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Uniform Depth Channel Flow: Problem Solving01:18

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To calculate the flow rate for a trapezoidal channel, first, identify the bottom width, side slope, and flow depth of the channel. The cross-sectional area (A) corresponding to the depth of flow (y), channel bottom width (B), and side slope (θ) is determined by:Next, calculate the wetted perimeter, which includes the bottom width and the sloped side lengths in contact with the water. Using the values of the cross-sectional area and the wetted perimeter, determine the hydraulic radius by...
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Uniform depth channel flow keeps fluid depth consistent along channels such as irrigation canals. In natural channels, such as rivers, approximate uniform flow is often assumed. This condition occurs when the channel’s bottom slope matches the energy slope, balancing potential energy lost from gravity with head loss due to shear stress. This balance prevents depth changes along the channel length, resulting in a steady, uniform flow.Uniform flow in open channels with a constant cross-section...
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Rapidly Varying Flow01:24

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Gradually Varying Flow01:29

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Related Experiment Video

Updated: Oct 22, 2025

Experimental Investigation of Secondary Flow Structures Downstream of a Model Type IV Stent Failure in a 180&#176; Curved Artery Test Section
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OneFlow: One-Class Flow for Anomaly Detection Based on a Minimal Volume Region.

Lukasz Maziarka, Marek Smieja, Marcin Sendera

    IEEE Transactions on Pattern Analysis and Machine Intelligence
    |August 30, 2021
    PubMed
    Summary
    This summary is machine-generated.

    OneFlow is a novel flow-based classifier for anomaly detection, identifying minimal volume regions without relying on outlier structure. This method enhances outlier detection accuracy in real-world applications.

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    Area of Science:

    • Machine Learning
    • Computer Vision
    • Data Science

    Background:

    • Anomaly detection is crucial for identifying unusual patterns in data.
    • Existing density-based methods can be sensitive to the structure of outliers.
    • One-class classification aims to model normal data to detect deviations.

    Purpose of the Study:

    • To introduce OneFlow, a flow-based one-class classifier for anomaly detection.
    • To develop a method that is robust to the structure of outliers.
    • To create a classifier that defines a minimal volume bounding region.

    Main Methods:

    • Utilizes flow models combined with a Bernstein quantile estimator.
    • Employs a training approach where gradients propagate near the decision boundary, similar to Support Vector Machines (SVM).
    • Focuses on learning a parametric form for the bounding region.

    Main Results:

    • OneFlow demonstrates independence from the structure of outliers.
    • The classifier effectively identifies a minimal volume bounding region.
    • Achieves superior performance compared to existing methods on real-world anomaly detection tasks.

    Conclusions:

    • OneFlow offers a robust and effective approach to anomaly detection.
    • The parametric bounding region is suitable for diverse applications, including 3D point cloud analysis.
    • The method provides a significant advancement over traditional density-based techniques.