A combined DASSA-BP and TSRK-MinMax algorithm for high accuracy beacon indoor positioning

J. Li, Heng Liu, Xinhua Lu, Shanwen Guan, Mengge Li
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Abstract

Beacon indoor positioning methods with Bluetooth has attracted the interest of researchers by its low cost, low energy consumption, and easy implementation. The key two steps of positioning in wireless systems are inference the accurate distance from the received signal strength indication (RSSI), and computing accurate location information from the inferred distance. The noise and multi-paths of the wireless channel will lead to complex nonlinearity relationship between RSSI and distance, which is difficult to modeled directly by the simple functions. Back Propagation (BP) neural networks can be used to construct ranging models with RSSI, but it will easily fall into local optimization which will lead to inaccurate. Besides, the MinMax localization algorithm used in the computing location information is easily affected by the fluctuation of the range value then will affect the localization accuracy. In this paper, a combined dynamic adaptive sparrow search (DASSA) with two-step residual network optimized MinMax (TSRK-MinMax) algorithm is proposed to improve the accuracy of beacon indoor localization. First, we use a dynamic adaptive sparrow search (DASSA) algorithm to optimize BP neural network to improve the ranging accuracy. Next, we utilize a K-Nearest Neighbor(KNN) algorithm to select the base stations which can receive the best signal. Then a two-step residual network are used to optimized MinMax algorithm (TSRK-MinMax) which leads to accuracy localization. The experimental results show that the overall localization error is reduced by 11.7%, which effectively improves the accuracy and robustness of the Beacon indoor localization.
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基于DASSA-BP和TSRK-MinMax算法的高精度室内信标定位
基于蓝牙的信标室内定位方法以其低成本、低能耗、易于实现等优点引起了研究人员的兴趣。无线系统定位的两个关键步骤是根据接收到的信号强度指示(RSSI)推断出准确的距离,并根据推断出的距离计算出准确的位置信息。无线信道的噪声和多径会导致RSSI与距离之间存在复杂的非线性关系,难以用简单的函数直接建模。BP (Back Propagation)神经网络可用于RSSI测距模型的构建,但容易陷入局部寻优,导致测距模型不准确。此外,在计算位置信息时使用的MinMax定位算法容易受到距离值波动的影响,从而影响定位精度。为了提高信标室内定位精度,本文提出了一种动态自适应麻雀搜索(DASSA)与两步残差网络优化MinMax (TSRK-MinMax)算法相结合的方法。首先,采用动态自适应麻雀搜索(DASSA)算法对BP神经网络进行优化,提高测距精度;接下来,我们利用k -最近邻(KNN)算法来选择可以接收到最佳信号的基站。然后利用两步残差网络对最小最大算法(TSRK-MinMax)进行优化,实现精度定位。实验结果表明,总体定位误差降低了11.7%,有效提高了Beacon室内定位的精度和鲁棒性。
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