A Novel Hybrid Metaheuristic Method for Efficient Decentralized LoT Network Layouts
Künye
ANKA, Ferzat. "A Novel Hybrid Metaheuristic Method for Efficient Decentralized LoT Network Layouts". Internet of Things, 32 (2025): 1-35.Özet
This paper introduces a Hybrid Genetic Particle Swarm Optimization (HGPSO) method focusing
on optimal and efficient sensor deployment in Wireless Sensor Networks (WSNs) and Decentralized
IoT (DIoT) networks. Effective sensor placement in these networks necessitates the
simultaneous optimization of numerous conflicting goals, such as maximizing coverage, ensuring
connectivity, minimizing redundancy, and improving energy economy. Traditional optimization
techniques and single metaheuristic algorithms frequently encounter these difficulties, demonstrating
premature convergence or inadequately balancing exploration and exploitation phases.
The suggested HGPSO effectively combines the advantageous features of Genetic Algorithm (GA)
and Particle Swarm Optimization (PSO) to overcome these limitations. The strong global exploration
capabilities of GA, which successfully preserve variety and avert premature convergence,
are integrated with the swift local exploitation and convergence attributes of PSO. A new multiobjective
fitness function specifically designed for sensor deployment issues is created, facilitating
the effective handling of trade-offs between conflicting objectives. The efficacy of the HGPSO
approach is meticulously assessed in seven consistent situations and practical applications,
encompassing environments with intricate impediments. A comparative examination is performed
against six prominent metaheuristic algorithms acknowledged in literature. Results
indicate that HGPSO regularly surpasses these competing methods across all assessment categories.
Regarding average fitness values, HGPSO exceeds POHBA by 14 %, MAOA by 20 %, IDDTGA
by 21 %, EFSSA by 29 %, CFL-PSO by 35 %, and OBA by 45 %. These findings underscore
HGPSO’s exceptional theoretical framework and validate its practical relevance for extensive,
real-world IoT implementations. By adeptly utilizing the exploration capabilities of GA and the
exploitation strengths of PSO, HGPSO becomes a highly versatile and resilient optimization
framework, making substantial contributions to addressing the deployment issues of nextgeneration
IoT and WSN.