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Management of Tensions in Emergency Services

  • Mouna BerquedichEmail author
  • Oualid Kamach
  • Malek Masmoudi
  • Laurent Deshayes
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 914)

Abstract

The study of emergency services management within hospitals typically requires an effective manipulation and capitalizing of the knowledge. To manipulate and capitalize management strategies, an agile approach of decision making to address massive crowding in emergency department considering constraints such as human resources, costs, patient cases prioritization, capacity and logistics. We inspired from biological immune defense system to design piloting emergency system, basically, the artificial immune system (SIA). The system provides an intelligent assistance to hospital decision-makers to adjust their supplying strategies, and provide relevant traces from previous gathering information assisting hospital staff, facing the massive patient flow, to execute an efficient solution, excellently. In fact, we made a mixture of two related SIA techniques; the negative selection and the clonal selection. The system agility form is gained throughout adopting the approach of components. This paper will focus on the patient overcrowdings dilemmas, raising the reception capacities articulating on coordination networks amid regional hospitals, and simultaneously conserving the safety of the hospitalizing people in every hospital. The main purpose is to decreasing the tension within the emergency department and supplying hospital chiefs working under stress.

Keywords

Hospital environment AIS Negative selection Clonal selection 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Mouna Berquedich
    • 1
    Email author
  • Oualid Kamach
    • 1
  • Malek Masmoudi
    • 2
  • Laurent Deshayes
    • 3
  1. 1.Laboratory of Innovative Technologies (LTI)Abdelmalek Saâdi UniversityTangierMorocco
  2. 2.Laboratory of Industrial EngineeringJean Monnet UniversityRoanneFrance
  3. 3.Polytechnic Mohammed VI UniversityBen-GuérirMorocco

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