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A multi-objective metaheuristic method for node placement in dynamic IoT environments

Farzad Kiani

2025Discover Internet of Things8 citationsDOIOpen Access PDF

Abstract

This study introduces an optimal Node Placement based on Enhanced Sand Cat Swarm Optimization (NP-ESCSO) algorithm, a novel metaheuristic approach for solving the node placement problem in dynamic IoT environments. By integrating a Tent chaotic map and a hybrid motion strategy, the algorithm achieves a robust balance between exploration and exploitation, ensuring superior performance in obstacle-rich environments. A newly developed multi-objective fitness function optimizes critical metrics such as coverage, energy efficiency, connectivity, and redundancy. The proposed method highlights its potential for scalable and cost-effective IoT network deployment, particularly in environments with complex obstacles. Furthermore, the algorithm exhibits faster convergence and superior adaptability, making it suitable for real-world applications. NP-ESCSO not only optimizes IoT systems efficiently but also offers significant advancements in reducing computational overhead, improving scalability, and ensuring dynamic adaptability. Simulations conducted on real-world maps demonstrate that NP-ESCSO achieves a coverage rate of 92.44%, an energy efficiency of 48.69%, and a redundancy value of 2.096, significantly outperforming baseline methods. Compared to existing algorithms, NP-ESCSO improves fitness values by up to 14% and other key performance indicators by 45%.

Topics & Concepts

MetaheuristicInternet of ThingsComputer scienceNode (physics)Mathematical optimizationDistributed computingArtificial intelligenceMathematicsEmbedded systemEngineeringStructural engineeringEnergy Efficient Wireless Sensor NetworksIoT and Edge/Fog ComputingModular Robots and Swarm Intelligence
A multi-objective metaheuristic method for node placement in dynamic IoT environments | Litcius