首页> 外文期刊>Journal of Construction Engineering and Management >Enhancing Construction Hazard Recognition with High-Fidelity Augmented Virtuality
【24h】

Enhancing Construction Hazard Recognition with High-Fidelity Augmented Virtuality

机译:通过高保真增强虚拟技术增强施工过程中的危险识别

获取原文
获取原文并翻译 | 示例
           

摘要

Most construction safety management processes rely on the hazard recognition capability of workers. Hazards that remain unidentified can potentially result in catastrophic injuries and illnesses. As such, thorough hazard recognition is fundamentally essential to protect the health and well-being of the construction workforce. Despite its importance, recent research indicates that a large proportion of hazards remain unrecognized, exposing workers to unmitigated risks. Surprisingly, safety research has not adequately focused on developing specialized strategies to develop construction worker competency in hazard recognition. This paper reports a two-year research effort with the following objectives: develop a high-fidelity augmented virtual environment [System for Augmented Virtuality Environment Safety (SAVES)] that helps develop workers' hazard recognition skill through risk-free learning and immediate feedback; embed cognitive retrieval mnemonics to improve long-term retention of cues for construction hazards; evaluate the effectiveness of the strategy as an intervention on active construction crew by using the multiple baseline testing approach. The first two objectives were accomplished through a combined effort from a panel of 14 subject matter experts and five academic researchers. This was followed by field experiments to test the hypothesis that the experience with SAVES improves the proportion of hazards identified by participants during subsequent field operations. The findings revealed that crews, on average, were able to only identify 46% of hazards prior to the introduction of the intervention, but were able to recognize 77% of hazards in the postintervention phase. This study represents the first endeavor to measure the effectiveness of augmented virtuality and serious gaming in developing hazard signal detection skills in construction field settings.
机译:大多数建筑安全管理过程都依赖于工人的危害识别能力。尚未查明的危险有可能导致灾难性伤害和疾病。因此,彻底识别危害对于保护建筑工人的健康和福祉至关重要。尽管它很重要,但最近的研究表明,很大一部分危险仍未被发现,使工人面临无法缓解的风险。出人意料的是,安全研究并未充分集中于制定专门的策略来提高建筑工人在危害识别中的能力。本文报告了一项为期两年的研究工作,其目标如下:开发高保真增强虚拟环境[增强型虚拟环境安全系统(SAVES)],该技术可通过无风险学习和即时反馈来帮助提高工人的危害识别技能;嵌入认知检索助记符,以提高长期保留施工隐患线索的能力;通过使用多基线测试方法,评估该策略作为对积极施工人员的干预措施的有效性。前两个目标是由14位主题专家和5位学术研究人员组成的小组共同完成的。随后进行现场试验以验证以下假设:SAVES的经验可提高参与者在随后的现场操作中识别出的危险比例。调查结果表明,在实施干预措施之前,工作人员平均只能识别出46%的危险,而在干预后阶段却能够识别出77%的危险。这项研究代表了在增强建筑现场环境中的危险信号检测技能的过程中,衡量增强虚拟性和严肃游戏的有效性的第一项努力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号