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Understanding the impact of lossy compressions on IoT smart farm analytics

机译:了解有损压缩对物联网智能农场分析的影响

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As the volume of data collected by various IoT stations increases, Big Data management and analytics becomes a huge challenge for IoT applications. Although Big Data can potentially benefit from data compression techniques, the chances are that compression will reduce a negligible amount of data such that it would not worth the effort. The insight of this paper is that only lossy compression can unleash the power of compression to IoT because, compared with its counterpart (lossless one), it can significantly reduce the data volume by taking advantages of spatiotemporal patterns. However, lossy compression faces the challenge of compressing too much data thus losing the data fidelity, which might affect the quality of analytics outcomes. To understand the impact of lossy compression on IoT data management and analytics, we evaluate several classification algorithms on agricultural sensor data reconstructed based on energy concentration. Specifically, we applied three transformation based lossy compression mechanisms to five real-world sensor data from IoT weather stations. Our experimental results indicate that there is a distinctive relationship between energy concentration on the transformed coefficients and compression ratio as well as the amount of error introduced. While we observe a general trend where the higher energy concentration the lower compression and error rates, we also observe that the impact on classification accuracy varies among data sets and algorithms we evaluated.
机译:随着各种IOT站收集的数据量增加,大数据管理和分析成为IOT应用程序的巨大挑战。虽然大数据可能会受益于数据压缩技术,但是这种机会是压缩将减少可忽略的数据量,使其不值得努力。本文的见解是,只有有损压缩可以释放压缩对物联网的力量,因为,与其对应物(无损人数)相比,它可以通过采取时空图案的优点来显着降低数据量。然而,有损压缩面临压缩太多数据的挑战,从而丢失了数据保真度,这可能会影响分析结果的质量。要了解有损压缩对物联网数据管理和分析的影响,我们评估了基于能量集中重建的农业传感器数据的几种分类算法。具体而言,我们将三种基于损耗压缩机制应用于来自物联网气象站的五个现实世界传感器数据。我们的实验结果表明,转化系数和压缩比的能量集中与引入的误差量存在明显的关系。虽然我们观察到更高的压缩和错误率的能量集中的一般趋势,但我们还观察到对我们评估的数据集和算法之间的影响变化。

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