In conventional machining processes based on the chip removal mechanism, the progressive wear of the tool determines a change of the geometric characteristics of the cutting edge. Tool wear is a complex phenomenon and related tool life depends on several factors, such as cutting parameters, lubrication, and tool-workpiece relative trajectories. Tool wear progression affects the quality of the machined parts, making the tool replacement necessary even before its breakage. Moreover, in industrial practice, tool replacement cannot depend on the subjectivity of the operator, thus, the definition of an optimized strategy for cutting tool wear monitoring before tool failure is mandatory. This work compares Random Forest and Neural Network models for predicting tool wear in drilling. For the development of predictive models, tool life tests were performed by drilling through holes on AISI 9840 steel parts, with a coated tungsten carbide drill of 8 mm of diameter and by using constant cutting parameters. Flank wear of the tool was monitored. A set of statistical features computed from the vibration signals, the acoustic emission signals, the power signals and the torque signals constitute the input of the algorithms. The classification accuracy was 88% and 91% for Neural Network and Random Forest models respectively. In order to correctly define the tool replacement policy during production, the developed Random Forest model has been implemented in an industry, through production management software, achieving promising results.

(2024). A New Architecture Paradigm for Tool Wear Prediction during AISI 9840 Drilling Operation . In PROCEDIA COMPUTER SCIENCE. Retrieved from https://hdl.handle.net/10446/271773

A New Architecture Paradigm for Tool Wear Prediction during AISI 9840 Drilling Operation

Cappellini, Cristian;
2024-01-01

Abstract

In conventional machining processes based on the chip removal mechanism, the progressive wear of the tool determines a change of the geometric characteristics of the cutting edge. Tool wear is a complex phenomenon and related tool life depends on several factors, such as cutting parameters, lubrication, and tool-workpiece relative trajectories. Tool wear progression affects the quality of the machined parts, making the tool replacement necessary even before its breakage. Moreover, in industrial practice, tool replacement cannot depend on the subjectivity of the operator, thus, the definition of an optimized strategy for cutting tool wear monitoring before tool failure is mandatory. This work compares Random Forest and Neural Network models for predicting tool wear in drilling. For the development of predictive models, tool life tests were performed by drilling through holes on AISI 9840 steel parts, with a coated tungsten carbide drill of 8 mm of diameter and by using constant cutting parameters. Flank wear of the tool was monitored. A set of statistical features computed from the vibration signals, the acoustic emission signals, the power signals and the torque signals constitute the input of the algorithms. The classification accuracy was 88% and 91% for Neural Network and Random Forest models respectively. In order to correctly define the tool replacement policy during production, the developed Random Forest model has been implemented in an industry, through production management software, achieving promising results.
2024
Inglese
Procedia Computer Science. 5th International Conference on Industry 4.0 and Smart Manufacturing (ISM 2023)
Longo, Francesco; Shen, Weiming; Padovano Antonio;
232
1617
1625
online
Netherlands
Amsterdam
Elsevier
ISM 2023: 5th International Conference on Industry 4.0 and Smart Manufacturing, Lisbon, Portugal, 22-24 November 2023
5th
Lisbon, Portugal
22-24 November 2023
internazionale
contributo
Settore ING-IND/16 - Tecnologie e Sistemi di Lavorazione
Drilling; Neural Networks; Random Forest; Tool wear monitoring
info:eu-repo/semantics/conferenceObject
6
Munaro, Roberto; Attanasio, Aldo; Abeni, Andrea; Cappellini, Cristian; Tavormina, Piervincenzo; Venturelli, Federico
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
open
Non definito
273
(2024). A New Architecture Paradigm for Tool Wear Prediction during AISI 9840 Drilling Operation . In PROCEDIA COMPUTER SCIENCE. Retrieved from https://hdl.handle.net/10446/271773
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/271773
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