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Naji, M. |
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Motta, Antonella |
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Aletan, Dirar |
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Mohamed, Tarek |
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Ertürk, Emre |
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Taccardi, Nicola |
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Kononenko, Denys |
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Petrov, R. H. | Madrid |
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Alshaaer, Mazen | Brussels |
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Bih, L. |
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Casati, R. |
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Muller, Hermance |
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Kočí, Jan | Prague |
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Šuljagić, Marija |
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Kalteremidou, Kalliopi-Artemi | Brussels |
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Azam, Siraj |
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Ospanova, Alyiya |
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Blanpain, Bart |
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Ali, M. A. |
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Popa, V. |
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Rančić, M. |
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Ollier, Nadège |
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Azevedo, Nuno Monteiro |
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Landes, Michael |
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Rignanese, Gian-Marco |
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Reuben, Bob
Heriot-Watt University
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (32/32 displayed)
- 2023Laser-Induced Forward Transfer of Ni-rich NiTi Alloys for Shape Memory Applicationscitations
- 2022Laser induced forward transfer of NiTi deposits for functionally graded SMA components
- 2021Experimental investigation using acoustic emission technique for quasi-static cracks in steel pipes assessmentcitations
- 2018Flow noise identification using acoustic emission (AE) energy decomposition for sand monitoring in flow pipelinecitations
- 2017Dynamic instrumented palpation (DIP) - a new method for soft tissue quality assessment: application to prostate disease diagnosiscitations
- 2017Quantitative mechanical assessment of the whole prostate gland ex vivo using dynamic instrumented palpationcitations
- 2016Monitoring acoustic emission (AE) energy of abrasive particle impacts in a slurry flow loop using a statistical distribution modelcitations
- 2015Development of a novel actuator for the dynamic palpation of soft tissue for use in the assessment of prostate tissue qualitycitations
- 2015Monitoring acoustic emission (AE) energy in slurry impingement using a new model for particle impactcitations
- 2013Transmission of acoustic emission in bones, implants and dental materialscitations
- 2012Predicting acoustic emission attenuation in small steel blocks using a ray tracing techniquecitations
- 2012Statistical distribution models for monitoring acoustic emission (AE) energy of abrasive particle impacts on carbon steelcitations
- 2012Replacing diamond cutting tools with CBN for efficient nanometric cutting of siliconcitations
- 2012Molecular dynamics simulation model for the quantitative assessment of tool wear during single point diamond turning of cubic silicon carbidecitations
- 2012Acoustic emission monitoring of abrasive particle impacts on carbon steelcitations
- 2012The effect of coping/veneer thickness on the fracture toughness and residual stress of implant supported, cement retained zirconia and metal-ceramic crownscitations
- 2011Atomistic aspects of ductile responses of cubic silicon carbide during nanometric cuttingcitations
- 2011Indentation testing and its acoustic emission response: applications and emerging trendscitations
- 2011An improved measurement of Vickers indentation behaviour through enhanced instrumentationcitations
- 2011AE Monitoring and Analysis of HVOF Thermal Spraying Processcitations
- 2008Assessment of Surface Residual Stresses Generated during Machining of Metastable Austenitic Stainless Steel using Acoustic Emission
- 2006Compressive stress-strain behaviour of cast dental restorations in relation to luting cement distribution
- 2006Interferometric sensors for application in the bladder and the lower urinary tractcitations
- 2006Biomechanical properties of articular cartilage as a standard for biologically integrated interfaces
- 2006Application of acoustic emission for monitoring the HVOF thermal spraying processcitations
- 2005The effects of progressive wear on the frequency characteristic of acoustic emission acquired during face millingcitations
- 2005AE mapping of engines for spatially located time seriescitations
- 2004Design, manufacture and testing of a low-cost micro-channel cooling device
- 2004Acoustic emission from the tension fatigue of glass fibre reinforced plasticscitations
- 2004A new method for waveform analysis for estimating AE wave arrival times using wavelet decompositioncitations
- 2002Toward a better understanding of morphology changes in solders using phase field theories: Quantitative modeling and experimental verification
- 2000Adaptability of a tool wear monitoring system under changing cutting conditionscitations
Places of action
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article
Flow noise identification using acoustic emission (AE) energy decomposition for sand monitoring in flow pipeline
Abstract
<p>In pipelines used for petroleum production and transportation, sand particles may be present in the multi-phase flow of oil and gas and water. The Acoustic Emission (AE) measurement technique is used in the field of sand monitoring and detection in the oil and gas industry. However, as the AE signals recorded are strongly influenced by flow conditions in the pipe, identification of sand particle related signals or events remain a significant challenge in interpretation of AE signals. Therefore, a systematic investigation of sand particle impact AE energy measurements, using a sensor mounted on the outer surface of a sharp bend in a carbon steel pipe, was carried out in the laboratory to characterise flow signals using a slurry impingement flow loop test rig. A range of silica sand particles fractions of mean particle size (212–710 μm) were used in the flow with particle nominal concentration between (1 and 5 wt.%) while the free stream velocity was changed between (4.2 and 14 ms<sup>−1</sup>). A signal processing technique was developed in which the total AE energy associated with particle-free water impingement was divided into static and oscillated parts and a demodulated frequency analysis was carried out on the oscillated part to identify major spectral components and hence the sources of AE signals. A simple theoretical model for water impingement AE signals was then developed to show the dependence of AE energy components on different flow speeds. A similar decomposition of AE energy into static and oscillatory components was used to analyse AE signals for particle-laden flows. The effect of flow speed on the spectral AE energy for different sand concentrations and particle size fractions was investigated and the results show that the 100 Hz band is attributed to mechanical noise, the 42 Hz band is due to fluid turbulence and the dominant band is broad oscillated component. The AE energy decomposition method together with the water impingement model and coupled with spectral peaks filtering enable isolation of AE energy associated with particle impact from other AE sources and noise and, hence, the proposed decomposition approach can enhance the interpretation of AE data in pipeline flows.</p>