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A Risk-Based IoT Decision-Making Framework Based on Literature Review with Human Activity Recognition Case Studies

机译:基于风险的IOT决策框架基于与人类活动识别案例研究的文献综述

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摘要

The Internet of Things (IoT) is a key and growing technology for many critical real-life applications, where it can be used to improve decision making. The existence of several sources of uncertainty in the IoT infrastructure, however, can lead decision makers into taking inappropriate actions. The present work focuses on proposing a risk-based IoT decision-making framework in order to effectively manage uncertainties in addition to integrating domain knowledge in the decision-making process. A structured literature review of the risks and sources of uncertainty in IoT decision-making systems is the basis for the development of the framework and Human Activity Recognition (HAR) case studies. More specifically, as one of the main targeted challenges, the potential sources of uncertainties in an IoT framework, at different levels of abstraction, are firstly reviewed and then summarized. The modules included in the framework are detailed, with the main focus given to a novel risk-based analytics module, where an ensemble-based data analytic approach, called Calibrated Random Forest (CRF), is proposed to extract useful information while quantifying and managing the uncertainty associated with predictions, by using confidence scores. Its output is subsequently integrated with domain knowledge-based action rules to perform decision making in a cost-sensitive and rational manner. The proposed CRF method is firstly evaluated and demonstrated on a HAR scenario in a Smart Home environment in case study I and is further evaluated and illustrated with a remote health monitoring scenario for a diabetes use case in case study II. The experimental results indicate that using the framework’s raw sensor data can be converted into meaningful actions despite several sources of uncertainty. The comparison of the proposed framework to existing approaches highlights the key metrics that make decision making more rational and transparent.
机译:事物互联网(IOT)是许多关键现实生活应用的关键和越来越多的技术,可以使用它来改善决策。然而,IOT基础设施中若干不确定性源的存在可以引导决策者夺取不适当行动。目前的工作侧重于提出基于风险的IOT决策框架,以便在决策过程中整合域知识外,有效地管理不确定性。对IOT决策系统的不确定性的风险和不确定性来源的结构化文献综述是框架和人类活动识别(HAR)案例研究的发展的基础。更具体地说,作为主要目标挑战之一,首先审查了不同水平的抽象框架中的潜在不确定性的潜在不确定性来源,然后综述。框架中包含的模块详细说明,主要焦点给出了一种新的基于风险的分析模块,其中提出了一种被称为校准随机林(CRF)的基于集基的数据分析方法,以在量化和管理时提取有用的信息通过使用置信度分数与预测相关的不确定性。随后将其输出与基于域知识的动作规则集成,以以成本敏感和合理的方式执行决策。在智能家庭环境中首先评估和证明所提出的CRF方法,以便研究I,并进一步评估和说明,在案例研究II中,用远程健康监测场景进行糖尿病用例的远程健康监测场景。实验结果表明,尽管有几个不确定性来源,但是使用框架的原始传感器数据可以转换为有意义的动作。拟议的框架与现有方法的比较突出了作出更合理和透明的决策的关键指标。

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