首页> 外文会议>ASME summer heat transfer conference;HT2009 >APPLICATION OF DATA ANALYTICS TO HEAT TRANSFER PHENOMENA FOR OPTIMAL DESIGN AND OPERATION OF COMPLEX SYSTEMS
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APPLICATION OF DATA ANALYTICS TO HEAT TRANSFER PHENOMENA FOR OPTIMAL DESIGN AND OPERATION OF COMPLEX SYSTEMS

机译:数据分析在传热现象中的应用-复杂系统的优化设计与运行

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Heat transfer phenomena in complex physical systems like multiphase environments, multidimensional geometries can be difficult to capture in terms of correlations, analytical functions or numerical models using conventional techniques. Such systems are designed based on approximations, thumb-rules or semi-empirical correlations between parameters based on averaged values and are operated likewise using another set of rules derived from bulk thermodynamic performance parameters. With the development of nano-scale sensors and advanced data aggregation techniques, there is a need for analytical techniques that can discover the complex interrelationships between the thermodynamic parameters of the process, geometry constraints and the governing outcomes of the process. Such techniques can leverage the possibility of deployment of thousands of sensors to extract the key relationships that drive the transport phenomena for advanced development of process control tools and methodologies. Heat and mass transfer equipment design and operation can benefit from knowledge discovered through analytics applied on thermo-physical data obtained from real time processes.We present illustrative use cases of application of data analytics and knowledge discovery techniques to a richly instrumented data center where computer room air conditioning (CRAC) units provide cooling for IT equipment arranged in rows of racks. Sensors located at each rack provide temperature measurements which are analyzed in real-time and also archived. Rack temperatures, together with operating parameters of CRAC units such as supply air temperature(SAT), and variable speed drive (VFD) settings, are analyzed together to derive design insights and detect anomalies.
机译:在复杂的物理系统(如多相环境,多维几何体)中,传热现象可能难以使用常规技术从相关性,分析函数或数值模型方面捕获。这样的系统是基于平均值基于参数之间的近似值,经验法则或半经验相关性来设计的,并且同样使用源自整体热力学性能参数的另一组规则进行操作。随着纳米级传感器和先进的数据聚合技术的发展,需要能够发现过程的热力学参数,几何约束和过程的控制结果之间的复杂相互关系的分析技术。此类技术可以利用部署数千个传感器的可能性来提取驱动运输现象的关键关系,从而进一步开发过程控制工具和方法。传热和传质设备的设计和操作可以受益于通过对从实时过程中获得的热物理数据进行分析而发现的知识。 我们介绍了将数据分析和知识发现技术应用于功能丰富的数据中心的说明性用例,在该中心中,计算机机房空调(CRAC)单元为排成排的机架中的IT设备提供冷却。每个机架上的传感器都提供温度测量值,这些温度值会实时分析并存档。机架温度以及CRAC单元的运行参数,例如送风温度 (SAT)和变速驱动器(VFD)设置一起进行分析,以得出设计见解并检测异常。

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