Logo

Mondragon Innovation | Humanity at work – Detection of Cutting Tool Breakage in Machining from Vibration Signals with Artificial Intelligence Techniques

Mondragon Innovation | Humanity at work 

Sector: Industry

Business Case

Milling cutter tooth breakage in long unattended machining processes can affect the quality of the resulting part and not be detected until it is too late to avoid scrapping it. Furthermore, depending on its severity it can even affect the machine condition.

Objectives

Detect cutting tool breakage from vibration signals during the milling process.

Use case

Focused on two phases: (i) An analysis based on the vibration signal to obtain the variables that can best identify the breakage; and (ii) the implementation of a binary machine learning model.

Infrastructure

On Premise Edge

Technology

Machine learning and deep learning

Data

A vibration dataset from laboratory failure tests, from which the relevant harmonics for failure detection are extracted.

Resources

The technical work was led by a team of two people from IDEKO and in terms of infrastructure, the data collection work was carried out in the laboratory and the field tests were carried out using the DANOBATBOX on a real production machine to which DANOBAT has access.

Difficulties and learning

The large number of different cutter configurations (dimensions – number of teeth) makes it complicated to cover the entire tool catalogue. Laboratory tests were extensive enough to cover a large number of tools with different characteristics.

KPIs (business impact and metrics of the model)

Defect detection / labelled defects

Funding

Private

Collaborators, Partners

IDEKO’s data analysis area was involved in the technological leadership of the use case.

Scroll to Top