首页> 外文会议>International topical meeting on nuclear plant instrumentation, control, and human-machine interface technologies >APPLICATIONS OF DATA MINING TECHNOLOGY TO ENHANCE OM: AUTOMATIC PLANNING OF ELECTRICAL ISOLATION WITH DEEP LEARNING
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APPLICATIONS OF DATA MINING TECHNOLOGY TO ENHANCE OM: AUTOMATIC PLANNING OF ELECTRICAL ISOLATION WITH DEEP LEARNING

机译:数据挖掘技术在提高运维水平中的应用:深度学习的电气隔离自动规划

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Data mining technology is now readily available, thanks to high powered, low cost computing resource and useful coding tools. We study several applications of data mining to enhance operation and maintenance (O&M). such as abnormality prediction, efficiency diagnosis, document traceability. image recognition, etc. In field support, we try automatic planning of electrical isolation with deep learning. Currently, a skilled engineer plans electrical isolation procedure with hundreds of the circuit diagrams and the related documents, taking man-hours. If this task becomes automatic, it is very efficient. The automatic planning has two issues. One is much calculation time of electrical circuit simulator, searching billions of electrical conducting paths. The other is interpretation of human fuzzy information, such as ease of work. Deep learning is helpful to resolve them. We performed a model case study of the electrical isolation. We applied a deep neural network (DNN) for dropping in the calculation time. We trained the circuit diagrams and the responses of the circuit simulator to the DNN. constructing an efficient path search algorithm in the DNN. The calculation time of the DNN was shorter by a factor of 32 for the model case, compared with that of the electrical circuit simulator. We applied a deep Q-network (DQN) for the interpretation of fuzzy information. The DQN optimized isolation procedure from the viewpoint of the work load with the equipment layout, related doses, and values of wet bulb globe temperature (WBGT) to prevent heatstroke.
机译:数据挖掘技术由于功能强大,成本低廉的计算资源和有用的编码工具而变得易于使用。我们研究了数据挖掘在增强运维(O&M)方面的几种应用。例如异常预测,效率诊断,文档可追溯性。图像识别等。在现场支持中,我们尝试通过深度学习自动计划电气隔离。当前,熟练的工程师计划用数百个电路图和数百个电路图及相关文档来进行电气隔离程序。如果此任务变为自动,则效率很高。自动计划有两个问题。一种是电路模拟器的大量计算时间,要搜索数十亿条导电路径。另一个是对人为模糊信息的解释,例如工作的便利性。深度学习有助于解决这些问题。我们进行了电气隔离的模型案例研究。我们应用了深度神经网络(DNN)来减少计算时间。我们训练了电路图以及电路仿真器对DNN的响应。在DNN中构建有效的路径搜索算法。与电路仿真器相比,在模型情况下,DNN的计算时间缩短了32倍。我们应用了深度Q网络(DQN)来解释模糊信息。 DQN从工作负荷,设备布局,相关剂量和湿球温度(WBGT)的角度出发,优化了隔离程序,以防止中暑。

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