| Literature DB >> 34746738 |
Y Leow1, J K Shi2, W Liu2, X P Ni1, P Y M Yew1, S Liu1, Z Li1, Y Xue2, D Kai1, X J Loh1.
Abstract
With the ongoing COVID-19 pandemic, reusable high-performance cloth masks are recommended for the public to minimize virus spread and alleviate the demand for disposable surgical masks. However, the approach to design a high-performance cotton mask is still unclear. In this study, we aimed to find out the relationship between fabric properties and mask performance via experimental design and machine learning. Our work is the first reported work of employing machine learning to develop protective face masks. Here, we analyzed the characteristics of Egyptian cotton (EC) fabrics with different thread counts and measured the efficacy of triple-layered masks with different layer combinations and stacking orders. The filtration efficiencies of the triple-layered masks were related to the cotton properties and the layer combination. Stacking EC fabrics in the order of thread count 100-300-100 provides the best particle filtration efficiency (45.4%) and bacterial filtration efficiency (98.1%). Furthermore, these key performance metrics were correctly predicted using machine-learning models based on the physical characteristics of the constituent EC layers using Lasso and XGBoost machine-learning models. Our work showed that the machine learning-based prediction approach can be generalized to other material design problems to improve the efficiency of product development.Entities:
Keywords: Bacterial filtration efficiency; COVID-19; Facial mask; Optimization; Particle filtration efficiency; Regression
Year: 2021 PMID: 34746738 PMCID: PMC8559538 DOI: 10.1016/j.mtadv.2021.100178
Source DB: PubMed Journal: Mater Today Adv ISSN: 2590-0498
Physical characteristics of single-layer EC specimens.
| Sample | Thread count | Fabric thickness (mm) | Fiber diameter (μm) | Fiber strand diameter (μm) | Zeta potential (mV) | Specific surface area (BET) | Surface pore size (BET) (nm) | Mean pore size (Porometer) (μm) |
|---|---|---|---|---|---|---|---|---|
| EC100 | 100 | 0.182 ± 0.002 | 12.1 ± 2.3 | 146 ± 21 | −10.2 | 0.59 | 11.2 | 6.8 |
| EC200 | 200 | 0.128 ± 0.002 | 10.8 ± 2.1 | 137 ± 15 | −20.7 | 1.03 | 34.9 | 14.9 |
| EC300 | 300 | 0.120 ± 0.001 | 9.8 ± 2.2 | 103 ± 13 | −9.8 | 0.71 | 53.6 | 11.5 |
Fig. 1SEM images of (a) EC100, (b) EC200, (c) EC300, (i): ×100 magnification and (ii): ×500 magnification, (d) FT-IR spectrum, and (e) XPS of EC100.
Differential pressure (ΔP), particle filtration efficiency (PFE), and bacterial filtration efficiency (BFE) of single-layer EC specimens.
| Sample | ΔP (Pa/cm2) | PFE (%) | BFE (%) |
|---|---|---|---|
| EC100 | 118.3 ± 2.0 | 22.8 ± 0.8 | 84.17 ± 0.98 |
| EC200 | 26.6 ± 2.0 | 9.9 ± 0.6 | 50.60 ± 3.52 |
| EC300 | 44.8 ± 1.1 | 17.6 ± 1.2 | 48.27 ± 1.86 |
ΔP, PFE, and BFE of triple-layer EC specimens (e.g. 3-2-1 represents the stacking order of EC300, then EC200, and then EC100) obtained experimentally. For the combination 1-2-3, internal means that the flow direction is 1 to 3, while external means that the flow direction is 3 to 1. Sym—triple-layer stacking order is symmetrical in both directions (e.g. 1-2-1), hence there is no BFE differences between the directions of bacterial flow.
| Sample combination | ΔP (Pa/cm2) | PFE (%) | BFE internal (%) | BFE external (%) |
|---|---|---|---|---|
| 1-1-1 | >253 | 46.8 ± 0.6 | 95.5 ± 0.5 | sym |
| 1-2-1 | 228.6 ± 7.7 | 43.2 ± 1.1 | 96.7 ± 1.5 | sym |
| 1-3-1 | 232.2 ± 4.1 | 45.4 ± 1.4 | 98.1 ± 0.8 | sym |
| 1-3-3 | 138.8 ± 3.4 | 41.9 ± 1.6 | 95.5 ± 0.4 | 92.5 ± 0.1 |
| 2-1-2 | 142.0 ± 7.5 | 38.0 ± 0.4 | 92.3 ± 0.7 | sym |
| 2-2-3 | 67.5 ± 1.6 | 30.2 ± 0.1 | 93.9 ± 0.3 | 92.7 ± 0.9 |
| 3-1-3 | 142.1 ± 3.4 | 42.5 ± 2.2 | 91.7 ± 0.4 | sym |
| 3-2-1 | 154.1 ± 5.3 | 38.5 ± 2.1 | 94.3 ± 0.2 | 95.6 ± 0.3 |
| 3-3-2 | 72.4 ± 0.9 | 39.7 ± 2.5 | 89.7 ± 1.5 | 92.9 ± 1.5 |
| 3-3-3 | 72.4 ± 1.8 | 40.4 ± 1.3 | 90.9 ± 0.8 | sym |
Predicted and experimental values of ΔP, PFE, and BFE with Lasso and XGBoost.
| Sample combination | ΔP (Pa/cm2) | PFE (%) | BFE (%) | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Experimental | Lasso | XGBoost | Experimental | Lasso | XGBoost | Experimental | Lasso | XGBoost | |
| 1-2-2 | 142.1 ± 5.5 | 137.0 | 135.0 | 30.4 ± 0.7 | 42.0 | 35.4 | 94.8 ± 0.1 | 94.9 | 95.9 |
| 2-2-2 | 72.7 ± 3.5 | 67.5 | 67.0 | 28.6 ± 1.2 | 34.7 | 30.0 | 93.3 ± 1.4 | 93.9 | 94.2 |
| 2-3-1 | 147.4 ± 1.8 | 162.0 | 163.1 | 37.7 ± 0.3 | 35.9 | 40.0 | 94.8 ± 0.4 | 95.3 | 95.1 |
Comparison of the root-mean-square errors (RMSEs) for training (Train), validation (Val.), and testing (Test) with Lasso and XGBoost. The validation RMSE is the average k-fold cross-validation for ΔP, PFE, and BFE with k = 5, 7, and 9, respectively.
| Model | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| Train | Val. | Test | Train | Val. | Test | Train | Val. | Test | |
| Lasso | 0.97 | 7.46 | 9.42 | 1.69 | 2.73 | 7.64 | 0.78 | 1.25 | 0.44 |
| XGBoost | 0.70 | 6.72 | 10.49 | 0.23 | 1.45 | 3.27 | 0.61 | 1.28 | 0.83 |
Fig. 2Feature importance in Lasso (red, top row) and XGBoost (blue, bottom row) models for ΔP (left panel), PFE (middle panel), and BFE (right panel). Thickness: fabric thickness, SA: specific surface area, fiberd: fiber strand diameter, porometer: mean pore size (pore_poro), pore: surface pore size (pore_BET), and zetap: zeta potential. The number at the end of a feature name indicates the layer number.
Fig. 3Pair-wise correlation coefficients among ΔP, PFE, and BFE.