Y. Weerasinghe, M.W.P Maduranga, M. B. Dissanayake
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引用次数: 10
摘要
随着物联网(IoT)的出现,无线传感器网络(WSN)技术在不同应用中获取不同物理量方面发挥着重要作用。基于RSSI (Received Signal Strength Indicator,接收信号强度指示器)的室内定位方法以其低复杂度、可用性和低能耗等优点被广泛应用于WSN技术中。在本研究中,我们探索了联合应用基于RSSI值的前馈神经网络(FFNN)来识别运动物体或人的正确位置的可能性,这是基于物联网的环境辅助生活(AAL)应用的重要要求。搭建了RSSI数据远程采集实验试验台,该试验台包含信标节点和移动节点两种类型的节点。采用ESP 8266作为节点的控制器,基于IEEE 802.11标准。来自信标节点的RSSI值将通过蚊虫消息队列遥测传输(MQTT)代理发送到远程服务器,然后我们在远程服务器上开发的FFNN监督学习模型将二手地利用RSSI值。FFNN模型的输出给出了物体或人在二维空间中的位置。在研究的最后,利用统计评估模型对有效性进行了检验,结果证实了监督学习方法在基于RSSI的室内定位中的意义。
RSSI and Feed Forward Neural Network (FFNN) Based Indoor Localization in WSN
In the advent of Internet of Things (IoT), Wireless Sensor Network (WSN) technologies play an important role in acquisition of different physical quantities for different applications. The Received Signal Strength Indicator (RSSI) based indoor localization is a well-known localization method used in WSN technologies due to its low complexity, availability and low energy consumption. In this research we explore the possibility of applying RSSI value based Feed Forward Neural Network (FFNN) jointly to identify the correct location of a moving object or a person, which is an important requirement of IoT-based Ambient Assisted Living (AAL) applications. We setup an experimental test bed for the acquisition of RSSI data remotely, which contained two types of nodes called beacon node and the mobile node. The ESP 8266 is used as the controller for nodes, which is based on IEEE 802.11 standard. The RSSI values from the beacon nodes will be sent to a remote server via Mosquitto Message Queuing Telemetry Transport (MQTT) broker, and then the RSSI values will be secondhand utilized by the FFNN supervised learning model that we developed at the remote server. Output of FFNN model gives the location of the object or person in two dimensional (2D) space. In the end of the research, the validity is checked by using the statistical assessment models and the results substantiate the significance of using supervised learning method in RSSI based indoor positioning.