Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A Preference-Based Multi-Objective Evolutionary Algorithm for Semiautomatic Sensor Ontology Matching

View through CrossRef
This article describes how with the advent of sensors for collecting environmental data, many sensor ontologies have been developed. However, the heterogeneity of sensor ontologies blocks semantic interoperability between them and limits their applications. Ontology matching is an effective technique to solve the problem of sensor ontology heterogeneity. To improve the quality of sensor ontology alignment, the authors propose a semiautomatic ontology matching technique based on a preference-based multi-objective evolutionary algorithm (PMOEA), which can utilize the user's knowledge of the solution's quality to direct MOEA to effectively match the heterogeneous sensor ontologies. The authors specifically construct a new multi-objective optimal model for the sensor ontology matching problem, propose a user preference-based t-dominance rule, and design a PMOEA to solve the sensor ontology matching problem. The experimental results show that their approach can significantly improve the sensor ontology alignment's quality under different heterogeneous situations.
Title: A Preference-Based Multi-Objective Evolutionary Algorithm for Semiautomatic Sensor Ontology Matching
Description:
This article describes how with the advent of sensors for collecting environmental data, many sensor ontologies have been developed.
However, the heterogeneity of sensor ontologies blocks semantic interoperability between them and limits their applications.
Ontology matching is an effective technique to solve the problem of sensor ontology heterogeneity.
To improve the quality of sensor ontology alignment, the authors propose a semiautomatic ontology matching technique based on a preference-based multi-objective evolutionary algorithm (PMOEA), which can utilize the user's knowledge of the solution's quality to direct MOEA to effectively match the heterogeneous sensor ontologies.
The authors specifically construct a new multi-objective optimal model for the sensor ontology matching problem, propose a user preference-based t-dominance rule, and design a PMOEA to solve the sensor ontology matching problem.
The experimental results show that their approach can significantly improve the sensor ontology alignment's quality under different heterogeneous situations.

Related Results

Dynamic stochastic modeling for inertial sensors
Dynamic stochastic modeling for inertial sensors
Es ampliamente conocido que los modelos de error para sensores inerciales tienen dos componentes: El primero es un componente determinista que normalmente es calibrado por el fabri...
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Through sensor networks, agriculture can be connected to the IoT, which allows us to create connections among agronomists, farmers, and crops regardless of their geographical diffe...
A Fast Pattern Matching Algorithm Based on Middle Characters of Pattern String
A Fast Pattern Matching Algorithm Based on Middle Characters of Pattern String
String pattern matching is one of the important string operation. At present, the pattern matching algorithm of strings mainly includes BF algorithm, KMP algorithm, and improved KM...
2021 Census to Census Coverage Survey Matching Results.
2021 Census to Census Coverage Survey Matching Results.
The 2021 England and Wales Census was matched to the Census Coverage Survey (CCS). This was an essential requisite for estimating undercount in the Census. To ensure outputs could ...
Evolution and the cell
Evolution and the cell
Genotype to phenotype, and back again Evolution is intimately linked to biology at the cellular scale- evolutionary processes act on the very genetic material that is carried and ...
FOntCell: Fusion of Ontologies of Cells
FOntCell: Fusion of Ontologies of Cells
AbstractHigh-throughput cell-data technologies such as single-cell RNA-Seq create a demand for algorithms for automatic cell classification and characterization. There exist severa...
Multi-Objective Optimal Power Flow Solutions Using Improved Multi-Objective Mayfly Algorithm (IMOMA)
Multi-Objective Optimal Power Flow Solutions Using Improved Multi-Objective Mayfly Algorithm (IMOMA)
This paper realizes the implementation of Improved Multi-objective Mayfly Algorithm (IMOMA) for getting optimal solutions related to optimal power flow problem with smooth and nons...
Semiautomatic Generation of Code Ontology Using ifcOWL in Compliance Checking
Semiautomatic Generation of Code Ontology Using ifcOWL in Compliance Checking
Code compliance checking is a very important step in engineering construction, but most of code compliance checking relies on manual review at present. With the development of sema...

Back to Top