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Cleaning Environmental Sensing Data Streams Based on Individual Sensor Reliability

机译:基于单个传感器的可靠性清洗环境传感数据流

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Environmental sensing is becoming a significant way for understanding and transforming the environment, given recent technology advances in the Internet of Things (IoT). Current environmental sensing projects typically deploy commodity sensors, which are known to be unreliable and prone to produce noisy and erroneous data. Unfortunately, the accuracy of current cleaning techniques based on mean or median prediction is unsatisfactory. In this paper, we propose a cleaning method based on incrementally adjusted individual sensor reliabilities, called influence mean cleaning (IMC). By incrementally adjusting sensor reliabilities, our approach can properly discover latent sensor reliability values in a data stream, and improve reliability-weighted prediction even in a sensor network with changing conditions. The experimental results based on both synthetic and real datasets show that our approach achieves higher accuracy than the mean and median-based approaches after some initial adjustment iterations.
机译:鉴于物联网(IoT)的最新技术进步,环境感知已成为理解和改变环境的重要方式。当前的环境传感项目通常部署商品传感器,众所周知,商品传感器不可靠并且容易产生噪声和错误数据。不幸的是,基于均值或中位数预测的当前清洁技术的准确性不能令人满意。在本文中,我们提出了一种基于增量调整的单个传感器可靠性的清洁方法,称为影响平均清洁(IMC)。通过逐步调整传感器的可靠性,我们的方法可以正确地发现数据流中潜在的传感器可靠性值,甚至在条件变化的传感器网络中也可以提高可靠性加权预测。基于合成数据集和真实数据集的实验结果表明,在进行一些初始调整迭代之后,我们的方法比基于均值和基于中值的方法具有更高的准确性。

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