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Outputs (3)

Enhancing solids deposit prediction in gully pots with explainable hybrid models: A review (2024)
Journal Article
Ekechukwu, C., Chatzirodou, A., Beaumont, H., Eyo, E., & Staddon, C. (in press). Enhancing solids deposit prediction in gully pots with explainable hybrid models: A review. Water Science and Technology, https://doi.org/10.2166/wst.2024.077

Urban flooding has made it necessary to gain a better understanding of how well gully pots perform when overwhelmed by solids deposition due to various climatic and anthropogenic variables. This study investigates solids deposition in gully pots thro... Read More about Enhancing solids deposit prediction in gully pots with explainable hybrid models: A review.

Estimating water storage from images (2024)
Conference Proceeding
Shahbaz, A., Yunas, S., Smith, L., & Staddon, C. (2024). Estimating water storage from images. In 2023 IEEE International Conference on Big Data (BigData) (3375-3379). https://doi.org/10.1109/BigData59044.2023.10386262

This paper introduces a novel approach to estimate domestic water storage within households by leveraging the classical computer vision technique of object detection. Ensuring universal access to safe drinking water is a critical component of achievi... Read More about Estimating water storage from images.

Household water containers: Mitigating risks for improved Modular, Adaptive, and Decentralized (MAD) water systems (2024)
Journal Article
Staddon, C., & Brewis, A. (2024). Household water containers: Mitigating risks for improved Modular, Adaptive, and Decentralized (MAD) water systems. Water Security, 21, Article 100163. https://doi.org/10.1016/j.wasec.2023.100163

While the literature on the design and operation of safe water sources in low-income communities is huge, little attention has been paid to the design of systems for the safe transportation and storage of water by households between source and point... Read More about Household water containers: Mitigating risks for improved Modular, Adaptive, and Decentralized (MAD) water systems.