1. Introduction
Flexibility in power systems is typically understood as the potential of the system to increase or decrease its generation relative to the scheduled generation as needed or when valuable. It is generally determined in terms of the power, energy storage and ramping capability, and capacity adequacy metrics [
1,
2,
3,
4]. Flexibility is most needed in Balancing Authorities (BAs) (entities responsible for maintaining a balance between electric generation and load in a given area) in which hourly changes in energy output are the greatest; the DOE’s 2021 U.S. Hydropower Market Report [
5] notes widespread use of hydropower for power system flexibility and resilience in the US, specifically that in nearly every BA, hydropower is more extensively utilized for hourly ramping flexibility than any other resource.
There are, however, additional considerations that need to be addressed in a hydropower system, in which most of the power is produced by hydro-electric plants using water in rivers and reservoirs. For these, the ability to produce hydropower is complicated by the other operating objectives of the rivers and reservoirs such as water supply, flood control, navigation, recreation and environmental flows. The ability to change generation in this system depends largely on the release decisions of its individual reservoirs, and there are numerous constraints imposed by the general reservoir operating rules that affect these decisions. These rules consider inflows, impounded water volume, release capacity, downstream water demands, downstream constraints and the interests of the reservoir stakeholders [
6,
7,
8] in the decision making. In addition to this, the coordinated operation of multiple-reservoir systems is typically a complex decision-making process involving considerable risk and uncertainty [
9].
Operational flexibility is needed in hydropower systems to adjust to real-time changes in load and variable generation, and to respond to uncertainty in inflow conditions, changing energy prices, market volatility, outages, etc. The integrated hydro generating resources in conventional power systems such as thermal, nuclear or combined cycle are well positioned to increase the system generation during peak energy demands and high energy prices as well as decrease it during low energy demands to prevent the cycling of coal and nuclear fired plants. Similarly, in a power generation portfolio comprising a mix of hydro and variable renewable resources such as solar and wind, the integrated hydro resources can provide reserves of various types with quick ramping. Due to a notable increase in the installed wind and solar power generation capacity over the past 20 years in response to environmental, economic and energy security concerns, the reserves provided by the hydropower are important as balancing resources to mitigate the variability associated with these renewable generations [
10,
11,
12,
13,
14,
15]. In California alone, the energy and environmental policy initiatives are driving the electric grid changes with the goals to provide 50% of retail electricity from renewable power by 2030 and reduce the greenhouse gas emissions to 1990 levels. To illustrate the variable nature of renewable resources, the California Independent System Operator (ISO) created future scenarios of net load curves, illustrated by the duck curves [
16]. The scenarios have been exceeded in succeeding years in terms of the low net load with increasing penetration of solar energy [
17], highlighting the need for a resource mix such as hydro in the power grid because it can react quickly to demand and supply changes at various times within a day.
Thus, understanding and quantifying flexibility are important to agencies that produce hydropower. Recently, the Department of Energy (DOE) has proposed to invest considerable resources for evaluating and improving the flexibility and grid services provided by hydropower [
18]. Similarly, studies have defined and measured flexibility with different intents in a system of ten multi-objective reservoirs in the Federal Columbia River Power System (FCRPS) managed by Bonneville Power Administration (BPA) that have pressing flexibility issues. To address the potential negative shocks in the energy supply due to load uncertainty, Bashiri et al. [
19] defined flexibility in the FCRPS as the remaining capacity after satisfying the scheduled production and proposed a time-varying metric expressed in energy units for measuring it. Similarly, Studarus et al. [
20] defined it as the power system’s ability to respond with controllable real power resources to rapid changes in power balance error, and proposed a deterministic metric that is able to summarize the stochastic information about current and forecast system states and power balance error to duty schedulers. Additionally, for the FCRPS, Karimanzira et al. [
21] assessed operational flexibility as a function of dynamic states and control input to utilize the available flexibility for business procedures. The simple metrics such as power capability and its derivatives were proposed as indicators for upward flexibility and effective energy storage capability for downward flexibility. In two separate studies, Biswas et al. [
22] and Sharifi et al. [
23] proposed a way to maximize the revenue considering the future value of flexibility by optimally allocating the water not needed to satisfy the contracted demand.
The issue of flexibility also arises in other hydro systems to varying degrees depending on the system configuration and objectives, such as the Akosombo hydroelectric dam, Ghana, which is used as a flexible power production facility to balance the temporal fluctuations of Variable Renewable Energy (VRE) production. Danso et al. [
24] studied the seasonality of storage in this dam due to the VRE integration. Similarly, Crona [
25] evaluated the flexibility at Fortum’s unit Physical Operations and Trading (POT) from an economic perspective with an objective to maximize the revenue. Volume weighted average price was used as a metric to measure a hydropower station’s flexibility over time.
All of these studies have attempted to understand and measure the flexibility in various hydro systems resulting in a variety of flexibility definitions and measures, each of which is implicitly or explicitly dependent on the physical and operational characteristics of that particular system. While useful, these approaches do not lend themselves to generalization—one cannot be sure how to apply the findings of one of these studies to other systems. Generalization is desirable in order for hydro system owners and operators to understand the limits and potential flexibility of their own systems and how flexibility could be increased. Some studies have aimed to produce general results. Crona et al. [
25] and Karimanzira et al. [
21] identified the hydrologic coupling between the reservoirs, turbine capacity and reservoir sizes as some factors limiting the system flexibility, but did not quantify the effects of these physical characteristics on the system flexibility.
Another source of limitation on flexibility is from the power markets: the energy producers participate to buy or sell energy in unit or bulk transactions to meet their system objectives. Specifically, in day-ahead marketing, in which the participants commit to buy or sell power one day before the operating day, the use of flexibility on any operating day affects the system operation in later days, hence, flexibility has an associated cost to it. This has not yet been considered in any of the previous flexibility studies.
To address the as yet-unmet need for generalization, Magee et al. [
26] outlined a conceptual framework for quantifying and modeling hydropower flexibility as a combination of reservoir flexibility and generation flexibility, primarily based on observations and lessons learned from the authors’ extensive hydropower and multi-objective reservoir modeling of large and diverse systems including BPA’s FCRPS, the Tennessee Valley Authority’s system of 46 hydro projects and Grant County Public Utility District’s two reservoirs on the Middle Columbia that have virtually no storage. In this, the authors viewed hydropower flexibility as a function of both reservoir flexibility and generation flexibility, and suggested key aspects of the hydropower/reservoir systems that could affect flexibility. This study aims to test this novel concept—it identifies a number of key system characteristics that, in our experience with real hydro systems, are known to affect flexibility. A realistic but fictional system is modeled for the analysis that includes these characteristics such that they can be evaluated independently or together. Thus, in addition to defining and measuring the flexibility, this study endeavors to identify and quantify for the first time the factors—physical and operational factors of the hydro system as well as the power markets—that may limit or enhance flexibility.
The remainder of paper is organized as follows: the Methods section describes key characteristics of hydro systems that we propose affect flexibility, the design of the fictional hydro system and how it is modeled and the experiments—the model runs and the procedures used to determine the flexibility for various operating policies and system settings. The Results section presents the findings—the impacts of different system characteristics and operating policies on flexibility. The Discussion section highlights the most important findings and presents some additional insights about the study. In the Conclusions section, we reiterate the contribution of this study and discuss transferability to real basins and thoughts about future directions for this research.
2. Methods
The objectives of this study are accomplished by building a small, but realistic, river and reservoir model that has the characteristics that affect flexibility. Based on experience with a variety of hydro systems, the following characteristics are identified.
2.1. Characteristics of Hydropower Systems That Affect Flexibility
All hydro systems have hard constraints on their operations that limit or require releases through turbines or spillways based on physical limitations of the reservoirs, hydro plants and generators. Most also have high-priority policies that are violated only if hydrologic conditions or hard constraints require it. These policies dictate reservoir release schedules to satisfy water supply, flood control and environmental constraints, license limits and others; they often limit the flexibility of the hydro system to generate more or less to meet changing conditions of load, market and other energy-related conditions. There are also lower priority policies that have justifications and are traditional practices, but could possibly be relaxed for additional hydropower flexibility. Examples are “no voluntary spill”, meeting forebay target elevations and “smoothing constraints” that limit changes in discharge from one period to the next.
Furthermore, hydro systems with significant integration of renewable resources such as wind and solar normally deploy some amount of their generation as reserves for contingent events when the renewables are generating more or less power in the grid than expected. These operating reserves can be defined as any real power capacity scheduled in one operational time frame and deployed in another [
27]. These also affect the magnitude of flexibility available for responding to other forms of variability and uncertainty beyond the renewable generation for which flexibility is needed.
A physical characteristic of the system that can affect flexibility is the unavoidable presence of lags (travel time of water between hydro plants). We are interested in studying this to understand to what extent flexibility results may be affected by lags.
Similarly, while estimating the available system flexibility, this study considers an alternative modeling assumption to better approximate the unknown release from an intervening project controlled by a different operator. This is an interesting addition to the existing hydro flexibility literature that exists in many real systems.
Finally, as described above, this study also considers the role of power markets on flexibility, where the energy producers participate to buy or sell energy in unit or bulk transactions to meet their system objectives. Specifically, in day-ahead marketing, where the participants commit to buy or sell power one day before the operating day, the use of flexibility on any operating day affects the system operation in later days, hence, flexibility has an associated cost to it. None of the previous studies addresses this limitation of the power market on flexibility.
2.2. The System Model
A river and reservoir system model with realistic operational policies is developed in RiverWare, a general river and reservoir multi-objective modeling software [
28,
29]. RiverWare’s simulation and optimization capabilities are used in this study to implement the complex reservoir operating decisions associated with both power and non-power policies. RiverWare’s Preemptive Linear Goal Programming Optimization solver [
30] is used to determine the optimal allocation of water based on the prioritized goals. In this, a linear program is solved at each priority either to maximize or minimize an explicit objective function or to maximize the satisfaction of a set of soft constraints at that priority. The solver optimizes each goal in order, starting with the highest priority. Before moving to the next lower priority goal, it “freezes” the optimal value of the objective function, implicitly constraining lower priority goals to meet the optimal values of higher priority goals so that lower priority goals cannot degrade it. The solver finds the solution within the remaining solution space after the higher priority goals have been optimized. RiverWare’s optimization solves the entire model—all objects and decision variables and for all timesteps simultaneously, finding the optimal solution considering tradeoffs in time. The algorithm is explained in more detail in Eschenbach et al. [
30]. The specific formulation for this problem is presented in
Appendix A.
The hydro system modeled in our study is largely motivated by the authors’ experience with modeling in the Columbia River Basin, which is a complex system with many flexibility issues. However, the modeled system has been reduced to five reservoirs in series by combining characteristics of some reservoirs, and some of the policy has been streamlined to be less intricate but have similar effects on flexibility. This simplification allows us to produce fairly realistic results without an extended explanation of model detail and without making a case for sensitive policy changes to real systems. The hydro system is modeled by RiverWare “objects” that represent reservoirs, river reaches and confluences and are linked together to form a network. The physical and hydrologic characteristics of the system are expressed in the model with data and physical process methods; reservoir spill, turbine release, storage, elevation, power generation and other factors are modeled in detail. The lag times, or travel times of the reaches between reservoirs, are also inputs. Other input data to the model are hydrologic data—the inflows into the system at the headwater and confluence points.
Figure 1 shows the reservoirs and river reaches in the model of our system. We briefly summarize the attributes of the five reservoirs from upstream to downstream with names that connote one of the important features of each reservoir: Large Reservoir, Unowned Reservoir, Small Reservoir, Reregulating Reservoir and Environmental Reservoir. Large Reservoir has a sizable storage and receives inflows from the upstream systems and contributes a large portion of the system generation. It has a forebay target constraint that sets its pool elevation to some desirable operating level. Unowned Reservoir represents an unowned project with one or more reservoirs which are managed by a reservoir operator(s) different from the one that is managing the rest of the projects in this system. The unowned project is modeled as a storage reservoir with limited storage, and its generation does not count towards system generation in our model because it is part of a different system. Only the release from the Unowned Reservoir is of interest because it passes into the next reservoir in the series of our modeled system. Small Reservoir has small storage with limited turbine capacity leading to frequent spill. Reregulating Reservoir serves a buffering function to partially modulate both upstream and downstream needs and the most downstream reservoir, Environmental Reservoir, that has significant environmental flow constraints. The lag times between these reservoirs are, respectively, 8, 11, 3 and 11 h.
The characteristics of the reservoirs and their hydro plants are shown in
Table 1.
2.3. Business as Usual Operation
The Business as Usual (BAU) operation is the normal, or baseline, operation against which changes will be made to test the possibility of increasing flexibility. The BAU policy consists of constraints that can be classified into high-priority constraints and low-priority management constraints as described in
Section 2.1. The complete policy is included in
Appendix A.
2.3.1. High-Priority Constraints
The high-priority constraints are critical to the operation of the system and are not violated in this study; they ascertain that the minimum and maximum reservoir storage and hydro capacities are never violated and that flow variables such as turbine release, spill, tailwater drawdown, pool elevation, etc. remain within some desirable range that is governed by the seasonal hydrologic conditions.
Spill for fish passage: a high-priority spill constraint ensures that the regulated spill required for the fish passage operation is always available.
End of run storage and outflows: to keep the optimization solution from draining the reservoirs to maximize generation, there are constraints that set the final outflows and storage at the end of run period equal to some specified values.
Energy marketing transactions: to ensure that the system is meeting load at all times, marketing transactions in hourly sales and purchases of energy are carried out during surplus and deficit, respectively.
All of these high-priority constraints are included in all of the study runs—BAU and all other test cases.
2.3.2. Low-Priority Constraints
The low-priority management constraints, in general, conform to traditional standard reservoir operating rules as discussed in
Section 2.1. This system’s BAU policy includes these low priority constraints:
No voluntary spill: this constraint is a common operational policy that reflects the view that it is always better to release water through the turbines and generate some energy, than to “waste” it through the spillways.
Forebay targets—daily or 7-day: reservoir storage for power generation typically operates within an elevation range, but either daily or 7-day Forebay (FB) targets are often imposed to limit this range by forcing the reservoirs to follow an elevation sequence over time that does not have specific operational benefits.
Smoothing: “solution quality” constraints lead to smoother operations that are often considered more acceptable by operators. These constraints include flow profile smoothing and maintaining stable Forebay (FB) elevations.
The formulations of the constraints are detailed in
Appendix A.
System reserves are typically used to address the uncertainties associated with variable renewable integration and respond to load variations. Since this objective also affects flexibility, the existing policies in BAU operation are developed without a reserve constraint.
2.3.3. BAU Operating Objectives
The hydro system is operated with two main power objectives: meeting the system load and generating revenue from the sale of surplus power. To this end, the system participates in the power market in such a way that it is able to meet its power obligation in all conditions while maximizing the total net economic value of generation from the sale of surplus power and purchase of power at low cost. The numbers of purchases and sales are limited to 5000 MW in the study; this reflects typical market limits because of transmission capacity.
In this study, the BAU optimization is an economic optimization since its objective function determines the quantity and timing of releases from each reservoir subject to the BAU constraints by maximizing the total economic value of generation over the forecast period. The BAU objective function and solution are, respectively, called economic objective and economic solution. The economic value of generation depends on the hourly system generation, hourly energy sales and purchases and the respective energy prices.
The formulation of the economic objective is detailed in
Appendix A.
2.4. Analysis Periods and Data
To understand how flexibility is affected differently in different seasons, the analysis considers two separate 11-day periods, one in April and one in September. The 11-day period considers model performance, availability of experimental data and the goal to quantify the effects of the 7-day forebay target constraint on flexibility. This period also considers flexibility over different days of the week and how later days are affected by deploying flexibility on any of the first seven days of the period.
The model is furnished with unique hourly time series of hydrologic data for each season. These seasons differ in hydrologic conditions, load obligation and constraints. The limits within which the reservoirs can operate also vary between the seasons due to the seasonal hydrologic conditions. In addition, the spill requirement for the fish passage operation is quite high in April and negligible in September. The analyses were carried out for six different seasons, but the results for these two seasons capture the notable differences.
The energy prices in each season depend on the local load with higher price during higher demand. The hourly load demand in April is quite high compared to September.
Figure 2 shows the load for both seasons.
Figure 3 and
Figure 4 show the April and September prices, respectively. All of the figures exhibit daily peaking patterns.
2.5. Flexibility Computations
Given the BAU schedule and economic solution for 11 days, flexibility for a single day is the amount that the generation can be increased or decreased for that day. Upward flexibility—increasing power generation—is possible only during peak load hours, and downward flexibility—decreasing generation—only during nadir hours because upward flexibility is generally not challenging for a hydropower system during off-peak hours and downward flexibility is not difficult during off-nadir hours. To evaluate the flexibility in either the upward or downward direction, a new objective function is introduced at a priority higher than the BAU economic objective that drives the optimization solution, after all the higher priority constraints have been met as well as possible, by either maximizing the total on-peak generation in the upward direction or minimizing the total nadir generation in the downward direction for a single day. The solver then freezes this maximal flexibility. The days prior to the day evaluated are constrained to follow the initial economic solution. Subsequent days would have a new economic solution within the remaining solution space for the day being evaluated and the remaining days.
The solutions of the reformulated flexibility optimization in the respective directions are called the
up-flexible solution and the
down-flexible solution. The upward flexibility is the increase in energy generated during the peak hours by the up-flexible solution relative to the economic solution. Conversely, the downward flexibility is the decrease in energy generated during the nadir hours by the down-flexible solution relative to the economic solution. Data indicated peak load hours from 8 a.m. to 12 p.m. and nadir load hours from 12 a.m. to 3 a.m. in both seasons.
Figure 5 shows the optimization formulation for a single day, called the FlexDay. RiverWare’s optimizer solves the generation for the 11 days in a single optimization solution with the constraints, goals and objectives indicated for the different days as shown. For each optimization, the solution finds either the maximum upward flex or the maximum downward flex. Both solutions are calculated for each FlexDay.
To increase the sample size and cover different days of the week, we reran the optimization with each of the first seven days being the FlexDay evaluated for flexibility in both upward and downward directions. The magnitudes of flexibility and the value (or cost) of the flexibility thus obtained in each of the seven days are averaged to obtain a single quantifiable measure of flexibility and its cost in either direction, and the associated variability is measured by the standard error.
Figure 6 shows the steps for computing the average UpFlex and DownFlex generations and values for the 7 flex days.
In addition to quantifying the available flexibility, this study also addresses two important considerations in flexibility evaluation: the limitations imposed by the power market on fully utilizing the available flexibility for a given day and the ability of the later days to adjust their generation as a result of utilizing the technically available flexibility. To address the former consideration, it is assumed that the system participates in the increasingly common practice of day-ahead power marketing [
31]. In this power market, the hourly energy sales and purchases for any operating day are committed to the market a day in advance, and these transactions are determined by the economic optimization. The flexibility evaluated on any operating day should, therefore, preserve the economic solutions during the prior days while allowing only the peak or nadir load hours to change during the day being studied for flexibility. The latter consideration is addressed by allowing the later days to change their economic solutions due to flexible operation on the day being studied for flexibility. These changes in later days are included in the total economic value of generation. The flexibility evaluated on each day should incorporate both adjustments: the day exercising flexibility and the later days reacting to those changes.
2.6. Flexibility Experiments
The flexibility experiments were designed as variations in the BAU to quantify how flexibility is affected by (1) various low-priority management constraints; (2) lags in hydraulic travel time between power plants; (3) maintaining operating reserves for variable renewables; and (4) managing the system with unknown releases from the Unowned Reservoir in the middle of the managed system. The flexibility for each system setting is compared with the baseline system setting. The baseline system has many low-priority constraints, has lags present between the adjacent reservoirs, the operating reserves obligation is not imposed and the release from the Unowned Reservoir is approximated as passing inflows. For each system setting, the flexibility due to different variations in the policies present in BAU operation are compared against the flexibility due to the respective policies’ variations in the baseline system. An important example is the policy having to do with constraining forebay elevations; target forebay elevations from a longer time horizon model are often used to constrain, and possibly over-constrain [
32], shorter time horizon models. We include the significant effect of forebay targets on maximizing flexibility. The constraints are explained in detail below.
2.6.1. Effects of Low-Priority Constraints
To compare cases of heavily constrained or more relaxed systems, and to identify effects of specific low-priority constraints, different variations of policies from the existing BAU policies are built.
BAU—high-priority constraints including operational spill for fish passage and keeping variables in required ranges; 3 low-priority constraints—no voluntary spill, 7-day forebay target and solution quality constraints.
C0—minimal constraints, includes all the high-priority constraints described in BAU but no low-priority constraints;
C1—C0 constraints and one additional constraint, no voluntary spill; this allows required spills but does not allow the reservoir to spill more water than what is required;
C2—C1 constraints and one additional constraint, an end of 7-day FB target. This constrains the pool elevation to maintain some prescribed elevation at the end of day 7 (a forebay target);
C3 (constraints in BAU)—this constraint level has all the constraints present in C2 and additional solution quality constraints. These constraints include flow profile smoothing constraints that control the spikes in outflows and an FB stable constraint that prevents the reservoir’s pool elevation from fluctuating rapidly between two consecutive time steps.
The list of low-priority constraints in each constraint level is shown in
Table 2.
It should be noted that the economic optimization, in many cases, improves in both upward and downward directions in a more relaxed system. This improvement might limit the available flexibility in either direction as the economic solution absorbs most of the additional generation capability. Therefore, to retain the magnitudes of flexibility in less constrained levels that are potentially absorbed by their economic solutions, the maximum or minimum generation capabilities for constraint levels C0, C1 and C2 are compared against the economic solution for the constrained case C3.
To study the effects of different target FB frequencies on flexibility, two additional constraint alternatives are:
FB7—has only the high-priority constraints present in C0 and one additional constraint end of 7-day FB target;
FBDaily—has only the high-priority constraints present in C0 and one additional constraint daily FB target, which constrains the pool elevation to some prescribed elevation at the end of each day.
2.6.2. Effects of System Factors
It is worth exploring and understanding how certain river and reservoir system characteristics and modeling assumptions affect the hydro system operation and consequently limit or increase its flexibility. The system factors included in this study are the following.
No-Lag Case: the baseline system has considerable travel time lags between adjacent reservoirs. To quantify the impact of these lags on flexibility, the flexibility is assessed in an alternative model with no lags.
Operating Reserve Case: the integration of renewable resources in a hydro system forces the system to maintain sufficient down and up reserves to respond to uncertainties associated with their variable generation. Some systems also hold these reserves to respond to load variations. This type of dedicated reserve for uncertain generation is analogous to allocating reservoir storage space for flood control or other reservoir uses for inflow uncertainty. These kinds of reserve obligations could limit flexibility for other forms of variability such as hydrologic uncertainty and market price fluctuations. The BAU policies are modified to introduce additional limitations on the flow variables due to system reserve requirements in both up and down directions. Reserves were chosen to be comparable to reserves used in the Columbia River Basin.
Load Shaping for the Unowned Reservoir: the unknown release from the Unowned Reservoir is modeled in the baseline system by passing inflows, a simple and easy to implement model the authors have seen in practice. Passing inflows do not allow the initial storage in this project to change during the entire run period. The alternative system modeling for the flexibility assessment assumes load shaping of unknown release with the assumption that the Unowned Reservoir faces a similar load profile, but passes total inflow over the course of each day while using available storage during the day for peaking. With a load shaping profile, the Unowned Reservoir will be somewhat in sync with the owned reservoirs. The flexibility obtained for this system setting is compared with the no-lag system rather than the usual baseline because the load shaping effects might not be apparent when there are considerable lags in the system. Certainly, more precise and more complex models of the Unowned Reservoir can be made.
All of the experiments including those for system factors evaluated and their respective baseline and test systems are shown in
Table 3.
The flexibility for each system setting is evaluated for all the constraint levels discussed in
Section 2.6.1. For a particular system setting, the flexibility for each constraint level is measured relative to the BAU economic generation in C3.
However, it is not possible to directly compare the flexibility between the test (alternate) system and the existing (baseline) system because the BAU economic generation, relative to which the flexibility is measured, is not the same for these systems. The economic generation for one system setting might provide or take up some of the available flexibility relative to another system setting. For example, one would expect removing lag times to cause an increase in economic generation on-peak because inflows downstream are arriving exactly when they are needed for generation. The ability to have additional upward flexibility beyond the economic generation remains a question to be tested with our experiments.
2.6.3. Effect of Deploying Flexibility
Suppose the available flexibility were fully deployed on the day evaluated, what is the effect on economic generation in later days? No additional experiments are needed to answer this question. We need only collect this information during the experiment and compare it to the generation for these days without a flexibility objective.
4. Discussion
Upward flexibility is strongly affected by low-priority policies such as smoothing constraints and 7-day forebay targets with similar magnitudes of impact for each. However, no-spill constraints had little to no effect on upward flexibility. Increasing the frequency of forebay targets from seven days to daily eliminates almost all flexibility. This overall pattern, but not the magnitude of flexibility, held true regardless of experiments with different assumptions: different seasons, zero lag time between reservoirs, different assumptions about the operation of unowned reservoirs and holding dedicated reserves. High-flow seasons, zero lags and unowned reservoirs with generation following load all resulted in an increased baseline economic generation during peak hours which resulted in a smaller ability for upward flexibility during peak hours. Dedicated reserves reduced both economic generation and the flexibility beyond the reserves. In some cases, reserves replaced flexibility at almost a one for one rate, but in other cases the reduction in flexibility was smaller.
Only downward flexibility during nadir hours was substantially affected by no-spill constraints. Other low-priority constraints and all of the other experimental variations had only minimal effects. Thus, a reasonable approximation would be to ignore these effects and concentrate on the ability of reservoirs to spill and the lost opportunity cost of spilled energy. In this sense, downward flexibility is almost a separate question from upward flexibility.
There are two primary costs associated with flexibility, the deployment cost and the opportunity cost. The deployment cost of upward flexibility is a shift in the timing of generation. In this study, we found the cost was directly proportional to the flexibility deployed with a value of $50/MWH, but we would expect the value for hydropower operators to be strongly related to regional prices and seasonality. The deployment cost of downward flexibility is largely due to voluntary spill: the cost of lost future generation and, if the gates are manually operated, the cost of gate changes.
Dedicated hydropower reserves are sometimes considered a panacea for absorbing the variable generation produced by ever increasing renewable penetration. While using hydropower this way is clearly useful, it does come with an opportunity cost. In this study, we found that the level of reserves resulted in substantial opportunity costs, 22–25% reduction in the economic value of hydropower generation and significant reduction in the amount of flexibility available for other purposes.
There are several opportunities for future study and operational changes suggested by this research: more careful consideration of low-priority constraints and their impact on flexibility and the modeling of reservoirs owned by others.
Forebay levels capture most of the state of a reservoir system, and forebay targets are a common way to constrain shorter timestep models based on the outcome of larger timestep models. This research suggests some caution in using these targets, particularly as the time until the target becomes shorter. A little flexibility in either the value of the target or delaying the time to meet these targets may dramatically improve upward flexibility. Experimentation with these approaches seems warranted. The vast difference in flexibility impact between daily and weekly forebay targets suggests further research into forebay target frequencies ranging from daily to monthly.
Smooth operations are often prudent and always appealing, but given the impact on upward flexibility, careful consideration should be given to the marginal benefit of smoothing policies compared to the marginal cost in lost flexibility. We suspect that this may be a basin-specific question, but also one that should be considered before either regulators or operators impose smoothing constraints on a system.
Disallowing voluntary spill is often taken to be an obvious part of an optimal reservoir operation strategy because of the lost energy and gate change costs. However, in the context of a larger energy system with cycling of thermal plants or even at a grid level, this spill and investing in automated gates for quick response may be justified by the increase in downward flexibility.
Finally, modeling assumptions about unowned reservoirs have a significant impact on both economic generation and flexibility for the larger system. The results suggest the system effects of even a comparatively small unowned reservoir may make it worthwhile to build more accurate models of how unowned reservoir outflows respond to inflows and other factors. Such a study may also suggest going beyond more accurate modeling and engaging in some degree of mutually beneficial communication or coordination of operations.
5. Conclusions
The main contribution of this research is to identify and quantify the effects of different reservoir system attributes on hydropower flexibility. These attributes include various operating policies, the need to hold reserves, lag times and the presence of reservoirs controlled by others. This is a new contribution to the information about flexibility in hydro systems and uses a novel approach to find specific, usable results. The experiments with a fictional river basin that is similar in characteristics to basins in the Pacific Northwest United States have led to several conclusions about what does and does not affect upward and downward flexibility in reservoir generation and the costs of reserving and deploying flexibility.
The modeled system in this study can inform understanding and estimates of flexibility in other regions. Although based on reservoirs in the northwest US, the projects are typical of characteristics of river systems throughout the U.S. The distribution of hydro generation in the US ranges from 27% in Washington to 5% in Tennessee, with large contributions from New York, California and Alabama [
33]. The largest producing areas have a share of large reservoirs, but all of the most significant hydro-producing river systems have a combination of large and small reservoirs with a variety of multi-purpose uses and hydraulic characteristics. For this study, our projects range from 122 to 6599 Mm
3 of storage and from 1.2 to 6.7 MW of generating capacity. Furthermore, of the more than 2000 active hydro plants in the US, only about 2.5% have hydropower as the primary authorized purpose [
34], which justifies RiverWare’s approach of multi-objective modeling in which hydropower is considered along with the other purposes of the projects. RiverWare is widely used for modeling multi-objective reservoir operations in the Columbia River Basin, the Tennessee Valley Authority, the Bureau of Reclamation in many of Reclamation’s river systems including the Colorado River Basin, the U.S. Army Corps of Engineers on the Rio Grande, Arkansas and White River Systems, the Southwest Power Administration, the Lower Colorado River Authority and other utilities and water authorities.
There are several opportunities for future study and operational changes suggested by this research: more careful consideration of low-priority constraints and their impact on flexibility and the modeling of reservoirs owned by others. The computations could be reproduced for actual or hypothetical reservoirs with different attributes in other areas. A further study could also confirm the extent to which our results are valid in actual systems in the northwest or in other areas. Other important related topics such as the influence of flexibility on hydraulic machines in hydro plants could expand the usefulness of the research.