DOAJ Open Access 2014

Data-Centric Knowledge Discovery Strategy for a Safety-Critical Sensor Application

Nilamadhab Mishra Hsien-Tsung Chang Chung-Chih Lin

Abstrak

In an indoor safety-critical application, sensors and actuators are clustered together to accomplish critical actions within a limited time constraint. The cluster may be controlled by a dedicated programmed autonomous microcontroller device powered with electricity to perform in-network time critical functions, such as data collection, data processing, and knowledge production. In a data-centric sensor network, approximately 3–60% of the sensor data are faulty, and the data collected from the sensor environment are highly unstructured and ambiguous. Therefore, for safety-critical sensor applications, actuators must function intelligently within a hard time frame and have proper knowledge to perform their logical actions. This paper proposes a knowledge discovery strategy and an exploration algorithm for indoor safety-critical industrial applications. The application evidence and discussion validate that the proposed strategy and algorithm can be implemented for knowledge discovery within the operational framework.

Penulis (3)

N

Nilamadhab Mishra

H

Hsien-Tsung Chang

C

Chung-Chih Lin

Format Sitasi

Mishra, N., Chang, H., Lin, C. (2014). Data-Centric Knowledge Discovery Strategy for a Safety-Critical Sensor Application. https://doi.org/10.1155/2014/172186

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Informasi Jurnal
Tahun Terbit
2014
Sumber Database
DOAJ
DOI
10.1155/2014/172186
Akses
Open Access ✓