Title
A Knowledge-Based Path Optimization Technique for Cognitive Nodes in Smart Grid.
Abstract
The cognitive network uses cognitive processes to record data transmission rate among nodes and applies self-learning methods to trace data load points for finding optimal transmission path in the distributed computing environment. Several industrial systems, e.g., data-centers, smart grids, etc., have adopted this cognitive paradigm and retrieved the least HOP count paths for processing huge datasets with minimum resource consumption. Therefore, this technique works well in transmitting structured data such as 'XML', however, if the data is in unstructured format i.e. 'RDF', the transmission technique wraps it with the same layout of payload and eventually returns inaccuracy in calculating traces of data load points due to the abnormal payload layout. In this paper, we propose a knowledge-based optimal routing path analyzer (RORP) that resolves the transmission wrapping issue of the payload by introducing a novel RDF-aware payload-layout. The proposed analyzer uses the enhanced payload layout to transmit unstructured RDF triples with an append pheromone (footsteps) value through cognitive nodes towards the semantic reservoir. The grid performs analytics and returns least HOP count path for processing huge RDF datasets in the cognitive network. The simulation results show that the proposed approach effectively returns the least HOP count path, enhances network performance by minimizing the resource consumption at each of the cognitive nodes and reduces traffic congestion through knowledge-based HOP count analytics technique in the cognitive environment of the smart grid.
Year
DOI
Venue
2018
10.1109/GLOCOM.2018.8648016
IEEE Global Communications Conference
Keywords
Field
DocType
Cognitive network,Semantic dataset,Apache Hadoop,RDF Triple,Ant colony optimization,Smart grid
Smart grid,Data transmission,Computer science,Computer network,Real-time computing,Analytics,Data model,Grid,Payload,Network performance,Cognitive network
Conference
ISSN
Citations 
PageRank 
2334-0983
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Nawab Muhammad Faseeh Qureshi100.68
Ali Kashif Bashir219542.51
Isma Farah Siddiqui3152.98
Asad Abbas400.34
Kee-Hyun Choi5269.03
Dong-Ryeol Shin612427.03