Introduction
Dark matter (DM) [1, 2] remains one of the most compelling mysteries in cosmology and particle physics, as demonstrated by its gravitational effects on visible matter and the cosmic microwave background. Theoretical models suggest that DM was produced through thermal processes in the early universe, with the “freeze-out” mechanism [3] explaining its current observed density and positing a probable mass range from a few MeV to several TeV. Despite extensive research, the specific properties and particle characteristics of DM remain undefined. Experiments such as XENONnT [4], PandaX [5], CDEX [6], LUX-ZEPLIN [7], AMS [8], DAMPE [9], and LHC [10] have narrowed the parameter space for weakly interacting massive particles (WIMPs) [11-17] in the GeV to TeV range; however, these particles remain undetected [18].
The absence of evidence for high-mass DM candidate particles has increased interest in the sub-GeV mass range, presenting significant detection challenges due to the minimal interaction cross-sections of such light particles with ordinary matter. This necessity has driven the development of innovative detection techniques distinct from traditional DM detection methods. Accelerator-based experiments are particularly promising; they leverage high-energy particle collisions to produce and detect dark photons, which are hypothetical mediators between visible and dark matter [19-23]. Facilities such as NA64 at CERN [24], LHC [25], BELLE-II [26], BES-III [27, 28], and the proposed LDMX [30-32] experiments aim to explore these possibilities.
The DarkSHINE experiment [33, 34], designed to operate under a minimal dark-photon model, introduces an innovative approach for detecting these elusive particles. Figure 1 illustrates the conceptual mechanism of dark-photon production via dark bremsstrahlung and its subsequent decay into invisible dark matter, forming the experimental basis for DarkSHINE. This experiment leverages the high-repetition-rate single-electron beam provided by the Shanghai High Repetition-Rate XFEL and Extreme Light Facility (SHINE) [35, 36], optimized for detecting subtle signals indicative of dark photons.
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This study delineates the design principles of an electromagnetic calorimeter (ECAL) for the DarkSHINE experiment, focusing on material selection and structural layout. Through simulations, the ECAL volume was optimized to balance signal efficiency and cost-effectiveness, and the dynamic range of energy measurements in the ECAL channels was examined. Insights from these analyses informed the development of potential triggering strategies for future detectors. To ensure that the simulated detector response closely reflects real detector behavior, a digitization model was implemented, and the energy resolution of the ECAL was analyzed. Furthermore, we evaluated radiation damage in the ECAL region, emphasizing the importance of crystals and silicon sensors capable of maintaining high performance in high-radiation environments.
DarkSHINE experiment and ECAL design
DarkSHINE is a fixed-target experiment designed to study the bremsstrahlung production of dark photons and measure their invisible decay. It uses a high-repetition-rate single-electron beam provided by SHINE and is currently under construction. The beam is expected to reach an energy of 8 GeV and a repetition rate of 10 MHz, corresponding to 3 × 1014 electron-on-target events during the year of the DarkSHINE experiment’s commissioning.
The primary challenge for DarkSHINE is integrating data from various detectors to minimize background contributions while preserving the dark photon signal. Figure 2 illustrates the DarkSHINE detector system, comprising a tungsten target and three subdetectors: a tracker, an ECAL, and a hadronic calorimeter (HCAL). Simulations incorporated a single-electron beam with a 3 cm spatial distribution radius and a maximum non-uniform magnetic field of 1.5 Tesla in the tracker region. The tracker, made up of 13 silicon strip layers, measured the momentum and trajectory of electrons. Seven layers were positioned in front of the target to tag (tagging tracker) to tag the incident electron, and six layers were placed behind the target (recoil tracker). A tungsten target (0.1 X0) was sandwiched between the tagging and recoil trackers. Positioned behind the recoil tracker, the crystal ECAL measures the energy deposited by recoil electrons and photons. Recoil electrons are defined as incident electrons after interaction with or passage through the target. Next, a scintillator-steel sampling HCAL, placed behind the ECAL, captured and vetoed background, particularly neutral hadrons and muons.
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To measure the invisible decay of dark photons, precise measurement of the recoil electron energy after each collision is essential to identify any significant energy loss. The core detector of DarkSHINE, the ECAL, is a homogeneous LYSO crystal calorimeter. LYSO [37-39] was chosen as the crystal material due to its high light yield, which is critical for achieving excellent electromagnetic resolution, and its rapid scintillation decay time (40 ns), which is crucial for managing the exceptionally high event rate encountered. Furthermore, the ECAL’s central region is subject to a significant radiation dose, making radiation resistance an essential property. LYSO demonstrated exceptional durability under high-radiation conditions, making it an optimal choice for the DarkSHINE ECAL.
The structure of the ECAL is illustrated in Fig. 3. The transverse dimensions of ECAL were approximately 52.5 cm×52.5 cm, with a length of about 44 cm along the beam direction, corresponding to approximately 39 radiation lengths. This substantial depth ensures excellent energy containment, allowing the ECAL to absorb nearly all electromagnetic showers and prevent leakage into the HCAL. Preventing such leakage is crucial to avoid the HCAL vetoing dark photon signals. The ECAL volume was determined to balance signal efficiency with crystal cost (Sect. 4). To enhance information collection and improve discrimination of dark photon events, the ECAL was fully segmented. It consisted of 21×21×11 LYSO crystals, each measuring 2.5 cm×2.5 cm×4 cm, covered by ESR, and read out using silicon photomultiplier (SiPMs) [40, 41]. In each layer, the crystals were arranged in a uniform 21×21 grid. To enhance detection efficacy and prevent particles from traversing through gaps, crystals in successive layers were staggered by half the crystal’s transverse dimension. This staggered layout aids in detecting recoil electrons with energy loss and capturing dark photon signals [42, 43].
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Signal and background
Software setup
A Monte Carlo simulation of the ECAL was conducted using the DarkSHINE Software (DSS) framework, built on Geant4 [44, 45]. This simulation included the entire detector setup, encompassing the LYSO crystal cubes, wrappers, silicon sensors, support structures, and additional components such as the tracker and HCAL. This comprehensive configuration served as the reference for ECAL reconstruction, while the primary analysis established the appropriate phase space for ECAL evaluation. The DSS framework facilitated the simulation of all Standard Model background processes involving electron-target interactions, as well as various dark photon processes, and their respective detector responses.
The target was used in a “full simulation” scenario, in which an 8 GeV electron beam impacted the target, as outlined in the experimental design, and the resulting secondary particles passed through all detector components. In addition, an “ECAL-unit simulation” was conducted to isolate the response of a single ECAL unit, allowing for detailed analysis of its behavior and facilitating direct comparison with laboratory test results during the R&D phase. All simulations were conducted using consistent material configurations.
Signal and background
Figure 4 illustrates the background processes accounted for in the DarkSHINE experiment and their relative rates under an 8 GeV electron beam. Typically, incident electrons pass through the target with minimal interaction. Approximately 6.7% of the electrons undergoes hard bremsstrahlung, where bremsstrahlung photons carry more than 4 GeV of energy away from the incident electrons. These photons may then interact with the target or ECAL materials via photon‒nuclear interactions, which occur at relative rates of 2.31 ×10-4 and 1.37 × 10-6, respectively. Occasionally, bremsstrahlung photons may convert into muon pairs, with relative rates of 1.63 × 10-6 in the ECAL and 1.50 × 10-8 in the target. Additionally, these photons frequently produce electron‒positron pairs. Electron-nuclear interactions within the ECAL and target materials also contribute to the background, with relative rates of 3.25 × 10-6 and 5.10 × 10-7, respectively [33].
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When a dark photon is produced during the electron-on-target process, most of the incident energy transfers to it, while the recoiled electron deposits the residual energy in the ECAL. Dark photons subsequently decay into dark matter, leaving no observable signal in the tracker or calorimeter and resulting in significant energy loss in the ECAL. As depicted in Fig. 5, over 75% of events from 1 MeV dark photon signals exhibit energy deposits below 4 GeV in the ECAL. As the dark photon mass increases, it carries more energy away from the electrons, further enhancing the measured energy loss in the ECAL.
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The inclusive process encompasses all potential Standard Model interactions occurring within the detector, weighted by their branching ratios. In comparison to dark photon signals, most events in the inclusive background deposit a substantial portion of their energy in the ECAL, making the total energy measurement in the ECAL a strong criterion on background rejection.
During the inclusive process, hard bremsstrahlung or photon conversion into electron-positron pairs can create electromagnetic showers in the ECAL, leading to significant energy deposition. In contrast, complex processes involving the production of high-energy muon pairs or hadrons generally result in minimal energy deposition in the ECAL and can be effectively filtered out using the tracker and HCAL.
Neutrino-producing background processes, such as Moller scattering (
In summary, the design and function of the ECAL focus on excluding backgrounds that do not involve hard muons or hadrons.
Volume optimization
As the dark photon mass increases, they carry a larger share of the incident electron’s energy, which results in a more significant recoil angle–defined as the angle between the particle momentum direction and the beam axis. Figure 6 illustrates the distribution of recoil angles for particles striking the front surface of the ECAL for both inclusive background events and dark photon signals at different masses. The ECAL spans a cross-sectional area of 52.5 cm×52.5 cm. Inclusive background events predominantly involve electrons that pass through the target and strike near the center of the ECAL, with minor divergences due to the beam’s spread and magnetic deflection. Conversely, signal events with dark photons showed wider recoil angle distributions. Higher-mass dark photons are more likely to produce recoil electrons in the ECAL’s peripheral region, increasing the chance of missing the ECAL altogether. These cases, however, can be detected and vetoed by the HCAL. Increasing the ECAL size could enhance signal detection efficiency but would also involve balancing with cost considerations.
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The signal region of the calorimeter is defined in Table 1. It includes criteria where the total energy deposited in the ECAL is below 2.5 GeV, the total energy in the HCAL is less than 30 MeV, and the maximum energy of a single unit in the HCAL is under 0.1 MeV. This signal region was established to maintain a low background level within 3 × 1014 electron-on-target events. It is derived from a comprehensive analysis of all subdetectors, using specific energy thresholds for the ECAL and other components, along with extrapolation methods to exclude background contributions [33, 47]. The optimization results for the ECAL were evaluated based on signal efficiency, defined as the ratio of the number of events falling within the signal region to the total number of simulated events.
ECAL | HCAL |
---|---|
The ECAL size was optimized in both transverse and longitudinal dimensions, with the longitudinal direction aligned along the beam axis. During this optimization process, the individual crystal dimensions were kept constant at 2.5 cm×2.5 cm×4.0 cm, which was determined based on the maximum density that the electronics can accommodate [48].
First, the transverse dimensions of the ECAL were adjusted while maintaining a constant longitudinal length across the 11 layers. Four distinct calorimeter configurations were simulated. The results presented in Fig. 7(a) indicate that increasing the transverse size of the ECAL leads to enhanced signal efficiency for various dark photon masses. The average signal efficiency corresponding to all mass points for each calorimeter size is summarized in Table 2.
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Number of crystals | Average signal efficiency(%) |
---|---|
14×14×11 | 53.32 |
21×21×11 | 70.78 |
28×28×11 | 75.75 |
35×35×11 | 77.62 |
The width of the ECAL was increased by seven crystal blocks each time. From a design with 14×14×11 crystals to one with 21×21×11 crystals, the ECAL area increased by 2.25 times, resulting in a 17.46% improvement in signal efficiency. However, when the number of crystals per layer reached 35×35, the increase in signal efficiency became marginal. Considering the cost of the crystals, an ECAL with 21×21 crystals is considered appropriate.
The impact of the detector’s longitudinal size on signal efficiency was also investigated. For each volume change, the transverse dimensions of the ECAL were kept constant at 21 × 21 crystals, and two layers were added longitudinally, maintaining a consistent number of crystals. As shown in Table 3, the increase in average signal efficiency begins to plateau at 11 layers. Consequently, 11 longitudinal layers were selected as the final configuration.
Number of crystals | Average signal efficiency(%) |
---|---|
21×21×7 | 52.05 |
21×21×9 | 66.32 |
21×21×11 | 71.52 |
21×21×13 | 74.07 |
21×21×15 | 76.71 |
Overall, an ECAL size of 52.5 cm×52.5 cm×44 cm was chosen, balancing significant signal efficiency with reasonable cost.
Energy distribution
In the fixed-target experiment, incident particles that do not undergo significant energy loss predominantly impact the central area of the ECAL, resulting in substantial energy deposition within the crystals in the central region of the initial layers. Additionally, the energy absorbed by crystals varies considerably across different regions; crystals closer to the edges typically experience minimal energy deposition. To determine the dynamic energy range for future detectors and explore potential triggering methods for the ECAL, energy deposition in crystals from various regions was analyzed.
Energy deposition in different regions
Using the optimized ECAL volume described in Sect. 4, the energy deposition in the crystals for dark photon signals and background processes is shown in Fig. 8. Inclusive background processes typically result in higher energy deposits in the crystals, often up to 4 GeV. In comparison, energy deposition from dark photon signals tends to be slightly lower, with smaller dark photon masses leading to higher energy deposits. A 1 MeV dark photon can deposit up to 3.5 GeV in the crystals, as such dark photons have a low probability of carrying minimal kinetic energy, allowing the recoiling electron to retain most of the incident energy.
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The ECAL was divided into four sections from the center to the periphery (Fig. 9) to study energy deposition in different regions. The number of crystals in each region is listed in Table 4. Region 1 (red) represents the core area of shower development and contains 125 crystals, each measuring 2.5 cm×2.5 cm×4 cm, roughly equivalent to 18 radiation lengths. This region covers the entire beam spot with a radius of 3 cm, and an additional area equivalent to one Molière radius. The energy absorbed by crystals in each of these four regions is shown in Fig. 10. Crystals in the central and near-central regions absorb significantly more energy than those in Regions 3 and 4, which are farther from the shower center and absorb noticeably less energy. For dark photon signals, energy deposition was even lower than that for inclusive background processes. Figure 11 shows that crystals in Region 1, which constitute only 2.6% of the ECAL volume, absorb more than 90% of the energy for inclusive backgrounds.
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Dimension | Region-I | Region-II | Region-III | Region-IV |
---|---|---|---|---|
Transverse-x | 5 | 13 | 21 | 21 |
Transverse-y | 5 | 13 | 21 | 21 |
Longitudinal-z | 5 | 7 | 9 | 2 |
Total | 125 | 1058 | 2786 | 882 |
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Energy limits on channels
The setup of the dynamic energy range is crucial for the accuracy of energy measurements in the ECAL. Typically, a narrower dynamic range results in higher measurement precision. To determine the minimum dynamic range that fulfills the ECAL’s energy measurement requirements, an energy cap was applied to each crystal. This cap simulated the saturation behavior seen in real detectors when the deposited energy exceeded the set limit. If this energy limit was too low, it could lead to an overall reduction in the energy recorded by the ECAL, thereby misidentifying high-energy background events as dark photon signals due to significant energy underestimation. The analysis focused on events characterized by substantial energy losses, assessing how different energy limits influenced the count of events where the total energy measured by the ECAL dropped below 4 GeV.
Figure 12 shows the total energy distribution in the ECAL following the application of various energy limits to the channels. As the energy limit decreased below 3 GeV, a notable decline in the total energy measured by the ECAL was observed, which parallels the saturation effect resulting from an inadequate dynamic range in the detector’s electronics. When the energy limit exceeded 3 GeV, the total energy recorded by the ECAL remained largely unaffected by the imposed limit. To maintain accurate energy measurements within the ECAL, it is essential that the dynamic range of the individual channels does not compromise the total energy recorded. Consequently, as demonstrated in Fig. 12, a dynamic range exceeding 3 GeV is deemed appropriate.
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Table 5 lists the ratios between the number of events with ECAL energies less than 4 GeV and the total number of simulated events. These ratios were derived from background and dark photon signals of varying masses after applying different channel energy limits. As the energy limit decreases, the inclusive background experiences greater energy loss, resulting in an increasing number of cases in which the ECAL energy is less than 4 GeV. The results indicate that a dynamic range of 100 MeV or 500 MeV is insufficient, as these limits exhibit a poor background rejection capability with a statistical sample of one million events. When the energy limit on the channels is set above 500 MeV, nearly all events deposit more than 4 GeV of energy in the ECAL, except for two photon‒muon pair processes and one nuclear process, which can be effectively vetoed by the HCAL. This indicates that very few crystals exhibited energy depositions exceeding 1 GeV, as reflected in the normalized entries shown in Figure 8. Therefore, to ensure effective background rejection, the energy limit should be set to at least 1 GeV.
Energy limit | Inclusive | 1 MeV dark photon (%) | 10 MeV dark photon (%) |
---|---|---|---|
100 MeV | 999967/1 M | 100 | 100 |
500 MeV | 1066/1 M | 90.57 | 96.93 |
1000 MeV | 3/1 M | 76.78 | 91.23 |
2000 MeV | 3/1 M | 76.76 | 89.89 |
3000 MeV | 3/1 M | 76.76 | 89.89 |
4000 MeV | 3/1 M | 76.76 | 89.89 |
6000 MeV | 3/1 M | 76.76 | 89.89 |
8000 MeV | 3/1 M | 76.76 | 89.89 |
Overall, a 4 GeV dynamic energy range is optimal for the DarkSHINE ECAL, as it maintains the accuracy required for energy measurements while ensuring strong background rejection capability. Future detector readout electronics can be designed based on this standard.
Trigger efficiency
In the high-frequency beam environment of DarkSHINE, the majority of events collected by the detector were background events of limited interest. These background events can significantly strain data transmission and storage at the backend. Implementing an online trigger to filter out events that do not match the characteristics of dark photon signals can significantly reduce resource usage. The preliminary trigger design involves summing the energy across selected channels in the ECAL. If the summed energy was less than 4 GeV, the event would be saved. Trigger efficiency is defined as the ratio of the number of triggered events, where the summed energy in the trigger region is less than 4 GeV, to the total number of events. Table 6 lists the trigger efficiencies across the different trigger regions.
Trigger region | Inclusive | 1 MeV dark photon (%) | 10 MeV dark photon (%) |
---|---|---|---|
No trigger | 1 M/1 M | 100 | 100 |
I | 746/1 M | 77.57 | 91.58 |
I+II | 37/1 M | 74.05 | 90.03 |
I+II+III | 6/1 M | 73.78 | 89.9 |
I+II+III+IV | 3/1 M | 73.75 | 89.9 |
In Table 6, a 4 GeV trigger effectively rejects most of the inclusive background, with minimal losses for dark photon signals, particularly those with larger masses. By using only 125 crystals in Region- 1, over 99.9% of inclusive background events can be filtered out, thereby conserving resources such as bandwidth and storage. When the summed energy from all crystals in the ECAL is used for triggering, nearly 100% efficiency can be achieved, with only a few rare background processes exhibiting exceptions. This trigger strategy demonstrates significant promise in reducing background events while having a negligible impact on dark photon signals, even when relying solely on the channels in Region 1. This study serves as a critical reference for the electronic design of future detectors.
Energy Resolution
Energy Digitization
Accurate simulation of the detector response requires a precise description of digitization effects. Digitization introduces realistic aspects to simulation results, replicating actual detector behavior and enhancing comparability with real experimental conditions. The energy obtained directly from Geant4, referred to as the truth energy, reflects the ideal energy deposition of a particle in a perfect detection scenario, devoid of detector effects or measurement errors. Thus, digitization provides a more realistic portrayal of detector performance and supports design validation [49, 50].
The primary goal of energy digitization is to parameterize the behavior of each component related to energy measurement, incorporating smearing effects derived from preliminary experiments. For the DarkSHINE ECAL, the energy digitization process consists of three main components: scintillation digitization, SiPM digitization, and analog-to-digital converter (ADC) digitization. These components correspond to the light emission and decay of the scintillator, the SiPM response, and the behavior of the readout electronics, respectively, all based on preliminary experimental measurements.
Scintillation digitization
The first step in the digitization process is scintillation digitization. This phase involves sampling the fluctuations that may occur during the generation and attenuation of scintillation light. We established an intrinsic light yield of 30,000 photons per MeV for the LYSO crystal scintillator, assuming a 10% fluctuation across all scintillators. The scintillation light, which is proportional to the energy deposited in the crystal, is modeled to follow a Poisson distribution. During its propagation within the crystal, scintillation light experiences attenuation, which is influenced by the photon transport length and the photon detection efficiency (PDE) of the SiPM. The measured light yield is crucial for determining the extent of light loss during both propagation and detection. Although the measured light yields for all crystal-SiPM units show fluctuations, they can be calibrated to a certain extent, with an assumed accuracy of 1%. The parameters used in this step are summarized in Table 7.
Scintillator | Light yield (intrinsic) | Light yield fluctuation |
---|---|---|
LYSO | 30000 ph/MeV | 10% |
Light yield calibration accuracy | Light yield (measured) | |
1% | 150 p.e./MeV |
SiPM digitization
For SiPM digitization, a toy Monte Carlo model [51] was used to simulate the response of the SiPM to scintillation light from a LYSO crystal. This model was specifically designed to describe the relationship between the number of photons detected by the SiPM and the number of incident photons. The simulation was based on the HAMAMATSU S14160-3010PS datasheet [52], which features a sensitive area of 3 mm× 3 mm, 10 μm pixels, and nearly 90,000 pixels in total, with a LYSO crystal measuring 2.5 cm×2.5 cm×4 cm. The model accounts for the PDE, pixel density, pixel recovery, and crosstalk effects of the SiPM, as well as the scintillation decay time, transmittance, emission spectrum, and absorption spectrum of the LYSO crystal. The parameters used in SiPM digitization are listed in Table 8.
Active area (mm2) | Pixel pitch (μm) | Pixel number |
---|---|---|
3.0×3.0 | 10 | 89984 |
PDE (λ=λp) | Fill factor | Gain fluctuation |
18% | 31% | 10% |
In Fig. 13, Nfired represents the number of photons detected by the SiPM, ϵ denotes the PDE of the SiPM, and NIn represents the number of photons incident on the SiPM. The SiPM exhibits a nearly linear response when the effective photon count, calculated as the product of the PDE (ϵ) and the number of incident photons (NIn), is less than 10,000. As the effective photon count increases, the response gradually deviates from linearity and approaches saturation. A formula from [53] was employed to fit the response of the SiPM, aiding in modeling its behavior for varying numbers of incident photons and providing a means to correct for saturation effects.
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In the SiPM digitization, the number of photoelectrons from the scintillation digitization was used as the input for the fitting function shown in Fig. 13, resulting in a response that includes the nonlinear effects of the SiPM. The fluctuations during this process can also be estimated, approximately proportional to the square root of the effective photon count. Furthermore, the inverse of this fitting function can be applied to correct the nonlinear response of the SiPM; however, this correction inevitably reintroduces fluctuations [54, 55].
ADC digitization
The behavior of the readout electronics was simulated using an ADC digitization process. Table 9 lists the parameters used in this digitization. We assumed that the charge produced by the SiPM is recorded by a 12-bit multichannel analyzer with 4096 ADC counts. Gain is defined as the number of ADC count outputs per photoelectron signal. Three gain modes expand the dynamic range of energy measurements: high gain, medium gain, and low gain. The dynamic energy range for high gain is approximately 0–2.7 MeV, primarily designed for energy calibration using radioactive sources. The maximum energy measured by the designed electronics is approximately 5461 MeV, which exceeds the 4 GeV result presented in Sect. 5. This increase is attributed to a series of smearing effects during digitization that can yield energies greater than the original values. In the high- and medium-gain modes, when the ADC exceeds 4000, it automatically switches to the next gain level. A 3-ADC DAQ noise was set for each gain mode to represent the intrinsic noise. The SiPM noise was set to 1 ADC in high-gain mode and varied with the gain. The digitization model characterizes the SiPM noise as the average dark noise present in each event waveform, accounting for the scintillation decay time of LYSO and the dark count rate of the SiPM. Additionally, a calibration accuracy of 1% was assumed for photoelectron measurements.
Modes | Gain | ADC/p.e. | Charge calibration accuracy (%) |
---|---|---|---|
High gain | ×2000 | 10 | 1 |
Medium gain | ×40 | 0.2 | 1 |
Low gain | ×1 | 0.005 | 1 |
Single channel performance
After digitization, the ideal energy deposited in the crystal within Geant4 was transformed into a signal that more accurately represented the actual response of the detector. The Equivalent Noise Energy (ENE) for the electronics of the single-channel digitization is shown in Figure 14(a). The ENE was calculated using the following formula:
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In Fig. 14(a), the three distinct ENE regions correspond to the different gain modes. Since ENE represents electronic noise and is independent of the input signal, it remains constant across the energy ranges covered by each electronic gain. However, at the transition points between these ranges, the ENE exhibits jumps corresponding to the changes in gain, as do the parameters Noise and ADCp.e..
The single-channel energy resolution, after incorporating the three digitization effects, is shown in Fig. 14(b). We individually simulated the digitization process for each component to obtain its respective resolution, followed by a simulation of the combined process to determine the overall resolution. Scintillation digitization involves Poisson sampling based on the intrinsic light yield of the LYSO crystal, along with a series of Gaussian samplings. Consequently, this component of the energy resolution decreases with increasing incident energy. However, due to the high intrinsic light yield of the crystal, this change is not significantly noticeable in Fig. 14(b); instead, it is dominated by the constant term introduced by Gaussian sampling, reflecting the calibration accuracy. The resolution of SiPM digitization also decreases with increasing energy. However, because statistical sampling is based on the number of detected photoelectrons—significantly lower than the number of generated scintillation photons due to attenuation and the PDE of the SiPM—the resolution of SiPM digitization is worse than that of scintillation digitization. Moreover, applying a nonlinearity correction further degrades the resolution, as the correction process introduces additional fluctuations. For ADC digitization, the energy resolution shows two jumps at 5 MeV and 500 MeV, attributed to an increase in ENE due to gain switching. Additionally, a constant term appeared in the high-energy region, reflecting the calibration accuracy assumed in the model. Overall, at lower energies (less than 100 MeV), the resolution of SiPM digitization was the main contributor. At higher energies, the contributions from scintillation digitization and ADC digitization became more significant.
The energy resolutions presented in Fig. 14(b) were derived from the parameters listed in Tables 7, 8 and 9, which correspond to preliminary experimental measurements. Optimizing the LYSO‒SiPM units, such as improving light-collection efficiency to achieve a larger light output, could enhance channel resolution.
ECAL performance
The performance of the full detector was determined by applying digitization to each channel. Figure 15 shows the energy resolution and containment of the ECAL. Here, ETruth denotes the energy of the incident electrons. In the simulation, the ECAL consists of a grid of 21×21×11 LYSO crystals, each with a volume of 2.5 cm×2.5 cm×4 cm, consistent with the results presented in Sect. 4. Targets and other detectors were excluded from this assessment. The incident particles were electrons with energies ranging from 1 GeV to 8 GeV, impacting the front face of the ECAL within a circular area of 3 cm radius.
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The energy resolution is plotted at the top of Fig. 15. After digitization, the statistical term of the energy resolution of the ECAL remained better than 2% due to the high intrinsic light yield of the LYSO crystal. This high-energy resolution allows for more precise measurements of recoil electron energy and enhances the reliability of distinguishing between signal and background. The overall energy resolution of the ECAL is typically better than that of a single channel (Fig. 14(b)) due to statistical averaging, where uncertainties from individual channels tend to cancel out, and energy sharing across multiple channels reduces the impact of measurement errors. Additionally, variations in the responses of different channels are compensated for when combined, thereby improving the overall resolution.
The bottom part of Fig. 15 shows the energy containment of the ECAL, defined as the ratio of the energy deposited in the ECAL to the incident energy. The energy containment was less than 100% mainly because a small portion of the energy was deposited in passive materials outside the crystals, such as reflective films, PCBs, and support structures, which could not be detected.
The performance of the ECAL is influenced by the digitization model, which is based on preliminary experimental results from a specific setup. Optimizing the detector configuration can alter the performance; however, the key objective is to develop a tool that accurately evaluates the performance of a detector, bringing it closer to that of a real detector.
Radiation damage
Given the high-energy and high-frequency beam environment, the ECAL, particularly its central region, is subjected to significant radiation doses that may degrade its performance. Therefore, evaluating radiation damage to the ECAL is essential, with a focus on ionizing energy loss in the crystals and non-ionizing energy loss causing damage to the silicon sensors. Simulations conducted in Geant4 estimated the radiation damage to the crystals and silicon sensors under conditions corresponding to 3×1014 electron-on-target events, which represents one year of operation at a repetition rate of 10 MHz.
Radiation damage to the crystals primarily results from the loss of ionizing energy from incident particles, which is evaluated using the Total Ionizing Dose (TID). The TID of a crystal is defined as the ionizing energy absorbed per unit mass. The average ionizing energy loss absorbed by each crystal in the ECAL was calculated based on one million electron-on-target events. This average value was then multiplied by 3×1014 to estimate the TID for each crystal after one year of operation. The maximum TID absorbed by the crystals was approximately 107 rad (Fig. 16(a)). Most inorganic scintillators commonly used in high-energy physics detectors, such as CSI, BGO, and PWO, experience significant light yield loss after exposure to such doses. However, LYSO exhibits only a slight reduction in light yield [56], meeting the radiation resistance requirements of the DarkSHINE ECAL.
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Radiation damage to silicon sensors primarily results from Non-Ionizing Energy Loss (NIEL), which is typically expressed as an equivalent neutron flux of 1 MeV. To determine the neutron flux on each sensor, the average NIEL per event for each sensor was first calculated through simulation, referred to as E1. Next, the average NIEL for a 1 MeV neutron passing through a single sensor was simulated as E2. The ratio E1/E2 then provides the equivalent 1 MeV neutron flux for each sensor. In the DarkSHINE ECAL, the equivalent 1 MeV neutron flux on silicon sensors in the most irradiated area is approximately 1013 per square centimeter (Fig. 16(b)). Such radiation level can cause the dark current of typical sensors to increase by several orders of magnitude, rendering them unusable. Therefore, silicon sensors with high radiation resistance are required for our experiments [57-59].
Conclusion
This paper presents the design and optimization of a LYSO crystal ECAL for the DarkSHINE experiment, which aims to detect dark photons as potential candidates for dark force mediators. Comprehensive simulations were conducted to optimize the structure of the ECAL and evaluate its key performance metrics.
The final ECAL design consists of 21×21×11 LYSO crystals, each measuring 2.5 cm×2.5 cm×4 cm, arranged in a staggered configuration to enhance detection efficiency. Both the transverse and longitudinal dimensions of the ECAL were optimized to maximize signal collection while maintaining cost efficiency. A dynamic energy range of 4 GeV was established for each channel to ensure accurate energy measurements without saturation, crucial for background rejection and precise signal detection.
A dedicated digitization model was developed to parameterize the scintillation, SiPM, and ADC behaviors, providing a realistic representation of the detector’s performance. This model enabled a detailed analysis of the energy resolution and containment of the ECAL, demonstrating that the statistical term of the energy resolution can achieve better than 2% accuracy due to the high intrinsic light yield of the LYSO crystals.
Radiation damage was thoroughly assessed, estimating the TID absorbed by the crystals and the NIEL in the silicon sensors for one year of operation at a 10 MHz repetition rate. Due to its minimal light-yield reduction under high radiation doses, LYSO crystal is identified as an ideal scintillator material for the DarkSHINE experiment. In addition, the selected silicon sensors for the ECAL must exhibit high resistance to radiation-induced damage, which is critical for maintaining detector performance in the high-radiation environment anticipated for the experiment.
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