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Intelligent question answering method for construction safety hazard knowledge based on deep semantic mining
Abstract Timely safety hazard management can reduce the probability of safety accidents at construction sites. However, the formulation of safety hazard management measures is a time-consuming and labor-intensive process. This paper describes a safety hazard knowledge question answering method to automatically generate safety hazard management measures. The method builds a deep learning network fusing Bidirectional Encoder Representation from Transformer (BERT), Bidirectional Gated Recurrent Unit (BiGRU), and Self-attention mechanism to extract text semantic features. Taking the text semantic feature extraction mechanism as a subnet, an answer selection model based on a Siamese neural network is built to implement the deep matching of safety hazard questions and management measures. Experimental results from hydraulic engineering construction demonstrate that the proposed model outperforms the existing answer selection model. Meanwhile, a question answering system based on the proposed model is developed to address safety hazard management problems, which verifies the reliability and applicability of the model.
Highlights A hybrid feature extraction method integrating BERT, BiGRU, and Self-attention mechanisms is proposed. A novel answer selection model fusing Siamese neural network and text feature extraction method is built. Safety hazard knowledge question answering system based on answer selection model is developed. The construction significance of method was explained in combination with the actual project.
Intelligent question answering method for construction safety hazard knowledge based on deep semantic mining
Abstract Timely safety hazard management can reduce the probability of safety accidents at construction sites. However, the formulation of safety hazard management measures is a time-consuming and labor-intensive process. This paper describes a safety hazard knowledge question answering method to automatically generate safety hazard management measures. The method builds a deep learning network fusing Bidirectional Encoder Representation from Transformer (BERT), Bidirectional Gated Recurrent Unit (BiGRU), and Self-attention mechanism to extract text semantic features. Taking the text semantic feature extraction mechanism as a subnet, an answer selection model based on a Siamese neural network is built to implement the deep matching of safety hazard questions and management measures. Experimental results from hydraulic engineering construction demonstrate that the proposed model outperforms the existing answer selection model. Meanwhile, a question answering system based on the proposed model is developed to address safety hazard management problems, which verifies the reliability and applicability of the model.
Highlights A hybrid feature extraction method integrating BERT, BiGRU, and Self-attention mechanisms is proposed. A novel answer selection model fusing Siamese neural network and text feature extraction method is built. Safety hazard knowledge question answering system based on answer selection model is developed. The construction significance of method was explained in combination with the actual project.
Intelligent question answering method for construction safety hazard knowledge based on deep semantic mining
Tian, Dan (Autor:in) / Li, Mingchao (Autor:in) / Ren, Qiubing (Autor:in) / Zhang, Xiaojian (Autor:in) / Han, Shuai (Autor:in) / Shen, Yang (Autor:in)
09.11.2022
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Automatic Construction Safety Report Using Visual Question Answering and Segmentation Model
Springer Verlag | 2025
|British Library Online Contents | 2015
|DOAJ | 2023
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