Managing Wind Turbine Generators with a Profit Maximized Approach
Abstract
:1. Introduction
- The WTG do not have a fixed revenue per MWh revenue contract
- The WTG is facing (based on the age) a higher risk in terms of fatigue-related faults and replacement of costly parts.
- to describe the profit maximized optimization strategy;
- to define the input parameters needed for the optimization and propose a proof of concept;
- to demonstrate how and to explain why this strategy may lead to higher profits compared to no curtailments or curtailments only in case of negative prices;
- to discuss the potential impacts of the results in terms of decision-making.
2. Materials and Methods
2.1. Remaining Useful Lifetime
2.2. Optimization Framework
2.3. Operational Set-Up
2.4. Proof of Concept Simulation
3. Results
3.1. Operational Expenditures Adoption for WTG
3.2. Simulation
3.3. Discussion of the Results
4. Conclusions
- Failure and fatigue prediction with the help of “digital twins” should in the future lower costs of O&M and in parallel, improve the forecast quality of RUL. As a consequence, the TOM with a profit maximized optimization of the WTG should in the future generate even higher profits with a lower risk. Further research is of course needed on the evolution of the costs structure of WTG with more than 15 years of operation. In particular, more studies examining the advantages in terms of RUL from a technical perspective would be necessary to further improve the optimization process.
- The described modifications in the operational set up might lead to an increased turnover of ownership for WTG which cannot be repowered and would lead to more transactions of said WTG. More transactions need a standardized documentation of WTG status to avoid risk premiums in the acquisition process. The need to standardize the status of WTG falling out of the subsidy scheme is also highlighted by [13], “standardized procedures [...] and stable and clear legal frameworks would help in deciding on lifetime extension.”
- It is imperative that, on top of the economic and energy-related considerations underlying the approach related above, the exposed results present added value with respect to the materials management cycle. Indeed, the possibility to extend the lifetimes of WTG brings an improvement of materials usage—including some rare chemical elements that are used in the construction of critical WTG components. Hence, overall sustainability would be positively impacted by increasing RUL through the profit maximized approach.
5. Recommendations
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Relevant Costs Components WTG | Standard Cost Structure as of Today for a WTG under Feed-in Tariff | Estimated Standard Cost Structure for a Fully Financed WTG | Target Operating Model (TOM) Structure Estimation | ||||
---|---|---|---|---|---|---|---|
Average costs 2009-2015 of a 10 MW park with 2 MW WTG [€ per year] | Percentage of Costs | Estimated amount [€ per year] | Comment in case of modification | Estimated amount [€ per year] | Estimated amount [€ per MWh] | Comment in case of modification | |
Business interruption insurance | 43,435 | 5.70% | 434,350 | Not needed for the TOM | |||
Insurance liability | 768 | 0.10% | 768 | 768 | |||
Lend lease | 96,823 | 12.80% | Max.150,000 Min 50,000 | Lease is linked to profits of the WTG | Max 150,000 Min 50,000 | Lease is linked to profits of the WTG | |
Grid connection fees | 8708 | 1.10% | 8708 | 8708 | |||
Power supply contract | 34,650 | 4.60% | 30,000 | Assumption: slightly optimized | 30,000 | ||
Full scope maintenance contract | 376,944 | 49.80% | 200,000 | Transformed to Minimum scope contract according to expert interviews | 8.23 | Fully variabalized based on the estimated production | |
Maintenance of the site and other recurrent costs | 117,606 | 15.50% | 58,803 | Assumption: Reduced by 50% | 58,803 | Assumption: Reduced by 50% | |
Dismantling fund | 10,000 | 1.30% | 0 | Fund completed after end of subsidies | 0 | ||
Technical and Commercial Operational Management | 55,976 | 7.40% | 55,976 | 27,988 | Assumption: Reduced by 50%; compare Figure 2 | ||
Expertise | 12,681 | 1.70% | 12,681 | 12,681 | |||
Total | 757,591 | Min 407,194; Max 507,194 | Min 188,948; Max 288,948 | 8.23 |
Appendix B
Number | Assumption | Estimations Used in the Simulation | Based on |
---|---|---|---|
1 | Balancing costs WTG | 1 € per MWh | Estimation based on own expert knowledge |
2 | Intraday prices Germany for revenues | 01.01.2018–31.07.2019 ID3 and IDmin IDmax from www.epexspot.com | Realized prices |
3 | Spot prices Germany | 01.01.2018–31.07.2019 from www.epexspot.com | Realized prices |
4 | Forward prices Germany | HPFC based on liquid forward products from 14.07.2017–31.07.2019 | Realized prices |
5 | Bid ask forward prices | 0.25 € per MWh | Estimation based on own expert knowledge |
6 | Non repowerable WTG | Hub height is below 120 m or the maximum rotor diameter is smaller than 150 m | Estimation based on own expert knowledge |
7 | Price of GoO | 1 € per MWh | Estimation based on own expert knowledge |
8 | Hedging strategy for hours > curtailment level | Available capacity dived by 5 | Estimation based on own expert knowledge |
9 | Granularity of prices for simulation of Target Operating Model | HPFC hourly, forward prices monthly, spot prices and intraday prices hourly | Upside with smaller granularity, especially for the intraday market |
10 | Transaction size | 0, 5 MW for each product | own expert knowledge |
11 | Rolling intrinsic valuation | 5 days selected with important price movements selected. only used for value generated with monthly products | Simplification of the simulation |
12 | Appendix A | Comment in case of modification | Estimation based on expert interviews |
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Optimization Parameter in General | Parameter Group | Used in the Proof of Concept Simulation | |
---|---|---|---|
1 | Hourly price forward curve (HPFC) | Asset optimization and long-term prices | yes |
2 | Optimization logic | yes | |
3 | Price GoO (Guarantee of Origin) | ||
4 | Variable and fixed operational costs | Cost structure | yes |
5 | Decommissioning costs | no | |
6 | Costs of parts with the smallest RUL | no | |
7 | Predicted failure of the WTG and estimated RUL | Digital Twin | no |
8 | Spot prices [29] (hourly prices for Germany established by supply and demand fixing the day before delivery) | Short term prices | yes |
9 | Intraday prices (ID3) [29] (Weighted average of all German continuous intraday prices executed in the last 3 hours before delivery) | yes | |
10 | Wind forecast with updates up to delivery | “Virtual powerplant” | no |
11 | Outages and expected lengths of outages | no | |
12 | Technical data of the WTG | no | |
13 | Maintenance plan with real-time updates | no | |
14 | Real time production data | no |
Owner | Technical Asset Management | Commercial Asset Management | Maintenance Contract | Commercialization | Others |
---|---|---|---|---|---|
Controlling and financial planning | Mandating of all service contracts and expert opinions. | Financial reporting (IFRS). | Guarantees a certain availability | Mostly conventional power producer | Insurances that are proposing different types of coverage based on the maintenance contract. |
Selected tasks of technical and commercial asset management | Recurring inspections and small maintenance interventions. | Contract negotiation with insurances, direct marketer and other service provider. | Covers most of the WTG parts for failures. | Very standardized product | Dismantling |
If not mandated to asset management, responsible for dismantling. | Calculations for loss of yield and its assertion with the grid operator. | Role becomes more important with non-subsidized commercialization of WTG. | Independent experts for legal cases, lifetime extension assessment etc. | ||
Management of a life cycle file of the WTG and supervision on site of works. |
Simulation | Curtail-Ment Level [€/MWh] | Total Production [MWh] | Average Wind-Speed [m/s] | Revenue [€/MWh] without GoO | Variable and Fixed Costs [€] Including Balancing Cost | Profit [€] | Profit [€/MWh] |
---|---|---|---|---|---|---|---|
1 | “Produce and forget” | 28,345 | 2.87 | 24.92 | 673,069 | 33,158 | 1.17 |
2 | 0 | 26,205 | 2.67 | 27.97 | 670,928 | 61,938 | 2.36 |
3 | 8.23 | 25,062 | 2.57 | 28.81 | 530,487 | 166,542 | 6.65 |
4 | 30 | 18,511 | 1.93 | 41.33 | 530,487 | 216,027 | 11.67 |
5 | 40 | 10,467 | 2.87 | 53.29 | 530,487 | 33,382 | 3.19 |
6 | 8.23 | 18,748 | 1.94 | 48.85 | 472,216 | 424,923 | 22.66 |
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McInnis, D.; Capezzali, M. Managing Wind Turbine Generators with a Profit Maximized Approach. Sustainability 2020, 12, 7139. https://doi.org/10.3390/su12177139
McInnis D, Capezzali M. Managing Wind Turbine Generators with a Profit Maximized Approach. Sustainability. 2020; 12(17):7139. https://doi.org/10.3390/su12177139
Chicago/Turabian StyleMcInnis, Dominik, and Massimiliano Capezzali. 2020. "Managing Wind Turbine Generators with a Profit Maximized Approach" Sustainability 12, no. 17: 7139. https://doi.org/10.3390/su12177139
APA StyleMcInnis, D., & Capezzali, M. (2020). Managing Wind Turbine Generators with a Profit Maximized Approach. Sustainability, 12(17), 7139. https://doi.org/10.3390/su12177139