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LINK . SPRINGER . COM {}

  1. Analyzed Page
  2. Matching Content Categories
  3. CMS
  4. Monthly Traffic Estimate
  5. How Does Link.springer.com Make Money
  6. Keywords
  7. Topics
  8. Questions
  9. Schema
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  11. Analytics And Tracking
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We are analyzing https://link.springer.com/article/10.1007/s10479-010-0787-x.

Title:
Alternate risk measures for emergency medical service system design | Annals of Operations Research
Description:
The stochastic nature of emergency service requests and the unavailability of emergency vehicles when requested to serve demands are critical issues in constructing valid models representing real life emergency medical service (EMS) systems. We consider an EMS system design problem with stochastic demand and locate the emergency response facilities and vehicles in order to ensure target levels of coverage, which are quantified using risk measures on random unmet demand. The target service levels for each demand site and also for the entire service area are specified. In order to increase the possibility of representing a wider range of risk preferences we develop two types of stochastic optimization models involving alternate risk measures. The first type of the model includes integrated chance constraints (ICCs ), whereas the second type incorporates ICCs  and a stochastic dominance constraint. We develop solution methods for the proposed single-stage stochastic optimization problems and present extensive numerical results demonstrating their computational effectiveness.
Website Age:
28 years and 1 months (reg. 1997-05-29).

Matching Content Categories {📚}

  • Education
  • Non-Profit & Charity
  • Telecommunications

Content Management System {📝}

What CMS is link.springer.com built with?

Custom-built

No common CMS systems were detected on Link.springer.com, and no known web development framework was identified.

Traffic Estimate {📈}

What is the average monthly size of link.springer.com audience?

🌠 Phenomenal Traffic: 5M - 10M visitors per month


Based on our best estimate, this website will receive around 5,000,016 visitors per month in the current month.

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How Does Link.springer.com Make Money? {💸}

We're unsure how the site profits.

Many websites are intended to earn money, but some serve to share ideas or build connections. Websites exist for all kinds of purposes. This might be one of them. Link.springer.com has a revenue plan, but it's either invisible or we haven't found it.

Keywords {🔍}

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Topics {✒️}

integrated chance constraints stochastic dominance constraints month download article/chapter alternate risk measures random unmet demand maximum availability/reliability models emergency medical services stochastic dominance constraint emergency service requests facility location problems ambulance location model spatial allocation equity measurement providing equal access optimal ambulance location facility location analysis stochastic location analysis strategic facility location siting emergency services emergency response facilities selecting ambulance station privacy choices/manage cookies risk measures target service levels entire service area operations research models emergency services vehicles stochastic dominance stochastic demand ilog cplex division full article pdf reliability model applied probabilistic constraints operations research aims modelling language integer programming approach stochastic nature ambulance location probabilistic model applied ensure target levels related subjects facility location ca/aingolfsson/publications ordering uncertain prospects van der vlerk stochastic programming stochastic models check access instant access random delays

Questions {❓}

  • Spatial allocation of emergency medical services: minimizing the death rate or providing equal access?

Schema {🗺️}

WebPage:
      mainEntity:
         headline:Alternate risk measures for emergency medical service system design
         description:The stochastic nature of emergency service requests and the unavailability of emergency vehicles when requested to serve demands are critical issues in constructing valid models representing real life emergency medical service (EMS) systems. We consider an EMS system design problem with stochastic demand and locate the emergency response facilities and vehicles in order to ensure target levels of coverage, which are quantified using risk measures on random unmet demand. The target service levels for each demand site and also for the entire service area are specified. In order to increase the possibility of representing a wider range of risk preferences we develop two types of stochastic optimization models involving alternate risk measures. The first type of the model includes integrated chance constraints (ICCs ), whereas the second type incorporates ICCs  and a stochastic dominance constraint. We develop solution methods for the proposed single-stage stochastic optimization problems and present extensive numerical results demonstrating their computational effectiveness.
         datePublished:2010-09-01T00:00:00Z
         dateModified:2010-09-01T00:00:00Z
         pageStart:559
         pageEnd:589
         sameAs:https://doi.org/10.1007/s10479-010-0787-x
         keywords:
            Stochastic programming
            Random demand
            Risk constraints
            Integrated chance constraints
            Stochastic dominance
            Emergency system
            Facility location
            Ambulance allocation
            Equity
            Operations Research/Decision Theory
            Combinatorics
            Theory of Computation
         image:
         isPartOf:
            name:Annals of Operations Research
            issn:
               1572-9338
               0254-5330
            volumeNumber:181
            type:
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               type:ImageObject
            type:Organization
         author:
               name:Nilay Noyan
               affiliation:
                     name:Sabancı University
                     address:
                        name:Manufacturing Systems/Industrial Engineering Program, Faculty of Engineering and Natural Sciences, Sabancı University, Orhanlı, Tuzla, Turkey
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ScholarlyArticle:
      headline:Alternate risk measures for emergency medical service system design
      description:The stochastic nature of emergency service requests and the unavailability of emergency vehicles when requested to serve demands are critical issues in constructing valid models representing real life emergency medical service (EMS) systems. We consider an EMS system design problem with stochastic demand and locate the emergency response facilities and vehicles in order to ensure target levels of coverage, which are quantified using risk measures on random unmet demand. The target service levels for each demand site and also for the entire service area are specified. In order to increase the possibility of representing a wider range of risk preferences we develop two types of stochastic optimization models involving alternate risk measures. The first type of the model includes integrated chance constraints (ICCs ), whereas the second type incorporates ICCs  and a stochastic dominance constraint. We develop solution methods for the proposed single-stage stochastic optimization problems and present extensive numerical results demonstrating their computational effectiveness.
      datePublished:2010-09-01T00:00:00Z
      dateModified:2010-09-01T00:00:00Z
      pageStart:559
      pageEnd:589
      sameAs:https://doi.org/10.1007/s10479-010-0787-x
      keywords:
         Stochastic programming
         Random demand
         Risk constraints
         Integrated chance constraints
         Stochastic dominance
         Emergency system
         Facility location
         Ambulance allocation
         Equity
         Operations Research/Decision Theory
         Combinatorics
         Theory of Computation
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         issn:
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            name:Nilay Noyan
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                  name:Sabancı University
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                     name:Manufacturing Systems/Industrial Engineering Program, Faculty of Engineering and Natural Sciences, Sabancı University, Orhanlı, Tuzla, Turkey
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      name:Annals of Operations Research
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      name:Springer US
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         url:https://www.springernature.com/app-sn/public/images/logo-springernature.png
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      name:Sabancı University
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         name:Manufacturing Systems/Industrial Engineering Program, Faculty of Engineering and Natural Sciences, Sabancı University, Orhanlı, Tuzla, Turkey
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      name:Nilay Noyan
      affiliation:
            name:Sabancı University
            address:
               name:Manufacturing Systems/Industrial Engineering Program, Faculty of Engineering and Natural Sciences, Sabancı University, Orhanlı, Tuzla, Turkey
               type:PostalAddress
            type:Organization
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      name:Manufacturing Systems/Industrial Engineering Program, Faculty of Engineering and Natural Sciences, Sabancı University, Orhanlı, Tuzla, Turkey
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External Links {🔗}(82)

Analytics and Tracking {📊}

  • Google Tag Manager

Libraries {📚}

  • Clipboard.js
  • Prism.js

CDN Services {📦}

  • Crossref

4.17s.