[M] Auto Data Evaluation using Machine Learning @ROSEN Enschede

Master Assignment

[M] Auto Data Evaluation using Machine Learning @ROSEN Enschede

Location: (Enschede)

Student: (Unassigned)

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Introduction

The worldwide operating company ROSEN inspects several assets using self-developed techniques and devices. As part of ROSEN R&D, the sensor data gathered by inspecting tank bottoms with high resolution Magnetic Flux Leakage (MFL) technology are processed to recognize possible anomalies by the help of machine learning. For this field of expertise, we’re looking for a graduation student (Computer Science/Data Science) to further improve existing algorithms.

Situation

Previously, potential anomalies were first detected directly from the raw measurement data and then manually crosschecked by the evaluators in order to select only the corrosion spots; here a lot of efforts were needed. Recently, machine learning techniques such as classification, based on existing ground truth databases, relatively successfully have been developed by pre-classifying the potential anomalies. Nevertheless, a further algorithm quality improvement is wished.

Project target

By the help of two available labeled and unlabeled datasets, it is aimed to test several methodologies to the one hand improve the accuracy of the current classifier and on the other hand generalize the model toward data variations caused by different factors.

 More specifically the following research topics should be covered in this project:

REQUIREMENTS

To become part of the ROSEN family, you should bring with you:

OUR OFFER

We offer various career development opportunities of an international, innovative and sustainability-oriented company. In an open corporate culture with rapid decision-making, you can implement your ideas successfully. Moreover, you can expect enthusiastic support by experienced engineers and scientist, working in a dedicated team with a ‘can-do’ mentality.

We attach great importance to a balance between work and family life. Moreover, flexible working hours and different working time models are standard for ROSEN.