CROCS: A Two-Stage Clustering Framework for Behaviour-Centric Consumer Segmentation with Smart Meter Data
Luke W. Yerbury, Ricardo J. G. B. Campello, G. C. Livingston Jr, Mark Goldsworthy, Lachlan O'Neil

TL;DR
This paper introduces CROCS, a novel two-stage clustering framework that effectively segments consumers based on smart meter data, capturing behavioral diversity and robustness to data anomalies, thereby improving demand-side management strategies.
Contribution
The paper presents CROCS, a two-stage clustering method that improves consumer segmentation by capturing behavioral diversity and robustness to anomalies in smart meter data.
Findings
CROCS effectively captures intra-consumer variability.
It uncovers synchronous and asynchronous behavioral similarities.
The method is robust to anomalies and missing data.
Abstract
With grid operators confronting rising uncertainty from renewable integration and a broader push toward electrification, Demand-Side Management (DSM) -- particularly Demand Response (DR) -- has attracted significant attention as a cost-effective mechanism for balancing modern electricity systems. Unprecedented volumes of consumption data from a continuing global deployment of smart meters enable consumer segmentation based on real usage behaviours, promising to inform the design of more effective DSM and DR programs. However, existing clustering-based segmentation methods insufficiently reflect the behavioural diversity of consumers, often relying on rigid temporal alignment, and faltering in the presence of anomalies, missing data, or large-scale deployments. To address these challenges, we propose a novel two-stage clustering framework -- Clustered Representations Optimising…
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Taxonomy
TopicsSmart Grid Energy Management · Electricity Theft Detection Techniques · Smart Grid Security and Resilience
