Space Imaging Sensor Power Supply Filtering: Improving EMC Margin Assessment with Clustering and Sensitivity Analyses
Abstract
:1. Introduction
1.1. Space Mission Needs
- analog voltage, stems from electro-optical conversion; then Low Noise (pre-)Amplification (LNA) stage;
- power supply of output stage of LNA;
- digital signals, as clocks (for cadence pixels, lines and frames), as numerical voltage after Analog/Digital Conversion (ADC).
1.2. Diversity of Electronic Components and Electromagnetic Systems
- The quantification of measurements: Parallel to metrological needs, the state-of-the-art fully treated the uncertainty;
- the intrinsic nature of varying inputs: The lack of knowledge (pure ignorance or confidential applications) of parameters, here due to the physical parameters themselves, or their environment for instance.
2. Problem Statement
2.1. Analog Voltage Power Filter and Detection Instrument Electronic Architecture
2.1.1. Voltage Shifter
2.1.2. L Filter–Pi Filter–Component Trade-off
- V for the Voltage shifter,
- U for Upstream side component of -filter (capacitor),
- B for Bridge component (inductor),
- D for Downstream side component (capacitor),
- and C for typical “CCD” or “CMOS” sensor.
- the case of L (or ) structure ( is, in this case omitted), which should be better if the voltage shifter is considered as very low impedance: It concerns the results of channels #1 and #4;
- the case of structure (capacitor at ), where the FE is increased by the decoupling capacitance (compared to the non-negligible impedance of the voltage shifter): Channels #2 and #3.
- channel #1: A traditional capacitance of 4.7 µF (4.7 µF is the baseline value for an excellent FE, in first analysis), from type X7R in 1210 package.
- channel #2: A very low ESL technology capacitor of 1.5 µF (1.5 µF is the maximum value of capacitance for this technology in 0805 package with 10 V of maximum voltage rating, which is a 0% derating consideration for 10 V polarization) in 0805 package.
- channel #3: A very low ESL technology capacitor of 1.0 µF (1.0 µF is the maximum value of capacitance for this technology in 0805 package with 16 V of maximum voltage rating, which is 60% derating consideration for 10 V polarization) in 0805 package.
- channel #4: A very low ESL technology capacitor of 4.7 µF in 1210 package.
2.1.3. Electrical Models
2.2. Pi-Filter Robustness to Uncertain Working Conditions
2.2.1. Pi-Filter Modeling: Test Case #1
2.2.2. Variability at Source and Load Levels: Test Case #2
2.3. Measurements with Vector Network Analyzer (VNA)
2.4. Analytical Characterization with Chain Matrix Retro-Simulations
- A/ Measurements on VNA of four channels on Test board (see measured results in Figure 6).
- B/ Retro-fitting with chain matrix (semi-analytical) model optimization.
- C/ Spice model validation: Deterministic simulation of pi-filter.
- D/ Uncertainty Quantification, assuming random variations of electrical equivalent components.
- E/ Filter margins assessments (statistical distribution) and Sensitivity Analysis (SA).
2.4.1. Methodology
2.4.2. Analytical Model–Chain Matrix
2.4.3. Results
3. Stochastic Theoretical Foundations
3.1. Sampling Techniques: Monte Carlo and Reduced Order Clustering Methods
- Step 1: Setting random points (here 100,000 MC simulations) for d RVs (in the following or RVs, respectively, for test case #1 or #2);
- Step 2: Sampling randomly chosen points, targeting most representative points among d-space random inputs;
- Step 3: Computing d-component distance between samples to initial set of MC inputs;
- Step 4: Optimising samples aiming to keep most representative datasets (i.e., here, minimizing distance figure of merit in Step 3).
- The needed quantile level (). Of course, extreme quantiles (i.e., lowering -levels) will require an increasing number of simulations, both for ROC and MC methods. Thus, we will consider in the following the relative gaps (in percents) existing between ROC filter statistics (e.g., considering mean, standard deviation, quantiles extracted from the previous relations (8) and (9)) and the data given by highly rated MC simulations (with a huge number of realizations, here 100,000).
- The frequency of interest. As expected, highly sensitive phenomena (resonances and anti-resonances) will involve various reconstruction and simulation needs. In the following, we will provide results on a large frequency bandwidth (from 100 kHz to 1 GHz), considering both first statistical moments: Mean trends (), standard deviation () and their ratio known as coefficient of variation: , and higher quantiles ( and levels).
- The number of ROC simulations (here 1000 simulations, arbitrarily chosen by the interested user of the method). This work does not aim at providing theoretical proofs or methodological ways to assess the convergence of the ROC technique. The main objective remains to demonstrate the ability of the ROC method to provide (with a given choice of a reasonable number of simulations available) trustworthy statistical data and information about the sensitivity of the filter performances.
3.2. Sensitivity Analysis (SA)
4. Filter Performance: Statistical Distribution and Sensitivity Analysis
4.1. Assessing Filter Mean Trends and Extreme Values with ROC
- Spice model (Sim.) with dashed black line;
- statistical data following analytical model (Calc.) with dark areas and curve.
- the computation of mean, see, respectively, dark red dashed (MC) and light green plain curves (ROC) in Figure 13 for Channel #1;
- the assessment of %—and = 95%—quantiles, with dark red areas (MC) and pink/blue calibers (ROC).
- mean trend: average values are given from the whole dataset (MC reference with 100,000 simulations, dark green dashed curve) and computed from ROC sampling (1000 calculations, red curve), with an excellent agreement between MC and ROC (see Figure 14);
- 5%/95% confidence intervals (CIs) quantiles: The green area (from 100,000 MC samples) agrees well with ROC calibers given by pink and blue dashed curves.
- mean levels errors (green curve) lower than 4% (out of resonances),
- quantiles levels (pink and blue curves) comprised between and 10 percents of error (out of resonances).
- Channel #1 simulations (dark dashed and light dotted red curves, respectively, for MC and ROC techniques): The results represent the coefficient of variation (given as the ratio between standard deviation and mean at each frequency);
- Channel #4 with simulations (dark bold and light plain green curves, respectively, for MC and ROC methods).
4.2. Impact of Variable Sources and Loads: Results from Test Case #2
- with variable serial resistance/self for source and parallel resistance/capacitor for load),
- and still the two Channels #1 and #4 (test board).
- Below 1 MHz, CVs are greater for both Channels #1 and #4 for concerning Test case #2 than for the first configuration (i.e., Test case #1): CVs here vary around 50%;
- CV levels are higher above 1 MHz for Test case #2 comparatively to Test case #1: CVs are between 60% and 250%.
- The excellent agreement between MC mean data (dark red curve) and the averaged trend given by the ROC technique (light green curve).
- The good fit between extreme values (5% and 95% quantiles) given by MC reference and ROC (see, respectively, the dark red area and the pink/blue calibers). While the ROC results exhibit higher discrepancies for high quantiles, the ROC method still offers trustworthy confidence intervals to assess minimum/maximum trends.
4.3. Ranking Most Influential Parameters from Sobol’ Indices
- frequency can be assessed through the root search of function given from Equation (7). Here it was obtained as a formal computation of T–S quantity. This can be achieved both depending on the T-value and independent from prior frequency choice (there is no need to provide high frequency sampling to improve the quality of search, but it requires higher computing time and resources).
- As previously pointed out, Equation (7) is the cornerstone of this work, linking the physical interpretation that can be expected (e.g., influence of inputs, sensitivity analysis, etc.) to the efficient statistical calculations. Relation (10) may be computed following integration schemes (such as accurate Runge–Kutta methods).
- most influential () parameters (green colored): , and inputs, respectively, here are parasitic capacitance of bridge () self, parasitic inductances from upper () and downer () capacitors;
- intermediate () parameters (blue colored): , and inputs;
- least influential () parameters (red colored): – inputs.
- Most influential () parameters (green colored):(EPC of ), (ESL of ), , and inputs;
- Intermediate () parameters (blue colored):, , and inputs;
- Least influential () parameters (red colored):from to inputs.
- the source serial inductance () is a key point up to dB;
- the load parallel capacitance () plays a major role from dB to dB;
- the influence of parasitic elements (, and ) is noticeable with relative impact since normalized coefficients () vary from to , depending on T values;
- other RVs might be withdrawn from the stochastic modeling since they only have an intermediate or lower effect when assumed.
- dB (high filter performance) requires to care about the source variability,
- dB (lower expectations from filter performance) needs to mostly consider the load influence,
- dB dB (intermediate area) exhibits both the importance of source inductance and load capacitance.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
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# RV | Component | Type | Unit | Minimum | Maximum |
---|---|---|---|---|---|
ESL | nH | ||||
ESR | m | 18 | 42 | ||
ESL | nH | ||||
ESR | m | 18 | 42 | ||
EPC | nF | ||||
EPR | k | ||||
Capacitor | F | ||||
Capacitor | F | ||||
Inductor | H | ||||
Resistor | m |
# RV | Component | Type | Unit | Minimum | Maximum |
---|---|---|---|---|---|
ESL | nH | ||||
ESR | m | ||||
ESL | nH | ||||
ESR | m | ||||
EPC | nF | ||||
EPR | k | ||||
Capacitor | F | ||||
Capacitor | F | ||||
Inductor | H | ||||
Resistor | m |
# RV | Component | Type | Unit | Minimum | Maximum |
---|---|---|---|---|---|
Resistor | 0.1 | 10 | |||
Serial inductance | nH | 10 | 100 | ||
Resistor | 100 | 1000 | |||
Parallel capacitor | pF | 10 | 100 |
Rank | Channel #1/ dB | Channel #4/ dB |
---|---|---|
#1 | ||
#2 | ||
#3 | ||
#4 | ||
#5 | ||
#6 | ||
#7 | ||
#8 | ||
#9 | ||
#10 |
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Patier, L.; Lalléchère, S. Space Imaging Sensor Power Supply Filtering: Improving EMC Margin Assessment with Clustering and Sensitivity Analyses. Electronics 2021, 10, 2301. https://doi.org/10.3390/electronics10182301
Patier L, Lalléchère S. Space Imaging Sensor Power Supply Filtering: Improving EMC Margin Assessment with Clustering and Sensitivity Analyses. Electronics. 2021; 10(18):2301. https://doi.org/10.3390/electronics10182301
Chicago/Turabian StylePatier, Laurent, and Sébastien Lalléchère. 2021. "Space Imaging Sensor Power Supply Filtering: Improving EMC Margin Assessment with Clustering and Sensitivity Analyses" Electronics 10, no. 18: 2301. https://doi.org/10.3390/electronics10182301
APA StylePatier, L., & Lalléchère, S. (2021). Space Imaging Sensor Power Supply Filtering: Improving EMC Margin Assessment with Clustering and Sensitivity Analyses. Electronics, 10(18), 2301. https://doi.org/10.3390/electronics10182301