Matches in SemOpenAlex for { <https://semopenalex.org/work/W4327960872> ?p ?o ?g. }
- W4327960872 endingPage "3857" @default.
- W4327960872 startingPage "3857" @default.
- W4327960872 abstract "Precision agriculture and smart farming have received significant attention due to the advancements made in remote sensing technology to support agricultural efficiency. In large-scale agriculture, the role of unmanned aerial vehicles (UAVs) has increased in remote monitoring and collecting farm data at regular intervals. However, due to an open environment, UAVs can be hacked to malfunction and report false data. Due to limited battery life and flight times requiring frequent recharging, a compromised UAV wastes precious energy when performing unnecessary functions. Furthermore, it impacts other UAVs competing for charging times at the station, thus disrupting the entire data collection mechanism. In this paper, a fog computing-based smart farming framework is proposed that utilizes UAVs to gather data from IoT sensors deployed in farms and offloads it at fog sites deployed at the network edge. The framework adopts the concept of a charging token, where upon completing a trip, UAVs receive tokens from the fog node. These tokens can later be redeemed to charge the UAVs for their subsequent trips. An intrusion detection system is deployed at the fog nodes that utilize machine learning models to classify UAV behavior as malicious or benign. In the case of malicious classification, the fog node reduces the tokens, resulting in the UAV not being able to charge fully for the duration of the trip. Thus, such UAVs are automatically eliminated from the UAV pool. The results show a 99.7% accuracy in detecting intrusions. Moreover, due to token-based elimination, the system is able to conserve energy. The evaluation of CPU and memory usage benchmarks indicates that the system is capable of efficiently collecting smart-farm data, even in the presence of attacks." @default.
- W4327960872 created "2023-03-21" @default.
- W4327960872 creator A5011728448 @default.
- W4327960872 creator A5033269031 @default.
- W4327960872 creator A5035177276 @default.
- W4327960872 creator A5067899667 @default.
- W4327960872 creator A5086006587 @default.
- W4327960872 date "2023-03-17" @default.
- W4327960872 modified "2023-09-27" @default.
- W4327960872 title "A Fog Computing Framework for Intrusion Detection of Energy-Based Attacks on UAV-Assisted Smart Farming" @default.
- W4327960872 cites W1559397465 @default.
- W4327960872 cites W1982466846 @default.
- W4327960872 cites W2007821002 @default.
- W4327960872 cites W2100155234 @default.
- W4327960872 cites W2145982493 @default.
- W4327960872 cites W2467239853 @default.
- W4327960872 cites W2766764374 @default.
- W4327960872 cites W2770794632 @default.
- W4327960872 cites W2783037699 @default.
- W4327960872 cites W2799548584 @default.
- W4327960872 cites W2806317011 @default.
- W4327960872 cites W2809225792 @default.
- W4327960872 cites W2884951793 @default.
- W4327960872 cites W2888404827 @default.
- W4327960872 cites W2890840584 @default.
- W4327960872 cites W2898157213 @default.
- W4327960872 cites W2902106343 @default.
- W4327960872 cites W2902160827 @default.
- W4327960872 cites W2904027073 @default.
- W4327960872 cites W2905540225 @default.
- W4327960872 cites W2906848335 @default.
- W4327960872 cites W2909234131 @default.
- W4327960872 cites W2910548359 @default.
- W4327960872 cites W2918472297 @default.
- W4327960872 cites W2950250245 @default.
- W4327960872 cites W2958950562 @default.
- W4327960872 cites W2963270044 @default.
- W4327960872 cites W2964023906 @default.
- W4327960872 cites W2979434725 @default.
- W4327960872 cites W2982575942 @default.
- W4327960872 cites W2989622188 @default.
- W4327960872 cites W2990204812 @default.
- W4327960872 cites W2990854163 @default.
- W4327960872 cites W2991463474 @default.
- W4327960872 cites W2994866269 @default.
- W4327960872 cites W2999945971 @default.
- W4327960872 cites W3000225415 @default.
- W4327960872 cites W3003262233 @default.
- W4327960872 cites W3006318922 @default.
- W4327960872 cites W3010003004 @default.
- W4327960872 cites W3027898192 @default.
- W4327960872 cites W3044921708 @default.
- W4327960872 cites W3080840693 @default.
- W4327960872 cites W3091870957 @default.
- W4327960872 cites W3120131065 @default.
- W4327960872 cites W3121998869 @default.
- W4327960872 cites W3123339530 @default.
- W4327960872 cites W3136619453 @default.
- W4327960872 cites W3202124367 @default.
- W4327960872 cites W3210057799 @default.
- W4327960872 cites W4205922727 @default.
- W4327960872 cites W4211139801 @default.
- W4327960872 cites W4212958548 @default.
- W4327960872 cites W4284885246 @default.
- W4327960872 cites W4320015942 @default.
- W4327960872 doi "https://doi.org/10.3390/app13063857" @default.
- W4327960872 hasPublicationYear "2023" @default.
- W4327960872 type Work @default.
- W4327960872 citedByCount "0" @default.
- W4327960872 crossrefType "journal-article" @default.
- W4327960872 hasAuthorship W4327960872A5011728448 @default.
- W4327960872 hasAuthorship W4327960872A5033269031 @default.
- W4327960872 hasAuthorship W4327960872A5035177276 @default.
- W4327960872 hasAuthorship W4327960872A5067899667 @default.
- W4327960872 hasAuthorship W4327960872A5086006587 @default.
- W4327960872 hasBestOaLocation W43279608721 @default.
- W4327960872 hasConcept C127313418 @default.
- W4327960872 hasConcept C127413603 @default.
- W4327960872 hasConcept C158251709 @default.
- W4327960872 hasConcept C17409809 @default.
- W4327960872 hasConcept C2778456923 @default.
- W4327960872 hasConcept C35525427 @default.
- W4327960872 hasConcept C38652104 @default.
- W4327960872 hasConcept C41008148 @default.
- W4327960872 hasConcept C48145219 @default.
- W4327960872 hasConcept C62611344 @default.
- W4327960872 hasConcept C66938386 @default.
- W4327960872 hasConcept C79403827 @default.
- W4327960872 hasConcept C81860439 @default.
- W4327960872 hasConceptScore W4327960872C127313418 @default.
- W4327960872 hasConceptScore W4327960872C127413603 @default.
- W4327960872 hasConceptScore W4327960872C158251709 @default.
- W4327960872 hasConceptScore W4327960872C17409809 @default.
- W4327960872 hasConceptScore W4327960872C2778456923 @default.
- W4327960872 hasConceptScore W4327960872C35525427 @default.
- W4327960872 hasConceptScore W4327960872C38652104 @default.
- W4327960872 hasConceptScore W4327960872C41008148 @default.
- W4327960872 hasConceptScore W4327960872C48145219 @default.