Hello,
is there any tutorial available with an example dataset, which shows how to implement an TTF by using the concept of virtual sensors? I tried to use TWX Analytics with this data set (https://c3.nasa.gov/dashlink/resources/139/) in order to predict the TTF/RUL of the engines, but I never could reach the correct RUL which are also provided in this dataset. The scored results of TWX Analytics where always wrong (with and without the virtual sensor concept).
I am also aware of this document (https://www.ptc.com/es/support/article?n=CS271176) and I used the described approach there to predict the RUL.
Any help is appreciated.
Hello,
Thank you for posting your question.
At this time we do not have a TTF sample dataset, and we refer users to that article you have linked as a starting point.
Please let me know if you have any additional questions.
Regards,
Neel
Thank you for your reply.
Is the approach described in the linked article the right one, to fit with the needs in a real life scenario?
Why could TWX Analytics not predict the TTF/RUL of the simulate data of the training dataset? Which parameter can I change in order to improve the results for this training set?
I modified the training data this way:
I added a Boolean flag which indicates an error (1 or true for every last row of an engine id) and added the TTF according to the document above.