Anomaly detection, warning system and real time simulation in predictive maintenance using LSTM and CNN
4 vues (au cours des 30 derniers jours)
Afficher commentaires plus anciens
I am currently working on a project regarding predictive maintenance with LSTM and CNN. The algorithms are good to run. However, my task now is to add few features to the project. The features are anomaly detection, warning system and deployment of the algorithm to perform live data simulation.
2 commentaires
Arkadiy Turevskiy
le 6 Oct 2021
Modifié(e) : Arkadiy Turevskiy
le 6 Oct 2021
Sounds like a cool project. Is that for school or work?
What are your already developed algorithms doing: fault classification, remaining useful life estimation?
You might be interested to take a look at this video where we went through a cse study of using autoencoder for anomaly detection.
What is the question you wanted to get an answer to?
Réponses (1)
Prateek Rai
le 9 Oct 2021
To my understanding, you have created a deep learning model for predictive maintenance with LSTM and CNN and want to add anomaly detection, warning system, and real time simulation functionalities.
For anomaly detection, you have to first set the criteria as to what output values will be distinguished as an anomaly. Based on that you have to develop your warning system.
After you are done with both the steps, then you can proceed with deployment to enable the algorithm to be fed with live data for real time simulation.
For deployment, you can refer to Prototype Deep Learning Networks on FPGA MathWorks Documentation page to learn more on deploying deep learning networks onto target FPGA and SoC boards.
2 commentaires
Prateek Rai
le 9 Oct 2021
It depends on your model. Anomaly detection depends on what activity you think anomaly is. For example, if you are reconstructing the input back as output then anomaly depends on the mean square error between input and output. Another example is what I stated in my answer, if you want your prediction to be less than a threshold then anomaly would be the case when output is more than that threshold.
Voir également
Catégories
En savoir plus sur Deep Learning Toolbox dans Help Center et File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!