Research on Bridge Health Management Prediction System Based on deep learning

Zhichao Liu
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Abstract

The bridge management is investigated and studied. At present, the bridge management mode and management means are old. The bridge data collected, analyzed and managed by manual method brings a lot of inconvenience to the maintenance and management; If the technical archives of some bridges are lost, we can only rely on qualitative understanding and the experience of technicians to analyze the technical status of bridges, and make decisions according to past experience to determine the bridge maintenance and repair scheme; At the same time, as the maintenance funds are not guaranteed and the technical force is low, the necessary daily maintenance of the bridge cannot be guaranteed, resulting in the rapid deterioration of the diseases and defects of the bridge, reducing the bearing capacity of the bridge and affecting the normal use of the bridge. Research on the prediction system of bridge health management based on deep learning, and develop an artificial intelligence system, which can predict the bridge health status according to the data collected from the sensors installed on the bridges all over the world.
基于深度学习的桥梁健康管理预测系统研究
对桥梁管理进行了调查研究。目前,桥梁管理模式和管理手段较为陈旧。手工采集、分析和管理桥梁数据,给维护管理带来诸多不便;如果一些桥梁的技术档案丢失,我们只能依靠定性的了解和技术人员的经验来分析桥梁的技术状况,并根据过去的经验进行决策,以确定桥梁的维护和维修方案;同时,由于养护资金得不到保障,技术力量低下,无法保证对桥梁进行必要的日常养护,导致桥梁病害和缺陷迅速恶化,降低了桥梁的承载能力,影响了桥梁的正常使用。研究基于深度学习的桥梁健康管理预测系统,开发人工智能系统,根据安装在世界各地桥梁上的传感器收集的数据,预测桥梁健康状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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