Content area

Abstract

The international marine ecological safety monitoring demonstration station in the Yellow Sea was developed as a collaborative project between China and Russia. It is a nonprofit technical workstation designed as a facility for marine scientific research for public welfare. By undertaking long-term monitoring of the marine environment and automatic data collection, this station will provide valuable information for marine ecological protection and disaster prevention and reduction. The results of some initial research by scientists at the research station into predictive modeling of marine ecological environments and early warning are described in this paper. Marine ecological processes are influenced by many factors including hydrological and meteorological conditions, biological factors, and human activities. Consequently, it is very difficult to incorporate all these influences and their interactions in a deterministic or analysis model. A prediction model integrating a time series prediction approach with neural network nonlinear modeling is proposed for marine ecological parameters. The model explores the natural fluctuations in marine ecological parameters by learning from the latest observed data automatically, and then predicting future values of the parameter. The model is updated in a "rolling" fashion with new observed data from the monitoring station. Prediction experiments results showed that the neural network prediction model based on time series data is effective for marine ecological prediction and can be used for the development of early warning systems.[PUBLICATION ABSTRACT]

Details

10000008
Location
Title
Using a neural network approach and time series data from an international monitoring station in the Yellow Sea for modeling marine ecosystems
Publication title
Volume
186
Issue
1
Pages
515-24
Publication year
2014
Publication date
Jan 2014
Publisher
Springer Nature B.V.
Place of publication
Dordrecht
Country of publication
Netherlands
Publication subject
ISSN
0167-6369
e-ISSN
1573-2959
Source type
Scholarly Journal
Language of publication
English
Document type
Feature, Journal Article
Accession number
24057664
ProQuest document ID
1466163089
Document URL
https://www.proquest.com/scholarly-journals/using-neural-network-approach-time-series-data/docview/1466163089/se-2?accountid=208611
Copyright
Springer Science+Business Media Dordrecht 2014
Last updated
2025-04-04
Database
ProQuest One Academic