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Naslov:Smart AI-based system for turning tool condition monitoring
Avtorji:ID Brili, Nika (Avtor)
Datoteke:URL URL - Izvorni URL, za dostop obiščite https://itis.fis.unm.si/wp-content/uploads/2026/01/ITIS-2025-Proceedings_FINAL.pdf
 
.pdf PDF - Predstavitvena datoteka, prenos (12,76 MB)
MD5: EC7343CA10134BAE709B019667700F4A
 
Jezik:Angleški jezik
Tipologija:1.12 - Objavljeni povzetek znanstvenega prispevka na konferenci
Organizacija:Logo RUDOLFOVO - Rudolfovo – Znanstveno in tehnološko središče Novo mesto
Povzetek:The turning process is a widely used cutting operation in industry. Any optimization of this process can significantly improve product quality, streamline costs, or reduce unwanted events. With automatic monitoring of turning tools, we can reduce costs, increase efficiency, and decrease the number of undesirable events that occur during machining (scrap, tool breakage, etc.). In single-piece or small-batch production, tool wear is monitored by the machine operator; however, such wear assessment is left to subjective judgment and requires intervention in the process. The presented solution eliminates this problem with automated monitoring of the cutting tool’s condition. An IR camera was used for process monitoring, which also captures the thermographic state. The camera was properly protected and mounted right next to the turning tool, enabling close-up observation of the machining. During the experiment, constant cutting parameters were set for turning the workpiece (low-alloy steel designated 1.7225, i.e.,42CrMo4) without the use of coolant. Using turning inserts with varying levels of wear, a database of more than 6,000 images was created during the turning process. With a convolutional neural network (CNN), a model was developed to predict wear and damage to the cutting tool. Based on the captured thermographic image during turning, the model automatically determines the cutting tool’s condition (no wear, minor wear, severe wear).The achieved classification accuracy was 99.55%, confirming the suitability of the proposed method. Such a system enables immediate action in the event of tool wear or breakage, regardless of the operator’s knowledge and training.
Ključne besede:deep learning, tool condition monitoring, turning, tool wear
Status publikacije:Objavljeno
Verzija publikacije:Objavljena publikacija
Leto izida:2025
Št. strani:Str. [214]
PID:20.500.12556/DiRROS-27216 Novo okno
UDK:004.8:004.92:621.941
COBISS.SI-ID:265308163 Novo okno
Opomba:Nasl. z nasl. zaslona; Opis vira z dne 20. 1. 2026;
Datum objave v DiRROS:03.02.2026
Število ogledov:127
Število prenosov:96
Metapodatki:XML DC-XML DC-RDF
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Gradivo je del monografije

Naslov:16th International Conference on Information Technologies and Information Society : ITIS 2025
Uredniki:Maruša Gorišek, Tea Golob, Teja Štrempfel
Kraj izida:Novo mesto
Založnik:Faculty of information studies
Leto izida:2025
ISBN:978-961-96549-2-7
COBISS.SI-ID:263628291 Novo okno

Sekundarni jezik

Jezik:Slovenski jezik
Ključne besede:globoko učenje, orodje za nadziranje stanja, struženje, obraba orodja


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