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Smart Sensing of the RPV Water Level in NPP Severe Accidents Using a GMDH Algorithm

机译:使用GMDH算法对NPP严重事故中RPV水位的智能感知

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The reactor pressure vessel (RPV) water level is critical information for confirming the condition of core cooling in severe accident situations. However, the measured RPV water level signal cannot be trusted during severe accidents due to the unknown integrity of the sensor. In this study, the RPV water level was predicted under severe accident conditions using a group method of data handling (GMDH) algorithm. The prediction model was developed using data obtained from numerical simulations of the optimized power reactor 1000 (OPR1000) using MAAP4 code and validated using independent test data. The developed GMDH model performed very well. In addition, to investigate the effect of uncertainties in the input variables, the model was tested using input data with an artificially added random error. It was accurate enough to predict the RPV water level in severe accident situations when the RPV water level sensor cannot be trusted. Therefore, the developed GMDH model will be helpful for providing effective information for operators in severe accident situations.
机译:反应堆压力容器(RPV)水位是确定严重事故情况下堆芯冷却状况的关键信息。但是,由于传感器的完整性未知,在严重事故期间无法相信测得的RPV水位信号。在这项研究中,使用一组数据处理(GMDH)算法预测了严重事故情况下的RPV水位。预测模型是使用MAAP4代码从优化的电抗器1000(OPR1000)的数值模拟获得的数据开发的,并使用独立的测试数据进行了验证。所开发的GMDH模型表现良好。此外,为了调查输入变量不确定性的影响,使用带有人工添加的随机误差的输入数据对模型进行了测试。当RPV水位传感器不可靠时,可以非常准确地预测严重事故情况下的RPV水位。因此,开发的GMDH模型将有助于为严重事故情况下的操作员提供有效的信息。

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