Abstract:This paper presents a multi-objective Ant Colony Optimization (MOACO) algorithm based on a learning mechanism (named MOACO-L) for the optimization of project scenario selection under uncertainty in a system engineering (SE) process. The objectives to minimize are the total cost of the project, its total duration and the global risk. Risk is considered as an uncertainty about task costs and task durations in the project graph. The learning mechanism aims to improve the MOACO algorithm for the selection of optim… Show more
“…A multi-objective Ant Colony Algorithm (MOACO) has been developed for this problem for its ability to solve such relevant combinatorial optimization problem in a reasonable amount of time. First results provided by this algorithm were presented in (Lachhab et al (2016)). Following on these works, an important improvement is to define a decision-aided tool, based on the optimization model, that integrates the standard industrial processes (the systems engineering process (SEBOK (2014)) and the project management one (PMBOK (2013))) in the early first phases.…”
Section: Towards An Integration Of Systems Engineering and Project Mamentioning
confidence: 99%
“…The Optimization process includes a multi-objective ACO tool that provides a range of Pareto-optimal solutions and minimize the total cost, duration and risk of the SE project. The uncertainties about project goals (cost and duration) are modelled using single intervals (Lachhab et al (2016)). The lower bounds correspond to nominal values and the upper bounds to the maximum possible values (estimated).…”
Section: Pm and Se Processes Interactionsmentioning
confidence: 99%
“…At the end of the iterations, a Pareto-front of optimal scenarios is built in order to help a decision-maker to select one scenario that is about to be further developed and realized. In Lachhab et al (2016), first experiments were conducted and shown that the MOACO algorithm gives better results using a learning mechanism (denoted MOACO-L). The MOACO-L algorithm has given efficient solutions in terms of cost, duration and risk and has improved the mean performance of the MOACO algorithm with almost a difference of 8.84%.…”
Section: The Multi-objective Aco Algorithmmentioning
To cite this version:Majda Lachhab, Cédrick Béler, Erlyn Solano-Charris, Thierry Coudert. Towards an integration of systems engineering and project management processes for a decision aiding purpose.
“…A multi-objective Ant Colony Algorithm (MOACO) has been developed for this problem for its ability to solve such relevant combinatorial optimization problem in a reasonable amount of time. First results provided by this algorithm were presented in (Lachhab et al (2016)). Following on these works, an important improvement is to define a decision-aided tool, based on the optimization model, that integrates the standard industrial processes (the systems engineering process (SEBOK (2014)) and the project management one (PMBOK (2013))) in the early first phases.…”
Section: Towards An Integration Of Systems Engineering and Project Mamentioning
confidence: 99%
“…The Optimization process includes a multi-objective ACO tool that provides a range of Pareto-optimal solutions and minimize the total cost, duration and risk of the SE project. The uncertainties about project goals (cost and duration) are modelled using single intervals (Lachhab et al (2016)). The lower bounds correspond to nominal values and the upper bounds to the maximum possible values (estimated).…”
Section: Pm and Se Processes Interactionsmentioning
confidence: 99%
“…At the end of the iterations, a Pareto-front of optimal scenarios is built in order to help a decision-maker to select one scenario that is about to be further developed and realized. In Lachhab et al (2016), first experiments were conducted and shown that the MOACO algorithm gives better results using a learning mechanism (denoted MOACO-L). The MOACO-L algorithm has given efficient solutions in terms of cost, duration and risk and has improved the mean performance of the MOACO algorithm with almost a difference of 8.84%.…”
Section: The Multi-objective Aco Algorithmmentioning
To cite this version:Majda Lachhab, Cédrick Béler, Erlyn Solano-Charris, Thierry Coudert. Towards an integration of systems engineering and project management processes for a decision aiding purpose.
“…The first results were presented in Lachhab et al (2016) where a simple instance of the problem was tested without any kind of framework to implement the tool. Thus, the aim of this section is to propose a global framework of integrated industrial processes where the optimization tool is used.…”
This is an author-deposited version published in: http://oatao.univ-toulouse.fr/ Eprints ID: 19945
A B S T R A C TThis article proposes a multi-criteria decision support tool fully integrated within system engineering and project management processes that allows decision makers to select an optimal scenario of a project. A model based on an oriented graph includes all the alternative choices of a new system's conception and realization. These choices take into account the risks inherent to perform project tasks in terms of cost and duration. The model of the graph is constructed by considering all the collaborative decisions of the different actors involved in the project. This decision support tool is based on an Ant Colony Algorithm (ACO) for its ability to provide optimal solutions in a reasonable amount of time. The model developed is a multi-objective new ant colony algorithm based on an innovative learning mechanism (named MONACO) that allows ants to learn from their previous choices in order to influence the future ones. The objectives to be minimized are the total cost of the project, its global duration and the risk associated with these criteria. The risk is modeled as an uncertainty related to the increase of the nominal values of cost and duration. The optimization tool is a part of an integrated and more global process, based on industrial standards (the System Engineering process and the Project Management one) that are widely known and used in companies.
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