Discrete event based hybrid framework for petroleum products pipeline activities classification
Author(s) -
Samuel S. Udoh,
Oluwole Charles Akinyokun,
Udoinyang G. Inyang,
Oluwasanmi Olabode,
Gabriel Babatunde Iwasokun
Publication year - 2017
Publication title -
artificial intelligence research
Language(s) - English
Resource type - Journals
eISSN - 1927-6982
pISSN - 1927-6974
DOI - 10.5430/air.v6n2p39
Subject(s) - devs , adaptive neuro fuzzy inference system , pipeline (software) , computer science , event (particle physics) , hybrid system , sample (material) , data mining , artificial intelligence , machine learning , fuzzy logic , simulation , fuzzy control system , modeling and simulation , chemistry , quantum mechanics , physics , programming language , chromatography
The importance of timely detection, classification and response to anomalies on petroleum products pipeline (PPP) have attracted pragmatic researches in recent times. There is need for efficient monitoring and detection of activities on PPP to guide leak detections and remedy decisions. This paper develops an intelligent hybrid system, driven by discrete event system specification (DEVS) and adaptive neuro-fuzzy inference system (ANFIS) for detection and classification of activities on PPP. A dataset comprising 330 records was used for training, validation and testing of the system. Result of sensitivity test shows that inlet pressure, inlet temperature, inlet volume and outlet volume have cumulative significance of 71.72% on flowrate of PPP. Hybrid learning algorithm was observed to converge faster than the back propagation algorithm in the detection of pipeline activities. ANFIS hybrid learning algorithm with training and testing errors of 0.11980 and 0.010233 yielded a correlation of 0.916 between the computed and the desired output and produced optimal consequent parameters to boost the intelligence of DEVS. A testing error of 0.0303 was observed in the evaluation of DEVS-ANFIS system on 33 test data sample, 32 precise detections were made with one incorrect detection, this gives 96.97% level of confidence in the DEVS-ANFIS model for detection, classification and localization of PPP activities.
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