Millions of people have died all across the world because of the COVID-19 outbreak. Researchers worldwide are working together and facing many challenges to bring out the proper vaccines to prevent this infectious virus. Therefore, in this study, a system has been designed which will be adequate to stop the outbreak of COVID-19 by spreading awareness of the COVID-19 infected patient situated area. The model has been formulated for Location base COVID-19 patient identification using mobile crowdsourcing. In this system, the government will update the information about inflected COVID-19 patients. It will notify other users in the vulnerable area to stay at 6 feet or 1.8-meter distance to remain safe. We utilized the Haversine formula and circle formula to generate the unsafe area. Ten thousand valid information has been collected to support the results of this research. The algorithm is tested for 10 test cases every time, and the datasets are increased by 1000. The run time of that algorithm is growing linearly. Thus, we can say that the proposed algorithm can run in polynomial time. The algorithm's correctness is also being tested where it is found that the proposed algorithm is correct and efficient. We also implement the system, and the application is evaluated by taking feedback from users. Thus, people can use our system to keep themselves in a safe area and decrease COVID patients' rate.
翻译:由于COVID-19的爆发,全世界有数百万人死于COVID-19的疾病。世界各地的研究人员正在共同努力,并面临许多挑战,以拿出适当的疫苗来预防这种传染性病毒。因此,在本研究中,设计了一个系统,通过传播对COVID-19感染病人所在地区的认识,足以阻止COVID-19的爆发。模型是使用移动的众包为位置基COVID-19病人识别模型而设计的。在这个系统中,政府将更新关于隐蔽的COVID-19病人的信息。它将通知脆弱地区的其他用户留在6英尺或1.8米的距离以保持安全。我们利用Haversine公式和圆形公式来生成不安全的地区。我们收集了1万个有效信息来支持这一研究的结果。每次对10个测试病例进行测试,而数据集则增加1000。算法运行的时间是线性增长的。因此,我们可以说,提议的算法可以在多瑙米时间运行。我们正在测试的算法是否正确性也正在测试,因为在哪里发现拟议的算法用户的反馈是正确和高效的。我们用这个系统来进行这样的系统。我们用这个系统来评估。我们使用一个安全的计算方法。我们用一个系统可以降低。我们的人。我们使用一个系统。