Abstract Prediction of the moderator temperature field in a heavy water reactor based on a cellular neural network
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Prediction of the moderator temperature field in a heavy water reactor based on a cellular neural network

机译:基于细胞神经网络的重水反应堆慢化剂温度场预测

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Abstract Reactors with heavy water coolants and moderators have been used extensively in today's power industry. Monitoring of the moderator condition plays an important role in ensuring normal operation of a power plant. A cellular neural network, the architecture of which has been adapted for hardware implementation, is proposed for use in a system for prediction of the heavy water moderator temperature. A reactor model composed in accordance with the CANDU Darlington heavy water reactor design was used to form the training sample collection and to control correct operation of the neural network structure. The sample components for the adjustment and configuration of the network topology include key parameters that characterize the energy generation process in the core. The paper considers the feasibility of the temperature prediction only for the calandria's central cross-section. To solve this problem, the cellular neural network architecture has been designed, and major parts of the digital computational element and methods for their implementation based on an FPLD have also been developed. The method is described for organizing an optical coupling between individual neural modules within the network, which enables not only the restructuring of the topology in the training process, but also the assignment of priorities for the propagation of the information signals of neurons depending on the activity in a situation analysis at the neural network structure inlet. Asynchronous activation of cells was used based on an oscillating fractal network, the basis for which was a modified ring oscillator. The efficiency of training the proposed architecture using stochastic diffusion search algorithms is evaluated. A comparative analysis of the model behavior and the results of the neural network operation have shown that the use of the neural network approach is effective in safety systems of power plants.
机译: 摘要 带有重水冷却剂和慢化剂的反应器已在当今的电力行业中广泛使用。主持人状况的监视在确保发电厂的正常运行中起着重要作用。提出了一种蜂窝神经网络,该网络的体系结构已适应于硬件实现,建议用于预测重水慢化剂温度的系统中。根据CANDU Darlington重水反应堆设计组成的反应堆模型用于形成训练样本集合并控制神经网络结构的正确运行。用于调整和配置网络拓扑的示例组件包括表征核心能量生成过程的关键参数。本文考虑了仅针对加热排的中央横截面进行温度预测的可行性。为了解决该问题,已经设计了细胞神经网络体系结构,并且已经开发了数字计算元件的主要部分以及基于FPLD的数字计算元素的实现方法。描述了用于组织网络内各个神经模块之间的光耦合的方法,该方法不仅可以在训练过程中重构拓扑,而且还可以根据活动分配优先级以分配神经元信息信号的传播在神经网络结构入口处进行情况分析。基于振荡的分形网络使用细胞的异步激活,其基础是改进的环形振荡器。评价了使用随机扩散搜索算法训练提出的体系结构的效率。对模型行为和神经网络操作结果的比较分析表明,在电厂安全系统中使用神经网络方法是有效的。

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