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Prediction Method of Equipment Degradation State Based on Improved RVM

机译:基于改进RVM的装备退化状态预测方法

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In order to improve the prediction accuracy of the relevance vector machine model, an improved method for equipment condition prediction is proposed. First of all, an improved kernel function of variance Gauss kernel (VGKF) is constructed to improve the global performance and generalization ability of the kernel function. Then, by using the method of selecting the number of adjacent points in the chaotic sequence local prediction method, the H-Q criterion was used to optimize the embedding dimension of the training space to avoid the blindness of subjective selection. Through the prediction example of terminal guidance radar equipment test parameters, the effectiveness and superiority of the improved RVM were verified.
机译:为了提高关联向量机模型的预测精度,提出了一种改进的设备状态预测方法。首先,构建改进的方差高斯核(VGKF)核函数,以提高核函数的全局性能和泛化能力。然后,通过使用混沌序列局部预测方法中选择相邻点的数量的方法,使用H-Q准则来优化训练空间的嵌入维度,以避免主观选择的盲目性。通过终端制导雷达设备测试参数的预测实例,验证了改进后的RVM的有效性和优越性。

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