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Main Authors: Garrido, Julio, Vales, Javier, Silva-Muñiz, Diego, Riveiro, Enrique, López-Matencio, Pablo, Rivera-Andrade, Josué
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.07714
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author Garrido, Julio
Vales, Javier
Silva-Muñiz, Diego
Riveiro, Enrique
López-Matencio, Pablo
Rivera-Andrade, Josué
author_facet Garrido, Julio
Vales, Javier
Silva-Muñiz, Diego
Riveiro, Enrique
López-Matencio, Pablo
Rivera-Andrade, Josué
contents Cable-Driven Parallel Robots (CDPRs) are increasingly used for load manipulation tasks involving predefined toolpaths with intermediate stops. At each stop, where the platform maintains a fixed pose and the motors keep the cables under tension, the system must evaluate whether it is safe to proceed by detecting anomalies that could compromise performance (e.g., wind gusts or cable impacts). This paper investigates whether anomalies can be detected using only motor torque data, without additional sensors. It introduces an adaptive, unsupervised outlier detection algorithm based on Gaussian Mixture Models (GMMs) to identify anomalies from torque signals. The method starts with a brief calibration period, just a few seconds, during which a GMM is fit on known anomaly-free data. Real-time torque measurements are then evaluated using Mahalanobis distance from the GMM, with statistically derived thresholds triggering anomaly flags. Model parameters are periodically updated using the latest segments identified as anomaly-free to adapt to changing conditions. Validation includes 14 long-duration test sessions simulating varied wind intensities. The proposed method achieves a 100% true positive rate and 95.4% average true negative rate, with 1-second detection latency. Comparative evaluation against power threshold and non-adaptive GMM methods indicates higher robustness to drift and environmental variation.
format Preprint
id arxiv_https___arxiv_org_abs_2507_07714
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adaptive Gaussian Mixture Models-based Anomaly Detection for under-constrained Cable-Driven Parallel Robots
Garrido, Julio
Vales, Javier
Silva-Muñiz, Diego
Riveiro, Enrique
López-Matencio, Pablo
Rivera-Andrade, Josué
Robotics
Artificial Intelligence
Machine Learning
Cable-Driven Parallel Robots (CDPRs) are increasingly used for load manipulation tasks involving predefined toolpaths with intermediate stops. At each stop, where the platform maintains a fixed pose and the motors keep the cables under tension, the system must evaluate whether it is safe to proceed by detecting anomalies that could compromise performance (e.g., wind gusts or cable impacts). This paper investigates whether anomalies can be detected using only motor torque data, without additional sensors. It introduces an adaptive, unsupervised outlier detection algorithm based on Gaussian Mixture Models (GMMs) to identify anomalies from torque signals. The method starts with a brief calibration period, just a few seconds, during which a GMM is fit on known anomaly-free data. Real-time torque measurements are then evaluated using Mahalanobis distance from the GMM, with statistically derived thresholds triggering anomaly flags. Model parameters are periodically updated using the latest segments identified as anomaly-free to adapt to changing conditions. Validation includes 14 long-duration test sessions simulating varied wind intensities. The proposed method achieves a 100% true positive rate and 95.4% average true negative rate, with 1-second detection latency. Comparative evaluation against power threshold and non-adaptive GMM methods indicates higher robustness to drift and environmental variation.
title Adaptive Gaussian Mixture Models-based Anomaly Detection for under-constrained Cable-Driven Parallel Robots
topic Robotics
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2507.07714