Temporal modelling of long-term heavy metal concentrations in aquatic ecosystems
This paper examines a series of connected and isolated lakes in the UK as a model system with historic episodes of heavy metal contamination. A 9-year hydrometeorological dataset for the sites was identified to analyse the legacy of heavy metal concentrations within the selected lakes based on physico-chemical and hydrometeorological parameters and, a comparison of the complementary methods of multiple regression, time series analysis and artificial neural network (ANN). The results highlight the importance of the quality of historic datasets without which analyses such as those presented in this research paper cannot be undertaken. The results also indicate that the ANNs developed were more realistic than the other methodologies (regression and time series analysis) considered. The ANNs provided a higher correlation coefficient and a lower mean squared error when compared to the regression models. However, quality assurance and pre-processing of the data was challenging and was addressed by transforming the relevant dataset and interpolating the missing values. The selection and application of the most appropriate temporal modelling technique, which relies on the quality of available dataset, is crucial for the management of legacy contaminated sites to guide successful mitigation measures to avoid significant environmental and human health implications.
Funding
CEMEX UK Operations Ltd
History
School
- Aeronautical, Automotive, Chemical and Materials Engineering
- Social Sciences and Humanities
Department
- Chemical Engineering
- Geography and Environment
Published in
Journal of HydroinformaticsVolume
25Issue
4Pages
1188-1209Publisher
IWA PublishingVersion
- VoR (Version of Record)
Rights holder
© The AuthorsPublisher statement
This is an Open Access article distributed under the terms of the Creative Commons Attribution Licence (CC BY 4.0), which permits copying, adaptation and redistribution, provided the original work is properly cited (http://creativecommons.org/licenses/by/4.0/).Acceptance date
2023-05-17Publication date
2023-06-02Copyright date
2023ISSN
1464-7141eISSN
1465-1734Publisher version
Language
- en