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Article type: Research Article
Authors: Rajesh, D.a; * | Rajanna, G.S.b
Affiliations: [a] PDF Scholar, Srinivas University, India, Mangalore, Karnataka, India | [b] Srinivas University, India, Mangalore, Karnataka, India
Correspondence: [*] Corresponding author. D. Rajesh, PDF Scholar, Srinivas University, India, Mangalore, Karnataka, India. E-mail: [email protected].
Abstract: Smart Dust environment face additional challenges as a result of the use of movable Smart Dust basestation(BS), despite its benefits. The main point of contention is the BS positioning updates to the smart dust nodes. Each smart object ought to be aware of the BS location so that it can send its data to the BS. According to the prevailing Flooding approach, the moveable BS must continuously distribute its location throughout the network in order to inform smart dust nodes about the BS location. In every case, visit positioning upgrades from the BS can result in maximal power usage as well as enhanced network breakdowns. Different sorts of routing architectures can be used to reduce BS position updating. A routing strategy based on the movable BS is successful if it preserves the network network’s power consumption and latencies to a minimum. The study’s main goal is to develop an energy-efficient routing mechanism focused on adaptive movable BS modification. In the Smart Dust Head (SDH) establishing the inferred surroundings, the most latest movable BS location will be preserved. As a result, rather than soliciting SDH in the environment, the location of the BS is propagated to the smart dust nodes located at the sectors in integrated networking. By transmitting request information to the nearest sector, the remaining SDH can find the most current BS location. The message’s recipient is determined based on the information gathered. The best fuzzy related clustering algorithm will be used to accomplish this. The Enhanced Oppositional grey wolf optimization (EOGWO) methodology can be used to perform the improvement. Optimum network throughput, low latency, and other metrics are used to assess performance. To enhance productivity, the findings will be analyzed and compared to previous routing methodologies.
Keywords: Data collection, smart dust, lifetime, energy utilization, and movable BS
DOI: 10.3233/JIFS-221719
Journal: Journal of Intelligent & Fuzzy Systems, vol. 44, no. 1, pp. 939-949, 2023
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