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A Comparison Analysis of BLE-Based Algorithms for Localization in Industrial Environments

机译:基于BLE的算法在工业环境中的定位算法的比较分析

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Proximity beacons are small, low-power devices capable of transmitting information at a limited distance via Bluetooth low energy protocol. These beacons are typically used to broadcast small amounts of location-dependent data (e.g., advertisements) or to detect nearby objects. However, researchers have shown that beacons can also be used for indoor localization converting the received signal strength indication (RSSI) to distance information. In this work, we study the effectiveness of proximity beacons for accurately locating objects within a manufacturing plant by performing extensive experiments in a real industrial environment. To this purpose, we compare localization algorithms based either on trilateration or environment fingerprinting combined with a machine-learning based regressor (k-nearest neighbors, support-vector machines, or multi-layer perceptron). Each algorithm is analyzed in two different types of industrial environments. For each environment, various configurations are explored, where a configuration is characterized by the number of beacons per square meter and the density of fingerprint points. In addition, the fingerprinting approach is based on a preliminary site characterization; it may lead to location errors in the presence of environment variations (e.g., movements of large objects). For this reason, the robustness of fingerprinting algorithms against such variations is also assessed. Our results show that fingerprint solutions outperform trilateration, showing also a good resilience to environmental variations. Given the similar error obtained by all three fingerprint approaches, we conclude that k-NN is the preferable algorithm due to its simple deployment and low number of hyper-parameters.
机译:接近信标是小型的低功率器件,能够通过蓝牙低能量协议以有限距离发送信息。这些信标通常用于广播少量的位置相关的数据(例如,广告)或检测附近对象。然而,研究人员已经表明,信标还可用于将接收的信号强度指示(RSSI)转换为距离信息的室内定位。在这项工作中,我们研究了通过在真正的工业环境中进行了广泛的实验来准确地定位制造工厂内对象的邻近信标的效力。为此目的,我们将基于的定位算法与三边形或环境进行比较,与基于机器学习的回归线(k最近邻居,支持 - 向量机器或多层Perceptron)相结合。在两种不同类型的工业环境中分析了每种算法。对于每个环境,探索各种配置,其中配置的特征在于每个平方米的信标数和指纹点的密度。此外,指纹识别方法基于初步现场表征;它可能导致环境变化存在(例如,大物体的移动)的位置误差。因此,还评估了针对这种变化的指纹识别算法的鲁棒性。我们的结果表明,指纹解决方案优于三边形,表现出对环境变化的良好弹性。鉴于所有三个指纹方法获得的类似错误,我们得出结论,由于其简单部署和低数量的超参数,K-NN是优选的算法。

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