Robotic introspection for exploration and mapping of subterranean environments

Robotic introspection for exploration and mapping of subterranean environments(2007)

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摘要
This thesis identifies operational uncertainty as a significant problem affecting reliable robot performance in real environments. Operational uncertainty represents ambiguity in a robot's self-perceived state during the execution of a task. This ambiguity is introduced into a robotic system through events such as unanticipated environmental disturbances, failing hardware and software built upon invalid assumptions. Real environments such as forests, caves, oceans and space foster operational ambiguity, which confound robot software and hinder reliable performance.To address operational uncertainty in the general case, a robot is required to assess both the environment and itself to determine the nature of a problem and the appropriate means to react. Environmental assessment (i.e. perception) is a well-understood and highly addressed problem in robotics research. As such, this thesis focuses upon the latter topic: self assessment.This thesis develops a framework called robotic introspection to provide a self assessment mechanism for field-capable robots. Robotic introspection models and monitors operational state (i.e. a robot's computational state) to assist robotic decision-making. In particular, this research develops an architectural framework for observing, mapping, localizing and planning in the space of operating modes.For this thesis, the subterranean domain is used to describe and illustrate the problem of operational uncertainty and to implement and experiment with robotic introspection. This domain is an ideal medium for conveying these concepts and generalizes well to robots operating in other field environments. The work presented in this document is the first to develop robotic introspection for autonomy on a field robotic platform. This introspective framework is shown to effectively handle uncertain situations, thereby justifying its role on autonomous subterranean robots. In addition, this work provides irrefutable evidence establishing robots as capable, thorough, and efficient tools for subterranean data collection. Unique to this research, trials of robot deployment have occurred in an assortment of underground environments across a spectrum of conditions including flooded, dry, muddy, confined, open, smoke-filled, borehole entry, and portal entry. From these trials, this work has produced an unrivaled repository of subterranean data, including the largest 3-D metric models of interior underground surfaces known to date.
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关键词
real environment,reliable robot performance,operational state,autonomous subterranean robot,operational uncertainty,field robotic platform,Robotic introspection,robot deployment,robotic introspection,field-capable robot,confound robot software,subterranean environment
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