This review paper explores the application of deep learning techniques in abstractive text summarization, with a focus on their relevance to medical datasets. Abstractive text summarization is a crucial area of natura...
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Federated Learning (FL), an emerging distributed Artificial Intelligence (AI) technique, is susceptible to jamming attacks during the wireless transmission of trained models. In this letter, we introduce a jamming att...
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Unstructured Numerical Image Dataset Separation (UNIDS) method employing an enhanced unsupervised clustering technique. The objective is to delineate an optimal number of distinct groups within the input grayscale (G-...
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For permanent magnet synchronous machines(PMSMs),accurate inductance is critical for control design and condition *** to magnetic saturation,existing methods require nonlinear saturation model and measurements from mu...
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For permanent magnet synchronous machines(PMSMs),accurate inductance is critical for control design and condition *** to magnetic saturation,existing methods require nonlinear saturation model and measurements from multiple load/current conditions,and the estimation is relying on the accuracy of saturation model and other machine parameters in the *** harmonic produced by harmonic currents is inductance-dependent,and thus this paper explores the use of magnitude and phase angle of the speed harmonic for accurate inductance *** estimation models are built based on either the magnitude or phase angle,and the inductances can be from d-axis voltage and the magnitude or phase angle,in which the filter influence in harmonic extraction is considered to ensure the estimation *** inductances can be estimated from the measurements under one load condition,which is free of saturation ***,the inductance estimation is robust to the change of other machine *** proposed approach can effectively improve estimation accuracy especially under the condition with low current *** and comparisons are conducted on a test PMSM to validate the proposed approach.
With the rapid development of modern intelligent transportation systems, connected and automated vehicles (CAVs) have garnered significant attention due to their advanced communication and decision-making capabilities...
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With the rapid development of modern intelligent transportation systems, connected and automated vehicles (CAVs) have garnered significant attention due to their advanced communication and decision-making capabilities. Intelligent collaborative decision-making in dynamic traffic scenarios poses significant challenges in the research of CAV technology. Strategies and methods have been developed to tackle the collaboration problem towards different scenarios. However, most existing studies have not been fully investigated the performance optimization and practicability of the vehicle collaboration at signal-free intersections. Meanwhile, the urban signal-free intersections represent a critical application scenario for vehicle cooperation, where a thorough study has not been given yet. Therefore, this study intends to solve the vehicle collaboration problem utilizing the deep reinforcement learning approach. Initially, the problem is formulated as an elaborated Markov decision process, comprising the state space, the action space, and the reward function. Then, a shared Advantage Actor-Critic (A2C) model is proposed to effectively extract temporal and spatial features through the shared network, thereby improving the consistency of feature learning processes between the Actor and Critic networks. Furthermore, the asynchronous training strategy employed in this study involves multiple training processes concurrently, thereby enhancing the model's convergence speed and stability. Finally, the effectiveness of the proposed method is verified in two typical intersection scenarios. Simulation results reveal that our method exhibits competitive performance compared with existing approaches, and an improvement up to 30% and 40% can be achieved in the retreat time and the averaged delay time. Additionally, the field experiments have been conducted on a miniaturized autonomous driving platform, verifying the considerable potential of the proposed method for real-world applicati
Breast Cancer Detection introduces a prominent confrontation for researchers and clinical experts as it is one of the major public health issues and is weighed as a leading root for cancer correlated deaths among wome...
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Currently,applications accessing remote computing resources through cloud data centers is the main mode of operation,but this mode of operation greatly increases communication latency and reduces overall quality of se...
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Currently,applications accessing remote computing resources through cloud data centers is the main mode of operation,but this mode of operation greatly increases communication latency and reduces overall quality of service(QoS)and quality of experience(QoE).Edge computing technology extends cloud service functionality to the edge of the mobile network,closer to the task execution end,and can effectivelymitigate the communication latency ***,the massive and heterogeneous nature of servers in edge computing systems brings new challenges to task scheduling and resource management,and the booming development of artificial neural networks provides us withmore powerfulmethods to alleviate this ***,in this paper,we proposed a time series forecasting model incorporating Conv1D,LSTM and GRU for edge computing device resource scheduling,trained and tested the forecasting model using a small self-built dataset,and achieved competitive experimental results.
Blood transfusion is a medical procedure that involves transfusing blood or one of its components from one or more donors into a patient. Digital technology and machine learning have played a crucial role in the blood...
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Several newly developed techniques and tools for manipulating images, audio, and videos have been introduced as an outcome of the recent and rapid breakthroughs in AI, machine learning, and deep learning. While most a...
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The extensive spread of DeepFake images on the internet has emerged as a significant challenge, with applications ranging from harmless entertainment to harmful acts like blackmail, misinformation, and spreading false...
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