Artificial intelligence-based public safety data resource management in smart cities

IF 1.1 Q3 COMPUTER SCIENCE, THEORY & METHODS Open Computer Science Pub Date : 2023-01-01 DOI:10.1515/comp-2022-0271
Hang Zhao
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引用次数: 1

Abstract

Abstract With the development of urbanization, urban public safety is becoming more and more important. Urban public safety is not only the foundation of urban development, but also the basic guarantee for the stability of citizens’ lives. In the context of today’s artificial intelligence (AI), the concept of smart cities is constantly being practiced. Urban public safety has also ushered in some new problems and challenges. To this end, this article aimed to use AI technology to build an efficient public safety data resource management system in a smart city environment. A major goal of AI research was to enable machines to perform complex tasks that normally require human intelligence. In this article, a data resource management system was constructed according to the city security system and risk data sources, and the data processing method of neural network (NN) was adopted. Factors affecting urban public safety were processed as indicator data. In this article, the feedforward back-propagation neural network (BPNN) was used to predict the index data in real time, which has realized the management functions of risk monitoring and early warning of public safety data indicators. The BPNN model was used to test the urban risk early warning capability of the constructed system. BPNN is a multi-layer feed-forward NN trained according to the error back-propagation algorithm, which is one of the most widely used NN models. The results showed that the average prediction accuracy of the BPNN model for indicator prediction was about 89%, which was 16.1% higher than that of the traditional NN model. The average risk warning accuracy rate of the BPNN model was 90.3%, which was 16.5% higher than that of the traditional NN model. This shows that the BPNN model using AI technology in this article can more efficiently and accurately carry out early warning of risk and management of urban public safety.
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基于人工智能的智慧城市公共安全数据资源管理
摘要随着城市化的发展,城市公共安全显得越来越重要。城市公共安全是城市发展的基础,也是市民生活稳定的基本保障。在今天的人工智能(AI)背景下,智慧城市的概念正在不断实践。城市公共安全也迎来了一些新的问题和挑战。为此,本文旨在利用人工智能技术构建一个智能城市环境中高效的公共安全数据资源管理系统。人工智能研究的一个主要目标是使机器能够执行通常需要人类智能的复杂任务。本文根据城市安全系统和风险数据源,采用神经网络的数据处理方法,构建了一个数据资源管理系统。将影响城市公共安全的因素作为指标数据进行处理。本文采用前馈-反向传播神经网络(BPNN)对指标数据进行实时预测,实现了公共安全数据指标的风险监测和预警管理功能。利用BPNN模型对所构建系统的城市风险预警能力进行了测试。BPNN是根据误差反向传播算法训练的多层前馈神经网络,是应用最广泛的神经网络模型之一。结果表明,BPNN模型用于指标预测的平均预测准确率约为89%,比传统的NN模型高出16.1%。BPNN模型的平均风险预警准确率为90.3%,比传统NN模型高16.5%。这表明,本文中使用人工智能技术的BPNN模型可以更高效、更准确地进行城市公共安全风险预警和管理。
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来源期刊
Open Computer Science
Open Computer Science COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
4.00
自引率
0.00%
发文量
24
审稿时长
25 weeks
期刊最新文献
Task offloading in mobile edge computing using cost-based discounted optimal stopping A Bi-GRU-DSA-based social network rumor detection approach Artificial intelligence-based public safety data resource management in smart cities Application of fingerprint image fuzzy edge recognition algorithm in criminal technology Application of SSD network algorithm in panoramic video image vehicle detection system
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