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相关概念视频

Yield Criteria for Ductile Materials under Plane Stress01:25

Yield Criteria for Ductile Materials under Plane Stress

168
In designing structural elements and machine parts using ductile materials, it is crucial to ensure that these components withstand applied stresses without yielding. Yielding is initially determined through a tensile test, which evaluates the material's response to uniaxial stress. However, tensile stress is insufficient when components face biaxial or plane stress conditions This condition requires advanced criteria to predict failure.
The Maximum Shearing Stress Criterion, also known as...
168
Porosity in Cement Paste01:18

Porosity in Cement Paste

163
The porosity of concrete is a measure of the void spaces within its structure. These spaces impact its strength and durability significantly. When water and cement interact, a chemical reaction called hydration creates a semi-solid paste. This paste includes combined water, making up approximately 23% of the cement's dry mass, and gel water, which fills minuscule voids known as gel pores, accounting for about 28% of the cement gel volume.
The balance of water to cement in the mix is...
163
Structural Classification of Joints01:20

Structural Classification of Joints

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Joints, also known as articulations, are classified based on their structural characteristics, i.e., based on whether the articulating surfaces of the adjacent bones are directly connected by fibrous connective tissue or cartilage, or whether the articulating surfaces contact each other within a fluid-filled joint cavity. These differences serve to divide the joints of the body into three structural classifications.
A fibrous joint is where the adjacent bones are united by fibrous connective...
3.5K
Stress-Strain Diagram - Ductile Materials01:24

Stress-Strain Diagram - Ductile Materials

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The stress-strain relationship in ductile materials such as structural steel or aluminium is intricate and progresses through several stages. When a specimen is loaded, it initially exhibits a linear length increase, depicted by a steep straight line on the stress-strain diagram. It indicates the material is elastically deforming and will return to its original shape once unloaded. However, when a critical stress value is reached, plastic deformation begins. This stage sees substantial...
794

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相关实验视频

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Author Spotlight: Efficient Image Recognition Using Directional Gradient Histogram Technique and Support Vector Machines
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一个基于CutPaste-Mix的自主监督模型,用于柔性铁管道表面缺陷分类.

Hanxin Zhang1, Qian Sun1, Ke Xu1

  • 1Collaborative Innovation Center of Steel Technology, University of Science and Technology Beijing, Beijing 100083, China.

Sensors (Basel, Switzerland)
|October 14, 2023
PubMed
概括

本研究介绍了一种自我监督的算法,用于分类软性铁管道 (DCIP) 的缺陷图像. 该方法有效地识别异常,为工业表面检查和模型培训提供了具有成本效益的解决方案.

科学领域:

  • 工业自动化和机器视觉.
  • 材料科学和非破坏性测试.

背景情况:

  • 工业部件的手动检查,如形铁管 (DCIP) 产生了大量的数据集,使得缺陷识别成本高且耗时.
  • 现有的自动化系统通常需要大量的标记数据进行培训,这对缺陷分类构成了挑战.

研究的目的:

  • 开发一个具有成本效益的,自我监督的二进制分类算法,用于DCIP图像中的自动缺陷检测.
  • 为了减少与工业环境中识别缺陷图像相关的手工工作和成本.

主要方法:

  • 一个自我监督的二进制分类算法被用于缺陷图像分类.
  • 使用CutPaste-Mix数据增强策略来增强无缺陷和缺陷数据.
  • 一个深层卷积神经网络与高斯密度估计相结合,以计算异常分数来分类异常区域.

主要成果:

  • 拟议的方法在专用DCIP图像数据集和实际现场应用中都实现了强大的性能.
  • 取得了99.5的令人印象深刻的曲线下面积 (AUC),证明了高度的分类准确性.
  • 该系统被证明是后续DCIP表面检查模型培训中数据支持的成本效益高的解决方案.

结论:

  • 自主监督方法为工业环境中缺陷检测提供了一种高效准确的方法.
关键词:
这就是 CutPaste-Mix 的意思.缺陷分类 缺陷分类 缺陷分类软性铁管道 软性铁管道自主监督的自我监督

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  • 这种技术大大降低了在柔性铁管道中识别缺陷的成本和手工劳动.
  • 开发的算法为训练先进的表面检查模型提供了有价值的数据支持.