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首页> 外文期刊>Nuclear engineering and technology >PREDICTION OF THE REACTOR VESSEL WATER LEVEL USING FUZZY NEURAL NETWORKS IN SEVERE ACCIDENT CIRCUMSTANCES OF NPPS
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PREDICTION OF THE REACTOR VESSEL WATER LEVEL USING FUZZY NEURAL NETWORKS IN SEVERE ACCIDENT CIRCUMSTANCES OF NPPS

机译:基于NPPS严重事故情况的模糊神经网络预测反应器水位。

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摘要

Safety-related parameters are very important for confirming the status of a nuclear power plant. In particular, the reactor vessel water level has a direct impact on the safety fortress by confirming reactor core cooling. In this study, the reactor vessel water level under the condition of a severe accident, where the water level could not be measured, was predicted using a fuzzy neural network (FNN). The prediction model was developed using training data, and validated using independent test data. The data was generated from simulations of the optimized power reactor 1000 (OPR1000) using MAAP4 code. The informative data for training the FNN model was selected using the subtractive clustering method. The prediction performance of the reactor vessel water level was quite satisfactory, but a few large errors were occasionally observed. To check the effect of instrument errors, the prediction model was verified using data containing artificially added errors. The developed FNN model was sufficiently accurate to be used to predict the reactor vessel water level in severe accident situations where the integrity of the reactor vessel water level sensor is compromised. Furthermore, if the developed FNN model can be optimized using a variety of data, it should be possible to predict the reactor vessel water level precisely.
机译:与安全相关的参数对于确认核电厂的状态非常重要。特别是,通过确认反应堆堆芯冷却,反应堆容器的水位将直接影响安全堡垒。在这项研究中,使用模糊神经网络(FNN)预测了无法测量水位的严重事故情况下的反应堆容器水位。该预测模型是使用训练数据开发的,并使用独立的测试数据进行了验证。数据是使用MAAP4代码从优化的动力堆1000(OPR1000)的仿真中生成的。使用减法聚类方法选择了用于训练FNN模型的信息性数据。反应堆容器水位的预测性能令人满意,但是偶尔会观察到一些大的误差。为了检查仪器错误的影响,使用包含人为添加的错误的数据验证了预测模型。所开发的FNN模型足够准确,可用于预测严重事故情况下的反应堆容器水位,在这些情况下反应堆容器水位传感器的完整性受到损害。此外,如果可以使用各种数据来优化已开发的FNN模型,则应该有可能精确地预测反应堆容器的水位。

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