Clustering and Interpretability of Residential Electricity Demand Profiles

Efficient energy management relies on uncovering meaningful consumption patterns from large-scale electricity load demand profiles. With the widespread adoption of sensor technologies such as smart meters and IoT-based monitoring systems, granular and real-time electricity usage data have become ava...

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Main Authors: Sarra Kallel, Manar Amayri, Nizar Bouguila
Format: Article
Language:English
Published: MDPI AG 2025-03-01
Series:Sensors
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Online Access:https://www.mdpi.com/1424-8220/25/7/2026
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author Sarra Kallel
Manar Amayri
Nizar Bouguila
author_facet Sarra Kallel
Manar Amayri
Nizar Bouguila
author_sort Sarra Kallel
collection DOAJ
description Efficient energy management relies on uncovering meaningful consumption patterns from large-scale electricity load demand profiles. With the widespread adoption of sensor technologies such as smart meters and IoT-based monitoring systems, granular and real-time electricity usage data have become available, enabling deeper insights into consumption behaviors. Clustering is a widely used technique for this purpose, but previous studies have primarily focused on a limited set of algorithms, often treating clustering as a black-box approach without addressing interpretability. This study explores a wide number of clustering algorithms by comparing hard clustering algorithms (K-Means, K-Medoids) versus soft clustering techniques (Fuzzy C-Means, Gaussian Mixture Models) in segmenting electricity consumption profiles. The clustering performance is evaluated using five different clustering validation indices (CVIs), assessing intra-cluster cohesion and inter-cluster separation. The results show that soft clustering methods effectively capture inter-cluster characteristics, leading to better cluster separation, whereas intra-cluster characteristics exhibit similar behavior across all clustering approaches. This study assesses which CVIs provide reliable evaluations independent of clustering algorithm sensitivity. It provides a comprehensive analysis of the different CVIs’ responses to changes in data characteristics, highlighting which indices remain robust and which are more susceptible to variations in cluster structures. Beyond evaluating clustering effectiveness, this study enhances interpretability by introducing two decision tree models, axis-aligned and sparse oblique decision trees, to generate human-readable rules for cluster assignments. While the axis-aligned tree provides a complete explanation of all clusters, the sparse oblique tree offers simpler, more interpretable rules, emphasizing a trade-off between full interpretability and rule complexity. This structured evaluation provides a framework for balancing transparency and complexity in clustering explanations, offering valuable insights for utility providers, policymakers, and researchers aiming to optimize both clustering performance and explainability in sensor-driven energy demand analysis.
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spelling doaj-art-ee0244dd3e8545f8baefa6db27468d8c2025-08-20T03:08:59ZengMDPI AGSensors1424-82202025-03-01257202610.3390/s25072026Clustering and Interpretability of Residential Electricity Demand ProfilesSarra Kallel0Manar Amayri1Nizar Bouguila2Concordia Institute for Information Systems Engineering, Concordia University, Montreal, QC H3G 1M8, CanadaConcordia Institute for Information Systems Engineering, Concordia University, Montreal, QC H3G 1M8, CanadaConcordia Institute for Information Systems Engineering, Concordia University, Montreal, QC H3G 1M8, CanadaEfficient energy management relies on uncovering meaningful consumption patterns from large-scale electricity load demand profiles. With the widespread adoption of sensor technologies such as smart meters and IoT-based monitoring systems, granular and real-time electricity usage data have become available, enabling deeper insights into consumption behaviors. Clustering is a widely used technique for this purpose, but previous studies have primarily focused on a limited set of algorithms, often treating clustering as a black-box approach without addressing interpretability. This study explores a wide number of clustering algorithms by comparing hard clustering algorithms (K-Means, K-Medoids) versus soft clustering techniques (Fuzzy C-Means, Gaussian Mixture Models) in segmenting electricity consumption profiles. The clustering performance is evaluated using five different clustering validation indices (CVIs), assessing intra-cluster cohesion and inter-cluster separation. The results show that soft clustering methods effectively capture inter-cluster characteristics, leading to better cluster separation, whereas intra-cluster characteristics exhibit similar behavior across all clustering approaches. This study assesses which CVIs provide reliable evaluations independent of clustering algorithm sensitivity. It provides a comprehensive analysis of the different CVIs’ responses to changes in data characteristics, highlighting which indices remain robust and which are more susceptible to variations in cluster structures. Beyond evaluating clustering effectiveness, this study enhances interpretability by introducing two decision tree models, axis-aligned and sparse oblique decision trees, to generate human-readable rules for cluster assignments. While the axis-aligned tree provides a complete explanation of all clusters, the sparse oblique tree offers simpler, more interpretable rules, emphasizing a trade-off between full interpretability and rule complexity. This structured evaluation provides a framework for balancing transparency and complexity in clustering explanations, offering valuable insights for utility providers, policymakers, and researchers aiming to optimize both clustering performance and explainability in sensor-driven energy demand analysis.https://www.mdpi.com/1424-8220/25/7/2026interpretable machine learningdecision tree interpretabilityelectricity load profilingclustering algorithmscluster validation indices (CVIs)data characteristics
spellingShingle Sarra Kallel
Manar Amayri
Nizar Bouguila
Clustering and Interpretability of Residential Electricity Demand Profiles
Sensors
interpretable machine learning
decision tree interpretability
electricity load profiling
clustering algorithms
cluster validation indices (CVIs)
data characteristics
title Clustering and Interpretability of Residential Electricity Demand Profiles
title_full Clustering and Interpretability of Residential Electricity Demand Profiles
title_fullStr Clustering and Interpretability of Residential Electricity Demand Profiles
title_full_unstemmed Clustering and Interpretability of Residential Electricity Demand Profiles
title_short Clustering and Interpretability of Residential Electricity Demand Profiles
title_sort clustering and interpretability of residential electricity demand profiles
topic interpretable machine learning
decision tree interpretability
electricity load profiling
clustering algorithms
cluster validation indices (CVIs)
data characteristics
url https://www.mdpi.com/1424-8220/25/7/2026
work_keys_str_mv AT sarrakallel clusteringandinterpretabilityofresidentialelectricitydemandprofiles
AT manaramayri clusteringandinterpretabilityofresidentialelectricitydemandprofiles
AT nizarbouguila clusteringandinterpretabilityofresidentialelectricitydemandprofiles