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Nuclear Power Plant Accident Diagnosis Algorithm Including Novelty Detection Function Using LSTM

机译:核电厂事故诊断算法包括使用LSTM的新型检测功能

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Diagnosis of the accident or transient at the nuclear power plants is performed under the judgment of operators based on the procedures. Although procedures given to operators, numerous and rapidly changing parameters are generated by measurements from a variety of indicators and alarms, thus, there can be difficulties or delays to interpret a situation. In order to deal with this problem, many approaches have suggested based on computerized algorithms or networks. Although those studies suggested methods to diagnose accidents, if an unknown (or untrained) accident is given, they cannot respond as they do not know about it. In this light, this study aims at developing an algorithm to diagnose the accidents including "don't know" response. Long short term memory recurrent neural network and the auto encoder are applied for implementing the algorithm including novelty detection function. The algorithm is validated with various examples regarding untrained cases to demonstrate its feasibility.
机译:在核电站的事故或瞬态的诊断是根据程序的判断进行的。虽然给予运营商的程序,但是通过各种指标和警报的测量产生了许多且迅速变化的参数,因此,解释情况可能存在困难或延迟。为了解决这个问题,基于计算机化算法或网络建议了许多方法。虽然这些研究建议诊断事故的方法,但如果给出了未知(或未训练)的事故,他们就无法响应,因为他们不知道它。在这种情况下,本研究旨在开发一种诊断包括“不知道”响应的事故的算法。长短期内存经常性神经网络和自动编码器应用于实现包括新颖性检测功能的算法。该算法验证了关于未经培训的情况的各种示例,以证明其可行性。

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