Urbanization and mixed-land-use development significantly impact water quality dynamics in watersheds, necessitating continuous monitoring and advanced analytical techniques for sustainable water management. This study employs continuous wavelet analysis to investigate the temporal variability and correlations of real-time water quality parameters in the Credit River watershed, Ontario, Canada. The Integrated Watershed Monitoring Program (IWMP), initiated by the Credit Valley Conservation (CVC) Authority, has facilitated long-term real-time water quality monitoring since 2010. Fundamental and exploratory statistical analyses were conducted to identify patterns, trends, and anomalies in key water quality parameters, including pH, specific conductivity, turbidity, dissolved oxygen (DO), chloride, water temperature (\ (T^°₇䃒O) \), air temperature (\ (T^°₀₈ₑ) \), streamflow, and water level. Continuous wavelet transform and wavelet coherence techniques revealed significant temporal variations, with “1-day” periodicities for DO, pH, (\ (T^°₇䃒O) \), and (\ (T^°₀₈ₑ) \) showing high power at a 95% confidence level against red noise, particularly from late spring to early fall, rather than throughout the entire year. These findings underscore the seasonal influence on water quality and highlight the need for adaptive watershed management strategies. The study demonstrates the potential of wavelet analysis in detecting temporal patterns and informing decision-making for sustainable water resource management in rapidly urbanizing mixed-land-use watersheds.
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Sukhmani Bola
Ramesh Rudra
Rituraj Shukla
Sustainability
University of Guelph
Ministry of the Environment, Conservation and Parks
Credit Valley Hospital
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Bola et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68d9051b41e1c178a14f4df1 — DOI: https://doi.org/10.3390/su17198685