Sains Malaysiana 51(7)(2022):
2305-2314
http://doi.org/10.17576/jsm-2022-5107-29
Pengukuran Risiko menggunakan Rangkaian Bayesan: Aplikasi kepada
Data Perlanggaran Kapal di Malaysia
(Risk Measurement using Bayesian Networks: Applications to
Ship Collision Data in Malaysia)
ZAMIRA
HASANAH ZAMZURI1,2,* & ZAIDI ISA1,2
1Jabatan Sains Matematik, Fakulti Sains dan Teknologi, Universiti Kebangsaan Malaysia, 43600 UKM Bangi,
Selangor Darul Ehsan, Malaysia
2Pusat Pemodelan dan Analisis Data, Universiti Kebangsaan Malaysia, 43600 UKM Bangi, Selangor Darul Ehsan, Malaysia
Diserahkan: 13 Mac 2022/Diterima: 14 April 2022
Abstrak
Mengenal pasti faktor berbahaya yang mengancam keselamatan adalah penting agar tindakan dapat dirancang untuk menangani akibat jika berlakunya hazard tersebut. Proses pengecaman tersebut memerlukan pengukuran dan komputasi khusus dengan kebarangkalian dan keparahan kejadian tersebut diperlukan. Dalam kajian ini, pendekatan rangkaian Bayesan dilaksanakan untuk menilai, mengenal pasti dan kemudiannya memberi pangkat kepada faktor yang menyumbang kepada berlakunya perlanggaran kapal. Menerusi penggabungan maklumat daripada pandangan pakar dan data lepas, satu rangkaian Bayesan dibina untuk mentafsir kebarangkalian berlakunya perlanggaran diberi pemboleh ubah yang dicerap. Tiga jenis hazard dipertimbangkan dalam kajian ini iaitu teknikal, semula jadi dan kesilapan manusia. Peningkatan dalam kebarangkalian berlakunya perlanggaran kemudiannya dihitung dengan mensyaratkan kepada aras dalam pemboleh ubah dicerap. Tiga faktor pertama yang menyumbang kepada berlakunya perlanggaran kapal adalah kegagalan major dalam sistem komunikasi, kebolehan terjejas tinggi dan ketiadaan pemandu sebagai penasihat pelayaran. Penemuan ini membantu dalam menyerlahkan potensi major ditawarkan oleh rangkaian Bayesan bagi analisis risiko dan penghitungan kebarangkalian. Malahan, kajian ini menawarkan pemahaman yang lebih mendalam kepada pengamal dalam bidang ini untuk merancang atau membina strategi tindakan yang diperlukan bagi mengelakkan berlakunya perlanggaran. Maklumat ini juga penting untuk menilai keselamatan sesuatu kapal dalam usaha mengurangkan potensi suatu perlanggaran tersebut berlaku.
Kata kunci: Bayesan; perlanggaran kapal; rangkaian; risiko
Abstract
Identifying hazardous factors
that threaten safety is important so that actions can be planned to address the
consequences of the hazard. The identification process requires specific
measurements and computations, for which the probability and severity of the
event are required. In this study, the Bayesan network approach is implemented to evaluate, identify and then rank the factors
that contribute to the occurrence of ship collisions. Through a combination of
information from expert views and past data, a Bayesian network was constructed to interpret the probability of a collision given the
observed variables. Three types of hazards are considered in this study namely
technical, natural, and human error. The increase in the probability of a
collision is then calculated by conditional to the level in the observed
variable. The first three factors that contribute to the occurrence of
shipwrecks are major failures in communication systems, high impaired abilities
and the absence of a driver as a navigational advisor. These findings help in
highlighting the major potentials offered by the Bayesian network for risk analysis and probability calculations. In fact, this study
offers a deeper understanding to practitioners in this field to plan or build
the necessary action strategies to avoid the occurrence of collisions. This
information is also important in assessing the safety of a ship in an effort to
reduce the potential for a collision to occur.
Keywords: Bayesian;
network; risk; ship collision
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*Pengarang untuk surat-menyurat; email: zamira@ukm.edu.my
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