Optimisation of Small Hydropower Units in Water Distribution Systems by Demand Forecasting
Abstract
:1. Introduction
2. Materials and Methods
- Maximum flow operation: When the storage tank is approximately full and the water level is above H2, the SHPU operates at maximum flow.
- Normal flow operation: When the water level is between H1 and H2, the turbine operates with the current settings.
- Flow reduction: If the water level falls between H1 and H3, the control strategy involves gradually reducing the turbine’s flow rate by 1/8 of the maximum flow rate. This reduction in flow rate aims to restore the water level in the subsequent simulation time step. However, if the water level in the storage tank continues to decrease despite the flow rate reduction, the turbine’s flow rate is further reduced.
- SHPU shutdown: If the water level falls below H3, the control strategy involves completely shutting off the turbine to ensure an adequate water supply is reserved for firefighting.
- Resuming maximum flow operation: Once the water level rises above H2 again, the control strategy sets the turbine back to maximum flow.
2.1. Optimisation of the Control Strategy
2.1.1. Control Categories
2.1.2. Optimisation of Operating Levels
2.1.3. Forecasting of Control Categories
- Perfect forecast: Assumes a perfect forecast where the predicted control categories match the actual conditions with 100% accuracy, representing the maximum potential of the forecast.
- Tomorrow like today: Assumes that the spring discharge and total water demand will be the same as the current day.
- Tomorrow like last week: Assumes that the spring discharge and total water demand will be the same as the corresponding weekday last week.
- False forecast: Examines the effect of an incorrect forecast as the worst-case performance scenario. The correct control category is disregarded, and the control category for the next day is randomly selected from the remaining categories.
2.2. Profitability Analysis
2.3. Case Study
2.3.1. Water Surplus
2.3.2. Numerical Model
2.3.3. Small Hydropower Unit
3. Results and Discussion
3.1. Optimisation with One Control Category
3.2. Optimisation with Six Control Categories
- Category 1: Low water demand with low spring discharge;
- Category 2: Low water demand with high spring discharge;
- Category 3: Medium water demand with low spring discharge;
- Category 4: Medium water demand with high spring discharge;
- Category 5: High water demand with low spring discharge;
- Category 6: High water demand with high spring discharge.
3.3. Economic Evaluation
3.4. Limitations and Future Research Directions
3.5. Further Discussion
4. Conclusions
- Incorporating demand forecasts and adjusting controls for different flow conditions can improve the electrical energy potential of an SHPU;
- However, it is worth noting that the controls in the reference state were already based on well-reasoned expert knowledge, making improvements marginal compared to the effort required for more complex control strategies in this specific case study;
- The prediction approach shows potential when dealing with devices that have a steep and narrow device efficiency curve, such as pump as turbines, or when considering fluctuating electricity prices;
- Additionally, an SHPU can significantly improve the quality of drinking water due to higher abstraction volumes, and if the generated electrical energy is directly used to operate the network, it also increases the resilience of the water supply system against outages of the power grid.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Scenario | Profit (€/a) | Change (%) |
---|---|---|
Reference state 1 | 807.64 | - |
One category—Without forecast | 812.42 | +0.6 |
Six categories—Perfect forecast | 816.78 | +1.1 |
Six categories—Tomorrow as today | 816.19 | +0.9 |
Six categories—Tomorrow as last week | 811.31 | +0.5 |
Six categories—False forecast | 782.65 | −3.1 |
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Oberascher, M.; Schartner, L.; Sitzenfrei, R. Optimisation of Small Hydropower Units in Water Distribution Systems by Demand Forecasting. Water 2023, 15, 3998. https://doi.org/10.3390/w15223998
Oberascher M, Schartner L, Sitzenfrei R. Optimisation of Small Hydropower Units in Water Distribution Systems by Demand Forecasting. Water. 2023; 15(22):3998. https://doi.org/10.3390/w15223998
Chicago/Turabian StyleOberascher, Martin, Lukas Schartner, and Robert Sitzenfrei. 2023. "Optimisation of Small Hydropower Units in Water Distribution Systems by Demand Forecasting" Water 15, no. 22: 3998. https://doi.org/10.3390/w15223998
APA StyleOberascher, M., Schartner, L., & Sitzenfrei, R. (2023). Optimisation of Small Hydropower Units in Water Distribution Systems by Demand Forecasting. Water, 15(22), 3998. https://doi.org/10.3390/w15223998