search query: @keyword Bayesian networks / total: 9
reference: 2 / 9
« previous | next »
Author:Valdez Banda, Osiris Alejandro
Title:Bayesian Network Model of Maritime Safety Management
Publication type:Master's thesis
Publication year:2013
Pages:98      Language:   eng
Department/School:Perustieteiden korkeakoulu
Main subject:Teollisuustalous   (TU-22)
Supervisor:Holmström, Jan
Instructor:Hänninen, Maria
OEVS:
Electronic archive copy is available via Aalto Thesis Database.
Instructions

Reading digital theses in the closed network of the Aalto University Harald Herlin Learning Centre

In the closed network of Learning Centre you can read digital and digitized theses not available in the open network.

The Learning Centre contact details and opening hours: https://learningcentre.aalto.fi/en/harald-herlin-learning-centre/

You can read theses on the Learning Centre customer computers, which are available on all floors.

Logging on to the customer computers

  • Aalto University staff members log on to the customer computer using the Aalto username and password.
  • Other customers log on using a shared username and password.

Opening a thesis

  • On the desktop of the customer computers, you will find an icon titled:

    Aalto Thesis Database

  • Click on the icon to search for and open the thesis you are looking for from Aaltodoc database. You can find the thesis file by clicking the link on the OEV or OEVS field.

Reading the thesis

  • You can either print the thesis or read it on the customer computer screen.
  • You cannot save the thesis file on a flash drive or email it.
  • You cannot copy text or images from the file.
  • You cannot edit the file.

Printing the thesis

  • You can print the thesis for your personal study or research use.
  • Aalto University students and staff members may print black-and-white prints on the PrintingPoint devices when using the computer with personal Aalto username and password. Color printing is possible using the printer u90203-psc3, which is located near the customer service. Color printing is subject to a charge to Aalto University students and staff members.
  • Other customers can use the printer u90203-psc3. All printing is subject to a charge to non-University members.
Location:P1 Ark Aalto     | Archive
Keywords:maritime safety management
Bayesian networks
safety management systems
indicators
Abstract (eng): Maritime traffic operations encompass several activities that, due to their general characteristics, compromise the safety of the personnel at sea and ashore.
Maritime safety management and its derived standards have constantly reviewed, evaluated and improved the general conditions of the mentioned operations.
Nevertheless, the correct use and application of maritime safety management standards will always depend on the particular interpretation by maritime safety experts.
Thus, the combination of maritime safety standards and the knowledge of maritime experts is and will always be an important factor that influences the course of safety management in maritime traffic operations.

This thesis provides a new proposal for the modeling of maritime safety management: the Bayesian Network Model of Maritime Safety Management.
The model integrates the most relevant components of maritime safety management within the content of maritime safety management standards, the interpretation of safety management by maritime safety experts, and several practical indicators of the maritime safety performance.
In order to model the safety management in maritime traffic, this study has adopted Bayesian networks methodology due to its remarkable characteristics for modeling uncertain expert knowledge.

Furthermore, the proposed model has also been tested through a practical application in the local shipping industry.
The aims during this test were to analyze dependencies and logic of the components of the model, and also to collect expert knowledge and information regarding to current maritime safety management practices.
Thus, the obtained results in this thesis propose and evaluate the possibility of using Bayesian networks as a tool to model and analyze the safety management of maritime traffic operations.
ED:2013-06-13
INSSI record number: 46867
+ add basket
« previous | next »
INSSI