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引用次数: 0
摘要
建筑行业正在经历数字化,但由于其在开发有效网络风险评估工具方面进展缓慢,越来越容易受到网络攻击。本研究开发了一种以机器学习(ML)为中心的方法,用于评估建筑项目的常见网络风险。该方法由三部分组成:(1) 在风险预测方面,使用蒙特卡罗模拟生成模拟数据集,用于模型训练。建议采用两阶段模型开发策略,为每种风险选择最佳模型。(2) 在风险因素分析方面,采用 ML 特征分析方法来识别对特定项目风险有重大影响的风险因素。(3) 在风险降低策略方面,提出了一种贪婪优化算法,以有效解决高贡献风险因素。为了证明所开发方法的适用性,我们在一个实际建筑项目中进行了案例研究。
Assessing cyber risks in construction projects: A machine learning-centric approach
The construction industry is undergoing digitalization, but it is increasingly vulnerable to cyber attacks due to its slow pace in developing effective cyber risk assessment tools. This study develops a Machine Learning (ML)-centric approach to assess common cyber risks for construction projects. This approach comprises three components: (1) For risk prediction, a simulated dataset is generated using Monte Carlo simulations, which is utilized for model training. A two-phase model development strategy is proposed to select the optimal model for each risk. (2) For risk factor analysis, ML feature analysis methods are adapted to identify risk factors that contribute significantly to risks of specific projects. (3) For the risk reduction strategy, a greedy optimization algorithm is proposed to efficiently address high-contributing risk factors. To demonstrate the applicability of the developed approach, a case study is conducted on a real construction project.
期刊介绍:
Developments in the Built Environment (DIBE) is a recently established peer-reviewed gold open access journal, ensuring that all accepted articles are permanently and freely accessible. Focused on civil engineering and the built environment, DIBE publishes original papers and short communications. Encompassing topics such as construction materials and building sustainability, the journal adopts a holistic approach with the aim of benefiting the community.