Dynamic Positioning Interval Based On Reciprocal Forecasting Error (DPI-RFE) Algorithm for Energy-Efficient Mobile IoT Indoor Positioning

Alper Saylam, Nur Kelesoglu, Rifat Orhan Çikmazel, Mert Nakıp, V. Rodoplu
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Abstract

We develop an algorithm called "Dynamic Positioning Interval based on Reciprocal Forecasting Error (DPIRFE)" for energy-efficient mobile Internet of Things (IoT) Indoor Positioning (IP). In contrast with existing IP algorithms, DPIRFE forecasts the future trajectory of a mobile IoT device by using machine learning and dynamically adjusts the positioning interval based on the reciprocal instantaneous forecasting error, thereby dynamically trading off transmit energy consumption against forecasting error. We compare the performance of DPIRFE with respect to the total transmit energy consumption and the average forecasting error against Constant Positioning Interval (CPI) and Positioning Interval based on Displacement (PID) algorithms. Our results show that DPI-RFE significantly outperforms both of these benchmark algorithms with respect to transmit energy consumption while achieving a competitive average forecasting error performance. These results open the way to the design of machine learning based trajectory forecasting algorithms that can be utilized for energy-efficient positioning in next-generation wireless networks.
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基于互反预测误差(DPI-RFE)算法的动态定位区间节能移动物联网室内定位
我们开发了一种名为“基于互反预测误差的动态定位间隔(DPIRFE)”的算法,用于节能移动物联网(IoT)室内定位(IP)。与现有的IP算法相比,DPIRFE通过机器学习预测移动物联网设备的未来轨迹,并根据瞬时预测误差的倒数动态调整定位间隔,从而动态地权衡传输能耗和预测误差。我们比较了DPIRFE在总传输能量消耗和基于恒定定位间隔(CPI)和基于位移(PID)的定位间隔算法的平均预测误差方面的性能。我们的研究结果表明,DPI-RFE在传输能耗方面显著优于这两种基准算法,同时实现了具有竞争力的平均预测误差性能。这些结果为基于机器学习的轨迹预测算法的设计开辟了道路,该算法可用于下一代无线网络中的节能定位。
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