State-of-the-Art Mobile Radiation Detection Systems for Different Scenarios
Abstract
:1. Introduction
2. Scenarios
- RN accidents and emergencies (hereafter designated scenario A).
- Illicit trafficking of SNM and radioactive materials (hereafter designated scenario B).
- Nuclear, accelerator, targets, and irradiation facilities (hereafter designated scenario C).
- Detection, monitoring, and identification of NORM (hereafter designated scenario D).
2.1. Radiological and Nuclear Accidents and Emergencies—Scenario A
2.2. Illicit Trafficking of SNM and Radioactive Materials—Scenario B
2.3. Nuclear, Accelerator, Targets, and Irradiation Facilities—Scenario C
2.4. Detection, Monitoring, and Identification of NORM—Scenario D
3. Mobile Platforms
3.1. Ground-Based Platforms
3.1.1. Manned Ground Vehicles
3.1.2. Unmanned Ground Vehicles
3.1.3. Wheeled Robots
3.1.4. Non-Wheeled/Bio-Inspired Robots
- Quadruped robots—can carry significant payload and may cross terrain with loose gravel or grass, as well as climb/descend stairs. Some examples are the SPOT robot from Boston Dynamics (up to 14 kg payload) [50], the ANYmal from ANYbotics (Figure 2a) [51], and the models Laikago/Aliengo/A1 from Unitree [52].
- Multi-legged robots—compared to quadruped robots, they have enhanced stability to walk in difficult and rough terrain. Examples of these robots are the small DLR Crawler from the Institute of Robotics and Mechatronics (Figure 2b) [53]; the Lauron series from FZI Research Center for Information Technology [54], which has adaptable behavior-based control and can also use the two front legs for manipulation purposes; and PhantomX AX Metal Hexapod MK-III from Trossen Robotics (Figure 2c) [55].
3.2. Underwater Platforms
3.3. Air-Based Platforms
3.3.1. Manned Aircrafts
3.3.2. Unmanned Aerial Vehicle
3.4. Challenges and Research
- Communications [15,80]—use of payloads, like cameras (electro optic multi or hyperspectral cameras), light detection and ranging (LiDAR), and micro radio detection and ranging (RADAR), transmits high data volume and difficulties may arise due to limited bandwidth and possible interference or failure, particularly in operations "beyond line of sight". The latter may require separate frequency band or the use of satellite communications, which have higher latency, operational costs, and reliability issues. The requirements of higher bandwidth and secure communications are of special concern for robots that are based on distributed systems.
- Autonomous vs semi-autonomous—currently, robots need a high degree of human supervision and control, particularly in urban areas [80]. Due to low altitude flights (0.3–40 m) and proximity to urban structures (1.5 m) new challenges arise in vehicle and navigational autonomy. In such environments, five autonomous navigational capabilities must be considered: scan, obstacle avoidance, contour following, environment-aware return to home, and return to highest reading. In addition, the vicinity of buildings and other structures decreases the GPS satellite coverage. Therefore, autonomous capabilities should have the goal to increase the human skills, not to replace them, highlighting the human-robot teaming [69]. For indoor environments, GPS signal is not available.
- Data-to-decision process—improvement is needed in autonomous data analysis (visual and radiation data) for prompt use by mission commanders [69].
- Environmental sensors [80]—fast, cheap, and reliable sensors and associated electronics for real-time response are needed.
- Weather conditions—in most cases, the operation of unmanned systems, particularly air-based platforms, are limited by adverse weather conditions (e.g., precipitation, wind, fog, haze, and pollution). The data collected by the sensors, the communications, and navigation systems might also be affected [15].
- Regulatory restrictions—safety regulations and operational procedures are necessary to avoid collisions of drones with ground obstacles (people and structures) and other aircrafts [15].
- Radiation damage [44,48,81]—when exposed to high radiation fields, the platform’s operational life is limited. This is due to microscopic damage caused by the radiation interaction with the platform materials. Therefore, it is important to predict the radiation damage in the platform materials and sensors to accomplish the planned mission tasks. Three ways are available to reduce the effects of radiation in critical components: increase the distance to source, reduce time exposure, and/or using shielding materials.
- Noise—low altitude and various UAVs might cause a significant level of annoyance (e.g., propellers rotation of a multi-rotor or airframe vibrations). Research may fall on both drone design (reducing the noise source) and flight paths [15].
- Ducted fan drones—the ducted fan can produce more thrust than a open propeller with less power. This system protects the propellers from obstacles keeping also safe the surrounding people. Due to its inherent stability their use is being considered in radiological inspections [82]. A commercially available system is the platform AVID EDF-8 [83], which has a compact size (soccer-ball) and can navigate both indoors and in outdoor environments, particularly into narrow spaces. With a maximum payload of 0.45 kg can have an endurance up to 30 min.
- Bio-inspired robots—possible use of humanoid robots in nuclear power plants [44], an example is the research platform Atlas from Boston Dynamics [50], use of snake-like robots (Figure 5b) [84] as a sensing device for the inspection of the piping system of a nuclear power facility (research is needed in modular systems), and the use of flapping wing micro air vehicles for surveillance (e.g., homeland security) and monitoring missions [85].
- Cooperation between unmanned vehicles—Liu et al. [86] proposed an UAV which carries small ground robots to be deployed (e.g., by using parachutes and separation device modules) in the disaster area to collect detailed information. This way the ground robots can overcome possible obstacles and use the UAV as a communication relay to the ground control station (GCS).
- Cooperative navigation—for example, the use of a UGV to help improve positioning of a UAV in a GNSS-challenged environment [88].
- Computer vision [44]—improvements will help navigation and search algorithms to be more efficient.
- Robot learning and on board computing [44]—by using artificial intelligence and data fusion, robots might need minimum training to perform multiple tasks (e.g., deal with unwanted situations).
- Radiation damage—search for robot new constituent materials in order to protect the electronic devices [44]. Kazemeini et al. [81] studied the radiation damage of gamma-rays and neutron particles in electronic parts of a hexapod robotic platforms. A Monte Carlo transport code FLUKA was used to calculate the displacements per atom (DPA). Neutrons caused greater damage than photons and higher values of DPA/particle were obtained for silicon and copper parts of the actuators. To increase the operational life of the platform, different combinations of shielding (low and high atomic number materials) around the actuators were analyzed in order to have a trade-off between the applied shielding (payload) and the operational capabilities of the platform to accomplish the mission in the required time.
4. Mobile Radiation Detection Systems
4.1. Recent Advancements in Radiation Detection and Source Search Algorithms
4.2. Radiation Detection and Gamma Spectrometry
4.2.1. Ground Survey
4.2.2. Airborne Survey
- Mid-sized Ranger aircraft (Figure 9b)—with an autonomy of 5 h and flight speeds from 100–220 km/h, a maximum take-off weight (MTOW) of 270 kg, and a payload capacity of 40 kg. In this platform, a GM counter for external dose rate monitoring was installed, a 15.24 × 10.16 (cm) NaI(Tl) scintillation detector used for radioactive plume localization, and a 5 × 5 × 5 mm3 CZT detector housed inside the sampling unit (this detector also accounts for the possible saturation of the large NaI scintillator).
- Patria MASS mini-UAV (Figure 9c)—with an autonomy of 1 h at cruise speed of 60 km/h and an MTOW of 3 kg, it can transport payloads up to 0.5 kg. A cylindrical CsI detector with 38 mm (diameter) × 13 mm (length) crystal was used in the fuselage, which revealed a poor energy resolution (12% at 662 keV), and a radioactive particle air sampler was mounted above the aircraft.
4.3. Gamma Imaging
4.3.1. Compton Cameras
4.3.2. Coded-Aperture Cameras
4.3.3. Pinhole Gamma Camera
4.4. Combination of Neutron and Gamma Detection Systems
4.5. Dual Particle Imaging Systems
4.6. Challenges and Research
- Integration of contextual sensors based on ground-penetrating RADARs (GPR) in radiation imagers [229]—normally, the contextual sensors used to characterize the distribution of radiation sources are based on visual sensors. However, in decommissioning tasks, it is necessary to check the origin of the radiation deep inside materials, as is the case of contaminated pipelines which are underground or inside concrete, or the ingress of radioactive contaminants in concrete. Therefore, to improve the 3D localization of the radiation source in depth, it is important to develop 3D reconstruction algorithms based on the fused data of a gamma imager and a GPR.
- Environmental factors—weather conditions may be difficult and influence the radiation measurements. Urban areas are complex radiation environments (e.g., different structure materials) and pose many challenges in terms of vehicles access, shielding, and potential for concealment of sources, communications, etc. [9,126].
- Use of gamma cameras coupled to small UAVs [187]—these platforms are extremely maneuverable and can be used for autonomous source localization; however, some improvements are necessary in the development of compact and lightweight gamma cameras, reduction of the acquisition times, and image compensation due to the movement of the source or detection platform, while acquiring the gamma image [230].
- Detection system change—normally, radiation detection systems are expensive, and there is a reluctance in changing them by new ones (using emerging technologies). In some cases, both types of equipment (the old and the new one) are used in parallel. Therefore, in order to keep using the old equipment, its important to consider the data transmission methods, data formats, and analysis algorithms [12].
- Remote expert support (reach-back)—the remote analysis capability allows each detection instrument not to include all the functionalities. The information may be sent to a remote server that, in turn, is analyzed by an expert [12].
- Network of detection systems—the increasing requirements of data storage or data transfer between detection units and a reach-back center (e.g., for secondary analysis) may be obstructed by cyber-attack or equipment/connection lost. Therefore, a fast, reliable, and secure network connection with sufficient bandwidth is necessary [9,12].
- Interoperability between detection systems—the data formats must be standardized and, at the same time, flexible for sending diversified information. For homeland security scenarios, there are specific standards for data formats (see Section 2.2) [9,12].
- Activity estimation of radioactive sources—this can be challenging for mobile detection systems since, usually, the geometry is unknown; for example, there is no a priori knowledge of the shielding material between the detector and the source [12].
- List-mode data acquisition—this feature consists of recording the output data of a given detector. Timestamped list-mode allows the automatic comparison of the outputs of different detectors, for example, to reject false alarms and for source localization. However, difficulties may appear when synchronization of mobile systems is necessary with high accuracy (e.g., fast detectors) [12].
- Use of multiple UAVs for the detection and localization of source(s), for example, by using plastic scintillators (poor energy resolution but cheaper)—the source identification could be done afterwards using a NaI system or other inorganic scintillation detector [89]. Other studies suggest the use of energy windowing to distinguish SNM from NORM [231] or by using deconvolution methods of the spectrum acquired by plastic scintillators [12]. These scintillators can also be loaded with heavy elements (e.g., bismuth) to increase the photopeak efficiency; however, this decrease the light yield [232].
- Detection materials improvement for mobile applications—research is necessary to improve the performance of the detection systems available and find new ones. An example is the fast-growing development of halide perovskite radiation detectors (e.g., halide lead perovskite). These semiconductors present some advantages as their low cost, room temperature operation, high stopping power, defect-tolerance, and high energy resolution compared to NaI(Tl) scintillator, which makes then a promising candidate in X-ray imaging and gamma-ray spectroscopy. Research is still necessary to improve their characteristics, e.g., sensitivity, dark current density, resistivity, and environmental stability (to heat and moisture) [233].
5. Results and Discussion
- Ground-based platforms, as cars, vans or trucks are normally chosen due to their greater payload capacity and autonomy. However, they can only move through the existent road network, which may present obstacles (e.g., post-disaster scenario). Handheld or backpack equipment allow access to difficult places and to have an excellent spatial resolution. The UGVs allow operation in extreme situations where radiological risks are unknown or too high to be done by humans. Issues, such as communication problems, radiation tolerance, and obstacles and terrain limitations, were reported.
- Underwater platforms are currently used to explore inactive mines (flooded tunnels or lacks) to obtain topographic, geological, and mineralogical information. Since these sites have many metallic and industrial products, their use in the future to assess in situ the radiation levels in samples must be equacionated. Small UUVs are used in the visual inspection and non-destructive evaluation of an NPP (e.g., pressure vessels or other water-filed infrastructures).
- Air-based platforms. Manned fixed-wing aircrafts allow very large area coverage, great payload capability, faster deployments, and surveys. Manned helicopters have the advantage of VTOL and loitering features, i.e., can substantially reduce their speed or even hover on top of a given area. However, both manned air-based platforms are limited to a minimum flight altitude (safety altitude), below which they cannot fly. Moreover, when radiation levels are too high, the radiological risk to the crews may not allow the measurements. Unmanned fixed-wing aircrafts can also be used to cover large areas and perform fast deployments without putting humans at risk. Despite the fact that unmanned helicopters have lower speed compared to fixed-wing counterpart, they allow VTOL and loitering, which allows lower altitude measurements (higher spatial resolution). Multi-rotors also feature VTOL and loitering capability, allow greater spatial resolution (can fly at 1 m AGL if necessary), and are easier to operate. However, it is the most limited platform in terms of payload and autonomy.
- LaBr3 is essentially used in the scenarios A and C (high dose rates scenarios) because of its fast response, good photoelectron yield (compared to the traditional NaI), and good energy resolution. For scenario B and D (low dose rates), the use of this detector is limited due to the crystal self activity (La-138), which can superimpose the natural background counts (particularly the NORM K-40).
- BGO detectors can be used in situations where good counting efficiency and mechanical characteristics are necessary, in detriment of energy resolution.
- The availability of larger area SiPM, and the fact that these photosensors are smaller, lower power, and lighter than the traditional PMT-based scintillation detectors, made possible the use of CsI(Tl) and LaBr3 scintillation crystals in small unmanned vehicles and as Personal gamma spectrometer, PRD, or handheld equipment. The Ce:GAGG scintillator coupled to SiPM was also used as a Personal gamma spectrometer.
- CZT detectors were used in scenarios A, B, and D. Despite the fact that they can be used in small UAVs (multi-rotors), due to efficiency limitation related to the small crystal volumes available, it becomes necessary to fly at very low altitudes (1–15 m) and speed (<1.5 m/s) in order to detect hotspots or contaminated areas in low dose rates scenarios (B and D). This may be impracticable due to ground obstacles (e.g., tall vegetation).
- CsI(Tl) scintillators are used in scenarios A and B due to their reasonable resolution and good mechanical and chemical properties (slightly hygroscopic). It is a light-weight scintillator solution.
- HPGe semiconductors are heavy and high energy consumption detection system (need cooling system); however, due to their excellent energy resolution and high efficiency, they are used in mobile platforms with greater payload capacity as a van (with or without shield) or a manned airplane. They were also used as a backpack system; however, its 25 kg weight is a limiting factor.
- Compton camera. Since Compton cameras do not use collimator, they are lighter and can be used in unmanned helicopters, multi-rotors, crawler robot, or even as handheld equipment. For these mobile platforms, the scatter and absorber scintillation crystals used were the Ce:GAGG coupled to SiPM and APDs or to MPPC, which allowed compact and lightweight gamma cameras. The choice of Ce:GAGG crystals is related to its low cost (compared to NaI and LaBr3:Ce), acceptable energy resolution, high light yield, and good Compton efficiency. The first portable Si/CdTe Compton camera was also developed, with very good energy resolution; however, this system weighs 10 kg and needs an exposure time of 30 min. Normally, the Compton gamma image is obtained when the platform is stopped or hovering; however, it is also possible to perform radiation imaging while the platform is moving by knowing its position and posture of the camera for each detection (extracting the Compton cones direction). Since the gamma image reconstruction can take minutes and since multi-rotors have very low autonomy (16 min), the importance of developing a 4 Compton camera to obtain the contamination image inside a building is highlighted. For the source searching and mapping on unknown environments or to localize sources inside objects, a 3D Compton imaging system was also developed, which used scene data fusion of the gamma image with a 3D scene reconstruction using a Kinect sensor, a photogrammetry software, or a 3D-LiDAR. SLAM techniques are used to obtain the position and posture of the imaging system. In addition to the use of Ce:GAGG crystals for VCI, the use of HPGe detectors and a high-efficiency multimode imager, which allows both coded-aperture and Compton imaging modes, is also reported and described. Despite the fact that VCI are being implemented in handheld equipment and in mobile platforms, improvements are still necessary in the 3D scene data fusion, an important tool not only for detection and mapping gamma sources but also other particles (e.g., neutrons).
- Coded-aperture camera. To detect weak sources at larger distances, as is the case of scenario B, larger gamma cameras were developed to be carried in a cargo trailer (SORDS-3D) or by a van (SORIS). While the former used coded-aperture camera composed by CsI(Na) scintillation crystals and a passive mask, the latter used NaI crystals and an active mask used not only to attenuate the incident gamma-ray but also for spectroscopy purpose (increased efficiency). The use of a lightweight coded-aperture gamma camera (GAMPIX) coupled to a multi-rotor is also referred to in the literature.
- Pinhole camera. Since pinhole cameras are heavy and low efficiency equipment (thick collimation system), they have few applicability to mobile platforms.
6. Conclusions
- Scenario A: is related to RN accidents and emergencies due to incidental or intentional release of radioactivity in the environment, as is the case of a nuclear power fission reactor accident or in the event of a malicious act, respectively. Includes emergency decommissioning (post-accident) of nuclear facilities and long-term monitoring. In this scenario, one might be interested in detecting, localize, quantify, and identify the source(s) or just map the radionuclide distribution (e.g., comparison over time of the effectiveness of remediation processes for a given area).
- Scenario B: the goal is to detect, localize, and identify SNM and radioactive materials as a consequence of illicit trafficking or inadvertent movement. In this scenario, the detector-source distance can be considerable (up to 100 m), and the SNM are weak gamma sources that can be easily shielded or masked (medical isotopes and NORMs) must be considered. Both gamma and neutron detection systems (some SNM radioisotopes are neutron emitters—spontaneous fission) are normally considered for this scenario. Active techniques may also be needed to detect SNM, particularly highly enriched uranium.
- Scenario C: related to the detection and localization of leaks of radioactive materials and quantification of the levels of radioactivity (e.g., generated by activation products), when performing the inspection, maintenance or repair of nuclear, accelerator, targets, and irradiation facilities. It also includes normal decommissioning and long-term monitoring.
- Scenario D: involves the detection, localization, monitoring, and quantification of NORM concentrations and their identification. Since NORM distribution may vary due to variation of mineral content in soils or due to human activities (e.g., ore extraction), it is generally necessary to map a region of interest and monitor the radioactivity levels.
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
ADS | Accelerator Driven System |
AGL | Above Ground Level |
ANSI | American National Standards Institute |
APD | Avalanche PhotoDiode |
APS | Advanced Processor for Scintillators |
BGO | Bismuth Germanate |
Ce:GAGG | Ce-doped Gd-Al-Ga-garnet |
CIP | Critical Infrastructure Protection |
CMOS | Complementary Metal-Oxide Semiconductor |
CLLB | Cs2LiLaBr6(Ce) |
CLLC | Cs2LiLaCl6(Ce) |
CLYC | Cs2LiYCl6:Ce3+ |
COTS | Commercial Off-the-shelf |
CZT | Cadmium Zinc Telluride |
DPA | Displacements Per Atom |
FDNPP | Fukushima Daiichi Nuclear Power Plant |
FLO | Front-Line Officer |
FND | Fast Neutron Detector |
FOV | Field Of View |
FWHM | Full width at half-maximum |
GCS | Ground Control Station |
GM | Geiger–Muller |
GNSS | Global Navigation Satellite System |
GPR | Ground-Penetrating Radar |
GPS | Global Positioning System |
HDPE | High Dense PolyEthylene |
HPGe | High purity Germanium |
IAEA | International Atomic Energy Agency |
IEC | International Electrotechnical Commission |
INS | Inertial Navigation System |
LiDAR | Light Detection And Ranging |
LYSO(Ce) | Cerium-doped Lutetium-yttrium oxyorthoilicate |
MAV | Micro Air Vehicle |
MARIA | Mobile Application for Radiation Intensity Assessment |
MDA | Minimum Detectable Activity |
MCDM | Multi-Criteria Decision Making |
MCSR | Mobile Cloud System for Rad Monitoring |
ML-EM | Maximum Likelihood Expectation Maximization |
MPPC | MultiPixel Photon Counter |
MRD | Mobile Radiation Detection |
MRI | Magnetic Resonance Imaging |
MTOW | Maximum Take-Off Weight |
MURS | Mobile Urban Radiation Search |
NORM | Naturally Occurring Radioactive Material |
NPP | Nuclear Power Plants |
POKEGA | Pocket Geiger |
PMT | PhotoMultiplier Tube |
PRD | Personal Radiation Detector |
PRPM | Portable Radiation Portal Monitors |
PSD | Pulse Shape Discrimination |
RADAR | Radio Detection And Ranging |
Rad_MAP | Radiological Multi-sensor Analysis Platform |
RDD | Radiological Dispersal Devices |
REWARD | REal time Wide Area Radiation Detector |
RN | Radioactive and nuclear |
ROS | Robot Operating System |
RPM | Radiation Portal Monitor |
SCoTSS | Silicon Photomultiplier-Based Compton Telescope for Safety and Security |
SiPM | Silicon Photomultiplier |
SLAM | Simultaneous Localization and Mapping (SLAM) |
SNM | Special Nuclear Material |
SORDS-3D | 3D Stand-Off Radiation Detection System |
SORIS | Stand-Off Radiation Imaging System |
SUAS | Small Unmanned Aircraft Systems |
STL | Spin-To-Locate |
STN | Signal To Noise |
TND | Thermal Neutron Detector |
UAV | Unmanned Aerial Vehicle |
UGV | Unmanned Ground Vehicle |
VCI | Volumetric Compton Imaging |
VTOL | Vertical Take-Off and Landing |
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Instrument Category | IEC Standard | ANSI Standard |
---|---|---|
Alarming personal radiation devices | IEC 62401 | ANSI N42.32 |
Spectroscopy-based alarming personal radiation detectors | IEC 62618 | ANSI N42.48 |
Handheld instruments for the detection and identification of radionuclides | IEC 62327 | ANSI N42.34 |
Highly sensitive handheld instruments for photon detection | IEC 62533 | ANSI N42.33 |
Highly sensitive handheld instruments for neutron detection | IEC 62534 | - |
Backpack-type radiation detector | IEC 62694 | ANSI N42.53 |
Vehicle-mounted mobile systems for the detection of illicit trafficking of radioactive materials | IEC 63121 | ANSI N42.43 |
Platform | Advantages | Limitations | Ref. |
---|---|---|---|
Ground-based—Manned: | |||
Car, van or truck |
|
| [16,43,66] |
Motorcycle 1 |
|
| |
Foot-based (e.g., handheld or backpack) |
|
| [43,66] |
Ground-based—Unmanned: | |||
Unmanned ground vehicle |
|
| [10] |
Air-based—Manned: | |||
Fixed-wing (e.g., Sky Arrow aircraft) |
|
| [43,66,75] |
Helicopter |
|
| [66,75,78] |
Air-based—Unmanned: | |||
General characteristic: No dose risks to operators | |||
Fixed-wing (e.g., UARMS UAV) |
|
| [17,75,78,79] |
Helicopter (e.g., UHMS) |
|
| [17,43,66,69,75,78] |
Multi-rotor(a.k.a. drones) |
|
| [17,43,66,69,78] |
Blimp, balloon 1 |
|
| [75] |
Hybrid plane-blimp (e.g., PLIMP) 1 |
|
| [75,77] |
VTOL Fixed-wing 1 |
|
| [71] |
Scintillator | NaI(Tl) | CsI(Tl) | LaBr3[Ce] | LaBr3[Ce+Sr] | BGO | Ce:GAGG | Ref. |
---|---|---|---|---|---|---|---|
Density | 3.67 | 4.51 | 5.08 | 5.08 | 7.13 | 6.63 | [43,100,101] |
Effective atomic number | 49.7 | 54 | 45.2 | 74 | 50.5 | [102,103] | |
% at 662 keV | <7.5 | 6.5–8 | 2.6 | 2.2 | 16 1 | 5.2 | [101,104,105,106,107] |
Wavelength of max emission [nm] 2 | 415 | 550 | 380 | 385 | 480 | 520 | [100,101,106] |
Photoelectron yield [% NaI(Tl)] (for -rays) | 100 | 45 | 165 | >190 | 20 | – | [101] |
Light yield (photons/keV) | 38 | 54 | 63 | 73 | 8–10 | 46 | [101,104] |
Primary decay time (ns) | 250 | 1000 | 16 | 25 | 300 | 90 | [101,104] |
Hygroscopic | yes | slightly | yes | yes | no | no | [101,104,106] |
Self activity | no | no | yes | yes | no | no | [101,104] |
Light Sensor | PMT | SiPM | APD | PIN Diode |
---|---|---|---|---|
Size | Big | Small | Small | Small |
Bias voltage | High | Low | Medium | Low/none |
Power consumption | High | Low | High | Low |
Sensitivity to microphonics | No | No | Intermediate | Yes |
Magnetic field | Yes | No | No | No |
Name | Sensor Type | Sensor Size (cm3) | FWHM % @ 662 keV | Energy Range (keV) | Power/Signal | Weight (g) | Unit Size (mm) | Price (€) | Ref |
---|---|---|---|---|---|---|---|---|---|
GR-1 (Kromek) | CZT | 1 | <2.5 | 20–3000 | USB (250 mW)/(USB/ MCX) | 60 | 25 × 25 × 63 | 3000–9000 | [18,113] |
spec (Ritec) | CZT | 0.06 0.5 1.6 4 | <2 <2.2 <3 <4 | 20–3000 | USB/Micro USB | 60 65 70 100 | 25 × 25 × 72 | 6500 (except 4 cm3 crystal) | [18,112] |
MGS series (IMS) | CZT | 0.06 0.5 | <1.5 <2.5 | 30–3000 | USB/USB,TTL | <50 | 64 × 25 × 15 | [161] | |
SIGMA (Kromek) | CsI(Tl) | 32.8 16.4 | <7.2 | USB (250 mW)/USB | 300 200 | 35 × 35 × 130 35 × 35 × 105 | 4000–5000 | [18,162] | |
Raspix (Crytur) | Timepix (Silicon) | 14.1×14.1 mm | Ethernet (5 W) / Wi-fi or Ethernet | 275 | 97 × 65 × 35 | [163] |
Scenario | A: RN Accidents and Emergencies) | B: Illicit Trafficking of SNM and Radioactive Materials | C: Nuclear, Accelerator, Targets, and Irradiation Facilities | D: Detection, Monitoring, and Identification of NORM |
---|---|---|---|---|
Typical scenario characteristics |
|
|
|
|
Operational restrictions / difficulties |
|
|
|
|
Detectors desirable characteristics |
|
|
|
|
General characteristics | Reliable; robust (good mechanical and chemical properties); modular; flexibility (for different scenarios); low cost; lightweight and compact (for use in portable equipment). |
MRDS | Platforms Used according to Literature | Applications | Advantages | Limitations | Scenario | References |
---|---|---|---|---|---|---|
Gas-filled: | ||||||
Geiger-Muller | Manned fixed-wing, Multi-rotor, car, small UGV, PRD, smartphone | Detection and localization | Low cost and lightweight | No spectrometry information | A,C,D | [8,118,135,137,144,146,154,170] |
Ionization chamber | Car | Detection and localization | - | No spectrometry information | A | [118] |
Proportional counter | Van | Detection and localization | - | No spectrometry information | A | [118,125] |
Scintillators: | ||||||
NaI(Tl) | Manned and unmanned aircrafts (fixed-wing and helicopter), van, car, backpack, handheld | Detection, identification, mapping and localization | Large volumes available commercially (allowing high efficiency detection system) | Hygroscopic | A,B,D | [38,118,119,122,123,125,130,131,150,153,154,155,170,205] |
BGO | Manned fixed-wing, Multi-rotor | Detection, localization and mapping | Good sensitivity | Poor energy resolution | A,D | [154,166] |
LaBr3[Ce] | Manned & unmanned helicopters, car, handheld, backpack, small UGV | Detection, identification, mapping and localization | Good energy resolution (high light yield), fast response, temperature stability, high magnetic field operation (with SiPM) | Intrinsic activity | A,B,C,D | [124,129,130,134,148,151,153,156,205,205] |
CsI(Tl) | Unmanned fixed-wing, multi-rotor, car, van, backpack, PRD | Detection, identification, mapping and localization | Less hygroscopic and better light yield compared to NaI(Tl), lightweight particularly when coupled to SiPM | - | A,B | [66,67,111,120,121,128,164] |
CsI | Unmanned fixed-wing, smartphone | Detection and mapping (monitoring) | Lightweight and low cost | Poor energy resolution | A | [139] |
Ce:GAGG | Personal gamma spectrometer | Detection and identification | High sensitive and short time response (better than CsI:Tl and NaI:Tl) | - | A,B | [132] |
Xe scintillator | Van | Detection and identification | Robust, vibration insensitive, non hygroscopic, better energy resolution than NaI | - | B | [207] |
Semiconductors: | ||||||
Pin photodiode | smartphone, mobile robot, small ducted-fan UAV | Detection and mapping | Lightweight, low cost, and low power consumption | Susceptible to noise vibrations | A,C | [138,145,169] |
CMOS (Timepix) | Multi-rotor | Source localization and contour mapping | Small, lightweight, low power consumption, and with a pixel matrix | - | A,B | [172] |
CZT | Small UAV (multi-rotor), ground vehicles, backpack | Detection, identification, mapping and localization | High spatial resolution; Good energy resolution Reduced costs; Fast deployment | Low autonomy; Small volume sensor | A,B,D | [127,140,152,158,159,160,165,167,170,176,210,211,212,213] |
CdTe | Unmanned fixed-wing, multi-rotor | Soil contamination | Good energy resolution | Only for low energy gamma-rays | A | [168,170] |
HPGe | Manned fixed-wing, van, backpack | Detection and identification | Excellent energy resolution | Too heavy (cooling system) | A | [121,125,130,154] |
Gamma Camera | Mobile Platform | Weight | % (662 keV) | Acquisition Time | Scenario | Ref. |
---|---|---|---|---|---|---|
Compton Camera: | ||||||
SCoTSS with arrays of CsI(Tl) and NaI(Tl) in the 3×3 configuration | Truck | 15 kg | 7.5–7.9 | Under 3 s | A,B | [182,183] |
2 arrays of Ce:GAGG coupled to SiPM | Unmanned helicopter | Lightweight | 6.5 | 5 min | A | [178,184] |
2 arrays of Ce:GAGG | Multi-rotor | 1.9 kg | 9 | ∼10 min | A | [185] |
2 arrays of Ce:GAGG | Multi-rotor | 1.5 kg | - | ∼10 min | A | [186,187] |
VCI based on HPGe | Mobile | - | - | - | A,B | [188] |
VCI | Robot | - | - | - | A | [190,191] |
VCI using Ce:GAGG | Crawler robot | - | - | - | A | [192,193] |
2 arrays of Ce:GAGG | Handheld | 1 kg | - | 10 s | A | [22] |
Si/CdTe Compton camera | - | 10 kg | 2.2 | 30 min | A | [194] |
Polaris-H (pixelated CZT detectors) | Handheld | 4 kg | 1.1 | ∼2 min 1 | A | [195] |
Compton camera/Coded-aperture camera: | ||||||
VCI (based in CZT crystals with active mask for coded-aperture mode) | Handheld | 3.6 kg | 2.5 | - | A,B | [189] |
Coded-aperture camera: | ||||||
SORDS-3D (with passive mask) | Cargo trailer | - | 6.13 | - | B | [179] |
SORIS (with active mask) | Van | - | 8 | - | B | [196] |
GAMPIX (MOBISIC project) | Mutirotor | 70 g | - | 300 s | B | [197] |
Pinhole camera: | ||||||
Pinhole | Truck | - | - | - | A | [198] |
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Marques, L.; Vale, A.; Vaz, P. State-of-the-Art Mobile Radiation Detection Systems for Different Scenarios. Sensors 2021, 21, 1051. https://doi.org/10.3390/s21041051
Marques L, Vale A, Vaz P. State-of-the-Art Mobile Radiation Detection Systems for Different Scenarios. Sensors. 2021; 21(4):1051. https://doi.org/10.3390/s21041051
Chicago/Turabian StyleMarques, Luís, Alberto Vale, and Pedro Vaz. 2021. "State-of-the-Art Mobile Radiation Detection Systems for Different Scenarios" Sensors 21, no. 4: 1051. https://doi.org/10.3390/s21041051
APA StyleMarques, L., Vale, A., & Vaz, P. (2021). State-of-the-Art Mobile Radiation Detection Systems for Different Scenarios. Sensors, 21(4), 1051. https://doi.org/10.3390/s21041051