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Use of Neural Networks for Damage Assessment in a Steel Mast

机译:神经网络在钢桅杆中进行损伤评估

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In this paper the possibility of using a Multilayer Perceptron (MLP) network trained with the Backpropagation Algorithm for detecting location and size of a damage in a civil engineering structure is investigated. The structure considered is a 20 m high steel lattice mast subjected to wind excitation. The basic idea is to train a neural network with simulated patterns of the relative changes in natural frequencies and corresponding sizes and locations of damages in order to recognize the behaviour of the damaged as well as the undamaged structure. Subjecting this trained neural network to measured values should imply information about damages states and locations. The training data are obtained by an FEM of the mast. Different damage scenarios are established by simulating a damage in one of the eight lower diagonals. The eight lower diagonals are cut and provided with bolted joints. Each bolted joint consists of 4 slice plates giving the possibilities of simulating a 1/4, 1/2, 3/4 and full reduction of the area of a diagonal. A damage is simulated by removing one or more splice plates in these bolted joints. The utility of the neural network approach is demonstrated by a simulation study as well as full-scale tests where the mast is identified by an ARMA-model. The results show that a neural network trained with simulated data is capable for detecting location of a damage in a steel lattice mast when the network is subjected to experimental data.
机译:在本文中,研究了使用用背部衰退算法训练的多层的感知(MLP)网络用于检测土木工程结构损坏的位置和大小的训练。所考虑的结构是20米高的钢格式桅杆,受到风励磁。基本思想是训练具有自然频率的相对变化的模拟模式的神经网络,以及损坏的行为以及损坏的结构的相应尺寸和损坏的位置。对此培训的神经网络进行测量值应该意味着有关损坏状态和地点的信息。训练数据由桅杆的有限元获得。通过模拟八个下对角线中的一个损坏来建立不同的损坏方案。八个下对角线被切割并设有螺栓连接。每个螺栓接头由4个切片板组成,具有模拟1/4,1 / 2,3 / 4和完全降低对角线区域的可能性。通过在这些螺栓接头中移除一个或多个拼接板来模拟损坏。通过仿真研究和桅杆被ARMA模型识别的全规模测试,证明了神经网络方法的效用。结果表明,当网络经过实验数据时,用模拟数据训练的神经网络能够检测钢晶格桅杆中损坏的位置。

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