| Literature DB >> 29882784 |
Vladimir Shakhov1, Insoo Koo2.
Abstract
The emerging Internet of Things (IoT) has great potential; however, the societal costs of the IoT can outweigh its benefits. To unlock IoT potential, there needs to be improvement in the security of IoT applications. There are several standardization initiatives for sensor networks, which eventually converge with the Internet of Things. As sensor-based applications are deployed, security emerges as an essential requirement. One of the critical issues of wireless sensor technology is limited sensor resources, including sensor batteries. This creates a vulnerability to battery-exhausting attacks. Rapid exhaustion of sensor battery power is not only explained by intrusions, but can also be due to random failure of embedded sensor protocols. Thus, most wireless sensor applications, without tools to defend against rash battery exhausting, would be unable to function during prescribed times. In this paper, we consider a special type of threat, in which the harm is malicious depletion of sensor battery power. In contrast to the traditional denial-of-service attack, quality of service under the considered attack is not necessarily degraded. Moreover, the quality of service can increase up to the moment of the sensor set crashes. We argue that this is a distinguishing type of attack. Hence, the application of a traditional defense mechanism against this threat is not always possible. Therefore, effective methods should be developed to counter the threat. We first discuss the feasibility of rash depletion of battery power. Next, we propose a model for evaluation of energy consumption when under attack. Finally, a technique to counter the attack is discussed.Entities:
Keywords: depletion-of-battery attack; security; wireless sensor networks
Year: 2018 PMID: 29882784 PMCID: PMC6021927 DOI: 10.3390/s18061849
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Venn diagram representation of the denial-of-service (DoS) and depletion-of-battery (DoB) attacks interrelation.
Figure 2State diagram with absorbing state for sensor battery behavior.
Figure 3State diagram of sensor modes.
Figure 4DoB attack based on excessive transmission power.
Figure 5Boxplot diagram for sensor lifetime.
Detailed statistics for sensor lifetime. Min is the smallest value in the sample. Max is the largest value in the sample. Mean is the sample mean. Median is the second quartile. Q 1 and Q 3 are the first and third quartiles.
| Scenario |
|
|
|
| ||
|---|---|---|---|---|---|---|
|
| 209.6 | 221.4 | 225.2 | 225.2 | 228.8 | 241.5 |
|
| 202.0 | 220.0 | 226.0 | 225.8 | 231.0 | 257.0 |
|
| 160.4 | 190.2 | 199.8 | 200.2 | 209.6 | 247.6 |
|
| 178.0 | 196.0 | 201.0 | 200.8 | 206.0 | 229.0 |
Figure 6Behavior of the system survivability function, depending on m.
Figure 7System survivability and varied types of DoB.
Figure 8Efficiency of DoB detection.