immunity-based aircraft fault detection system.pdf
文本预览下载声明
Immunity-Based Aircraft Fault Detection System
D. Dasgupta* † ‡ §
, K. KrishnaKumar , D. Wong , M. Berry
Abstract
In the study reported in this paper, we have developed and applied an Artificial Immune
System (AIS) algorithm for aircraft fault detection, as an extension to a previous work on
intelligent flight control (IFC). Though the prior studies had established the benefits of IFC,
one area of weakness that needed to be strengthened was the control dead band induced by
commanding a failed surface. Since the IFC approach uses fault accommodation with no
detection, the dead band, although it reduces over time due to learning, is present and causes
degradation in handling qualities. If the failure can be identified, this dead band can be
further minimized to ensure rapid fault accommodation and better handling qualities. The
paper describes the application of an immunity-based approach that can detect a broad
spectrum of known and unforeseen failures. The approach incorporates the knowledge of
the normal operational behavior of the aircraft from sensory data, and probabilistically
generates a set of pattern detectors that can detect any abnormalities (including faults) in the
behavior pattern indicating unsafe in-flight operation. We developed a tool called MILD
(Multi-level Immune Learning Detection) based on a real-valued negative selection
algorithm that can generate a small number of specialized detectors (as signatur
显示全部