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Identification of failed (fissured) fuel rods in nuclear reactors using neural processing and principal component analysis

机译:使用神经处理和主成分分析识别核反应堆中的失败(裂解)燃料棒

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A possible way to detect failed (fissured) rods, within a nuclear feel assembly, is sounding the rods with ultrasonic pulses and examining the received echo waveforms. The detection is performed by a multilayer feedforward neural classifier, trained according to the backpropagation algorithm. The classifier achieved a detection efficiency of 93% (for failed rods) with 3% as false-alarm probability. Data compaction through principal component analysis reduced the network's input vector to 1.5% of its original length, with no efficiency loss.
机译:在核感觉组件内检测失败(裂纹)杆的可能方法正在具有超声波脉冲的杆,并检查所接收的回波波形。该检测由多层前馈神经分类器执行,根据BackProjagation算法训练。分类器实现了93%(对于故障杆)的检测效率,以3%为假警报概率。通过主成分分析的数据压缩将网络的输入向量减少到原始长度的1.5%,没有效率损失。

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