A geographic information system-based modelling, analysing and visualising of low voltage networks: The potential of demand time-shifting in the power quality improvement
Tomislav Antic, Tomislav Capuder

TL;DR
This paper presents a GIS-based tool that models and visualizes low voltage networks, demonstrating how demand time-shifting by end-users can improve power quality amidst changing consumption patterns due to COVID-19.
Contribution
It introduces an open source GIS tool for error correction, modeling, and visualizing low voltage networks, and proposes a demand time-shifting algorithm to enhance power quality.
Findings
COVID-19 worsened power quality indicators.
Demand time-shifting reduces voltage disturbances.
GIS tool effectively identifies data errors and visualizes impacts.
Abstract
The challenges of power quality are an emerging topic for the past couple of years due to massive changes occurring in low voltage distribution networks, being even more emphasized in the years marked by the novel COVID-19 disease affecting people's behaviour and energy crisis increasing the awareness and need of end-users energy independence. Both of these phenomena additionally stress the need for changes in distribution networks as the traditional consumption patterns of the end-users are significantly different. To overcome these challenges it is necessary to develop tools and methods that will help Distribution System Operators (DSOs). In this paper, we present a geographic information system (GIS)-based tool that, by using open source technologies, identifies and removes errors both in the GIS data, representing a distribution network, and in the consumption data collected from…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Smart Grid Energy Management · Traffic Prediction and Management Techniques
