Xu Rongxu, Kim Bong Wan, Moe Sa Jim Soe, Khan Anam Nawaz, Kim Kwangsoo, Kim Do Hyeun
Department of Artificial Intelligence, Sejong University, Seoul 05006, Republic of Korea.
Electronics and Telecommunications Research Institute, Daejeon, 34129, Republic of Korea.
Heliyon. 2023 Aug 29;9(9):e19408. doi: 10.1016/j.heliyon.2023.e19408. eCollection 2023 Sep.
Construction sites remain highly perilous work environments globally, exposing employees to numerous hazards that can result in severe injuries or fatalities. To resolve this several solutions based on quantitative approaches have been developed. However the wide adoption of preexisting solutions is hindered by lack of accuracy. To this aim the development of an efficient fuzzy inference system has become a de-facto necessity. In this paper, we propose an edge inference framework based on multi-layered fuzzy logic for safety of construction workers. The proposed system employs an edge computing-based framework where IoT devices collect, store, and manage data to offer safety services. Multi-layer fuzzy logic is applied to infer the worker safety index based on rules that consist of construction environment factors. The multi-layer fuzzy logic is fed with weather, building and worker data collected from IoT nodes as inputs. The safety risk assessment process involves analyzing various factors. Weather information, such as temperature, humidity, and rainfall data, is considered to assess the risk to safety. The condition of the building is evaluated by analyzing load, strain, and inclination data. Additionally, the safety risk to workers is analyzed by taking into account their heart rate and location information. The initial layer's outputs are utilized as inputs for the subsequent layer, where an integrated safety index is inferred. Ultimately, the safety index is generated as the final outcome. The system's results are conveyed through warnings and an error measurement on a safety scale ranging from 1 to 10. Furthermore, web service is developed to allow the construction management to check the worker safety condition of the construction site in real-time, while also monitoring the operational status of the IoT devices, allowing for the early detection of sensor malfunction and the subsequent guarantee of worker safety. Extensive evaluations conducted to test the performance of the developed framework verify its efficiency to provide improved risk assessment, real-time monitoring, and proactive safety actions, encouraging a safer and more productive work environment.
在全球范围内,建筑工地仍然是高度危险的工作环境,员工面临着众多可能导致重伤或死亡的危险。为了解决这个问题,已经开发了几种基于定量方法的解决方案。然而,由于缺乏准确性,现有解决方案的广泛采用受到了阻碍。为此,开发一个高效的模糊推理系统已成为事实上的必要。在本文中,我们提出了一种基于多层模糊逻辑的用于建筑工人安全的边缘推理框架。所提出的系统采用基于边缘计算的框架,物联网设备在其中收集、存储和管理数据以提供安全服务。多层模糊逻辑被应用于根据由建筑环境因素组成的规则来推断工人安全指数。多层模糊逻辑以从物联网节点收集的天气、建筑和工人数据作为输入。安全风险评估过程涉及分析各种因素。考虑温度、湿度和降雨数据等天气信息来评估安全风险。通过分析荷载、应变和倾斜数据来评估建筑物的状况。此外,通过考虑工人的心率和位置信息来分析对工人的安全风险。初始层的输出被用作后续层的输入,在后续层中推断出综合安全指数。最终,生成安全指数作为最终结果。系统的结果通过警告和从1到10的安全等级误差测量来传达。此外,还开发了网络服务,以便施工管理人员实时检查建筑工地的工人安全状况,同时还能监控物联网设备的运行状态,从而能够早期检测传感器故障并随后保障工人安全。为测试所开发框架的性能而进行的广泛评估验证了其在提供改进的风险评估、实时监测和主动安全行动方面的效率,从而促进更安全、更高效的工作环境。