Machine Learning for NCC's Concrete Pile Production
Abstract
In this thesis, the usefulness of machine learning (ML) is evaluated for the
processes of NCC's subsidiary company Hercules. It is evaluated with regard
to ML's ability to assist reduction of CO2 footprint and costs. The work
comprises analysis of Hercules' processes and analysis of data from these
processes as well as a search for an appropriate ML model for predicting
compressive strength of concrete. Results show that gradient boosted trees
through the CatBoost library is a suitable ML model. However, additional
data is needed to develop any such an ML model that is t for use. A
general example of how the CatBoost library can be used to predict strength
of concrete is given. This example can be used as a starting point for
future work on predicting compressive strength of concrete and for other
ML problems at NCC. It was also found that Hercules' logistical system
would bene t from further investigation. Short order times stresses the
organisation and there may be a case for ML to improve the logistical system.
Degree
Student essay