Temperature field reconstruction of heat source systems (TFR-HSS) with limited monitoring sensors occurred in thermal management plays an important role in real time health detection system of electronic equipment in engineering. However, prior methods with common interpolations usually cannot provide accurate reconstruction performance as required. In addition, there exists no public dataset for widely research of reconstruction methods to further boost the reconstruction performance and engineering applications. To overcome this problem, this work develops a machine learning modelling benchmark for TFR-HSS task. First, the TFR-HSS task is mathematically modelled from real-world engineering problem and four types of numerically modellings have been constructed to transform the problem into discrete mapping forms. Then, this work proposes a set of machine learning modelling methods, including the general machine learning methods and the deep learning methods, to advance the state-of-the-art methods over temperature field reconstruction. More importantly, this work develops a novel benchmark dataset, namely Temperature Field Reconstruction Dataset (TFRD), to evaluate these machine learning modelling methods for the TFR-HSS task. Finally, a performance analysis of typical methods is given on TFRD, which can be served as the baseline results on this benchmark.
翻译:在热管理中,热源系统(TFR-HSS)的热源系统(TFR-HSS)的温度场重建,其监测传感器有限。热管理中,热源系统(TFR-HSS)的重建在实时电子工程设备健康检测系统中发挥重要作用。然而,以前采用的共同内推方法通常无法提供所需的准确重建性能。此外,没有为广泛研究重建方法以进一步提升重建绩效和工程应用而建立公共数据集。为解决这一问题,这项工作为TFR-HSS的任务开发了一个机器学习模型基准。首先,TFR-HSS的任务是从真实的工程问题中以数学为模型,并建立了四类数字模型,将问题转换成离散的绘图形式。然后,这项工作提出了一套机器学习模型方法,包括一般机器学习方法和深层学习方法,以推进温度场重建方面的最新方法。更重要的是,这项工作开发了一个新的基准数据集,即温度-实地重建数据集(TFRRD),以评价TFR-HSS任务的这些机器学习模型方法。最后,对典型方法的绩效进行了分析,该基准可以作为基准结果。