skip to main content
Primo Advanced Search
Primo Advanced Search Query Term
Primo Advanced Search prefilters

SAEA: A security-aware and energy-aware task scheduling strategy by Parallel Squirrel Search Algorithm in cloud environment

Mohammad Hasani Zade, Behnam ; Mansouri, Najme ; Javidi, Mohammad Masoud

Expert systems with applications, 2021-08, Vol.176, p.114915, Article 114915 [Revista revisada por pares]

New York: Elsevier Ltd

Texto completo disponible

Citas Citado por
  • Título:
    SAEA: A security-aware and energy-aware task scheduling strategy by Parallel Squirrel Search Algorithm in cloud environment
  • Autor: Mohammad Hasani Zade, Behnam ; Mansouri, Najme ; Javidi, Mohammad Masoud
  • Materias: Algorithms ; Cloud ; Cloud computing ; Data centers ; Energy costs ; Energy management ; Fuzzy system ; Knowledge bases (artificial intelligence) ; Makespan ; Multiple objective analysis ; Optimization ; Scheduling ; Search algorithms ; Security ; Squirrel Search Algorithm ; Squirrels ; Task scheduling
  • Es parte de: Expert systems with applications, 2021-08, Vol.176, p.114915, Article 114915
  • Descripción: The rapid growth of networking technologies resulted in the execution of an extensive data-centric task, which needs the critical quality of service by cloud data centers. The task scheduling problem is difficult to attain an optimal solution, so we use the Squirrel Search Algorithm to approximate the optimal solution. Traditional scheduling algorithms attempt to reduce execution time without taking into account the energetic cost and security issues. In this scheme, a fuzzy-based task scheduling (SAEA) algorithm is developed which closely combines energy cost, makespan, degree of imbalance, and security levels for multi-objective optimization scheduling problems. In addition, SAEA tries to find a high-quality knowledge base that accurately describes the fuzzy system by parallel squirrels search algorithm (PSSA). The automatic design of a fuzzy rule-based system is currently attracting the interest due to the inherently dynamic nature and the typical complex search spaces of cloud. Extensive experiments prove that SAEA algorithm obtains superior performances in energy cost around 45% compared with MGA and has a better result in terms of total execution time, makespan, degree of imbalance, and security value than other similar scheduling algorithms under high load condition.
  • Editor: New York: Elsevier Ltd
  • Idioma: Inglés

Buscando en bases de datos remotas, por favor espere

  • Buscando por
  • enscope:(USP_VIDEOS),scope:("PRIMO"),scope:(USP_FISICO),scope:(USP_EREVISTAS),scope:(USP),scope:(USP_EBOOKS),scope:(USP_PRODUCAO),primo_central_multiple_fe
  • Mostrar lo que tiene hasta ahora