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Article

Comparison of AC and DC Nanogrid for Office Buildings with EV Charging, PV and Battery Storage

Electrical Sustainable Energy, Delft University of Technology, Mekelweg 4, 2628 CD Delft, The Netherlands
*
Author to whom correspondence should be addressed.
Energies 2021, 14(18), 5800; https://doi.org/10.3390/en14185800
Submission received: 4 August 2021 / Revised: 9 September 2021 / Accepted: 10 September 2021 / Published: 14 September 2021
(This article belongs to the Special Issue Direct Current (DC) Distribution Grids and Microgrids)

Abstract

:
Future office buildings are expected to be integrated with energy intensive, inherently DC components such as photovoltaic panels (PV), electric vehicles (EV), LED lighting, and battery storage. This paper conceptualizes the interconnection of these components through a 750 V DC nanogrid as against a conventional three-phase 400 V AC system. The factors influencing the performance of a DC-based nanogrid are identified and a comparative analysis with respect to a conventional AC nanogrid is presented in terms of efficiency, stability, and protection. It is proved how the minimization of grid energy exchange through power management is a vital system design choice. Secondly, the trade-off between stability, protection, and cost for sizing of the DC buffer capacitors is explored. The transient system response to different fault conditions for both AC and DC nanogrid is investigated. Finally the differences between the two systems in terms of various safety aspects are highlighted.

1. Introduction

1.1. Objective

Utilization of Renewable Energy sources (REs) for electricity production has been developed for decades [1,2]. As reported by [3], solar PV has the highest development rate compared to other REs because solar energy is an abundant resource. At the same time, shift to environment friendly technologies has garnered interest for high power applications such as Electric Vehicle (EV) charging. While currently EVs and associated charging infrastructure is in early market penetration phase, it is expected that these will be cost competitive with internal combustion vehicles in future [4].
In this paper, the integration of the PV, EV and other appliances within an office building using an AC or DC nanogrid is compared and analyzed. The AC and DC nanogrid is also connected to the external grid. The objective of this paper is to quantify the efficiency benefits of DC nanogrid for charging EVs form PV at workplaces and identifying the maximum efficiency by looking at the energy exchange with the grid; to investigate the stability issues in DC nanogrid and the trade-offs of improving it; to offer the sizing of DC buffer capacitors which correlate to the required protection devices.

1.2. Literature Review

The synergistic integration of EV-PV technologies can address challenges such as grid congestion [5,6,7]. At the same time, Energy Storage Systems (ESS) can aid in reducing the peak loading of the grid by introducing flexibility in power demand profile [8]. Furthermore, with an proper energy management and sizing, ESS could also effectively improve the system stability and reliability [9,10]. PV, EV, and ESS are inherently dc in nature, and therefore, it is suggested that dc based energy exchange offers superior performance and higher efficiency as compared to ac distribution [11,12,13]. DC interconnection between EV and PV reduces a conversion step, thereby making the system more compact and efficient [14,15,16].
It is stated that DC nanogrid gives better controllability and possibility to implement higher voltage than in AC. Moreover, the cable losses is higher and the power transfer is lower in AC nanogrid, due to the frequency and its sinusoidal waveform [17,18]. The fault comparisons and protection strategy are also discussed in [13,19,20,21]. However, quantitative comparison is required in order to measure the practical advantage of DC over AC. These comparisons are very dependent on the system design and energy production-consumption’s profile. Furthermore, information about the trade-offs for DC system to have better control and fault interruption than AC system should also be addressed. Therefore, this paper develops quantitative comparison from a specific case then elaborate it to form the conclusions that embodied the general quantitative comparison.

1.3. Research Contribution

This paper investigates the multi-faceted trade off between efficiency, stability, and protection of AC and DC nanogrids. Different cases and sensitivity analyses are elaborated to illustrate the relation of energy mismatch (production and demand) to the nanogrids’ efficiency trend. Furthermore, fault and protection behavior are also compared to describe the fundamental differences of both AC and DC nanogrids. The comparisons focus on the following aspects:
  • System efficiency: System efficiency correlates to the system electrical energy autarky (EEA) and the annual saving. EEA indicates the independency of the system to the electricity grid without taking into account the heat load demand and fuel consumption [22]. More efficient system means that there is less losses occurring in the system’s components (e.g., converters, cables, etc.). Therefore, more energy can be utilized for the loads and less energy is required from external grid. In the other case, when the PV generates more energy than demanded, there will be more excess energy that can be sold to the grid.
  • Control:Figure 1 shows two types of building’s interconnection with PV, EV, battery, loads, and grid. In AC nanogrid, as shown in Figure 1a, the utility grid is directly connected to the nanogrid. Therefore, changes in demand or production in the office will not affect the AC nanogrid since the AC grid is assumed as a very stable source.
    Even though the system can be considered to be very stable; voltage, frequency, and reactive power have to be controlled in order to maintain the stability of the system. DC nanogrid, as shown in Figure 1b, is more challenging in terms of control. Although there is no frequency and reactive power issues, the AC grid is not directly connected to the nanogrid, but through an AC/DC bidirectional converter. This converter plays a significant role to maintain the stability of the DC nanogrid.
  • Protection and Safety: Different nature of AC and DC currents necessities different protection mechanism for the two systems. The presence of frequency and zero crossing in AC nanogrid makes the system easier to be dealt with during a fault condition. The inductance of the cables within the system will lower the fault current and the zero crossing helps extinguishing the arc automatically. However, absence of current zero crossing in DC nanogrid makes both series and parallel electric arcs a concern [23,24]. During short circuits, the fault current in DC is higher and the absence of zero crossing makes the arc persist which is hazardous.

1.4. Paper Organization

This paper discusses the AC and DC nanogrids in an office building with PV and EVs and compares both interconnections in several aspects. In the beginning of this paper the introduction of the paper is briefed. Section 2, describes the system’s specification that are being compared. In Section 3, the results and analysis of the comparison in terms of system efficiency are presented while Section 4 discusses the result and analysis on system’s control and protection. Then, Section 5 concludes the comparison of AC and DC nanogrids in aforementioned aspects.

2. System Description

2.1. System Architecture

The topology for 3 ϕ 400 V AC and 750 V assymetrical monopolar DC interconnection are shown in Figure 1a,b respectively.
The shown architectures are referred to as nanogrid because the components connected to the common bus in the system can act as a small sub-unit within the existing ac utility grid, thereby preserving a degree of controllability in energy exchange through chosen power management scheme. Different component blocks such as EV, PV, building loads, battery ESS (Batt) and the utility grid are interconnected with a common AC or DC bus. Depending on the output type, appropriate AC/DC, DC/DC and DC/AC converter blocks are used for this integration. It can be observed that the AC nanogrid has an extra conversion stage for EV, PV and Batt integration, while DC nanogrid requires an extra Active Front End (AFE) AC/DC converter for energy exchange with the utility grid. It can be shown the ESS can significantly improve the efficiency of dc distribution in commercial building as compared to ac by minimizing the internal nanogrid power mismatches and energy exchange via AFE [25].

2.2. System Size and Power Profiles

2.2.1. Office loads

For the quantitative study, this paper focuses on a case study of a office building in the Netherlands. A typical three floors Dutch office building load is used for the simulations with an average of 35 working persons was adapted from [26]. The energy consumption of one working day is 270 kWh with peak demand of 22 kW. It is assumed that during weekends the load is only 30% weekdays as shown in Figure 2.
The considered loads are assumed directly connected to the respective AC and DC nanogrid. This implies that in case of DC, such loads must be re-dimensioned to be ‘DC ready’ [27,28,29]. The associated benefits of this strategy in the favour of DC systems are not considered in this paper. Typically, the office appliances of both AC and DC characteristics are integrated to the AC grid with relevant conversion device. This conventional strategy will lead to additional conversion stage in case of DC nanogrid and is not considered in this paper. Consequently, the presented results intend to capture the performance benefits associated with energy exchange between ESS, EV, PV and the grid. The EV and ESS sizes and configurations are based on [30] with rated capacity of 19.6 kWh (287 × 38, 1.2 V, 1.5 Ah; Li-ion battery) and 22.9 kWh (84 × 35, 6 V, 1.3 Ah; Li-ion battery).

2.2.2. EV Charging Profile

EV charging profile depends on daily activities of the office, such as working hours, traffic, company policies, user behaviour, etc. In this paper, the EVs are owned by the employee and simulated with five different charging profiles. The five charging profiles have different arrival and departure time that is adapted from [31] and modified such that the EVs’ state of charge (SOC) are greater than 90% at the departure time. The charging power for all the EVs is averaged in a way that each EV is charged in a constant power when parked and the charging power are identical for each working day throughout the year. This corresponds to 45.2 kWh demand every working days or 11.8 MWh in a year (5 days a week) for the case of five EVs with different charging profiles. Figure 3a shows the EVs charging profile for each EV during the week, with the last two days as weekend. Compared to weekdays, office power consumption is much less and there is no EV charging demand during weekends. This does not necessarily result in lower grid energy exchange, because there is a possibility that more energy is sent to the grid during high PV generation.

2.2.3. PV Generation Profile

In order to estimate the PV generation output, irradiation data is taken from the KMNI (Koninklijk Nederlands Meteorologisch Instituut) at the Cesar Observatory (51.971 N, 4.927 E) and used as an input for the PV model developed in [32]. The simulations use generation data of 435 Wp module for the whole year of 2014. 20 modules are connected in series to form a string (8.7 kWp), which corresponds to 7.1 MWh generation in a year. Several number of string are configured to have different PV capacities as shown in Figure 3b.

3. Comparison of Average Operating Efficiency

The difference in conduction and converter losses between AC and DC nanogrids is quantified in this section for varying energy mismatches.

3.1. Assumptions

The following assumptions are made to compare the simulated efficiency of AC and DC nanogrid:
  • The battery ESS is constrained between 10% to 90% depth of discharge.
  • The efficiency of each conversion step is set to a vlue of 98%.
  • Conduction losses associated with power distribution in the AC nanogrid are represented with efficiency η cond , AC = 99%. This includes power losses in cables, protection devices, busbars, and contact point resistances.
  • While the PV data for an entire year is considered to account for the seasonal/daily variation in power profile, weekdays-weekends load and EV profile used over the year for the presented results. Therefore some deviation due to seasonal variation is expected, which is not considered in this paper.

3.2. AC and DC Conduction Losses

Conduction losses for DC nanogrid ( P loss , DC ) is lower than that for AC ( P loss , AC ) because the current flowing through various interconnections is lower for the given bus power ( P op ) [18]. This can be inferred from (1) and (2) as the operating DC bus voltage U DC 2 is selected equal to the peak AC voltage ( E max = 2 E r . m . s ).
P loss , DC = 2 R cond , DC I DC 2 = 2 R cond , DC P op 2 U DC 2
P loss , AC = 3 R cond , AC I AC 2 = 3 R cond , AC P op 2 ( 3 E ll , r . m . s cos ϕ ) 2
While the actual system level conduction losses are a function of length dependent cable resistance, connection points and protection devices, this paper assumes that P loss , cond are related to P op with a fixed efficiency η cond as shown in (3).
P loss , cond = ( 1 η cond ) × P op
For the assumed η cond , ac = 99 %, the conduction efficiency of DC nanogrid ( η cond , dc ) can be found by dividing (1) and (2) and substituting (3), as given by (4).
η cond , dc = 1 2 3 × 3 E ll , r . m . s c o s ϕ U D C 2 × ( 1 η c o n d , a c )

3.3. System Efficiency

Figure 1a,b show different number of conversion steps for power that flows in the system. For example, the power flowing from PV to load, the associated path has two converter stages for AC nanogrid, while only two in case of DC. All conversion steps for each power flow are summarized in Table 1. There is only one path when AC nanogrid has less conversion steps, which is from the grid to the office appliances. Therefore, it is possible for AC nanogrid to have higher efficiency than DC if the power flowing from the grid to office appliances is dominant compared to the other power flows.
These power flows can be formulated into equations, including the losses in cables and converters, to calculate the real power that are used in the system. The equations are used in the simulations to obtain the power at all time and eventually the system efficiency.

3.3.1. Power Balance Equations

η i _ PV and η i _ EV from Figure 1 are represented in (5) by the efficiency of AC/DC stage for PV and EV. η DC _ PV and η DC _ EV are the efficiency of DC/DC converter attached to PV and EV. η r _ EV is the efficiency of rectifier attached to EV. η i and η r are the efficiency of bidirectional AC/DC attached to grid. P Grid is the power fed/drawn to/from the grid. P Load , AC , P Load , DC , P EV are power demands for AC, DC appliances, and EVs. P PV is power generated from PV.
The power exchanged with the utility grid in case of AC nanogrid ( P Grid , AC ) is given by (5).
P Grid , AC = P PV ( η DC / DC · η DC / AC · η cond , AC ) P EV η AC / DC · η DC / DC + P Load , AC , for excess generation P PV ( η DC / DC · η DC / AC ) P EV η AC / DC · η DC / DC · η cond , AC + P Load , AC η cond , AC , for excess demand
Similarly, the power exchanged with the utility grid in case of DC nanogrid ( P Grid , DC ) is given by (6).
P Grid , DC = P PV ( η DC / DC · η cond , DC ) P EV η DC / DC + P Load , DC · η DC / AC , for excess generation P PV ( η DC / DC ) P EV η DC / DC · η cond , DC + P Load , DC η cond , DC / η AC / DC , for excess demand
Throughout the day, the power flows according to the generation and demand conditions and also the power management. Based on those, the energy during the day can be calculated and classified as the energy demanded by the load ( E Load ), energy used to charge the EVs ( E EV ), energy produced by PV ( E PV ), the energy that is exported during excess generation ( E Grid , exp ) and imported from the grid when demand is higher than PV generation ( E Grid , imp ). Therefore, the cumulative system efficiency ( η s y s ) can be calculated using (7).
η s y s [ % ] = 100 × E Load + E EV + E Grid , exp E PV + E Grid , imp

3.3.2. Sensitivity Analysis with Varying PV and EV Energy

Power management (Figure 4a) is performed for one year of operation and the cumulative efficiency is computed from (7) for different PV and EV energy. The results are represented in terms of efficiency difference ( η diff = η sys , DC η sys , AC ) as in Figure 4b. A positive η diff implies that DC nanogrid has relatively higher cumulative system efficiency over the year of operation.
It can be observed, the relative efficiency of DC nanogrid improves with increasing EV demand as well as higher PV generation. This supports the intuitive understanding that both PV and EV are DC in nature and respective power flows are associated with lower conversion stages. In other words, we want to highlight that if the objective function is to minimize the energy exchange with a predominantly AC utility grid (and therefore maximizes the renewable energy consumption), DC based energy exchange within the workplace is preferred.
The correlation between grid energy exchange and higher relative efficiency of DC nanogrid is observed in Figure 5. The optimum (graph’s knee) η diff is obtained at the lowest grid energy exchange. This is because the energy flowing from PV to EVs and office appliances are dominant compared to the energy imported from the AC grid. In AC nanogrid, the energy suffers more conversion steps when the energy from the grid to EVs and office appliances are replaced by PV. Therefore, AC nanogrid has the lowest efficiency when most of the loads are powered by the PV.
The η diff is negative at low PV generation because, there is a conversion step from the grid to DC nanogrid while none in AC. DC nanogrid will drawn more energy, which lead to lower efficiency. However, at a certain EV demand and office appliances ratio, the DC nanogrid will have higher efficiency because the difference in conduction losses (see Equation (4)) becomes dominant than the conversion loss of the grid to DC nanogrid.

3.3.3. Impact of battery

In the case when 22.9 kWh battery is integrated in the system, the efficiency trend in both nanogrids are shifted down due the additional the conversion losses and the round-trip loss (assumed as 98%). Power from/to the battery is formulated as in (5) and (6), while the changes in efficiency is shown in Figure 6.
• AC nanogrid
P Batt , AC = P PV ( η DC / DC · η DC / AC · η cond , AC ) P EV η AC / DC · η DC / DC + P Load , AC · η DC / DC · η AC / DC , for charging P PV ( η DC / DC · η DC / AC ) P EV η AC / DC · η DC / DC · η cond , AC + P Load , AC η cond , AC / ( η DC / AC · η DC / DC ) , for discharging
• DC nanogrid
P Batt , DC = P PV ( η DC / DC · η cond , DC ) P EV η DC / DC + P Load , DC · η DC / DC , for charging P PV ( η DC / DC ) P EV η DC / DC · η cond , DC + P Load , DC η cond , DC / η DC / DC , for discharging
Higher losses is found in AC nanogrid due to more conversion steps going in and out the ESS. In office buildings, the peak demand occurred at the same time with the PV generation. Therefore, it is better to size the PV in a way that it matches the average office demand (and EVs) rather than adding a battery system. Instead of acting as a storage, the battery can be used as a temporary back-up or to regulate the nanogrid voltage, which can be done with much lower capacity, hence lowering the cost.

4. Control and Protection Comparison

4.1. System Model

In order to study the system response in both nanogrids, analysis is done using lumped elements to represents the cable. Lumped element method is valid and can be used to model the system as long as the physical dimensions of the system are small compared to the wavelength of the voltage and current signals [33]. For a 3 ϕ 400 V AC system, each phase can be represented as in Figure 7.
In this system, the lines are represented by R and L elements with stray capacitances. There are inputs and outputs assigned for the model. The inputs consist of: I P V , I b a t t , I g r i d are current from PV, ESS, and grid; while I E V and I l o a d are current for EVs and the office appliances. The outputs are V P V , V b a t t , V g r i d , V E V , and V l o a d which are the voltage at PV, ESS, grid, EV, and office appliances; I L P V , I L b a t t , I L g r i d , I L E V , I L l o a d are the current flowing at the PV, ESS, grid, EV, and office appliances’ lines; V C N and C C N are the central node voltage and capacitor’s size.
In AC nanogrid, the system is directly connected to the utility grid which is assumed as a huge energy buffer. Therefore, the system is very stable from any energy production and demand changes. While in DC nanogrid, there are additional capacitors that are installed in the nanogrid in order to improve the system stability and also for control purposes (highlighted in Figure 8).
These capacitors are crucial in DC nanogrid because it helps the system to maintain its stability. However, these capacitors largely affect the system response whenever there is a change in energy generation or demand condition. As previously explained, the DC nanogrid is not directly connected through the infinite grid as in AC nanogrid. Therefore, a condition change in DC nanogrid might disrupt the system operation if the converter that acts as the voltage regulator cannot restore the system voltage immediately.
The cable’s resistance, inductance, and capacitance are sized based on [34,35]. The PV size is assumed to be 63 kW (200 PV panels) peak corresponding to 200 panels. Complete component sizes can be seen in Table A1 and Table A2 in the Appendix A.

4.2. AC Nanogrid Results

The simulations were conducted in two conditions, i.e., power mismatch condition and short circuit fault at EV side. Initially the grid feeds a 10 kW load and when there are additional 10 kW load connected to the system, the grid can instantly provide the current required for the additional load and the there is no significant change in the voltage. In an application such as AC nanogrid, the stray capacitance is very minor and can be neglected. When a fault occurs, it is found that the system response to a fault depends on how the transformer neutral at the grid side is grounded, solidly or with a resistance, explained as follow:
v B n = v n v B
v C n = v n v C
Once a fault occurs, a system which neutral transformer grounded with a resistance will have v n 0 . The value of v n changed to:
v n = Z g Z T × v A
With phase change from phase A:
ϕ = t a n 1 X L T R T
Z g and Z T are grounding and total impedance of the faulted line, X L T is the grounding and total reactance of the faulted line, and R T is the grounding and total resistance of the faulted line. As can be seen in Figure 9b, the fault current is lower if the neutral transformer is grounded with a resistance.
According to Figure 10b, the voltage of the healthy phases might reach line-to-line value. This is because when the neutral transformer is grounded with a resistance, once a fault occurs, the voltage at the neutral point is no longer 0 V. This voltage increases according to the resistance and impedance along the faulted line to the neutral point. In addition, the phase to neutral voltage of the healthy phases ( v B n and v C n , assuming the fault is from phase A to ground) is changed.

4.3. DC Nanogrid Results

4.3.1. Power Variation

In order to analyze the DC nanogrid, state-space model that was developed by [36] is adapted. The state-space is developed based on the equivalent circuit shown in Figure 11. A full DC nanogrid model is shown in Figure 12.
Kirchhoff’s current law:
I D C 1 I C 11 I L 1 = 0
I D C 1 s V D C 1 C 11 I L 1 = 0
s V D C 1 = I D C 1 I L 1 C 11
s V D C n = I D C n I L n C n 1 , n = 1 , 2 , 3 , . . . 6
s V D C 6 = I D C 6 + I L 1 + I L 2 + I L 3 + I L 4 + I L 5 C 12 + C 22 + C 32 + C 42 + C 52
C T = C 12 + C 22 + C 32 + C 42 + C 52
Kirchoff’s voltage law:
V D C 1 V R 1 V L 1 V D C 6 = 0
V D C 1 R 1 I L 1 s I L 1 L 1 V D C 6 = 0
s I L 1 = V D C 1 L 1 V D C 6 L 1 L 1 R 1 L 1
s I L n = V D C n L n V D C 6 L n L 1 R n L n , n = 1 , 2 , 3 , 6
Based on the equations, the matrices A, B, C, and D for the state space model can be determined.
x ˙ = A · x + B · u
y = C · x + D · u
Assuming there is sudden increase of PV generation in the system, for example, the PV panels are shaded and the shade is gone instantly at t = 5 s and results in an instant current increases to 84 A. Then, at t = 15 s, there is an EV connected to the nanogrid and started to charge with 26 A. Figure 13 shows the DC nanogrid’s voltage at PV side when there is a current injected from PV (Figure 13a) and when the EVs drawn current from the system (Figure 13b). Figure 14a,b shows the EV side’s voltage at the similar conditions. It can be observed that the voltage rise/fall when a sudden current is injected/drawn from the nanogrid.
The voltage rise/fall occur because the system could not adapt with the changes as fast as the changes itself. When a current is injected to the nanogrid in a very short time, the system might not be able to sustain this instant excess current. The system require some time to use or dump the current. This instant excess current might destroy the components within the system if there is no other places to go. Therefore, an energy buffer is required in order to sustain the excess current. Capacitors can be used as the energy buffer. The instant excess current could go to the capacitors instead of to the components, hence it prevents the components failure. However, this creates a voltage rise in the capacitor.
In the other way around, when there is a current drawn from the nanogrid in a very short time, the capacitors have to act as an energy buffer. This is because the system requires longer time to provide the demanded current. Therefore, the energy is taken from the capacitors which creates a voltage drop. These rise and fall will be highest at the side where the current is injected/drawn (e.g., the highest voltage rise occurs at the PV side when the current is injected from PV).
The system need some time to restore the voltage to its initial value (750 V). The required time depends on the control implemented in the converter. In the simulations, PI controller is used in the grid converter in a way that the grid converter is responsible to maintain the system’s voltage at 750 V.
If the voltage changes (either rise or fall) above a certain point, the DC nanogrid operation might be disrupted. Therefore, it is important to limit the voltage changes. These can be minimized by installing larger capacitors at the input and output sides. As can be seen in Figure 13 and Figure 14, the larger capacitor (blue, red, yellow lines) leads to lower voltage fluctuation.
Assuming that the allowed voltage fluctuation is ± 5 % from 750 V, based on the simulations with different sizes of capacitor, the required capacitor for each side can be estimated as summarized in Table 2. It is important to be noted that the higher the current rise/fall and the shorter the occurrence time require bigger capacitor in order to prevent fluctuation more than 5%.

4.3.2. DC Faults

Even though, a larger capacitor could improve the system response, there are drawbacks on using larger capacitor in the system, i.e., higher start-up current and higher transient fault current. This can influence the designed response of the protection devices in the system.
In the other condition, assuming a fault occurs at EV’s side at t = 4 s, Figure 15 shows the DC nanogrid’s voltage at EV’s side and it’s line current, while Figure 16 shows PV’s side voltage and line current. Once a fault occurs, the voltage at all capacitors drop as the capacitors discharge. It can be seen in Figure 15a that the voltage drops instantly at the fault location. The deep voltage drop in a very short time can be an indicator of the fault location. During a short circuit fault, PV and EV converters must be able to disconnect when it senses a significant voltage drop, in order to prevent feeding the fault. Even though the components are isolated and do not feed the fault, there is still high current flowing through the line due to the capacitor discharge as shown in Figure 15b and Figure 16b.
Larger capacitors at the central node ( C C N ) results in improved system response. At the healthy side, the voltage drops lower and slower with a higher C C N as can be seen in Figure 16a, but it results in higher transient current at the faulted side as shown Figure 15b. However, the transient current from the healthy side becomes lower, see Figure 16b. This is because most of the transient current that goes to the fault comes from the central capacitor ( C C N ). The transient at the line of the faulted side is high because all the capacitors within the system are discharged to the fault.
The grid voltage ( V g r i d ) is regulated by connected converter. Therefore, once a fault occurs, the nanogrid’s voltage drops, and the grid tries to restore the voltage by injecting a higher current into the nanogrid (Figure 17). Since these high currents may damage the grid’s converter, this should be avoided. The current at grid line ( I L g r i d ) is slightly higher than the current coming from gird ( I g r i d ) because the discharge of the capacitor at grid’s side.
Disconnecting the grid converter will result in a black-out in the office because the office appliances will no longer have power and the nanogrid voltage will collapse. The better action is to isolate the faulted line, in this case the EV line, hence, the office appliances and the grid will still be connected. Therefore, it is important for protection devices to be able to isolate the fault before the grid’s converter is disconnected. It is also important for the grid’s converter to be able to withstand a huge current during fault before the protection device isolates the faulted line.
Simulations at each side of the system (PV, EV, ESS, office appliances, and grid) were conducted in order to obtain the required interruption time for every fault location. The correlation of fault location, central capacitor size, and required interruption time before the current from the grid exceeds 400 A is summarized in Table 3.
The required interruption time is smallest when the short circuit fault occurs at the grid side because the fault current comes from the grid. In this case, the grid has to be disconnected from the system in order to prevent a huge current goes through the grid converter. The further the fault location from the grid, the longer the required time for the fault current before it reaches 400 A. This is because of the resistance and inductance along the lines.
Based on the results and analysis obtained in the previous section, the difference between AC and DC nanogrids in an office building with PV and EVs along with the fault behavior can be summarized as in Table 4, including the experiment results from [13,19,20,37,38,39].

5. Conclusions

DC nanogrid is most likely to give higher efficiency than AC as long as the energy that being exchanged with the AC grid is low and the EV demands are higher than office appliance. For same cable resistance, DC cable has higher power handling capability than AC. Less power converters are needed and higher reliability in DC owing to lesser components. These result in higher saving which is important for an application in an office building. Even though DC might have higher capital cost than AC nanogrid, by having more annual saving, eventually, the capital cost difference can be counterbalanced.
The behavior of DC system is more complex; it requires buffer capacitors to support the system control. However, there are drawbacks on using buffer capacitors, i.e., higher transient fault current, higher start up current, and the expensive cost of big capacitors. Furthermore, additional protection devices is required in order to compensate the transient response and it has to be able to interrupt the fault current fast. The longer it takes to isolate the fault leads to deeper voltage drop. This will result in a higher current and voltage rise once the fault is isolated.
These results are summarized in the following Table 5.
Based on this study, the following are suggestions for future improvements and research,
  • Fast fault interruption. As observed in Section 4.3.2, fast fault interruption time is necessary for DC interconnection. Currently, solid state switches is used for fast interruption and it is more expensive than the conventional circuit breakers. Finding a method that could provide fast interruption and economically viable will make DC nanogrid more attractive.
  • Monopolar vs. Bipolar. The behavior of bipolar DC system and the impact of full-rated voltage and neutral line imbalance to the appliances have not been covered in this study.
  • Addressing high current during start-up or fault. In DC system, the bidirectional AC/DC converter which connects the grid is important because it regulates the system. During start-up or fault, this converter has to withstand a high current before the fault is isolated. Therefore, attenuating the current or improving the capability of bidirectional AC/DC is important.

Author Contributions

Methodology, I.S.; investigation, I.S.; supervision, G.R.C.M.; writing—review and editing, A.S.; project administration, P.B. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

AC nanogrid is using 3 ϕ 400 V while DC nanogrid uses 750 V. Based on the voltage level, the peak current for both nanogrids are slightly different. Therefore, the cables that are used for the nanogrids have similar specifications as presented in Table A1 and Table A2.
Table A1. Cable types.
Table A1. Cable types.
NoComponentsPeak Current [A]Cable Type
ACDC
1PV90.9384.00AWG 2
2ESS33.0530.53AWG 8
3Grid60.0455.47AWG 4
4Office appliances31.7529.33AWG 8
5EV28.2926.13AWG 10
Table A2. Components’ sizes.
Table A2. Components’ sizes.
NoComponentsCable’s Specifications
Total R [mΩ]Total H [μH]Total C [pF]
1PV25.63876.11118
2ESS30.91247.5237.6
3Grid12.22233.5286.2
4Office appliances103.1945.5792.1
5EV65.54351.28339.12

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Figure 1. System architecture.
Figure 1. System architecture.
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Figure 2. Office power consumption with five weekdays and two days of weekend.
Figure 2. Office power consumption with five weekdays and two days of weekend.
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Figure 3. Typical EV and PV power profiles for office workplace.
Figure 3. Typical EV and PV power profiles for office workplace.
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Figure 4. Relative efficiency with corresponding power management.
Figure 4. Relative efficiency with corresponding power management.
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Figure 5. Correlation of grid exchange and relative efficiency.
Figure 5. Correlation of grid exchange and relative efficiency.
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Figure 6. Efficiency with and without energy storage - example of 15 EVs.
Figure 6. Efficiency with and without energy storage - example of 15 EVs.
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Figure 7. Single line diagram of a AC nanogrid.
Figure 7. Single line diagram of a AC nanogrid.
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Figure 8. Single line diagram of a DC nanogrid.
Figure 8. Single line diagram of a DC nanogrid.
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Figure 9. Current at AC nanogrid’s central node during fault for different neutral transformer grounding.
Figure 9. Current at AC nanogrid’s central node during fault for different neutral transformer grounding.
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Figure 10. Voltage at AC nanogrid’s central node during fault for different neutral transformer grounding.
Figure 10. Voltage at AC nanogrid’s central node during fault for different neutral transformer grounding.
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Figure 11. Equivalent circuit for the developed state-space model of a dc nanogrid.
Figure 11. Equivalent circuit for the developed state-space model of a dc nanogrid.
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Figure 12. State space model of DC nanogrid adapted from [36].
Figure 12. State space model of DC nanogrid adapted from [36].
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Figure 13. PV side voltage of DC nanogrid due to power mismatches.
Figure 13. PV side voltage of DC nanogrid due to power mismatches.
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Figure 14. EV side voltage of DC nanogrid due to power mismatches.
Figure 14. EV side voltage of DC nanogrid due to power mismatches.
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Figure 15. Response with EV-side fault.
Figure 15. Response with EV-side fault.
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Figure 16. PV-Side response with EV-side fault.
Figure 16. PV-Side response with EV-side fault.
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Figure 17. Grid current during EV-side fault.
Figure 17. Grid current during EV-side fault.
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Table 1. Conversion steps.
Table 1. Conversion steps.
Power FlowsConversion StepsPower FlowsConversion Steps
ACDCACDC
PV → load21Batt → load21
PV → EV42Batt → EV42
PV → grid22Grid → load-1
PV → batt42Grid → EV22
Table 2. Required capacitor’s size for voltage fluctuation below ± 5 % .
Table 2. Required capacitor’s size for voltage fluctuation below ± 5 % .
Capacitor on Components’ SideRequired Capacitor Size
PV11 mF
ESS3 mF
EV3 mF
grid3 mF
Table 3. Required interruption time before the grid’s current exceeds 400 A.
Table 3. Required interruption time before the grid’s current exceeds 400 A.
Fault atRequired Interruption Time [ms]
C CN = 0 mF C CN = 50 mF C CN = 100 mF
PV36.59
EV256.2
ESS0.546
Office appliances37.511
Grid0.33.35.1
Table 4. Protection mechanisms comparison.
Table 4. Protection mechanisms comparison.
AC NanogridDC Nanogrid
Presence of capacitorsPresent only due to parasitic connection with earth. Does not give significant effect on system responseRequired for control and stability purpose. Lowers voltage oscillations during power mismatch. Highly affect the fault current and voltage response. Bigger capacitors improve the system response but it causes high start-up, fault transient current, and more expensive.
Fault interruption timeRequired time:  40 ms. The longer it takes to interrupt the fault, the higher the fault current.Required time:  4 ms. The longer the fault’s interruption, not only the high current, but also the high voltage rise will occur once the fault is isolated.
Arc protection devicesNot requiredHighly required due to the absence of zero crossing.
Suitable protection devicesFuses and mechanical circuit breakerSolid state switch. Additional L can be used to have lower voltage drop rate but it reduces the system response.
Fault current I F A C = V F R + j ω L I F D C = V F R
Transient fault currentThe transient peak is not present in AC side if the neutral transformer is grounded.Transient current always present regardless of the grounding strategy and highly dependent on the capacitors’ size
Table 5. AC and DC nanogrid comparison.
Table 5. AC and DC nanogrid comparison.
AC NanogridDC Nanogrid
System efficiencyHigher at high grid energy exchange and EV demands are less dominant than office appliances.Higher at low grid energy exchange and EV demands are more dominant than office appliances.
Impact of ESSMore losses due to more conversion steps when more excess PV is stored in ESS.Similar trend with AC nanogrid but lower losses due to lower conversion steps to ESS.
Control and protectionTransient fault current depends on transformer grounding, lower fault current.More complex, may require buffer capacitor and fast interruption protection device.
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MDPI and ACS Style

Sulaeman, I.; Chandra Mouli, G.R.; Shekhar, A.; Bauer, P. Comparison of AC and DC Nanogrid for Office Buildings with EV Charging, PV and Battery Storage. Energies 2021, 14, 5800. https://doi.org/10.3390/en14185800

AMA Style

Sulaeman I, Chandra Mouli GR, Shekhar A, Bauer P. Comparison of AC and DC Nanogrid for Office Buildings with EV Charging, PV and Battery Storage. Energies. 2021; 14(18):5800. https://doi.org/10.3390/en14185800

Chicago/Turabian Style

Sulaeman, Ilman, Gautham Ram Chandra Mouli, Aditya Shekhar, and Pavol Bauer. 2021. "Comparison of AC and DC Nanogrid for Office Buildings with EV Charging, PV and Battery Storage" Energies 14, no. 18: 5800. https://doi.org/10.3390/en14185800

APA Style

Sulaeman, I., Chandra Mouli, G. R., Shekhar, A., & Bauer, P. (2021). Comparison of AC and DC Nanogrid for Office Buildings with EV Charging, PV and Battery Storage. Energies, 14(18), 5800. https://doi.org/10.3390/en14185800

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