基于KHNN模型的施工现场安全质量分析

Muhammad Imran Khan, Muhammad Qamer, Atta Mehroz
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引用次数: 0

摘要

通过有效的危险识别和缓解来改善建筑工地的安全至关重要。本研究旨在利用人工神经网络和优化算法预测返工、缺陷和相关成本。传统的安全规划方法缺乏施工前危害分析。为了检查缺陷,分析了各种指标,包括每100万美元范围的返工成本和伤害率。培训和保护不足等无效的安全措施导致了事故。这项工作确定了通过危险识别来提高工人安全绩效的方法。神经网络模型的输入可以预测返工工人、缺陷和成本。安全执行的目的是在施工前系统地识别危险。使用实际数据评估模型性能。在MATLAB中实现了两种软计算方法——人工神经网络和优化算法。磷虾群和灰狼优化技术优化了神经网络结构中隐藏神经元的权值。这些算法的预测优于粒子群和遗传算法等其他现有方法。本研究通过系统的施工前危害分析和建模,提供了一个定量预测返工、缺陷和相关成本的框架。提出的优化增强神经网络模型可以帮助施工管理人员实施有针对性的安全改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction site safety and quality analysis utilizing KHNN Model
Improving construction site safety through effective hazard identification and mitigation is critical. This study aims to predict rework, defects, and associated costs using artificial neural networks and optimization algorithms. Traditional safety planning approaches lack pre-construction hazard analysis. To examine deficiencies, various metrics were analyzed, including rework costs per $1M scope and injury rates. Ineffective safety practices like inadequate training and protection have led to accidents. This work identifies approaches to enhance worker safety performance through hazard identification. Inputs to a neural network model predict rework workers, defects, and costs. Safety execution aims to systematically identify hazards before construction. Model performance using actual data was evaluated. Two soft computing methods - artificial neural network and optimization algorithms - were implemented in MATLAB. Krill herd and grey wolf optimization techniques optimized hidden neuron weights in the neural network structure. Predictions from these algorithms outperformed other existing methods like particle swarm and genetic algorithms. This study provides a framework to quantitatively forecast rework, defects, and associated costs through systematic pre-construction hazard analysis and modeling. The proposed optimizationenhanced neural network models can help construction managers implement targeted safety improvements.
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