Periodic Reporting for period 2 - ADAPT (ADvanced Aeroacoustic Processing Techniques)
Período documentado: 2019-03-01 hasta 2020-08-31
A few methods exist today that can eliminate hydrodynamic noise from acoustic signals. However, the efficacy of these methods strongly depends on various parameters, such as signal-to-noise-ratio, number of microphones, number of incoherent sources etc. No systematic study has been performed so far to assess the parameter boundaries within which acceptable results are obtained.
The ADAPT project worked at improving and optimizing the ability of identifying sources emitted by aircraft components by using the most effective techniques out following the three proposed approaches :
• aeroacoustic source separation,
• de-noising techniques based on cyclostationarity
• aeroacoustic sources localization.
Through these three approaches, the ADAPT project delivered to AIRBUS tools dedicated to separating airframe and engine noise components (tonal, broadband cyclostationary components in particular) from hydrodynamic pressure noise and identifying these sources in space, satisfying various technical and economical requirements that has been discussed out with AIRBUS at the beginning of the project.
An expert assessment of the stochastic denoising tool, as developed within ADAPT has been made. The purpose of the assessment was to apply state-of-the-art denoising techniques to the measurements and to compare them with the results of the newly developed denoising techniques, especially those that are based on stochastic modelling, like Probabilistic Factor Analysis (PFA) and bayesian focusing. A comparison was reported between several existing denoising techniques. It was found that CLEAN-SC beamforming and Source Power Integration (SPI) were the most successful “traditional” methods for obtaining denoised microphone data. Then the state-of-the-art beamforming methods ISPI and CLEAN-SC were applied to wind tunnel measurements made available in the ADAPT project and compared with newly developed denoising methods.
The following conclusions has been drawn.
• CLEAN-SC works better than ISPI.
• The quality of the CLEAN-SC denoised data is comparable to the denoised MEMS array results shown in ADAPT Deliverable D1.2.
• The denoised MEMS array spectrum obtained with PFA, is better than the CLEAN-SC reconstruction (Figure 27).
• The denoised linear array spectrum obtained by integration over axial wave numbers, is much better than the CLEAN-SC reconstruction.
• The Bayesian approach provides a very promising denoising tool, especially if re-propagation is applied. This, however, requires knowledge about the sources. For blind denoising (no knowledge about the sources), DRCM or PFA may perform better. The MCMC-method is a very promising tool for assessing the reliability of the results.
Furthermore, a method has been proposed to automatically extract tones from aeroacoustic signals. Compared to the state-of-the-art, the proposed solution if flexible enough to extract very large numbers of tones, even when distributed at incommensurate frequencies, and in the presence of moderate random modulations. The proposed methodology has proved very efficient when processing several datasets, including the CROR data which are known for being challenging. As a byproduct, the extraction of tones also returns the broadband contribution of the signals. Then a companion method has been proposed to decompose broadband noise into a cyclostationary part, typically attached to the operation of a rotor, and a stationary part related to background noise.
An important goal of this work was to illustrate the successive steps involved in the separation process as well as providing guidelines as how to set up parameters in the algorithms. Criteria have been devised for allowing automatic selection of critical parameters, so to relieve as much as possible the user intervention. The methodology has been illustrated on aeroacoustic signals recorded in front of a CROR engine in a wind tunnel. The broadband signals obtained after removing the tonal components have been further decomposed into cyclostationary contributions due to rotation of the rear and front propellers and the stationary background noise due to inflow and turbulent boudary layer. It was demonstrated that the cyclostationary approach developed are capable of identifying cyclostationary CROR signals, both tonal and broadband. At present there is no comparable method in the field.
Finally, the denoising techniques has been applied to microphones signals measured on the fuselage of an inflight aircraft. Results are conclusive and promising.
The exploratory development of signal processing methods for aeroacoustics led to innovative contributions and without equivalenct in the field to our knowledge by means of delivery of validated and ready to use prototype software tools. These techniques will be integrated in innovative acoustic measurement products and applied through industrial services.
ADAPT finally impacted a large range of industries at several levels (from OEM to suppliers) and will contribute to maintaining European competitiveness on a topic that is directly related to human comfort.