EcoShower: Estimating shower duration using non-intrusive multi-modal sensor data via LSTM and Gated Transformer models

Lukas Sablica, Bettina Grün, Siamak Layeghy, Sara Dolnicar, Marius Portmann

Publication: Scientific journalJournal articlepeer-review

Abstract

This paper tackles the challenge of accurately estimating shower duration from non-intrusive multi-modal sensor data to facilitate efficient water management. Efficient water usage is a critical environmental challenge, and showering contributes significantly to domestic water consumption. Developing accurate, accessible monitoring solutions is essential for promoting sustainability. Utilizing data from humidity, temperature, sound average, and sound peak sensors, we explore suitable data processing steps and the application of machine learning models to estimate shower duration. Our approach includes the design of a bidirectional Long Short-Term Memory model and the application of an existing Gated Transformer Network model to address the multivariate time series classification task. Our analysis reveals that both models are highly effective in this context, also compared to baseline models, and humidity emerges as a particularly powerful predictor either on its own or when combined with the temperature sensor. This work not only showcases the potential of using machine learning methods for multivariate time series classification in the domain of water consumption but also underscores the implications for adopting such technologies in promoting sustainable water use.
Original languageEnglish
Article number127202
JournalExpert Systems with Applications
Volume277
Early online date17 Mar 2025
DOIs
Publication statusPublished - 5 Jun 2025

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