2021
DOI: 10.3390/rs13204148
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Managing Time-Sensitive IoT Applications via Dynamic Application Task Distribution and Adaptation

Abstract: The recent proliferation of the Internet of Things has led to the pervasion of networked IoT devices such as sensors, video cameras, mobile phones, and industrial machines. This has fueled the growth of Time-Sensitive IoT (TS-IoT) applications that must complete the tasks of (1) collecting sensor observations they need from appropriate IoT devices and (2) analyzing the data within application-specific time-bounds. If this is not achieved, the value of these applications and the results they produce depreciates… Show more

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Cited by 11 publications
(5 citation statements)
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“…Lastly, it is important to note that in application scenarios requiring substantial computational resources for real-time prediction of multiple transport vehicles, there are techniques like Map-Reduce [ 48 , 49 ], data approximation [ 50 ], contextualisation [ 51 , 52 ], and situation-aware computing [ 53 ] that can be employed, to achieve scalable real-time computation to meet the time-bound requirements [ 54 , 55 ].…”
Section: Discussion and Future Researchmentioning
confidence: 99%
“…Lastly, it is important to note that in application scenarios requiring substantial computational resources for real-time prediction of multiple transport vehicles, there are techniques like Map-Reduce [ 48 , 49 ], data approximation [ 50 ], contextualisation [ 51 , 52 ], and situation-aware computing [ 53 ] that can be employed, to achieve scalable real-time computation to meet the time-bound requirements [ 54 , 55 ].…”
Section: Discussion and Future Researchmentioning
confidence: 99%
“…Where more complex computation is needed, this is typically handled at another layer (discussed in Figure 2) where computationally intensive data processing and decision-making processes are conducted. However, this has the drawback that latency can be introduced between sensing and actuation, and system complexity may increase due to increased reliance on higher layers [49,50] [52]. Such heterogeneous characteristics of IoT devices can make the data aggregation and integration a challenging task, which can result in the reduced efficiency of the decision-making and actuation process.…”
Section: Device Layermentioning
confidence: 99%
“…Nevertheless, the full potential of the IoT ecosystem is still far from being fully realised because of the lack of comprehensive solutions that ensure the security and quality of IoT data, improve the reuse of existing IoT devices, provide better support for time-sensitive IoT (TS-IoT) applications, and better support critical industrial applications and industry 4.0 vision. This paper addresses the challenge of TS-IoT applications (i.e., applications that require their processing to be completed within a specific time-bound, otherwise the produced results will not be useful for the application) [2,3]. TS-IoT applications are relatively common, and they range from preventing traffic accidents and reducing fuel theft in gas stations by preventing vehicles with stolen license plates to refuel to achieving a higher degree of automation control in manufacturing plants, monitoring and managing greenhouse gases, and so forth [4][5][6][7].…”
Section: Introductionmentioning
confidence: 99%