Artificial Intelligence (AI) Based Personnel Protective Equipment (PPE) Monitoring – Case Study in Rokan Drilling Operation

F. F. Rizki
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Abstract

Automatic Personal Protective Equipment (PPE) Monitoring System is a term for an image processing method which is used to identify compliance to PPE utilization practices by personnel on the field. The vast diversity and assortment of PPEs across companies make it quite challenging to take existing limited public dataset models from other companies and apply them directly to specific companies such as Pertamina Hulu Rokan. As a state-owned company that operates one of the largest fields in Indonesia with an extensive drilling program, Pertamina Hulu Rokan decided to use an Automatic PPE monitoring system with online Closed-Circuit Television (CCTV) units to enable recognition of PPE objects in drilling operations by the implementation of Artificial Intelligence. As a first step towards building this system, we proposed to build PPE datasets from various Rig areas and in different light conditions. The next step was to use deep learning technology such as Yolov4 and train the model using the PPE datasets to localize PPE objects used by personnel such as gloves, gloves-off, helmets, helmets-off, shoes, shoes-off, masks, masks-off, glasses, glasses-off. Our Preliminary results indicate that our method has been useful to identify compliance of PPE usage during operation work and to minimize the safety risk exposure of our personnel.
基于人工智能(AI)的人员防护装备(PPE)监控——芦坎钻井作业案例研究
个人防护装备(PPE)自动监测系统是一种图像处理方法的术语,用于识别现场人员对PPE使用规范的遵守情况。不同公司的pe种类繁多,这使得从其他公司获取现有有限的公共数据集模型并将其直接应用于特定公司(如Pertamina Hulu Rokan)非常具有挑战性。作为印尼最大油田之一的国有公司,Pertamina Hulu Rokan决定使用带有在线闭路电视(CCTV)单元的自动PPE监控系统,通过实施人工智能来识别钻井作业中的PPE物体。作为构建该系统的第一步,我们建议在不同的钻井平台区域和不同的光照条件下构建PPE数据集。下一步是使用Yolov4等深度学习技术,并使用PPE数据集训练模型,以定位人员使用的PPE对象,如手套、脱手套、头盔、脱头盔、鞋子、脱鞋、面具、脱面具、眼镜、脱眼镜。我们的初步结果表明,我们的方法对确定操作工作期间PPE使用的合规性和最大限度地减少我们人员的安全风险暴露是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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