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Load estimation from photoelastic fringe patterns underudcombined normal and shear forces

机译:根据 ud下的光弹条纹图案估算载荷法向力和剪切力的组合

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摘要

Recently there has been some spurt of interests to use photoelastic materials for sensing applications. This has been successfully applied for designing a number of signal-based sensors, however, there have been limited efforts to design image-based sensors on photoelasticity which can have wider applications in term of actual loading and visualisation. The main difficulty in achieving this is the infinite loading conditions that may generate same image on the material surface. This, however, can be useful for known loading situations as this can provide dynamic and actual conditions of loading in real time. This is particularly useful for separating components of forces in and out of the loading plane. One such application is the separation of normal and shear forces acting on the plantar surface of foot of diabetic patients for predicting ulceration. In our earlier work we have used neural networks to extract normal force information from the fringe patterns using image intensity. This paper considers geometric and various other statistical parameters in addition to the image intensity to extract normal as well as shear force information from the fringe pattern in a controlled experimental environment. The results of neural network output with the above parameters and their combinations are compared and discussed. The aim is to generalise the technique for a range of loading conditions that can be exploited for whole-field load visualisation and sensing applications in biomedical field.
机译:近来,涌现出一些将光弹性材料用于传感应用的兴趣。这已经成功地用于设计许多基于信号的传感器,但是,在光弹性方面设计基于图像的传感器的努力有限,在实际加载和可视化方面可以有更广泛的应用。实现此目标的主要困难是无限加载条件,该条件可能会在材料表面生成相同的图像。但是,这对于已知的加载情况可能很有用,因为这可以实时提供动态和实际的加载条件。这对于分离进出负载平面的力分量特别有用。一种这样的应用是分离作用在糖尿病患者足底表面上的法向力和剪切力,以预测溃疡。在我们的早期工作中,我们使用神经网络使用图像强度从条纹图案中提取法向力信息。本文除了考虑图像强度外,还考虑了几何参数和其他各种统计参数,以在受控的实验环境中从条纹图案中提取法线和剪力信息。比较并讨论了具有上述参数的神经网络输出结果及其组合。目的是推广适用于一系列载荷条件的技术,可将其用于生物医学领域的全场载荷可视化和传感应用。

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