Abstract
Manufacturing more efficient low pressure turbines has become a topic of primary importance for aerospace companies. Specifically, wire electrical discharge machining of disc turbine fir-tree slots has attracted increasing interest in recent years. However, important issues must be still addressed for optimum application of the WEDM process for fir-tree slot production. The current work presents a novel approach for tolerance monitoring based on unsupervised machine learning methods using distribution of ionization time as a variable. The need for time-consuming experiments to set-up threshold values of the monitoring signal is avoided by using K-means and hierarchical clustering. The developments have been tested in the WEDM of a generic fir-tree slot under industrial conditions. Results show that 100% of the zones classified into Clusters 1 and 2 are related to short-circuit situations. Further, 100% of the zones classified in Clusters 3 and 5 lie within the tolerance band of ±15 µm. Finally, the 9 regions classified in Cluster 4 correspond to situations in which the wire is moving too far away from the part surface. These results are strongly in accord with tolerance distribution as measured by a coordinate measuring machine.
| Original language | English |
|---|---|
| Article number | 3359 |
| Journal | Sensors |
| Volume | 18 |
| Issue number | 10 |
| DOIs | |
| Publication status | Published - 8 Oct 2018 |
| Externally published | Yes |
Keywords
- Aerospace
- Fir-tree slots
- Machine learning
- Tolerance monitoring
- Turbine manufacturing
- Wire electrical discharge machining