Public Building BIM Safety Early Warning Algorithm Based on Improved Cyclic Wavelet Neural Network

Junli Wang
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Abstract

This paper uses an improved cyclic wavelet neural network algorithm to predict the safety of public buildings in BIM. First, by introducing the BIM safety warning model, the feasibility of the BIM model in the safety warning of public buildings is analyzed. Then, this paper proposes an improved cyclic wavelet neural network training algorithm, which composes the parameters of the wavelet neural network into a multi-dimensional vector, which is used as the particles in the algorithm to evolve. The BIM module extracts 4M1E basic factor information, combines the cyclic wavelet neural network algorithm to establish a safety prediction model, and adjusts the unsafe behavior and equipment in the BIM model through the prediction results. The prediction results show that the algorithm can effectively predict the safety problems of public buildings
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基于改进循环小波神经网络的公共建筑BIM安全预警算法
本文采用改进的循环小波神经网络算法对BIM中的公共建筑进行安全预测。首先,通过引入BIM安全预警模型,分析BIM模型在公共建筑安全预警中的可行性。然后,本文提出了一种改进的循环小波神经网络训练算法,将小波神经网络的参数组成一个多维向量,作为算法中的粒子进行进化。BIM模块提取4M1E基本因子信息,结合循环小波神经网络算法建立安全预测模型,通过预测结果对BIM模型中的不安全行为和设备进行调整。预测结果表明,该算法能够有效地预测公共建筑的安全问题
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