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MEASUREMENT OF INFORMATION DISASTER
THROUGH TECHNOLOGICAL METHOD MODEL




          孫足承 Tsu-Cheng Sun
          ITE of NKNU
Contents
   Introduction
   Literature review
      Information disaster
     Technological method model

 The measurement of technological method
  model
 Discussion

 Conclusions
INTRODUCTION
the study presented the measurement through
  technological method model.
 First, we found that the variables have chain
  reaction. To solving problems in our mission needs
  to advising all variables carefully.
 Second, the technological method model is suitable
  to explain and confirm the factors of information
  disaster.
LITERATURE REVIEW
   Information disaster
      The system becomes unstable if any impact of ITS is
      out of control, such as the storage error, the process
      error or the operation error.
     If the unstable situation couldn’t be solved, the ITS will
      malfunction and become a disaster.
     It’s necessary to develop the assessment of ITS’
      disaster with simple numeric to show people the degree
      of disaster happening.
LITERATURE REVIEW
   Technological method model

                      Resource
                      Tools
                      Information
                      Materials
                      Energy
                      Capital
    Problem           Time                     Outcomes
    Complexity                                 Opportunity
    Recognition                                Problems




                      Technological
                      Process
                      Bio-related technology
                      Communication
                      technology
                      Production technology
                      Transportation
                      technology
THE MEASUREMENT OF TECHNOLOGICAL METHOD
MODEL



                Resource
                Selections
                Preparedness
                                Outcomes
                                Opportunity
  Problem
                                Problems
  Complexity
  Recognition
                Technologica
                l Process
                Selections
                Operations
THE MEASUREMENT OF TECHNOLOGICAL METHOD
MODEL

P=Pc X Pr
R=Rs X Rp
T=Ts X To
O=P X( R X T)
Op=1-O
 All the variables are positive within interval {9, 1}.

 If the condition is ready or excellent, it could be 9.

 If the condition is poor, wrong or worse, it could be
  1.
THE MEASUREMENT OF TECHNOLOGICAL METHOD
MODEL

     The variables is normalized on min-max
      normalization interval [0, 1] by the function as
           v-a d     c
 v'    c
             b   a
[a, b]= [1, 9]
[c, d]= [0, 1]
v is the raw value of variables and v’ is the normalized
   value.
 The value of O is closer to 1 and the probability of
   success of solving problems is higher.
 The value of O is closer to 0 and the probability of
   success of solving problems is more despondent.
THE MEASUREMENT OF TECHNOLOGICAL
METHOD MODEL

Pc       Pr       Rs       Rp       Ts       To       O         Op

     9        9        9        9        9        9       1      0

     1        9        9        9        9        9       0      1

     9        9        9        8        9        9   .875      .125

     9        9        9        5        9        9       .5     .5

     9        9        9        3        9        9       .25    .75
DISCUSSION
 The chain reaction of variables leads to disaster
  forcefully
 Variables have multiplication relations in the model
  so the unstable situation will be significant
  therefore.
 The probability of disaster is sensitive in the model

  so that it can give enough messages to notifying
  people in ITS to prevent the disaster.
Conclusions
  The technological method model is the effective
  framework for describing human using technology
  behavior.
 The study illustrates the model is also effective to
  assess the probability of information disaster.
 Based on the model, people know the relations of
  the variables led to information disaster and assess
  the probability of information disaster clearly.

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Measurement of information disaster through technological method model

  • 1. MEASUREMENT OF INFORMATION DISASTER THROUGH TECHNOLOGICAL METHOD MODEL 孫足承 Tsu-Cheng Sun ITE of NKNU
  • 2. Contents  Introduction  Literature review  Information disaster  Technological method model  The measurement of technological method model  Discussion  Conclusions
  • 3. INTRODUCTION the study presented the measurement through technological method model.  First, we found that the variables have chain reaction. To solving problems in our mission needs to advising all variables carefully.  Second, the technological method model is suitable to explain and confirm the factors of information disaster.
  • 4. LITERATURE REVIEW  Information disaster  The system becomes unstable if any impact of ITS is out of control, such as the storage error, the process error or the operation error.  If the unstable situation couldn’t be solved, the ITS will malfunction and become a disaster.  It’s necessary to develop the assessment of ITS’ disaster with simple numeric to show people the degree of disaster happening.
  • 5. LITERATURE REVIEW  Technological method model Resource Tools Information Materials Energy Capital Problem Time Outcomes Complexity Opportunity Recognition Problems Technological Process Bio-related technology Communication technology Production technology Transportation technology
  • 6. THE MEASUREMENT OF TECHNOLOGICAL METHOD MODEL Resource Selections Preparedness Outcomes Opportunity Problem Problems Complexity Recognition Technologica l Process Selections Operations
  • 7. THE MEASUREMENT OF TECHNOLOGICAL METHOD MODEL P=Pc X Pr R=Rs X Rp T=Ts X To O=P X( R X T) Op=1-O  All the variables are positive within interval {9, 1}.  If the condition is ready or excellent, it could be 9.  If the condition is poor, wrong or worse, it could be 1.
  • 8. THE MEASUREMENT OF TECHNOLOGICAL METHOD MODEL  The variables is normalized on min-max normalization interval [0, 1] by the function as v-a d c v' c b a [a, b]= [1, 9] [c, d]= [0, 1] v is the raw value of variables and v’ is the normalized value.  The value of O is closer to 1 and the probability of success of solving problems is higher.  The value of O is closer to 0 and the probability of success of solving problems is more despondent.
  • 9. THE MEASUREMENT OF TECHNOLOGICAL METHOD MODEL Pc Pr Rs Rp Ts To O Op 9 9 9 9 9 9 1 0 1 9 9 9 9 9 0 1 9 9 9 8 9 9 .875 .125 9 9 9 5 9 9 .5 .5 9 9 9 3 9 9 .25 .75
  • 10. DISCUSSION  The chain reaction of variables leads to disaster forcefully  Variables have multiplication relations in the model so the unstable situation will be significant therefore.  The probability of disaster is sensitive in the model so that it can give enough messages to notifying people in ITS to prevent the disaster.
  • 11. Conclusions  The technological method model is the effective framework for describing human using technology behavior.  The study illustrates the model is also effective to assess the probability of information disaster.  Based on the model, people know the relations of the variables led to information disaster and assess the probability of information disaster clearly.