Litcius/Paper detail

Digital twin enabled fault detection and diagnosis process for building HVAC systems

Xiang Xie, Jorge Merino, Nicola Moretti, Pieter Pauwels, Janet Chang, Ajith Kumar Parlikad

2022Automation in Construction128 citationsDOIOpen Access PDF

Abstract

The emerging concept of digital twins outlines the pathway towards intelligent buildings. Although abundant building data carries an overwhelming amount of information, if not well exploited, the redundant and irrelevant data dimensions result in the overfitting problem and heavy computational load. Taking the fault detection and diagnosis process for building HVAC systems as the case, this paper adopts a symbolic artificial intelligence technique to identify informative sensory dimensions for building-specific faults by exploring the symbolic representation of labelled time-series. To preserve this ad-hoc temporal knowledge in the digital twin ecosystem, machine-readable fault tags are defined to label corresponding sensor entities. A digital twin data platform is developed to annotate the real-time data with fault tags and produce filtered low-latency data streams associated with a specified tag to automate this process. This paper describes a digital twin-based approach to automatically identify and pick up informative data to support dynamic asset management.

Topics & Concepts

Computer scienceOverfittingProcess (computing)Fault detection and isolationHVACRepresentation (politics)Fault (geology)Data miningArtificial intelligenceMachine learningEngineeringArtificial neural networkMechanical engineeringSeismologyGeologyLawAir conditioningActuatorOperating systemPoliticsPolitical scienceDigital Transformation in Industry3D Surveying and Cultural HeritageBIM and Construction Integration