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Adaptive Data Acquisition with Energy Efficiency and Critical-Sensing Guarantee for Wireless Sensor Networks

机译:具有能效和无线传感器网络的能效和关键传感保证的自适应数据采集

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摘要

Due to the limited energy budget, great efforts have been made to improve energy efficiency for wireless sensor networks. The advantage of compressed sensing is that it saves energy because of its sparse sampling; however, it suffers inherent shortcomings in relation to timely data acquisition. In contrast, prediction-based approaches are able to offer timely data acquisition, but the overhead of frequent model synchronization and data sampling weakens the gain in the data reduction. The integration of compressed sensing and prediction-based approaches is one promising data acquisition scheme for the suppression of data transmission, as well as timely collection of critical data, but it is challenging to adaptively and effectively conduct appropriate switching between the two aforementioned data gathering modes. Taking into account the characteristics of data gathering modes and monitored data, this research focuses on several key issues, such as integration framework, adaptive deviation tolerance, and adaptive switching mechanism of data gathering modes. In particular, the adaptive deviation tolerance is proposed for improving the flexibility of data acquisition scheme. The adaptive switching mechanism aims at overcoming the drawbacks in the traditional method that fails to effectively react to the phenomena change unless the sampling frequency is sufficiently high. Through experiments, it is demonstrated that the proposed scheme has good flexibility and scalability, and is capable of simultaneously achieving good energy efficiency and high-quality sensing of critical events.
机译:由于精力有限的预算,已经作出了巨大努力,以改善无线传感器网络的能源效率。压缩感知的好处是可以节省由于其稀疏采样的能量;然而,受到有关数据及时采集固有的缺点。相比之下,基于预测的方法能够提供及时的数据采集,但频繁的模型同步和数据采样的开销,削弱了数据缩减的增益。压缩感测和基于预测的方法的集成是一个有希望的数据采集方案进行数据传输,以及关键数据的及时收集的抑制,但它是具有挑战性的适应性和有效地进行上述两个数据采集模式之间适当切换。考虑到数据收集方式和监控数据的特点,研究主要集中在几个关键问题,如集成框架,自适应偏离容差和数据采集模式的自适应切换机制。特别地,自适应偏差公差提出了一种用于提高数据采集方案的灵活性。自适应切换机构的目的是在失败传统的方法克服的缺点,有效地反应,从而将变化的现象,除非采样频率足够高。通过实验,证明该方案具有良好的灵活性和可扩展性,并且能够同时实现良好的能源效率和重要事件的高品质感。

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