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641.
为了以低成本、高时空分辨率进行大雾天气监测,提出一种利用无线通信链路进行基于深度学习的大雾天气监测方法。由于信道中不同浓度的大雾天气在信号中留有的特征不同,采集了4种不同浓度大雾下的无线电信号,建立无线电大雾天气监测数据集;通过在传统ResNet50网络中引入注意力机制并进行特征融合,得到改进后的A-ResNet50模型。利用A-ResNet50网络提取接收信号中留有的不同浓度大雾天气的特征,对四类不同浓度大雾天气进行分类识别,达到监测大雾天气的目的。所提方法在建立的数据集上进行了验证,相较于其他传统分类算法,本方法性能最优,最终识别准确率达到86.18 %,结果证明了该方法的可行性和有效性。  相似文献   
642.
针对大气层内高速机动目标的拦截问题,提出了一种基于双延迟深度确定性策略梯度(TD3)算法的深度强化学习制导律,它直接将交战状态信息映射为拦截弹的指令加速度,是一种端到端、无模型的制导策略。首先,将攻防双方的交战运动学模型描述为适用于深度强化学习算法的马尔科夫决策过程,之后通过合理地设计算法训练所需的交战场景、动作空间、状态空间和网络结构,并引入奖励函数整形和状态随机初始化,构建了完整的深度强化学习制导算法。仿真结果表明:与比例导引和增强比例导引两种方案相比,深度强化学习制导策略在脱靶量更小的同时能够降低对中制导精度的要求;具有良好的鲁棒性和泛化能力,并且计算负担较小,具备在弹载计算机上运行的条件。  相似文献   
643.
张瑞卿  钟睿  徐毅 《上海航天》2023,40(1):80-85
航天器在轨执行某些任务时,其质量参数会发生未知变化,传统控制方法在这种情况下控制效果不佳。本文提出基于强化学习的航天器姿态控制器设计方法,该方法在姿态控制器训练过程中不需要对航天器进行动力学建模,不依赖航天器的质量参数。当质量参数发生较大未知变化时,训练好的控制器仍然可以保持较好的控制效果。仿真测试表明:使用基于强化学习方法训练的控制器确实具有良好的鲁棒性。此外,回报函数的设计会明显影响姿态控制器的训练,因此对不同的回报函数设计进行了研究。  相似文献   
644.
《中国航空学报》2023,36(3):16-29
Geometric and working condition uncertainties are inevitable in a compressor, deviating the compressor performance from the design value. It’s necessary to explore the influence of geometric uncertainty on performance deviation under different working conditions. In this paper, the geometric uncertainty influences at near stall, peak efficiency, and near choke conditions under design speed and low speed are investigated. Firstly, manufacturing geometric uncertainties are analyzed. Next, correlation models between geometry and performance under different working conditions are constructed based on a neural network. Then the Shapley additive explanations (SHAP) method is introduced to explain the output of the neural network. Results show that under real manufacturing uncertainty, the efficiency deviation range is small under the near stall and peak efficiency conditions. However, under the near choke conditions, efficiency is highly sensitive to flow capacity changes caused by geometric uncertainty, leading to a significant increase in the efficiency deviation amplitude, up to a magnitude of ?3.6%. Moreover, the tip leading-edge radius and tip thickness are two main factors affecting efficiency deviation. Therefore, to reduce efficiency uncertainty, a compressor should be avoided working near the choke condition, and the tolerances of the tip leading-edge radius and tip thickness should be strictly controlled.  相似文献   
645.
In recent years, deep learning (DL) methods have proven their efficiency for various computer vision (CV) tasks such as image classification, natural language processing, and object detection. However, training a DL model is expensive in terms of both complexities of the network structure and the amount of labeled data needed. In addition, the imbalance among available labeled data for different classes of interest may also adversely affect the model accuracy. This paper addresses these issues using a new convolutional neural network (CNN) based architecture. The proposed network incorporates both spatial and spectral information that combines two sub-networks: spatial-CNN and spectral-CNN. The spectral-CNN extracts spectral information, while spatial-CNN captures spatial information. Moreover, to make the features more robust, a multiscale spatial CNN architecture is introduced using different kernels. The final feature vector is formed by concatenating the outputs obtained from both spatial-CNN and spectral-CNN. To address the data imbalance problem, a generative adversarial network (GAN) was used to generate data for the underrepresented class. Finally, relatively a shallower network architecture was used to reduce the number of parameters in the network and improve the processing speed. The proposed model was trained and tested on Senitel-2 images for the classification of the debris-covered glacier. The results showed that the proposed method is well-suited for mapping and monitoring debris-covered glaciers at a large scale with high classification accuracy. In addition, we compared the proposed method with conventional machine learning approaches, support vector machine (SVM), random forest (RF) and multilayer perceptron (MLP).  相似文献   
646.
In terms of multiple temporal and spatial scales, massive data from experiments, flow field measurements, and high-fidelity numerical simulations have greatly promoted the rapid development of fluid mechanics. Machine Learning(ML) provides a wealth of analysis methods to extract potential information from a large amount of data for in-depth understanding of the underlying flow mechanism or for further applications. Furthermore, machine learning algorithms can enhance flow information and automat...  相似文献   
647.
《中国航空学报》2022,35(9):242-254
In recent years, the crack fault is one of the most common faults in the rotor system and it is still a challenge for crack position diagnosis in the hollow shaft rotor system. In this paper, a method based on the Convolutional Neural Network and deep metric learning (CNN-C) is proposed to effectively identify the crack position for a hollow shaft rotor system. Center-loss function is used to enhance the performance of neural network. Main contributions include: Firstly, the dynamic response of the dual-disks hollow shaft rotor system is obtained. The analysis results show that the crack will cause super-harmonic resonance, and the peak value of it is closely related to the position and depth of the crack. In addition, the amplitude near the non-resonant region also has relationship with the crack parameters. Secondly, we proposed an effective crack position diagnosis method which has the highest 99.04% recognition accuracy compared with other algorithms. Then, the influence of penalty factor on CNN-C performance is analyzed, which shows that too high penalty factor will lead to the decline of the neural network performance. Finally, the feature vectors are visualized via t-distributed Stochastic Neighbor Embedding (t-SNE). Naive Bayes classifier (NB) and K-Nearest Neighbor algorithm (KNN) are used to verify the validity of the feature vectors extracted by CNN-C. The results show that NB and KNN have more regular decision boundaries and higher recognition accuracy on the feature vectors data set extracted by CNN-C, indicating that the feature vectors extracted by CNN-C have great intra-class compactness and inter-class separability.  相似文献   
648.
Multi-beam antenna and beam hopping technologies are an effective solution for scarce satellite frequency resources. One of the primary challenges accompanying with Multi-Beam Satellites(MBS) is an efficient Dynamic Resource Allocation(DRA) strategy. This paper presents a learning-based Hybrid-Action Deep Q-Network(HADQN) algorithm to address the sequential decision-making optimization problem in DRA. By using a parameterized hybrid action space,HADQN makes it possible to schedule the beam patte...  相似文献   
649.
《中国航空学报》2023,36(8):422-453
An on-machine measuring (OMM) system with a laser displacement sensor (LDS) is designed for measuring free-form surfaces of hypersonic aircraft’s radomes. To improve the measurement accuracy of the OMM system, a novel Iteratively Automatic machine learning Boosted hand-eye Calibration (IABC) method is proposed. Both the hand-eye relationship and LDS measurement errors can be calibrated in one calibration process without any hardware changes via IABC. Firstly, a new objective function is derived, containing analytical parameters of the hand-eye relationship and LDS errors. Then, a hybrid calibration model composed of two kernels is proposed to solve the objective function. One kernel is the analytical kernel designed for solving analytical parameters. Another kernel is the automatic machine learning (AutoML) kernel designed to model LDS errors. The two kernels are connected with stepwise iterations to find the best calibration results. Compared with traditional methods, hand-eye experiments show that IABC reduces the calibration RMSE by about 50%. Verification experiments show that IABC reduces the measurement deviations by about 25%-50% and RMSEs within 40%. Even when the training data are obviously less than the test data, IABC performs well. Experiments demonstrate that IABC is more accurate than traditional hand-eye methods.  相似文献   
650.
为了保证碳纤维材料产品的可靠性,消除各种可能存在的缺陷,有必要采取有效的手段对其质量进行检查。结合图像识别算法的基于X射线无损检测技术被认为是一种快速有效的解决方案。然而,加工材料的表面通常附有包含各种信息的标签,这些标签会在检测中对缺陷的识别造成干扰,甚至被误检为缺陷。主要研究基于图像特征的产品标签噪声恢复方法及其在缺陷检测中的应用,该方法可以有效地消除噪声,而不影响其余的图像信息,从而确保算法正确识别材料中的缺陷。  相似文献   
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