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How urban storm- and wastewater management prepares for emerging opportunities and threats: digital transformation, ubiquitous sensing, new data sources, and beyond – a horizon scan
Blumensaat, F., Leitão, J. P., Ort, C., Rieckermann, J., Scheidegger, A., Vanrolleghem, P. A., & Villez, K. (2019). How urban storm- and wastewater management prepares for emerging opportunities and threats: digital transformation, ubiquitous sensing, new data sources, and beyond – a horizon scan. Environmental Science and Technology, 53(15), 8488-8498. https://doi.org/10.1021/acs.est.8b06481
Niedrigenergiefunk im Untergrund. Möglichkeiten und Grenzen einer neuen Daten-Fernübertragung in der Siedlungsentwässerung
Blumensaat, F., Dicht, S., & Ebi, C. (2019). Niedrigenergiefunk im Untergrund. Möglichkeiten und Grenzen einer neuen Daten-Fernübertragung in der Siedlungsentwässerung. Aqua & Gas, 99(3), 52-60.
Flood-water level estimation from social media images
Chaudhary, P., D'Aronco, S., Moy de Vitry, M., Leitão, J. P., & Wegner, J. D. (2019). Flood-water level estimation from social media images. In G. Vosselman, S. J. Oude Elberink, & M. Y. Yang (Eds.), ISPRS annals of the photogrammetry, remote sensing and spatial information sciences: Vol. IV-2/W5. ISPRS geospatial week (pp. 5-12). https://doi.org/10.5194/isprs-annals-IV-2-W5-5-2019
Impact of different sources of precipitation data on urban rainfall-runoff predictions: a comparison of rain gauges, commercial microwave links and radar
Disch, A., Scheidegger, A., Wani, O., & Rieckermann, J. (2019). Impact of different sources of precipitation data on urban rainfall-runoff predictions: a comparison of rain gauges, commercial microwave links and radar. In N. Peleg & P. Molnar (Eds.), Rainfall monitoring, modelling and forecasting in urban environments. Conference Proceedings UrbanRain18 (pp. 27-32). ETH Zurich.
Synchronous LoRa mesh network to monitor processes in underground infrastructure
Ebi, C., Schaltegger, F., Rust, A., & Blumensaat, F. (2019). Synchronous LoRa mesh network to monitor processes in underground infrastructure. IEEE Access, 7, 57663-57677. https://doi.org/10.1109/ACCESS.2019.2913985
Systematic evaluation of biomarker stability in pilot scale sewer pipes
Gao, J., Li, J., Jiang, G., Shypanski, A. H., Nieradzik, L. M., Yuan, Z., … Thai, P. K. (2019). Systematic evaluation of biomarker stability in pilot scale sewer pipes. Water Research, 151, 447-455. https://doi.org/10.1016/j.watres.2018.12.032
Future water: comparing and contrasting approaches to predicting water quality
Guo, D., Lintern, A., Prodanovic, V., Kuller, M., Bach, P. M., Deletic, A., … Western, A. W. (2019). Future water: comparing and contrasting approaches to predicting water quality. In S. Elsawah (Ed.), MODSIM2019, 23rd international congress on modelling and simulation (pp. 1112-1118). https://doi.org/10.36334/modsim.2019.K15.guo
Advancing decision analysis methods for environmental management. Including stakeholder values in wastewater infrastructure planning and river assessment
Haag, F. (2019). Advancing decision analysis methods for environmental management. Including stakeholder values in wastewater infrastructure planning and river assessment [Doctoral dissertation, ETH Zurich]. https://doi.org/10.3929/ethz-b-000378014
Integrating uncertainty of preferences and predictions in decision models: an application to regional wastewater planning
Haag, F., Reichert, P., Maurer, M., & Lienert, J. (2019). Integrating uncertainty of preferences and predictions in decision models: an application to regional wastewater planning. Journal of Environmental Management, 252, 109652 (16 pp.). https://doi.org/10.1016/j.jenvman.2019.109652
Recycling nutrients contained in human excreta to agriculture: pathways, processes, and products
Harder, R., Wielemaker, R., Larsen, T. A., Zeeman, G., & Öberg, G. (2019). Recycling nutrients contained in human excreta to agriculture: pathways, processes, and products. Critical Reviews in Environmental Science and Technology, 49(8), 696-743. https://doi.org/10.1080/10643389.2018.1558889
A cellular automata fast flood evaluation (CA‐ffé) model
Jamali, B., Bach, P. M., Cunningham, L., & Deletic, A. (2019). A cellular automata fast flood evaluation (CA‐ffé) model. Water Resources Research, 55(6), 4936-4953. https://doi.org/10.1029/2018WR023679
A planning-support tool for spatial suitability assessment of green urban stormwater infrastructure
Kuller, M., Bach, P. M., Roberts, S., Browne, D., & Deletic, A. (2019). A planning-support tool for spatial suitability assessment of green urban stormwater infrastructure. Science of the Total Environment, 686, 856-868. https://doi.org/10.1016/j.scitotenv.2019.06.051
Saubere Gewässer dank Messdatenmanagement. Instrumente für einen guten Umgang mit Messdaten in der Schweizer Siedlungsentwässerung
Manny, L., Fischer, M., Staufer, P., & Rieckermann, J. (2019). Saubere Gewässer dank Messdatenmanagement. Instrumente für einen guten Umgang mit Messdaten in der Schweizer Siedlungsentwässerung. Aqua & Gas, 99(1), 58-65.
Network topology and rainfall controls on the variability of combined sewer overflows and loads
McGrath, G., Kaeseberg, T., Reyes Silva, J. D., Jawitz, J. W., Blumensaat, F., Borchardt, D., … Rao, P. S. C. (2019). Network topology and rainfall controls on the variability of combined sewer overflows and loads. Water Resources Research, 55(11), 9578-9591. https://doi.org/10.1029/2019WR025336
Public surveillance and the future of urban pluvial flood modelling
Moy de Vitry, M. (2019). Public surveillance and the future of urban pluvial flood modelling [Doctoral dissertation, ETH Zurich]. https://doi.org/10.3929/ethz-b-000397587
Scalable flood level trend monitoring with surveillance cameras using a deep convolutional neural network
Moy de Vitry, M., Kramer, S., Wegner, J. D., & Leitão, J. P. (2019). Scalable flood level trend monitoring with surveillance cameras using a deep convolutional neural network. Hydrology and Earth System Sciences, 23(11), 4621-4634. https://doi.org/10.5194/hess-23-4621-2019
Smart urban water systems: what could possibly go wrong?
Moy de Vitry, M., Schneider, M. Y., Wani, O., Manny, L., Leitão, J. P., & Eggimann, S. (2019). Smart urban water systems: what could possibly go wrong? Environmental Research Letters, 14(8), 081001 (4 pp.). https://doi.org/10.1088/1748-9326/ab3761
Mikroverunreinigungen aus Siedlungen. Messungen in 20 Mischabwasserentlastungen mit Passivsammler
Mutzner, L., Mangold, S., Dicht, S., Bohren, C., Vermeirssen, E. L. M., Scheidegger, A., … Ort, C. (2019). Mikroverunreinigungen aus Siedlungen. Messungen in 20 Mischabwasserentlastungen mit Passivsammler. Aqua & Gas, 99(10), 28-35.
Passive samplers in sewers and rivers with highly fluctuating micropollutant concentrations – Better than we thought
Mutzner, L., Vermeirssen, E. L. M., & Ort, C. (2019). Passive samplers in sewers and rivers with highly fluctuating micropollutant concentrations – Better than we thought. Journal of Hazardous Materials, 361, 312-320. https://doi.org/10.1016/j.jhazmat.2018.07.040
Passive samplers to quantify micropollutants in sewer overflows: accumulation behaviour and field validation for short pollution events
Mutzner, L., Vermeirssen, E. L. M., Mangold, S., Maurer, M., Scheidegger, A., Singer, H., … Ort, C. (2019). Passive samplers to quantify micropollutants in sewer overflows: accumulation behaviour and field validation for short pollution events. Water Research, 160, 350-360. https://doi.org/10.1016/j.watres.2019.04.012