Journal
TECHNOLOGIES
Volume 9, Issue 1, Pages -Publisher
MDPI
DOI: 10.3390/technologies9010018
Keywords
hybrid modelling; digital twins; physics-based model; HVAC; transportation engineering; simulations
Categories
Funding
- Basque Government, through ELKARTEK funding grant [KK-2020/00049]
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The paper introduces a physics-based model combined with sensor data to enhance the reliability in detecting fault modes, providing more accurate simulation results, and improving maintenance strategies for the HVAC system using hybrid modeling techniques.
Hybrid models combine physics-based models and data-driven models. This combination is a useful technique to detect fault and predict the current degradation of equipment. This paper proposes a physics-based model, which will be part of a hybrid model, for a heating, ventilation, and air conditioning system installed in the passenger vehicle of a train. The physics-based model is divided into four main parts: heating subsystems, cooling subsystems, ventilation subsystems, and cabin thermal networking subsystems. These subsystems are developed when considering the sensors that are located in the real system, so the model can be linked via the acquired sensor data and virtual sensor data to improve the detectability of failure modes. Thus, the physics-based model can be synchronized with the real system to provide better simulation results. The paper also considers diagnostics and prognostics performance. First, it looks at the current situation of the maintenance strategy for the heating, ventilation, air conditioning system, and the number of failure modes that the maintenance team can detect. Second, it determines the expected improvement using hybrid modelling to maintain the system. This improvement is based on the capabilities of detecting new failure modes. The paper concludes by suggesting the future capabilities of hybrid models.
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