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2010 | 28 | 160--170
Tytuł artykułu

Symulacja wieloagentowa w zastosowaniach biznesowych

Treść / Zawartość
Warianty tytułu
Multi-Agent Simulation in Business Applications
Języki publikacji
PL
Abstrakty
Powodzenie współczesnych przedsiębiorstw jest zdeterminowane dostępnością odpowiednich informacji, które mają decydujące znaczenie dla rozwoju firmy a często również i jej przetrwania. Na podstawie tych informacji podejmowane są decyzje dotyczące przyszłości przedsiębiorstwa. Najczęściej decyzje te są podejmowane przy użyciu intuicji i doświadczenia lub z wykorzystaniem prostych narzędzi komputerowych w rodzaju arkuszy kalkulacyjnych. Badania dowiodły jednak, że człowiek nie jest w stanie rozpatrzyć więcej niż siedem różnorodnych scenariuszy, a współczesne systemy biznesowe są na tyle złożone, że wymagają rozważania setek rozmaitych wariantów. W takich przypadkach można wykorzystać symulację wieloagentową, która pozwala na analizę wielu możliwych scenariuszy przyszłych wydarzeń w krótkim czasie. W artykule przedstawione zostały założenia symulacji wieloagentowej oraz najistotniejsze zagadnienia dotyczące agentów i ich środowiska. Omówiono również jej genezę i powiązania z innymi dziedzinami nauki, a także zaprezentowano zestawienie wybranych zastosowań symulacji wieloagentowej w biznesie.(abstrakt oryginalny)
EN
The prosperity of modern enterprises is determined by availability of appropriate information, which has major meaning for the company's development and survival. On the basis of this information the decisions about enterprise's future are made. Most often these decisions are made using intuition or experience. Sometimes also with simple computational tools like spreadsheet. However, the research on human brain shows that human is capable of considering only seven distant scenarios at once. Modern business systems are so complex that they need to take into account few hundreds of possibilities. In such cases, agent-based modeling and simulation can be used. In the article some basics assumptions about multi-agent simulation and agents in their environment are described. Origins and context of this simulation and a compilation of most interesting applications in business are included. (original abstract)
Rocznik
Tom
28
Strony
160--170
Opis fizyczny
Twórcy
  • Uniwersytet Szczeciński
Bibliografia
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Typ dokumentu
Bibliografia
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Identyfikator YADDA
bwmeta1.element.ekon-element-000171540577

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