Pregled bibliografske jedinice broj: 1080750
Fault Detection in Robotic Manipulators using Support Vector Machines
Fault Detection in Robotic Manipulators using Support Vector Machines // My First Conference Book of Abstracts
Rijeka, Hrvatska, 2020. str. 3-4 (predavanje, recenziran, sažetak, znanstveni)
CROSBI ID: 1080750 Za ispravke kontaktirajte CROSBI podršku putem web obrasca
Naslov
Fault Detection in Robotic Manipulators using
Support Vector Machines
(Fault Detection in Robotic Manipulators using
Support Vector Machines)
Autori
Sandi Baressi Šegota, Nikola Anđelić, Vedran Mrzljak, Zlatan Car
Vrsta, podvrsta i kategorija rada
Sažeci sa skupova, sažetak, znanstveni
Izvornik
My First Conference Book of Abstracts
/ - , 2020, 3-4
Skup
4th edition of annual conference for doctoral students of engineering and technology „MY FIRST CONFERENCE“
Mjesto i datum
Rijeka, Hrvatska, 24.09.2020
Vrsta sudjelovanja
Predavanje
Vrsta recenzije
Recenziran
Ključne riječi
Machine learning, fault detection, binary classification, industrial robotic manipulator, support vector machine
Sažetak
The detection of faults during the actions performed by robotic manipulators can be of great importance. A timely detection and appropriate stopping of robotic manipulator can prevent damage to the robotic manipulator itself, as well as surrounding equipment [1]. In the presented research the author uses a publicly available dataset to train a model of fault detection. The dataset consists of 463 datapoints – each containing 15 time series of measurements of directional forces (FX, FY and FZ) and torques (TX, TY and TZ) ; measured on the robot end effector [2]. Each of the measurement has one of fifteen different classes assigned to it. Out of these fifteen classes two represent normal operation, while thirteen represent a failure [3]. As the sort of the failure is not important in the control and stopping of robotic manipulator operation those classes are grouped in a class “0” – normal operation, and “1” – fault [4]. With these a binary classification model can be developed, with the goal of detecting a fault based on force and torque measurement. Machine learning (ML) models can have a fast classification performance [5], which is of great importance in preventing any damage caused and have previously been widely used in robotics. Support Vector Machines (SVM) are ML algorithms, which allow for classification by determining a separation between the instances in the feature space of the given problem, through the creation of support vectors [6]. The idea of support vectors is presenting the shortest possible distance between the hypersurface separating the classes and class instances [7]. Hyperparameters are values which define the properties of the machine learning algorithm, and have large influence on the algorithm performance, which is why the adjustment and testing of values is necessary [8]. The training is performed on a total of 120 hyperparameter combinations, with 10-fold K-fold cross validation being performed [9-11]. The quality of the solution is evaluated using Area Under Receiver Operating Curve (AUC) metric. The best solution achieved reaching mean AUC 0.95718±0.16233 (N=10) with hyperparameters {; ; 'C': 1.0, 'degree': 3, 'gamma': 'auto', 'kernel': 'poly'}; ; . Mean time of detection is 10.000389±1.031651 [µs] (N=100).
Izvorni jezik
Engleski
Znanstvena područja
Elektrotehnika, Računarstvo, Strojarstvo
POVEZANOST RADA
Projekti:
Ostalo-CEI - 305.6019-20 - Use of regressive artificial intelligence (AI) and machine learning (ML) methods in modelling of COVID-19 spread (COVIDAi) (Car, Zlatan, Ostalo - CEI Extraordinary Call for Proposals 2020) ( CroRIS)
--KK.01.2.2.03.0004 - Centar kompetencija za pametne gradove (CEKOM) (Car, Zlatan; Slavić, Nataša; Vilke, Siniša) ( CroRIS)
InoUstZnVO-CIII-HR-0108-10 - Concurrent Product and Technology Development - Teaching, Research and Implementation of Joint Programs Oriented in Production and Industrial Engineering (Car, Zlatan, InoUstZnVO - CEEPUS) ( CroRIS)
NadSve-Sveučilište u Rijeci-uniri-tehnic-18-275-1447 - Razvoj inteligentnog ekspertnog sustava za online diagnostiku raka mokračnog mjehura (Car, Zlatan, NadSve - UNIRI potpore) ( CroRIS)
--KK.01.1.1.01.009 - Napredne metode i tehnologije u znanosti o podatcima i kooperativnim sustavima (DATACROSS) (Šmuc, Tomislav; Lončarić, Sven; Petrović, Ivan; Jokić, Andrej; Palunko, Ivana) ( CroRIS)
CIII-HR-0108
KK.01.2.2.03.0004
305.6019-20
uniri-tehnic-18-275-1447
KK.01.1.1.01.0009 - Napredne metode i tehnologije u znanosti o podatcima i kooperativnim sustavima (EK )
Ustanove:
Tehnički fakultet, Rijeka