11
Improvement of quotation process for a large transformer manufacturer EEI term project NTHU 104034612 Ian 李敬毅

Improvement of quotation process for a large transformer

  • Upload
    others

  • View
    9

  • Download
    0

Embed Size (px)

Citation preview

Page 1: Improvement of quotation process for a large transformer

Improvement of quotation process for

a large transformer manufacturer

EEI term project

NTHU 104034612 Ian 李敬毅

Page 2: Improvement of quotation process for a large transformer

Outline

• Background

• As-is model

• To-be model

• System design

• Conclusion

Page 3: Improvement of quotation process for a large transformer

Background

• A large transformer is made up of many components, it is difficult to

maintain the efficiency of quotation manually. This research introduce two

core concepts of Industry 4.0, intellectualization and automation, to

improve the process of quotation for a transformer manufacturer and expect

to increase efficiency and accuracy for winning orders.

Page 4: Improvement of quotation process for a large transformer

As-is model

Page 5: Improvement of quotation process for a large transformer

There are some problems exist in As-is model:

• All of the works are done manually

• Human error

• High cost

• Lack of efficiency

As-is model

Page 6: Improvement of quotation process for a large transformer

To-be model

Page 7: Improvement of quotation process for a large transformer

System design

Page 8: Improvement of quotation process for a large transformer

System design

Page 9: Improvement of quotation process for a large transformer

System design

Page 10: Improvement of quotation process for a large transformer

Conclusion

• An automatic quotation system enhance the accuracy and simplify the

original process, it reduce the cost of labor and time, decrease the error rate

caused by human, the resources can be used in a more effective way, the

chance of obtaining orders will increase.

Page 11: Improvement of quotation process for a large transformer

Thanks for your attention!