Detection and Prediction of Adverse and Anomalous Events in Medical Robots

Kai Liang, Feng Cao, Zhuofu Bai, Mark Renfrew, M. C. Cavusoglu, Andy Podgurski, Soumya Ray
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引用次数: 3

Abstract

Adverse and anomalous (A&A) events are a serious concern in medical robots. We describe a system that can rapidly detect such events and predict their occurrence. As part of this system, we describe simulation, data collection and user interface tools we build for a robot for small animal biopsies. The data we collect consists of both the hardware state of the robot and variables in the software controller. We use this data to train dynamic Bayesian network models of the joint hardware-software state-space dynamics of the robot. Our empirical evaluation shows that (i) our models can accurately model normal behavior of the robot, (ii) they can rapidly detect anomalous behavior once it starts, (iii) they can accurately predict a future A&A event within a time window of it starting and (iv) the use of additional software variables beyond the hardware state of the robot is important in being able to detect and predict certain kinds of events.
医疗机器人不良异常事件的检测与预测
不良和异常(A&A)事件是医疗机器人的一个严重问题。我们描述了一个可以快速检测此类事件并预测其发生的系统。作为该系统的一部分,我们描述了我们为小动物活检机器人构建的模拟,数据收集和用户界面工具。我们收集的数据包括机器人的硬件状态和软件控制器中的变量。我们使用这些数据来训练机器人的软硬件联合状态空间动力学的动态贝叶斯网络模型。我们的经验评估表明:(i)我们的模型可以准确地模拟机器人的正常行为,(ii)它们可以快速检测异常行为,(iii)它们可以在开始的时间窗口内准确预测未来的A&A事件,以及(iv)使用机器人硬件状态之外的附加软件变量对于能够检测和预测某些类型的事件非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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