Data Science Asked on December 14, 2021
I am trying to build a supervised ML-Model in the area of predictive Maintenance where the features are signal events, which can be represented with a gantt chart:
So my feature data consists of events with signal_code
(each row in the gantt chart represents all events of a certain signal code), startTime
, endTime
, status
(represented as the color in the chart). There can be up to a few hundred different signal codes.
I want to predict the likelyhood of an event (e.g. dark red in chart) say 30 minutes before it occures.
How could I detect "malicious" patterns prior to those events? Are there existing best practices for a use case like that?
I could find a lot information on time series (related question) but not for this kind of data.
Obviously i will ne to apply some dimensionality reduction techniques such as PCA or LDA, but what will a do beforehand in order to put the data into a one-dimensional representation?
I welcome any advice on which algorithms or feature extraction methods might help! 🙂
For somebody new to ML you're starting with a quite complex problem!
Your first job is to formalize the problem: what exactly do you want to predict and from which information?
There's a lot of good advice that you can use in the related question you mention. You could consider sequence labeling methods, but there are certainly a lot of other options.
I'm not so sure you will need dimensionality reduction in your case: the signals you're using as features are binary so your features are much less complex than in the related question.
Answered by Erwan on December 14, 2021
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