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Indoor localization with Bluetooth technology using Artificial Neural Networks

机译:使用人工神经网络通过蓝牙技术进行室内定位

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The most important function of a sensor network is to collect information from the environment. For many applications, it is important that the location or sensor that originates the collected information is ascertained. This article presents the detection of a mobile sensor's location in an indoor environment with the help of known location sensors (anchors) placed in the environment. Anchor sensors measure temperature, which is sent to a mobile phone via Bluetooth. The mobile phone can measure RSSI values of incoming signals as well as the temperature information coming from each of the anchor sensors. The Artificial Neural Network(ANN) model presented in this article was developed to detect the mobile phone location. The ANN model accepts the Received Signal Strength Indicator (RSSI) measured by the mobile phone and the anchor sensor ID number as inputs. The ANN was first trained and tested, after which the error between mobile phone locations obtained in test results and actual locations was calculated. The results were compared through the Centroid Localization (CL) method, as is known in the literature. According to the results thus obtained, it was shown that more accurate location detection was possible with the ANN model.
机译:传感器网络的最重要功能是从环境中收集信息。对于许多应用而言,确定起源于所收集信息的位置或传感器很重要。本文介绍了借助室内环境中已知的位置传感器(锚)来检测室内环境中移动传感器的位置。锚定传感器测量温度,该温度通过蓝牙发送到手机。移动电话可以测量输入信号的RSSI值以及来自每个锚点传感器的温度信息。本文介绍的人工神经网络(ANN)模型是为检测手机位置而开发的。 ANN模型接受手机测量的接收信号强度指示器(RSSI)和锚点传感器ID号作为输入。首先对ANN进行了培训和测试,然后计算了测试结果中获得的手机位置与实际位置之间的误差。如文献所知,通过质心定位(CL)方法比较了结果。根据这样获得的结果,表明使用ANN模型可以进行更精确的位置检测。

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