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Development of an Optimized Algorithm for Bidirectional Equalization in Lithium-Ion Batteries

  • Sun, Jinlei (Department of Electrical Engineering and Automation, Harbin Institute of Technology) ;
  • Zhu, Chunbo (Department of Electrical Engineering and Automation, Harbin Institute of Technology) ;
  • Lu, Rengui (Department of Electrical Engineering and Automation, Harbin Institute of Technology) ;
  • Song, Kai (Department of Electrical Engineering and Automation, Harbin Institute of Technology) ;
  • Wei, Guo (Department of Electrical Engineering and Automation, Harbin Institute of Technology)
  • Received : 2014.11.13
  • Accepted : 2015.02.15
  • Published : 2015.05.20

Abstract

Many equalization circuits have been proposed to improve pack performance and reduce imbalance. Although bidirectional equalization topologies are promising in these methods, pre-equalization global equalization strategy is lacking. This study proposes a novel state-of-charge (SoC) equalization algorithm for bidirectional equalizer based on particle swarm optimization (PSO), which is employed to find optimal equalization time and steps. The working principle of bidirectional equalization topologies is analyzed, and the reason behind the application of SoC as a balancing criterion is explained. To verify the performance of the proposed algorithm, a pack with 12 LiFePO4 batteries is applied in the experiment. Results show that the maximum SoC gap is within 2% after equalization, and the available pack capacity is enhanced by 13.2%. Furthermore, a comparison between previously used methods and the proposed PSO equalization algorithm is presented. Experimental tests are performed, and results show that the proposed PSO equalization algorithm requires fewer steps and is superior to traditional methods in terms of equalization time, energy loss, and balancing performance.

Keywords

I. INTRODUCTION

Lithium-ion batteries are widely used in electric vehicles and hybrid electric vehicles owing to their high energy density and power density characteristics [1]. However, a single cell cannot supply sufficient voltage and capacity for vehicles, and thus connecting cells in a series or in parallel to construct a battery pack is inevitable [2]. Ideally, a pack can be considered high voltage and high capacity if no differences are found among the cells [3]. Nevertheless, variations on capacities, internal resistances, and open-circuit voltage (OCV) occur after batteries are repeatedly charged/discharged because of the manufacturing process and operation environment [4]. Variations also lead to an unbalanced state of charge (SoC) [5], and available pack capacity is limited by the SoC imbalance of cells. Early termination of charge/discharge cycles reduces the available pack capacity because of the strongest and weakest cells [6]. Therefore, monitoring cells in real time and maintaining cell SoCs are recommended to prolong the lifetime of batteries and retain the available pack capacity.

Numerous equalization methods have been reported in previous studies [7]. N. H. Kutkut is the primary advocate of the passive balancing method [8]. This method bypasses the current from a higher voltage cell by using a parallel resistor. Although this method is simple and easy to control, the excessive energy it produces is transformed into heat, which reduces the available capacity of the battery and induces thermal safety problems. Additionally, the equalization time is long because of low equalization current. Capacitors, inductors, and transformers are utilized to transfer energy from a high charge cell to a low charge cell to overcome the drawbacks of passive equalization [9]-[13]. These methods are called active equalization methods. Among the active methods, the switching capacitor method requires no closed loop or sensing [6]. However, it is not accurate because the hysteresis effect is not considered. Korea Advanced Institute of Science and Technology (KAIST) proposed various topologies that use transformers, switching blocks, and sensing circuits [14]. Nevertheless, KAIST focused only on new topology development, and few equalization strategies were involved in its research. To improve efficiency and decrease switching loss, Yuang-Shung Lee further developed existing methods with soft switching technology [13], [15]. However, when cell voltage is taken as a criterion, soft switching complicates the circuit further.

Bidirectional equalization equipped with voltage acquisition module is a promising method to achieve fast and accurate battery equalization because of bidirectional energy transfer and fast equalization speed. A current closed loop can also be used to accurately estimate the charge delivered, and algorithms based on SoC can be applied. Thus, a bidirectional full-bridge converter with a switching block is utilized in this study for cell balancing.

Bidirectional full-bridge topology determines that energy is transferred between a pack and a cell [16]. When a single cell is charged or discharged for balancing, the current runs through the other cells. Determining final cell target SoCs for equalization is difficult in this case. Traditional equalization methods take voltage as a balancing criterion, but charge differences exist among cells with the same voltage because of over potential [17], [18]. Some researchers focused on the SoC equalization method [19], [20]. These researchers aimed to minimize the differences between the mean SoC of a pack and a specific battery by balancing. However, this method lacks global target consideration for equalization, which may cause energy loss and long equalization time.

To solve these problems, a novel SoC equalization algorithm for bidirectional equalizer is proposed based on particle swarm optimization (PSO). PSO algorithm optimizes the equalization time for each cell based on the pack initial SoC distribution. The working principle for bidirectional equalization topologies is analyzed, and the reason for taking SoC as a balancing criterion is explained. PSO algorithm is applied to obtain the global optimal solution to improve the balancing speed. The performance of the proposed algorithm in enhancing pack available capacity is confirmed through an experiment, and a comparison between the previous methods used in references and the proposed method is presented. The experimental results verify the advantages of the proposed PSO equalization algorithm.

 

II. BIDIRECTIONAL SOC EQUALIZATION

A. Bidirectional Equalization Topology

Fig. 1 shows a bidirectional equalization circuit with a switching block. The switching block is used to connect the target cell to a DC/DC converter. The main circuit of the bidirectional DC/DC converter is based on a transformer, and the circuit works in two modes according to the energy flow. In the charge mode, the switching block selects the target cell with low charge, and energy flows from the pack to the target cell [Fig. 2(a)]. In the discharge mode, energy is transferred from the target cell to the pack [Fig. 2(b)]. The arrow in Fig. 2 indicates the current direction. Many transformer-based DC/DC converters can be bidirectional [11], [20].

Fig. 1.Structure of bidirectional equalization circuit.

Fig. 2.Working modes for balancing. (a) Charge mode for balancing. (b) Discharge mode for balancing.

Equalization current is critical to analyze the energy transfer during equalization. As long as the equalization current for the target cell and the efficiency for the charge/discharge mode are obtained, the current that passes through the other cells can be calculated using either Eq. (1) or (2).

where Vi is the voltage of cell i. Vx is the voltage of target cell x, Ix is the current that passes through target cell x, and I′x is the current of the other cells. ηcharge is the efficiency for the charge mode, whereas ηdischarge is that for the discharge mode.

Cell SoCs and transferred charge are required for accurate equalization. Cell SoCs and equalization time are discussed in Section II(B) and Section III respectively.

B. SoC Equalization

This work has two assumptions. First, cells are screened before grouping, which means the slight capacity difference is not a concern in analysis. Second, the cell coulombic efficiency is 1.

The cell SoC is calculated using the remaining and nominal cell capacities. The definition is as follows:

The remaining capacity is calculated through Eq. (4):

where SOC0 is the initial cell SoC, and CN is the nominal cell capacity. The Ah change in a certain period is integrated from t0 to t . I(t) is the current at time t, and IE is the equalization current.

Eq. (4) shows that the initial SoC is important to estimate the remaining capacity. Numerous methods have been developed to accurately estimate the initial SoC [21], [22]. Most of the methods are based on the nonlinear function between SoC and OCV. Reference [22] indicated that cell voltage is close to OCV in an equilibrium state, and that the curves for charging and discharging are not overlapped because of the hysteresis effect [5].

The pack current can be calculated through Eqs. (1) and (2). Furthermore, the SoC variation for the charging and discharging modes can be described as Eqs. (5) and (6) respectively.

where SOCx and SOC′x accordingly represent the SoCs before and after a balancing step for the target cell, and SOCY and SOC′Y are the respective initial and final SoCs for the cell in the pack other than the target cell in the pack. When Ix_cell is measured, I′x_pack can be obtained according to Eqs. (1) and (2). In Eqs. (5) and (6), sgn indicates the current direction. When a cell is discharging, the sgn for the cell in Eq. (5) is negative, whereas the sgn for the pack in Eq. (6) is positive.

For a pack with n cells that are series connected, the total equalization time is the sum of the time consumed to balance each cell. The total balancing time is described in Eq. (7).

According to the above analysis, the total equalization time is determined according to the final target SoC of each cell. Thus, the algorithm to decrease the time and step for equalization is focused on. Section III introduces the details.

 

III. PSO EQUALIZATION STRATEGY

A. SoC Equalization Analysis

In the study of equalization strategy, determining the goal for the ending of balancing is an important factor influencing performance and accuracy. To achieve accurate equalization, SoC is taken as a criterion in many previous studies to describe charge inconsistency [20], [23]. Fig. 3 shows the energy transfer of SoC based on equalization. Obtaining the charge to be balanced for each equalization step is the key to achieving the final SoC consistencies. The final SoCs for the cells in a pack can be calculated using Eqs. (5) and (6).

Fig. 3.Diagram for SoC equalization.

For a pack with n cells connected in a series, the equalization process contains n steps, assuming that each cell takes one equalization step. If the charge transferred in each step is obtained, the current direction vector M can be achieved. In M, 1 represents discharging, whereas −1 represents charging. For each step, the equalization current for the target cell causes the corresponding current to pass through the other cells. This process can be described as an equation to show the charge variation for each cell. The charge variation for all the cells can also create an equation set, as shown in Eq. (8).

where t1 …tn are the equalization times for each cell, and ∆C1 …∆Cn are the charge variations for cell n in the corresponding equalization steps. All the subscripts represent the number of cells.

Equation (8) can be expressed as follows:

where x is the equalization time vector, B is the total charge variation vector, and A is the current vector. These vectors are shown as follows:

B. Problem Formulation

This work aims to provide a method to minimize equalization time and improve SoC consistency. Eqs. (8)–(12) clearly show that the equalization time for each cell, which is a significant factor for users to predict the total time consumed, can be calculated as long as the charge variations are determined. The equalization current vector A is determined as the circuit characterizes the bi-directional equalizer. Notably, when a cell is charging/discharging, a current goes through the other cells because of the structure of the bidirectional equalizer. Hence, the target SoC for each cell to be charged/discharged is difficult to predict. The crucial issue is to obtain a set of charge variations to solve the equalization time and direction for each cell. Although enumeration is a promising method to find the solution, the large calculation and long searching time are the main disadvantages that limit the application in this work. For instance, the possible cell charge variation range is between −5 and 5 Ah with 0.1 Ah minimum resolution; the best solution is among 10012 results for a pack with 12 cells. The enumeration method incurs large calculations and is time consuming. Therefore, a mathematical method is required to seek the global optimal solution with less calculation. Finally, the PSO algorithm is applied in this work.

C. PSO Algorithm

The idea of the PSO algorithm is inspired by the behavior of birds. Kennedy and Elberhart [24] initially proposed this method in 1995. The PSO algorithm has advantages such as simple coding and few parameters, and has been widely used in the field of function optimization. The main idea of this algorithm is that each solution is called a particle with n-dimensional space, and fitness function is used to evaluate the degree of superiority of each particle. Velocity and position are two important parameters. Position is the potential result of a problem. The PSO algorithm flow is shown in Fig. 4.

Fig. 4.Flowchart of PSO equalization algorithm.

In this work, position denotes a set of charge variations that can be used to calculate equalization time and current direction for each cell. Additionally, particle velocity represents the charge variations in each iteration. Position and velocity are updated according to fitness function to seek the global optimal solution and the individual optimal solution. With the acquired global optimal charge variation vector, the corresponding equalization time and current direction can be obtained via Eq. (8).

The choice of fitness function greatly influences the performance of PSO optimization. Fitness function is determined by the goal of minimizing equalization time and SoC inconsistency. Thus, fitness function is defined as

In Eq. (13), y(ti) represents the final SoC for each cell, which is a function of time ti, and can be calculated through Eqs. (5) and (6). is the mean of y(ti).

The proposed PSO algorithm for battery SoC equalization in this work is an off-line optimization method. The equalization time and current direction are calculated using a computer, and the equalization instructions are transferred to the target equalizer for operation.

The steps for the PSO equalization algorithm are as follows:

MATLAB is employed to solve the PSO optimization problem. The parameters for the PSO algorithm are listed in Table I. The largest iteration time is 100, and the number of particles is 40. The acceleration constants are set as 2. The adoptive weight coefficient is defined as w(k). Some constraints exist for the optimization of balancing, as shown in Table I as well.

TABLE IPARAMETERS FOR PSO ALGORITHM

The constraints for this problem include equalization time, initial SoC for cell x before equalization final SoC for cell x after equalization and charge variation for cell x during equalization ∆Cx. The equalization time should be greater than 0; thus, the first constraint is tx˃0. The charge variation for cell x after n steps of equalization is expressed as ∆Cx, which can be below or above zero. The maximum charge variation should not be larger than the cell capacity CN. Thus, the second constraint is -CN ˂ ∆Cx ˂ CN. The initial SoC and final SoC for cell x should all be within the range of 0% and 100%; thus, the third constraint is and . can be calculated through Eqs. (5) and (6).

 

IV. EXPERIMENT DESIGN

A. Experiment Object

To verify the performance and effectiveness of the proposed algorithm, a pack with 12 LiFePO4 cells connected in a series was implemented. The nominal cell capacity was 5 Ah, and the nominal voltage was 3.2 V. The upper and lower voltage limits were 3.65 and 2.5 V respectively. The experiments were taken under idle condition.

B. Battery Screening

To reduce the influence of capacity variation, the cells were screened before grouping. Moreover, the steps for the cell capacity measurement were as follows:

Ref. [26] reported that the SoCs complied with normal distribution after being repeatedly charged and discharged. The pack should be replaced when the available pack capacity loss reached 20% [5]. Thus, the initial SoC distribution in this work was arranged to comply with a normal distribution with 40% mean and 5% variance. Each cell was charged artificially to obtain the SoC distribution, as shown in Fig. 5, where the maximum and minimum SoCs were 49.8% and 29.3% respectively.

Fig. 5.Initial pack of SoC distribution.

C. Measurement Equipment

All the tests were performed with a channel of an Arbin instrument BT2000 (18 V, ±100 A), which had a voltage measurement accuracy of ±0.01% and a current measurement accuracy of ±0.02% on the full-scale value. Moreover, the ambient temperature was at 25 ℃ ± 5 ℃. The hardware for equalization was based on bidirectional full-bridge equalizer [16]. The diagram of the circuit is shown in Fig. 6. The main parts of the system included a full-bridge converter, a switching block, and a controller. The switching frequency of the converter was 30 kHz with maximum duty cycle of 45%. The equalization current parameters were obtained by a board using Hall-effect sensors. The details are shown in Table II. An LTC6803-based measurement board with a 5 mV maximum measurement error was used to measure the cell voltage. All the measured equalization information were sent through a controller area network (CAN) bus for data storage and display. The experimental setup is shown in Fig. 7.

Fig. 6.Bidirectional full-bridge equalization topology.

TABLE IICURRENT PARAMETERS FOR EQUALIZATION

Fig. 7.Photograph of experimental setup.

D. Experimental Procedure

Two validation tests were conducted under the same ambient temperature (25 ℃ ± 5 ℃) with the same experimental setup. The SoC distribution with 20.5% maximum SoC gap was used in the two tests. Fig. 5 shows the SoC distribution. The two tests were arranged as follows.

Test 1: The validation experiment was performed on the pack to verify the performance of the proposed method. The charge and discharge cycle was taken before and after equalization respectively.

Test 2: Comparative experiments were performed between the traditional methods and the proposed algorithm to verify the superiority of the algorithm.

 

V. RESULTS AND DISCUSSION

A. Validation of the PSO Equalization Algorithm

The proposed PSO equalization algorithm was applied to the pack mentioned in Section IV B. The equalization time and charge variation were calculated using an Intel Xeon E5-2620 2.0 GHz processor with 32 GB of RAM. The average executed time was 55.53595 s. The obtained equalization instructions were sent to a micro-control unit-based equalizer through a CAN bus. The equalizer controlled the equalization time and the current direction according to the PSO algorithm result to achieve SoC balancing.

Fig. 8 shows the calculated optimized equalization results for each cell using the PSO algorithm. In Fig. 8a , a positive value means charging, whereas a negative value means discharging. The SoC gap was reduced from 20.5% to 1.11% within 58 min and 42 s. The comparison of the SoC distribution before and after equalization is shown in Fig. 9.

Fig. 8.Equalization results of (a) charge transfer for each cell. (b) Equalization time for each cell

Fig. 9.Comparison of SoC distribution before and after equalization

Fig. 10 shows the test results before and after equalization. In Fig. 10a, the initial discharge capacity was 1.44 Ah because of the minimum SoC of cell 6, and the charge and discharge capacity were 3.39 and 3.35 Ah respectively. In this cycle, Cell 12 ended the charging first, while Cell 6 ended the discharging initially. In Fig. 10b, the initial discharge capacity was 1.85 Ah with Cell 4 reaching the discharge cutoff voltage first, rather than Cell 6. In addition, the charge and discharge capacity were 4.05 and 4.01 Ah respectively. In this cycle, Cell 8 ended the charging first, and Cell 4 ended the discharging initially. The available discharge capacity was enhanced by up to 13.2% using the equalization method based on the PSO algorithm.

Fig. 10.Comparison of results: (a) charge and discharge cycles before equalization and (b) charge and discharge cycle after equalization

The comparison shows that the pack available capacity was influenced by the maximum SoC and minimum SoC in the pack. The cell with maximum SoC reached the charge cutoff voltage first during charging, and the cell with a minimum SoC reached the discharge cutoff voltage first during discharging. Before equalization, the minimum and maximum SoCs were 29.3% and 49.8% respectively. However, after equalization, the difference was within 2%. The result proved that the bidirectional equalization circuit with the proposed algorithm was effective in improving the inconsistency and enlarging the available pack capacity range.

B. Comparative study of the Proposed Method

In this section, the proposed PSO equalization algorithm was compared with traditional methods. The comparative experiments were divided into two groups.

Group 1: The initial SoC distribution shown in Fig. 5 was implemented in the proposed PSO algorithm and in a method based on mean difference [20]. The method in Ref. [20] minimized the differences between the mean SoC of the pack and a specific battery unit through balancing. The same strategy was utilized in method 1. For the proposed PSO algorithm, the obtained equalization time and current direction were the optimized global solution. As for method 1, the equalization time for each cell was calculated according to the charge difference between the mean SoC and the SoC of the target cell to be balanced. The comparison of the equalization process is shown in Table III.

TABLE III* C-P (Cell to Pack) means current goes from single cell to pack, P-C (Pack to Cell) means current goes from pack to single cell.

Clearly, the PSO method required only 12 steps to finish equalization, whereas method 1 required 14 steps. Hence, cells 1 and 2 suffered one additional equalization step each. The equalization time for the average SoC approximation method was longer, and more loss and resource consumption were generated than the proposed PSO method. In addition, the SoC root mean square of both methods decreased as the equalization step progressed, but the final result for the PSO method was less than that of method 1. The equalization results for the two methods in group 1 are shown in Table IV.

TABLE IVCOMPARISON RESULTS OF EQUALIZATION IN GROUP 1

Group 2: The proposed PSO method was conducted under the same condition of the initial SoC distribution as Refs. [14] and [16]. The initial SoC state was given in Ref. [14], while the initial SoC state in Ref. [16], which was not presented directly, was calculated according to the OCV-SoC curve for charging and the charge quantity deviation. The comparison results are shown in Table V. The method used in Refs. [14] and [16] are named as methods 2 and 3 respectively in Table V. As shown in Tables IV and V, the proposed PSO method has excellent performance on minimizing equalization time and improving SoC consistency compared with the other methods. The proposed PSO method also consumed less energy than method 1 during equalization.

TABLE VCOMPARISON RESULTS OF EQUALIZATION IN GROUP 2

C. System Energy Loss Analysis

Assuming that the number of cells required for charging and discharging are p and q respectively, the energy loss for all the charging and discharging processes are as follows:

where Vpack is the sum of the cell voltage in a pack, Vi is the voltage of cell i, Vj is the voltage of cell j, ti and tj are the equalization time for cells i and j respectively, and Icharge and I′charge are the currents that go through the single cell and the other cells in charge mode respectively. Idischarge and I′discharge are the currents that go through the single cell and the other cells in the discharge mode respectively .

To simplify the analysis, the pack voltage is assumed to be n×V, and the voltage of cells i and j is V. Thus, these two equations can be expressed as follows:

The total energy loss is as follows:

Taking Eqs. (19) and (20) into Eq. (21):

If Eq. (22) can be expressed as

Evidently, the total energy loss is determined by two parts for a specific bi-directional equalization system: the first part is the total equalization time, and the second part is the extreme value of the total equalization for all the discharge cells. Whether take a maximum or minimum depends on the sign of V⋅{[Idisch-(n+1)I′disch]−[(n+1)I′cha-Icha]}. Moreover, when the number of cells for charging and discharging increases, energy loss increases. Therefore, reducing the equalization time and steps is helpful to lower the system energy loss.

 

VI. CONCLUSION

In lithium-ion battery applications, equalization time increases along with an increase in cell capacity. A PSO-optimized equalization algorithm for bidirectional equalization topologies was proposed in this study to decrease time and energy loss during equalization. The proposed algorithm took the pack SoC distribution as input to seek the global optimal solution with fitness function and limitations. In addition, the global solution ensured that the equalization time was short with excellent SoC consistency. To verify the effectiveness of the proposed algorithm, a pack with 12 cells was tested. The experimental results showed that the available pack capacity was enhanced by 13.2%. Comparative experiments were also taken between the traditional methods and the proposed PSO algorithm. The proposed algorithm was superior to traditional methods in terms of equalization time, final SoC consistency, and energy loss.

Further studies will focus on the influence of cell SoC variation. Moreover, some improvements will be applied to the PSO algorithm.

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