Matches in SemOpenAlex for { <https://semopenalex.org/work/W4281615828> ?p ?o ?g. }
- W4281615828 endingPage "107105" @default.
- W4281615828 startingPage "107105" @default.
- W4281615828 abstract "With the increasing availability of high-resolution satellite and drone images and the Internet of Things (IoT) has begun transforming remote sensing of agriculture by improving accessibility and frequency of updates. Modern IoT-based smart agriculture systems use Wireless Sensor Networks (WSNs) to gather information from an ecosystem that regulates the quantity of water in agricultural fields could be one of these activities. The WSNs remained a challenge to transfer data to drones for analysis purposes. These are composed of tiny sensory architectures organized together to bring efficiency and scalability features to a network. WSN nodes are controlled and managed by a cluster. It is quite difficult to design an efficient leader election protocol. The computation power, storage space, and energy supply of sensor nodes make them unable to frequently switch to a different cluster. The WSN cluster-head election process requires a lot of energy (evaluation and computational process to select the most appropriate node with the least impact on network fragmentation in energy consumption of selected node). Then it is necessary to formulate a mechanism where WSNs utilize the least energy to coordinate with the remote sensing sources. This study presents a cluster election algorithm using the fuzzy logic inference system. It uses a coordinates system to map network nodes and map them based on prioritized scheduling. Lifetime augmentation in wireless sensor networks has always been of great interest. During data transmission from normal sensor nodes to the base station (sink), excess energy is dissipated. Optimizing the energy dissipation of WSNs through the selection of cluster heads is a powerful way to increase the lifespan. By electing more efficient nodes as cluster heads, the proposed method extends the network's lifetime by reducing the number of unimportant communications between nodes. With the utilization of network resources efficiently, the network's lifetime is extended. The proposed algorithm is evaluated with the LEACH (Low Energy Adaptive Clustering Structure) algorithm and FCA method based on the remaining energy and the number of active nodes. The simulation results show that the proposed algorithm utilizes less energy for communication with remote sensory equipment for intelligent agriculture. The performance of the method improved for remaining energy by 9%, the number of active nodes rate by 24%, and indirectly network resource utilization than other states of the art solutions." @default.
- W4281615828 created "2022-06-12" @default.
- W4281615828 creator A5006042809 @default.
- W4281615828 creator A5011240842 @default.
- W4281615828 creator A5023363049 @default.
- W4281615828 creator A5030017120 @default.
- W4281615828 creator A5047477860 @default.
- W4281615828 creator A5052149736 @default.
- W4281615828 creator A5055173185 @default.
- W4281615828 creator A5069468906 @default.
- W4281615828 creator A5081236856 @default.
- W4281615828 date "2022-07-01" @default.
- W4281615828 modified "2023-10-05" @default.
- W4281615828 title "An efficient cluster head selection for wireless sensor network-based smart agriculture systems" @default.
- W4281615828 cites W1998943389 @default.
- W4281615828 cites W2022591200 @default.
- W4281615828 cites W2063472265 @default.
- W4281615828 cites W2104846640 @default.
- W4281615828 cites W2106335692 @default.
- W4281615828 cites W2122754127 @default.
- W4281615828 cites W2139525763 @default.
- W4281615828 cites W2173973682 @default.
- W4281615828 cites W2336828274 @default.
- W4281615828 cites W2546682454 @default.
- W4281615828 cites W2750826354 @default.
- W4281615828 cites W2753527822 @default.
- W4281615828 cites W2774659894 @default.
- W4281615828 cites W2790979755 @default.
- W4281615828 cites W2801001312 @default.
- W4281615828 cites W2923850045 @default.
- W4281615828 cites W2943272385 @default.
- W4281615828 cites W2964532096 @default.
- W4281615828 cites W2971848898 @default.
- W4281615828 cites W2977247088 @default.
- W4281615828 cites W2981223904 @default.
- W4281615828 cites W2981748771 @default.
- W4281615828 cites W2981822512 @default.
- W4281615828 cites W2990144076 @default.
- W4281615828 cites W2991463474 @default.
- W4281615828 cites W2991719604 @default.
- W4281615828 cites W2992159951 @default.
- W4281615828 cites W2998957330 @default.
- W4281615828 cites W2998977406 @default.
- W4281615828 cites W2999300018 @default.
- W4281615828 cites W2999761546 @default.
- W4281615828 cites W3003259380 @default.
- W4281615828 cites W3003669193 @default.
- W4281615828 cites W3003988483 @default.
- W4281615828 cites W3004333416 @default.
- W4281615828 cites W3007135776 @default.
- W4281615828 cites W3007135916 @default.
- W4281615828 cites W3007483134 @default.
- W4281615828 cites W3022935443 @default.
- W4281615828 cites W3128907408 @default.
- W4281615828 cites W3129504339 @default.
- W4281615828 cites W3191254817 @default.
- W4281615828 doi "https://doi.org/10.1016/j.compag.2022.107105" @default.
- W4281615828 hasPublicationYear "2022" @default.
- W4281615828 type Work @default.
- W4281615828 citedByCount "15" @default.
- W4281615828 countsByYear W42816158282022 @default.
- W4281615828 countsByYear W42816158282023 @default.
- W4281615828 crossrefType "journal-article" @default.
- W4281615828 hasAuthorship W4281615828A5006042809 @default.
- W4281615828 hasAuthorship W4281615828A5011240842 @default.
- W4281615828 hasAuthorship W4281615828A5023363049 @default.
- W4281615828 hasAuthorship W4281615828A5030017120 @default.
- W4281615828 hasAuthorship W4281615828A5047477860 @default.
- W4281615828 hasAuthorship W4281615828A5052149736 @default.
- W4281615828 hasAuthorship W4281615828A5055173185 @default.
- W4281615828 hasAuthorship W4281615828A5069468906 @default.
- W4281615828 hasAuthorship W4281615828A5081236856 @default.
- W4281615828 hasConcept C108037233 @default.
- W4281615828 hasConcept C111185680 @default.
- W4281615828 hasConcept C119599485 @default.
- W4281615828 hasConcept C120314980 @default.
- W4281615828 hasConcept C127413603 @default.
- W4281615828 hasConcept C24590314 @default.
- W4281615828 hasConcept C2742236 @default.
- W4281615828 hasConcept C2780165032 @default.
- W4281615828 hasConcept C31258907 @default.
- W4281615828 hasConcept C41008148 @default.
- W4281615828 hasConcept C41971633 @default.
- W4281615828 hasConcept C48044578 @default.
- W4281615828 hasConcept C555944384 @default.
- W4281615828 hasConcept C68649174 @default.
- W4281615828 hasConcept C76155785 @default.
- W4281615828 hasConcept C77088390 @default.
- W4281615828 hasConcept C79403827 @default.
- W4281615828 hasConceptScore W4281615828C108037233 @default.
- W4281615828 hasConceptScore W4281615828C111185680 @default.
- W4281615828 hasConceptScore W4281615828C119599485 @default.
- W4281615828 hasConceptScore W4281615828C120314980 @default.
- W4281615828 hasConceptScore W4281615828C127413603 @default.
- W4281615828 hasConceptScore W4281615828C24590314 @default.
- W4281615828 hasConceptScore W4281615828C2742236 @default.
- W4281615828 hasConceptScore W4281615828C2780165032 @default.
- W4281615828 hasConceptScore W4281615828C31258907 @default.