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A multi-level behavior network-based dangerous situation recognition method in cloud computing environments

机译:云计算环境中基于多行为网络的危险态势识别方法

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There are a variety of dangerous situations that elementary school students encounter when they commute to their school. Given that smart phone is the one of devises utilized a lot by the elementary school students, it is possible to develop and utilize the safety apps of the smart phone for the elementary school students to protect them from the variety of the dangerous situations. For an example, when the elementary school students encounter dangerous situations in cloud computing environments, the urgent situations can be notified to their parents automatically and the smart phones of theirs can inter-perform with diverse kinds of deployed sensors and actuators. One of research introduces an app that utilizes behavior networks. By applying behavior network two times for recognizing dangerous situations, two different situations can be recognized and handled separately. However, given that the dangerous situations are more complicated, further research is required to improve the processes of the app. This paper proposes a multi-level behavior network-designed method to automatically determine dangerous situations. Behavior network is applicable to the circumstances by using measured values of smart phone sensors. To recognize dangerous situations by utilizing behavior networks, Bayesian probability is also utilized. By learning dangerous situations iteratively, multiple dangerous situations were recognized and handled accurately, which increases the safety of elementary school students.
机译:小学生上下班时会遇到各种各样的危险情况。鉴于智能手机是小学生大量使用的设备之一,有可能开发和利用小学生智能手机的安全应用程序,以保护他们免受各种危险情况的侵害。例如,当小学生在云计算环境中遇到危险情况时,可以将紧急情况自动通知给父母,而他们的智能手机可以与各种已部署的传感器和执行器互操作。一项研究介绍了一种利用行为网络的应用程序。通过两次使用行为网络来识别危险情况,可以分别识别和处理两种不同的情况。但是,鉴于危险情况更加复杂,需要进一步研究以改进应用程序的流程。本文提出了一种多层次行为网络设计的方法来自动确定危险情况。通过使用智能手机传感器的测量值,行为网络适用于这种情况。为了利用行为网络识别危险情况,还利用了贝叶斯概率。通过反复学习危险情况,可以准确识别并处理多种危险情况,从而提高了小学生的安全性。

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