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Use of Artificial Neural Networks to Enhance Container Port Safety Analysis Under Uncertainty

In: Advances in Reliability and Maintainability Methods and Engineering Applications

Author

Listed:
  • Hani Yami

    (King Abdulaziz University)

  • Ramin Riahi

    (Columbia Shipping Management (Deutschland) GmbH)

  • Jin Wang

    (Liverpool John Moores University)

  • Zaili Yang

    (Liverpool John Moores University)

Abstract

This chapter proposes a modified failure mode effect analysis (FMEA) approach using Artificial Neural Networks (ANNs) to evaluate and predict the operational risks of container terminals. It effectively integrates two established methods in one framework to realise complex risk analysis from a whole system perspective, including fuzzy rule based Bayesian networks (FRBN) for risk analysis of particular hazards in ports and fuzzy evidential reasoning (FER) for safety evaluation of ports in a systematic way. During this process, ANNs are integrated with FRBN and FER respectively to create two sub-models. The first sub-model is FRBN-ANN that incorporates Bayesian networks (BNs) with ANNs to facilitate risk prediction of each identified hazard in a container port. The second sub-model is FER-ANN, which uses ANNs to simulate the FER method to ease the aggregation of all the hazards to obtain the safety level of the port. Finally, the two sub-models are combined into a single safety model, which can help simplify risk prediction, and realise real-time safety evaluation of ports at hazard or whole system levels. The Levenberg–Marquardt (trainlm) back-propagation algorithm trial and error approach was used to determine the optimal ANN architecture. The proposed ANN model produced small deviations that indicate high predictive accuracy with satisfactory determination coefficients (i.e., the regression) for forecasting operational risks of container ports. It provides an effective risk prediction tool for complex port safety systems, and significantly simplifies the port safety analysis and prediction in a feasible, versatile, and accurate manner. It, through the black box approach of ANN, provides a mathematically unsophisticated solution and hence aids the visualisation of risk analysis outcomes without the need of the end users to understand the complicated computing process of the risk inference. It makes significant contributions to port safety analysis and management in practice.

Suggested Citation

  • Hani Yami & Ramin Riahi & Jin Wang & Zaili Yang, 2023. "Use of Artificial Neural Networks to Enhance Container Port Safety Analysis Under Uncertainty," Springer Series in Reliability Engineering, in: Yu Liu & Dong Wang & Jinhua Mi & He Li (ed.), Advances in Reliability and Maintainability Methods and Engineering Applications, pages 265-291, Springer.
  • Handle: RePEc:spr:ssrchp:978-3-031-28859-3_11
    DOI: 10.1007/978-3-031-28859-3_11
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