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Multi-Sensor Data Fusion Using a Relevance Vector Machine Based on an Ant Colony for Gearbox Fault Detection

机译:基于蚁群的相关矢量机多传感器数据融合在变速箱故障检测中的应用

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摘要

Sensors play an important role in the modern manufacturing and industrial processes. Their reliability is vital to ensure reliable and accurate information for condition based maintenance. For the gearbox, the critical machine component in the rotating machinery, the vibration signals collected by sensors are usually noisy. At the same time, the fault detection results based on the vibration signals from a single sensor may be unreliable and unstable. To solve this problem, this paper proposes an intelligent multi-sensor data fusion method using the relevance vector machine (RVM) based on an ant colony optimization algorithm (ACO-RVM) for gearboxes’ fault detection. RVM is a sparse probability model based on support vector machine (SVM). RVM not only has higher detection accuracy, but also better real-time accuracy compared with SVM. The ACO algorithm is used to determine kernel parameters of RVM. Moreover, the ensemble empirical mode decomposition (EEMD) is applied to preprocess the raw vibration signals to eliminate the influence caused by noise and other unrelated signals. The distance evaluation technique (DET) is employed to select dominant features as input of the ACO-RVM, so that the redundancy and inference in a large amount of features can be removed. Two gearboxes are used to demonstrate the performance of the proposed method. The experimental results show that the ACO-RVM has higher fault detection accuracy than the RVM with normal the cross-validation (CV).
机译:传感器在现代制造和工业过程中起着重要作用。它们的可靠性对于确保基于状态的维护的可靠和准确的信息至关重要。对于变速箱(旋转机械中的关键机械部件)而言,传感器收集的振动信号通常会产生噪声。同时,基于来自单个传感器的振动信号的故障检测结果可能不可靠且不稳定。为解决这一问题,本文提出了一种基于蚁群优化算法的相关矢量机(RVM),用于齿轮箱故障检测的智能多传感器数据融合方法。 RVM是基于支持向量机(SVM)的稀疏概率模型。与SVM相比,RVM不仅具有更高的检测精度,而且具有更好的实时精度。 ACO算法用于确定RVM的内核参数。此外,采用集成经验模式分解(EEMD)对原始振动信号进行预处理,以消除由噪声和其他无关信号引起的影响。距离评估技术(DET)用于选择主要特征作为ACO-RVM的输入,因此可以消除大量特征中的冗余和推断。使用两个齿轮箱来演示所提出方法的性能。实验结果表明,与正常交叉验证(CV)的RVM相比,ACO-RVM具有更高的故障检测精度。

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