Content area
The present study introduces an AI (Artificial Intelligence) framework for surface roughness assessment in milling operations through sound signal processing. As industrial demands escalate for in-process quality control solutions, the proposed system leverages audio data to estimate surface finish states without interrupting production. In order to address this, a novel classification approach was developed that maps audio waveform data into predictive indicators of surface quality. In particular, an experimental dataset was employed consisting of sound signals that were captured during milling procedures applying various machining conditions, where each signal was labeled with a corresponding roughness quality obtained via offline metrology. The formulated classification pipeline commences with audio acquisition, resampling, and normalization to ensure consistency across the dataset. These signals are then transformed into Mel-Frequency Cepstral Coefficients (MFCCs), which yield a compact time–frequency representation optimized for human auditory perception. Next, several AI algorithms were trained in order to classify these MFCCs into predefined surface roughness categories. Finally, the results of the work demonstrate that sound signals could contain sufficient discriminatory information enabling a reliable classification of surface finish quality. This approach not only facilitates in-process monitoring but also provides a foundation for intelligent manufacturing systems capable of real-time quality assurance.
Details
Surface properties;
Design of experiments;
Waveforms;
Classification;
Quality control;
Back propagation;
Resampling;
Quality assurance;
Optimization;
Productivity;
Manufacturers;
Manufacturing;
Intelligent manufacturing systems;
Fuzzy logic;
Efficiency;
Statistical analysis;
Surface finish;
Datasets;
Signal processing;
Milling (machining);
Sensors;
Process controls;
Support vector machines;
Surface roughness;
Audio data;
Auditory perception;
Artificial intelligence;
Real time;
Industry 4.0;
Variance analysis
