Data-driven tool wear prediction in milling, based on a process-integrated single-sensor approach
Eric Hirsch, Christian Friedrich

TL;DR
This paper presents a data-driven, single-sensor approach using deep learning models for accurate and transferable tool wear prediction in milling, emphasizing low-cost data collection and minimal training data for practical industrial application.
Contribution
It introduces a transfer learning framework with a simple sensor setup, demonstrating high accuracy with limited data and broad applicability across different machining processes.
Findings
ConvNeXt achieves 99.1% accuracy with minimal data
Single-sensor setup enables cost-effective data collection
Models generalize well across different machines and processes
Abstract
Accurate tool wear prediction is essential for maintaining productivity and minimizing costs in machining. However, the complex nature of the tool wear process poses significant challenges to achieving reliable predictions. This study explores data-driven methods, in particular deep learning, for tool wear prediction. Traditional data-driven approaches often focus on a single process, relying on multi-sensor setups and extensive data generation, which limits generalization to new settings. Moreover, multi-sensor integration is often impractical in industrial environments. To address these limitations, this research investigates the transferability of predictive models using minimal training data, validated across two processes. Furthermore, it uses a simple setup with a single acceleration sensor to establish a low-cost data generation approach that facilitates the generalization of…
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Taxonomy
TopicsAdvanced machining processes and optimization · Advanced Machining and Optimization Techniques · Metal Alloys Wear and Properties
MethodsConvNeXt · Focus
