A Data Driven Approach to Bioretention Cell Performance: Prediction and Design

Date

2013

Authors

Khan, Usman
Valeo, Caterina
Chu, Agnes
He, Jianxun

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Abstract

Bioretention cells are an urban stormwater management technology used to address both water quality and quantity concerns. A lack of region-specific design guidelines has limited the widespread implementation of bioretention cells, particularly in cold climates. In this paper, experimental data are used to construct a multiple linear regression model to predict hydrological performance of bioretention cells. Nine different observed parameters are considered as candidates for regressors, of which inlet runoff volume and duration, and initial soil moisture were chosen. These three variables are used to construct six different regression models, which are tested against the observations. Statistical analysis showed that the amount of runoff captured by a bioretention cell can be successfully predicted by the inlet runoff volume and event duration. Historical data is then used to calculate runoff volume for a given duration, in different catchment types. This data is used in the regression model to predict bioretention cell performance. The results are then used to create a design tool which can assist in estimating bioretention cell size to meet different performance goals in southern Alberta. Examples on the functionality of the design tool are provided.

Description

Keywords

bioretention, multiple linear regression, urban runoff, hydrology, low impact development, design

Citation

Khan, U. et al., 2013. A Data Driven Approach to Bioretention Cell Performance: Prediction and Design. Water, 5(1), pp.13–28.