Forecasting Power Consumption of Manufacturing Industries Using Neural Networks.

Boguhn, Lorenz (2020) Forecasting Power Consumption of Manufacturing Industries Using Neural Networks. (Bachelor thesis), Kiel University, Kiel, 66 pp.

[thumbnail of bsc_lorenz_boguhn_thesis.pdf]
Preview
Text
bsc_lorenz_boguhn_thesis.pdf

Download (1MB) | Preview

Abstract

The reduction of power consumption should be reached for many ecologic and economic reasons. Since a large part of the power is consumed by the industrial sector, we propose to increase the energy efficiency and applying the DevOps approach. Forecasting the power consumption of manufacturing industries can increase the energy efficiency and also allows using anomaly detection systems and predictive maintenance for manufacturing industries. In this work, we designed multiple different model variations, using different neural networks, forecasting methods and features for the forecasting of three industrial power consumers. We also evaluated our different model variations with the aim to find the model variation with the highest accuracy. By providing the evaluations, we offer conclusions about different forecasting methods, features used and different neural networks for forecasting the power consumption of industrial power consumers. We also propose a forecasting microservice as a base for an anomaly detection and predictive maintenance.

Document Type: Thesis (Bachelor thesis)
Keywords: Industrial DevOps, Industry 4.0, Power Consumption, Forecasting, Machine Learning, Neural Network
Research affiliation: Kiel University > Software Engineering
Kiel University
Open Access Journal?: Yes
Projects: TITAN
Date Deposited: 22 Apr 2020 08:45
Last Modified: 22 Apr 2020 08:45
URI: https://oceanrep.geomar.de/id/eprint/49521

Actions (login required)

View Item View Item