|  | Toward a Fuzzy-based Approach for Computational Load Offloading of IoT Devices
               Lelio Campanile (Università degli Studi della Campania "L. Vanvitelli", Italy)
 
               Mauro Iacono (Università degli Studi della Campania "L. Vanvitelli", Italy)
 
               Fiammetta Marulli (Università degli Studi della Campania "L. Vanvitelli", Italy)
 
               Michele Mastroianni (Università degli Studi della Campania "L. Vanvitelli", Italy)
 
               Nicola Mazzocca (Università degli Studi di Napoli "Federico II", Italy)
 
              Abstract: Technological development and market expansion   offer an increased availability of resources and computing power on   IoT nodes at affordable cost. The edge computing paradigm allows   keeping locally on the edge of the network a part of computing,   while keeping all advantages of the cloud and adding support for   privacy, real-time and network resilience. This can be further   improved in IoT applications by exibly harvesting resources on IoT   nodes, by moving part of the computing tasks related to data from   the edge server to the nodes, raising the abstraction level of the   data aspects of the architecture and potentially enabling larger IoT   networks to be efficiently deployed and managed, in a stand-alone   logic or as a component of edge architecture.  Anyway, an e_cient   energy management mechanism is needed for battery powered IoT   networks, the most exible implementations, that dynamically balances   task allocation and execution in order to In this paper we present a   fuzzy logic based power management strategy for IoT subsystem that   aims at maximizing the duration of the network by locally migrating   part of the computing tasks between nodes. As our goal is to enable   the deployment of semi-autonomic large IoT networks, our proposal   does not rely on external resources for migration control and   operates on a local basis to ensure scalability: at the best of our   knowledge, this differentiates our proposal with respect to similar   solutions available in literature. 
             
              Keywords: IoT, IoT scalability, WSN, edge computing, energy management, fuzzy logic 
             Categories: C.2.1, C.2.4, C.3, C.4  |