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Feature Extraction and Quantitative Inspection for Broken Wires in Wire Ropes Based B-Wavelet and WNN

机译:基于W线绳索的断线带状电线特征提取和定量检查

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A data compression (at a ration of 1:4) method based on linear B-wavelet decomposition is proposed for wire rope signals without professional coding. This method saves the natural information of signals and reduces the high frequency noise of signals. WNN has been selected for the quantitative inspection of broken wires. WNN models and weights study algorithms suitable for quantitative inspection of broken wires are discussed as well. The input layer of WNN is the inner product of feature vector and wavelet using wavelet nonlinearity. The experiment results show that the WNN model displays a much higher level of generalization, shorter compution time and accurate inspection in comparison with BP-Network.
机译:基于线性B小波分解的数据压缩(以1:4)的方法,用于无需专业编码的钢丝绳信号。该方法节省了信号的自然信息并降低了信号的高频噪声。 WNN已被选中用于阻挡线路的定量检查。 WNN模型和适用于阻挡线的定量检查的重量研究算法是讨论的。 Wnn的输入层是使用小波非线性的特征向量和小波的内部产物。实验结果表明,与BP网络相比,WNN模型显示更高水平的泛化,缩短稀释时间和准确检查。

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