ANFIS model for assessing near-miss risk during tanker shipping voyages
Adaptive neuro-fuzzy inference system (ANFIS) was applied to predict the risk of near-miss incidents during tanker shipping voyages. Firstly, near-miss incidents recorded by a global tanker shipping management company were analysed. Four variables—type of operation, vessel’s location, on-board posit...
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sg-ntu-dr.10356-1511322021-06-24T10:13:52Z ANFIS model for assessing near-miss risk during tanker shipping voyages Zhou, Qingji Wong, Yiik Diew Loh, Hui Shan Yuen, Kum Fai School of Civil and Environmental Engineering Maritime Institute Engineering::Environmental engineering Near-miss Incident Tanker Shipping Adaptive neuro-fuzzy inference system (ANFIS) was applied to predict the risk of near-miss incidents during tanker shipping voyages. Firstly, near-miss incidents recorded by a global tanker shipping management company were analysed. Four variables—type of operation, vessel’s location, on-board position, and harm potential were selected to train and predict the risk levels of near-miss incidents. The selected variables were found to be correlated with the observed frequency at three risk levels, namely low, medium and high. Gravity factor (GF) was calculated using the frequency of the categories in each variable and their associated risk levels. The calculated GF values and the risk levels of near-miss incidents were used as input values in the ANFIS model. Triangular, Trapezoidal and Gaussian membership functions were used. Subsequently, fuzzy logical theory and artificial neural networks were applied to train the data. Causal factors in terms of direct contributory factors, indirect contributory factors and root contributory factors to the near-miss incidents were analysed. Risk control measures were also proposed to improve safety during tanker shipping. Singapore Maritime Institute (SMI) This work was supported by Singapore Maritime Institute to which the authors express their gratitude. 2021-06-24T10:13:51Z 2021-06-24T10:13:51Z 2019 Journal Article Zhou, Q., Wong, Y. D., Loh, H. S. & Yuen, K. F. (2019). ANFIS model for assessing near-miss risk during tanker shipping voyages. Maritime Policy and Management, 46(4), 377-393. https://dx.doi.org/10.1080/03088839.2019.1569765 0308-8839 0000-0002-5832-1304 0000-0001-7419-5777 0000-0002-9199-6661 https://hdl.handle.net/10356/151132 10.1080/03088839.2019.1569765 2-s2.0-85060637053 4 46 377 393 en Maritime Policy and Management © 2019 Informa UK Limited, trading as Taylor & Francis Group. All rights reserved. |
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Engineering::Environmental engineering Near-miss Incident Tanker Shipping Zhou, Qingji Wong, Yiik Diew Loh, Hui Shan Yuen, Kum Fai ANFIS model for assessing near-miss risk during tanker shipping voyages |
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Adaptive neuro-fuzzy inference system (ANFIS) was applied to predict the risk of near-miss incidents during tanker shipping voyages. Firstly, near-miss incidents recorded by a global tanker shipping management company were analysed. Four variables—type of operation, vessel’s location, on-board position, and harm potential were selected to train and predict the risk levels of near-miss incidents. The selected variables were found to be correlated with the observed frequency at three risk levels, namely low, medium and high. Gravity factor (GF) was calculated using the frequency of the categories in each variable and their associated risk levels. The calculated GF values and the risk levels of near-miss incidents were used as input values in the ANFIS model. Triangular, Trapezoidal and Gaussian membership functions were used. Subsequently, fuzzy logical theory and artificial neural networks were applied to train the data. Causal factors in terms of direct contributory factors, indirect contributory factors and root contributory factors to the near-miss incidents were analysed. Risk control measures were also proposed to improve safety during tanker shipping. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Zhou, Qingji Wong, Yiik Diew Loh, Hui Shan Yuen, Kum Fai |
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Article |
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Zhou, Qingji Wong, Yiik Diew Loh, Hui Shan Yuen, Kum Fai |
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Zhou, Qingji |
title |
ANFIS model for assessing near-miss risk during tanker shipping voyages |
title_short |
ANFIS model for assessing near-miss risk during tanker shipping voyages |
title_full |
ANFIS model for assessing near-miss risk during tanker shipping voyages |
title_fullStr |
ANFIS model for assessing near-miss risk during tanker shipping voyages |
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ANFIS model for assessing near-miss risk during tanker shipping voyages |
title_sort |
anfis model for assessing near-miss risk during tanker shipping voyages |
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2021 |
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https://hdl.handle.net/10356/151132 |
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