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NEURAL NETWORKS

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The connection between neurons are called weights the . Weight values are adjusted to get the target output. Take a single neuron, in a n/w it has two modes of operation – PowerPoint PPT presentation

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Title: NEURAL NETWORKS


1
NEURAL NETWORKS
  • Fuzzy logic

2
  • Neural network is dubbed as an replica of a
    human brain on the lines of its working model
  • The functionality of neural network can be
    equated to the functions of an human brain
  • How does human brain learn
  • 1. the human brain transforms the given input to
    output is the general idea
  • (inputs)
    (outputs)

3
  • The human brain consists of small elements
    called Neurons
  • 1.The neurons collects the signal through a
    host of fine
    structures called dendrites
  • 2. the neurons then sends out the electrical
    activity
  • through a thin stand called Axons

4
  • 3. These axons are then split into thousands of
    branches
  • 4.At the end of each branch there is a structure
    called synapse
  • 5.This synapse sends the electrical activity to
  • other neurons which are interconnected

5
  • When the recipient neuron traces out that the
    input is large in size in comparison to its
    original size, its sends the electrical activity
    down the axon
  • Synapses play an significant role in transferring
    the data from one neuron to another
  • So, by changing the effectiveness of the synapses
    learning occurs
  • A neural network also functions in the exact
    style
  • A neural network is fused up by a series of small
    elements called neurons

6
  • We can train a neural network to perform a
    particular task
  • The fancy point about a neural network is it can
    be adjusted and trained so that the input
    leads to the specific target of output
  • Hence neural n/w is also called as artificial
    neural n/w
  • This is called supervised learning like a
    learning of a human brain
  • The human brain generated output based on the
    inputs given

7
  • But the neural network is a good adjustor of
    neurons and the desired and target result can be
    outputted
  • BASIC STRUCTURE OF A NEURAL NETWORK




  • hidden layer
  • Input layer

    output layer











  • (weights ) synapses




8
  • BLOCK DIAGRAM OF NEURAL N/W



  • TARGET
  • INPUTS O/P


  • OUTPUTS

  • ADJUST WEIGHTS
  • The o/p is not matched with the target o/p the
    weights can be adjusted, this particular
    flash-point as made neural network a remarkable
    tool

NEURAL NETWORK INCLUDING
CONNECTIONS CALLED WEIGHTS
COMPARE
9
  • The connection between neurons are called weights
    the
  • Weight values are adjusted to get the target
    output.
  • Take a single neuron, in a n/w it has two modes
    of operation
  • 1.Training mode
  • 2.Firing mode
  • in training mode the neurons will be trained to
    fire for a particular input patterns
  • In the firing mode the neuron has two tasks
  • To fire if the given input is form the trained
    list of input patterns/ fire in case of any
    similarities
  • 2.vice-versa
  • Lets take a best example of a 3-input neuron
  • X1,x2,x3 are three neurons

10
  • The neuron here is trained in such a style so as
    to
  • Case1output 0(dont fire) if the input is
    111(or)101
  • Case2Output1 (fire) if the input is 000 (or) 001

X1 0 0 0 0 1 1 1 1
X2 0 0 1 1 0 0 1 1
X3 0 1 0 1 0 1 0 1
O/P 0 Case1 (not fire) 0 Case1 0/1 None of the above 0/1 None of the above 0/1 None of the above 1 Case2 (neuron to fire) 0/1 None of the above 1 Case2
(after firing rule) 0 0 0 0/1 0/1 1 1 1
11
  • Consider the third column which is 010, which is
    before undefined after firing outputs the value
    0 HOW?

12
  • Lets consider fourth column which is before 0/1
    after applying the firing rule also holds the
    constant value,how!!!! HOW?
  • undefined, after applying firing rule it is
    0,HOW?

CONSIDER 011 COMPARE AND CONTRAST WITH ALL THE FOUR SETS Case1 111 output is 1 Case 1 101 Output is 1 Case 2 000 Output is 0 Case 2 001 Output is 0
011 X21 X31 DIFFERS ONLY ONE ELEMENT X31 DIFFERS IN TWO ELEMENTS X10 DIFFERS IN TWO ELEMENTS X10 X31 DIFFERS IN ONLY ONE ELEMENT
OUTPUT AFTER FIRING (MAXIMUM SIMILARITY) HENCE TAKE THE VALUE OF 111CASE1) 1 (MAXIMUM SIMILARITY) HENCE TAKE THE VALUE OF 001CASE2) 0
13
  • Because it hold maximum similarities with both
    the cases( case1,case2)
  • The firing rule states that it has to remain
    undefined because of a tie
  • with the same mechanism of neurons getting
    trained/adjusted/fired, and outputting the target
    o/p has made neural n/w instrumental in a many
    spheres
  • Neural network merged with fuzzy logic ha done
    wonders in the fields of data mining ETC

14
  • Fuzzy logic tool was introduced in 1965 by lot
    fi zadeh
  • Fuzzy means something which is blurred/ hazy
  • Fuzzy logic means is a mathematical tool that
    deals with uncertainty
  • Haziness persist in any realistic process, fuzzy
    logic task is to decode exactness out of
    something which is inexact
  • The human brain has the capability to make a
    clear distinction between an image and an object
    even if it is blur
  • Linear computing is able to read just pixels as a
    set of colours
  • Fuzzy logic capability to solve problems that
    linear computing is not able to do.

15
  • Fuzzy logic hence embedded in neural networks
    show more transparency
  • APPLICATIONS of neural networks
  • speech recognition
  • Pattern recognition
  • image processing
  • data mining
  • robotics
  • data segmentation and compression

16
  • Fuzzy logic is used to model systems that has
    ambiguity or opaqueness ,it can be vagueness/lack
    of information/miscalculation of measurements
  • EXAMPLE
  • Entity x to this entity a short person may be
    one whose height is below 4.20
  • Entity y to this entity a short person may be
    one whose height is beneath or equal to 3.9
  • Here short is the language descriptor , it
    applies the same meaning to both x and y but it
    established that they dont have a unique
    definition for short
  • Such type of information associated with dilemma
    are made feasible to the computers with the tool
    called fuzzy logic

17
  • The fuzzy logic incorporates a simple IF x AND
    y THEN z approach rather than modeling a system
    mathematically
  • Example
  • Rather than Dealing the temperature control in
    terms such as 1. SP500f
  • 2.Tlt1000f
  • 3.210cltTEMPlt220c
  • Fuzzy logic deals in terms like
  • IF(process is too cool) AND( getting colder)
    THEN(add heat to the process)

18
  • 2. IF(process is too hot) AND (process is heating
    rapidly) THEN (cool the process quickly)
  • Because of this potential to deal with complex
    tasks fuzzy logic has wide range of application
    having its share in all household appliances
  • 1.Washing machines
  • 2. Electric rice cookers
  • 3.Speech recognition
  • 4.Stock market predictions
  • 5.High speed trains

19
  • fuzzy logic in washing machines
  • The washing machine first tests how dirty the
    laundry is
  • Once it knows how dirty the laundry is it can
    easily calculate how long it can wash it
  • First it always take a base of 10minutes
  • Then if the cloth put in it is 100 dirty then it
    adds two minutes (10212 minutes)
  • If the cloth put in the washing machine is 50
    dirty then it adds 1 minute to the base of
    10min(10111min)
  • The laundry can also be greasy at the same time

20
  • If the laundry is greasy then add 2minutes to the
    base of 10min(12min)
  • If the laundry is 50 greasy then add 1 minute to
    the base of 10min(11min)

  • 1.


  • 2.

  • 3.

FUZZ MACHINE
21
  • Shirt 1 100 dirty( 2min)
  • Shirt 2 100 clean(0 min)
  • Shirt 350 greasy(1min)
  • Total time taken by the washing machine working
    with fuzz logic is 10(base)2min0min1min
    13min ( for three shirts)

22
  • ADVANTAGES OF NEURAL N/W AND FUZZY LOGIC
  • High accuracy neural n/w are able to give the
    exact result of complex systems
  • Noise tolerance neural n/w are very flexible
    with respect to incomplete, missing and noisy
    data
  • Ease of maintenance neural n/w can be updated
    with fresh data making them useful for dynamic
    environments
  • When an element (i.e) neuron fails the other
    neuron undertakes the task

23
  • Though the advent and discovery of neural network
    is dated back to 1943 by warren mc culloch, it
    has been a wonder tool in networks till date
  • Neural networks has been enhanced and able to
    hammer out solutions for the problems which are
    complex for conventional computers/human beings
  • Neural network is merited in many ways with only
    one setback i,e training the neurons to generate
    a target o/p
  • Hence neural networks and fuzzy logic are
    supplementary to computers
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