A Self-Healing Framework for Online Sensor Data

T. Nguyen, Marco Aiello, Takuro Yonezawa, K. Tei
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引用次数: 7

Abstract

In pervasive computing environments, wireless sensor networks (WSNs) play an important role, collecting reliable and accurate context information so that applications are able to provide services to users on demand. In such environments, sensors should be self-adaptive by taking correct decisions based on sensed data in real-time. However, sensor data is often faulty. Faults are not so exceptional and in most deployments tend to occur frequently. Therefore, the capability of self-healing is important to ensure higher levels of reliability and availability. We design a framework which provides self-healing capabilities, enabling a flexible choice of components for detection, classification, and correction of faults at runtime. Within our framework, a variety of fault detection and classification algorithms can be applied, depending on the characteristics of the sensor data types as well as the topology of the sensor networks. A set of mechanisms for each and every step of the self-healing framework, covering detection, classification, and correction of faults are proposed. To validate the applicability, we illustrate a case study where our solution is implemented as an adaptation engine and integrated seamlessly into the ClouT system. The engine processes data coming from physical sensors deployed in Santander, Spain, providing corrected sensor data to other smart city applications developed in the ClouT project.
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在线传感器数据的自修复框架
在普适计算环境下,无线传感器网络(wsn)收集可靠、准确的上下文信息,使应用程序能够按需向用户提供服务,发挥着重要作用。在这样的环境中,传感器应该能够根据实时感知到的数据做出正确的决策,从而实现自适应。然而,传感器数据经常是错误的。故障并不罕见,在大多数部署中往往会频繁发生。因此,自我修复的能力对于确保更高级别的可靠性和可用性非常重要。我们设计了一个框架,它提供了自修复功能,可以灵活地选择组件来检测、分类和在运行时纠正错误。在我们的框架内,根据传感器数据类型的特征以及传感器网络的拓扑结构,可以应用各种故障检测和分类算法。针对自修复框架的每一步,提出了一套涵盖故障检测、分类和纠正的机制。为了验证其适用性,我们举例说明了一个案例研究,其中我们的解决方案被实现为适配引擎并无缝集成到ClouT系统中。该引擎处理来自部署在西班牙桑坦德的物理传感器的数据,为ClouT项目中开发的其他智能城市应用程序提供校正后的传感器数据。
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