The present invention generally relates to electric vehicles and more specifically relates to systems and methods for adaptive electric vehicle charging.
An incredible amount of infrastructure is relied upon to transport electricity from power stations, where the majority of electricity is currently generated, to where it is consumed by individuals. Power stations can generate electricity in a number of ways including using fossil fuels or using renewable energy sources such as solar, wind, and hydroelectric sources. Substations typically do not generate electricity, but can change the voltage level of the electricity as well as provide protection to other grid infrastructure during faults and outages. From here, the electricity travels over distribution lines to bring electricity to locations where it is consumed such as homes, businesses, and schools. The term “smart grid” describes a new approach to power distribution which leverages advanced technology to track and manage the distribution of electricity. A smart grid applies upgrades to existing power grid infrastructure including the addition of more renewable energy sources, advanced smart meters that digitally record power usage in real time, and bidirectional energy flow that enables the generation and storage of energy in additional places along the electric grid.
Electric vehicles (EVs), which include plug-in hybrid electric vehicles (PHEVs), can use an electric motor for propulsion. EV adoption has been spurred by federal, state, and local government policies providing various incentives (e.g. rebates, fast lanes, parking, etc.). Continued EV adoption is likely to have a significant, impact on the future smart grid due to the additional stress load that EVs add to the grid (an EV's power demand can be many times that of an average residential house).
Duck curve, named after its resemblance to a duck, shows a difference in electricity demand and amount of available solar energy throughout the day. When the sun is shining, solar floods the market and then drops off as electricity demand peaks in the evening.
Systems and methods in accordance with embodiments of the invention impalement adaptive electric vehicle (EV) charging. One embodiment includes one or more electric vehicle supply equipment (EVSE); an adaptive EV charging platform, including a processor; a memory containing: an adaptive EV charging application: a plurality of EV charging parameters. In addition, the processor is configured by the adaptive EV charging application to: collect the plurality of EV charging parameters from one or more EVSEs, simulate EV charging control routines and push out updated EV charging control routines to the one or more EVSEs. Additionally, the adaptive EV charging platform is configured to control charging of EVs based upon the plurality of EV charging parameters collected from at least one EVSE.
In a further embodiment, the processor is configured to learn an underlying distribution of EV arrival time, session duration, and energy delivered.
In still a further embodiment, the processor is configured to learn an underlying distribution of EV arrival time, session duration, and energy delivered using Gaussian mixture models (GMMs).
In a yet further embodiment, the GMMs are used to predict EV users' charging behavior.
In a yet further embodiment again, the processor is further configured to use the GMMs to control charging of large numbers of EVs in order to smooth a difference in electricity demand and amount of available solar energy throughout the day (Duck curve).
In another embodiment again, the processor is further configured to train the GMMs based on a training dataset and predict a charging duration and energy delivered.
In a yet further embodiment, the GMMs are population-level GMMs (P-GMM).
In another embodiment again, the GMMs are individual-level GMMs (I-GMM).
In another embodiment still, the adaptive EV charging system further includes a power distribution network.
In still a further embodiment, the plurality of EV charging parameters include EV driver laxity data.
In another embodiment still, the processor is further configured by the adaptive EV charging application to: receive an EV request for charging, determine an amount of energy and a duration for delivering the amount of energy to the EV, optimize time-varying charging rate based on time of day and electric system load, and synchronize with one or more EVSEs to deliver optimum charge to the EV.
In a further additional embodiment, an adaptive electric vehicle charging platform includes: a processor; a memory containing: an adaptive EV charging application; a plurality of EV charging parameters; wherein the processor is configured by the adaptive EV charging application to: collect the plurality of EV charging parameters from one or more EVSEs, simulate EV charging control routines and push out updated EV charging control routines to the one or more EVSEs; and wherein the processor is configured by the adaptive EV charging application to: receive an EV request for charging, determine an amount of energy and a duration for delivering the amount of energy to the EV, optimize time-varying charging rate based on time of day and electric system load, and synchronize with an electric vehicle charging station to deliver optimum charge to the EV.
In still yet an other embodiment again, the processor is further configured to learn an underlying model of an electric vehicle's battery charging behavior.
In a further additional embodiment, the processor is further configured to learn battery models based on a training dataset, and to predict a maximum charging rate and threshold state of charge for a linear 2-stage battery model.
In still a further additional embodiment, the processor is further configured to use learned battery models to simulate EV charging control routines.
In still yet another embodiment again, the processor is further configured to use learned battery models to predict energy delivered.
Turning now to the drawings, systems and methods for adaptive EV charging in accordance with embodiments of the invention are illustrated. In many embodiments, systems and methods for adaptive EV charging can use adaptive charging network (ACN) data collected from EV charging physical infrastructure sites located in various localities in order to simulate EV charging control routines, and then push out updated EV charging control routines to one or more of EV charging physical infrastructure sites. In several embodiments, systems and methods for adaptive EV charging can be utilized to collect data from electric vehicle supply equipment (EVSEs) or charging stations, aggregate the collected data in a cloud based system, analyze the collected data to arrive at new charging processes, and then push out the new charging processes to the EV chargers. In many embodiments, systems and methods for adaptive EV charging can be used to gather EV charging data, to utilize the underlying distribution of charging session parameters in order to train models of EV user behaviors, and control the charging of a vehicle based upon those models in smart and reliable processes that are not relied upon EV user's inputs. In several embodiments, systems and methods for adaptive EV charging can be used for controlling charging of large numbers of electric vehicles in order to alleviate steep ramping conditions caused by the so called Duck curve, and utilize user data to smooth EV energy demand over the course of a day, and therefor smooth out the Duck curve. In many embodiments, systems and methods for adaptive EV charging can include a processor, and a memory containing: an adaptive EV charging application; a plurality of EV charging parameters, where the processor is configured to learn an underlying model of an electric vehicle's battery charging behavior. EV power distribution networks and methods of controlling the charging of EVs in accordance with various embodiments of the invention are discussed further below.
A power distribution network in accordance with an embodiment of the invention is shown in
The power generator 102 can represent a power source including (but not limited to) those using fossil fuels, nuclear, solar, wind, or hydroelectric power. Substation 106 changes the voltage of the electricity for more 19 efficient power distribution. Solar panels 116 are distributed power generation sources, and can generate power to supply electric charging stations as well as generate additional power for the power grid.
While specific systems incorporating a power distribution network are described above with reference to
A cloud based adaptive EV charging application in accordance with an embodiment of the invention is shown in
While specific systems incorporating cloud based adaptive EV charging application are described above with reference to
An adaptive EV charging platform including ACN data collection, ACN simulation and control routine push-out in accordance with an embodiment of the invention is shown in
While specific systems incorporating an adaptive EV charging platform including ACN data collection, ACN simulation and control routine push-out are described above with reference to
A flow chart illustrating a process for receiving an EV user request for charging and delivering optimum charge to the EV user in accordance with an embodiment of the invention is shown in
While specific systems incorporating a flow chart illustrating a process for receiving an EV user request for charging and delivering optimum charge are described above with reference to
EV driver laxity can be used to oversubscribe charging infrastructure, such as, but not limited to, transformers, cables, and utility interconnections, in accordance with an embodiment of the invention as shown in
While specific systems incorporating use of EV driver laxity to oversubscribe EVSEs are described above with reference to
Adaptive charging can increase the amount of demand met compared to other charging methods in accordance with an embodiment of the invention as illustrated in
While specific systems comparing demand met by adaptive charging to other charging Methods are described above with reference to
ACN data was collected from two adaptive charging networks located in California in accordance with an embodiment of the invention. The first location was Caltech campus and the second location was the Jet Propulsion Laboratory (JPL). The Caltech site includes a parking garage and has 54 EVSEs along with a 50 kW de fast charger. The Caltech site is open to the public and is often used by non-Caltech EV drivers. Since the parking garage is near the campus gym, many drivers charge their EVs while working out in the morning or evening. JPL's site includes 52 EVSEs in a parking garage. In contrast to the Caltech site, access to the JPL site is restricted and only employees are able to use the charging system. The JPL site is representative of workplace charging while the Caltech site is a hybrid between workplace and public use charging. EV penetration is also quite high at JPL. ‘I’his leads to high utilization of the EVSEs as s well as an impromptu program where drivers move their EVs after they have finished charging to free up plugs for other drivers. In both cases, to reduce capital costs, infrastructure elements such as transformers have been oversubscribed. Note that the specific number of EVSEs can vary.
In many embodiments, an adaptive scheduling routine is used to deliver each driver's requested energy prior to her stated departure time without exceeding the infrastructure capacity. An offline version of the adaptive charging routine that assumes full knowledge of all EV arrival times, departure times, and energy demands in advance in accordance with a number of embodiments of the invention is discussed further below.
In certain embodiments, let V be the set of all EVs over all optimization horizon :={1 . . . T}. Each EV i∈V can be described, by a tuple (ai, ei, di,
where the optimization variable
To illustrate, the objective
is used to encourage EVs to finish charging as quickly as possible, freeing up capacity for future arrivals. In several embodiments, a feasible set takes the form
Constraints (1a) ensure that charging rate are non-negative and below their maximum
In many embodiments, if the utility function is strictly decreasing in all elements of r, if it is feasible to meet all EV's energy demands, then constraint (1c) is observed to be tight. In general, it is possible that the energy delivered may not reach the user's requested energy due to their battery becoming full or congestion in the system.
In many embodiments, ACN platform can enable the collection of detailed data about each charging session which occurs in the system.
In several embodiments, adaptive EV charging can focus on a 3-tuple (ai, di, ei) in collected data for both user input and an actual measured behavior. Number of sessions collected from each site per month as well as whether these sessions were tagged with a user's input, i.e. claimed, is shown in
EVSE utilization, specifically number of sessions served and amount of energy delivered each day, together with pricing information, and default parameters for unclaimed sessions are shown in
The data confirms the difference between paid and free charging facilities. During the first 2.5 years of operation the Caltech site EV charging was free for drivers. However, beginning Nov. 1, 2018, a fee of $0.12/kWh was imposed. This date can clearly be seen in
Distributions of arrivals and departures for Caltech on weekdays and weekends for free charging and paid charging, and JPL on weekdays are shown in
The weekday arrival distribution has a morning peak at both sites. For conventional charging system, these peaks necessitate a larger infrastructure capacity and lead to higher demand charges. In addition, as EV adoption grows, the se morning spikes in demand could prove challenging for utilities as well. As expected, departures are analogous to arrivals. They begin to increase as the workday ends, with peaks in the period 5-6 pm at both Caltech and JPL. Departures at JPL tend to begin earlier, which is consistent with the earlier arrival times while departures at Caltech tend to stretch into the night owing to the heterogeneity of individual schedules as well as later arrivals. Since the Caltech site is open to the public and is located on a university campus, it is used on the weekends as well. Arrivals and departures are much more uniform on weekends for both the unpaid and paid periods. This uniformity is due to the aggregation of many highly heterogeneous weekend schedules.
The initial laxity of an EV charging session i is defined as
LAX(i)=0 means that EV i must be charged at its maximum rate
Distribution of initial laxities are shown in
and is equivalent to (1) except that (1c) is strengthened to equality. For simplicity, any infrastructure constraints (1d) in is not considered. The distribution of the minimum system capacity Ucap(
In many embodiments, an underlying joint distribution of characteristics including (but not limited to) arrival time, session duration, and energy delivered based upon Gaussian mixture models (GMMs) is utilized. In several embodiments, the GM Ms are used to predict user behavior, optimally size onsite solar for adaptive EV charging, and control EV charging to smooth the so called Duck curve.
In certain embodiments, adaptive EV charging can utilize a GMM as a second-order approximation to the underlying distribution. An ACN data set can be modeled as follows to fit a GMM. Consider a data set X consisting of N charging sessions. The data for each session i=1, . . . , is represented by a triple xi=(ai, di, ei) in R3 where ai denotes the arrival time, di denotes the duration and ei is the total energy (in kWh) delivered. The data point X; are independently and identically distributed (i.i.d.) according to some unknown distribution. In practice, each driver in a workplace environment exhibits only a few regular patterns. For example, on weekdays, a driver may typically arrive at 8 am and leave around 6 pm, though her actual arrival and departure times may be randomly perturbed around their typical values. On weekends, driver behavior may change such that the same driver may come around noon. Therefore, let K be the number of typical profiles denoted by μ1, . . . , μK. Each data point Xi can be regarded a corrupted version of a typical profile with a certain probability. Define a latent variable Yi≡k if and only if Xi is corrupted from μk. Moreover, by the i.i.d. assumption, each incoming EV has an identical probability ϕk taking μk, i.e., ϕk:=(Yi=k) for i=1, . . . N, k=1, . . . , K. Conditioned on Yi=k, the difference Xi−μk that the profile Xi deviates from the typical profile μk can be regarded as Gaussian noise. In this manner, assuming Yi=ki let Xi˜(μk, Σk) be a Gaussian random variable with mean μk and covariance matrix Σk. To estimate the underlying distribution and approximate it as a mixture of Gaussian distributions, it suffices to estimate the parameters θ=(ϕk, μk, Σk)K=1K. The probability density of observing a data point x can then be approximated using the learned GMM as
In many embodiments, adaptive EV charging can train GMMs based on a training data set XTrain, and predict the charging duration and energy delivered for drivers in a set μ. The results are tested on a corresponding testing data set XTest. As illustrated in
In certain embodiments, two different approaches are considered. A first, approach generates a population-level GMM (P-GMM) based on the overall training data XTrain=XC∪XU. However, users can have distinctive charging behaviors. To achieve better prediction accuracy, adaptive EV charging can take advantage of the user-claimed data and predict the charging duration and energy delivered for each individual user. In a second approach, the claimed data can be partitioned into a collection of smaller data sets consisting of the charging information of each user in μ. Therefore, XC=∪j∈μXj. Adaptive EV charging can then train individual-level GMMs (1-GMM) for each user j∈μ by fine tuning the weights of the components of the P-GM M with data from each of the users to arrive at a final model for each of them.
In certain embodiments, to evaluate the accuracy of adaptive EV charging's learned population-level GMM with respect to an underlying distribution, 100,000 samples were gathered from a P-GMM trained on data from Caltech site prior to Sep. 1, 2018. The data is plotted in
In several embodiments, adaptive EV charging can utilize a GMM that has been learned from the ACN data set to predict a user's departure time and the associated energy consumption based on that user's known arrival time. Adaptive EV charging data shows that user input can be quite unreliable, partially because of a lack of incentives for users to provide accurate predictions. In many embodiments, adaptive EV charging platform shows that the predictions can be more precise using simple probabilistic models.
Let denote the set of users. Suppose a convergent solution θ(j)=(ϕk(j), μk(j), Σk(j))k=1K is obtained for user j∈ where μk(j):=(ak(j), kk(j), ek(j)) and the user's arrival time is known a priori as ā(j). For the sake of completeness, the following formulas are used for predicting a duration
where Σk(j)(1, 1), Σk(j)(1, 2) and Σk(j)(1, 3) are the first, second and third entries in the first column (or row) of the co-variance matrix Σk(j) respectively. Denoting by p(·|μ, σ2) the probability density for a normal distribution with mean μ and variance σ2, the modified weights conditioned on arrival time in (2) and (3) above are
In many embodiments, both absolute error and percentage error are considered when evaluating duration and energy predictions.
Recall that is the set of all users in a testing data set XTest. Let j denote the set of charging sessions for user j∈. The Mean Absolute Error (MAE) is defined in (4) to assess the overall deviation of the duration and energy consumption. For a testing data set XTest={(ai,j, di,j, ei,j)}j∈μ,i∈j, the corresponding MAEs for duration and energy are represented by MAE(d) and MAE(e) with
where {circumflex over (x)}i,j is the estimate of xi,j and x=d or c.
In several embodiments, a symmetric mean absolute percentage error (SMAPE) can be used to avoid skewing the overall error by the data points wherein the duration and energy consumption take small values. The corresponding SMAPEs for duration and energy are represented by SMAPE(d) and SMAPE(e) with
In accordance with an embodiment of the invention, MAE(d) and MAE(e) for I-GMM and P-GMM on Caltech data set are illustrated in
As illustrated in
Hence, for the JPL data set, adaptive EV charging can fix the training data as the one collected from Oct. 1, 2018 to Dec. 1, 2018 and show the scatterings of SMAPEs for each session in the testing data (from Dec. 1, 2018 to Jan. 1, 2019) in
User input data conspicuously gives the least accurate overall prediction. In certain embodiments, significant improvements are me made by leveraging tools from statistics and machine learning to better predict user behaviors, e.g., using GMMs.
In many embodiments, collection of ACN data and training of models can be utilized to determine the sizing of solar arrays in the manner described in the U.S. Provisional Patent Application Ser. No. 62/803,157 entitled “Date-Driven Approach To Joint EV And Solar Optimization Using Predictions” to Zachary J. Lee et. al., filed Feb. 8, 2019, and in the U.S. Provisional Patent Application Ser. No. 62/964,504 entitled “EV Charging Optimization Using Adaptive Charging Network Data” to Zachary J. Lee et. al., filed Jan. 22, 2020, the disclosures of which are herein incorporated by reference in their entirety.
In several embodiments, adaptive EV charging platform can utilize user data to smooth the EV energy demand over the course of the day and therefore smooth out the Duck curve. In certain embodiments, adaptive EV charging platform can be used for controlling the charging of large number of EVs in order to alleviate the steep ramping conditions caused by the Duck curve.
In certain embodiments, the problem of minimizing ramping can be formulated as
SCH(V,Uramp,) (6)
where the objective is denoted by
Here D(t) is the net demand placed on the grid after non-dispatchable renewable energy is subtracted from the total demand. In certain embodiments, flexible loads such as water heaters, appliances, pool pumps, etc. are treated as being fixed.
In many embodiments, adaptive EV charging platform can be utilized to analyze a net demand curve from California independent system operator (CAISO). For example, for the 2018 case analysis, three levels of EV penetration in California were analyzed based on the current number of EVs in California (350,000) and the state's goals for 2025 (1.5 million) and 2030 (5 million). For this case analysis, an optimistic assumption can be made that all of the electric vehicles would be available for workplace charging. The length of each discrete time interval is set in the optimization to be 15 min.
In several embodiments, to reduce the computational burden in solving (6) for millions of EVs, a representative sample of n EVs can be used drawn from the learned distribution and scale down the net demand curve
In many embodiments, in order to determine the amount of smoothing of the Duck curve, the number of EVs under control can be varied from 10,000 to 10 million for each distribution. Each group EVs can be scheduled by using (6) and measuring the resulting maximum up and down ramps as well as the peak demand. The results are shown in
In several embodiments, with as few as 2 million EVs under control, up and down ramping can be reduced by nearly 50% with only a 0.6% increase in peak demand when using the JPL distribution.
In many embodiments, a model for an EV battery can be fitted using charging data for a given EV. In several embodiments, using a transformation of charging time series into the energy domain, data processing techniques, and model fitting techniques, a piecewise function can be fitted to a battery that captures different modes of battery charging behavior.
In many embodiments, ACN data can provide useful information on charging sessions, including time series for pilot: (charging) signal and charging rate, and energies requested and delivered. In certain embodiments, battery models can be fitted depending on objectives. In several embodiments, a best fit battery model is employed using a time series data. In many embodiments, a piecewise linear 2-stage model can be fitted for a battery. Fitting to this battery model entails finding optimal values for the parameters rmax and h, where rmax is the maximum charging rate in the constant charging regime and h is the threshold state of charge at which decrease in charging rate begins. In certain embodiments, the problem can be analyzed in the energy domain, in which case the governing equation becomes:
For a given session, ê, eh, e(0), and Y are energy delivered, threshold energy, initial energy, and battery capacity respectively.
Looking at one session and assuming initial energy is 0, rewriting the governing equation as
3 parameters can be fitted in a linear regression on a piecewise linear equation: eh, rmax, and a slope that depends on ē (and the other parameters).
In many embodiments, ACN data provides a time series of charging rate and pilot signal. For the purposes of this fitting, charging rates for which the pilot signal was not binding can be used; that is, the pilot signal was some threshold above the charging rate. For these charging rates, the battery is charging at its maximum possible rate at that time, and charging rates can be used in the battery fitting. For charging rates within some threshold of the pilot signal, it is unknown if the charging rate is limited by the pilot signal, thus those rates cannot be used to determine a maximal charging rate profile. Further, EVs may spend a significant amount of time charging at 0A while having a nonzero pilot signal (due to the deadband at 6A or the pilot setpoint at 8A). Thus, charging rates of 0A are also not considered.
In several embodiments, once a time series of nonzero charging rates is obtained which is not bound by the pilot signal, these charging rates can be converted into an energy delivered vs. charging rat graph. Each charging rate can have a time over which it was applied, which, when combined with the charger voltage, provides a time series of energy delivered. This can then be plotted against charging rate.
In many embodiments, despite the aforementioned time series processing, noisy behavior is still present in the charging profile. Much of this behavior consists of sudden dips in the charging signal (i.e. over just one timestep). Because the battery equation is piecewise linear, median filtering will preserve the functional form of the charging profile (in the energy domain), while also being robust to window size. In certain embodiments, a median filter is used, but other filtering methods may also be used to bring the data closer to the appropriate functional form. For example, the charging rate in the energy domain is not expected to ever increase significantly (after accounting for the pilot signal), therefore a filter based on that criterion may also be utilized.
In many embodiments, after obtaining a clean charging rate vs. energy delivered curve, an optimization library can be used such as scipy.optimize to fit the energy domain battery equation to the data, yielding parameter values for eh, rmax, and ē. If this is the only session for this user, the analysis can be stopped at this point with a battery model associated with only this session. However, with multiple sessions per user an even more accurate battery model can be obtained. Note that in the single-session fitting, battery initial charge of 0 is assumed.
In many embodiments, for multiple sessions for a single user, assuming that the single user has one vehicle (and thus one battery), each individual session can be fitted for the user, and then the energy domain charging profile for each session can be shifted such that the eh's are aligned to the maximum eh over all sessions. For instance, if one session yielded an eh of 1 kWh, while another yielded 4 kWh, all the points of the first session would be shifted by 3 kWh. This is akin to assigning an initial charge to the battery for each session, with one session (the session that sets the max eh) having an initial charge of 0 kWh. After this shifting is done for all sessions for a given user, the fit to the model is done again, this time with data from all sessions.
In certain embodiments, the resultant fit gives accurate parameters for the battery's governing equations for one user under some model assumptions. In many embodiments, fitted parameters for a session (along with an initial energy estimate yielded by the shifting step) may be associated with that session in ACN data, and this fitted data may then be used in simulation, such that accurate charging based on real user charging behavior is obtained. The models for these batteries may be included in a model predictive control or other optimization framework to improve scheduling. In several embodiments, the fidelity of these fitted models may be tested by feeding the recorded pilot signals from ACN data into a ACN-Sim simulator (or another simulator). Also, as this process yields battery parameters for each user, clusters of users with similar batteries can be determined, and those clusters can be used to improve simulation models, match users to car models, or assign batteries to unclaimed, unfittable sessions following a distribution learned from the battery parameter clusters. At the individual user level, battery models could be used to infer metrics such as battery health.
In many embodiments, a user having multiple charging sessions is not necessary if one trace demonstrates most battery modes of behavior. Even if this isn't the case, an accurate model can be found that captures some of the battery behavior (like max charging rate), which is better than blind guessing. In several embodiments, this process can be employed for battery models other than linear 2 stage. Fitting to different functions may require different data processing and curve matching techniques. In certain embodiments, the data pre-processing (accounting for the pilot signal, median filtering, etc.) is only one possible pipeline for this analysis. Different filters, fitting directly to the time series, removing different parts of the charging rate data, etc. are all possible alternatives. In certain embodiments, an actual fitting process uses linear regression to find optimal parameters. Likewise, the shifting step, in which the threshold energy parameters for each session are aligned, may be done by matching other parameters, such as x intercept or max rate, or by fitting each session to an aggregate session curve calculated from all sessions, recording the optimal shifts used to match each session to the aggregate curve. The general idea in that step is to somehow align the data from all sessions to yield an aggregate data set for which fitting to a single set of parameter values makes sense.
In certain embodiments, such as when data is noisy, sparse, or unclaimed, or in certain simulations focusing on tail behavior, charging sessions are mapped to a worst-case scenario in which tail-behavior is maximized. Then the battery fitting objectives are twofold. First, given an energy delivered and a duration of the stay, the minimum total battery capacity is to be calculated such that it is feasible to deliver the requested energy within the specified duration when charging at maximum rate. Second, given that the minimum feasible total battery capacity was calculated, the maximum initial charge is determined such that a requested energy is delivered for this battery. In many embodiments, an amount of time the battery charges is increased in the non-ideal region, allowing an easier analysis of the effects of battery tail behavior on EV charging.
In several embodiments, assuming that charging is always at the maximum possible rate, the maximum rate of charge can be express
Here, rmax is the maximum rate of charge under ideal conditions, (is the state of charge of the battery, and h is the battery state of charge at which the battery transitions from ideal to non-ideal behavior, also known as the threshold or transition state of charge. If the maximum battery capacity is given ē and the voltage of charging V in volts, the above equation can be expressed in terms of the rate of change of state of charge. To do this, note that
assuming ē is in kWh. Then, the rate equation may be rewritten in terms of the rate of change of state of charge ζ:
This is a differential equation with two cases that depend on the initial condition ζ(0)=ζ0. In the first case, if ζ0>h, the only governing differential equation that applies is
which has the solution
In the second case, ζ0≤h and there are two individual differential equations to solve with different initial conditions. First, solve
The reason for the above initial condition is that the second differential equation starts taking effect when ζ≥h. The ideal region was charged up until this point, the time at which this transition occurs is (h−ζ0)/ζmax and at this time ζ(t)=h. This differential equation has solution
Combining all the equations, the following formula is arrived at for state of charge as a function of initial charge ζ0 and charging time t assuming charging is performed at the maximum possible
The problem discussed at the beginning of this section can be restated as, given a fixed Δζ and t (and assuming the other constants are fixed), find the maximum (o such that ζ(ζ0, t)−ζ0≥Δζ. Although there is a way to solve this problem in a closed form, it is simpler and more stable to solve this problem in steps, outlined below:
1. Assume ζ0≥h. Then,
In certain embodiments, the maximal ζ0≥h−ζmaxt in known because if ζ0 were any lower, the same amount of energy would be delivered, since ζmaxt does not depend on ζ0. Thus
This function can be inverted if special functions are used (namely, the product log, or Lambert W function) but such functions are unstable in the range of possible inputs, so instead, a search for an optimal ζ0 is done. First, note the following:
Since ζ0≥h−ζmaxt, ζmaxt+ζ0−h≥0 and δΔζ/δζ0 is always negative (except the edge of the search interval, ζ0=h−ζmaxt, where it is 0). Since Δst(ζ0) is decreasing in ζ0, find the ζ0 such that Δst(ζ0)=Δζ. In certain embodiments, this can be done by binary search since the function searched for is decreasing. Thus, a maximum ζ0 is obtained efficiently.
Given an initial state of charge (j, a charging duration t (t=1 if a charge for one period is performed), a threshold h, a capacity ē, a voltage V, and a maximum charging rate rmax, the battery state of charge is determined after t periods as:
Although the present invention has been described in certain specific aspects, many additional modifications and variations would be apparent to those skilled in the art. It is therefore to be understood that the present invention can be practiced otherwise than specifically described including systems and methods for adaptive EV charging without departing from the scope and spirit of the present invention. Thus, embodiments of the present invention should be considered in all respects as illustrative and not restrictive. Accordingly, the scope of the invention should be determined not by the embodiments illustrated, but by the appended claims and their equivalents.
The present invention claims priority to U.S. Provisional Patent Application Ser. No. 62/803,157 entitled “Date-Driven Approach To Joint EV And Solar Optimization Using Predictions” to Zachary J. Lee et. al., filed Feb. 8, 2019, and to U.S. Provisional Patent Application Ser. No. 62/964,504 entitled “EV Charging Optimization Using Adaptive Charging Network Data” to Zachary J. Lee et. al., filed Jan. 22, 2020, the disclosures of which are herein incorporated by reference in their entirety.
This invention was made with government support under Grant No. CCF1637598 awarded by the National Science Foundation. The government has certain rights in the invention.
Number | Date | Country | |
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62803157 | Feb 2019 | US | |
62964504 | Jan 2020 | US |