2012
DOI: 10.4236/am.2012.330179
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Modelling to Generate Alternatives Using Simulation-Driven Optimization: An Application to Waste Management Facility Expansion Planning

Abstract: Public sector decision-making typically involves complex problems that are riddled with competing performance objecttives and possess design requirements which are difficult to capture at the time that supporting decision models are constructed. Environmental policy formulation can prove additionally complicated because the various system components often contain considerable stochastic uncertainty and frequently numerous stakeholders exist that hold completely incompatible perspectives. Consequently, there ar… Show more

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Cited by 3 publications
(3 citation statements)
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“…The analysis demonstrates tremendous possibilities for reducing waste and achieving economy of distance. Yeomans and Imanirad (2012) used simulation-driven optimization (SDO) to produce diverse, maximally different, near-optimal policy solutions for waste treatment and disposal.…”
Section: Simulation and Environmental Sustainabilitymentioning
confidence: 99%
“…The analysis demonstrates tremendous possibilities for reducing waste and achieving economy of distance. Yeomans and Imanirad (2012) used simulation-driven optimization (SDO) to produce diverse, maximally different, near-optimal policy solutions for waste treatment and disposal.…”
Section: Simulation and Environmental Sustainabilitymentioning
confidence: 99%
“…The analysis demonstrates tremendous possibilities for reducing waste and achieving economy of distance. Yeomans and Imanirad (2012) used simulation-driven optimization (SDO) to produce diverse, maximally different, near-optimal policy solutions for waste treatment and disposal.…”
Section: Simulation and Environmental Sustainabilitymentioning
confidence: 99%
“…As noted above, the FA approaches the global optima whenever the number of fireflies n → ∞ and the number of iterations t, is set so that 1 t  [26]. In reality, the FA has a tendency to converge very quickly into both local and global optima [25] [26] [32].…”
Section: A Goal Programming Firefly Algorithm-driven Optimization Apmentioning
confidence: 99%