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IoT Based Crowd Congestion and Stampede Avoidance in Hajj Using Wemos D1 with Machine Learning Approach

机译:基于IOT的人群拥塞和盖章避免在HAJJ中使用WEMOS D1与机器学习方法

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A huge mass gathering is a common scenario on various occasion when millions of people congest comparatively in a small place. During this time crowd management and controlling is become a very difficult and crucial task. Sometimes there were accidents such as stampede in which thousands of casualties during such convention. This research deals with crowd congestion to provide crowd safety and stampede avoidance. For this research purpose, Hajj is considered as the case study where we are proposed an E-wrist belt which is the integration of various sensor and Wemos D1 based on Internet of Things (IoT). Generally, stampede occurs in any large assembly mainly because of fall down of attendance, temperature and humidity. The machine learning approach is used for evaluating stampede probability by assessing temperature, humidity and fall of attendance. The objective of this research is to improve the existing crowd management controlling system in hajj by using E-wrist belt.
机译:当数百万人在一个小地方充满时,巨大的群众聚会是各种各样的场合。在此期间,人群管理和控制成为一个非常困难和至关重要的任务。有时,在此类公约中存在据踩踏事故如踩踏事件。这项研究涉及人群拥堵,以提供人群安全和踩踏避免。对于这种研究目的,HAJJ被认为是案例研究,其中我们提出了一种电子腕带,这是基于物联网(物联网)的各种传感器和WEMOS D1的集成。一般来说,踩踏事件发生在任何大型组件中,主要是因为出勤,温度和湿度落下。机器学习方法用于通过评估温度,湿度和出勤率来评估踩踏概率。本研究的目的是通过使用电子腕带改善HAJJ的现有人群管理控制系统。

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