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General Regression Neural Networks for the Concurrent, Timely and Reliable Identification of Detector Malfunctions and/or Nuclear Reactor Deviations from Steady-State Operation

机译:通用回归神经网络可同时,及时,可靠地识别稳态运行中的探测器故障和/或核反应堆偏差

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The analysis and understanding of the neutron flux (NF) signals of nuclear reactors (NRs) is imperative for ensuring safe and optimal (expressed in terms of minimal fuel use for maximal energy production) on-line NR operation. The NF perturbations are of particular interest, as they provide detailed information concerning the instantaneous changes in NR operation/status. In this piece of research, general regression artificial neural networks (GRNNs) are proposed for concurrently identifying NR deviations from steady-state operation as well as neutron detector (ND) malfunctions in a timely, reliable and efficient manner. On the one hand, the use of (a) raw, minimalistic NF signals and (b) complementary signal encodings - derived from pertinent and limited in size ND configurations - of the problem space, renders the proposed approach timely/efficient, modular as well as flexible. On the other hand, the GRNN characteristics of (i) transparency of construction, (ii) low computational (time/space) complexity of training and testing, (iii) accuracy, consistency and good generalization in the identification of the cause(s) behind deviating-from-normal NR behaviour and (iv) efficient operation and partial only GRNN retraining following modification of the training set, support the use of the proposed methodology. It is envisaged that, by appropriately combining the responses derived from different GRNNs, both accuracy and sensitivity of deviation detection as well as of malfunction localization shall be further improved at minimal additional computational load.
机译:必须确保对核反应堆(NRs)的中子通量(NF)信号进行分析和理解,以确保安全,优化(以最小的燃料消耗量来实现最大的能源生产)在线NR运行。 NF扰动特别令人感兴趣,因为它们提供了有关NR操作/状态的瞬时变化的详细信息。在这项研究中,提出了通用回归人工神经网络(GRNN),用于以及时,可靠和有效的方式同时识别稳态运行中的NR偏差以及中子探测器(ND)故障。一方面,问题空间的(a)原始,简约的NF信号和(b)互补信号编码的使用(源自相关且大小受限制的ND配置)使问题解决方案变得及时/高效,模块化一样灵活。另一方面,GRNN具有以下特点:(i)施工透明,(ii)培训和测试的计算(时间/空间)复杂度低,(iii)查明原因的准确性,一致性和良好的概括性在偏离正常的NR行为之后,以及(iv)有效的操作以及修改训练集后仅进行部分GRNN重新训练,均支持所提出方法的使用。可以设想,通过适当地组合来自不同GRNN的响应,应以最小的附加计算负荷进一步提高偏差检测以及故障定位的准确性和灵敏性。

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