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NERC-NSFGEO SMARTWATER: Diagnosing controls of pollution hot spots and hot moments and their impact on catchment water quality

Lead Research Organisation: University of Birmingham
Department Name: Sch of Geography, Earth & Env Sciences

Abstract

Planetary boundaries of river water pollution are at risk of being breached, with dangerous consequences for human and environmental health, economic prosperity, and water security. The current paradigm for environmental management is predicated on understanding of average conditions. However, we know environmental pollution can vary markedly in space and time. This interdisciplinary Large Grant (co-created with non-academic partners and as NERC-NSF collaboration) will pioneer innovations in experimental analytics, data science and mathematical modelling to yield new mechanistic understandings of the dynamic drivers of multi-contaminant pollution hotspots (spaces) and hot moments (times) in a changing water world.

The diagnosis of the impact of these locations and periods when average pollution conditions are far exceeded on large scale and long-term river basin water quality is critical to inform local and global adaptation and mitigation strategies for river pollution and develop interventions to keep within a safe(r) 'operating space' and improve water quality for people and the environment. SMARTWATER will therefore integrate environmental sensing, network and data science innovations, and mathematical modelling with stakeholders' catchment knowledge to transform the way we diagnose, understand, predict, and manage water pollution hotspots and hot moments.

We will:
1. Pioneer the application of scalable field diagnostic technologies for water quality sensing and sampling for identifying and characterising multi-pollution hotspots and hot moments for emerging (e.g., wastewater indicators, pharmaceuticals, pesticides) and legacy (e.g., nutrients) contaminants.

2. Develop smart water quality monitoring network solutions at river basin scale based on integrating high-resolution networks of proxy water pollution indicators with multivariate UAV boat-based longitudinal river network sampling to understand the footprint, propagation and persistence of pollution hotspots and hot moments in river basins.

3. Develop and apply data science innovations integrating deep machine learning and artificial intelligence approaches for pollution source attribution and to identify how hotspots and hot moments of multi-pollutions dynamics results from pollution source activation, connectivity and river network transport and transformation.

4. Demonstrate the utility of the new generation of smart pollution data to improve the capacity of integrated river basin scale water quality models to adequately present and predict the emergence of pollution hotspots and hot moments including their large-scale footprint and longer-term relevance for catchment water pollution.

5. Co-create with our stakeholder community pathways for successfully implementing practical and policy relevant changes in water quality management practice and use the interdisciplinary and inter-sectoral expertise of our broad stakeholder base to inform knowledge generation and dissemination pipelines in SMARTWATER.

The mechanistic process understanding and integrated technological and management solutions that will be developed in SMARTWATER will allow a step change in the diagnostics, prediction and management of water pollution and transform our ability to understand and tackle pollution pressures of increasing complexity in a rapidly changing environment.
 
Description Collaboration with JABBS Foundation 
Organisation JABBS Foundation
Country United Kingdom 
Sector Charity/Non Profit 
PI Contribution FO-DTS investigation of soil water fluxes in irrigated forest plantation
Collaborator Contribution Funding of PhD studentship
Impact No outputs yet
Start Year 2019
 
Description Collaboration with Severn Rivers Trust 
Organisation Severn Rivers Trust
Country United Kingdom 
Sector Charity/Non Profit 
PI Contribution Based on the outcomes of our NERC funded research we have established relationships with the Severn River Trust to further develop woody debris solutions to remediate excess nutrient concentrations in agricultural freshwater bodies.
Collaborator Contribution The Severn Rivers Trust provides direct and in-kind support for the installation of engineering infrastructure in a recent research pilot.
Impact Workshop and joint research project development
Start Year 2020
 
Description Collaboration with UKWIR 
Organisation UK Water Industry Research Ltd
Country United Kingdom 
Sector Charity/Non Profit 
PI Contribution Initiated collaboration with UKWIR and through them with UK water industries
Collaborator Contribution project advisory board and co-creation of grant proposal
Impact Collaborations on use of FO-DTS for groundwater security
Start Year 2017