基于K-均值聚类和多层感知器的机械臂模式识别模型

OPSI Pub Date : 2023-06-19 DOI:10.31315/opsi.v16i1.9004
Anas Saifurrahman
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引用次数: 0

摘要

工业机器的预测性维护是工业4.0中具有挑战性的应用之一。本文提出了一种综合的机器人手臂运动模式识别方法(SCARA),以检测由机器人手臂异常运动决定的机器人机械老化。使用的数据集是从A点到B点再回到A点的两个机械臂运动。加速度计数据用于测量SCARA动作的信号,主要集中在非线性运动上。将k均值和多层感知器相结合,对机械臂的运动模式进行识别。该方法首先从时域统计值参数中提取有价值的特征作为两个数据集的特征。采用K-means聚类技术对训练数据集进行标记。在此阶段,使用肘曲线来确定数据集中的簇数,即2个簇。此外,该假设用于确定哪个集群被标记为正常和异常运动。因此,提出了一种多层感知器方法来预测测试数据集。所提出的多层感知器模型的精度为94.14%,而其交叉验证的精度为96.12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model for Robot Arm Pattern Identification using K-Means Clustering and Multi-Layer Perceptron
Predictive maintenance of industrial machines is one of the challenging applications in Industry 4.0. This paper presents a comprehensive methodology to identify robot arm (SCARA) movement patterns to detect the mechanical aging of the robot, which is determined by the abnormal movement of the robot arm. The dataset used is two robot arm movements that go from point A to B and then back to point A. Accelerometer data is used to measure the signal of SCARA actions, mainly focus on the non-linear movement. The identification of the movement pattern of the robot arm is made by combining k-means and multilayer perceptron. The proposed approach first extracts valuable features as characteristics of the two datasets from the time domain statistical value parameters. K-means clustering technique is initiated to label the training dataset. In this phase, the elbow curve is used to determine the number of clusters in the dataset, which is 2 clusters. Moreover, the assumption is used to determine which cluster is labeled as a normal and abnormal movement.  Hence, a multilayer perceptron approach is proposed to predict the testing dataset. The proposed multilayer perceptron model yields an accuracy of 94.14%, whereas its cross-validation yields an accuracy of 96.12%.
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