Signal Transformations for Analysis of Supraharmonic EMI Caused by Switched-Mode Power Supplies
Abstract
:1. Introduction
- The investigated methods must provide accurate results in terms of amplitude of the signal components that may be compared to existing or future emission limits, in order to assess compliance and related margins. Several wavelet applications do not discuss the amplitude accuracy in the presence of both narrowband and broadband components, as well as of significant variability of the instantaneous frequency.
- They must support the analysis of the signal and of the control measures necessary in the case of noncompliance, with clear relationship with the internal sources and switching mechanisms, as well as also being easily interpretable, at least for the most relevant components critical for compliance to limits.
2. Measurement Setup and Signal Transformations
2.1. Measurement Setup
2.2. Use of the Discrete Fourier Transform (DFT)
- The signal portion to analyze has a short duration, which contrasts to the desirable or required frequency resolution. The IEC 61000-4-7 standard [29] indicates an observation time of 200 ms that is clearly inadequate (equivalent to 5 Hz resolution, suitable for low frequency harmonics, but not for phenomena at higher frequency with fast dynamics, as in the present case). The EN 55065-1 [14] and in general EMC standards for conducted emissions below 150 kHz require a 200 Hz resolution bandwidth. A more suitable approach has been proposed in the IEC 61000-4-30 [13], defining a frequency resolution of 2 kHz, which goes in the direction of tracking signals with fast dynamics, as in the present case.
- To avoid spectral leakage, the signal should be cut in the zero-valued short intervals between pulses, implying a resolution frequency of about 100 Hz. Other window intervals will suffer from spectral leakage, only partly attenuated by the use of tapering windows.
- Using a long window interval has the drawback of averaging the contribution of the contained signal components, largely reducing the estimated amplitude of the peak located at the center.
- Using a short window interval reduces the frequency resolution and worsens the spectral representation and the estimate of the amplitude, this time caused by the short-range spectral leakage (or “picket fence effect”), if no additional post processing is used.
2.3. Wavelet Packet Transform (WPT)
2.4. Empirical Mode Decomposition (EMD) and Ensemble Empirical Mode Decomposition (EEMD)
- In the whole dataset, the number of extrema and the number of zero crossings is either equal or differ at least by one.
- At any point, the mean value of the envelope defined by local maxima and local minima is zero.
3. Results
3.1. Introduction and Reference Case
3.2. Performance of WPT
3.2.1. Basic Time and Frequency Resolution Performance of WPT
3.2.2. Amplitude Accuracy and Spectrum Representation of WPT
- WPT frequency resolution is superior, in terms of spectrum details and reduced leakage, which instead affect the STFT results (see, for instance, the central portion of the spectrum between 4 ms and 6 ms and the dynamic range of more than 30 dB for the background components (blue to light blue color)).
- The time resolution is also superior with the ability of tracking more closely signal dynamics.
- Regarding amplitude accuracy, we must distinguish between: (i) For narrowband switching components visible at 44 kHz and 88 kHz, there is a general agreement among WPT, STFT and the EMI receiver scan in frequency domain. We must observe that the receiver scan was made for a time interval much longer than the one covered by WPT and STFT, so that using max hold slightly larger values may be expected. (ii) The low frequency components are a byproduct of the switching pulses and evidently the instantaneous frequency is slightly variable, as result of non-linearity during oscillations. WPT confirms good tracking of such components and averaged values over adjacent bins are quite stable with respect to different frequency resolutions Δf.
3.3. EMD and EEMD Performance
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
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Frequency (kHz) | EMI Rec. (dBμV) | WPT (dBμV) | STFT (dBμV) |
---|---|---|---|
2–5 | 93.0 | 93.75–105.5 (1) | 82.73–106.7 (1) |
44 | 70.5 | 68.07, 71.51 (2) | 69.04 |
88 | 57.5 | 60.60 (3) | 53.27 |
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Sandrolini, L.; Mariscotti, A. Signal Transformations for Analysis of Supraharmonic EMI Caused by Switched-Mode Power Supplies. Electronics 2020, 9, 2088. https://doi.org/10.3390/electronics9122088
Sandrolini L, Mariscotti A. Signal Transformations for Analysis of Supraharmonic EMI Caused by Switched-Mode Power Supplies. Electronics. 2020; 9(12):2088. https://doi.org/10.3390/electronics9122088
Chicago/Turabian StyleSandrolini, Leonardo, and Andrea Mariscotti. 2020. "Signal Transformations for Analysis of Supraharmonic EMI Caused by Switched-Mode Power Supplies" Electronics 9, no. 12: 2088. https://doi.org/10.3390/electronics9122088
APA StyleSandrolini, L., & Mariscotti, A. (2020). Signal Transformations for Analysis of Supraharmonic EMI Caused by Switched-Mode Power Supplies. Electronics, 9(12), 2088. https://doi.org/10.3390/electronics9122088