基于人工智能技术的智能安全监管应用

Sun Rongrong, Song Xin, Li Qing, Ning Baifeng, Z. Bing
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引用次数: 0

摘要

智能安全监管是基于BIM、物联网、大数据、人工智能等技术的智能管理技术。传统的智能安全监控系统在数据量大、数据分析复杂的情况下,可靠性相对较低,容易造成数据通道拥塞,影响传输效率。本文通过对施工现场人、机、物、法、环境等关键监管要素的实时数据采集、分析和处理,为监管机构和责任方提供安全隐患动态识别、智能分析、主动预警等大数据服务。利用神经网络技术准确分析信道拥塞,利用支持向量机算法为通信和信息处理单元合理分配资源。实验结果表明,该方法能有效提高监管效率,改进监管手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Intelligent Safety Supervision Based on Artificial Intelligence Technology
Intelligent safety supervision is an intelligent management technology based on BIM, Internet of things, big data, artificial intelligence and other technologies. The reliability of traditional intelligent safety monitoring system is relatively low in the case of large amount of data and complex data analysis, which is easy to cause data channel congestion and affect transmission efficiency. In this paper, through real-time data collection, analysis and processing of key regulatory elements such as human, machine, material, law and environment on the construction site, it provides big data services such as dynamic identification, intelligent analysis and active early warning of potential safety hazards for regulatory agencies and responsible parties. Neural network technology is used to analyze channel congestion accurately, and support vector machine algorithm is used to allocate resources reasonably for communication and information processing units. The experimental results show that this method can effectively improve the supervision efficiency and improve the supervision means.
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