Title :
Diagnosis of large inspection datasets using a adaptive, learning system
Author :
Zöllner, J.M. ; Berns, K. ; Dillmann, R.
Author_Institution :
Forschungszentrum Inf., Karlsruhe Univ., Germany
Abstract :
Performing the diagnosis of technical plants results in most of the cases in analyzing huge amounts of unstructured sensor data. If additionally the gathered sensor measurements are noisy or partial faulty and the knowledge about the underlying system or plant is incomplete, than adaptive, learning methods are required in order to interpret the measurements automatically. This paper gives an overview about our diagnosis tool. Two classification kernels, the one based on hybrid, neural network and the other on support vector machines are compared. The paper focuses on the aspects of successful use of learning methods and human expert interactivity in analyzing unstructured data coming from industrial application.
Keywords :
adaptive systems; fault diagnosis; inspection; learning (artificial intelligence); learning automata; neural nets; noise; pattern classification; sensor fusion; adaptive learning methods; adaptive learning system; classification kernels; human expert interactivity; hybrid neural network; large inspection dataset diagnosis; noisy measurements; partially faulty measurements; support vector machines; technical plant diagnosis; unstructured sensor data; Adaptive systems; Humans; Inspection; Kernel; Learning systems; Neural networks; Performance analysis; Sensor systems; Support vector machine classification; Support vector machines;
Conference_Titel :
Multisensor Fusion and Integration for Intelligent Systems, 2001. MFI 2001. International Conference on
Print_ISBN :
3-00-008260-3
DOI :
10.1109/MFI.2001.1013504