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12th International Conference on Computer and Knowledge Engineering
FAHP-OF: A New Method for Load Balancing in RPL-based Internet of Things (IoT)
Authors :
Mohammad Koosha
1
Behnam Farzaneh
2
Emad Alizadeh
3
Shahin Farzaneh
4
1- State University of New York at Buffalo
2- Isfahan university of technology
3- Isfahan university of technology
4- University of Mohaghegh Ardabili
Keywords :
Internet of Things (IoT)،RPL،Objective Functions،Fuzzy Logic،AHP
Abstract :
One major issue in RPL-based networks is that the nodes themselves have to do routing and packet transmission. At the same time, they may be extremely tight on resources like Energy, Computation, and storage. This issue makes optimized route establishment of paramount importance in RPL-based networks. However, this task is not easy since multiple network links and node metrics must be considered, and different criteria must be satisfied when making decisions. In this paper, we devise and propose FAHP-OF, which takes advantage of Fuzzy Logic as a soft criteria decision-making system and the Analytic Hierarchy Process (AHP) as a Multi-Criteria Decision Making (MCDM) technique. This method feeds three quantitative metrics named Hop-Count, ETX, and RSSI of an assortment of eligible parents for a node to the Fuzzy system to decide if a node can abandon its current parent and adopt a new one. Afterward, the Analytic Hierarchy Process (AHP) assigns scores to the eligible parents, and the parent with the highest score is adopted. Results obtained by the Cooja simulator indicate improvements in terms of End-to-End Delay (E2ED) and Packet Delivery Ratio (PDR) in comparison to other objective functions.
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