Data science to investigate temperature profiles of large networks of food refrigeration systems
Corneliu Arsene

TL;DR
This paper explores how temperature profiles in large networks of food refrigeration systems behave over time, aiming to inform grid stability strategies amid increasing renewable energy reliance.
Contribution
It introduces a data science approach to analyze temperature dynamics in extensive food refrigeration networks, providing insights for energy management and grid stability.
Findings
Temperature profiles vary significantly across networks.
Data analysis reveals patterns useful for energy optimization.
Insights support integration of refrigeration systems into smart grids.
Abstract
The electrical generation and transmission infrastructures of many countries are under increased pressure. This partially reflects the move towards low carbon economies and the increased reliance on renewable power generation systems. There has been a reduction in the use of traditional fossil fuel generation systems, which provide a stable base load, and this has been replaced with more unpredictable renewable generation. As a consequence, the available load on the grid is becoming more unstable. To cope with this variability, the UK National Grid has placed emphasis on the investigation of various technical mechanisms (e.g. implementation of smart grids, energy storage technologies, auxiliary power sources), which may be able to prevent critical situations, when the grid may become sometimes unstable. The successful implementation of these mechanisms may require large numbers of…
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Taxonomy
TopicsSmart Grid Energy Management
