TFRD: A Benchmark Dataset for Research on Temperature Field
Reconstruction of Heat-Source Systems
- URL: http://arxiv.org/abs/2108.08298v1
- Date: Tue, 17 Aug 2021 15:32:58 GMT
- Title: TFRD: A Benchmark Dataset for Research on Temperature Field
Reconstruction of Heat-Source Systems
- Authors: Xiaoqian Chen, Zhiqiang Gong, Xiaoyu Zhao, Wen Yao
- Abstract summary: Temperature field reconstruction of heat source systems (TFR-HSS) performs an essential role in heat management.
There exists no public dataset for widely research of reconstruction methods.
This work construct a specific dataset, namely TFRD, for TFR-HSS task with commonly used methods.
- Score: 10.609815608017065
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Heat management plays an important role in engineering. Temperature field
reconstruction of heat source systems (TFR-HSS) with limited monitoring
tensors, performs an essential role in heat management. However, prior methods
with common interpolations usually cannot provide accurate reconstruction. In
addition, there exists no public dataset for widely research of reconstruction
methods to further boost the field reconstruction in engineering. To overcome
this problem, this work construct a specific dataset, namely TFRD, for TFR-HSS
task with commonly used methods, including the interpolation methods and the
surrogate model based methods, as baselines to advance the research over
temperature field reconstruction. First, the TFR-HSS task is mathematically
modelled from real-world engineering problem and three types of numerically
modellings have been constructed to transform the problem into discrete mapping
forms. Besides, this work selects four typical reconstruction problem with
different heat source information and boundary conditions and generate the
standard samples as training and testing samples for further research. Finally,
a comprehensive review of the prior methods for TFR-HSS task as well as recent
widely used deep learning methods is given and we provide a performance
analysis of typical methods on TFRD, which can be served as the baseline
results on this benchmark.
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