The Application of Last Observation Carried Forward Method for Missing Data Estimation in the Context of Industrial Wireless Sensor Networks

Hong Zhou, Kun-Ming Yu, Ming-Gong Lee, Chin-Chuan Han
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引用次数: 6

Abstract

Thanks to advances in wireless communication technologies, the wireless sensor network (WSNs) have been attracting a lot of attention from academic communities and successfully applied to various domains. Along with developments of the Industry 4.0, the WSNs start to play a vital role in the construction of smart factories and realization of intelligent manufacturing. Although, the industrial WSNs (IWSNs) presents great quantity of advantages, there still have some drawbacks to overcome such as challenges of the quality of data for IWSNs. In order to resolve the data missing problems in the context of IWSNs, the Last Observation Carried Forward method is adopted to estimate the missing value and reconstruct the sensing dataset which takes into account the temporal characteristics of sensing data in IWSNs. Through experiments, this method is proved to be an easy and effective measurement for missing value imputation of the large multi-dimensional sensing data achieved by the IWSNs.
末次观测结转法在工业无线传感器网络中缺失数据估计中的应用
由于无线通信技术的发展,无线传感器网络受到了学术界的广泛关注,并成功地应用于各个领域。随着工业4.0的发展,无线传感器网络开始在智能工厂的建设和智能制造的实现中发挥至关重要的作用。尽管工业无线传感器网络(IWSNs)具有许多优点,但也存在一些不足,如数据质量方面的挑战。为了解决iwsn环境下的数据缺失问题,采用最后一次观测结转法估计缺失值,并根据iwsn中感知数据的时间特征重构感知数据集。通过实验证明,该方法是一种简单有效的测量方法,可用于iwsn实现的大型多维传感数据的缺失值输入。
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