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Article

Efficiency Comparison of Electric Wheel Loader Powertrains with Dual Motor Input in Distributed Driving Modes

1
Department of Automobile Engineering, Jiangsu Vocational College of Electronics and Information, Huai’an 223003, China
2
Department of Mechanical & Manufacturing, Faculty of Engineering, Universiti Putra Malaysia, Seri Kembangan 43400, Selangor, Malaysia
*
Author to whom correspondence should be addressed.
World Electr. Veh. J. 2023, 14(10), 298; https://doi.org/10.3390/wevj14100298
Submission received: 31 July 2023 / Revised: 12 September 2023 / Accepted: 19 October 2023 / Published: 20 October 2023

Abstract

:
The presented research on electric wheel loaders lacks a detailed analysis of drive energy-saving during the shovel preparation phase, which is characterized by a high probability of loader tire skidding. To address this issue, this study examines the energy consumption efficiency of a two-motor distributed drive wheel loader under three drive modes including front motor drive, rear motor drive, and dual-motor drive, taking into account the change in the drive force demand caused by the bucket landing. This study finds that the motor energy conversion efficiency is the greatest in single-motor drive mode when the bucket does not generate positive pressure with the ground. In dual-motor drive mode, the total torque overcome is greater, but the motor energy conversion efficiency is the greatest when the bucket generates the greatest positive pressure with the ground. This study suggests that in future designs of electric loaders, two motors can be used to distribute the drive, but the front and rear motors should be designed to participate in the drive with a certain torque distribution ratio at different speeds and resistance to avoid the phenomenon of the bucket pressing the ground too much.

1. Introduction

A wheel loader (WL) is an off-road vehicle driven by an engine or electric motors and is widely used in specific locations with a small operating area such as construction sites, coal mines, and ports. With the end of the COVID-19 epidemic, the world economy is recovering rapidly. From a developmental perspective, the demand for WLs in various countries has gradually increased. According to a research report [1], the size and share of the global WL market is predicted to grow to around USD 19,568.7 million by the end of the next five years. Currently, engine-driven loaders still dominate the market, but the environmental pollution caused by economic production activities cannot be underestimated [2,3]. With the increased severity in environmental protection requirements [4], the trend towards lower cost and higher efficiency batteries [5,6,7] and the development of motor drive control [8,9,10] electric wheel loaders (EWLs) will certainly become the mainstream of the future market [11]. EWLs can reduce noise and exhaust emissions, and the low-speed, high-torque mechanical characteristics of the motor are better suited to the low speeds at which WLs often operate [12].
The drive structure of an EWL can be referred to as the structure of an electric road vehicle [13]. As shown in Figure 1, a pure electric drive vehicle structure is mainly powered by the power battery, and it is driven by the electric motor through a variable speed gearbox, differential drive axles, and half shafts to realize the transmission of torque and speed to the drive wheels. As far as the arrangement of motor drives is concerned, the types that are being researched include single-motor drive [14], simultaneous drive with dual motors [15], dual-motor drive with all 4 wheels [16], hub motor drive [17], etc. In terms of applications, single-motor drives with fixed reduction ratios are the most widely used in electric vehicles due to the simplicity and ease of control of the single-motor drive system. This reduces the production costs of electric vehicles and facilitates maintenance [18]. In order to improve the efficiency and performance of electric drives, researchers have made improvements to the drive structure of single-motor drives, such as utilizing automated manual transmission (AMT) [19,20], two-speed automatic transmission (AT) [21,22], continuously variable transmission (CVT), and dual-clutch transmission (DCT) [23,24,25]. However, the use of a single motor does not allow the vehicle to operate in the economic speed zone of the motor for long periods of time, which is detrimental to increasing the range of the vehicle. Therefore, research into multi-motor drive structures is also considered necessary to address this issue. Wang, Y. et al. [26] presented a new two-motor hybrid drive system with two power sources, as shown in Figure 2. The system achieves torque–speed coupling between the two power sources, greatly increasing the high-performance operating range of the motors. At the same time, a CVT is implemented to effectively increase the driving range. Holdstock, T. et al. [27] designed a two-motor, four-speed electric drive architecture, as shown in Figure 3. This drivetrain architecture improves the flexibility of the motor operating points. The results of the study show that under the ECE-15 operating conditions test, the drive efficiency of the single-row planetary gear structure increased by 9.1%, and the energy recovery efficiency increased by 9.7%. Additionally, the drive efficiency of the double planetary gear structure increased by 10.9%, and the energy recovery efficiency increased by 11.1%. Mantriota, G. et al. [28] proposed a scheme to drive the vehicle with two smaller motors through a planetary gear mechanism, as shown in Figure 4. The simulation results show that this dual-motor power transmission is usually better than that of a single motor, with an improvement of about 9% in both the drive efficiency and energy recovery efficiency.
Additionally, Xu, S. et al. [29] put forward a multi-mode drive optimization control strategy based on a hierarchical control architecture to investigate the economy and dynamics of an electric vehicle with dual motors in the front axle and a single motor in the rear axle. The test showed a 6.45% reduction in energy consumption. A two-in-one motor drive control strategy is proposed that takes into account air-conditioning usage conditions based on factors such as motor efficiency within the two motors [30], which do not have the same maximum power, and its simulation results show that energy savings of up to 2.2% can be achieved.
The literature discussed above highlights the advantages of using multi-motor drive methods to achieve an optimal power distribution and flexible control strategies, leading to improved dynamics and economy in electric drive vehicles. Similar considerations apply to EWLs, which also need to operate efficiently and dynamically. As a result, improving the drive structure and control strategies of EWLs has emerged as a key research topic in this field. EWL drive systems can be broadly categorized based on the number of motors, namely a single-motor drive system and a multi-motor drive system. A multi-motor drive system can further be classified as either a multi-motor independent drive system or a multi-motor coupled drive system [31]. This study takes the multi-motor independent drive system of an EWL as the research object to compare its energy conversion efficiencies in three drive modes.
The remainder of this paper is organized as follows: Section 2 presents an overview of the powertrain structures and characteristics of EWLs. Section 3 introduces the experiment measurement for a dual-motor distributed drive EWL. Section 4 provides the experimental results, and Section 5 discusses the experimental results. Section 6 concludes the paper.

2. The Structures and Characteristics of EWL

The working process of a WL usually consists of a four-stage cycle consisting of shoveling, delivery, unloading, and returning to the stockpile [32]. For the EWL, the drive motor drives the vehicle during both stages of delivery and returning to the pile, which can be referred to as the running condition, where the drive motors contribute the main energy consumption of the WL. Tests have been conducted on the energy consumption of a dual-motor-driven loader in the running condition [33]. The results indicate that during the running condition, the rolling resistance moment that needs to be overcome by the drive motor is the same, whether it is driven by the front wheels alone or by the rear wheels alone, which depends on the total mass of the WL and the rolling resistance coefficient of the road surface. In the running condition, the EWL can be driven by either a single motor or two motors. Figure 5 shows a single-motor drive powertrain, which has a similar transmission system to an engine drive except for the gearbox. In this case, a conventional diesel-driven loader is retrofitted with an electric motor in place of an engine. The motor’s speed is reduced by a reduction gear to increase the torque, which is then transferred to the front and rear axles, respectively, via a splitter box. In this configuration, the torque T A x _ f generated by the front axle and the torque T A x _ r generated by the rear axle and the motor torque T M o t _ i n have to satisfy Equation (1).
ω A x _ f · T A x _ f + ω A x _ r · T A x _ r = ω m o t _ i n · T m o t _ i n · η T
where ω A x _ f , ω A x _ r , and ω m o t _ i n represent the angular velocity of the front axis, rear axis, and motor, respectively. η T is the transmission efficiency of the gearbox.
The advantage of this structure is that there are fewer drive motors, and the control of the motors is simpler. However, the disadvantage is that the front and rear torques are unevenly distributed, and the simple structure of the transfer case cannot distribute the torque according to the front and rear axle torque requirements. As a result, complex transfer case structures and control algorithms need to be developed to compensate for these deficiencies [34]. Furthermore, due to the high driving forces required for the WL’s running and shoveling conditions, motors that are capable of providing sufficiently high torque and power must be installed.
Figure 5. Powertrain of single-motor full-drive electric wheel loader.
Figure 5. Powertrain of single-motor full-drive electric wheel loader.
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In order to solve the problem of the insufficient driving power of a single motor, dual-motor drives are widely utilized in wheel loaders [35,36]. A type of dual-motor drive structure of an EWL is shown in Figure 6. The structure of the dual-motor drive for the loader involves the front and rear motors transmitting power to their respective drive axles via a reduction mechanism. Both motors are arranged longitudinally, and their output shafts are connected with a coupling, ensuring that the actual output speed of both motors remains the same at all times when driving. This allows for a power transfer between motors when one is underpowered, resulting in a combined drive. The disadvantage of this construction, however, is that the loader is prone to generating parasitic power. The relevant parameters for each motor and the corresponding drive wheel should satisfy Equation (2) in order to avoid the generation of parasitic power.
ω F _ m o t · r F _ w h e · i R = ω R _ m o t · r R _ w h e · i F
where ω F _ m o t represents the angular speed of the front motor rotor, ω R _ m o t represents the angular speed of the front motor rotor, r F _ w h e indicates the radius of the front wheel of the EWL, r R _ w h e indicates the radius of the rear wheel of the EWL, i F is the total transmission ratio from the front motor to the front wheel drive train, and i R is the total transmission ratio from the front motor to the rear wheel drive train.
Figure 7 illustrates a distributed drive configuration where one motor drives the front wheels and the other motor drives the rear wheels. The advantage of this drive configuration is that the motors can be configured according to the size and structure of the wheel loader, and each motor can be controlled by its corresponding motor controller for the output speed and torque. Additionally, this configuration allows the motors to operate at different speeds simultaneously, reducing the parasitic power generated by inconsistent front and rear wheel speeds found in the former two configurations [37]. This structure also allows for separate front and rear motor drives. Under running conditions, the rolling resistance that needs to be overcome when the front and rear motors are driven at a constant speed can be expressed by Equations (3) and (4), respectively.
T F _ m o t = G f · s i n α + c o s α + C D · A · u w l 2 21.15 · r F _ w h e η F _ T · i F
T R _ m o t = G f · s i n α + c o s α + C D · A · u w l 2 21.15 · r R _ w h e η R _ T · i R
where T F _ m o t is the torque of the front motor, T R _ m o t is the torque of the rear motor, G is the total mass of the EWL, f is the coefficient of rolling resistance between the tire and the road surface, α is the angle of the slope of the road on which the EWL is travelling, C D is the coefficient of air resistance of the EWL, A is the windward area of the EWL, u w l is the travel speed of the EWL, η F _ T is the total transmission efficiency of the front motor to the front wheel drive train, and η R _ T is the total transmission efficiency of the rear motor to the rear wheel drive train.
When the loader is working at the first stage [32], the operator uses the maneuvering mechanism to drop the bucket to the ground in preparation for shoveling. However, the operator may not be able to accurately sense the position of the bucket, which can cause the bucket to drop too much, leading to the lifting of the front wheels. This, in turn, can result in insufficient pressure on the ground and reduced traction. Taking into account this driving characteristic of the loader, this study utilizes the EWL configuration shown in Figure 7 for testing. This study conducts bulldozing tests in single front drive, single rear drive, and dual drive modes to investigate which drive mode is the most economical.

3. Methodology

3.1. Experimental Subject

A type of distributed electric wheel loader (DEWL) with a battery voltage of 540 V, as shown in Figure 8, is selected as the test subject in this research. The DEWL is equipped with two electric motors for driving and one electric motor for the work of hydraulic pump. The two driving motors have the same size and parameters of rated power and torque. Numerous parameters influence the energy consumption of electric vehicles during travel [38]. The specific parameters of the EWL are shown in Table 1.

3.2. Hardware and Software for Test

The testing system hardware comprises several components, including the Vehicle Control Unit (VCU), Front Motor Control Unit, Rear Motor Control Unit, Hydraulic Motor Control Unit, Battery Management System, Upper Computer, Data Storage Unit (DTU), and Heat Management Unit. The Upper Computer collects information on the vehicle’s status and sends control information to the VCU to manage the vehicle’s motion. The DTU functions as a storage device that gathers data via the CAN bus. All hardware components communicate via the CAN bus, which has a baud rate of 250 kb/s and uses two terminal resistances of 120 Ohms. The network topology of the hardware system is depicted in Figure 9.
During the test, the control programs for the EWL’s driving and shoveling functions are compiled using Matlab/Simulink. The VCU controls the drive motors, which receive a frequency and current output corresponding to the accelerator pedal and gear signals, thereby driving the EWL. The VCU’s application layer software is also developed using Matlab/Simulink. This software can set three different drive modes for the front motor, rear motor, and dual motor, as well as adjust the target speed of the front and rear motors.

3.3. The Efficiency MAP of Motor

On this EWL, two PMSMs are utilized as the drive motors. The efficiency of this type of motor under different torques at speeds of 500 rpm, 1000 rpm, 1500 rpm, 2000 rpm, 2500 rmp, and 3000 rpm, with a working voltage of 540 V, are tested and recorded in Table 2.
A work efficiency MAP of the motor can be obtained by the data in Table 2. In the following research, the map is important for the development and optimization of the control algorithm. We draw from the working efficiency MAP that the high efficiency work range is broad.

3.4. Experiment Design

In order to ensure the stability of the test data, an experiment was designed for the loader to travel on a horizontal concrete road, and a motor speed of 600 rpm was selected as the target speed. The attitude of the bucket (height and bucket angle) was changed to simulate a realistic scenario of the loader inserting itself into the stockpile before digging the material. Specifically, in the test of the loader’s bulldozing, it was driven forward and backward three times in each of the five states where the front wheels were slightly on the ground, slightly lifted, lifted more, slightly off the ground, and lifted more off the ground. The motor was allowed to operate in three modes: independent front drive, which can be called F-drive; independent rear drive, which can be called R-drive; and dual drive, which can be called D-drive. To facilitate identification, L1, L2, L3, L4, and L5 were used to represent the five position states of the front wheels of the loader, as shown in Table 3.
When calculating the collected motor data during testing, the following method should be used: when the loader is moving forward, if the front motor is in the driving state, the torque and current of the front motor are both positive; if the rear motor is in the driving state, the torque of the rear motor is negative, and the current is positive. When the loader is reversing, if the front motor is in the driving state, the torque of the front motor is negative, and the current is positive; if the rear motor is in the driving state, the torque of the rear motor is positive, and the current is positive. In any case, when the current of the motor is positive, it means the motor is working externally, while a negative current indicates that the motor is generating power by being dragged.
The energy consumption of the driving motor is calculated using Equation (5).
E i n p u t = j k U i · I i · d t
where j represents the starting time for calculating the energy consumption during the motor operation, and k represents the ending time.
The power work generated by the motor to the transmission system can be expressed by Equation (6).
E o u t p u t = j k T _ m o t i · n _ m o t i 9550 · d t
In practical testing, the measured values of the current, voltage, torque, and speed are not directly represented by functions, and the data collected are discrete points. Therefore, the calculation of the input work cannot be integrated and can only be approximated using Equation (7).
E i n p u t =   ( t k t j ) · P ¯ i n p u t = ( t k t j ) · j k U i · I i k j + 1
Similarly, the output work is approximated by Equation (8).
E o u t p u t =   ( t k t j ) · P ¯ o u t p u t = ( t k t j ) · m n T _ m o t i · n _ m o t i 9550   ( k j + 1 )

4. Experimental Results

The data collected from the tests conducted in the five states from L1 to L5 were collated, and the curves can be classified by the torque–speed and power curves. The tests of F-drive, R-drive, and D-drive can be fully realized in the test conditions of L1, L2, and L3. In the L4 condition, the wheel loader cannot be tested with the F-drive mode, but some of the available data can still be obtained with the D-drive mode. In the L5 state, only the D-drive mode tests can be carried out. The F-drive mode cannot be carried out in L4 and L5 because the ground does not provide sufficient adhesion. In the curves shown in Figure 9, Figure 10, Figure 11, Figure 12, Figure 13, Figure 14 and Figure 15, FMCU_Sped indicates the front motor speed in rpm; RMCU_Sped indicates the rear motor speed in rpm; FMCU_Tor indicates the front motor torque in Nm; and RMCU_Tor indicates the rear motor torque in Nm. The power curves plotted were calculated from the measured motor current, voltage, speed, and other parameters. RMCU_P1 represents the output power of the rear motor conducting external work, and the instantaneous output power is calculated using Equation (9); RMCU_P2 represents the input power of the motor after the current drive, and the instantaneous input power is calculated using Equation (10).
P 1 = T m · n 9550
P 2 = U M · I m 1000

4.1. Torque–Speed Curves

Figure 11 shows the curves of motor speed and torque obtained from the F-drive mode tests conducted in the L1, L2, and L3 conditions. The graph indicates a gradual increase in the front motor torque as the ground pressure on the front wheels decreases. Similarly, Figure 12 presents the curves of motor speed and torque obtained from the R-drive mode tests conducted in all five conditions from L1 to L5, and Figure 13 displays the curves of motor speed and torque in the D-drive mode tests conducted in four states from L1 to L4. It should be noted that in state L1, when the motor speed is stable during the forward process, the torque of the front motor is negative, indicating that the front motor is generating electricity while being back-towed. In states L2 to L4, both the front and rear motors are generally performing external work during the speed stabilization phase.
Figure 11. The torque and speed curves of motors in L1~L3 F-drive cases.
Figure 11. The torque and speed curves of motors in L1~L3 F-drive cases.
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Figure 12. The torque and speed curves of motors in L1~L5 R-drive cases.
Figure 12. The torque and speed curves of motors in L1~L5 R-drive cases.
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Figure 13. The torque and speed curves of motors in L1~L4 D-drive cases.
Figure 13. The torque and speed curves of motors in L1~L4 D-drive cases.
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4.2. Power Curves

The curves of the input power P 2 and the output power P 1 are plotted in the same graph when the EWL is driven by one motor alone. Figure 14 shows the motor power curves when the EWL is driven by the front motor alone, and Figure 15 shows the motor curves when the EWL is driven by the rear motor alone. When the loader is driven by two motors at the same time, only the output power P 1 of both motors is plotted in the same graph, as shown in Figure 16.
As can be seen in Figure 14, the output power of the front motor is increasing as the front wheels are gradually lifted, and the tendency for the rear motor output to increase with the degree of lifting of the front wheels is even more evident. The similar rule of the motor output power can also be observed in Figure 15. In the L1 condition, the motor power in the smooth phase belonging to the target speed range is essentially less than 20 kW, while in the L2 condition, this power is essentially close to 20 kW, and in the L3 condition, the motor power is larger than 20 kW.
In L4 and L5, the motor power continues to gradually increase and ranges between 20 kW and 40 kW. Figure 16 illustrates a significant fluctuation in the output torque of the motor when both motors are driven simultaneously. At L1, the power of the front motor is negative, and it is consistent with the torque curve, indicating that the rear motor back-tows the front motor to generate power under this operating condition. From L2 to L4, the power of the front motor tends to decrease gradually, while the power of the rear motor increases gradually.
Figure 14. The power curves of motors in L1~L3 F-drive cases.
Figure 14. The power curves of motors in L1~L3 F-drive cases.
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Figure 15. The power curves of motors in L1~L5 R-drive cases.
Figure 15. The power curves of motors in L1~L5 R-drive cases.
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Figure 16. The power curves of motors in L1~L4 D-drive cases.
Figure 16. The power curves of motors in L1~L4 D-drive cases.
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The comparison of Figure 14, Figure 15 and Figure 16 indicates that the motor power fluctuates most sharply in the F-drive mode during the motor acceleration phase, and the fluctuation is more prominent in the rear motor than in the front motor. These factors contribute to the excessive energy consumption in the electric loader operation and need to be avoided.

5. Discussion

Due to the target speed control mode being selected in the test, the acceleration and deceleration phrases are not considered in this research. The data for the analysis are taken from Figure 11, Figure 12, Figure 13, Figure 14, Figure 15 and Figure 16 when the motors reach the target speed. The torque of the motor, the output power P 1 of the motor, and the input power P 2 of the motor in the data segment, showing that the torques’ variations are relatively smooth, were selected for the analysis. In the following tables, T ¯ R _ M o t represents the mean value of torque generated by the rear motor, P ¯ 1 _ R represents the mean value of output power of the rear motor, and P ¯ 2 _ R represents the mean value of input power of the rear motor, while η R _ M o t represents the energy conversion efficiency of the rear motor in the corresponding data segment. Similarly, T ¯ F _ M o t , P ¯ 1 _ F , P ¯ 2 _ F , and η F _ M o t refer to the average torque, the output power, the input power, and the energy conversion efficiency of the front motor, respectively. T ¯ S u m indicates the sum average torque of the front and the rear motors. The energy conversion efficiency of the motor can be calculated using Formula (11).
η P o _ M o t = P ¯ 1 _ P o P ¯ 2 _ P o × 100 %
where P o in the subscript indicates the position of either the front motor by F or the rear motor by R.
The related data calculated in different cases when the EWL was driven by the front motor are listed in Table 4. The maximum motor efficiency is 52.3% in a forward state and 54.39% in a backward state. Though the F-mode operations have not been realized in the L4 and L5 cases, the data in the three groups of L1, L2, and L3 from Table 4 still illustrate the same pattern of change, as drawn from Table 5.
The related data calculated in different cases when the EWL was driven by the rear motor are listed in Table 5. They show that the energy conversion efficiency of the motor reaches up to 85.43% during the first forward-moving period in the L1 case and the top efficiency is 86.02% during the forward-moving periods in cases L1 to L5. The minimum energy conversion efficiency of the motor is 51.87% in the forward-moving periods, while the lowest is 52.74% in the backward-moving periods. Of all the values of the average torque, the positive values occur in the forward operations and the negative values occur in the backward operations. From L1 to L5, the absolute values of the average torque, average input power, and average output power increase consistently in general, while the opposite is true for the energy conversion efficiency of the motors.
The related data calculated in different cases when the EWL was driven by the two motors are listed in Table 6. The necessary parameters of the D-drive mode are the average torque of the motors, the overall energy conversion efficiency of the motors, and the sum torque of the two motors. In the data processing, the sum of the torques of the motors are converted into positive values for the depiction of the curves. The total efficiency of the twin motors is calculated using Equation (12).
η D _ m o t = j k T F _ i · n F _ i + j k T R _ i · n R _ i j k U F _ i · I F _ i + j k U R _ i · I R _ i × 9.55 × 100 %
Figure 17 displays the average values of the motor torque, input power, output power, and efficiency in F-drive mode from condition L1 to condition L3. Figure 18 presents the average values of the motor torque, input power, output power, and efficiency in D-drive mode from condition L1 to condition L5.
The orange curves represent the change in the motor output power, the blue curves show the change in the motor input power, the red curves show the change in the average torque, and the green curves show the change in the motor efficiency. The diagram includes eight curves in both Figure 17 and Figure 18, in which the solid lines indicate the curves for each parameter when the EWL is moving forward, while the dashed lines indicate the curves for each parameter when the EWL is moving backward.
As shown in Figure 17, the average torque, average input power, and average output power of the motor in the forward state of the EWL are the smallest in the L1 condition and the largest in the L3 condition. It can be drawn by the change in torque that the resistance rises as the vertical force between the bucket and the ground increases. The energy conversion efficiency of the motor is 50.80% in the L1 condition, 43.75% in the L2 condition, and 40.39% in the L3 condition, indicating that the energy conversion efficiency of the motor decreases as the front wheels of the loader are lifted more. This pattern is consistent for both the forward and backward movements of the EWL.
Figure 17. Curves of motor power, motor efficiency, and motor torque in F-drive mode.
Figure 17. Curves of motor power, motor efficiency, and motor torque in F-drive mode.
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As shown in Figure 18, the average torque, average input power, and average output power of the motor in the forward state of the EWL are the smallest in the L1 condition and the largest in the L5 condition, and all show a gradual increasing trend. The energy conversion efficiency of the motor is 82.62% in the L1 condition, 64.96% in the L2 condition, 58.40% in the L3 condition, 56.03% in the L4 condition, and 52.99% in the L5 condition, indicating a same pattern of change as that in the F-drive mode. The difference is that the motor efficiency is higher in all operating conditions corresponding to the R-drive mode compared to the F-drive mode.
Figure 18. Curves of motor power, motor efficiency, and motor torque in R-drive mode.
Figure 18. Curves of motor power, motor efficiency, and motor torque in R-drive mode.
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Figure 19 shows the curve of the variation in the average value of the total motor torque and overall motor energy conversion efficiency from the L1 to L4 operating conditions in the D-drive mode. Shown in purple is the curve of the change in the sum of the torque of the two motors, and shown in green is the curve of the change in the overall motor efficiency.
Figure 19 indicates that in the D-drive mode, the sum of the motor torques tends to rise with the increasing bucket ground pressure, whether the EWL is driving forward or backward. When driving forward, the total torque is 174.59 Nm at the L1 condition and 577.7 Nm at the L4 condition, while the energy conversion efficiency is 40.05% at the L1 condition and 82.67% at the L4 condition, which also show an increasing trend. The same pattern of change is observed in reverse. Compared to the F-drive and D-drive modes, this shows that the overall efficiency achieved with the dual-motor drive is higher when the EWL requires more torque.
Figure 19. Curves of total motor torque in D-drive mode.
Figure 19. Curves of total motor torque in D-drive mode.
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Based on the analysis above, we can derive a trend table illustrating the changes in the motor torque and motor energy usage efficiency as the height of the front wheel lifting increases, as shown in Table 7.
Based on the discussion above, a proposal for the motor energy improvement of dual-motor drive EWLs is put forward below, which may provide researchers and manufactures with a potential solution.
For a two-motor drive EWL, the front wheel can be driven by a smaller motor, while the rear wheel can be driven by a lager one in torque and power. In the running state of shoveling work, the rear motor can be the primary drive motor. When the bucket is lowered towards the ground for the preparation of the shoveling material, this will cause an increase in the pressure on the rear wheel. If the drive force of the rear motor is not enough, the front motor will be activated by the MCU to generate enough toque together with the rear motor. However, this should have a limited condition, that is, the rear motor should work on the high efficiency range as much as possible according to the energy efficiency MAPs of the two motors derived by the tests. In addition, elevating the front wheels to a certain extent can induce tire slippage. When the grip between the front wheels and the ground diminishes, a portion of the energy from the driving force is diverted into parasitic power, an undesirable occurrence. This can be identified by monitoring whether the front wheel rotation speed suddenly exceeds that of the rear wheels. Detecting the tire slip trigger control of the hydraulic circuit governing the bucket or boom allows for adjustments to be made to the bucket’s position and, consequently, allows for traction to be restored between the front wheels and the ground. Employing these methods can effectively reduce energy wastage during loader operations. It is worth noting that various other factors, including the road conditions, terrain, temperature, weather, material properties, and driver behavior, also play roles. These aspects can be considered in future research endeavors aimed at achieving intelligent assisted driving for loaders.

6. Conclusions

This study takes a two-motor distributed drive loader as the research object and designs the energy consumption efficiency of the motors under different drive modes while considering the change in the drive force demand caused by the bucket landing during the pre-shoveling process of the loader, without considering the mechanical loss of the transmission system and the heat loss of the motor. The following conclusions can be drawn:
  • In the F-drive mode, R-drive mode, and D-drive mode, as the bucket is lowered, the torque overcome by the front motor, the rear motor, and both of the motors, respectively, gradually increases, regardless of whether the loader is moving in a forward or backward motion, and the total energy conversion efficiency of the motors gradually decreases.
  • In the single-motor drive mode, the motor energy conversion efficiency is the greatest when the bucket does not generate positive pressure with the ground. In these cases, the maximum efficiency is 84.41% when the EWL is moving forward and 87.79% in reverse under the R-drive mode. The minimum efficiency is 50.80% when the EWL is moving forward and 53.35% when it is moving backward under the F-drive condition.
  • In the single-motor drive mode, the motor needs to output more torque when the loader is moving forward compared to when reversing. It also shows that the efficiencies in forward motion are lower than that in reverse, which is also directly reflected in conclusion ii.
  • In the D-drive mode, the total torques overcome in each operating condition (L1–L4) are greater than those with single-motor drive. However, the motor energy conversion efficiency reaches the greatest value in the dual drive mode when the bucket generates the greatest positive pressure with the ground, which is 82.67% when the EWL is moving forward and 63.15% when it is moving in reverse.
The fact that the front wheels are likely to be lifted in the running condition and the rear wheels are likely to be lifted in the shoveling condition results in the inappropriateness of a single-motor drive in an electric loader. In future designs of electric loaders, two motors can be used to distribute the drive. The method of multi-energy based on intelligent management can be utilized [39]. However, the front and rear motors should be designed to participate in the drive with a certain torque distribution ratio at different speeds and resistances, taking into account the characteristics of the loader’s work. It is also necessary to avoid the phenomenon of the bucket pressing the ground too much, resulting in the front motor being unable to participate in the drive and the rear motor not having enough drive. In addition, the influence of all important factors in practical driving should be taken into account to make the research results more reliable and convincing.

Author Contributions

Conceptualization, X.F. and Y.H.; methodology, X.F. and S.V.W.; investigation, X.F. and M.A.A.; resources, Y.H.; writing—original draft preparation, X.F. and Y.H.; writing—review and editing, X.F. and S.V.W.; visualization and English editon, M.A.A.; supervision, S.V.W.; funding acquisition, X.F. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the Sudian Yingcai Engineering Project from the Jiangsu Vocational College of Electronics and Information, the Huai’an City Science and Technology project (Grant No. HABL202127), and the Research Youth Fund Program Project of the Jiangsu Vocational College of Electronics and Information (Grant No. JSEIYQ2020004).

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

AMTAutomated Manual Transmission
ATAutomatic Transmission
CVTContinuously Variable Transmission
DCTDual-Clutch Transmission
DEWLDistributed Electric Wheel Loader
DTUData Storage Unit
EWLElectric Wheel Loader
VCUVehicle Control Unit

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Figure 1. The basic structure of a pure electric vehicle.
Figure 1. The basic structure of a pure electric vehicle.
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Figure 2. Overall structure of a dual-motor hybrid drive system.
Figure 2. Overall structure of a dual-motor hybrid drive system.
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Figure 3. The schematic of the four-speed transmission.
Figure 3. The schematic of the four-speed transmission.
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Figure 4. Planetary gears can adopt a single-planet set or a double-planet set.
Figure 4. Planetary gears can adopt a single-planet set or a double-planet set.
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Figure 6. Powertrain of electric wheel loader with dual motors connected by a coupling.
Figure 6. Powertrain of electric wheel loader with dual motors connected by a coupling.
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Figure 7. Powertrain of distributed drive electric wheel loader with dual motors.
Figure 7. Powertrain of distributed drive electric wheel loader with dual motors.
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Figure 8. The electric wheel loader for test.
Figure 8. The electric wheel loader for test.
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Figure 9. The network topology of the hardware system.
Figure 9. The network topology of the hardware system.
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Figure 10. Motor drive efficiency MAP.
Figure 10. Motor drive efficiency MAP.
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Table 1. Parameters of the testing EWL.
Table 1. Parameters of the testing EWL.
ParametersValueUnit
Rated load5300kg
Volume of bucket3.2m3
Mass of the vehicle17,000 ± 300kg
Wheelbase3300mm
Axle track2250mm
Maximum shoveling force175 ± 5kN
Maximum traction force165 ± 5kN
Type of tires23.5-25-16PR/
Tire diameter1610mm
Overall dimensions (L × W× H)8655 × 2996 × 3515mm
Resultant gear ratio22.85/
Table 2. Motor efficiency distribution at different torques and speeds in drive mode.
Table 2. Motor efficiency distribution at different torques and speeds in drive mode.
SpeedTorqueEfficiencySpeedTorqueEfficiencySpeedTorqueEfficiency
50044.471.741000643.294.132000487.293.25
50098.481.871000754.894.432000543.693.87
500202.887.161000861.694.32200059493.84
50031289.09100096694.192000645.693.69
50042089.941000107494.352000693.693.54
500526.890.431000117494.282000740.493.57
500638.490.6310001270.894.182000784.893.5
50074490.6510001371.694.122000830.493.41
500850.890.721000147094.162000873.693.51
500957.690.7610001562.493.862000915.693.29
5001058.490.4810001659.6093.762000952.892.78
5001156.890.510001732.893.69250012080.76
5001256.490.3310001808.493.522500178.886.55
5001354.890.1910001880.493.332500241.289.56
5001448.489.9315004274.362500297.690.04
5001543.289.71150098.486.212500355.291.11
5001636.889.441500214.8922500412.892.15
5001729.289.21150033093.78250046292.04
5001821.688.931500441.694.152500512.492.29
5001909.288.621500548.494.522500565.292.3
5001995.688.281500656.494.682500613.292.82
500208887.961500759.694.762500658.892.53
5002173.287.531500859.294.582500704.492.69
5002260.287.191500951.694.52500754.892.41
5002348.486.9415001039.294.3530003653.87
5002433.686.4815001120.894.1130009673.99
5002522.486.0415001198.893.72300015681.82
5002619.685.4615001250.493.343000214.885.89
5002732.484.7220002050.863000273.687.7
5002878.283.76200079.278.33000328.889.02
10004276.492000140.486.493000379.289.99
100098.487.952000200.489.733000433.290.48
1000201.690.282000261.691.823000483.691.1
1000315.693.082000319.292.22300052890.9
1000423.693.572000375.692.643000574.891.01
1000532.893.892000433.293.113000608.491.36
Table 3. The mark of test for five levels of EWL.
Table 3. The mark of test for five levels of EWL.
StatusDescription of Shoveling BucketDescription of Front Wheels
L1The tips of the bucket teeth are parallel to the ground, and the ground has no force on the bucket in the vertical direction.The front wheels have a full gravitational effect on the ground.
L2The tips of the bucket teeth are parallel to the ground, and the ground has a low force on the bucket in the vertical direction.The gravitational effect of the front wheels on the ground is reduced.
L3The tips of the bucket teeth are parallel to the ground, and the ground has a large force on the bucket in the vertical direction.The gravitational effect of the front wheels on the ground is reduced more.
L4The bucket rotates, and the tip of the tooth makes contact with the ground and forms a small angle, making the vertical force larger.The front wheels have almost no vertical force on the ground.
L5The bucket rotates, and the tip of the tooth makes contact with the ground and forms a larger angle and a larger vertical force.The front wheels are lifted 2 cm–3 cm off the ground.
Table 4. Data calculated in F-drive mode from L1 to L3.
Table 4. Data calculated in F-drive mode from L1 to L3.
CaseEWL StateData Segment T ¯ F _ M o t (N·m) P ¯ 1 _ F (kW) P ¯ 2 _ F (kW) η F _ M o t (%)
L1Forward 11000–2500156.16 9.79 19.44 50.39
Forward 28200–10,000146.51 9.20 17.58 52.30
Forward 315,300–17,000146.61 9.21 18.54 49.70
Backward 14600–6100−153.90 9.68 19.24 50.30
Backward 212,000–13,500−153.48 9.64 17.73 54.39
Backward 320,600–22,200−148.99 9.36 16.90 55.36
L2Forward 11500–3200292.80 18.38 40.84 45.00
Forward 27800–9400299.98 18.83 44.12 42.67
Forward 313,600–15,400295.01 18.52 42.52 43.56
Backward 14700–6400−282.40 17.75 39.91 44.49
Backward 210,800–12,500−276.19 17.37 38.85 44.71
Backward 317,000–18,600−279.36 17.56 38.24 45.91
L3Forward 11400–3300414.7526.0464.2840.52
Forward 27500–9400416.1426.0965.2639.98
Forward 313,300–15,200421.6026.4264.9540.67
Backward 14300–6300−368.4623.1256.3441.03
Backward 210,500–12,300−360.3822.6654.4941.58
Backward 316,100–18,100−371.3323.2954.2742.92
Table 5. Data calculated in R-drive mode from L1 to L5.
Table 5. Data calculated in R-drive mode from L1 to L5.
CaseEWL StateData Segment T ¯ R _ M o t (N·m) P ¯ 1 _ R (kW) P ¯ 2 _ R (kW) η R _ M o t (%)
L1Forward 11100–2600−152.169.5611.1985.43
Forward 27800–9200−151.569.5211.0486.28
Forward 313,800–15,000−156.289.8112.8976.15
Backward 14700–6200147.389.2410.5287.86
Backward 210,700–12,200158.349.9012.2280.97
Backward 316,500–17,800152.059.5411.0986.02
L2Forward 11000–2800−306.46 19.23 28.21 68.16
Forward 27100–9000−300.55 18.90 29.95 63.10
Forward 313,200–15,000−310.22 19.48 30.63 63.60
Backward 14200–6000277.34 17.40 25.82 67.38
Backward 210,200–11,900277.27 17.39 24.54 70.87
Backward 316,300–18,100274.79 17.24 26.02 66.26
L3Forward 122,500–24,000−420.42 26.40 45.41 58.14
Forward 228,400–30,100−422.09 26.50 44.19 59.97
Forward 334,400–36,400−414.35 26.01 45.55 57.11
Backward 125,300–27,200356.72 22.39 38.58 58.04
Backward 231,400–33,400369.60 23.18 37.92 61.15
Backward 337,600–39,100360.60 22.62 38.45 58.84
L4Forward 12000–3800−532.1533.4259.3256.34
Forward 27900–9700−538.1733.8262.2754.32
Forward 314,100–16,100−541.7734.0259.2457.42
Backward 15100–6800516.1932.3658.3555.46
Backward 210,900–12,900495.6531.1055.6555.89
Backward 317,400–19,200493.4330.9456.1055.16
L5Forward 11300–2800−609.99 38.36 73.96 51.87
Forward 28200–9800−601.06 37.78 69.37 54.46
Forward 315,000–16,400−606.23 38.10 72.37 52.65
Backward 14400–6300614.13 38.54 72.75 52.98
Backward 212,000–13,800637.45 39.96 75.75 52.74
Backward 318,300–19,300565.92 35.50 65.51 54.20
Table 6. Data calculated in D-drive mode from L1 to L4.
Table 6. Data calculated in D-drive mode from L1 to L4.
CaseEWL StateData Segment T ¯ F _ M o t (N·m) T ¯ R _ M o t (N·m) η D _ M o t (%) T ¯ S u m
L1Forward 1900–2200−86.47−263.3839.65−176.91
Forward 27300–8800−88.62−264.0339.98−175.41
Forward 318,000–19,400−78.95−250.4040.51−171.45
Backward 13800–5200168.16355.7546.55187.58
Backward 214,500–15,800133.80315.6241.56181.82
Backward 322,000–23,300130.84318.2045.33187.36
L2Forward 12200–3800254.34−171.9648.45−426.29
Forward 28100–9800261.51−161.8845.30−423.40
Forward 314,200–15,900262.02−168.0549.06−430.06
Backward 15300–6900−160.88214.0362.05374.91
Backward 211,200–13,000−151.57212.0654.41363.64
Backward 317,200–18,800−158.35213.7158.64372.06
L3Forward 11900–3400262.94 −236.19 59.11−499.13
Forward 27800–9300260.31 −226.60 69.46−486.91
Forward 313,800–15,500255.71 −239.74 58.84−495.46
Backward 14700–6400−265.18 184.29 58.71449.47
Backward 210,800–12,400−266.79 182.84 58.58449.62
Backward 316,800–18,400−267.66 185.81 58.45453.48
L4Forward 1900–2700102.52−496.0469.90−598.56
Forward 26400–8000104.28−471.6456.69−575.92
Forward 312,100–13,900113.75−444.8762.86−558.62
Backward 13900–5200−210.33316.9477.62527.26
Backward 29400–11,200−203.36313.2881.47516.64
Backward 315,200–17,300−215.36288.3488.91503.70
Table 7. The changes of motor torque and efficiency when the front wheel is lifted higher.
Table 7. The changes of motor torque and efficiency when the front wheel is lifted higher.
Drive ModeTorqueMotor EfficiencyState of EWL
F-driveForward
Backward
R-driveForward
Backward
D-driveForward
Backward
Note: ↑ shows the trend of the increase, ↓ symbolizes the trend of the decrease.
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Fei, X.; Han, Y.; Wong, S.V.; Azman, M.A. Efficiency Comparison of Electric Wheel Loader Powertrains with Dual Motor Input in Distributed Driving Modes. World Electr. Veh. J. 2023, 14, 298. https://doi.org/10.3390/wevj14100298

AMA Style

Fei X, Han Y, Wong SV, Azman MA. Efficiency Comparison of Electric Wheel Loader Powertrains with Dual Motor Input in Distributed Driving Modes. World Electric Vehicle Journal. 2023; 14(10):298. https://doi.org/10.3390/wevj14100298

Chicago/Turabian Style

Fei, Xiaotao, Yunwu Han, Shaw Voon Wong, and Muhammad Amin Azman. 2023. "Efficiency Comparison of Electric Wheel Loader Powertrains with Dual Motor Input in Distributed Driving Modes" World Electric Vehicle Journal 14, no. 10: 298. https://doi.org/10.3390/wevj14100298

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