Low-cost and Small-sample Fault Diagnosis for 3D Printers Based on Echo State Networks

Kun He, Lianghua Zeng, Qin Shui, Jianyu Long, Chuan Li, Diego Cabrera
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引用次数: 3

Abstract

With the 3D printing rapidly expanding into various fields, 3D printers, as the equipment, should adopt a low-cost and small-sample fault diagnosis methods. A fault diagnosis method based on echo state networks (ESN) for 3D printers is proposed in this paper. A low-cost attitude sensor installed on the 3D printer is employed to collect raw fault data. Subsequently, feature extraction is carried out on the raw fault data. Using these features, ESN, as a shallow learning network, is modeled to diagnose faults of 3D printers. Experimental results show that the fault diagnosis method based on ESN still effective for 3D printers in low-cost and small-sample, which can make the fault recognition accuracy of 3D printer reach to 97.26%. Furthermore, contrast results indicated that the fault diagnosis accuracy of ESN is higher and most stable when compare with support vector machine (SVM), locality preserving projection support vector machine (LPPSVM) and principal component analysis support vector machine (PCASVM).
基于回声状态网络的3D打印机低成本小样本故障诊断
随着3D打印在各个领域的迅速扩展,3D打印机作为设备,应该采用低成本、小样本的故障诊断方法。提出了一种基于回声状态网络(ESN)的3D打印机故障诊断方法。采用安装在3D打印机上的低成本姿态传感器采集原始故障数据。随后,对原始故障数据进行特征提取。利用这些特征,将回声状态网络作为一种浅学习网络进行建模,用于3D打印机的故障诊断。实验结果表明,基于回声状态网络的故障诊断方法对于低成本、小样本的3D打印机仍然有效,可以使3D打印机的故障识别准确率达到97.26%。对比结果表明,回声状态网络的故障诊断准确率高于支持向量机(SVM)、局部保持投影支持向量机(LPPSVM)和主成分分析支持向量机(PCASVM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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