Challenges for the Large-Scale Integration of Distributed Renewable Energy Resources in the Next Generation Virtual Power Plants †
Abstract
:1. Introduction
2. Main Challenges on DER Integration in VPP
- Poorer performance of dispatchable renewables, specifically in terms of response time. One of the main attractions of batteries is their rapid response time with minimal ramp-up time. It makes them particularly suitable for delivering unplanned and triggered services. Comparatively, dispatchable renewables, while offering more sustainable energy delivery, cannot be rapidly brought into action. If dispatchables are to be used to deliver more services, they must be combined with other forms of DER, forming hybrid solutions of complex characteristics. The other alternative would be to accept the energy loss due to pre-emptive deployment or accept the probabilistic nature of delivery. Thus, the solution must be able to provide some methods to compensate for the longer response and ramp-up time.
- Increased competition on the ancillary service market, leading to decreasing prices for service provision. The market for ancillary services is financially attractive, but over the recent years it experienced a price pressure caused by the increased availability of batteries as well as by the aggregation of smaller DERs (e.g., electric vehicles, EVs) into VPPs that can offer at least some services. The price squeeze and the increased competition made providers look for more cost-effective solutions. Those solutions may arrive in the form of dispatchable renewables, but only if the final cost of using them will be favorable comparing to the battery-based solutions.
- Complex inter-relation between DERs while delivering services as well as complex characteristics of hybrid DERs that make centralized optimization inapplicable. The use of distributed DERs, specifically the operation of the VPP relies on central optimization. As the VPP grows in complexity, such optimization increasingly must rely on the idealized model of the DER, doing away with intricate details of its operation. This approach may be acceptable for relatively homogeneous VPPs where the majority of DERs are of the same type and age. However, complex inter-relationships between heterogeneous DERs negatively impact on the ability to use centralized models. This situation calls for an alternative approach to the optimization.
3. Strategies and Methods for DERs Integration in Next Generation VPPs
- the operation of the grid is essentially cyclic and statistically repeats itself at specific periods of time as shown in Figure 1a,b (e.g., daily, weekly, monthly or one-year cycles) [9]. The cyclical nature is defined by the sequence of seasons, which determine both the energy demand and the energy production;
- that there are some long-term trends that are visible across several cycles. Those trends may affect, e.g., service mix or the cost of use of various DERs;
- that services are demanded, and some of them are dispatched at fixed intervals throughout the day, with a most likely nowadays resolution of 15 min.
- Annual demand for services, split into different serve types and services, including information about services that were used and those that were required yet not used. These data will be collected from public sources as well as from the grid operators. It would be beneficial to have this kind of information from few countries across the EU, as the market for service may vary. These data will be used to create the statistical model of service demand and delivery.
- Technical characteristics of services, split into classes of services, describing technical specification of the service. Information’s such delivery timeframe, trigger time and method, expected reaction time, expected delivery time, etc. This dataset contains only technical characteristics. They are well defined, usually in public domain (e.g., past calls for service delivery). The dataset will be used to construct the model.
- Technical characteristics of three types of DERs: variable-output renewables, dispatchable renewables and battery storage. There are characteristics shared between all DERs from a given class and characteristics specific to a given DER and the project is interested in both. There is existing literature to gather some initial information, and there are technical specifications for DERs, available from manufacturers or users. These data will be used throughout the model.
- Information about existing and planned VPPs, regarding objectives of their optimization (technical/commercial), size, type of DERs available, etc. These data come from public sources, contacts with VPPs as well as from the literature review. These data will be used to assess the range of parameters that the model should be able to handle.
- Cost of various types of DERs, provisionally categorized into dispatchable renewables, variable-output renewables, electrochemical storage, other storage and other DERs. These data are available at an aggregate level from public sources, with more detailed information available from operators and providers of various DERs. This data will be used to verify the assumption about commercial gains of the substitution of batteries with dispatchable renewables.
- delivering ancillary services while allowing dispatchable renewables penetration;
- developing weather analysis mechanisms for the most efficient use of renewable resources for DERs;
- development of a VPP distributed management and operation system;
- developing of a solution for estimating the effective operation of the use of renewable energy sources for the VPP;
- planning of the countermeasure recommender system for attack vectors on the grid.
4. Expected Outcomes
4.1. VPP Solution a Feasible Power Alternative
4.2. VPP and Power Quality
4.3. VPP and Social Benefits
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Gligor, A.; Cofta, P.; Marciniak, T.; Dumitru, C.-D. Challenges for the Large-Scale Integration of Distributed Renewable Energy Resources in the Next Generation Virtual Power Plants. Proceedings 2020, 63, 20. https://doi.org/10.3390/proceedings2020063020
Gligor A, Cofta P, Marciniak T, Dumitru C-D. Challenges for the Large-Scale Integration of Distributed Renewable Energy Resources in the Next Generation Virtual Power Plants. Proceedings. 2020; 63(1):20. https://doi.org/10.3390/proceedings2020063020
Chicago/Turabian StyleGligor, Adrian, Piotr Cofta, Tomasz Marciniak, and Cristian-Dragoș Dumitru. 2020. "Challenges for the Large-Scale Integration of Distributed Renewable Energy Resources in the Next Generation Virtual Power Plants" Proceedings 63, no. 1: 20. https://doi.org/10.3390/proceedings2020063020
APA StyleGligor, A., Cofta, P., Marciniak, T., & Dumitru, C. -D. (2020). Challenges for the Large-Scale Integration of Distributed Renewable Energy Resources in the Next Generation Virtual Power Plants. Proceedings, 63(1), 20. https://doi.org/10.3390/proceedings2020063020