Dash Amiya, Bandopadhay Shuvabrata, Samal Soumya Ranjan, Poulkov Vladimir
School of Engineering and Technology, BML Munjal University, Gurugram 122413, India.
School of Physical Sciences, Banasthali Vidyapith University, Sikar 304022, India.
Sensors (Basel). 2023 Jul 17;23(14):6473. doi: 10.3390/s23146473.
An accident during the transport of liquefied petroleum gas (LPG) via a tanker vehicle leads to the leakage of a flammable substance, causing devastation. In such a situation, the appropriate action with the shortest possible delay can minimize subsequent losses. However, the decision-making mechanism remains unable to detect the occurrence of an accident and evaluate its extent within the critical time. This paper proposes an automatic framework for leakage detection and its consequence prediction during the external transportation of LPG using artificial intelligence (AI) and the internet of things (IoT). An AI model is developed to predict the probable consequences of the accident in terms of the diameter of risk contours. An IoT framework is proposed in which the developed AI model is deployed in the edge device to detect any leakage of gas during transportation, to predict its probable consequences, and to report it to the remotely located disaster management team for initiating appropriate action. A prototype of the proposed model is built and its performance is successfully tested. The proposed solution would significantly help to identify efficient disaster management techniques by allowing for quick leakage detection and the prediction of its probable consequences.
通过油罐车运输液化石油气(LPG)期间发生的事故导致易燃物质泄漏,造成破坏。在这种情况下,尽可能短时间内采取适当行动可将后续损失降至最低。然而,决策机制在关键时间内仍无法检测到事故发生并评估其严重程度。本文提出了一个利用人工智能(AI)和物联网(IoT)对LPG外部运输过程中的泄漏进行检测及其后果预测的自动框架。开发了一个AI模型,根据风险轮廓直径预测事故可能产生的后果。提出了一个物联网框架,其中将开发的AI模型部署在边缘设备中,以检测运输过程中的任何气体泄漏,预测其可能产生的后果,并将其报告给位于远程的灾害管理团队以采取适当行动。构建了所提模型的原型并成功测试了其性能。所提解决方案通过实现快速泄漏检测及其可能后果的预测,将极大地有助于确定有效的灾害管理技术。