Smart home system based on comparative analysis among AODV and DSDV protocols in MANET

Author(s):  
Omar Abdulwahabe Mohamad ◽  
Rasha Talal Hameed ◽  
Nicolae Tapus
Author(s):  
Raimundas Jasinevicius ◽  
Vaidas Jukavicius ◽  
Agnius Liutkevicius ◽  
Vytautas Pertauskas ◽  
Agne Taraseviciene ◽  
...  

Author(s):  
Ranjeeta Kaur ◽  
Prashant Vats ◽  
Manju Mandot ◽  
Siddhartha Sankar Biswas ◽  
Rajkumar Garg

Proceedings ◽  
2018 ◽  
Vol 2 (19) ◽  
pp. 1245
Author(s):  
Bronagh Quigley ◽  
Mark Donnelly ◽  
George Moore ◽  
Leo Galway

Windowing is an established technique employed within dense sensing environments to extract relevant features from sensor data streams. Among the established approaches of Explicit, Time-based and Sensor-Event based windowing, Dynamic windowing approaches are beginning to emerge. These dynamic approaches claim to address the inherent shortcomings of the aforementioned established approaches by determining the appropriate window length for live sensor data streams in real-time, thereby offering the potential to optimize and increase the recognition of these sensor represented activities. Beyond these potential benefits, dynamic approaches can also support anomaly detection by actively uncovering new, unknown window patterns within a trained model. This paper presents findings from a study which utilizes data from a single source dataset, towards benchmarking and comparing more traditional windowing approaches against a dynamic windowing approach. The experiments conducted on a real-world smart home dataset suggest Time-based windowing is the best approach. Through evaluation of results, Dynamic windowing approaches may benefit from carefully annotated datasets.


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