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1.INTRODUCTIONSmallSat missions are playing an increasingly important role in space-based programs. The short development cycles, the low cost and the flexibility make SmallSats a suitable solution for scientific research, instrument concept verification and flight demonstration tasks. Recently, a miniaturized satellite payload1 based on spatial heterodyne spectrometer (SHS) technology2-4 is built up for atmospheric temperature measurements. A CMOS imaging detector was selected and integrated to record the interferogram generated by the spectrometer. The rapid growth of the research and development on CMOS image sensors over last decades offers desirable characteristics for a number of space-based scientific applications, with low power consumption, low cost and high levels of integration compared with conventional CCD detectors5,6. The CMOS detector does not suffer from charge transfer degradation from displacement damage since, unlike the CCD, the pixels can be addressed directly. Nevertheless, the CMOS image sensors, especially the commercial off-the-shelf (COTS) parts, currently lack the competitive performance in detector dark current, noise and non-uniformity compared with customized CCD sensors. Therefore, an evaluation on the selected COTS CMOS imager is much needed for a SmallSat payload. For a space mission the detectors are damaged by cosmic particles or rays, which leads to the performance degradation or even functional failure. Although the radiation hardness technologies of commercial CMOS have been evolving rapidly over the past decades, the performance of typical COTS products is still not guaranteed since this parameter is generally not characterized by the manufacturers7-9. Therefore, the radiation test on the COTS CMOS detector is compulsory in the instrument verification period for the space mission. In this study, a Co-60 Gamma radiation source is used to study the effect of radiation damage on the CMOS image sensors. 2.ELECTRONIC AND DETECTORThe payload readout electronics developed at Central Institute for Engineering, Electronics and Analytics, Electronic Systems (ZEA-2) of Jülich Research Centre (FZJ) consist of two boards: the proximity electronics (PXE) for directly interfacing to the detector ICs and the front-end electronics (FEE) with an embedded controller with ARM cores and FPGA fabric. The FEE serves as the central processing system of the readout system. In addition, a power supply unit (PSU) is integrated to fulfill grounding isolation requirements. The tasks are to handle signals from the control unit (CU) of the satellite bus to start the measurement, to acquire detector data, to provide data pre-processing (data binning) and to transfer data to the CU. A block diagram for the readout electronics is shown in Figure 1. A scientific CMOS (sCMOS) imaging detector builds the baseline for the camera system of the experiment. Current sCMOS sensors have a performance competitive with CCD devices. After investigating several vendors for scientific CMOS sensors, a silicon-based CMOS image sensor from Fairchild Imaging (HWK1910A) is chosen for its low noise and high dynamic range. The quantum efficiency at bout 760 nm, which is the wavelength for the measurements, is about 40%. This sensor has common programmable region of interest (ROI) registers, on-chip digitizers (ADCs) and a digital interface to the readout electronics. The pixel size of the detector is 5μm x 5μm, and the ideal number of pixels 1920 x 1080. The detector main specifications are summarized in Table 1. Table 1.HWK1910A CMOS detector specifications
Among the different operating modes of the detector, the uncalibrated mode and the manual calibration mode are investigated in this study. The switch between these two operating modes can be realized via sending a telecommand to the instrument during operation. For the manual calibration mode, the sensor goes through an internal offset and column gain calibration cycle to compensate for the different performance of the amplifiers and for temperature drift over time. Figure 2 shows the uncalibrated and calibrated detector test images, where the correction of column gain is clearly visible. The manual calibration mode offers correction of the spatial variation of pixel output. 3.DETECTOR PERFORMANCE TESTSDetector dark currentsThe HWK1910A device was tested in a thermal chamber to characterize the temperature dependence of the detector dark current with various integration times. Several temperature sensors were set inside the chamber and on the detector to monitor the detector and environmental temperatures. During the test, the detector dark current was measured between -15°C and +25°C. Figure 3 displays the dark current profile as an ensemble average of the entire array at different temperatures. For these measurements, the detector bias was measured with the shortest integration time and subtracted for each dark frame. The dark current at 20°C is about 2.5 e-/s/pixel, which is a factor of 8 lower than the threshold provided by the manufacturer. Based on the linear integration time dependency and the exponential temperature dependency of the detector dark current, a model was established to predict the detector dark current for each pixel, as shown in the red curve for averaged results on the detector array. According to the fitted parameters, the detector dark current doubles for every 6.4 K temperature change. System gain and readout noiseThe detector system gain usually describes to the conversion ratio from the number of electrons into Analog-Digital Units (ADUs). This parameter can be estimated from the shot noise characteristic associated with the signal intensity, namely the mean-variance method (MVM) or the photon transfer curve10,11. The Poisson distribution of the shot noise gives the shot noise variance σshot2 which is equal to the averaged signal intensity S in ADUs. The total noise variance σnoise2 can therefore be expressed as: where G is the system gain in ADUs/electron and σreadout2 represents the readout noise variance which has zero mean. Accordingly, the linear fit of the total noise variance against the averaged signal intensity S gives the conversion gain G and the offset that corresponds to the readout noise variance. For this measurement a light source was installed inside the thermal chamber. The detector temperature was cooled down below –20°C to minimize the detector dark current. The amount of photons recorded by the detector was controlled by adjusting the integration time. From the linear regression analysis the distribution of the estimated system gain under different integration times was obtained (Figure 4). This estimation indicates that the average conversion ratio is about 2 ADUs/electron and the corresponding readout noise is about 1e-, which are close to the detector specifications provided by the manufacturer. Another method to characterize the detector readout noise is to determine the standard deviation of various read-outs at zero integration time (Figure 5). This method does not require a light source. For the detector analyzed in this study, the median value is approximately 0.9e- on each pixel, which fits to the results from MVM method. The corresponding root mean square (rms) is 3.9e-, which is slightly higher than the given information. System gain and readout noiseThe detector fixed pattern noise (FPN) describes a spatial variation in pixel outputs of an image under uniform illumination conditions. For CMOS detectors that use column amplifiers configuration, the FPN appears as “stripes” on the readout images. The manual calibration mode of the detector allows the correction of this pixel gain variation on the whole detector plane, as shown in Figure 2. This operation is achieved by injecting electrons into detector pixels specifically reserved for this calibration purpose. This calibration mode will change the pixel offsets slightly in each power loop, since this procedure is also bound up with the environmental conditions. The investigation of the pixel offset variation, which is also called the detector fixed pattern, is achieved by running several power loops. The detector integration time was set to be 1ms such that the dark current is negligible for the analysis. During each loop, frames were recorded every 5 s. As illustrated in Figure 6(a), the fixed pattern in loop 1-4 changes slightly, meanwhile the result from the 5th loop shows relative larger deviation than the first 4 loops, which is possibly associated with the environmental temperature at that time. For the instrument radiometric calibration, the detector pixel offsets need to be measured and subtracted each time when the instrument is switched on, simply by taking images at lowest integration time. 4.RADIATION TESTRadiation environment modellingThe ionizing effect in the space radiation environment can cause degradation and failure of electronic devices, especially when using optoelectronic detectors. Basically the radiation effects consist of two parts: the single event effect (SEE) and the total ionizing dose (TID). The SEE induced by high energy particles will result in device logic failure as an instantaneous failure mechanism, whereas the TID will make cumulative long term ionizing damage on the detectors for low earth orbit (LEO) mission due to protons and electrons exposure. These particles and rays create shifts in threshold voltages and leakage currents, therefore causing permanent radiation damage to Silicon devices. The increase of dark current is one of the most critical effects on the detector degradation in space radiation environments. The growth of the CMOS dark current under radiation is mainly caused by the generated interface traps and bulk defects, producing additional surface leakage current and bulk current. The ionizing energy transfer generally leads to an increase of the detector dark currents, whereas the non-ionizing mechanism results in the displacement damage dose (DDD) effect, increasing the dark signal non uniformity (DSNU)12,13. The commercial and industrial components generally do not provide radiation tolerance performance, therefore those devices need to be tested under expected space environmental radiation. The TID accumulated during satellite missions depends on the orbit, the mission duration and the shielding. TID effects can be reduced using radiation hardened devices and shielding. To estimate the reliability of the COTS parts used in our experiment and to determine the required thickness of a radiation shield, the TID was calculated depending on the shielding thickness and different mission scenarios using the SPENVIS tool provided by ESA14. For this estimation, a satellite flying in a sun-synchronous orbit at an altitude of 1000 km is assumed. Mission durations are 3 years and 5 years, respectively. As a worst case scenario, models for the trapped proton and electron fluxes were the Proton model AP-8 at solar minimum and the Electron model AE-8 at solar maximum15. Figure 7 illustrates the SPENVIS output for the accumulated radiation dose for a mission lifetime of 5 years with different Aluminum layer thicknesses. The SHIELDOSE-2 is selected for the ionizing dose model, and the shielding is considered as center of Al spheres14. The trapped electrons, as the dominate source of the TID, are largely reduced by increasing the thickness of the medium, since the electrons have a low penetration depth and are therefore easy to shield. Meanwhile, the decrease of trapped protons are not pronounced. Figure 7.Effective dose vs. aluminum shielding thickness for a 5 years mission from SPENVIS. A sun-synchronous orbit at an altitude of 1000km is assumed. ![]() The TID reaching the electronics becomes inefficiently reduced for aluminum thickness greater than 4 mm. The TID for 3 year and 5 year missions with 3mm shielding are 11.4 krads and 19.4 krads, these values reduce to 2.4 krads and 4.1 krads when the semi-infinite aluminum medium model is defined for the shielding. Therefore, to guarantee a nominal lifetime of 3 years the instrument should be able to survive under 11.4 krads radiation without considering the shielding of the satellite. Radiation testDuring the radiation test, the readout electronics in the instrument were classified in modules, which were irradiated in separate steps with different total doses. Radiation tests were made to assure the functionality of the electronics and the detector for the designed mission lifetime. These tests were performed at the Fraunhofer Institute for Technological Trend Analysis (INT), where the samples were irradiated with Co-60 gamma radiation. The actual received radiation was calculated based on the distance to the radiation source. In this paper we mainly focus on the radiation effect on the detector. Figure 8 shows a photograph taken for the experiment of the radiation test on the CMOS detector. To guarantee the full functionality of the electronics during the detector test, lead blocks were used to protect the remaining parts of the printed circuit board (PCB). The detector was irradiated up to 30 krads under uncalibrated mode, the manual calibration mode was activated from then on. The standalone test of the detector indicates that the detector component worked normally until accumulating 85.25 krads radiation, then all detector pixels became saturated. Figure 8.Radiation test on the detector board, the lead blocks were used to shield other electronics. ![]() The detector was set to record images continuously during the radiation test. Dark current measurements were taken when the radiation source was switched off. Figure 9 illustrates the dark images measured at two different radiation doses. Since the manual calibration mode was switched on after 30 krads irradiation on the detector, the dark current at 30 krads is already quite remarkable. Nevertheless, the detector dark current increases with the increasing radiation dose. In contrast, the “hot pixels” were not significant since the Co-60 gamma radiation generally causes less DDD effect. Figure 10 shows two dark current histograms of the detector for the radiation test, where the long tail of the distribution after radiation is clearly shown. The dark signal after radiation shows a remarkable increase, where the corresponding rms changes from 1538 counts to 3247 counts. 5.CONCLUSIONIn this paper, we described the study of a COTS CMOS image sensor used on a SmallSat payload for atmospheric temperature measurements. Characterization of the detector dark current, readout noise, gain and offset shows that the detector parameters meet the product description provided by the manufacturer. 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