会员体验
专利管家(专利管理)
工作空间(专利管理)
风险监控(情报监控)
数据分析(专利分析)
侵权分析(诉讼无效)
联系我们
交流群
官方交流:
QQ群: 891211   
微信请扫码    >>>
现在联系顾问~
热词
    • 1. 发明专利
    • HYBRID SWARM OPTIMIZATION ALGORITHM FOR CLUSTERING AND ROUTING IN IOT NETWORKS
    • AU2021102882A4
    • 2021-07-15
    • AU2021102882
    • 2021-05-27
    • A P JYOTHI DRA SIVASANGARI DRAINAPURE BHARATI DRDIXIT ANITA DRK N MADHUSUDHAN DRKUMAR NEELAM SANJEEV DRP AJITHA DRS LALITHA MSSANGEETHA J MARGARET MSVELLADURAI M MR
    • AINAPURE BHARATIDIXIT ANITAA P JYOTHIKUMAR NEELAM SANJEEVS LALITHAK N MADHUSUDHANA SIVASANGARIP AJITHAVELLADURAI MSANGEETHA J MARGARET
    • H04W40/32G05B13/02H04W84/18
    • HYBRID SWARM OPTIMIZATION ALGORITHM FOR CLUSTERING AND ROUTING IN IOT NETWORKS Abstract The number of IoT devices is rapidly increasing owing to innovative IoT technology. The WSN is a critical component of the Internet of Things. Supporting surveillance tasks in huge areas is extremely important. Due to the finite resources of WSN nodes, effective CH node selection, as well as node collaboration, is currently the most pressing issues. Complex node challenges can be transformed into human adaptability to the system using hybrid swarm optimization algorithms, which can then be used to iteratively make the best decision. The hybrid swarm optimization algorithm is thought to be capable of solving a wide variety of issues in WSN applications. The major concerns in WSN applications are overcome using hybrid swarm optimization algorithms including the CH selection problem. A swarm optimization algorithm is used for both clustering and routing in IoT networks. The clustering technique includes nonlinear programming whereas the routing technique includes linear programming. The proposed Hybrid Swarm Optimization algorithmic approach includes the association of GSO and PSO to enable effective clustering and routing in IoT networks. The proposed hybrid PSO-GSO method initially collects the information regarding the sensor nodes. The PSO-based K-means optimization includes the clustering and identification of other sensor nodes and cluster heads (CH). The sensor nodes send the acquired data to the CH, which then sends it to the base station via other CHs. After determining the cluster heads and sensor nodes, GSO is used to optimize them. The shortest route for CHs and sensor nodes moving towards the base station is identified using the GSO optimization algorithm. Routing is done based on the fitness value received from GSO. HYBRID SWARM OPTIMIZATION ALGORITHM FOR CLUSTERING AND ROUTING IN IOT NETWORKS Diagram IN loT NETWORKS, INFORMATION REGARDING WSNs IS PSO-BA SED K-MEA NS PREDICTING CLUSTER HEAD S (CHs) AND SENSOR HEADS IMPLEMENTING THE PSO OPTIMIZATION ROUTING USING THE BE ST FITNE SS VALUE EVALUATING THE PERFoRMANCE OF THE HYBRID SWARM OPTIMIZATION Figure 1: The proposed hybrid swarm optimization algorithmic approach.