Influencing Factors in Acoustic Emission Detection: A Literature Review Focusing on Grain Angle and High/Low Tree Ring Density of Scots Pine
Abstract
:1. Introduction
2. Methodology
2.1. Preliminary Literature Survey
2.2. Literature Review
2.2.1. Search Strategy and Papers Collection
2.2.2. Analysis of Publications
- contents of publication;
- geographic distribution;
- year of publication;
- subject areas of the research (of both authors and journals).
3. Results and Discussion
3.1. Preliminary Survey on Non-Destructive Techniques on Wooden Samples
3.2. Acoustic Emission along Grain Angle Direction in High/Low Tree Ring Density of Scots Pine
3.2.1. Geographic Distribution
3.2.2. Year of Publication
3.2.3. Subject Areas of the Research
3.2.4. Content of Publication
4. Conclusions
- The AE activity emitted by wooden samples and assets under stress with different grain angle direction and tree ring density, can be investigated to assess if these two parameters might become fingerprints useful in forecasting mechanical decay. Such research might be used in the monitoring of structural health of wooden building envelopes, thus assuming a crucial role in the preventive conservation of them from mechanical stresses. In addition, such analysis might open interesting perspectives to investigate the influence of moisture content (MC) in the simultaneous assessment of mechanical and biological risk of decay on wooden samples. In fact, the MC variation is strictly related to drying/wetting events (i.e., risk of mechanical decay) while high MC provides optimal conditions for mould growth on wooden substrate (i.e., risk of biological decay).
- Future studies could investigate the relationship between AE activity and the tree rings density and the grain angle in pine samples (as widely used building constructions materials), to obtain insights on the durability of pine materials, leading to a higher and prompt capability to address appropriate retrofitting interventions in wooden historical buildings in the era of climate change.
- The multi-technique approach used in these documents proved to be lacking in microscopic observations, but in view of their efficacy in obtaining helpful information, it is suggested to consider the microscopy techniques in fractography i.e., in the study of the fracture surface of wood during the experimental tests.
- Finally, the information related to the preparation and acclimatisation stages of the tested samples should be improved, especially in terms of the duration of the conditioning period (an information that is often missing in the existing documents). In this way, the correct reproducibility of the experiments would be ensured.
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Technique | Output |
---|---|
Visual techniques | |
Visual Strength Grading (VSG) | Examination and recording of wood features, defects, signs of damage or deterioration (cannot predict the influence of non-visible defects; needs to be coupled with other NDT) [9]. |
Acoustic techniques | |
Acoustic Emission (AE) | Identification of the onset time of crack nucleation [42]. |
Micro Hammer (IML) | Estimation of modulus of elasticity (MOE) [1]. |
Ultrasound and stress wave | Estimation of modulus of elasticity (MOE), dynamic modulus of elasticity (Edyn) and bending strength (MOR). Assessment of strength and stiffness [1]. |
Vibration techniques | |
Portable Lumber Grader (PLG)–also coupled with microphone | Estimation of modulus of elasticity (MOE) and bending strength (MOR) [1]. |
Mechanical Timber Grader (MTG)-also coupled with accelerometer | Estimation of modulus of elasticity (MOE) and bending strength (MOR) [1]. |
Probing techniques | |
Resistography | Estimation of defects such as knots, fissures, decay or even termite attack existing in hidden surfaces. Estimation of density (abnormal density variations associated with mass loss, caused by biological degradation), mechanical strength, modulus of elasticity (MOE) and water content of timber [1,9,43]. |
Pylodin | Estimation of density [1,44]. |
Screw Withdrawal Resistance Meter (SWRM) | Estimation of density [1,44]. |
Other ND techniques | |
Acoustic tomography | Study of the influence of pith distance on velocity [1]. |
Ground penetrating radar (GPR) | Assessment of the variation of the Moisture Content [1]. |
Infrared thermography (IRT) | Species recognition, physical properties prediction and evaluation of degradation level. Detection of MC differences [1,45]. |
Near Infrared-hyperspectral imaging | Determination of the ratio of juvenile wood to mature wood [1]. |
Thermal Imaging techniques | Display the origin of crack nucleation and its progress. In static torsional testing of wood, the temperature change produced by thermal radiation will decrease a little when a sample is loaded but increase quickly after cracking takes place. The thermal imaging of softwood indicated that earlywood exchanged more thermal energy than latewood [42]. |
Stress-wave Toc Tomography | Detection of decay and defect in the interior of the wood material (including knots of little size) [45,46]. |
CdZnTe-Based X-ray Spectrometer | Determination of absolute density [47]. |
Microwave-focused beam | Detection of grain angle for arbitrary grain inclination in 3D space [7]. |
Synchrotron radiation micro-computed Tomography (SRμCT) | Detection of the microscopic structure of wooden specimens under initial, crack evolution and final fracture development [48]. |
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Keywords Combinations | Scopus + Web of Science | Google Scholar | |
---|---|---|---|
Acoustic Emission Grain Pine | 2 | 8 | |
Acoustic Emission Pine | 43 | 26 | |
Acoustic Emission Softwood | 15 | 22 | |
Acoustic Emission Grain Wood Fracture | 10 | 13 | |
Acoustic Emission Earlywood Latewood | 3 | 16 | |
73 | + | 85 | |
158 |
Journal | Subject Area | Quartile | N° of Doc |
---|---|---|---|
Archives of Civil Engineering | Engineering | Q4 | 1 |
Bioresources | Engineering Waste Management and Disposal | Q3 Q3 | 1 |
Construction and Building Materials | Engineering Materials Sciences | Q1 Q1 | 3 |
European Journals of Wood and Wood Products | ForestryMaterial Sciences | Q2 Q2 | 1 |
Folia Forestalia Polonica–Forestry | Forestry | Q2 | 1 |
Holzforschung–Wood research and Technology | Forestry Material Sciences | Q4 Q4 | 2 |
Insight–Non-Destructive Testing and Condition Monitoring | Engineering Material Sciences Metals and Alloys | Q3 Q3 Q3 | 1 |
Journal–Faculty of Agriculture Kyushu University | Agronomy and Crop Sciences Biotechnology | Q4 Q4 | 1 |
Journal of Material Science | Material Sciences Engineering | Q2 Q1 | 1 |
Journal of Tropical Forest Science | Forestry | Q3 | 1 |
Journal of Wood Science | Material Sciences | Q3 | 1 |
Material Science and Engineering | Physics Material Sciences Engineering Nanoscience and Nanotecnology | Q1 Q1 Q1 Q1 | 1 |
Forests | Forestry | Q1 | 1 |
Materials | Physics Material Sciences | Q2 Q2 | 2 |
Physical Review Letters | Physics | Q1 | 1 |
Wood Research | Forestry Material Sciences | Q2 Q3 | 1 |
Wood Science and Technology | Forestry Engineering Material Sciences Plant Sciences | Q1 Q1 Q2 Q2 | 4 |
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Boccacci, G.; Frasca, F.; Bertolin, C.; Siani, A.M. Influencing Factors in Acoustic Emission Detection: A Literature Review Focusing on Grain Angle and High/Low Tree Ring Density of Scots Pine. Appl. Sci. 2022, 12, 859. https://doi.org/10.3390/app12020859
Boccacci G, Frasca F, Bertolin C, Siani AM. Influencing Factors in Acoustic Emission Detection: A Literature Review Focusing on Grain Angle and High/Low Tree Ring Density of Scots Pine. Applied Sciences. 2022; 12(2):859. https://doi.org/10.3390/app12020859
Chicago/Turabian StyleBoccacci, Giulia, Francesca Frasca, Chiara Bertolin, and Anna Maria Siani. 2022. "Influencing Factors in Acoustic Emission Detection: A Literature Review Focusing on Grain Angle and High/Low Tree Ring Density of Scots Pine" Applied Sciences 12, no. 2: 859. https://doi.org/10.3390/app12020859
APA StyleBoccacci, G., Frasca, F., Bertolin, C., & Siani, A. M. (2022). Influencing Factors in Acoustic Emission Detection: A Literature Review Focusing on Grain Angle and High/Low Tree Ring Density of Scots Pine. Applied Sciences, 12(2), 859. https://doi.org/10.3390/app12020859