Showing 1,141 - 1,160 results of 18,468 for search 'significantly ((((larger decrease) OR (((we decrease) OR (a decrease))))) OR (mean decrease))', query time: 0.65s Refine Results
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    Presentation 1_Prehospital tranexamic acid decreases early mortality in trauma patients: a systematic review and meta-analysis.pdf by Yi Li (1144)

    Published 2025
    “…</p>Conclusion<p>Prehospital TXA decreases early (24-h) mortality in trauma patients without a significant increase in the risk of VTE and other complications, and further studies are still needed to improve and optimize its management strategy.…”
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    Raw data. by Jia Zhu (135506)

    Published 2025
    “…The remaining working conditions did not exhibit a significant difference. However, the observed decreasing trend was consistent with previously documented research. …”
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    Fig 4 - by Hyuk Sung Yoon (20208672)

    Published 2024
    Subjects:
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    Top view of the experimental setup. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Parameters of energy harvesting. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Graph for Max Amplitude/Length at G<sub>y</sub> = 0. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Graph for maximum Frequency at G<sub>y</sub> = 0. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Graph for maximum Power at G<sub>y</sub> = 0. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Summary of experimentation results. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Piezoelectric eel. by Muhammad Hammad Bucha (21736111)

    Published 2025
    “…By increasing the surface roughness of the bluff body, the lock-in region decreases and as a result, the harvested power from that bluff body is reduced. …”
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    Geometric manifold comparison visualization by Eloy Geenjaar (21533195)

    Published 2025
    “…While many tr-FC approaches have been proposed, most are linear approaches, e.g. computing the linear correlation at a timestep or within a window. In this work, we propose to use a generative non-linear deep learning model, a disentangled variational autoencoder (DSVAE), that factorizes out window-specific (context) information from timestep-specific (local) information. …”
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    Hyperparameter ranges by Eloy Geenjaar (21533195)

    Published 2025
    “…While many tr-FC approaches have been proposed, most are linear approaches, e.g. computing the linear correlation at a timestep or within a window. In this work, we propose to use a generative non-linear deep learning model, a disentangled variational autoencoder (DSVAE), that factorizes out window-specific (context) information from timestep-specific (local) information. …”
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    Convolutional vs RNN context encoder by Eloy Geenjaar (21533195)

    Published 2025
    “…While many tr-FC approaches have been proposed, most are linear approaches, e.g. computing the linear correlation at a timestep or within a window. In this work, we propose to use a generative non-linear deep learning model, a disentangled variational autoencoder (DSVAE), that factorizes out window-specific (context) information from timestep-specific (local) information. …”