Acoustic Sensing and Supervised Machine Learning for In Situ Classification of Semi-Autogenous (SAG) Mill Feed Size Fractions Using Different Feature Extraction Techniques
Abstract
:Highlights
- Laboratory SAG mill acoustics are sensitive to different feed size fractions.
- Supervised classification models and acoustic emissions were suitable for predicting different feed size fractions in laboratory SAG mills.
- SAG mill acoustics can serve as online proxy tool for providing more insight into different feed size fractions in the mill.
- The practical implication of the study could be beneficial to SAG mill operators by predicting a sudden change in feed size in real-time.
Abstract
1. Introduction
- (a)
- Which statistical features can best describe acoustic signal variations?
- (b)
- What is the response of varying AG/SAG mill feed size fractions in terms of acoustic emission?
- (c)
- What are the performances of the various extraction techniques used in the study for predicting different feed size distributions inside the laboratory-scale AG/SAG mill?
- (d)
- Which signal extraction technique and classification can best predict different feed size fractions within the mill?
- (e)
- What is the overall practical overview of the study?
2. Experimental Method
2.1. Feed Size Variations, Grinding Studies, and Acoustic Measurements
2.2. Acoustic Signal Data Collection and Pre-Processing
3. Preliminary Statistical Feature Extraction
4. Feature Extraction Techniques for Mill Feed Size Acoustic Estimation
4.1. Power Spectral Density Estimate (PSDE)
4.2. Discrete Wavelet Transform (DWT)
4.3. Wavelet Packet Transform (WPT)
4.4. Empirical Mode Decomposition (EMD)
- Determine all the local minima and maxima (extrema) of the given signal y(t).
- Estimate the lower envelope, emin(t), and upper envelope, emax(t), by interpolation of the extrema.
- The local average or mean, r(t) = [emin(t) + emax(t)]/2 of the envelope as the “low-pass” center, also known as the residual, is computed.
- Extract the first high-frequency component (IMF), as known as the detail component as d(t) = y(t) − r(t).
- Iterate the procedure on the residual r(t) until all the IMFs are acquired.
4.5. Variational Mode Decomposition (VMD)
5. Machine Learning Classification Models’ Intuition
5.1. Decision Tree
5.2. Discriminant Analysis
5.3. Naïve Bayes
5.4. Support Vector Machine
5.5. K-Nearest Neighbours
5.6. Ensembles
6. Methodology: Model Development Using Supervised Machine Learning Algorithms
Classification Model Performance Evaluation Metrics
7. Results and Discussion
7.1. Statistical Feature Selection
7.2. Confusion Matrix for Feed Size Classification
7.2.1. Model 1 with PSDE
7.2.2. Model 2 with DWT–RMS
7.2.3. Model 3 with WPT–RMS
7.2.4. Model 4 with EMD–RMS
7.2.5. Model 5 with VMD–RMS
7.3. Model Evaluation
8. Conclusions
- (a)
- The root mean square (RMS), mean absolute value (MAV), and standard deviation (SD) were identified as the most suitable statistical features for representing the mill acoustic signal with minimal variance.
- (b)
- The mill acoustic emission response is sensitive to different mill feed size fractions, such that an increase in the mill feed size ranges increases the acoustic emission.
- (c)
- All feature extraction techniques (PSDE, DWT, WPT, and VMD), except the EMD, were identified to give improved performance in classifying different feed size distributions inside AG/SAG mill.
- (d)
- The suitable extraction techniques and their respective classification algorithms for improved SAG mill feed size prediction are observed as follows: PSDE–SVM, DWT–LDA, WPT–LDA, EMD-ensemble, and VMD–LDA. The LDA and ensemble classifiers were noted to provide promising algorithms for improving feed size distribution in almost all the signal feature extraction techniques. The data extraction with PSDE combined with SVM classifier demonstrated the best degree of prediction for a sudden change in feed size fraction inside the SAG mill using the performance evaluation metrics such as accuracy, precision, sensitivity, and F1 score.
- (e)
- Mill acoustic emission and supervised machine-learning classification models can be used to provide more insight into the changing feed size distribution of SAG mills. The study’s findings could be beneficial to the comminution circuit by serving as a proxy measure for predicting the sudden feed size fluctuations in real time and assessing the efficiency of upstream processes like crushing and screening. This can result in faster decision-making and more timely intervention by mill operators. Though the current work is constrained to (i) A batch sample rather than continuous feed (blending); and (ii) A small-scale mill rather than an industrial mill, the study provides directions for future applications in large-scale AG/SAG mills.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Class | Feed Size Fractions (mm) |
---|---|
1 | −2 + 0.85 |
2 | −4 + 2 |
3 | −6.7 + 4 |
4 | −8 + 6.7 |
5 | −9.5 + 8 |
6 | −13.2 + 9.5 |
7 | −16 + 13.2 |
8 | −19 + 16 |
9 | −26.5 + 19 |
Statistical Features | Equations | Number |
---|---|---|
Root mean square (RMS) | (1) | |
Mean absolute value (MAV) | (2) | |
Maximum (Max) | The maximum peak or value of a given acoustic signal | - |
Standard deviation (SD) | (3) | |
Variance (Var) | (4) | |
Skewness (SS) | (5) | |
Kurtosis (SKur) | (6) | |
Peak factor (PF) | (7) |
Feature Extraction Techniques | Suitable Classification Models | Model Performance Indicators | |||
---|---|---|---|---|---|
Accuracy | Precision | Sensitivity/Recall | F1 Score | ||
PSDE | SVM (Quadratic) | 88.89 | 90.25 | 88.89 | 89.56 |
Ensemble (subspace discriminant) | 88.89 | 89.56 | 88.89 | 89.23 | |
DWT-RMS | LDA | 88.89 | 88.95 | 88.89 | 88.92 |
Ensemble (subspace discriminant) | 85.56 | 85.46 | 85.56 | 85.51 | |
WPT-RMS | LDA | 84.44 | 84.14 | 84.44 | 84.29 |
Ensemble (subspace discriminant) | 81.11 | 80.46 | 81.11 | 80.79 | |
EMD-RMS | LDA | 54.44 | 53.60 | 54.44 | 54.02 |
Ensemble (subspace discriminant) | 57.78 | 55.97 | 57.78 | 56.86 | |
VMD-RMS | LDA | 83.33 | 84.21 | 83.33 | 83.77 |
Ensemble (subspace discriminant) | 83.33 | 83.74 | 83.33 | 83.54 |
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Owusu, K.B.; Skinner, W.; Asamoah, R.K. Acoustic Sensing and Supervised Machine Learning for In Situ Classification of Semi-Autogenous (SAG) Mill Feed Size Fractions Using Different Feature Extraction Techniques. Powders 2023, 2, 299-322. https://doi.org/10.3390/powders2020018
Owusu KB, Skinner W, Asamoah RK. Acoustic Sensing and Supervised Machine Learning for In Situ Classification of Semi-Autogenous (SAG) Mill Feed Size Fractions Using Different Feature Extraction Techniques. Powders. 2023; 2(2):299-322. https://doi.org/10.3390/powders2020018
Chicago/Turabian StyleOwusu, Kwaku Boateng, William Skinner, and Richmond K. Asamoah. 2023. "Acoustic Sensing and Supervised Machine Learning for In Situ Classification of Semi-Autogenous (SAG) Mill Feed Size Fractions Using Different Feature Extraction Techniques" Powders 2, no. 2: 299-322. https://doi.org/10.3390/powders2020018
APA StyleOwusu, K. B., Skinner, W., & Asamoah, R. K. (2023). Acoustic Sensing and Supervised Machine Learning for In Situ Classification of Semi-Autogenous (SAG) Mill Feed Size Fractions Using Different Feature Extraction Techniques. Powders, 2(2), 299-322. https://doi.org/10.3390/powders2020018