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An Accelerated Solution Method for Two-Stage Stochastic Models in Disaster Management

Cover von An Accelerated Solution Method for Two-Stage Stochastic Models in Disaster Management

Mathematische Optimierung und Wirtschaftsmathematik - Mathematical Optimization and Economathematics

Graß, Emilia

Springer Spektrum

53.49

(inklusive MwSt.)

Verfügbarkeit: Besorgungstitel, Festbezug

Zusatztext

Emilia Graß develops a solution method which can provide fast and near-optimal solutions to realistic large-scale two-stage stochastic problems in disaster management. The author proposes a specialized interior-point method to accelerate the standard L-shaped algorithm. She shows that the newly developed solution method solves two realistic large-scale case studies for the hurricane prone Gulf and Atlantic coast faster than the standard L-shaped method and a commercial solver. The accelerated solution method enables relief organizations to employ appropriate preparation measures even in the case of short-term disaster warnings.About the Author Emilia Graß holds a PhD from the Hamburg University of Technology, Germany. She is currently working as guest researcher on the project cyber security in healthcare at the Centre for Health Policy, Imperial College London, UK. Her scientific focus is on stochastic programming, solution methods, disaster management and healthcare.

Autorenportrait

Emilia Graß holds a PhD from the Hamburg University of Technology, Germany. She is currently working as guest researcher on the project cyber security in healthcare at the Centre for Health Policy, Imperial College London, UK. Her scientific focus is on stochastic programming, solution methods, disaster management and healthcare.

Weitere Details

Erschienen: 13.11.2018

Umfang: xvii, 155 S., 26 s/w Illustr., 10 farbige Illustr.

Sprache: ENG

Einband: KT

ISBN/EAN: 9783658240806

Umbreit-Nr.: 5663050

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