Machine Learning-based Update-time Prediction for Battery-friendly Passenger Information Displays

P. Herrmann, Ergys Puka, T. Skoglund
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Abstract

Personal Information Displays (PID) at bus stops help making the usage of public transport more attractive. If no electric grid is nearby, however, the installation of PIDs is very expensive due to the high wiring costs. To resolve this issue, the partners of the R&D project IoT-STOP develop a novel PID system that will be independent from the access to power lines. The system uses e-papers as displays that can be accessed using a cellular network. To prevent long, energy-intensive idle listening, the network receiver operates only when the passenger information, in particular, the Expected Times of Arrival (ETA) of the buses, is updated. Between two updates, the receiver is switched off such that adjustments after sudden events are not possible. Therefore, the update periods have to be carefully selected. In this paper, we introduce a predictor that estimates time intervals between updates. Our method is based on linear regression using samples of previous bus rides to forecast arrival times. Its predictions are applied by an algorithm to detect areas during the journey of a bus at which its ETA at a later stop changes with a certain probability. The forecasted times for passing such areas are then selected to update the PID at this stop. In addition, we present a number of tests of the predictor carried out at some bus stops in Bergen, Norway. The results show that the proposed method indeed predicts sensible update times of the PID systems.
基于机器学习的乘客信息显示更新时间预测
公共汽车站的个人信息显示器(PID)有助于提高公共交通的使用吸引力。但是,如果附近没有电网,由于布线成本高,安装pid非常昂贵。为了解决这个问题,研发项目IoT-STOP的合作伙伴开发了一种独立于电力线接入的新型PID系统。该系统使用电子纸作为显示器,可以通过蜂窝网络访问。为了防止长时间、高能耗的空闲监听,网络接收器仅在乘客信息,特别是公交车的预期到达时间(ETA)更新时才运行。在两次更新之间,接收器被关闭,这样在突发事件后进行调整是不可能的。因此,必须仔细选择更新周期。在本文中,我们引入了一个预测器来估计更新之间的时间间隔。我们的方法是基于线性回归,使用以前的公共汽车乘坐的样本来预测到达时间。它的预测被一种算法应用于检测公共汽车行驶过程中,其下一站的预计到达时间以一定概率变化的区域。然后选择通过这些区域的预测时间来更新此站的PID。此外,我们还提出了在挪威卑尔根的一些公交车站进行的一些预测器测试。结果表明,该方法能够准确预测PID系统的合理更新时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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