Gill Eliezer Zahid, Cardone Daniela, Amelio Alessia
Department of Engineering and Geology, University "G. d'Annunzio" Chieti-Pescara, Pescara, Italy.
HPC Laboratory, Department of Engineering and Geology, University "G. d'Annunzio" Chieti-Pescara, Pescara, Italy.
Front Artif Intell. 2024 Dec 12;7:1474932. doi: 10.3389/frai.2024.1474932. eCollection 2024.
The construction industry is rapidly adopting Industry 4.0 technologies, creating new opportunities to address persistent environmental and operational challenges. This review focuses on how Artificial Intelligence (AI), Machine Learning (ML), and Deep Learning (DL) are being leveraged to tackle these issues. It specifically explores AI's role in predicting air pollution, improving material quality, monitoring worker health and safety, and enhancing Cyber-Physical Systems (CPS) for construction. This study evaluates various AI and ML models, including Artificial Neural Networks (ANNs) and Support Vector Machines SVMs, as well as optimization techniques like whale and moth flame optimization. These tools are assessed for their ability to predict air pollutant levels, improve concrete quality, and monitor worker safety in real time. Research papers were also reviewed to understand AI's application in predicting the compressive strength of materials like cement mortar, fly ash, and stabilized clay soil. The performance of these models is measured using metrics such as coefficient of determination ( ), Root Mean Squared Error (RMSE) and Mean Absolute Error (MAE). Furthermore, AI has shown promise in predicting and reducing emissions of air pollutants such as PM2.5, PM10, NO, CO, SO, and O. In addition, it improves construction material quality and ensures worker safety by monitoring health indicators like standing postures, electrocardiogram, and galvanic skin response. It is also concluded that AI technologies, including Explainable AI and Petri Nets, are also making advancements in CPS for the construction industry. The models' performance metrics indicate they are well-suited for real-time construction operations. The study highlights the adaptability and effectiveness of these technologies in meeting current and future construction needs. However, gaps remain in certain areas of research, such as broader AI integration across diverse construction environments and the need for further validation of models in real-world applications. Finally, this research underscores the potential of AI and ML to revolutionize the construction industry by promoting sustainable practices, improving operational efficiency, and addressing safety concerns. It also provides a roadmap for future research, offering valuable insights for industry stakeholders interested in adopting AI technologies.
建筑行业正在迅速采用工业4.0技术,为应对长期存在的环境和运营挑战创造了新机遇。本综述聚焦于如何利用人工智能(AI)、机器学习(ML)和深度学习(DL)来解决这些问题。它特别探讨了AI在预测空气污染、提高材料质量、监测工人健康与安全以及增强建筑领域的信息物理系统(CPS)方面的作用。本研究评估了各种AI和ML模型,包括人工神经网络(ANNs)和支持向量机(SVMs),以及诸如鲸鱼算法和飞蛾火焰优化等优化技术。对这些工具预测空气污染物水平、改善混凝土质量以及实时监测工人安全的能力进行了评估。还查阅了研究论文,以了解AI在预测水泥砂浆、粉煤灰和稳定黏土等材料抗压强度方面的应用。这些模型的性能通过决定系数( )、均方根误差(RMSE)和平均绝对误差(MAE)等指标来衡量。此外,AI在预测和减少PM2.5、PM10、NO、CO、SO和O等空气污染物排放方面显示出前景。此外,它通过监测站立姿势、心电图和皮肤电反应等健康指标来提高建筑材料质量并确保工人安全。研究还得出结论,包括可解释AI和Petri网在内的AI技术在建筑行业的CPS中也在取得进展。模型的性能指标表明它们非常适合实时建筑运营。该研究突出了这些技术在满足当前和未来建筑需求方面的适应性和有效性。然而,在某些研究领域仍存在差距,例如在不同建筑环境中更广泛的AI集成以及在实际应用中对模型进行进一步验证的必要性。最后,本研究强调了AI和ML通过促进可持续实践、提高运营效率和解决安全问题来变革建筑行业的潜力。它还为未来研究提供了路线图,为有兴趣采用AI技术的行业利益相关者提供了有价值的见解。