학술논문

Research on Intelligent Grading Evaluation of Water Conservancy Project Safety Risks Based on Deep Learning
Document Type
article
Source
Water, Vol 15, Iss 8, p 1607 (2023)
Subject
deep learning
hazard sources
risk evaluation
transformer model
task scenarios
a priori knowledge
Hydraulic engineering
TC1-978
Water supply for domestic and industrial purposes
TD201-500
Language
English
ISSN
2073-4441
Abstract
With the rise of artificial intelligence and big data technologies, it is increasingly significant to apply these emerging technologies to scientific decision-making in water conservancy project construction management in the face of many problems in the process of water conservancy project construction. Different from using traditional assessment methods for risk classification of water conservancy construction hazards, this paper integrates a priori attention and constructs a transformer risk prediction model based on a sliding window, which deeply explores the data value of water conservancy construction hazards information, further predicts the risk level of water conservancy construction hazards and realizes efficient and intelligent management of water conservancy project construction hazard identification management.