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Bachelor Thesis "Energy-based Condition Monitoring for Industry 4.0" and some sample networks exempted from the NDA.

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Thesis

My Bachelor thesis "Energy-based Condition Monitoring for Industry 4.0" documents the implementation of an adaptive condition monitoring system for predictive maintenance. The thesis was written in cooperation with the national research institute fortiss. The system mentioned above is based on an energy monitoring system which I have significantly contributed to develop during my work as a working student at fortiss. The thesis was graded with 1.0.

Machine learning:

The folders "Autoencoder" and "Classifier" contain parts of my networks, which I implemented during my bachelor thesis and which are exempted from the non-disclosure agreements. Both folders contain mainly Convolutional Neural Networks implemented with Python using the Keras framework.

Data

The sample data represent the energy consumption characteristics of six different movements performed by an eDo robot arm. The data was recorded by the above mentioned energy monitoring system.

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Bachelor Thesis "Energy-based Condition Monitoring for Industry 4.0" and some sample networks exempted from the NDA.

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