
Improved ICT (Information & Communication Technology) offers greater
monitoring, control, flexibility and low cost operation of power system.
Effective management of loads and reduction of losses and wasted
energy needs accurate information about the loads.
Performance comparison for same appliance of different make
Local display of information on smart plug itself
Contd.
5. Provides some basic
information of a particular appliance
Includes an embedded
ICT unit so that power usage
information it collects about the appliance
can then be transmitted
Access electricity consumption
data and determine the best time to use an individual appliance
Smart Plug
Contd.
5
Smart Plug
6. Essential part of the Smart Grid
It can provide detailed load flow on real time
basis
Helps in effective management of the grid
operation
Helps consumer to realize the energy usage and
the corresponding tariff
Two way communication
- Automatic Meter Reading
- Restriction of supply
Smart Energy Meter
6
Contd.
Smart Energy Meter
7. 7
Smart Home
•A home equipped with lighting, heating, and electronic devices that can
be controlled remotely by smart phone or computer
• Smart home relate to the development of some major aspects:
(a)Capabilities of home infrastructure and controlled device
(b) Usability of mobile and stationary user interfaces
Contd.
9. 9
Contd.
Involvement of Information & Communication Technology
Rapid development of Wireless Communication Systems like 3G, 4G, Wi-Fi
Introductory involvement of communication interfaces like Bluetooth, ZigBee, Wi-Fi
Power Line Communication (PLC)
10. 10
Power Line Communication (PLC) as Communication Channel
The Home Automation System Using Power Line Communication (PLC) at home
is user friendly and cost efficient. It requires only electricity to run the system.
Fundamental parts of the smart meter as well as the Smart Grid.
Communication through power line by the Utilities to Consumers if possible
results to breakthrough in communications.
Every household would be connected at any time and services being
provided at real-time.
Based on electrical signals, carrying information, propagating over the power-
line.
Contd.
13. 13
Classifiers
An algorithm implementing classification, especially concrete implementation
A mathematical function , implemented by a classification algorithm, that maps
input data to a category
Bayesian
Support Vector machine Classifier
Fuzzy Ruled Based Classifier
Artificial Neural Network
Types of Classifiers
14. 14
In our project we have used the Artificial Neural Network (ANN) as the
classifier has some benefits from others which are mentioned below :
(a) Adaptive Learning
(b) Self-Organization
(c) Real Time Operation
(d) Fault Tolerance via Redundant Information Coding
(e) Implementation Ability
Contd.
15. 15
Artificial Neural Network (ANN)
A computational system inspired by the structure, processing method
and learning ability of a biological brain
Contd.
(a) A large number of very simple processing neuron-like processing
elements.
(b) A large number of weighted connections between the elements.
(c) Distributed representation of knowledge over the connections.
(d) Knowledge is acquired by network through a learning process.
16. Elements of ANN
(a) Processing unit
(b) Activation function
(c) Learning paradigm
16
Contd.
21. Schematic Overview
Ardiuno UNO Board
Signal
Conditioning
Signal
Conditioning
ADC
Atmega
328 µC
Communic
ation unit
(PLC)
Local
Display
Ph N
CT
1-ph Elec.
Load
PT
Smart
Plug
21
Smart
Meter
23. Data Acquisition & Signature Extraction
•Voltage & current data of diff. load captured by DSO
•The sample data of voltage & current data taken into a spreadsheet using
software webstar
• Formation of load signature (by mathematical calculation) using captured
sampled data of voltage & current of diff. load
23
•The data obtained in the measurement is stored into a computer for further
study; the appliances include:
i) Fan ii) Bulb ; iii) Tube Light iv) Heater v)1 Ph Induction Motor
Contd.
24. Captured Data for Signature Extraction
current
Time
Time
voltage
Current nature obtained for 200 Watt
bulb switching phenomenon .
Voltage nature obtained for 200 Watt
bulb switching phenomenon
24
Contd.
25. Amplitude
Power spectrum
Time Frequency
Simulated MATLAB output of 200W
bulb current switching phenomenon
FFT Analysis using MatLab
Simulated MATLAB FFT analysis of
200W bulb current data
25
Contd.
26. ANN Start up Window
26
NN toolbox can be open by entering the command on command window
>>nnstart
Contd.
27. >> nprtool
or Pattern Recognition Application from Neural Network Start Window
27
Neural Pattern Recognition Application Contd.
32. The Figure shows the
changes between the
validation, Training
and testing where the Mean
Square Error is minimum.
NN Training Performance
Contd.
32
38. Overview of Hardware
38
Technical Specifications of Arduino UNO
Microcontroller : ATmega328
Operating Voltage : 5V
Supply Voltage (recommended) : 7-12V
Maximum supply voltage : 20V
Digital I/O Pins : 14 (of which 6 provide
PWM output)
Analog Input Pins : 6
DC Current per I/O Pin :40 mA
DC Current for 3.3V Pin :50 mA
Flash Memory : 32 KB (ATmega328) of
which 0.5 KB used by
boot loader
SRAM : 2 KB (ATmega328)
EEPROM : 1 KB (ATmega328)
Clock Speed :16 MHz
39. Matlab Hardware Support Package for Ardiuno UNO
Board
Matlab to communicate with Arduino UNO Board over a USB cable
39
Start MATLAB
Start Support Package Installer
Select Arduino UNO from a list of support packages
Math Works Account
Continue and Complete the Installation
Contd.
41. Procedure to run the Model on Arduino UNO Hardware
Load the voltage and current samples into constants v1 & i1in the
command window of Matlab
41
Contd.
42. Configuration parameter setting to run the model on Arduino UNO
hardware
42
Procedure to run the Model on Arduino UNO Hardware
Contd.
43. Target hardware :Arduino UNO
Host COM port : Automatically
43
Contd.Procedure to run the Model on Arduino UNO
Hardware
50. 50
• Convenient and efficient use of electric appliances
• Remote access of the home electrical appliances
• Energy management strategies of Utility
• Utility to control the energy supply to a particular appliance
• Brief cost estimation of development of a Smart Plug
52. 52
1. Smart Grid Technology and Applications by Janaka Ekanayake(Cardiff University, UK),
Kithsiri Liyanage(University of Peradeniya, Sri Lanka), Jianzhong Wu (Cardiff University,
UK), Akihiko Yokoyama (University of Tokyo, Japan), Nick Jenkins (Cardiff University,
UK).
2. Simulator for Smart Load Management in Home Appliances by Michael Rathmair and
Jan Haase (Vienna University of Technology, Institute of Computer Technology).
3. Smart Power Grids 2011 by Professor Ali Keyhani Department of Electrical and
Computer Engineering.
4. Experimental Study and Design of Smart Energy Meter for the Smart Grid by
Anmar Arif, Muhannad AI-Hussain, Nawaf AI-Mutairi, Essam AI-Ammar Yasin Khan and
Nazar Malik Saudi Aramco Chair in Electrical Power, Department of Electrical
Engineering, College of Engineering (King Saud University).
5. A model for generating household electricity load profiles by Jukka V. Paatero and Peter
D. Lund Advanced Energy Systems, (Helsinki University of Technology Finland).
6. Analysis and Application of Artificial Neural Network by L.P.J Veelenturf.
7. ANN Based Load Identification And Forecasting System For The Built Environment by
Hosen Hasna (University of Nebraska-Lincoln, hhasna@unomaha.ed).
8. Principles Of Artificial Neural Networks 2nd Edition by Wai-Kai Chen (Univ. Illinois,
Chicago, USA)
9. Neural Networks by M. Hajek