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Big Data Framework with Machine Learning for DD Applications - 19108

机译:D&D应用机器学习大数据框架 - 19108

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The nuclear industry is experiencing a steady increase in maintenance costs even though plants are maintained under high levels of safety, capability and reliability. Nuclear power plants are expected to run every unit at maximum capacity at all times, efficiently utilizing assets with minimal downtime. Surveillance and maintenance of nuclear decommissioning infrastructure provides lot challenges with respect to maintenance or decommissioning of the buildings. There is a need for a framework to analyze the huge amount of data generated by the sensors on the nuclear reactor components as well as structures, to monitor the conditions of these building over a period of time. Emerging technologies such as big data analytics have become a requirement in the nuclear industry to improve structural health monitoring and diagnostics. FIU will make use of existing mature technologies in the areas of imaging, robotics, big data, and machine learning/deep learning to assess the structural integrity of aging facilities at DOE sites. As these facilities await decommissioning, there is a need to understand the structural health of these structures. Many of these facilities were built over 50 years ago and in some cases these facilities have gone beyond the operational life expectancy. In other cases, the facilities have been placed in a state of "cold and dark" and they are sitting unused, awaiting decommissioning. Finally, some older facilities are one-of-a-kind operational/production facilities supporting critical DOE missions and cannot be shut down. In any of these scenarios, the structural integrity of these facilities may be compromised, so it is imperative that adequate inspections and data collection/analysis be performed on a continuous and ongoing basis. The primary goals of the research include collecting various formats of data such as structured, unstructured and streaming data from the various sensors deployed in buildings, collect videos/pictures from various imaging sources, ingest them using a Hadoop distributed file system and process the data using Spark to perform batch processing and real time analytics. Research and development on various machine learning/deep learning algorithms will also be performed to analyze the heterogeneous data collected from nuclear decommission infrastructure. FIU will design the big data framework to ingest, store and process huge amounts of heterogeneous data collected from many sources and optimize the algorithms to provide insights into the data and predict anomalies observed when compared against baseline conditions. Various modules of this framework will include heterogeneous data sources, message broker, Hadoop distributed file system, Spark for stream and batch processing, machine learning/deep learning, Cassandra - persistent data store and visualization.
机译:即使在高水平的安全性,能力和可靠性维持植物,核工业也经历了维护成本的稳步增加。预计核电站将在最大容量上运行每个单位,有效利用具有最低停机时间的资产。核退役基础设施的监测和维护在维护或退役方面提供了诸多挑战。需要一种框架来分析核反应堆部件和结构上的传感器产生的大量数据,以在一段时间内监测这些建筑物的条件。大数据分析等新兴技术已成为核工业的要求,以改善结构健康监测和诊断。 FIU将在成像,机器人,大数据和机器学习/深度学习领域利用现有的成熟技术,以评估DOE站点的老化设施的结构完整性。随着这些设施等待退役,需要了解这些结构的结构性健康。这些设施中的许多设施是在50年前建造的,在某些情况下,这些设施超出了运营预期寿命。在其他情况下,该设施处于“冷酷和黑暗”状态,它们坐在未使用,等待退役。最后,一些较旧的设施是支持关键的DOE任务的独一无二的操作/生产设施,不能关闭。在任何这些场景中,这些设施的结构完整性可能会受到损害,因此必须在连续和持续的基础上进行足够的检查和数据收集/分析。该研究的主要目标包括收集各种格式的数据,例如从建筑物部署的各种传感器,从各种成像源收集视频/图片,使用Hadoop分布式文件系统进行摄取并使用火花执行批处理和实时分析。还将进行各种机器学习/深度学习算法的研究和开发,以分析从核离职基础设施收集的异构数据。 FIU将设计大数据框架来摄取,存储和处理从许多来源收集的大量异构数据,并优化算法,以提供对数据的见解,并预测与基线条件相比观察到的异常。此框架的各种模块将包括异构数据源,消息代理,Hadoop分布式文件系统,Spark for Stream和Batch处理,机器学习/深度学习,Cassandra - 持久数据存储和可视化。

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