首页> 外文会议>IEEE International Conference on Computational Intelligence and Virtual Environments for Measurement Systems and Applications >Wooden Framed House Structural Health Monitoring by System Identification and Damage Detection under Dynamic Motion with Artificial Intelligence Sensor using a Model of House including Braces
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Wooden Framed House Structural Health Monitoring by System Identification and Damage Detection under Dynamic Motion with Artificial Intelligence Sensor using a Model of House including Braces

机译:使用带有支撑的房屋模型,通过人工智能传感器对动态运动下的系统识别和损坏检测进行木结构房屋结构健康监测

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We are trying to discriminate damage areas of wood by machine learning. Last year, an experiment to identify the damage position of a piece of timber was conducted. This time, an experiment on the identification of the damage position of the house brace was performed. Only one brace was removed from the model of the house with 28 brace positions, and the damage position was assumed to be there. Vibration was applied to the model of the house, and the transferred vibration waveform was detected with a piezoelectric sensor. This vibration waveform was analyzed using a neural network. The classification on each side of the house succeeded after fixing the number of neurons in the hidden layer. After that, classification on the whole side of the house with 3-layer and 4-layer neural networks was conducted. The classification rate could be improved by changing the number of neurons in the hidden layer. As a result, the classification rate of the damage position of the entire house is 90.69%. Also, the classification rate is higher in the 4-layer neural network than in the 3-layer one.
机译:我们正在尝试通过机器学习来区分木材的损坏区域。去年,进行了确定一块木材损坏位置的实验。这次,进行了用于识别房屋支架的损坏位置的实验。仅从房子的模型中移除了一个支撑,该支撑具有28个支撑位置,并且假定损坏位置在该位置。将振动应用于房屋模型,并使用压电传感器检测传递的振动波形。使用神经网络分析该振动波形。固定隐藏层中的神经元数量后,房子两边的分类成功。之后,使用3层和4层神经网络对房屋的整个侧面进行分类。通过更改隐藏层中神经元的数量可以提高分类率。结果,整个房屋的损坏位置的分类率为90.69 \%。同样,在4层神经网络中的分类率比在3层神经网络中的分类率高。

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