Online: July 08,2025 DOI: 10.11887/j.issn.1001-2486.25020002
Abstract:As a representative of the next generation of gyroscopes , atomic gyroscopes have become a focal point of research in the field of high-precision inertial navigation and has garnered significant attention due to its theoretically ultra-high precision, exceptional long-term stability, and immense potential for miniaturization and integration. Among them, the atom interferometric gyroscope, as a type of atomic gyroscope, had attracted widespread interest in the field of inertial navigation.. The development of atomic interferometric gyroscopes was systematically reviewed. Beginning with fundamental principles, it elaborates on critical technical components including atomic source preparation, interferometric loop construction, and phase resolution. Through rigorous analysis, the paper establishes intrinsic correlations between core performance parameters such as sensitivity and ultimate accuracy while elucidating their mutual constraint mechanisms. Furthermore, it reveals the physical origins of engineering bottlenecks including limited data update rates and narrow dynamic ranges.?Finally, the article outlines future development directions and trends for atomic interference gyroscopes, emphasizing the need for in-depth research in several areas: solving external interference issues to improve accuracy, improving chip processing technology for miniaturization and integration, enhancing combined inertial sensors, increasing data update rates, and exploring ways to expand dynamic range.
Online: July 08,2025 DOI: 10.11887/j.issn.1001-2486.25010007
Abstract:A modified physical vapor deposition method for the controllable growth of α-In2Se3 was proposed, and the broad-spectrum response performance of three thicknesses of α-In2Se3 nanosheets in the visible to near-infrared wavelength range was systematically studied. The results indicate that the thickness of α-In2Se3 nanosheets can significantly regulate the photoelectric performance, and the photoresponsivity and specific detection rate increase with increasing thickness. In addition, it was found that the α-In2Se3 with a thickness of 32.8 nm exhibited a photocurrent anisotropy ratio (dichroic ratio) of 4 at 635 nm, indicating good polarization-sensitive detection functionality. In summary, the two-dimensional α-In2Se3 prepared by the physical vapor deposition method demonstrates a wide visible-infrared spectral response and good polarization detection ability, making it an ideal candidate material for two-dimensional multifunctional optoelectronic devices.
周丹峰 , 朱鹏翔 , 谭亦秋 , 王连春 , 李 杰 , 陈 强
Online: July 08,2025 DOI: 10.11887/j.issn.1001-2486.23080020
Abstract:Due to the low damping characteristic of the superconducting electrodynamic suspension (EDS) system which may cause suspension instability problem, a six degree-of-freedom dynamic model for the high speed maglev sled system is established, and it is found that its suspension damping would become negative when the traveling speed exceeds 23.6 m/s, resulting in suspension instability to the maglev sled. The vertical damping ratio of the EDS system is calculated using the least square fitting method, and the relationship between the vertical damping and the speed is then obtained. To stablilize the suspension system, a distributed dynamic vibration absorbers (DVA) scheme is proposed, and the effects of the DVA parameters on the suspension stability are investigated; to minimize the influence of the DVA scheme on the acceleration performance of the maglev sled, the feasibility of applying low mass (≤ 1kg) DVAs to the maglev sled is disccussed; further, the vibration suppression effect of this scheme is investigated considering the vertical misalignments of guideway girders, which shows that the proposed scheme can significantly increase the damping and stability of the suspension system, and it also well suppresses the vibration of the sled-body caused by misalignments of the ground suspension coils. This scheme provides a useful reference for the design of the suspension system of the maglev sled system, the vaccum tube high speed maglev train, etc.
Online: July 08,2025 DOI: 10.11887/j.issn.1001-2486.23070017
Abstract:In view of the insufficient mining of implicit associative relationships and the problem of neglecting the temporal evolution factor, we propose a domain-specific social events detection method via temporal evolution feature mining. Our model divides data into slices by time, and takes duplicate event records from different sources into account which reflects the importance of events, and constructs entity interaction graph, which reduces the impact of database error. Multi-relational graph convolutional network is improved to update graph structure information of historical evolution sequence by interaction relationships. Attention mechanism is used to learn core features to obtain global embedding of sequence units. Implicit association is mined sufficiently. Based on recurrent neural network, temporal evolution features are extracted to obtain the global embedding and the temporal evolution factor is mined effectively. Experiment results show that our method can be applied to detection task, which is better than existing methods.
Online: July 08,2025 DOI: 10.11887/j.issn.1001-2486.23050020
Abstract:The efficient online exploration of intelligent agents is important in reinforcement learning tasks, but still faces the problem of low utilization of interactive data with environment, or the need for additional tasks’ data. To solve this problem, an online exploration latent variable that obtained the characteristics of current task to assist the agents to behave was introduced. There was no need for additional multi-task data or additional environmental interaction steps in the current task. The exploring latent variable was updated in the learnable environment model, and the environment model underwent supervised updates based on the intelligent agent and real environment interaction data. The exploration in advance in the simulated environment model was assisted by the exploring latent variable, and thus the performance of agents in the real environment was improved. The performance in typical continuous control tasks was raised by about 30% in the experiments, which was of guiding significance for the single-task exploration and meta reinforcement learning research.
Online: July 16,2025
Abstract:The bevel gear is the core transmission component in the main reducer of a helicopter that realizes the power transmission of intersecting axes, whose performance and dynamic characteristics directly affect the operational stability of the helicopter transmission system. Taking into account factors such as transmission error and backlash, a nonlinear damage dynamic model of a bevel gear system with bending-torsion-axial coupling was established using the lumped-parameter method. In order to obtain the key parameter in the damage dynamics model, a slicing method for calculating the time-varying meshing stiffness of spur bevel gear pair was proposed, which breaks through the limitations of traditional potential energy method that can only be applied to cylindrical gear pair and can achieve rapid evaluation of time-varying meshing stiffness under different states. By comparing the model simulation and experimental results, it is shown that the established model can effectively simulate the dynamic response characteristics of the bevel gear system under normal and fault conditions, reveal the system fault response mechanism and fault mechanism, and provide theoretical basis and data support for the development of a helicopter transmission system health and usage monitoring system.
Online: July 16,2025
Abstract:Building upon the traditional physics-informed neural network, two improved methods, EmPINN and DL-PINN, are presented by incorporating dimension expansion and diverse physics loss functions. EmPINN innovatively introduces a neural network structure with residual connections and a dimension-expanding mechanism. DL-PINN, based on EmPINN, combines the dimension-expanding mechanism with gradient enhancement and variational physical information to incorporate physical information more effectively and improve the fitting capability of the neural network. Experimental results demonstrate that the proposed methods outperform traditional PINN method, achieving up to two orders of magnitude improvement in the accuracy of solving different partial differential equations.
Online: July 10,2025 DOI: 10.11887/j.issn.1001-2486.23060012
Abstract:To achieve better robustness of the deep clustering algorithm when facing complex data of different types, this paper combines a selective ensemble strategy with the deep clustering algorithm, proposing a deep clustering algorithm with fusion selective clustering ensemble. This approach effectively enhances the robustness and clustering performance of the deep clustering algorithm. The algorithm utilizes an autoencoder-based deep clustering algorithm with different initialization parameters to generate multiple diverse base clustering results. It constructs measures for ensemble similarity and diversity of base clusterings. A certain number of base clusterings with higher similarity and richer diversity were selected as candidates for clustering ensemble. The clustering ensemble strategy considers the reliability of clusters to construct a weighted graph consensus function. Experimental results demonstrate that the deep clustering algorithm with fusion selective clustering ensemble shows improved robustness and achieves better clustering results on various types of data compared to many existing clustering ensemble algorithms.
Online: July 08,2025
Abstract:Fluid-solid coupled heat transfer is regarded as a key challenge in the refined design of regenerative cooling thermal protection systems. From the perspective of fluid-solid heat transfer, the calculation methods for heat transfer between hot gas and the solid chamber wall were introduced, the heat transfer calculation methods of coolants within cooling channels were presented, and the special factors affecting heat transfer between the coolant and the wall were analyzed, including secondary flow, supercritical effects, and cracking characteristics, etc. For regenerative cooling systems, three fluid-solid coupled heat transfer calculation methods were proposed: the whole-domain solution method, the partition solution method based on correlation criteria, and the partition solution method based on continuity boundary conditions. In the field of unsteady heat transfer, the research progress of fluid-solid coupled unsteady calculation methods was reviewed, and the possible future development directions of this field were preliminarily discussed.
Online: July 08,2025
Abstract:Based on the application of laser active detection using the cat-eye effect, the model errors introduced in existing research due to the neglect of aperture obstruction was addressed. The laser echo efficiency under the influence of the aperture was modeled and simulated under no defocus, positive defocus, and negative defocus conditions. Numerical simulations were performed using Zemax to validate the model and simulation results. The results show that the maximum incident angle of the cat-eye effect decreases with increasing focal length and slightly increases with greater defocus. The echo efficiency decreases linearly with the increasing incident angle, and the rate of decrease accelerates as the focal length increases. When the objective lens radius and reticle diameter are both 25 mm, the focal length is 100 mm, the incident angle is 7.125°, and there is no defocus, the prediction errors in echo efficiency for the existing and proposed models are 152.65% and 1.21%, respectively. The findings enhance the existing theoretical model of laser active detection and provide valuable insights for optimizing detection system performance.