迈向社会空间中的信息物理系统:数据可靠性挑战

Shiguang Wang, Dong Wang, Lu Su, Lance M. Kaplan, T. Abdelzaher
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引用次数: 66

摘要

今天的网络物理系统(CPS)越来越多地在社交空间中运行。例子包括交通系统、灾难响应系统和智能电网,其中人类是驾驶员、幸存者或用户。关于进化系统的许多信息可以从循环中的人类身上收集到,这种做法通常被称为群体感知。人群感知传统上不被认为是一个CPS主题,很大程度上是因为难以严格评估其可靠性。本文旨在通过开发一种数学方法来定量评估所收集的观测值(关于一个不断发展的物理系统)的正确性概率,从而改变这种现状,当观测值的来源可靠性未知时。本文扩展了先前关于从噪声输入进行状态估计的文献,这些文献通常假设不可靠的来源属于一个或少数类别,每个类别都具有相同(可能未知的)背景噪声分布。相比之下,在群体感知的情况下,我们不仅假设误差分布是未知的,而且每个(人类)传感器都有自己可能不同的误差分布。鉴于上述假设,我们严格估计了人群传感系统中的数据可靠性,从而使其能够在CPS反馈回路中用作状态估计器。我们首先考虑由许多二元变量描述状态的应用程序,然后将该方法平凡地扩展到多值变量。该方法还扩展了先前的工作,即在状态不随时间变化的系统的特殊情况下解决问题。通过仿真和实际案例研究,评估结果证明了该方法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Cyber-Physical Systems in Social Spaces: The Data Reliability Challenge
Today's cyber-physical systems (CPS) increasingly operate in social spaces. Examples include transportation systems, disaster response systems, and the smart grid, where humans are the drivers, survivors, or users. Much information about the evolving system can be collected from humans in the loop, a practice that is often called crowd-sensing. Crowd-sensing has not traditionally been considered a CPS topic, largely due to the difficulty in rigorously assessing its reliability. This paper aims to change that status quo by developing a mathematical approach for quantitatively assessing the probability of correctness of collected observations (about an evolving physical system), when the observations are reported by sources whose reliability is unknown. The paper extends prior literature on state estimation from noisy inputs, that often assumed unreliable sources that fall into one or a small number of categories, each with the same (possibly unknown) background noise distribution. In contrast, in the case of crowd-sensing, not only do we assume that the error distribution is unknown but also that each (human) sensor has its own possibly different error distribution. Given the above assumptions, we rigorously estimate data reliability in crowd-sensing systems, hence enabling their exploitation as state estimators in CPS feedback loops. We first consider applications where state is described by a number of binary variables, then extend the approach trivially to multivalued variables. The approach also extends prior work that addressed the problem in the special case of systems whose state does not change over time. Evaluation results, using both simulation and a real-life case-study, demonstrate the accuracy of the approach.
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