4.7 Article

ITrust: An Anomaly-Resilient Trust Model Based on Isolation Forest for Underwater Acoustic Sensor Networks

Journal

IEEE TRANSACTIONS ON MOBILE COMPUTING
Volume 21, Issue 5, Pages 1684-1696

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TMC.2020.3028369

Keywords

Measurement; Computational modeling; Forestry; Social networking (online); Underwater acoustics; Working environment noise; Reliability; Anomaly detection; isolation forest; trust modelling; underwater acoustic sensor networks

Funding

  1. National Natural Science Foundation of China [62072072, 62002045]
  2. Fundamental Research Funds for the Central Universities [DUT20RC(5)016]
  3. State Key Laboratory of Acoustics [SKLA201901]
  4. Science and Technology on Underwater Vehicle Technology [6142215180101]

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In this paper, a new anomaly and attack resilient trust model based on isolation forest is proposed for trustworthiness evaluation and defective node detection in underwater acoustic sensor networks. The model takes into consideration the effects of underwater environmental noise on trust reliability and utilizes isolation forest algorithm for accurate calculation of node trust and effective detection of defective nodes.
Underwater acoustic sensor networks (UASNs) have been widely promoted for developing various categories of marine applications, where the sensor nodes cooperate to complete specific tasks. Given the fact that the sensor nodes are unattended while continuously exposed to harsh environments, an associated trust model plays a significant role in node trustworthiness evaluation and defective node detection, such as the case of adverse attacks on the network. However, the existing trust models only evaluate the communication behavior and the energy of the sensor nodes, ignoring the effects of underwater environmental noise on trust reliability. Further, most trust models are designed with arbitraty weighted trust metrics, causing inevitable evaluation errors. To achieve the accurate calculation of node trust, we propose a new anomaly and attack resilient trust model, based on the isolation forest. We refer to this model as ITrust. The proposed ITrust model consists of two phases: trust metrics specifics and defective node detection. In the first phase, the trust dataset is integrated from four types of trust metrics: communication trust, data trust, energy trust, and environment trust. In the second stage, trust is evaluated with the obtained trust dataset using the isolation forest algorithm. Simulation results demonstrate that the proposed ITrust can detect defective nodes effectively, and achieves higher detection accuracy than that of the existing trust models in a noisy environment.

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