Human immune system inspired framework for disruption handling in manufacturing Process

Disruptions have a direct impact on the process downtime and efficiency pertaining to process industry. Anomalies, in any automated process, have an impeccable impact on consumer-centric values, high rejection of raw materials and cost, thus demanding special attention and techniques to be efficient...

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Bibliographic Details
Published in:International journal of computer integrated manufacturing Vol. 32; no. 11; pp. 1081 - 1097
Main Authors: Khan, Z.A., Khan, M T, Ul Haq, I, Iqbal, J, Tufail, M
Format: Journal Article
Language:English
Published: Taylor & Francis 02-11-2019
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Summary:Disruptions have a direct impact on the process downtime and efficiency pertaining to process industry. Anomalies, in any automated process, have an impeccable impact on consumer-centric values, high rejection of raw materials and cost, thus demanding special attention and techniques to be efficiently dealt with. Human immune system (HIS) presents an astounding example of such system, wherein the disruptions caused by viruses and bacteria are addressed by deploying B and T cells, which either destroys the pathogen (virus or bacteria) by killing it (Phagocytosis) or renders it harmless. Inspired from that, this research proposes a model analogous to HIS for industrial applications, to deal with disruptions. Addressing that, Immune based ontologies are developed for artificial immune system (AIS). This model works on the disruption detection and isolation with automatic response generation. Furthermore, the proposed model is capable of handling the disruptions in a dynamic way via weight assignment. The final reaction is assessed based on the assigned weights. Ontology was developed using Protégé (software). Experimentation was carried out in a controlled laboratory environment on a test bed by analysing 15 input/outputs (IOs) influencing the process downtime, system efficiency and consumer centric value.
ISSN:0951-192X
1362-3052
DOI:10.1080/0951192X.2019.1686174