Development of Flow Forecasting Models in the Bow River at Calgary, Alberta, Canada
Abstract
:1. Introduction
Model Type | Description |
---|---|
Artificial Neural Network (ANN) | ANN was used on a rainfall–runoff model to forecast daily flows on the Blue Nile river in Sudan [15]. In other studies, antecedent flows were used as input into ANN model to forecast monthly flow on the Göksudere River [12], and daily flow on the Göksu, Lamas and Ermenek Rivers [16] located in Turkey. Similarly, ANN was used to predict future groundwater levels using past observed groundwater levels in a coastal unconfined aquifer sited in the Lagoon of Venice, Italy [17]. |
Fuzzy Logic | Fuzzy logic was employed on a rainfall–runoff model to forecast hourly river flows for flood prediction in the Narmada River, India [18]. In other studies, daily river water levels were predicted in the Buriganga River, Bangladesh by using fuzzy logic model, in which the upstream water levels are the inputs [19]. |
Time Series Model | Auto-regressive (AR) and auto-regressive integrated moving average (ARIMA) models were applied to forecast monthly flows in Wabash River, Indiana, USA [20]. Noakes et al. [13] assessed the forecasting ability of ARMIA, auto-regressive moving average (ARMA) and AR models in forecasting monthly flows in 30 rivers in North and South America. |
Nearest-Neighbor Method (NNM) | A comparison among ARMA, ANN, and NNM in forecasting monthly river flows using antecedent flows was conducted in the Han, Lancang, and Yangtze rivers in China [21]. |
Regression Model | Regression models, in which gridded observed precipitation and model-simulated snow water equivalent data were used as the predictors, were applied to forecast seasonal river flows in Sacramento River, San Joaquin River, and Tulare Lake hydrologic regions in California [9]. |
Adaptive Neuro Fuzzy Inference System (ANFIS) | ANFIS was used to forecast daily river flows using antecedent flows as inputs in the Great Menderes River in Turkey [10]. |
2. Study Area and Data
3. Methods
3.1. Determination of Optimal Lead Days for Flow Forecasting
3.2. Development of the Base Difference Model
3.3. Development of the Linear Regression Models
3.4. Validation and Evaluation of the Models
4. Results and Discussion
4.1. Determination of Optimal Lead Days for Flow Forecasting
4.2. Model Calibration and Validation
Model Type | Model | Model Equation | r2 | RMSE |
---|---|---|---|---|
Base difference model | B-BDM | XBanff + 43.27 | 0.85 | 24.16 |
S-BDM | XSeebe + 3.25 | 0.90 | 17.60 | |
C-BDM | XCalgary + 0.16 | 0.93 | 15.32 | |
Single variable linear regression model | B-LRM | 1.21 × XBanff + 39.84 | 0.85 | 21.87 |
S-LRM | 0.99 × XSeebe + 6.40 | 0.90 | 17.39 | |
C-LRM | 0.96 × XCalgary + 3.25 | 0.93 | 15.17 | |
Multiple linear regression model | BS-MLR | (0.26 × XBanff) + (0.80 × XSeebe) + 12.17 | 0.91 | 17.02 |
BC-MLR | (0.36 × XBanff) + (0.72 × XCalgary) + 10.73 | 0.94 | 13.75 | |
SC-MLR | (0.36 × XSeebe) + (0.63 × XCalgary) + 2.75 | 0.94 | 14.12 | |
BSC-MLR | (0.27 × XBanff) + (0.16 × XSeebe)+(0.63 × XCalgary) + 8.69 | 0.94 | 13.63 |
5. Concluding Remarks
Acknowledgments
Author Contributions
Conflicts of Interest
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Veiga, V.B.; Hassan, Q.K.; He, J. Development of Flow Forecasting Models in the Bow River at Calgary, Alberta, Canada. Water 2015, 7, 99-115. https://doi.org/10.3390/w7010099
Veiga VB, Hassan QK, He J. Development of Flow Forecasting Models in the Bow River at Calgary, Alberta, Canada. Water. 2015; 7(1):99-115. https://doi.org/10.3390/w7010099
Chicago/Turabian StyleVeiga, Victor B., Quazi K. Hassan, and Jianxun He. 2015. "Development of Flow Forecasting Models in the Bow River at Calgary, Alberta, Canada" Water 7, no. 1: 99-115. https://doi.org/10.3390/w7010099
APA StyleVeiga, V. B., Hassan, Q. K., & He, J. (2015). Development of Flow Forecasting Models in the Bow River at Calgary, Alberta, Canada. Water, 7(1), 99-115. https://doi.org/10.3390/w7010099