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Creating a labeled district heating data set: From anomaly detection towards fault detection

Dominik Stecher, Martin Neumayer, A. Ramachandran, Anastasia Hort, Andreas Maier, Dominikus Bücker, Jochen Schmidt

2024Energy11 citationsDOIOpen Access PDF

Abstract

For an efficient operation of district heating systems, being able to detect anomalies and faults at an early stage is highly desirable. Here, data-driven machine learning methods can be a cornerstone, particularly for fault detection in district heating substations, where the availability of heat meter data keeps increasing. However, the creation of data sets suitable for training such machine learning models poses challenges to researchers and practitioners alike. To address this problem, we propose a systematic and domain-specific process for data set creation for fault detection in the form of practical guidelines. This process concretizes the data science and data mining cross-industry standard CRISP-DM for the district heating domain and focuses on the process steps of goal definition, data acquisition and understanding, and data curation. We aim to enable researchers and practitioners to create data sets for fault detection in the district heating domain and therefore also enable the creation or improvement of machine learning models in this domain. In addition, we propose a minimum viable feature set for fault detection in district heating networks with the goal of enabling better cooperation between researchers and easier transfer of the resulting machine learning models, to better proliferate new progress in the field. • District heating focused adaption of the CRISP-DM standard process for data set creation. • List of typical data sources, data types and exemplary contents for data set creation. • Guidelines for data acquisition and understanding as well as for data curation. • Practical examples of potential issues and recommended methods on how to address them. • Proposed minimum viable feature set for future fault detection data sets for better algorithmic cross-compatibility and faster progress.

Topics & Concepts

Anomaly detectionFault detection and isolationData setSet (abstract data type)Fault (geology)Anomaly (physics)Data miningComputer scienceArtificial intelligencePhysicsSeismologyGeologyProgramming languageCondensed matter physicsActuatorIntegrated Energy Systems OptimizationBuilding Energy and Comfort OptimizationGeothermal Energy Systems and Applications