Mapping Flexibility - Data Pipelines, Innovation Ecosystems, and Strategic Decision-making in Distribution Networks
Hämtar...
Ladda ner
Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Electrification is increasing the pressure on electricity distribution grids, causing
congestion and capacity problems, while grid infrastructure is characterized by long
planning and construction lead times. Consequently, Distribution System Operators
(DSOs) must make better use of the existing grid and its existing resources through
flexibility, defined as ability to shift loads away from peaks and reduce congestion
risks through different technologies. Thus, a DSO must increasingly rely on
flexibility market mechanisms to manage capacity. A central challenge is to identify
where, when, and how flexibility in the grid, and how it can be captured and
deployed to solve grid related issues. One way to address this challenge is to analyze
the large amounts of smart meter data generated by electricity consumption in the
city, while also better understanding how the organization can utilize these resources.
This thesis examines how data-driven analysis and strategic decision-making jointly
shape the deployment of flexibility through an interdisciplinary approach. The
study combines advanced quantitative data analysis and clustering techniques
with a qualitative organizational and innovation ecosystem study. It examines
how interdependent actors jointly enable flexibility in the grid, while creating a
data pipeline and identifying relevant use cases and trade-offs based on interviews
with key stakeholders within the DSO organization and its surrounding external
actor network. The quantitative analysis develops consumption baselines and
applies clustering to identify recurring demand patterns among households and
small to medium-sized enterprises. The qualitative analysis examines how these
analytical outputs can be interpreted, acted upon, and embedded in organizational
decision-making and flexibility market development.
The findings show that smart meter data can be used to show where,
when, and how much flexibility exists. The study also finds that, within the
regional flexibility market context, geographical clustering provides limited
additional value, allowing analytical efforts to focus instead on clustering customers
based on similarities in consumption behavior. Furthermore, the results highlight
that clustering outputs must remain operationally actionable, where fewer, clearer,
and more explainable customer groups are more useful for decision-making than
highly granular segmentations.
These findings imply that flexibility deployment is both a technical analytics challenge, and an organizational and ecosystem challenge. By linking advanced data
analytics and clustering methods to the practical needs of DSOs, aggregators, and
other ecosystem actors, the study shows how smart meter data can support more
resource-efficient, lower-risk, and strategically informed flexibility deployment in
modern electricity distribution systems.
Beskrivning
Ämne/nyckelord
smart meter data, flexibility markets, electricity distribution systems, DSOs, data-driven decision-making, energy system planning, qualitative interviews, organizational analysis, innovation ecosystem analysis, innovation ecosystems, dynamic capabilities, technology adoption, data pipeline design, consumption modeling, ARIMA, SARIMAX, clustering methods, Wards linkage, K-means, DBSCAN, load profiling, peak demand, demand-side flexibility, geographic clustering, computational efficiency, resource allocation, interdisciplinary
