论文标题
Relsen:一种基于优化的框架,用于同时进行传感器可靠性监视和数据清洁
RelSen: An Optimization-based Framework for Simultaneously Sensor Reliability Monitoring and Data Cleaning
论文作者
论文摘要
物联网(IoT)技术的最新进展导致了传感应用程序的普及。结果,人们越来越依靠从传感器获得的信息来在日常生活中做出决定。不幸的是,在大多数感应应用中,已知传感器容易出错,并且在任何意外的时间都会产生误导。因此,为了提高感应应用的可靠性,除了感兴趣的物理现象/过程之外,我们认为在进行传感器的可靠性并清洁传感器数据之前,对它们进行分析也非常重要。现有的研究通常将传感器可靠性监视和传感器数据清洁视为单独的问题。在这项工作中,我们提出了Relsen,这是一种基于新颖的优化框架,通过利用它们之间的相互依赖性同时解决这两个问题。此外,Relsen并非特定于应用程序,因为其实现假设监测过程中的过程动态的先验知识最少。这大大提高了其在实践中的一般性和适用性。在我们的实验中,我们将Relsen应用于水泥旋转窑的室外空气污染监测系统和条件监测系统。实验结果表明,我们的框架可以及时识别不可靠的传感器并删除由三种常见的传感器断层引起的传感器测量误差。
Recent advances in the Internet of Things (IoT) technology have led to a surge on the popularity of sensing applications. As a result, people increasingly rely on information obtained from sensors to make decisions in their daily life. Unfortunately, in most sensing applications, sensors are known to be error-prone and their measurements can become misleading at any unexpected time. Therefore, in order to enhance the reliability of sensing applications, apart from the physical phenomena/processes of interest, we believe it is also highly important to monitor the reliability of sensors and clean the sensor data before analysis on them being conducted. Existing studies often regard sensor reliability monitoring and sensor data cleaning as separate problems. In this work, we propose RelSen, a novel optimization-based framework to address the two problems simultaneously via utilizing the mutual dependence between them. Furthermore, RelSen is not application-specific as its implementation assumes a minimal prior knowledge of the process dynamics under monitoring. This significantly improves its generality and applicability in practice. In our experiments, we apply RelSen on an outdoor air pollution monitoring system and a condition monitoring system for a cement rotary kiln. Experimental results show that our framework can timely identify unreliable sensors and remove sensor measurement errors caused by three types of most commonly observed sensor faults.