Abstract

AbstractUrban river systems are particularly sensitive to precipitation‐driven water temperature surges and fluctuations. These result from rapid heat transfer from low‐specific heat capacity surfaces to precipitation, which can cause thermally polluted surface run‐off to enter urban streams. This can lead to additional ecological stress on these already precarious ecosystems. Although precipitation is a first‐order driver of hydrological response, water temperature studies rarely characterize rain event dynamics and typically rely on single gauge data that yield only partial estimates of catchment precipitation. This paper examines three precipitation measuring methods (a statutory automatic weather station, citizen science gauges, and radar estimates) and investigates relationships between estimated rainfall inputs and subhourly surges and diurnal fluctuations in urban river water temperature. Water temperatures were monitored at 12 sites in summer 2016 in the River Rea, in Birmingham, UK. Generalized additive models were used to model the relationship between subhourly water temperature surges and precipitation intensity and subsequently the relationship between daily precipitation totals and standardized mean water temperature. The different precipitation measurement sources give highly variable precipitation estimates that relate differently to water temperature fluctuations. The radar catchment‐averaged method produced the best model fit (generalized cross‐validation score [GCV] = 0.30) and was the only model to show a significant relationship between water temperature surges and precipitation intensity (P < 0.001, R2 = 0.69). With respect to daily metrics, catchment‐averaged precipitation estimates from citizen science data yielded the best model fit (GCV score = 0.20). All precipitation measurement and calculation methods successfully modelled the relationship between standardized mean water temperature and daily precipitation (P < 0.001). This research highlights the potential for the use of alternative precipitation datasets to enhance understanding of event‐based variability in water quality studies. We conclude by recommending the use of spatially distributed precipitation data operating at high spatial (<1 km2) and temporal (<15 min) resolutions to improve the analysis of event‐based water temperature and water quality studies.

Highlights

  • Urban stream water temperatures are highly variable and subject to short‐term changes during high‐intensity precipitation events

  • This paper examines three precipitation measuring methods and investigates relationships between estimated rainfall inputs and subhourly surges and diurnal fluctuations in urban river water temperature

  • Citizen science estimates of precipitation were highly inaccurate with respect to percentage difference in total rainfall amount, compared with estimates at the weather station site location, during high‐intensity events, possibly resulting from high spatial variability in precipitation within the catchment that was not adequately accounted for by the citizen science gauges (Pedersen et al, 2010)

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Summary

| INTRODUCTION

Urban stream water temperatures are highly variable and subject to short‐term changes during high‐intensity precipitation events. Radar and citizen science precipitation datasets may provide a useful alternative to single rainfall gauges (Buytaert et al, 2014; Gabriele et al, 2017; Koch & Stisen, 2017; Starkey et al, 2017; Thorndahl et al, 2017), in urban catchments where high‐ spatial resolution precipitation data are required or where catchments are poorly gauged (Berne et al, 2004). 5‐min temporal resolution radar precipitation has been found to represent spatial variability of rainfall well in small, urban catchments, compared with high‐density gauge networks (Berne et al, 2004; Thorndahl et al, 2017). Explore to what extent three precipitation datasets are able to represent spatial variability in precipitation intensity in relation to a water temperature surge event

| METHODS
| RESULTS
Findings
| DISCUSSION AND CONCLUSIONS
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