Titolo:  GPU-accelerated multi-objective optimization of fuel treatments for mitigating wildfire hazard
Autori: 
Data di pubblicazione:  2015
Rivista: 
JOURNAL OF COMPUTATIONAL SCIENCE  
Abstract:  Fueltreatmentis considered a suitable way to mitigate the hazard related to potential wildfires on a landscape. However, designing an optimal spatial layout oftreatment units represents a difficult optimization problem. In fact, budget constraints, probabilistic nature of fire behaviour and complex interactions among the different fuel treatment patches, give rise to challenging search spaces on typical landscapes. In this study, we formulate the design problem in terms of a bi-objective optimization: minimizing both the extension of land characterized by high fire hazard and the cost of treatment. Then, we propose a computational approach that leads to a Pareto approximation set by exploiting an adapted version of the Non-dominated Sorting Genetic Algorithm II (NSGA-II) together with General-Purpose computing on Graphics Processing Units (GPGPU). Using an application example based on a real landscape, we also show that the proposed methodology has the potential to effectively support the design of a suitable fuel treatment for a landscape.
Handle:  http://hdl.handle.net/11584/116299
Tipologia: 1.1 Articolo in rivista

File in questo prodotto:
File Descrizione Tipologia Licenza  
TGhisu_J12.pdf  versione editoriale Administrator   Richiedi una copia

Questionario e social

Condividi su: