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Article

Monte Carlo-Based Simulation of Reactivity and Transmutation in the CEFR Sodium-Cooled Fast Reactor

College of Energy and Mechanical Engineering, Shanghai University of Electric Power, Shanghai 200000, China
*
Author to whom correspondence should be addressed.
Appl. Sci. 2025, 15(21), 11534; https://doi.org/10.3390/app152111534
Submission received: 22 September 2025 / Revised: 15 October 2025 / Accepted: 27 October 2025 / Published: 28 October 2025

Abstract

As a representative Generation IV sodium-cooled fast reactor (Gen-IV SFR), neutron physics characteristics studies of the China Experimental Fast Reactor (CEFR) core are crucial for its safety case. In this study, a three-dimensional core model of the CEFR was developed using the Monte Carlo-based MCNP5 code, with its reliability validated through five neutronics benchmark experiments. Based on this model, the fundamental neutronics characteristics of minor actinide (MA) transmutation in the sodium-cooled fast reactor were investigated. The results demonstrate that as the minor actinide (MA) loading fraction in the core increases from 0% to 8%, the effective multiplication factor (Keff) exhibits a significantly nonlinear decrease, accompanied by a corresponding reduction in neutron flux, necessitating increased fuel enrichment to maintain core criticality. Opposite impacts on reactivity are observed for different MA nuclides: 237Np, 241Am, 243Am and mixed MA reduce Keff, whereas 244Cm and particularly 245Cm significantly enhance Keff. The reactivity change rate sharply decreased from −1242.5 to −312.7 pcm/wt%, clearly demonstrating saturation effects in MA neutron absorption. Crucially, reactivity remained deeply negative across all operational scenarios, with safety requirements being satisfied even at maximum MA loading levels, confirming the inherent safety of the proposed approach.

1. Introduction

To advance the energy transition, China is establishing a clean, low-carbon, secure, and efficient national energy system. Guided by a forward-looking vision for cleaner, smarter, and decarbonized energy development, the government has implemented a comprehensive suite of plans, policies, and measures. In September 2020, China formally announced its dual carbon goals: achieving peak carbon dioxide emissions by 2030 and carbon neutrality by 2060. This commitment entails reaching peak CO2 emissions before 2030 and realizing net-zero emissions by 2060 [1]. The dual carbon goals have been integrated into China’s overarching framework for ecological civilization, positioning them to fundamentally reshape global energy supply-demand dynamics [2]. The optimization and transformation of China’s energy mix will remain a central task for its energy development over the coming four decades [3,4], serving as a defining feature of the nation’s decarbonization pathway.
As a clean and efficient energy source, nuclear power plays a pivotal role in addressing growing energy demands while enabling substantial reductions in greenhouse gas emissions, a strategic advantage recognized by the IPCC in deep decarbonization pathways. Against the backdrop of China’s dual carbon goals, nuclear power development is gaining strategic priority; however, the radioactive waste generated by existing thermal-neutron reactor systems fundamentally contradicts nuclear energy’s sustainable development pathway [5]. Compared to conventional reactors (0.5–1% uranium utilization), fast reactors achieve 60–70% resource efficiency [6], this helps fully utilize limited nuclear fuel resources and prolong the sustainability of nuclear energy development.
Recognized as a leading Gen-IV technology by the Generation IV International Forum (GIF) in 2002, sodium-cooled fast reactors (SFRs) emerged as one of the six most promising advanced nuclear systems due to their superior uranium utilization efficiency and unique capability for transmuting long-lived actinides attributes [7,8] that underpin significant commercial potential and substantial growth prospects [9].
Globally, two dominant nuclear fuel cycle strategies persist: the Once Through Cycle (OTC) and the Reprocessing Fuel Cycle (RFC) [10,11]. However, both approaches dispose of minor actinide (MA) through direct geological burial, which will cause long-term radioactive environmental contamination risks. The secure disposal of nuclear waste constitutes a paramount challenge for the sustainable development of nuclear energy, particularly concerning the management of long-lived high-level radioactive waste [12]. Analyses reveal that the long-term radiotoxicity of high-level waste is predominantly governed by its minor actinide (MA) constituents, characterized by exceedingly protracted decay periods [13,14]. The partitioning and transmutation strategy presents an efficacious technical pathway for the ultimate destruction of such waste [15,16]. To mitigate the radiological hazard of spent nuclear fuel and facilitate resource reutilization, the “Advanced Fuel Cycle” (AFC) concept [17] proposes separating the MA isotopes for subsequent transmutation in reactors, converting them into short-lived or stable nuclides. This process not only significantly curtails the hazardous lifetime of nuclear waste but also enables the utilization of the energy released during transmutation within the reactor system [18].
Facilities capable of serving as neutron sources for transmutation purposes encompass thermal reactors, fast reactors, and accelerator-driven subcritical systems (ADSs) [19]. Fast reactors operate with elevated neutron energy spectra. Although minor actinide (MA) nuclides have smaller fission cross-sections in fast reactors, the lower capture-to-fission ratio combined with higher neutron flux density makes MA nuclides more likely to undergo fission in fast reactors than in thermal reactors [20,21,22,23].
This study employs the Monte Carlo method to establish a three-dimensional core simulation model utilizing the particle transport software MCNP5. The model successfully executed five core physics experiments from the China Experimental Fast Reactor (CEFR) neutronics startup campaign, thereby validating its reliability. Subsequently, this validated model was employed to characterize the effects of adding MA nuclides on initial criticality and neutron flux density profiles in a sodium-cooled fast reactor core.

2. Core Modeling of the CEFR

2.1. Overview of the CEFR Core

The fundamental configuration of the China Experimental Fast Reactor (CEFR), depicted in Figure 1, incorporates a passive decay heat removal system alongside multiple advanced safety mechanisms addressing sodium fire prevention and sodium/water reaction mitigation [24].
This study employs MCNP for core criticality neutronics calculations, necessitating precise computational models incorporating detailed structural and material specifications. Table 1 presents fundamental design parameters of the CEFR. The current core configuration comprises 79 fuel assemblies, one neutron source assembly, and eight control rod assemblies—specifically three safety rods (SA), three shim rods (SH), and two regulating rods (RE) [25]. Figure 2 illustrates the radial loading pattern of the initial core fuel assembly configuration.

2.2. MCNP Modeling

This study implements repetitive geometric structures within the Monte Carlo program input files to optimize computational efficiency, particularly given the prevalence of geometrically analogous components in nuclear fission reactor cores. Leveraging MCNP5’s universe declarations and lattice card functionalities, the methodology significantly reduces both input data requirements and computational overhead while ensuring rigorous representation of recurring core configurations.
Diverging from conventional pressurized water reactors employing rectangular fuel assemblies, the CEFR core configuration utilizes hexagonal lattice assemblies, LAT = 2. Modeling of minimum lattice units for fuel rod, control rod, type-I/II stainless steel bar, and B4C absorber rod. Consequently, the modeling methodology commences with defining fundamental geometric cells encompassing the fuel pellet central hole, clad gaps, and associated material interfaces. The lattice structure is then replicated through the LAT card definition, with the resulting assembly constituting a universe cell. This designated universe cell is subsequently populated into the assembly outer duct cell via the FILL card assignment. Employing the LAT card’s geometric replication capabilities, assembly cell were systematically incorporated into the core lattice cell to finalize the CEFR core modeling.
Moreover, in CEFR neutronics benchmarks including neutron flux and power distribution calculations, all fuel cycles were simulated under cold core conditions (sodium-coolant average temperature: 250 °C), except for reactivity temperature coefficient analyses. However, dimensional changes in CEFR core components and corresponding material density variations due to temperature fluctuations induce a negative reactivity effect, undermining calculation reliability. Consequently, thermal expansion must be accounted for in pre-computation preparations, accounting for distinct linear expansion coefficients of various materials in axial and radial dimensions as specified in Table 2. Primarily, the fuel pellet base within the fuel assembly serves as the reference plane for axial expansion. Regarding the axial expansion of sub-assemblies, such as fuel, reflectors, and shields, modeling employs extension originating from the bottom plane. Axial expansion modeling for control rod assemblies accounts for height increments commencing at the top. Furthermore, to maintain constant mass, material density variations are incorporated during dimensional expansion to compensate for volumetric changes. Figure 3 and Figure 4 depict the CEFR core assembly layout diagrams and fuel zone distributions generated by MCNP5.

3. MC Simulation and Transmutation Analysis of the CEFR

3.1. Neutronics Benchmark Simulation and Analysis for the CEFR

The neutronics benchmark experiments for the CEFR comprise six fundamental tests: criticality condition per fuel loading; control rod worth; sodium void reactivity effect; temperature reactivity coefficient; fuel assembly swap reactivity perturbation; reaction rate determination via activation foils. This study exclusively simulates and verifies the first five experiments. Conducted at CEFR’s zero power configuration, the simulations employ MCNP5 to validate essential reactor physics parameters, thereby contributing supplementary data for ensuring reactor operational safety.
When comparing experimental measurements with MCNP5 simulation results, it is essential to recognize that both contain inherent uncertainties. A meaningful comparison therefore does not seek perfect agreement between the datasets, but rather assesses whether they are consistent within their respective margins of error. The reliability of the results is determined by evaluating whether the discrepancy between experimental and simulated values falls within the established criterion of ±500 pcm.

3.1.1. Critical Experiment Analysis

The startup experiment commenced with the core loaded with 79 simulated fuel assemblies, positioned identically to operational fuel elements. As uranium bearing fuel assemblies sequentially and incrementally replaced simulated components from the core center outward, the reactor attained its first critical state. The core fuel assembly count was increased from 24 to 72 through extrapolation using the inverse count rate of the loading, a procedure commonly referred to as subcritical extrapolation. Following the loading of the 71st fuel assembly, the subsequent assembly insertion prompted the core to transition into a supercritical state, thereby concluding the subcritical extrapolation phase. The subsequent procedure, termed supercritical extrapolation, involves achieving criticality through control rod manipulation using the period method. Specifically, the 72nd simulated fuel assembly was replaced with an actual fuel assembly, resulting in the core loading configuration depicted in Figure 5. Criticality was then attained by axially adjusting the control rod assembly designated as RE in Figure 5.
MCNP5 code was employed for modeling, with measured and computational results tabulated in Table 3. The resultant model illustrated in Figure 6. This table juxtaposes experimental effective multiplication factor values against MCNP5 computational outputs, revealing a consistent underestimation of core criticality by approximately 55 pcm in the simulation assessment. The disparities in neutron cross-section libraries exert differential impacts on core reactivity [26], consequently, the MCNP5 calculations employing the ENDF/B-VI.8 library may account for the observed deviations from measured values. A comparative analysis was conducted utilizing the nuclear data libraries CENDL-3.2, ENDF/B-VI.8, JEFF-3.3, and JENDL-4.0u. Simulations of control rod worth, sodium void reactivity, assembly exchange reactivity, and temperature reactivity exhibit strong concordance across the four databases. Under standard operating conditions, with the exception of assembly exchange reactivity, which is systematically underestimated in all computations, the discrepancies between calculated and experimental values for the remaining parameters remain within one standard deviation of the measurement uncertainty.
As indicated in Table 3, insertion of regulating rod assemblies (RE) into the 72-fuel-assembly core induces negative reactivity. With all fuel assemblies loaded, adjusting RE positions from 190 mm to 70 mm achieved the experimentally measured critical state. The MCNP5 simulation yielded a reactivity insertion of −64 pcm, demonstrating excellent agreement with experimental data. This validates both the computational accuracy of the MCNP5 model and the geometric fidelity of the modeling approach.

3.1.2. Control Rod Worth Calculation

Control rod worth is defined as the reactivity change induced by control rod insertion. In sodium-cooled fast reactors, reactivity control is achieved by inserting control rod assemblies into the core and adjusting their positions. The reactivity worth of control rods at various insertion depths is characterized by their integral worth, which is defined as the total reactivity introduced when a control rod assembly is moved from an initial reference position to a specified height within the core. Thus, the integral worth represents the total change in reactivity resulting from the full insertion of one or more control rods from the top to the bottom of the core. To facilitate subsequent calculations of core reactivity parameters, such as the fuel temperature coefficient, sodium void reactivity, and assembly exchange reactivity, the differential worth of each control rod assembly is also provided. The general expression for the differential worth of a control rod is given by Equation (1). This equation calculates the reactivity change resulting from a unit displacement of the control rod assembly at various axial positions within the core, with values expressed in pcm/mm.
α c = d ρ d z Δ ρ Δ H
In the equation, ρ denotes the reactivity change, while H represents the displacement height of the control rod.
Since the MCNP software directly yields the effective multiplication factor from its critical source card, the reactivity is calculated using the below formula:
Δ ρ = k i + 1 k i k i + 1 k i
Substituting Equation (2) into Equation (1) yields
α c = k i + 1 k i k i + 1 k i Δ H , i = 1 ( N 1 )
These rods serve not only to maintain reactor safety and stable operation but also to enable precise regulation of nuclear reactions to meet power demands while preventing potential accidents. This study employs an MCNP5 computational framework to simulate control rod worth in the CEFR. The initial core loading of the CEFR comprises eight control rod assemblies. Computational analyses are performed under cold core conditions, with a sodium temperature maintained at 250 °C. Expanding upon the initial critical core configuration described in the previous section, the core is augmented with the seven remaining fuel assembly positions, culminating in a total of seventy-nine fuel assemblies. Figure 7 depicts the layout for the CEFR’s first core loading. To counteract the excess reactivity arising from the seven additional fuel assemblies, the remaining compensation and adjustment control rod assemblies are incorporated into the core arrangement illustrated. For enhanced clarity in presenting computational outcomes, control rods are assigned numerical designations corresponding to their specific positions and functional roles.
Table 4 specifies the exact insertion positions for each control rod assembly drop test. Simulated values and their discrepancies relative to experimental measurements are documented in Table 5. Additionally, due to certain test conditions initiating rod drops from partially inserted states, this study further analyzes the worth of individual control rod assemblies and full bank insertion scenarios, along with the integral worth when all assemblies are fully withdrawn. These results are presented in Table 6. During the experimental campaign, reactivity compensation was applied using off target control rods while measuring each test rod, culminating in 14 distinct control rod worth measurements.
As summarized in Table 5 and Table 6, among the three control rod assembly types in the core, the regulating rod assemblies (RE) with natural 10B absorbers exhibit the lowest reactivity worth. These are predominantly positioned at the outermost periphery of the core fuel region. For safety rod assemblies (SA) and shim rod assemblies (SH) composed of identical materials, the former are positioned near the periphery of the core fuel region, while the latter reside closer to the core center. Consequently, to enhance accident tolerance, the safety rod assemblies deliver higher reactivity worth than shim rods despite identical dimensions and material composition. Even among identical rod types such as shim assemblies SH1-3, worth discrepancies arise from asymmetric core loading. Notably, SH2 and SH3 assemblies in symmetric core positions demonstrate comparable reactivity worth values.

3.1.3. Sodium Void Reactivity Experiment Simulation

The CEFR sodium void reactivity benchmark experiment entails replacing select core fuel assemblies with vacuum sealed counterparts, then adjusting control rod positions to achieve criticality for void reactivity measurement. As depicted in Figure 8, MCNP simulations evaluated five distinct fuel assembly locations. Table 7 confirms fixed axial positioning of SH and SA control rod assemblies at the core midplane, while RE assemblies were manipulated to attain criticality. Void reactivity coefficients were derived from comparative Keff analyses between the modified core and the critical core.
Specially designed mock-up assemblies were employed to replace fuel assemblies in Zones 1–5 (Figure 8), with simulated sodium void reactivity results being presented in Table 8. Due to CEFR’s compact core geometry, all five zones exhibited negative void reactivity, ranging from −36.6 pcm to −44.3 pcm in MCNP5 simulations. This phenomenon confirms increased neutron leakage resulting from sodium void. The computational values fall entirely within experimental uncertainty bounds, validating both the model fidelity and code reliability. The MCNP5 simulation results further validate CEFR’s inherent safety performance. Consequently, rigorous investigation and management of sodium void reactivity effects are imperative for ensuring safe and stable operation of sodium-cooled fast reactors.

3.1.4. Reactivity Simulation for Assembly Substitution

This study selected eight distinct core positions for reactivity perturbation analysis. Target locations requiring modification, as specified in Table 9 and illustrated in Figure 9, comprise six fuel assemblies (positions 1–6) and two Type-I stainless steel assemblies (positions 7–8) for research substitution induced reactivity effects. During the simulation, fuel assemblies numbered 1 through 6 are sequentially substituted with SS-I reflector assemblies, while the SS-I assemblies at positions 7 and 8 are replaced with fuel assemblies. To maintain safety during measurements, the total number of fuel assemblies is constrained to a maximum of 79. Accordingly, when fuel is loaded into the SS assemblies at positions 7 and 8, SS assemblies must be installed at positions 4 and 5 to preserve this limit.
Table 10 compares experimental measurements with MCNP simulations, revealing an average measurement discrepancy of 44 pcm. The tabulated data demonstrate that fuel assembly substitutions consistently yield negative reactivity due to fuel depletion, whereas stainless steel component exchanges conversely exhibit positive reactivity. Furthermore, results indicate an inverse relationship between reactivity magnitude and proximity to the core center: substitution positions nearer the central axis manifest greater reactivity deficits. This phenomenon likely stems from diminished fuel inventory in central zones, necessitating greater reactivity compensation. Under the initial six scenarios cataloged, the absolute magnitude of reactivity perturbations induced by fuel assembly substitution progressively diminishes as stainless steel components are positioned further from the core periphery. This pattern demonstrates that loading fuel assemblies toward the radial exterior potentially yields reduced net reactivity insertion. Preceding analysis reveals that SS assemblies deployed nearer to the core center generate increasingly negative reactivity perturbations. Scenarios 7 and 8 exhibit positive reactivity feedback despite maintaining constant aggregate fuel assembly inventory. Here, SS assemblies at positions 4 and 5 (situated farther from the core) yields positive reactivity values. Crucially, while position 8 exhibits greater proximity to the core than position 7, its fuel loading configuration manifests higher reactivity due to this differential placement geometry.

3.1.5. Temperature Reactivity Coefficient Computation

In the CEFR temperature reactivity experiments, temperature variations induce changes in the physical state of materials, necessitating the incorporation of thermal expansion effects on material density and dimensional changes at specified temperatures, as shown in Figure 10. Consequently, within the MCNP model, the expansion characteristics of all solid materials are adjusted using the constant linear expansion coefficients discussed in Table 2. Furthermore, calculations of temperature effects must account for variations in the density of the sodium coolant within the CEFR, which result from changes in sodium temperature. Under standard atmospheric pressure, the density of liquid sodium in the temperature range from its melting point to boiling point can be calculated using Equation (1) [27].
ρ = 950.0483 0.2298 T 14.6045 × 10 6 T 2 + 5.6377 × 10 9 T 3
The calculations were performed for the reference core configuration containing 79 fuel assemblies. The temperature was increased from 250 °C to 302 °C at intervals of 250 °C, 274 °C, 283 °C, 293 °C, and 302 °C, and then decreased from 300 °C to 250 °C at similar intervals of 300 °C, 290 °C, 280 °C, 270 °C, and 250 °C. Using these two approaches, the reactivity change with respect to the average coolant temperature was measured at five distinct temperature levels. The temperature reactivity coefficient (αT) is calculated from the control rod worth (ρCR) and the small reactivity difference in critical states during temperature changes (ρT), as shown in Equation (2).
α T = Δ ρ T Δ ρ C R Δ T
The temperature effect measurement was conducted according to the following procedure. First, with the reactor in a shutdown state, the core coolant temperature was brought to the cold-state condition of 250 °C and maintained at this temperature for at least 30 min. Subsequently, the SA control rod assemblies were fully withdrawn from the core. The SH and RE control rod assemblies were then adjusted vertically within their guide tubes to achieve a slightly supercritical core state. The corresponding core temperature, control rod assembly positions, and reactivity were recorded at this condition. Following this, the core was returned to a shutdown state. The input file was then modified to reflect the next target temperature level, and the preceding procedure was repeated. This experimental sequence yielded a total of ten datasets. The control rod positions recorded during these ten steps are presented in Table 11, with units in millimeters (mm).
Within the experimental data, two distinct average temperature coefficients were calculated based on the heating and cooling processes. In the CEFR experiments, approximately 14 thermocouples were installed above the reactor core to measure the average outlet sodium coolant temperature. This temperature served as the homogenized temperature for the entire core, enabling the measurement of temperature variations and the calculation of temperature reactivity coefficients. In the MCNP model, parameters in the input file were updated based on the RE and SH control rod assembly positions from Table 11. The effective neutron multiplication factor (Keff) was then calculated at distinct temperature levels, enabling derivation of the temperature reactivity coefficient.
Table 12 presents a comparison between the simulated temperature reactivity coefficients and experimental measurements. The average temperature coefficients calculated by MCNP5 show reasonable agreement with the experimental values, indicating the model’s acceptable accuracy.
Temperature reactivity decreases with rising temperature, resulting in a negative temperature coefficient. This phenomenon is primarily attributed to two mechanisms: (1) radial expansion of the fuel and cladding, which increases neutron leakage; (2) reduced sodium density at elevated temperatures, which hardens the neutron flux spectrum. Both effects contribute to the negative reactivity feedback. As temperature increases, enhanced resonance absorption due to the Doppler effect reduces the effective neutron multiplication factor (Keff), further contributing to negative temperature feedback. The simulated temperature coefficients demonstrate close agreement with experimental measurements.

3.2. Study on Transmutation of MA in SFR

In MA transmutation studies, their loading concentration constitutes a key design parameter. Inappropriate loading not only reduces transmutation efficiency but may also compromise the core’s initial criticality and neutron flux distribution, thereby jeopardizing reactor safety. To achieve homogeneous mixing of MA within the core fuel, the isotopic composition of MA is specified [28] in Table 13.
By modifying material cards in the MCNP5 input file, we added 2 wt% of 237Np, 241Am, 243Am, 244Cm, 245Cm, and mixed MA nuclides. The effects of individual nuclides on Keff were analyzed, with results presented in Table 14. As shown in the table, transmutation of 237Np, 241Am, 243Am, and mixed MA in the sodium-cooled fast reactor suppresses Keff. The magnitude of suppression follows the decreasing order: mixed MA < 243Am < 241Am < 237Np. Conversely, transmutation of 244Cm and 245Cm enhances Keff, with the increase caused by 245Cm significantly exceeding that from other nuclides.
Incorporating MA nuclides into nuclear fuel through homogeneous blending at concentrations of 2%, 5%, and 8% significantly impacts core neutronic behavior due to MA’s substantial neutron absorption cross-sections. Subsequent alterations in initial criticality characteristics necessitate computational evaluation of Keff via MCNP5 simulations. Table 15 quantitatively documents Keff variations resulting from differential MA isotopic blending ratios.
Analysis of Table 15 reveals that Keff progressively diminishes as the MA concentration increases. This trend indicates that MA incorporation intensifies neutron absorption phenomena, consequently diminishing the neutron utilization factor and reducing core reactivity to negative values. Restoring criticality would necessitate significantly augmenting fuel enrichment levels. The reactivity decrement induced by MA nuclides diminishes with increasing concentration ratios, attributable to neutron spectrum hardening and consequent thermal neutron depletion.
A fuel assembly was randomly selected with five fuel rods sampled radially from the core-center to the periphery, designated positions 1 to 5. Neutron flux density distributions for these rods with varying MA admixture proportions are documented graphically in Figure 11. Results demonstrate progressively diminished neutron flux density with increasing MA concentration.

4. Conclusions

Building upon validated neutronics benchmark simulations, this research employs a full-scale three-dimensional MCNP5 model to investigate the fundamental neutronics behavior of reactivity and minor actinide transmutation characteristics in sodium-cooled fast reactors. Key findings are as follows:
  • Computational validation of the CEFR three-dimensional neutronics benchmark model confirms that its fundamental safety parameters and reactivity characteristics align with neutronics fundamentals. These findings provide substantial evidence for the reactor’s inherent safety features and demonstrate its rationally reliable design.
  • The close agreement between MCNP5 computational outcomes and experimental measurements not only validates the program’s efficacy in neutronics calculations but also confirms the reliability of the developed three-dimensional neutronics model for CEFR.
  • The transmutation of 237Np, 241Am, 243Am, and mixed MA reduces core Keff, whereas the transmutation of 244Cm and 245Cm enhances it. Notably, the reactivity increase induced by 245Cm far exceeds that attributable to all other nuclides.
  • With the MA content increment from 0 wt% to 8 wt%, Keff undergoes substantial nonlinear attenuation (1.00033→0.95022). The reactivity variation coefficient progressively diminishes from −1242.5 pcm/wt% to −312.7 pcm/wt%, indicating neutron absorption saturation effects within the MA isotopes. Crucially, all operational scenarios maintain profoundly negative reactivity values, with even peak MA loading sustaining compliance within safety margin limits. These computational results empirically substantiate the inherent neutronics safety characteristics of the MA loading scheme.

Author Contributions

Conceptualization, R.S.; methodology, R.S.; software, R.S.; validation, R.S.; formal analysis, R.S.; investigation, R.S.; resources, R.S.; data curation, R.S.; writing—original draft preparation, R.S.; writing—review and editing, R.S.; visualization, R.S.; supervision, R.S., J.L., R.Z., J.T., Y.M., Y.C. and L.L.; project administration, R.S.; funding acquisition, R.S., J.L. and R.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The original contributions presented in this study are included in the article. Further inquiries can be directed to the corresponding author(s).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Primary Structural Configuration of the CEFR Vessel.
Figure 1. Primary Structural Configuration of the CEFR Vessel.
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Figure 2. A Schematic Diagram of the Horizontal Cross-Section in the CEFR.
Figure 2. A Schematic Diagram of the Horizontal Cross-Section in the CEFR.
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Figure 3. MCNP5 computational model geometry of the CEFR core.
Figure 3. MCNP5 computational model geometry of the CEFR core.
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Figure 4. MCNP5 model geometry of the CEFR active core fuel region.
Figure 4. MCNP5 model geometry of the CEFR active core fuel region.
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Figure 5. Schematic of Core Fuel Assembly Numbering (Critical Experiment).
Figure 5. Schematic of Core Fuel Assembly Numbering (Critical Experiment).
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Figure 6. A Schematic of the CEFR Model for the Core Fuel Zone Critical Experiment Arrangement.
Figure 6. A Schematic of the CEFR Model for the Core Fuel Zone Critical Experiment Arrangement.
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Figure 7. A Schematic of the MCNP Model for Fuel Assemblies and Fuel Rods.
Figure 7. A Schematic of the MCNP Model for Fuel Assemblies and Fuel Rods.
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Figure 8. Sodium void experiment spatial configuration.
Figure 8. Sodium void experiment spatial configuration.
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Figure 9. Computational location map for assembly swap reactivity analysis.
Figure 9. Computational location map for assembly swap reactivity analysis.
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Figure 10. Sodium density versus temperature.
Figure 10. Sodium density versus temperature.
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Figure 11. Neutron flux distribution in fuel elements under variable MA nuclide ratios.
Figure 11. Neutron flux distribution in fuel elements under variable MA nuclide ratios.
Applsci 15 11534 g011
Table 1. Core Primary Design Specifications of the CEFR.
Table 1. Core Primary Design Specifications of the CEFR.
ParametricParameter Value
Thermal power65 MW
Active zone equivalent diameter/height60 cm/45 cm
Fuel/First core fuel(Pu, U) O2/UO2
235U enrichment42.6 kg (19.6%)/236.7 kg (64.4%)
Maximum linear heat rate430 W/cm
Neutron flux3.7 × 1015 n/cm2·s(MAX)
Average neutron flux1.76 × 1015 n/cm2·s
Target burnup100,000 MWd/t
Core inlet sodium temperature360 °C
Core outlet sodium temperature530 °C
Main vessel dimensions8.010 m
Table 2. Coefficient of linear thermal expansion for reactor core materials.
Table 2. Coefficient of linear thermal expansion for reactor core materials.
MaterialsLinear Expansion Coefficient
Fuel pellet1.1 × 10−5/°C
Breeding blanket materials1.0 × 10−5/°C
B4C neutron absorber4.2 × 10−6/°C
Stainless steel materials1.8 × 10−5/°C
Table 3. Comparison of simulated and experimental results for critical experiments.
Table 3. Comparison of simulated and experimental results for critical experiments.
Fuel Assembly Loading PositionsRE Rod Positions
(mm)
Keff
(Measured Value)
Keff
(MCNP)
Error
(pcm)
70500-0.99300-
71500-0.99642-
721901.000400.99988−52
721701.000340.99979−55
721511.000250.99968−57
72701.000000.99936−64
Table 4. Positions of diverse control rod assemblies.
Table 4. Positions of diverse control rod assemblies.
Control Rod and Rod BanksControl Rod Positions/mm
ChangeRE1RE2SH1SH2SH3SA1SA2SA3
RE1B501106240240239498500500
A−1106240240239498500500
RE2B106499240240239498500500
A1065240240239498500500
SH1B240240501141141498499499
A2402404141141498499499
SH2B239240151498151498500500
A239240151−1151498500500
SH3B240239148150498498500500
A2402391481507498500500
SA1B240239240240241498499499
A240239240240241498499499
SA2B240240240240240498499499
A24023924024024049855499
SA3B240239240240240498499499
A24023924024024049849940
3SH + 2REB247247239240239498500499
A051−17498500499
SH2 + SH3 + 2REB247248501141141498500499
A−22501−316498500499
3SAB247249240240240498500499
A247249240240240465640
SA1 + SA2B247248240240240498500500
A2472482402402404554500
2RE + 3SH + 3SAB247248240240240499500500
A032−20455640
2RE + SH2 + SH3
+3SA
B248248500141141498500499
A−22500−37455540
Table 5. Comparison of calculated and measured control rod worth.
Table 5. Comparison of calculated and measured control rod worth.
Control Rod and Rod BanksMeasured ValueErrorMCNP
Calculated Value
Deviation from Measured Value
RE1150±9142−8
RE2149±9147−2
SH12019±2501908−111
SH21839±225185617
SH31839±226184910
SA1945±100942−4
SA2911±10092615
SA3946±98100054
3SH + 2RE2877±3553040163
SH2 + SH3 + 2RE881±761029148
3SA2981±3952854−128
SA1 + SA21950±2261790−160
2RE + 3SH + 3SA6079±9896066−13
2RE + SH2 + SH3 + 3SA3899±551394041
Table 6. Calculated worth of fully inserted control rod assemblies.
Table 6. Calculated worth of fully inserted control rod assemblies.
Control Rod and Rod BanksControl Rod PositionsKeffControl Rod Value
(pcm)
3SH+2RE+3SA3SH+2RE+3SA fully withdrawn1.02888
RE1RE1 fully inserted1.02737−151
RE2RE2 fully inserted1.02739−149
2RE2RE fully inserted1.02581−307
SH1SH1 fully inserted1.01015−1873
SH2SH2 fully inserted1.01056−1832
SH3SH2 fully inserted1.01054−1834
3SH33SH fully inserted0.97339−5549
SA1SA1 fully inserted1.01891−997
SA2SA2 fully inserted1.01892−996
SA3SA3 fully inserted1.01854−1034
3SH + 2RE3SH + 2RE fully inserted0.97038−5850
SH2 + SH3 + 2RESH2 + SH3 + 2RE fully inserted0.98919−3969
3SA3SA fully inserted0.99754−3134
SA1 + SA2SA1 + SA2 fully inserted1.0086−2028
2RE + 3SH + 3SA2RE + 3SH + 3SA fully inserted0.93872−9016
2RE + SH2 + SH3 + 3SA2RE + SH2 + SH3 + 3SA fully inserted0.95932−6956
Table 7. Control rod positions.
Table 7. Control rod positions.
Control RodPositions/mm
SH1239.3
SH2239.2
SH3239.8
SA1498.3
SA2499.8
SA3499.1
Table 8. Comparison of calculated and measured sodium void reactivity.
Table 8. Comparison of calculated and measured sodium void reactivity.
Simulated Assembly PositionsRE1 PositionsRE2 PositionsMeasured Value (pcm)ErrorCalculated Value (pcm)
1277 mm277 mm−39.2±5.8−39.7
2277 mm277 mm−43.4±5.9−39.9
3277 mm277 mm−40.5±5.7−42.0
4277 mm277 mm−40.1±5.5−44.3
5277 mm277 mm−32.9±5.5−36.6
Table 9. Assembly positions for swap reactivity testing.
Table 9. Assembly positions for swap reactivity testing.
Calculated Positions12345678
1SSFuelFuelFuelFuelFuelSSSS
2FuelSSFuelFuelFuelFuelSSSS
3FuelFuelSSFuelFuelFuelSSSS
4FuelFuelFuelSSFuelFuelSSSS
SFuelFuelFuelFuelSSFuelSSSS
6FuelFuelFuelFuelFuelSSSSSS
7FuelFuelFuelFuelSSFuelFuelSS
8FuelFuelFuelSSFuelFuelSSFuel
Table 10. Comparison of calculated and measured swap reactivity values.
Table 10. Comparison of calculated and measured swap reactivity values.
Measurement PositionsTemperature
(°C)
Keff
(Before)
Keff
(After)
Calculated Value (pcm)Measured Value (pcm)Error
(pcm)
12501.000330.99056−984−9777
22501.000330.99177−875−85619
32501.000330.99340−772−69379
42501.000330.99355−639−678−39
52501.000330.99660−476−373103
62501.000330.99492−586−54145
72500.99660.9995421029484
82500.993550.9999258263755
Table 11. Control rod assembly positions.
Table 11. Control rod assembly positions.
Temperature VariationT
(°C)
RE1 (mm)RE2
(mm)
SH1
(mm)
SH2
(mm)
SH3
(mm)
Temperature increase250207208248248248
274212213254253254
283240239253253254
293283283253253254
302308307255255256
Temperature decrease300408409502162162
290283284254254254
280285285502162162
270232232502162162
250119119502162163
Table 12. Comparison of calculated and measured temperature reactivity coefficients.
Table 12. Comparison of calculated and measured temperature reactivity coefficients.
Temperature (°C)Measured Value (pcm/°C)Calculated Value (pcm/°C)Error
274−3.78 ± 0.55−4.23−0.45
283−3.52 ± 0.49−3.78−0.26
293−3.54 ± 0.47−3.98−0.44
302−3.88 ± 0.52−4.30−0.42
290−4.46 ± 0.73−4.280.18
280−4.05 ± 0.58−3.920.13
270−4.31 ± 0.58−3.990.32
250−4.39 ± 0.58−4.160.23
Table 13. Isotopic composition of MA.
Table 13. Isotopic composition of MA.
Nuclides237Np241Am243Am244Cm245Cm
Composition (%)56.226.4125.120.28
Table 14. Impact of different nuclides on Keff.
Table 14. Impact of different nuclides on Keff.
NuclidesMA-Free237Np241Am243Am244Cm245CmMixed MA
Keff1.000330.974540.974850.974871.004901.070340.97607
Δkeff-−0.02579−0.02548−0.025460.004570.07001−0.02426
Table 15. Keff under varied MA isotopic compositions.
Table 15. Keff under varied MA isotopic compositions.
Composition (%)0258
Keff1.000330.976070.958760.95022
Δkeff-−0.02426−0.04157−0.05011
Ρ (pcm)33−2452−4301−5239
Δρ-−2485−1849−938
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Liu, J.; Shang, R.; Tan, J.; Zhang, R.; Meng, Y.; Chen, Y.; Li, L. Monte Carlo-Based Simulation of Reactivity and Transmutation in the CEFR Sodium-Cooled Fast Reactor. Appl. Sci. 2025, 15, 11534. https://doi.org/10.3390/app152111534

AMA Style

Liu J, Shang R, Tan J, Zhang R, Meng Y, Chen Y, Li L. Monte Carlo-Based Simulation of Reactivity and Transmutation in the CEFR Sodium-Cooled Fast Reactor. Applied Sciences. 2025; 15(21):11534. https://doi.org/10.3390/app152111534

Chicago/Turabian Style

Liu, Jianquan, Rongbin Shang, Jie Tan, Rui Zhang, Yuqian Meng, Yubo Chen, and Lin Li. 2025. "Monte Carlo-Based Simulation of Reactivity and Transmutation in the CEFR Sodium-Cooled Fast Reactor" Applied Sciences 15, no. 21: 11534. https://doi.org/10.3390/app152111534

APA Style

Liu, J., Shang, R., Tan, J., Zhang, R., Meng, Y., Chen, Y., & Li, L. (2025). Monte Carlo-Based Simulation of Reactivity and Transmutation in the CEFR Sodium-Cooled Fast Reactor. Applied Sciences, 15(21), 11534. https://doi.org/10.3390/app152111534

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