Title :
Sensor fusion for mining robots
Author :
Banta, Larry ; Rawson, Keith D.
Author_Institution :
Dept. of Mech. & Aerosp. Eng., West Virginia Univ., Morgantown, WV, USA
Abstract :
The use of robots for work in hazardous or unpleasant environments is one factor driving the demand for machines of ever-increasing autonomy and intelligence. Such machines are required to sense and interpret situations, plan strategies, and execute tasks with nearly absolute reliability. Negotiation of complex environments requires the use of a variety of different sensor types and the interpretation of conflicting or missing data, diagnosis of faulty sensors, and the ability to reconfigure a system to work with a partially inoperative sensor suite. This paper focuses on the issues of integration of information from disparate sensor types in the presence of noise and uncertainty. The application is a mobile robot called the autonomous navigation testbed being used at West Virginia University for research in mining robot applications. This paper describes both traditional control techniques and neural network-based methods being used to interpret data from a variety of sensors on the mobile testbed
Keywords :
artificial intelligence; electric sensing devices; industrial computer control; industrial robots; mineral processing industry; mining; mobile robots; neural nets; sensor fusion; autonomous navigation testbed; autonomy; complex environments; conflicting data; faulty sensors; information integration; intelligence; mining robots; missing data; neural network; noise; reconfiguration; reliability; sensor fusion; uncertainty; Fault diagnosis; Intelligent robots; Intelligent sensors; Machine intelligence; Mobile robots; Robot sensing systems; Sensor fusion; Sensor systems; Testing; Uncertainty;
Journal_Title :
Industry Applications, IEEE Transactions on