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Intelligent Recognition of Safety Risk in Metro Engineering Construction Based on BP Neural Network

机译:基于BP神经网络的地铁工程建设安全风险智能认识

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With the rapid development of urban economy, the development of urban rail transit is becoming more and more rapid. As an energy-saving, land-saving, and environment-friendly green travel mode, the subway provides realistic and feasible solutions to the increasingly prominent traffic environment and other urban diseases in our country and brings a booming development in the subway construction industry with efforts to promote and build in many large cities. For a large number of subway constructions, it is particularly important to judge the construction safety status in time during the entire safety management process. Regularly conducting safety risk assessments on subway construction status can accurately predict and judge the types of accidents that occur. In order to solve the current safety risk assessment problems in the process of subway construction in our country, this paper is based on the BP neural network to intelligently identify the safety risks of subway construction, choosing from three aspects: human factors, management factors, and risk factors. We evaluate the construction safety of subway projects under construction through the model, predict the types of accidents that may occur, so that the construction unit can take corresponding preventive and improvement measures, improve the relevant safety technology of subway construction in a targeted manner, and propose corresponding reductions. We provide suggestions and measures for risk probability, to ensure that the construction unit discovers the danger in time and takes safety measures. The rectification measures provided theoretical basis and guidance.
机译:随着城市经济的快速发展,城市轨道交通的发展变得越来越快。作为节能,征收陆地和环保的绿色旅行模式,地铁为我国日益突出的交通环境和其他城市疾病提供了现实和可行的解决方案,并在地铁建筑行业带来了努力的蓬勃发展在许多大城市中促进和建造。对于大量地铁结构,在整个安全管理过程中及时判断施工安全地位尤为重要。定期对地铁施工状况进行安全风险评估可以准确预测和判断发生的事故类型。为了解决我国地铁建设过程中的现行安全风险评估问题,本文基于BP神经网络,智能地识别地铁建设的安全风险,从三个方面选择:人类因素,管理因素,和危险因素。我们通过模型评估地铁项目的建设安全,预测可能发生的事故类型,使建筑单位可以采取相应的预防和改进措施,以目标方式提高地铁建设的相关安全技术。提出相应的减少。我们提供风险概率的建议和措施,以确保建设单位及时发现危险并采取安全措施。整改措施提供了理论基础和指导。

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