يعرض 1,141 - 1,160 نتائج من 18,468 نتيجة بحث عن 'significantly ((((((we decrease) OR (mean decrease))) OR (a decrease))) OR (larger decrease))', وقت الاستعلام: 0.45s تنقيح النتائج
  1. 1141
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    Presentation 1_Prehospital tranexamic acid decreases early mortality in trauma patients: a systematic review and meta-analysis.pdf حسب Yi Li (1144)

    منشور في 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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  7. 1147

    Raw data. حسب Jia Zhu (135506)

    منشور في 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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  9. 1149

    Fig 4 - حسب Hyuk Sung Yoon (20208672)

    منشور في 2024
    الموضوعات:
  10. 1150

    Top view of the experimental setup. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  11. 1151

    Parameters of energy harvesting. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  12. 1152

    Graph for Max Amplitude/Length at G<sub>y</sub> = 0. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  13. 1153

    Graph for maximum Frequency at G<sub>y</sub> = 0. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  14. 1154

    Graph for maximum Power at G<sub>y</sub> = 0. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  15. 1155

    Summary of experimentation results. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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. …"
  16. 1156

    Piezoelectric eel. حسب Muhammad Hammad Bucha (21736111)

    منشور في 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 حسب Eloy Geenjaar (21533195)

    منشور في 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. …"
  19. 1159

    Hyperparameter ranges حسب Eloy Geenjaar (21533195)

    منشور في 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. …"
  20. 1160

    Convolutional vs RNN context encoder حسب Eloy Geenjaar (21533195)

    منشور في 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. …"