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MINING USER GOALS FOR INDOOR LOCATION-BASED SERVICES WITH LOW ENERGY AND HIGH QOS

机译:为低能耗,高QOS的基于室内位置的服务挖掘用户目标

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摘要

Location-based services (LBSs) play a very important role in pervasive computing environment, and QoS (quality of service) is one of the key evaluations for LBS. To maintain high QoS, the traditional approaches rely on accurate and continuous localization. However, the energy consumption of the mobile device under this situation is often too high for practical applications. Thus, it seems that the energy consumption and QoS become two conflicting factors in LBS systems. In this article, a new adaptive goal-aware computing framework (Adaware) is proposed to solve this contradiction. We show that the QoS of LBS can be evaluated by recognizing user goals. We design new algorithms to mine user goals from discontinuous location data to reduce the energy consumption while keeping a high QoS at the same time. More specifically, Adaware employs an accelerometer to implement motion-based localization, which greatly reduces the unnecessary energy consumption on Wi-Fi scanning compared to the original continuous localization methods. Then based on the estimated discontiguous critical point traces which have been postprocessed by our proposed Localization Confident Coefficient filter method, a novel N-gram goal inference algorithm is used to predict the accurate goal. The experimental results in real-world wireless network environments validate the effectiveness of our framework. We can get 80% QoS under 70% location estimation accuracy within 10 meters and 30% energy saving compared to continuous Wi-Fi scanning.
机译:基于位置的服务(LBS)在普适计算环境中起着非常重要的作用,而QoS(服务质量)是LBS的关键评估之一。为了维持高QoS,传统方法依赖于准确而连续的本地化。但是,在这种情况下,移动设备的能耗对于实际应用而言通常太高。因此,似乎能耗和QoS成为LBS系统中的两个冲突因素。本文提出了一种新的自适应目标感知计算框架(Adaware)来解决这一矛盾。我们表明,可以通过识别用户目标来评估LBS的QoS。我们设计了新算法,从不连续的位置数据中挖掘用户目标,以减少能耗,同时保持较高的QoS。更具体地说,Adaware采用加速度计来实现基于运动的定位,与原始的连续定位方法相比,它大大减少了Wi-Fi扫描中不必要的能耗。然后,基于我们提出的定位置信度系数滤波方法后处理的估计的不连续临界点轨迹,使用一种新颖的N元语法目标推断算法来预测准确的目标。实际无线网络环境中的实验结果验证了我们框架的有效性。与连续的Wi-Fi扫描相比,在10米内70%的位置估计精度下,我们可以获得80%的QoS,并节省30%的能源。

著录项

  • 来源
    《Computational Intelligence》 |2010年第3期|P.318-336|共19页
  • 作者单位

    Institute of Computing Technology, No 6 Ke Xue Yuan South Road, Zhong Guan Cun, Haidian district, Beijing, China;

    Institute of Computing Technology, Chinese Academy of Sciences;

    Institute of Computing Technology, Chinese Academy of Sciences;

    Institute of Computing Technology, Chinese Academy of Sciences;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    indoor localization; goal recognition; energy efficiency;

    机译:室内定位目标识别;能源效率;

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