Generating peak-aware pseudo-measurements for low-voltage feeders using metadata of distribution system operators
Manuel Treutlein, Marc Schmidt, Roman Hahn, Matthias Hertel, Benedikt, Heidrich, Ralf Mikut, and Veit Hagenmeyer

TL;DR
This paper presents a method to generate accurate pseudo-measurements for low-voltage feeders using feeder metadata and machine learning, addressing measurement gaps in distribution grids.
Contribution
It introduces a novel approach combining feeder metadata with weather and calendar data to estimate load profiles, validated on a large real-world dataset.
Findings
XGBoost and MLP outperform linear regression in accuracy
The approach adapts well to different weather and calendar conditions
Generated load curves are realistic and useful for grid management
Abstract
Distribution system operators (DSOs) must cope with new challenges such as the reconstruction of distribution grids along climate neutrality pathways or the ability to manage and control consumption and generation in the grid. In order to meet the challenges, measurements within the distribution grid often form the basis for DSOs. Hence, it is an urgent problem that measurement devices are not installed in many low-voltage (LV) grids. In order to overcome this problem, we present an approach to estimate pseudo-measurements for non-measured LV feeders based on the metadata of the respective feeder using regression models. The feeder metadata comprise information about the number of grid connection points, the installed power of consumers and producers, and billing data in the downstream LV grid. Additionally, we use weather data, calendar data and timestamp information as model features.…
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Taxonomy
TopicsPower Systems and Technologies · Optimal Power Flow Distribution · Power Line Communications and Noise
MethodsLinear Regression
