Abstract
AbstractThe transition towards renewable electricity provides opportunities for manufacturing companies to save electricity costs through participating in demand response programs. End-to-end implementation of demand response systems focusing on manufacturing power consumers is still challenging due to multiple stakeholders and subsystems that generate a heterogeneous and large amount of data. This work develops an approach utilizing artificial intelligence for a demand response system that optimizes industrial consumers’ and prosumers’ production-related electricity costs according to time-variable electricity tariffs. It also proposes a semantic middleware architecture that utilizes an ontology as the semantic integration model for handling heterogeneous data models between the system’s modules. This paper reports on developing and evaluating multiple machine learning models for power generation forecasting and load prediction, and also mixed-integer linear programming as well as reinforcement learning for production optimization considering dynamic electricity pricing represented as Green Electricity Index (GEI). The experiments show that the hybrid auto-regressive long-short-term-memory model performs best for solar and convolutional neural networks for wind power generation forecasting. Random forest, k-nearest neighbors, ridge, and gradient-boosting regression models perform best in load prediction in the considered use cases. Furthermore, this research found that the reinforcement-learning-based approach can provide generic and scalable solutions for complex and dynamic production environments. Additionally, this paper presents the validation of the developed system in the German industrial environment, involving a utility company and two small to medium-sized manufacturing companies. It shows that the developed system benefits the manufacturing company that implements fine-grained process scheduling most due to its flexible rescheduling capacities.
Funder
Bundesministerium für Wirtschaft und Klimaschutz
Publisher
Springer Science and Business Media LLC
Reference129 articles.
1. Package EU (2015) A framework strategy for a resilient energy union with a forward-looking climate change policy (document 1). av
2. Albadi MH, El-Saadany EF (2007) Demand response in electricity markets: an overview, in: 2007 IEEE power engineering society general meeting. IEEE, p 1–5
3. Mourtzis D (2022) Chapter 4 - the mass personalization of global networks. In: Mourtzis D (ed) Design and operation of production networks for mass personalization in the era of cloud technology. Elsevier, p 79–116. https://doi.org/10.1016/B978-0-12-823657-4.00006-3. https://www.sciencedirect.com/science/article/pii/B9780128236574000063
4. Umweltbundesamt, Stromverbrauch (2023). https://www.umweltbundesamt.de/daten/energie/energieverbrauch-nach-energietraegern-sektoren#entwicklung-des-endenergieverbrauchs-nach-sektoren-und-energietragern
5. Statista (2023) Anteil am stromverbrauch nach sektoren in deutschland 2021. https://de.statista.com/statistik/daten/studie/236757/umfrage/stromverbrauch-nach-sektoren-in-deutschland/