Context-Capture Multi-Valued Decision Fusion With Fault Tolerant Capability For Wireless Sensor Networks
Jun Wu, Shigeru Shimamoto

TL;DR
This paper introduces a novel decision fusion scheme for wireless sensor networks that captures bursty context and handles multi-valued data, improving decision accuracy and fault tolerance.
Contribution
It proposes a new context-capture multi-valued decision fusion method using MMPP and MVL, addressing limitations of binary-based schemes.
Findings
Enhanced decision accuracy with bursty context modeling
Effective fault detection and node decision exclusion
Improved performance in multi-valued data scenarios
Abstract
Wireless sensor networks (WSNs) are usually utilized to perform decision fusion of event detection. Current decision fusion schemes are based on binary valued decision and do not consider bursty contextcapture. However, bursty context and multi-valued data are important characteristics of WSNs. One on hand, the local decisions from sensors usually have bursty and contextual characteristics. Fusion center must capture the bursty context information from the sensors. On the other hand, in practice, many applications need to process multi-valued data, such as temperature and reflection level used for lightening prediction. To address these challenges, the Markov modulated Poisson process (MMPP) and multi-valued logic are introduced into WSNs to perform context-capture multi-valued decision fusion. The overall decision fusion is decomposed into two parts. The first part is the…
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