Title :
Immune-Inspired Adaptable Error Detection for Automated Teller Machines
Author :
De Lemos, Rogério ; Timmis, Jon ; Ayara, Modupe ; Forrest, Simon
Author_Institution :
Kent Univ., Canterbury, UK
Abstract :
This paper presents an immune-inspired adaptable error detection (AED) framework for automated teller machines (ATMs). This framework has two levels: one is local to a single ATM, while the other is network-wide. The framework employs vaccination and adaptability analogies of the immune system. For discriminating between normal and erroneous states, an immune-inspired one-class supervised algorithm was employed, which supports continual learning and adaptation. The effectiveness of the proposed approach was confirmed in terms of classification performance and impact on availability. The overall results are encouraging as the downtime of ATMs can de reduced by anticipating the occurrence of failures before they actually occur.
Keywords :
artificial immune systems; automatic teller machines; bank data processing; error detection; fault tolerance; learning (artificial intelligence); artificial immune system; automated teller machines; continual learning; fault tolerance; immune-inspired adaptable error detection; immune-inspired one-class supervised algorithm; vaccination; Artificial immune systems; Availability; Benchmark testing; Detectors; Fault detection; Fault tolerant systems; Immune system; Machine learning; Quality of service; Runtime; Adaptable error detection (AED); artificial immune systems (AIS); automated teller machines (ATMs); availability; fault tolerance;
Journal_Title :
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
DOI :
10.1109/TSMCC.2007.900662