1. Introduction
Residential loads constituted 21% of the U.S. total annual energy in 2021 as compared to commercial at 18% [
1]. Within these communities, heating, ventilation, and air-conditioning (HVAC) systems are the dominant load at around 50% of total typical building loads. There is significant opportunity in leveraging distributed energy resources (DERs), such as HVAC systems, as energy storage solutions to shift or shape load over time through virtual power plant (VPP) controls [
2,
3].
Early studies from Sandia National Laboratory in 2017 defined the VPP concept as the coordinated control of decentralized DERs, which include renewable energy generation and energy storage. VPPs may be implemented in microgrids and in conventional electric power distribution system networks such that they behave as a single entity with dispatchable and responsive resources [
4]. Sandia National Laboratory also investigated object-oriented VPP implementation through full state feedback and concluded that accurate physics-based modeling and the accurate estimation of dynamic states in real time is integral. Additionally, they asserted that VPP will replace ancillary services, such as frequency regulation and grid disturbance responses, that are required by electric power utilities, ISOs, and RTOs. This assertion is due to faster response times compared to large fossil fuel power plants [
5].
The VPP research field has grown significantly, and widespread efforts to summarize the development and previous control studies, including optimization, have been undertaken in review papers. Naval et al. summarized the types of optimization problems, heuristic methods, and mathematical approaches that researchers have proposed for VPP coordinated controls. Market schemes that employ mixed-integer linear programming and branch-and-bound-methods were found to be the most common from among more than 100 references [
6]. VPP optimization studies that incorporate economic objectives were typically formulated for day-ahead market predictions to minimize costs and operational risk while maximizing profit.
State-of-the-art resources considered part of the VPP include gas turbines, wind power, solar photovoltaic (PV) systems, pumped storage and hydro electric systems, combined heat and power plants, boilers, energy storage systems, flexible loads, and electric vehicles. An identified limitation of the studies is that they were rarely applied to real cases, where industrial processes, such as the management of energy consumption and generation, must be monitored and modeled, indicating future work in the field. The methodology proposed in this work is distinct from previous methods because realistic and representative modeling of HVAC systems as flexible loads is employed, and the optimization objective function is integrated with OpenDSS power system software to consider the physical modeling of the distribution system, which is nonlinear to select optimal control start and end times.
The REV Demonstration for Clean VPP was an early initiative to implement these types of controls in the field, by Con Edison in New York. It included a platform for aggregated control of residential solar PV and energy storage to alleviate strain on night peaking distribution systems [
7]. Unfortunately, due to difficulty with obtaining approvals with government agencies for the installation of batteries, the project was not able to be carried out [
8]. This highlights an important challenge for VPP implementation that may be alleviated with use of standardized energy control protocols and reduced additional equipment as implemented in this paper.
Another field demonstration that launched in 2022 to the public is the Shelter Valley VPP conducted by the SDGE Utility and EPRI in San Diego, USA. It includes initiatives to control thermostats, batteries, water heaters, and blinds in a vulnerable grid region to reduce outages [
9]. Additionally, a very recent industry report conducted for Google found that VPP could perform as reliably as conventional resources at a similar scale [
10] if key barriers are addressed as well as program limitations, such as how often and when programs may be called. Considering societal benefits, the potential of VPP was estimated to have negative net cost to the utility and be approximately USD 15–35 billion dollars cheaper than alternatives for 60 GW of power over the next decade.
Overall, controls for load manipulation are invaluable tools for utilities to manage the emerging smart grid and optimally utilize increasingly more prevalent and intermittent demand-side generators, such as behind-the-meter (BTM) PV systems [
11,
12,
13]. As a promising DER type, battery energy storage systems (BESSs) are effective for utility grid energy management, although the challenge of increased cost still needs to be addressed [
13,
14,
15,
16]. They also require planning and coordination strategies through simulation to ensure adequate sizing for other DERs that may generate power intermittently [
17]. Such DERs can benefit greatly by the co-location of BESSs in terms of grid interconnection and cost effectiveness [
18].
As an alternative to BESSs, HVAC and water heating systems that are already widely available offer similar functionality when operated as generalized energy storage (GES) with additional appliance-specific constraints that are typically associated with occupant comfort and weather effects. Control strategies can be developed and tested through co-simulation [
12,
19]. They are an integral part of the smart grid, especially those that coordinate multiple types of DERs, such as solar PV and GES. The simulation testbeds themselves enable the development of VPP control schemes and in the planning of DER deployment through large-scale studies [
20,
21].
There are four main original contributions included in this paper. First, a methodology to synthesize representative communities of hundreds of ultra-fast and distinct models for residential buildings employing EnergyPlus, machine learning, and minimal experimental data is proposed. This methodology is used in the second original contribution—a novel co-simulation framework between OpenDSS and Python for real-time, time-series modeling and controls of individual models for building and HVAC load as well as PV generation per node of electric power distribution system selected. An additional contribution is the demonstration of the benefits of gradual sequential controls and incremental HVAC temperature set point adjustments in simulations of the VPP through the co-simulation framework. Finally, the last main contribution is the development of an optimization procedure for industry-standard-based controls to select time windows for VPP operation while accounting for consumer comfort and physical behavior of the distribution system.
Further details of the main contributions include that the novel testbed for co-simulation and holistic framework for control strategy development employs numerous GES systems, namely HVAC systems, and DERs based on the Consumer Technology Association (CTA) 2045 standard [
22,
23]. This industry standard specifies a modular communications interface to streamline communications so that any residential device may connect to any type of demand response system. A physical communications module is specified to use the widely compatible RS-485 serial communication method with the appliance and then a secure transport protocol, such as Wi-Fi, ZigBee, etc., to any energy management system. Serial opcodes are also specified for demand response commands ”load-up” to increase the energy use and ”shed” to decrease the energy use. These commands are suitable for interoperable VPPs across communities with different device manufacturers. The development of CTA-2045-based controls with “load-up” and “shed” commands conducted in this paper at both the power system and individual building levels is enabled by the proposed framework, which is facilitated by a physics-informed machine learning modeling procedure that is must faster than conventional white-box implementations.
The advanced control methodologies utilized incorporate HVAC system sequential phasing in batches of houses throughout the community and more gradual changes in setpoint temperatures. Additionally, the multi-objective control optimization proposed has the objectives to minimize targeted power peaks and the possible resultant increases in total energy use. Independent variables for the optimization include “shed” and “load-up” control times for the HVAC systems, which are command types based on the CTA-2045 standard and made possible by GES characterization that inherently considers occupant thermal comfort.
In
Section 2, the models for DER, including generators and energy storage, are established.
Section 3 provides the operation of the DERs in aggregate at the power system level, considering different control and distribution-side generation scenarios.
Section 4 formulates the optimization of HVAC system GES control settings. The results of the optimization and preceding central composite and full factorial simulation experiments are discussed in
Section 5. Having determined a “best compromise” set of optimal settings,
Section 6 further explores the effects of the control on individual buildings and occupants, and conclusions are provided in
Section 7.
2. Models for PV Generation and Energy Storage
A novel framework for co-simulation of DERs and distribution systems is utilized as a testbed for control schemes, GES, and DER deployment (
Figure 1). The building models employed in the co-simulation framework consist of four components: residential rooftop solar PV systems, thermal building envelopes, HVAC systems, and base loads (i.e., other human-behavior-tied electric loads). As a basis for the HVAC and building components, three houses ranging from conventional to near-net-zero energy (NNZE) performance, were modeled and calibrated in EnergyPlus [
24,
25] to represent a spectrum of energy efficiencies as seen in experimental residential communities. EnergyPlus is the U.S. Department of Energy’s flagship physics-based, white-box simulator for whole-building modeling, including the effects of building construction and weather on HVAC system energy calculations.
Through the new EnergyPlus Python plugin, the novel co-simulation framework and testbed were developed to synthesize hundreds of different house models by varying the input parameters of the base conventional EnergyPlus building model, such as internal HVAC and building construction characteristics. A normal distribution of key building characteristics spanning from the lower efficiency conventional house to highly efficiency NNZE house was used to ensure adequate and representative randomness between houses. Heating and cooling thermal energy capacities, air flow rates, and coefficients of performance (COP) are examples of the varied HVAC internal parameters to create the distinct synthetic community of houses. Additionally, examples of input building characteristics that are unique between individual houses in the study include the specific heat, conductivity, density, and thickness of such construction materials as studs; insulation; associated air cavities for walls and roofing as well as for attic trusses and additional ceiling insulation; solar heat gain coefficients (SHGCs); and window U-factors.
The next step in the proposed novel framework is to simulate the newly synthesized EnergyPlus models for an example location, time period, and subsequent weather; as a result, synthetic data of HVAC power and energy and indoor building temperature for an entire community of individual houses are produced, and the training of ultra-fast models is enabled. With these synthesized data, machine learning (ML) procedures may be applied to develop physics-informed new black and grey box versions that emulate the EnergyPlus and experimental data. Example methods used in the simulations throughout this paper include a hybrid ML model of k-means clustering to identify weather groupings, multiple linear regression (MLR), and specific heat conversions through thermodynamic equations as visualized in
Figure 2 [
26]. These methods may be updated in the object-oriented co-simulation framework as further improved methods are proposed. Furthermore, various sizes of communities may be synthesized following the ML procedure, and the individual models produced are satisfactorily accurate in estimating the heating and cooling thermal energy and electric power of the HVAC system, as well as the indoor temperature in the house based on the external weather. Ultra-fast simulation that is up to approximately 133 times faster than EnergyPlus is enabled through the proposed framework as well as co-simulation with other software and each timestep over time-series simulations of various lengths: daily, monthly, yearly, etc.
The ML models capture the thermal properties of the building and the HVAC system and their relationship with weather from the EnergyPlus training data. As a result, given a long enough training period with a wide range of weather combinations throughout a year, the ultra-fast ML models may not be exclusive to the location of the original experimental data and EnergyPlus models. If the operation of the HVAC system from heating to cooling demand is provided to the ML model in training, then the “V-curve”, a method for correlating weather to HVAC power [
27,
28], and the typical performance is captured.
An example V-curve is illustrated in
Figure 3 from a building in the co-simulation framework. It shows the spectrum of behavior and trends for heating and cooling annually for the heat-pump system. The physical relationship shown in the V-curve along with other weather parameters, such as humidity and irradiance, may then, in principle, be used by the ML model for estimations of power and indoor temperature with weather from other locations of similar annual climate. It is promising that the advanced ML may be able to apply the physical trends per HVAC system outside the range of temperature, relative humidity, and irradiance in the training set, as the performance is fairly linear.
It is important to calculate the building indoor temperature for the tracking and prediction of occupant thermal comfort, as this is integral for proper, representative HVAC control across different locations. The proposed framework is intentionally designed for VPP studies and comparisons between locations because the only inputs to the HVAC and building simulators are from human behavior/preference, weather, and the indoor temperature. Future work is recommended to conduct an in-depth VPP study at different locations, where the benefit and improved grid resiliency from the controls may be quantified to determine optimal areas for infrastructure investment, such as [
29] for EVs. Additional future work recommendations are described at the end of
Section 4.
As part of the testbed, an HVAC and building simulator is custom developed to utilize the ML models for co-simulation with a power distribution system and are assigned to appropriate circuit nodes (
Figure 2). Simulation processes and control logic for the HVAC and building simulator are provided in
Figure 4, where
is the indoor temperature deviation;
, the setpoint temperature;
, the indoor temperature;
, the HVAC mode of operation;
, the HVAC on or off status;
, the thermostat temperature dead-band;
, the thermostat temperature tolerance;
, the HVAC electric active power [kW],
, the indoor temperature of the next timestep;
, the power factor of the HVAC system;
, the HVAC electric reactive power [kvar];
, the rated power of the solar PV system [kW];
, the electric active power generated from the solar PV system;
, the total electric active power of the building [kW];
, the total electric reactive power of the building [kvar];
, the electric active power of the base load [kW];
, the electric reactive power of the base load [kvar].
Residential solar PV system modules may be assigned to the individual houses in the framework and simulated through physical equations based on input weather data (
Figure 1). This PV simulator portion of the framework determines the generated solar PV power (
) as follows:
where
is the solar irradiance [W/m
];
, the PV array rated power [W];
, the temperature coefficient of maximum power [
C];
, the efficiency considering losses due to the inverter, interconnection of modules with nonidentical properties, and dirt accumulation;
, the temperature of the PV cells [°C], which is calculated by
where
is the outdoor ambient temperature [
C] and
is the nominal operating cell temperature [
C].
Typical household appliances and plug-loads, unlike HVAC and PV systems, are not dominantly weather dependent and have more random behavior due to human choices. Therefore, random daily energy profiles of typical house loads, including electronics, water heaters, and lights, may be assigned to each individual house. Minutely, household data sourced from the EPRI SHINES project were employed as daily schedules for the following studies [
30].
3. Power System and DER Operation
To represent a large subdivision in the U.S., the IEEE 123 bus system was co-simulated with the proposed novel framework with representative building simulators based on the methodology described in
Section 2. The testbed framework employs time-series co-simulation of OpenDSS, a widely used open-source power system simulation software, and Python to enable geographical information system (GIS) power system modeling of the test system with the proposed optimized controls. To populate the IEEE 123 bus system with synthetic residential load and PV generation, an initialization procedure in the framework was performed to assign a building simulator with HVAC and PV modules to each bus node per 10 kW of original peak load (
Figure 5a) [
31].
Through this initialization, 351 distinct buildings, 52 (15%) of which have a BTM solar PV system with typical power ratings randomly selected between 3 and 7.5 kW, are co-simulated with the IEEE 123 bus system. The houses with BTM PV generation capability were distributed throughout the power system to represent gradual adoption patterns of the technology. The proposed methodology to synthesize hundreds of distinct representative homes into building simulators using EnergyPlus and ML was applied using three experimental smart homes from the Tennessee Valley Authority (TVA) with parameters ranging from conventional to NNZE as described in
Section 2. These buildings are then used in the initialization procedure to populate the distribution system.
Following the initialization of the framework, OpenDSS python API commands edit the load at each bus based on building simulator results at each time step before the power flow calculations are solved. In this formulation, the effects of the controls on the residential HVAC load and available PV generation per house are considered individually across the distribution system and at the aggregate level at the main feeder. This is an important contribution of the proposed co-simulation framework because it enables in control development and optimization of the assessment and feedback of physical behavior across the distribution system, such as load tap changer, voltage regulator, capacitor, and transformer operation; active power demand across lines and buses; and transformer and line power losses.
For the simulated example day, minutely solar irradiance and outdoor temperature data collected in the southeast U.S. are employed as input to the models (
Figure 6a). The baseline simulation case does not include any VPP control, and the HVAC systems operated as they normally would in accordance with their indoor temperature setpoints and associated building thermal properties. At the power distribution system level, the total power ramped up in the morning as both the solar irradiance and outdoor temperature increased (
Figure 5b). HVAC systems constitute almost half of the energy used by typical residences and use more energy as the indoor temperature changes [
1]. As this change in temperature is reduced during midday, the HVAC systems settle into normal operation and maintain an indoor temperature near the setpoint.
The total system power is ramped down as the sun sets, with a subsequent peak likely due to occupant arrival in the evening. This secondary evening peak is of particular interest, as electric-vehicle (EV) charging in scenarios of higher penetration may cause a significant system-wide power increase at this time [
32]. Additionally, the longer midday peak may invert as distributed solar PV becomes more prevalent, which further contributes to the concern of the secondary evening peak (
Figure 6). The reshaping of the residential load profile from higher DER penetration levels, including contributions from solar PV and EVs, may be alleviated by VPP control of other residential loads, such as HVAC systems.
In conventional HVAC control, accounting for occupant thermal comfort is a significant challenge due to the complex relationship between the weather, HVAC power, and indoor temperature, which is unique for every building. Incorporating indoor temperature into VPP control schemes that leverage HVAC systems as DER is necessary to abide by occupant thermal comfort preferences. Improved control methods, for example, those utilizing the CTA-2045 protocol for DER demand response and GES operation through Energy Star definitions address the comfort issue by adopting energy storage capacity and equivalent state-of-charge (SOC) calculations [
33,
34]. The equivalent HVAC energy storage capacity and SOC at time
t may be calculated following
where the
and
are the maximum and minimum indoor temperatures, respectively;
, the indoor temperature at time
t;
, the input electric energy required for the HVAC system to reduce indoor temperature from
to
.
During simulation, the HVAC system and building models, that are generally illustrated in
Figure 2, determine their corresponding
internally upon initialization based on their thermal properties and ability to maintain indoor temperature over time. The recalculation of
at multiple timesteps throughout simulation captures the effects of weather on the systems, which is similar to self-discharge and changes in capacity of conventional electric BESSs.
When a CTA-2045 command is issued, such as a “shed” or “load-up”, the controller adjusts individual building indoor temperature setpoints based upon their
, which are determined by considering building thermal properties and typical ASHRAE standard occupant thermal comfort limits [
34]. Individual building characteristics are considered when re-calculating HVAC setpoints per house and timestep, thereby improving the prediction of the maximal available energy BTM while abiding by indoor temperature comfort settings. By incorporating the consideration of occupant thermal comfort directly into the controls, the degree to which occupant comfort is violated now correlates with the accuracy of the building
estimations and the
and
settings.
4. Optimal VPP Control of HVAC Systems
A VPP control scenario is proposed that employs the CTA-2045 command types to reduce the evening peak power. A “load-up” is planned before the evening to pre-cool the houses while they are the least occupied to provide a more sustained “shed” that will turn the HVAC systems off during the evening peak time window. In previous studies of HVAC controls, it was established that large spikes in aggregate power occur if VPP signals are sent at the same time to hundreds of homes and that using phased deployment of a selected number of houses mitigates the spikes by spacing out the operational periods to not overlap within the control time window [
34]. With multi-speed HVAC systems as used in this paper, spacing out the setpoint temperature changes in time to gradually reduce from, for example 26
C to 22
C, further reduces the power spikes, as lower speeds operate for a longer period, resulting in less power draw per house at a given time. For these reasons, in the case studies throughout this paper, the indoor temperature setpoint adjustments are issued incrementally over the first thirty minutes of the control period to provide a gradual change in power over time.
Additionally, these advanced controls employ phasing before and after active periods, by which batches of randomly selected HVAC systems are sequentially engaged and disengaged from the control as illustrated in
Figure 7a.
The box-and-whisker format employed throughout is such that the box extends from the first quartile to the third quartile with a green line at the median. Whiskers extend from the box by 1.5× the inter-quartile range, and flier points are those past the end of the whiskers.
The improved control functionality prevents power spikes that would have occurred otherwise as illustrated with example case NP in
Figure 5b. In such a case, all of the HVAC systems engaged and disengaged simultaneously as soon as the “load-up” and “shed” controls were issued, thereby causing a large spike and steep drop in the total distribution system power. Another power spike occurred in the evening after the “shed” control ended, as the HVAC systems resumed cooling all at once (
Figure 8a).
To ensure the best performance, the controls are formulated as a multi-objective optimization to minimize both the total distribution system peak power during the evening time period (
) and possible resulting increase in total system energy use (
) over the example day, which are formally defined as
where
is the total number of lines;
, the active power losses over line number
i;
, the total number of transformers;
, the active power losses at transformer number
j;
, the total number of loads;
, the active power demand at load number
i;
, the moment of maximum power in the evening peak time window of 5:30 to 9:00;
, the total number of timesteps (minutes) in the day.
The aggregate peak power during the evening time between 5:30 and 9 p.m. was selected as the first optimization objective,
because this is the time during the day where typically utilities are most vulnerable to strain and congestion on the distribution system as it corresponds to increased amounts of human-behavior-driven load following the return from work during the business week, including EV charging. The optimization of VPP controls is considered passed for this metric if the peak power in the evening is reduced by more than five percent to outperform estimates from conservation voltage reduction (CVR) [
35], another proposed method for power shifting, benefiting the utility and grid resiliency.
A second objective, the daily total energy demand, , is included to prevent large increases in total energy use for marginal improvements in peak power reduction. For example, a positive value indicates that the energy used during the “load-up” command to pre-cool the homes through the HVAC systems is greater than that of the avoided energy use during the “shed” command. Such a scenario presents a trade-off between and , as both are to be minimized and have importance in the usefulness of the controls to improve overall grid resiliency without environmental impact from large increases in total daily load demand that would be more difficult to offset with increased DER penetration. In this case, a Pareto set of best control design candidates is beneficial as part of the optimization to determine the optimal solution.
The independent variables of the control optimization include the “load-up” start time, the control transition time, and the “shed” end time. To establish independent variable bounds, a central composite and full factorial designs of experiments (DOE) with response surfaces were performed (
Figure 9 and
Figure 10). The response surfaces for both the central composite and full factorial suggest that the minimums for
and
are achieved with “load-up” start, control transition, and “shed” end times of 8:00, 15:00, and 22:00, respectively. Based on the DOEs,
is significantly less dependent upon the “load-up” start time than the other independent variables.
With HVAC systems having been characterized as GES, they may be employed as battery energy storage systems from the perspective of the power distributions system with special availability constraints. Availability for HVAC systems is associated with the thermal comfort of occupants and the assurance of service quality by the utility. Therefore, constraints on indoor temperature are incorporated into each individual building implicitly and are not explicitly applied by the optimization by having included an automatic thermostat control mechanism that disengages the HVAC system from the control command when an equivalent SOC bound is met. The equivalent energy capacities and SOC bounds are determined by the minimum and maximum allowed temperatures, which are based on the ASHRAE standards in this work, and they may be further customized by user application in real-world implementations.
The non-dominated sorting genetic algorithm (NSGA) III is utilized for the full optimization [
36]. Based on the CC and FF DOE, bounds were selected for each independent variable: 6:00–8:00 for the “load-up” start time, 15:00–17:00 for the control transition period, and 22:00–24:00 for the “shed” end time, respectively. Increments of five (5) min were allowed within these independent variable bonds for design candidates. Comprised of over 750 simulation cases, the optimization confirms the relationships established by the central composite and full factorial DOEs (
Figure 11). The dependency of
on “load-up” start time is more evident in the full optimization and opposes the objective to minimize
. Therefore, a Pareto front of eleven (11) best control settings is determined that showcases the inverse relationship between the max power during the evening peak (
) and total day energy use (
) (
Figure 11 and
Figure 12a,b).
The approach taken in this work assumed that all home owners in the distribution system would enroll in the VPP program and all were equipped with the CTA-2045 communication module on their HVAC systems. It also assumed that a financial system existed in the market to compensate the home owner for their increased air conditioning flexibility and potentially higher total daily energy usage. Further work could develop estimates for user participation rates and expectations for compensation. Additionally, the optimization enabled by the co-simulation framework with ML-based load modeling could be expanded to include higher diversity of building types, consumer preferences, and locations in different climate regions for comparative VPP studies. In the future, modules for EVs, BESS, and water heaters, second largest appliance, could be also be added for the optimization of GES.
5. Case Study and Discussion of Optimal Control Settings
The Pareto set of optimal control settings provides designs that reduce
within a range of 24.45% and 28.75% by enacting the “shed” command (
Table 1 and
Table 2). Such significant reduction in
is in part enabled by the pre-cooling of buildings through the “load-up” command, which, in this case, increased
by 7.98% to 10.73%. Of the considered optimal control designs, P1 yielded the most reduction in
at 1.03 MW (28.75%) and experienced the largest increase in
of 2.07 MWh (10.73%) during the “load-up” with respect to the baseline case. P10 represents the other extreme with a
reduction and
increase of 0.29 MW (24.45%) and 1.54 MWh (7.98%), respectively. The “best compromise” case of P6 achieved a
reduction of 0.32 MW (26.83%) with a
increase of 1.63 MWh (8.42%). The results of the two most extreme cases, P1 and P10, are emboldened, and the “best compromise” case, P6, is both emboldened and italicized in
Table 1,
Table 2 and
Table 3.
If residential energy storage systems (RESSs) were to be utilized instead to realize the results of P6, each house would require an approximate RESS capacity of 5.2 kWh, or 1.83 MWh in total, based on the additional energy used in P6 during the “load-up” control window provided in
Table 3. With a typical Tesla Powerwall as a currently available example RESS, which is rated at 13.5 kWh in capacity [
37], around 136 out of the 351 simulated houses would need to adopt the technology in order to achieve the same effect. Assuming a typical RESS round-trip efficiency of 86%, the RESSs would expend around 0.26 MWh in total
as losses [
38]. The
increase of 1.63 MWh for P6 may be recuperated over the following day(s) through specific controls, such as extended and more gradual “shed” commands.
From the utility perspective, the “load up” during midday is timed such that the energy generated by solar PV may be better utilized locally. Considering distribution system configurations with high penetration levels of solar PV and utility-scale renewable generation, improved BTM PV utilization by loading-up midday would also reduce total associated carbon emissions even with increased , as it would essentially replace higher carbon-emitting generation during the eliminated evening peak.
For the control and baseline cases at different levels of penetration,
Table 4 provides the BTM PV utilization factor, which represents the percentage of solar PV generation used BTM and not fed back to the utility. The generated energy begins to exceed the load demand and is fed back onto the transmission system once solar PV adoption surpasses 45% of the distribution system. Each of the control cases improved BTM solar PV utilization by approximately 3% to 8% across penetration levels. To further elaborate upon the features of the co-simulation framework as well as the effects of the optimal VPP controls at both the power system and individual occupant levels, P6, the ”best compromise”, is considered the primary control case and discussed in further detail in the next section.
7. Conclusions
A novel co-simulation framework is employed to optimize virtual power plant (VPP) controls that leverage heating, ventilation, and air-conditioning (HVAC) systems as generalized energy storage (GES) to reduce a targeted distribution system power peak, while better utilizing behind-the-meter (BTM) solar PV locally. The incorporation of HVAC system phasing and gradual setpoint change functions effectively prevents power system peaking or dropping from the start or completion of the controls. The minimization of on-peak maximum power reduction () and possible resulting total day energy use increase () can compete in certain scenarios. Therefore, the optimization produces a Pareto set of best designs with control settings that achieve a of 24.45% to 28.75% and experience an increase in of 7.98% to 10.73%. Each design yields improved BTM solar PV utilization by approximately 3% to 8% because of the “load-up” timing.
From among the best control designs, P6 offers a “best compromise” with a reduction of 0.32 MW (26.83%) and an increase of 1.63 MWh (8.42%). If residential energy storage systems (RESSs) were to be utilized instead to realize the same results as P6 with the HVAC system control only, they would require a combined capacity of approximately 1.83 MWh. Assuming a typical RESS round-trip efficiency of 86%, the RESS would expend around 0.26 MWh in as losses. In contrast, the 1.63 MWh increase in in P6 to achieve a more significant may be recuperated over the following day(s) through specific controls. For the P6 optimal control case, the individual building and occupant effects are observed, including indoor temperature and equivalent state-of-charge (SOC), which is made possible by the individual modeling of HVAC and building systems within the co-simulation framework. The ability to simulate individual effects in this way, which enables their incorporation into distributed energy resource (DER) control methodologies, is integral for the consideration of occupant thermal comfort during HVAC system control events.