1. Introduction
The reliability and plentiful supply of electricity is one of the essential requirements in the development of the economy and technology, and using a microgrid based on renewable energy sources (RES) is one of the effective ways to improve the strength of the traditional grid [
1]. Many distributed generators (DG) have direct current (DC) output, and do not suffer from the problems of phase synchronization and reactive power loss. One difficulty is that the utilization of intermittent renewable energy resources in power supply poses several challenges [
2]. The hybrid energy storage system (HESS) is a schedulable resource with the corresponding energy management scheme and control strategy, improving the transient and steady-state performance to address relevant problems in microgrid systems [
3,
4].
As has been proven in the literature, using two or more types of storage devices to construct a hybrid energy storage system (HESS) provides a better performance than a storage system consisting of only one type of storage device. Compared with a supercapacitor (SC), the energy density feature of a battery is higher than an SC. Instead, the power density feature of an SC is higher than a battery. Both high energy density and high power density are components of the main performance of HESS. They are to provide power compensation during low-frequency oscillation, while being able to supply/absorb the transients’ power on the high-frequency component. To provide reliable and plentiful power and maintain a stable microgrid system, the focus will be a solution on the HESS consisting of a battery and SC in this paper.
A strong pulse load can cause large power fluctuations and impact the DC bus voltage and energy-storage devices; HESS can give full play to the characteristics of SC power density and battery energy density, to reduce the adverse effects of a fluctuation load [
5,
6]. The relevant literature shows that the SC can compensate the output current of the battery, relieve the pressure of the high-output battery current, reduce the battery terminal voltage drop and internal losses, and improve battery characteristics and extend its life [
7,
8,
9]. In Ref. [
10], an HESS energy-management method based on fluctuation characteristic parameters was proposed, while Ref. [
11] proposed energy management based on fuzzy control to achieve power distribution among the SC and battery in a connected-grid microgrid. HESS energy management schemes are different according to the connection structure of the SC and battery, but the basic idea is to use the battery to bear the low-frequency component of the load, and the SC to suppress the high-frequency component [
12,
13,
14].
A HESS application to suppress DGs power fluctuation has been achieved some research results. First, Ref. [
15] proposed a control strategy that takes into the state of charge (SoC) of SC and the system power loss, to suppress the power fluctuation of the photovoltaic system. Another study, Ref. [
16], proposed energy management based on power and voltage limitation methods to suppress DGs power fluctuation. However, methods based on limit measures lack adaptive dynamic adjustability. In Ref., [
17] a method in which the output current participates in the compensation of the current loop was proposed, which improves the stability of the bus voltage. Meanwhile, Ref. [
18] compared the power feedforward control strategy with the direct power control strategy for the SC energy storage, and showed that the latter can better suppress the DC bus voltage fluctuation. Finally, Ref. [
19] used a first-order low-pass filtering method to filter DGs power fluctuation, but this was sensitive to the typical characteristics of power fluctuation such as fluctuation loads and has a slightly poorer applicability.
Most of the aforementioned literature focuses on suppressing power fluctuation based on the method of storage device limits, to prevent overcharging or over-discharging for the energy-storage system in a grid-connected DC microgrid. However, there are few studies on the power balance of off-grid DC microgrid connected to the fluctuation load, the adaptive adjustment of storage energy SoC, and the operation optimal of an off-grid DC microgrid [
20,
21,
22]. In [
20], a management scheme is proposed for a hybrid energy-storage system with battery and supercapacitor energy storage as the core, and the designed scheme has adaptive characteristics. In Ref. [
21], a power-distribution strategy that takes into account the charge state and system loss of supercapacitors was proposed, and the experimental effect of stabilizing photovoltaic power fluctuation was shown to be improved. Another study, Ref. [
22], proposed a first-order low-pass filtering method to filter DG power fluctuations, but the sensitivity of low-pass filtering to the typical characteristics of power fluctuations, such as pulsating loads, and its applicability are slightly poorer. The power balance of an off-grid DC microgrid and the suppression of DG fluctuations are quite different. The requirements of the weak inertia of an isolated DC microgrid and the plug-and-play nature of fluctuation loads put forward higher requirements for energy-control strategies.
This paper aims to solve the problem in which the DC bus voltage fluctuation is caused by the power fluctuation of an off-grid photovoltaic microgrid. Based on the application research of HESS, an adaptive energy-optimization (AEO) method based on the filter algorithm, SC voltage adaptive control, and battery-pack balance control is proposed to scheme the HESS energy management and ensure the stable operation of an off-grid photovoltaic microgrid.
This paper is organized as follows:
Section 2 presents the description and structure of the DC convert. The adaptive energy-optimization method and the design guidelines of a control strategy for the stable operation HESS are discussed in
Section 3. The simulation results and analysis in
Section 4 verify the proposed control strategy.
3. Adaptive Energy Optimization Method
The adaptive energy optimization (AEO) method is proposed based on the filter algorithm, SC voltage adaptive control, and battery-pack balance control, as shown in
Figure 4. The AEO aims to optimize the charging/discharging of the battery module and adjust the SC module terminal voltage near the reference voltage. First, the filtering algorithm is used to obtain the
for the fluctuation load. Adaptive voltage control is introduced, so the transmission power of the battery pack can be adjusted in real-time according to the SC module terminal voltage, and the compensation power
can be obtained. Then, the actual load
, the fluctuation load
, and the compensation power
are added to calculate the transmission power
of the battery pack. Finally, the transmission power
is distributed to each battery pack in the current closed-loop control according to the battery-pack balance control. The difference between the load
and the battery module transmission power is compensated by the SC module through the voltage closed-loop control.
3.1. Average Filtering Algorithm
The average filtering algorithm is based on a moving average of several sequential values to calculate a new sequence of average values [
24]. In a sliding window with a fixed time
T, new data are always in the front of the sliding window, and old data are removed from the window at each sampling interval. The average filtering algorithm is expressed by:
where
T is the sliding window time width,
t is the sampling interval. As shown in
Figure 4, the fluctuation load current
and the DC bus voltage are integrated in the sliding window
T, and obtain a smoother power
. Therefore, the time width
T of the sliding window is necessarily reasonable to set.
The fluctuation load can be decomposition according to the Fourier, and expressed as follow:
To simplify the analysis, this paper only analyzes the amplitude-frequency characteristics of the first harmonic of the fluctuation load through the sliding window. The filter is expressed as follows:
where
is the output of the filter, and
is the input signal of the filter. Let the input signal be the first harmonic of a square wave, and expressed by:
where
is the square wave period. Substituting the Equation (
5) into Equation (
4) can give:
where
. In the case of considering only the effect of the first harmonic attenuation,
meets the requirements of harmonic attenuation.
The sliding average filter is equivalent to a second-order low-pass filter, and the second-order low-pass filter gain attenuation is usually required in the project to be between 3 and 40 dB. With only the 1st harmonic attenuation effect considered, it can be set as . If the supercapacitor configuration capacity is more abundant, the attenuation of the harmonic can be increased, so that the supercapacitor can bear more pulsating power charge and discharge, set as . If the supercapacitor configuration capacity is small, it is set as .
3.2. Battery-Pack Balance Control
The battery pack needs to meet the requirements of long-term energy supply. It is also important to consider the proper distribution of the output power for each battery pack port [
25]. The distribution is based on the state of charge balance of each battery pack and the energy transfer efficiency of the HESS.
To determine the average SoC,
, of the battery pack port, the
is calculated the SoC of the battery pack
k. The average SoC is expressed by:
The balance control of the battery pack aims to make each battery pack SoCs consistent and determine each battery pack port transfer output power
and reference current
, as shown in
Figure 4. The output power of each battery pack is calculated using the actual load demand and the adjusted power deviation considering the imbalance SoC of a battery pack. It is obtained as follows:
where
is the average output power for each battery pack,
is a gain coefficient of power deviation, the
is the port voltage of battery pack
k. The
is the imbalance degree of battery pack
k, and can be expressed by:
3.3. Supercapacitor Voltage Adaptive Control
Due to the power loss and other factors in the HESS, the SC terminal voltage will deviate from its reference value. In severe cases, the HESS stops working when the SC terminal voltage reaches the limit [
26]. Therefore, it is necessary to adjust the terminal voltage during SC operation. There is a definite relationship between the SC stored power
with the SC terminal voltage
. Therefore, the SoC of SC is calculated according to the terminal voltage of SC and can be expressed by:
where
,
is the capacity of SC, and
is the terminal voltage of SC,
is the rated voltage of SC.
To prevent overcompensation, the adaptive control is maintained according to the SC terminal voltage
value. The voltage range of the SC module is divided into five control bands, and each control band area sets the corresponding lower and upper voltage and the gain factor. The output power of SC is different depending on the SC terminal voltage, as shown in
Figure 5. According to the different accommodation coefficients, the output power of SC can be expressed as follows:
where
and
represent the different compensation coefficient;
and
are the minimum compensation power and the maximum compensation power of the SC, respectively;
and
are the continuous compensation power at the different adjustment range.
,
,
and
are the corresponding lower and upper voltage of each control band.
Setting a reasonable adjustment factor, the output power of the SC module is calculated using Equation (
11). Therefore, the stable SC terminal voltage is achieved indirectly by the output power of the battery pack in the HESS.
4. Results and Discussion
To verify the effectiveness of the proposed adaptive energy optimization control strategy, a simulation test is using an off-grid DC microgrid, as shown in
Figure 6. This off-grid DC microgrid system is composed of the actual wind-power-generation system, the actual photovoltaic power-generation system, the simulated wind-power-generation system, the hybrid energy-storage system, the microgrid central-control system, the programmable RLC three-phase load, the environmental monitor, and other main parts, as show in
Table 1. The main function of the hybrid energy-storage system is a two-way converter with a stable control function, and when the microgrid is running in the isolated network, the device serves as the standard source of the microgrid system to ensure that the microgrid is in the process of isolated network operation and mode-switching system stability.
The parameters of the simulation experiment are as show in
Table 2, the battery pack consists of 6 lead–acid batteries in series and the voltage range is 60–75 V; the SC module is 75 V/13.3 F and consists of 4 SCs in parallel, and the voltage range is 50–70 V. The energy-storage inductor
uH, and
uH. The turn-on resistance
is setting 100
, and the filter capacitor
and
are set at 45 uF. In this off-grid microgrid, the fixed load is set to 1.8 kW, the power range of the fluctuation load is set to 0–2 kW. The reference voltage of the DC bus is setting
V, and the reference voltage of the SC module is setting
V. The corresponding lower and upper voltage are sets
V,
V,
V and
V, respectively. The switching frequency is 20 kHz, and the sampling frequency is 100 kHz.
As shown in
Figure 7a, the SOC of hybrid energy storage declines less than that of a single-battery pack SOC, and the single-cell SOC declines faster. However, in the hybrid energy-storage system, the discharge pressure of the battery can be relieved due to the addition of supercapacitors. To intuitively see the protection of the battery using a hybrid energy storage system, the battery current and the single-battery current in the hybrid energy-storage system are compared, as shown in
Figure 7b. It can be seen that the battery current in the hybrid energy storage is basically at 50 A, and the single-storage current is significantly higher than the battery current in the hybrid energy-storage system, and the high rate current will inevitably have a greater impact on the battery life, and more serious safety problems may occur. In hybrid energy storage, the supercapacitor can charge and discharge with a high-rated current, and the current of the battery charge and discharge will naturally decrease, prolonging the life of the lithium-ion battery.
The waveform of voltage and current of the HESS without the function of adaptive energy optimization control is shown in
Figure 8a. When the load rises and falls suddenly, the current of the battery module has a sudden change caused by the limited response of the SC module, affecting the service life of the battery. In
Figure 8b, the load power is from
kW and it rises up to
kW. The battery module current
is also from 8 A and it slowly rises up to around 15 A. The SC module current
, which maintains the instantaneous power compensation is around, 20 A. When the load power increases from 1.75 kW to
kW, the
is slowly dropped from 15 A to around 8 A, and the
is maintained at 20 A. Based on the AEO, this method effectively reduced the bus voltage fluctuation of a microgrid caused by the load-demand fluctuation, and it optimized the charge/discharge control capability of HESS.
The comparative analysis of the sliding window time, the square wave period, and the SoC by experiment are shown in
Figure 9a,b. The results show that the proposed AEO control strategy improved the stability of the microgrid during load demand fluctuation. Several sets of different sliding window times and the square wave period are simulated in the experiment, and
. With the AEO control strategy, the performance of the battery module charging and discharging is better. Comparing
Figure 9a with
Figure 9b, the square wave period
T is smaller, the performance of charging or discharging is effective more obvious.
The SC module terminal voltage is affected by the power loss during the process of HESS charging/discharging. The process causes the SC module terminal voltage to continuously drop. As shown in
Figure 10a, it can be seen that the SC module terminal voltage drops by nearly 20 V after 100 s. Therefore, the SC module terminal voltage needs to be kept around the reference voltage during the charging/discharging of HESS. In the same experiment environment, the SC module terminal voltage used adaptive control to maintain stability as shown in
Figure 10b. By contrast analysis between
Figure 10a,b, it can be seen that the SC terminal voltage adaptive control is to keep the terminal voltage around at the reference voltage.
The effectiveness of the proposed AEO control strategy is verified by model simulation and dynamic model experiments. This control strategy ensures the stability of the DC bus voltage, uses the SC to optimize the charging and discharging process of the battery to a great extent, and extends the service life of the battery. At the same time, the SC terminal voltage is controlled by adaptive control. The voltage is stable near the reference voltage value, which avoids the shutdown of the terminal voltage exceeding the limit. The HESS maintains stability and meets the load fluctuation of a microgrid during fluctuation load. The proposed AEO control strategy effectively improves the economics of energy systems.
5. Conclusions
In this paper, an adaptive energy optimization control strategy of HESS is studied. Aiming at the power fluctuations of the pulsating load of isolated DC microgrid, an adaptive energy-control strategy for a hybrid energy storage system based on moving average filtering algorithm is proposed, which is composed of three parts: sliding average filtering algorithm, voltage variable gain adaptive control at the supercapacitor terminal, and energy-flow equalization control algorithm of a battery pack.
The various sections of this control policy are analyzed in detail in this article, and the effectiveness of the proposed control strategy is verified through model simulation and actual testing. While ensuring the stability of the DC bus voltage, the control strategy uses the supercapacitor to greatly optimize the charge and discharge process of the battery and prolong the service life of the battery. At the same time, the terminal voltage of the supercapacitor is stabilized near the rated value through variable gain adaptive control, which avoids the shutdown of the terminal voltage beyond the limit. In addition, the SOC of each battery pack is controlled by energy-flow equalization convergence.
The control strategy can be applied to isolated DC microgrids with more pulsating loads or DC island microgrid, remote mountainous off-grid and other fields, which can effectively improve the economy of the whole life cycle of the system while meeting the load plug-and-play requirements.