Microturbines at Drinking Water Tanks Fed by Gravity Pipelines: A Method and Excel Tool for Maximizing Annual Energy Generation Based on Historical Tank Outflow Data
Abstract
:1. Introduction
1.1. Advantages and Characteristics of Potential Drinking Water Hydropower Facilities
- decoupled from uncontrolled downstream water use through a storage tank (“buffered”), or
- determined by uncontrolled water use in the downstream supply zone(s) (“non-buffered”).
1.2. Available Literature and Comparison of Class 1 vs. Class 2 Sites
1.3. Filling a Gap in Currently Available Design Methods for Class 1 Sites
2. Materials and Methods
2.1. Design Premise
2.2. Determining the Characteristic Site Curve
- Q1_inflow: non-zero inflow rate at control valve, position 1 (e.g., at normal operating flow)
- h1_upstream: pressure head upstream of control valve, position 1 (e.g., at normal operating flow)
- hdownstream: pressure head just downstream of the control valve, which is necessary for the water to reach the (frequently somewhat higher) storage tank (e.g., at normal operating flow)
- Q2_inflow: inflow rate at control valve, position 2 (ideally zero flow; i.e., closed valve, but can also be a second, sufficiently different non-zero flow rate than Q1, if closing the valve is not feasible)
- h2_upstream: pressure head upstream of control valve, position 2 (ideally at zero flow; see above)
2.3. Calculating the Hydraulic Power Available to the Turbine
2.4. Consideration of a Bypass Pipeline Parallel to the Turbine
2.5. Using a Numerical Model to Ensure Supply Reliability Based on Historical Flow Data
2.6. Calculating Total Annual Hydraulic Energy Capture
2.7. Selection of Microturbines, Global Efficiency Curves and Calculating Total Annual Electric Energy Generation
2.8. Iteratively Determining the Optimal Turbine Design Parameters
2.9. Estimating Economic Viability
2.10. DVGW 1994 and 2016 Methods as a Basis of Comparison
3. Results
3.1. Case Study of Tool Application: Break Pressure Tank (BPT) Rützengrün, Germany
3.2. Assessing the Impact of Quality Control for Input Data
3.3. Comparison of Results Using the Newly Proposed Method with Other Methods
3.4. Results for Nine Sites in Germany
4. Discussion
4.1. Archetypical Sites: Handling in Excel Tool and Practical Considerations
4.2. Cases in Which the Excel Tool is Not Needed or Appropriate
- There is limited data available for the site and time or other constraints make it undesirable to perform new measurements. In this case the site operator can take the shortcut of using the equivalent of the 2016 DVGW method “b”, and simply select a turbine that operates efficiently at the current typical Qin. According to the seven sites analyzed here, this leads on average to 10% less energy generation (and annual revenue), with a risk of up to 20% less energy generation. This is the best known alternative method that removes the need for data-based work.
- The site in question is a class 2 “non-buffered” site, for which this tool is not appropriate. Using the tool for class 2 sites will lead to gross overestimates of the potential energy generation, as shown in Table 4. This is due to the fact that the tool assumes a complete modification of the Qin regime, which is not possible at a class 2 site, for which Qin is necessarily equal to Qout.
4.3. Limitations of the Tool
- The tool assumes the selection of a single turbine with a narrow acceptable operating range, and considers neither the possibility of turbines with wide operating ranges nor that of multiple turbines, the latter of which might lead to greater energy generation [25,27]. This was decided partly for simplicity’s sake and partly out of the belief that a single turbine generally represents the most economically viable solution for class 1 sites, which is supported by one of the studies cited above [25]. Furthermore, as indicated in Section 1.2, these studies do take into account the fundamental advantage of class 1 sites, which is the ability to modify the inflow regime, instead using multiple turbines to adapt to the wide range of flow rates occurring based on the current site conditions.
- The tool does not have a sophisticated way to support users with sites for which a feed-in tariff is either not available or not applicable (e.g., in Germany, if the water does not flow 100% via natural gradient). There is an option to enter in the total energy use on site and the percentage of which the user expects to be covered by the turbine. In the future it is planned to implement an algorithm that takes as input a time series of electricity use on site (parallel to the Qout time series) and estimates how much of this energy use could be covered by the turbine, such that the user does not need to estimate this herself.
- There is a lack of decision support in accounting for future changes in water use patterns, which other design methods seem to have accounted for [14,39,40]. However, there is a simplified factor which can be adjusted to account for possible increases or decreases in water use. In this way, an expected future water use pattern can be roughly simulated, and a turbine designed that will still be suitable for this future condition.
- The impact of iteratively varying the threshold tank levels (see Figure 6) to activate and deactivate the turbine and bypass has not been sufficiently assessed. Sitzenfrei and Rauch [14] presented an optimization method that is similar in spirit to the one presented by the authors but applied it to a class 2 site. They pursued an optimization approach by varying parameters in a randomized fashion through 1000 simulations (Monte Carlo simulation), selecting the best solution based on the amount of energy generated over 10 years. The parameters varied in this case are the set-point water levels in the supply tank upstream of the turbine: the overflow level, the level for switching from high to low turbine flow, and the minimum level required for fire-fighting. The HTWD method introduced in this paper could be improved by implementing a similar kind of randomized (e.g., Monte Carlo) variation of the four water level thresholds used to determine when water flows through the turbine, bypass or neither. This might increase the robustness of the solution suggested by the tool and also slightly increase the total annual energy generation predicted by the tool.
- As mentioned in Section 3.2, gaps (i.e., time intervals larger than the smallest time interval; e.g., due to missing data) in the input data time series of Qout lead to an error in the calculations performed by the tool. Currently, the burden is on the user to ensure that the time series contains no gaps. In the future, this could be improved through an algorithm that automatically checks for and linearly interpolates to fill these gaps.
- Currently, the data from only two types of turbines from two manufacturers are incorporated into the tool. This merely reflects the authors’ experience and available data until now and is not intended to imply that there are not further options. No funding links or other conflicts of interest exist between the authors and these two turbine manufacturers.
4.4. Relative Potential of Class 1 vs. Class 2 Sites
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Practical Considerations for Deploying Hydropower in Water Supply Systems
Appendix A.1. Origin of Surplus Energy in Gravity-Based Water Supply Systems and Hydraulic Aspects of Their Operation
- kinetic energy of the flowing water (velocity head),
- pressure energy between the water molecules (pressure head) and
- heat (and some sound) due to pipe wall (major) and local (minor) frictional resistance (head “loss”) in reaction to the flowing water.
- Intentionally, because the designer anticipates periods during which nearly the maximum flow rate will be required (e.g., evenings in a dry summer period) or expects the total demand of the supply zone to increase due to population growth and/or increase in commercial or industrial activity, or
- Unintentionally, because the pipeline was chosen with a very generous factor of safety [14], or because demand in the supply zone is decreasing, due to declining population, increasing water use efficiency and/or cessation of commercial and industrial water use.
Appendix A.2. Favorable Site Characteristics for Hydropower
- Nearly constant flow rate, either due to a site being class 1, or because the water use profile in the downstream supply zones do not fluctuate very much in the case of class 2 sites
- Nearly constant pressure conditions
- Existing infrastructure that can be used with only minor modifications to the piping and without any civil construction works (e.g., an easily accessible and enclosed building, control valves and pipe systems with generous amounts of space)
- Local energy needs, such that the energy generated can most economically be used, by replacing the need to purchase energy from the grid (typically the most expensive source)
- Conditions that meet the requirements for receiving a feed-in tariff (e.g., in Germany this is a purely natural gradient, without any pumping upstream of the turbine site)
Appendix A.3. Further Characteristics of and Implications for Turbines at Class 1 and Class 2 Sites
Appendix A.3.1. Class 1 “Buffered” Sites
Appendix A.3.2. Class 2 “Non-Buffered” Sites
Appendix A.4. Review of Scientific Literature on Turbine Design Methods for Class 1 and Class 2 Sites
Appendix A.4.1. Studies Focusing on Class 2 Sites
Appendix A.4.2. Studies Focusing on Class 1 Sites
Appendix B. User Guidelines for the Excel Tool
Appendix B.1. Description of the Tool
- Rough estimate: This sheet estimates the energy generation and economic costs and benefits based on four single input values, making the very optimistic simplifying assumption of a constant flow profile. This allows the user to determine whether it is worthwhile to continue on to the more time-intensive steps of a detailed analysis (the subsequent three sheets).
- Single values: This sheet is for entering between 7 and 14 single values, used for generating the hydraulic site curve, calculating the economic benefits and (optionally) ensuring that the storage tank does not fall below the minimum permissible fill level due to a reduction in the flow rate (which provides the apparent “benefit” of increased energy generation).
- Time series: This sheet is for entering time series (of the past six months to three years), used to iteratively simulate possible turbine parameters with historic data, to determine which parameters provide the greatest energy generation while still providing the daily flow volume required and (optionally) without causing unacceptable reductions in the storage tank level. Up to six time series can be entered, but generally only two are required.x
- Turbine design: This sheet automatically determines the optimal turbine parameters based on the calculation options chosen regarding (a) level of detail and (b) choice of bypass flow. The user may then fine-tune certain design aspects before generating the technical and economic results.
- Results: This sheet contains the results saved using a button on the previous sheet “Turbine design”, providing an overview of the results obtained using various design approaches.
Appendix B.2. Data Requirements and Corresponding Quality Criteria for Solutions
- Detailed calculation with time series interval ≤15 min and consideration of storage tank levels using a historical time series of tank levels (to determine the storage capacity by inference)
- (recommended) Detailed calculation with time series interval ≤15 min and consideration of storage tank levels using known or estimated useable storage tank capacity
- Rough calculation with time series interval between 15 min and 1 d and only time series of storage tank outflow
- Rough calculation with partially estimated single values (no time series)
Data Type | Unit | (1) Detailed Calc., Tank Level Check via Time Series | (2) Detailed Calc., Tank Level Check via Storage Volume | (3) Rough Calc., Only Outflow Time Series | (4) Rough Calc., Estimated Single Values |
---|---|---|---|---|---|
Single values (sheet 2) | |||||
Inflow rate (Qin) at control valve, position 1 (e.g., at normal flow) | m3/h | X | X | X | X |
Upstream pressure (h1_upstream) at control valve, position 1 | m; bar | X | X | X | X |
Qin at control valve, position 2 (e.g., at zero flow) | m3/h | X | X | X | X |
h2_upstream at control valve, position 2 | m; bar | X | X | X | X |
hdownstream at control valve (worst case) | m; bar | X | X | X | X |
Eligible for feed-in tariff? (yes/no) | --- | X | X | X | X |
Max. permissible Qin (e.g., by contract), Qmax inflow | m3/h | X | X | (X) | |
Min. tank level (Ltank) in normal operation, L1_turbine on | % | X | X | ||
Max. permissible tank level, L2_max shutoff | % | X | X | ||
Threshold for opening bypass, L3_bypass on | % | X | X | ||
Min. tank level in an emergency, L4_min emergency | % | X | X | ||
Useable storage volume, Vtank | m3 | X | |||
Electricity price on site | €/kWh | X | X | X | X |
Feed-in tariff (if relevant) | €/kWh | (X) | (X) | (X) | (X) |
Time series (sheet 3)—for the previous six months to three years | |||||
Timestamp for data time series (in format TT.MM.YYYY HH:mm:ss) | --- | X | X | X | |
Qout, from storage tank | m3/h | X | X | X | |
Storage tank level, Ltank | % | X | |||
Qin, to storage tank | m3/h | X | (X) | ||
Timestamp for Qin | --- | (X) | (X) | ||
Energy usage on site | kWh | (X) | (X) |
Calculation Option | Rough Estimate (Sheet 1) | (1) Detailed Calc., Tank Level Check via Time Series | (2) Detailed Calc., Tank Level Check via Storage Volume | (3) Rough Calc., Only Outflow Time Series | (4) Rough Calc., Estimated Single Values | |
---|---|---|---|---|---|---|
Quality Criteria for Solution | ||||||
Time needed for gathering and quality-checking data (per site) | 30 min. to 2 h | 8 to 24 h | 8 to 24 h | 4 to 16 h | 2 to 4 h | |
Confidence that tank level does not fall below min. permissible level | 1 | 5 | 4 | 2 | 1 | |
Accuracy in estimating energy generation | 1 | 5 | 5 | 3 | 2 | |
Robustness against high variation in tank outflow | 1 | 5 | 5 | 3 | 1 | |
Main advantages | Quick feedback | Best all-around solution | Faster, sometimes reliable | Small step up from rough estimate | ||
Main disadvantages | Not reliable | Takes most time and effort | Tank levels uncertain; energy generation estimates based on daily flow volumes |
Appendix B.3. Choice of Bypass Flow
- Smallest possible bypass flow (minor reduction in energy generation, but smaller difference between turbine and bypass flow, which is preferable to some water supply system operators),
- (recommended) Maximum permissible bypass flow (based on the user input, implies larger difference between turbine and bypass flow, but maximum energy generation and greater supply reliability) and
- Choose the turbine flow such that in a typical situation no bypass is required (moderate reduction in energy generation, but greatest supply reliability and possibly lowest investment costs, as there is no need for electronically automated bypass valve regulation).
Appendix B.4. Assumptions/Limitations/Remarks
- Historic water use patterns are a reliable proxy for the future. While the tool allows for some adjustment factors to account for possible future changes in both quantity and variation of user water demand, these do not aid in predicting major future trends. Therefore, it behooves the water supplier to have sufficient safeguards in place to enable manual interventions in the case that storage tank levels unexpectedly fall below permissible levels.
- Insofar as it is not already the case, the inflow rate can be kept constant during the operation of a turbine. This assumes that there are no restrictions on the inflow side, such as any put in place by the third-party operator of the reservoir or long-range supply pipeline.
- If time series are used, as recommended, having any gaps (for example, a 120-min gap in a series with otherwise 15-min intervals) leads to a false result and must be avoided by quality-checking the data.
- Only one time interval is currently possible for all data types (e.g., 15 min for both outflow and storage tank level, with the exception of the inflow rate, which has the option of a different time interval).
- The diameter of the pipeline plays an essential role in the availability of excess energy for hydropower generation. However, the exact diameter is not normally essential information regarding the selection of a turbine. The most reliable basis for turbine selection is the actual characteristic hydraulic site curve, derived from measurements at the storage tank flow. The turbine can normally be flexibly integrated into most pipeline systems with suitably tapered reducer and expander joints. The pipelines leading to the sites described here ranged in diameter from 150 mm at the smallest to 600 mm at the largest (for a supply main from a long-distance regional water supplier), while the pipelines in the immediate run-up to the tank typically ranged from 150 mm to 350 mm.
- When measuring pressure at field sites, one should be aware that manometers sometimes exhibit drift after years of use, such that the manometer should be separated from the water pressure and exposed to atmospheric pressure (for example, using an aeration valve) to obtain a reliable reference value corresponding to a relative pressure of 0 bar. This value can then simply be deducted from the value read when the manometer is again fully exposed to water pressure.
- Some supervisory control and data acquisition (SCADA) systems provide an option to convert the time interval of the collected data from e.g., delta-event (random, event-based time interval) to a fixed 15-min interval. If this is a feasible and reliable option, this should be used. Alternatively, the authors have developed a further Excel tool solely for the purpose of converting such delta-event time series into time series with a fixed, regular time interval. This tool can be made freely available upon request.
- The flow rate must at any point in time be sufficient to meet the demand placed on the storage tank by the water users in the supply zone, and cannot endanger the reliability of supply (e.g., by causing the storage tank to temporarily run empty). The bypass can, for example, be set at a higher flow rate than the turbine flow rate, in order to enable rapid filling in periods of high water withdrawal from the tank.
- The flow rate must be high enough to enable the use of a microturbine with a practical size and sufficiently high efficiency, as the efficiency of turbines and generators drops rapidly with declining physical dimensions, and the turbine should fit into the existing infrastructure without making large structural changes in the piping network.
References
- Hintermann, M. Electricity from Drinking Water Systems: Inventory and Feasibility Study of Drinking Water Hydropower Facilities in Switzerland (In German & French Only); Projektleitung DIANE Klein-Wasserkraftwerke; Bundesamt für Energiewirtschaft: Bern, Switzerland, 1994; p. 65. Available online: http://www.infrawatt.ch/sites/default/files/1994_DIANE_4df_Elektrizit%C3%A4t%20aus%20Trinkwasser-Systemen.pdf (accessed on 1 April 2019).
- EnergieSchweiz und SVGW. Energy in the Water Supply: Guidebook for Optimizing Energy Costs and Operation (In German Only); Bundesamt für Energie und SVGW: Zurich, Switzerland, 2004. [Google Scholar]
- Aste, C.M.; Moritz, G. TrinkHYDRO-Kärnten: Assessment of the Potential for Drinking Water Power Plants in Kärnten (In German Only); Technical report nr. B-EBK 9-036; ELWOG: Klagenfurt, Austria, 2009. [Google Scholar]
- Laghari, J.A.; Mokhlis, H.; Bakar, A.H.A.; Mohammad, H. A comprehensive overview of new designs in the hydraulic, electrical equipments and controllers of mini hydropower plants making it cost effective technology. Renew. Sustain. Energy Rev. 2012, 20, 279–293. [Google Scholar] [CrossRef]
- McNabola, A.; Coughlan, P.; Corcoran, L.; Power, C.; Williams, A.P.; Harris, I.; Gallagher, J.; Styles, D. Energy recovery in the water industry using micro-hydropower: An opportunity to improve sustainability. Water Policy 2013, 1–16. [Google Scholar] [CrossRef]
- McNabola, A.; Coughlan, P.; Williams, A.P. Energy recovery in the water industry: An assessment of the potential of micro-hydropower. Water Environ. J. 2013, 1–11. [Google Scholar] [CrossRef]
- Ramos, H.M.; Mello, M.; De, P.K. Clean power in water supply systems as a sustainable solution: From planning to practical implementation. Water Sci. Technol. Water Supply 2010, 10, 39–49. [Google Scholar] [CrossRef]
- Carravetta, A.; Fecarotta, O.; Ramos, H.M. A new low-cost installation scheme of PATs for pico-hydropower to recover energy in residential areas. Renew. Energy 2018, 2. [Google Scholar] [CrossRef]
- Pérez-Sánchez, M.; Sánchez-Romero, F.J.; López-Jiménez, P.A.; Ramos, H.M. PATs selection towards sustainability in irrigation networks: Simulated annealing as a water management tool. Renew. Energy 2017. [Google Scholar] [CrossRef]
- Corcoran, L.; McNabola, A.; Coughlan, P. Energy Recovery Potential of the Dublin Region Water Supply Network. In Proceedings of the World Congress on Water, Climate and Energy, Dublin, Ireland, 13–18 May 2012. [Google Scholar]
- Corcoran, L.; Coughlan, P.; McNabola, A. Energy recovery potential using micro hydropower in water supply networks in the UK and Ireland. Water Sci. Technol. Water Supply 2013, 13, 552–560. [Google Scholar] [CrossRef]
- DVGW. Energy Recovery through Hydropower Facilities in the Water Supply (In German Only); Technical Guidelines, Worksheet W 613 (A); DVGW: Bonn, Germany, 2016. [Google Scholar]
- Carravetta, A.; Del Giudice, G.; Fecarotta, O.; Ramos, H.M. Energy Production in Water Distribution Networks: A PAT Design Strategy. Water Resour. Manag. 2012, 26, 3947–3959. [Google Scholar] [CrossRef]
- Sitzenfrei, R.; von Leon, J.; Rauch, W. Design and Optimization of Small Hydropower Systems in Water Distribution Networks Based on 10-Years Simulation with Epanet2. Procedia Eng. 2014, 89, 533–539. [Google Scholar] [CrossRef] [Green Version]
- Power, C.; Coughlan, P.; McNabola, A. Microhydropower Energy Recovery at Wastewater-Treatment Plants: Turbine Selection and Optimization. J. Energy Eng. 2016. [Google Scholar] [CrossRef]
- Lima, G.M.; Brentan, B.M.; Luvizotto, E. Optimal design of water supply networks using an energy recovery approach. Renew. Energy 2017. [Google Scholar] [CrossRef]
- Samora, I.; Manso, P.; Franca, M.J.; Schleiss, A.J.; Ramos, H.M. Feasibility Assessment of Micro-Hydropower for Energy Recovery in the Water Supply Network of the City of Fribourg; Sustainable Hydraulics in the Era of Global, Change; Erpicum, S., Dewals, B., Archambeau, P., Pirotton, M., Eds.; Taylor & Francis Group: London, UK, 2016; pp. 961–965. ISBN 978-1-138-02977-4. [Google Scholar]
- Samora, I.; Franca, M.J.; Schleiss, A.J.; Ramos, H.M. Simulated Annealing in Optimization of Energy Production in a Water Supply Network. Water Resour. Manag. 2016, 230, 1533–1547. [Google Scholar] [CrossRef]
- Carravetta, A.; del Guidice, G.; Fecarotta, O.; Ramos, H.M. PAT Design Strategy for Energy Recovery in Water Distribution Networks by Electrical Regulation. Energies 2013, 6, 411–424. [Google Scholar] [CrossRef] [Green Version]
- Fecarotta, O.; Ramos, H.M.; Derakhshan, S.; Del Giudice, G.; Carravetta, A. Fine Tuning a PAT Hydropower Plant in a Water Supply Network to Improve System Effectiveness. J. Water Resour. Plan. Manag. 2018, 144. [Google Scholar] [CrossRef]
- Novara, D.; McNabola, A. The Development of a Decision Support Software for the Design of Micro-Hydropower Schemes Utilizing a Pump as Turbine. Proceedings 2018, 2, 678. [Google Scholar] [CrossRef]
- Pérez-Sánchez, M.; López-Jiménez, P.A.; Ramos, H.M. PATs Operating in Water Networks under Unsteady Flow Conditions: Control Valve Manoeuvre and Overspeed Effect. Water 2018, 10, 29. [Google Scholar] [CrossRef]
- Vilanova, M.R.N.; Balestieri, J.A.P. Hydropower recovery in water supply systems: Models and case study. Energy Convers. Manag. 2014, 84, 414–426. [Google Scholar] [CrossRef]
- Novara, D. Energy Harvesting from Municipal Water Management Systems: From Storage and Distribution to Wastewater Treatment. Extended Abstract (Not Peer-Reviewed). 2016. Available online: https://fenix.tecnico.ulisboa.pt/downloadFile/281870113703554/Extended%20Abstract%20-%20Daniele%20Novara.pdf (accessed on 9 January 2019).
- Monteiro, L.; Delgado, J.; Covas, D.C. Improved Assessment of Energy Recovery Potential in Water Supply Systems with High Demand Variation. Water 2018, 10, 773. [Google Scholar] [CrossRef]
- Kucukali, S. Water supply lines as a source of small hydropower in Turkey: A Case study in Edremit. In Proceedings of the World Renewable Energy Congress 2011, Hydropower Applications, Linköping, Sweden, 8–13 May 2011; pp. 1400–1407. Available online: http://www.ep.liu.se/ecp/057/vol6/004/ecp57vol6_004.pdf (accessed on 5 March 2019).
- Kougias, I.; Patsialis, T.; Zafirakou, A.; Theodossiou, N. Exploring the potential of energy recovery using micro hydropower systems in water supply systems. Water Util. J. 2014, 7, 25–33. [Google Scholar]
- Haakh, F. Hydraulic Aspects of the Economic Viability of Pumps, Turbines and Pipelines in the Water Supply (In German Only), 1st ed.; HUSS-MEDIEN GmbH: Berlin/Oldenbourg, Germany; Industrieverlag: München, Germany, 2009; pp. 111–174. ISBN 978-3410211389. [Google Scholar]
- Kracht, S. Out of water comes electricity—Microturbine “PAM PERGA” in water supply network (in German only). Energie|Wasser-Praxis 2018, 10, 78–81. [Google Scholar]
- Wieprecht, S.; Kramer, M. Investigations into the Use of Microturbines in Drinking Water Supply and Distribution Networks; Technical report nr. 09/2012; Funded under DVGW Project W8/01/10; DVGW: Bonn, Germany, 2012. [Google Scholar]
- Plath, M.; Wichmann, K.; Ludwig, G. Handbook for Energy Efficiency and Energy Savings in the Water Supply (In German Only); DVGW & DBU: Bonn/Osnabrück, Germany, 2010. [Google Scholar]
- Parra, S.; Krönlein, F.; Krause, S.; Günthert, F.W. Energy generation in the water distribution network through intelligent pressure management (in German only). Energie|Wasser-Praxis 2015, 12, 99–103. [Google Scholar]
- Voltz, T.; Grischek, T. Energy management in the water supply: Excel Toolbox. Available online: https://www.htw-dresden.de/energy-in-water (accessed on 4 July 2019).
- DVGW. Energy Recovery through Hydropower Facilities in the Water Supply (In German Only); Technical guidelines, Worksheet W 613; DVGW: Eschborn, Germany, 1994. [Google Scholar]
- Stellba Hydro: Axent. Available online: http://www.stellba-hydro.com/axent/ (accessed on 13 December 2018).
- KSB. Application-Oriented Planning Documents for Pumps as Turbines. Available online: https://www.ksb.com/blob/52858/13564c16a6b15b3c28b1d544ae52d0e4/pat-en-data.pdf (accessed on 5 May 2019).
- Mikus, K. Energy savings and recovery in drinking water supply (in German only). In Mechanical and Electrical Installations in Water Works, 1st ed.; Ebel, O.-G., Ed.; DVGW & Oldenbourg Industrieverlag: München, Germany, 1995; Volume 3, pp. 93–98. ISBN 3-486-26339-0. [Google Scholar]
- Bahner, P.; Voltz, T.; Grischek, T. Bemessung von Pumpen als Turbinen. Available online: https://www2.htw-dresden.de/~wasser5/ (accessed on 5 July 2019).
- Corcoran, L.; McNabola, A.; Coughlan, P. Predicting and quantifying the effect of variations in long-term water demand on micro-hydropower energy recovery in water supply networks. Urban Water J. 2016. [Google Scholar] [CrossRef]
- Colombo, A.; Kleiner, Y. Energy recovery in water distribution systems using microturbines. In Proceedings of the Probabilistic Methodologies in Water and Wastewater Engineering, Toronto, ON, Canada, 23–27 September 2011; pp. 1–9. [Google Scholar]
- Brown, L. Understanding Gravity-Flow Pipelines. Livestock Watering Factsheet. January 2006. British Columbia Ministry of Agriculture and Lands, Order No. 590.304–5. Available online: https://www.itacanet.org/doc-archive-eng/water/gravity_flow_pipelines.pdf (accessed on 12 December 2018).
- Chapallaz, J.-M.; Eichenberger, P.; Fischer, G. Manual on Pumps Used as Turbines, MHPG Series, Harnessing Water Power on a Small Scale, 11, GATE, GTZ, Eschborn. 1992. Available online: Skat.ch/book/manual-on-pumps-used-as-turbines-volume-11/ (accessed on 16 March 2019).
- Chapallaz, J.-M.; Mombelli, H.-P.; Renaud, A. Small Hydropower Plants: Water Turbines (In German Only); Impulsprogramm PACER; Bundesamt für Konjunkturfragen: Bern, Switzerland, 1995; ISBN 3-905232-54-5. [Google Scholar]
- Jesinger, G. Possibilities and limits of energy recovery in water supply facilities (in German only). In Proceedings of the 11th Technical Water Seminar, Report Nr. 73, Munich, Germany, 22 October 1986; Bischofsberger, W., Ed.; TU Munich: Munich, Germany, 1987; pp. 185–210. [Google Scholar]
- Heinzmann, K. Experiences with pressure-relieving turbines—Munich water works (in German only). In Proceedings of the 11th Technical Water Seminar, Report Nr. 73, Munich, Germany, 22 October 1986; Bischofsberger, W., Ed.; TU Munich: Munich, Germany, 1987; pp. 211–228. [Google Scholar]
- Mikus, K. Experiences with pressure-relieving turbines—Stuttgart technical works (in German only). In Proceedings of the 11th Technical Water Seminar, Report Nr. 73, Munich, Germany, 22 October 1986; Bischofsberger, W., Ed.; TU Munich: Munich, Germany, 1987; pp. 237–252. [Google Scholar]
- Schatz, J. Experiences with pressure-relieving turbines—Long-range water supply of Mühlveirtel/Austria (in German only). In Proceedings of the 11th Technical Water Seminar, Report Nr. 73, Munich, Germany, 22 October 1986; Bischofsberger, W., Ed.; TU Munich: Munich, Germany, 1987; pp. 229–236. [Google Scholar]
- Williams, A.A.; Smith, N.P.A.; Bird, C.; Howard, M. Pumps as Turbines and the Induction Motors as Generators for Energy Recovery in Water Supply Systems. Water Environ. J. 1998, 12, 175–178. [Google Scholar] [CrossRef]
- Voltz, T.J.; Bahner, P.; Grischek, T. Energy efficiency of pumps and small turbines—Case studies (in German only). In Proceedings of the 2nd Saxon Drinking Water Conference, Dresden, Germany, 5 September 2013; Grischek, T., Ed.; DVGW: Dresden, Germany, 2013; pp. 99–112. [Google Scholar]
- Gaius-obaseki, T. Hydropower opportunities in the water industry. Int. J. Environ. Sci. 2010, 1, 392–402. [Google Scholar]
- Baumann, R.; Juric, T. The counter pressure Pelton turbine as a solution for energy generation in drinking water systems (in German only). Wasserwirtschaft 2010, 7–8, 15–18. [Google Scholar]
- Bahner, P. Deployment of Microturbines in Drinking Water Supply Networks of the FWV Elbaue-Ostharz GmbH (In German only). Diploma Thesis, Faculty of Civil Engineering, University of Applied Sciences (HTW), Dresden, Germany, 2013. [Google Scholar]
- De Marchis, M.; Fontanazza, C.M.; Freni, G.; Messineo, A.; Milici, B.; Napoli, E.; Notaro, V.; Puleo, V.; Scopa, A. Energy recovery in water distribution networks. Implementation of pumps as turbine in a dynamic numerical model. Procedia Eng. 2014, 70, 439–448. [Google Scholar] [CrossRef]
- Fecarotta, O.; McNabola, A. Optimal Location of Pump as Turbines (PATs) in Water Distribution Networks to Recover Energy and Reduce Leakage. Water Resour. Manag. 2017, 31, 5043–5059. [Google Scholar] [CrossRef]
- Giugni, M.; Fontana, N.; Ranucci, A. Optimal Location of PRVs and Turbines in Water Distribution Systems. J. Water Resour. Plan. Manag. 2014, 140. [Google Scholar] [CrossRef]
- Lima, G.M.; Luvizotto, E.; Brentan, B.M. Selection and location of pumps as turbines substituting pressure reducing valves. Renew. Energy 2017. [Google Scholar] [CrossRef]
- Santolin, A.; Cavazinni, G.; Pavesia, G.; Ardizzon, G.; Rossetti, A. Techno-economical method for the capacity sizing of a small hydropower plant. Energy Convers. Manag. 2011, 52, 2533–2541. [Google Scholar] [CrossRef]
Water Supply Site | with Storage Tank (Class 1, “Buffered“) | without Storage Tank (Class 2, “Non-Buffered”) | |
---|---|---|---|
Gravity Pipeline | |||
with pressure control | Hydropower is very practical, as the storage tank provides flexibility in re-defining the inflow regime | Hydropower is possible, but may require a complex design to accommodate high variability in flow rate and pressure due to uncontrolled downstream water use | |
without pressure control | Hydropower is theoretically possible, but would reduce inflow rate if installed at outlet of existing pipeline, which may negatively affect supply reliability |
Cost Parameter | Purchase Cost (Turbine and Generator) | Installation | Pipe Modi-fications | Electromechanical Control Systems | Total Incl. 19% Value-Added Tax (VAT) | |
---|---|---|---|---|---|---|
Turbine Type | ||||||
AXENT (Stellba) | 27,500–65,000 € | 2500–4000 € | 1500–3000 € | 1000 € | 40,500–85,700 € | |
PAT (KSB): Multitec and Etanorm | 4400–15,700 € | 5000–8000 € | 5000 € | 10,000 € | 29,100–46,100 € | |
Data source (year) | Past invoice and recent price quotes (2016–2018) | Past projects (2011–2016) and engineering estimates (2016–2018) |
Turbine Design | (1) HTWD 1 2018 | (2) DVGW 2 1994 | (3) DVGW 2016, a 3 | (4) DVGW 2016, b 4 | |
---|---|---|---|---|---|
Method Characteristics | |||||
Basis for design | Diverse data to determine the flow rate with the maximum annual energy generation | Q with max. hydraulic power (see Equation (18)) | Qout | Qin | |
with historically greatest energy density (see Equation (17)) | |||||
Data requirements | Medium to high | Lowest | Medium | ||
Confidence of achieving max. energy generation | Highest (with high data reqs.) | Lowest | Low to medium |
Method | (1) HTWD 2018 | (2) DVGW 1994 | (3i) DVGW 2016, a 1 | (3ii) DVGW 2016, a 2 | (4) DVGW 2016, b | |
---|---|---|---|---|---|---|
Parameter | ||||||
Flow rate Qturbine (m3/h) | 41.0 | 142 | 12.5 | 63.1 | ||
Pressure drop hturbine (m) | 106 | 72.7 | 109 | 102 | ||
Hydraulic power Phydraulic (kW) | 11.8 | 28.2 | 3.7 | 17.5 | ||
Annual energy generation Eelectrical, nominal (kWh/a) | 26,000 | 18,500 | 13,700 | 5300 | 25,600 | |
Annual electrical energy generation Eelectrical, corrected for flow volume (kWh/a) 3 | 45,700 | 32,500 | 24,000 | 9300 | 44,800 | |
Annual electrical energy generation Eelectrical, corrected (% of result via HTWD method) | 100% | 71.2% | 52.7% | 20.4% | 98.3% |
Site | Vtank (m3) | Vannual (m3/a) | Qin and havailable before Turbine (Typical Operating Point) | Qin and hturbine with Turbine | Pelectrical (kW) | Qbypass (m3/h) | Confidence in Results |
---|---|---|---|---|---|---|---|
Adorf-Sorge | 1000 | 328,000 | 145 m3/h 117 m | 84 m3/h 139 m | 20.7 | 150 | High |
Rützengrün | 100 | 252,000 1 | 63.1 m3/h 102 m | 41.0 m3/h 106 m | 7.5 | 90 | High |
Vogelsgrün | 100 | 158,000 | 58.3 m3/h 71.3 m | 43.5 m3/h 74.9 m | 5.6 | 90 | High |
Voigtsgrün | 4000 | 255,000 | 58.8 m3/h 45.3 m | 39 m3/h 47.6 m | 3.1 | 100 | High |
Chursdorf | 4000 | 220,000 | 24 m3/h 98.3 m | 32.5 m3/h 97.6 m | 5.4 | 65 | High |
Mittweida | 1500 | 260,000 | 55 m3/h 19.6 m | 34 m3/h 21.8 m | 2.0 | 150 | Med. |
Rochlitz | 5000 | 207,000 | 61 m3/h 63.2 m | 37.5 m3/h 68.9 m | 4.4 | 72 | Low |
Neundorf | 4000 | 292,000 | 100 m3/h 39.5 m | 50 m3/h 40.4 m | 3.4 | 130 | High |
Rehbocksberg | 10,000 | 1,800,000 | N.A. (new site) | 300 m3/h 55.7 m | 30.0 | 360 | High |
Site | (1) HTWD 2018 (New Method) | (2) DVGW 1994 kWh/a | (3) DVGW 2016, a kWh/a | (4) DVGW 2016, b kWh/a | ||
---|---|---|---|---|---|---|
Data Basis: Start Date (Nr. of Days) | Calculation and Bypass Options Used | kWh/a | ||||
Adorf-Sorge | 27 April 2017 (179) | Calc. 2 Bypass 2 | 80,900 | 59,100 | 78,200 | 69,800 |
100% | 73% | 97% | 86% | |||
Rützengrün | 29 May 2018 (256) | Calc. 2 Bypass 2 | 45,700 | 32,500 | 24,100 | 44,800 |
100% | 71% | 53% | 98% | |||
Vogelsgrün | 29 May 2018 (256) | Calc. 2 Bypass 2 | 20,000 | 14,600 | 19,500 | 19,100 |
100% | 73% | 98% | 96% | |||
Voigtsgrün | 27 April 2017 (179) | Calc. 2 Bypass 2 | 20,300 | 14,400 | 11,000 | 19,100 |
100% | 71% | 54% | 94% | |||
Chursdorf | 28 October 2017 (338) | Calc. 2 Bypass 2 | 36,700 | 23,300 | 32,900 | 29,100 |
100% | 63% | 90% | 79% | |||
Mittweida | 20 July 2013 (1714) | Calc. 3 Bypass 2 | 8980 | 6610 | No data | 7450 |
100% | 74% | 83% | ||||
Rochlitz | Single values, estimates 1 | Calc. 4 | 24,100 | 17,200 | No data | 22,400 |
100% | 72% | 93% | ||||
Neundorf | Single values, future plans | Calc. 4 | 19,800 | 14,000 | No data | 19,800 100% |
100% | 71% | |||||
Rehbocksberg | Single values, future plans | Calc. 4 | 180,000 | 126,000 | No data—new storage tank | |
100% | 70% | |||||
Arithmetic mean | --- | --- | 48,500 100% | 34,000 70% | 36,500 86% | 28,900 91% |
Weighted mean | --- | --- | 48,500 100% | 34,200 71% | 33,100 78% | 28,800 91% |
Site | (1) HTWD 2018 | (2) DVGW 1994 | (3) DVGW 2016, a | (4) DVGW 2016, b |
---|---|---|---|---|
Adorf-Sorge | 9980 €/a | 7280 €/a | 9650 €/a | 8600 €/a |
3.6 a | 5.1 a | 3.8 a | 4.3 a | |
Rützengrün | 5630 €/a | 4010 €/a | 2970 €/a | 5530 €/a |
5.7 a | 8.8 a | 9.6 a | 6.1 a | |
Vogelsgrün | 2470 €/a | 1800 €/a | 2410 €/a | 2360 €/a |
12.7 a | 18.4 a | 12.9 a | 13.7 a | |
Voigtsgrün | 2510 €/a | 1780 €/a | 1350 €/a | 2360 €/a |
11.8 a | 17.9 a | 20.7 a | 13.2 a | |
Chursdorf | 4520 €/a | 2870 €/a | 4060 €/a | 3590 €/a |
6.9 a | 12.3 a | 7.9 a | 8.4 a | |
Mittweida | 1110 €/a | 815 €/a | No data | 919 €/a |
24.2 a | 34.8 a | 30.7 a | ||
Rochlitz | 2980 €/a | 2130 €/a | No data | 2770 €/a |
10.3 a | 15.3 a | 11.5 a | ||
Neundorf | 2450 €/a | 1720 €/a | No data | 2450 13.1 a |
12.2 a | 20.3 a | |||
Rehbocksberg | 22,200 €/a | 15,500 €/a | No data—new storage tank | |
1.7 a | 2.8 a | |||
Arithmetic mean | 5980 €/a 9.9 a | 4120 €a 15.1 a | 4090 €/a 11.0 a | 3570 €/a 12.6 a |
Weighted mean | 3200 €/a 5.3 a | 2300€a 8.2 a | 2850 €/a 7.6 a | 2540 €/a 9.0 a |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Voltz, T.J.; Grischek, T. Microturbines at Drinking Water Tanks Fed by Gravity Pipelines: A Method and Excel Tool for Maximizing Annual Energy Generation Based on Historical Tank Outflow Data. Water 2019, 11, 1403. https://doi.org/10.3390/w11071403
Voltz TJ, Grischek T. Microturbines at Drinking Water Tanks Fed by Gravity Pipelines: A Method and Excel Tool for Maximizing Annual Energy Generation Based on Historical Tank Outflow Data. Water. 2019; 11(7):1403. https://doi.org/10.3390/w11071403
Chicago/Turabian StyleVoltz, Thomas John, and Thomas Grischek. 2019. "Microturbines at Drinking Water Tanks Fed by Gravity Pipelines: A Method and Excel Tool for Maximizing Annual Energy Generation Based on Historical Tank Outflow Data" Water 11, no. 7: 1403. https://doi.org/10.3390/w11071403
APA StyleVoltz, T. J., & Grischek, T. (2019). Microturbines at Drinking Water Tanks Fed by Gravity Pipelines: A Method and Excel Tool for Maximizing Annual Energy Generation Based on Historical Tank Outflow Data. Water, 11(7), 1403. https://doi.org/10.3390/w11071403