Artificial Intelligence based rule base fire engine testing model for congestion handling in opportunistic networks

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Abstract

Opportunistic network is emerging as a research domain nowadays with the introduction of Internet of things phenomena. In recent years, storage level congestion issue due to handheld devices is considered as a key challenge to be handled in the opportunistic networks. The prime objective of conducting this research is to develop artificial intelligence rule-based fire engine model to be tested using artificial intelligence latest classification algorithms further implemented using ONE simulator tool over MaxProp protocol. The achieved results show 98% accuracy in terms of classification using k-fold validation technique over six algorithms. The achieved results have been compared with MaxProp protocol over evaluation parameters such as delivery ratio, throughput, routing load, and overhead; whereas delivery ratio increase about 20% for node level and 5% for buffer level and throughput tends to increase 500 and 150 kbps for network and buffer levels, respectively.

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Sajid, A., Usman, N., Khan, I., Usman, S., Mirza Mehmood, A., Malik, M. S. A., & Rana, J. M. (2020). Artificial Intelligence based rule base fire engine testing model for congestion handling in opportunistic networks. Measurement and Control (United Kingdom), 53(9–10), 1841–1850. https://doi.org/10.1177/0020294020944965

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