Title of article :
Policy planning under uncertainty: efficient starting populations for simulation-optimization methods applied to municipal solid waste management
Author/Authors :
Huang، نويسنده , , Gordon H. and Linton، نويسنده , , Jonathan D. and Yeomans، نويسنده , , Julian Scott and Yoogalingam، نويسنده , , Reena، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
13
From page :
22
To page :
34
Abstract :
Evolutionary simulation-optimization (ESO) techniques can be adapted to model a wide variety of problem types in which system components are stochastic. Grey programming (GP) methods have been previously applied to numerous environmental planning problems containing uncertain information. In this paper, ESO is combined with GP for policy planning to create a hybrid solution approach named GESO. It can be shown that multiple policy alternatives meeting required system criteria, or modelling-to-generate-alternatives (MGA), can be quickly and efficiently created by applying GESO to this case data. The efficacy of GESO is illustrated using a municipal solid waste management case taken from the regional municipality of Hamilton-Wentworth in the Province of Ontario, Canada. The MGA capability of GESO is especially meaningful for large-scale real-world planning problems and the practicality of this procedure can easily be extended from MSW systems to many other planning applications containing significant sources of uncertainty.
Keywords :
Public sector , Decision Making , SIMULATION , Evolutionary algorithms , waste management , PLANNING , Modelling to generate alternatives , uncertainty
Journal title :
Journal of Environmental Management
Serial Year :
2005
Journal title :
Journal of Environmental Management
Record number :
1583747
Link To Document :
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