1. Introduction
Against the background of the depletion of petroleum resources and the deterioration of the global security environment for petroleum supplies [
1], the automotive industry’s oil consumption has reached 30% of total domestic oil consumption in China, which has caused enormous energy pressure. At the same time, such a huge oil consumption in the automobile industry has also brought serious environmental pollution problems, such as carbon dioxide emissions, nitrogen oxide emissions, and so on, and the urgency of pollution prevention and control has become increasingly prominent [
2]. In order to reduce the energy consumption of the automobile industry and solve the increasingly serious pollution of automobile emissions, new energy vehicles, such as electric vehicles, have become the development direction of automobiles in the future, and have received the attention and policy support of various countries [
3].
As one of the core components of pure electric vehicles, the power battery directly determines the performance of electric vehicles. Compared with other types of power batteries, lithium batteries have relatively high energy density, about 3–4 times that of Ni-Cd batteries, as well as a long service life and low self-discharge rate [
4,
5,
6]. Therefore, lithium-ion batteries have become the preferred energy storage device for electric vehicles. However, the current energy density of lithium-ion battery for vehicles still cannot support the long-distance driving of electric vehicles [
7]. In the context of battery technology that cannot be achieved in a short period of time, some technologies for electric vehicle energy management, such as real-time control [
8], predictive cruise control [
9], adaptive intelligent energy management systems [
10], brake energy recovery [
11,
12], supercapacitors [
13], and longitudinal speed optimization [
14], have been used. For example, by applying speed optimization technology during the driving of electric vehicles, the service life of the power battery is improved, thereby reducing the use cost of the electric vehicle user and improving the economy.
In recent years, intelligent transportation systems have received widespread attention [
15]. Under the intelligent transportation system, vehicles can communicate with the traffic signal system, so that the vehicle density of each road is lower than a threshold as much as possible, so as to improve traffic efficiency and alleviate road congestion, thereby achieving energy saving and emission reduction purposes [
16]. Vehicle longitudinal speed optimization is an important part of intelligent driving technology [
17]. On the basis of information communication and control technology, speed optimization enables the vehicle to have the speed control function adapting to the working condition and target, which has great application potential. With the popularity of electric vehicles, the short service life of lithium-ion batteries has been a bottleneck of electric vehicles’ development, and it is also one of the problems that must be solved in the field of electric vehicles. In addition, the price of lithium-ion batteries is high, occupying a significant share of the cost of electric vehicles. If an additional replacement of the power battery is required during the service life of an electric vehicle, the cost of using electric vehicles will be greatly increased. In particular, for electric vehicles, in order to avoid premature aging of the battery and increase the use time of the battery, the economic index should include not only the energy consumption cost, but also the aging cost of the power battery. Therefore, the energy consumption cost and aging cost of power battery will be considered comprehensively in the performance index of speed optimization in this paper.
Along with the use of electric vehicles, many aging processes inevitably occur in power batteries [
18,
19]. Battery aging is mainly determined by factors such as temperature, charge–discharge rate (
) cycle numbers, and depth of discharge (DOD), and a battery life model is established based on these factors [
20,
21,
22]. However, most of the modeling information comes from test results in a highly-controlled laboratory environment, and such battery aging models may not accurately reflect the aging of the vehicle’s power battery [
17,
23]. As the battery experiences an irregular charging and discharging process under actual driving conditions, accurately estimating battery life is a huge challenge. This paper will propose a control-oriented quantified battery life model that adapts to the vehicle even in the highly dynamic driving conditions and its specific details will be put forward in the following sections.
Although single-gear transmission is widely used in electric vehicles, the role of two-gear transmission in improving the performance of electric vehicles is attracting widespread attention and trial application from relevant research teams and electric vehicle manufacturers. For pure electric vehicles, the wide range of speed regulation of the motor determines that direct drive or matching the transmission with two gears can meet the requirements of power and economy. Therefore, related research is mainly focused on the two-speed gearbox. A comparative study of pure electric vehicles with fixed speed ratio reducers and two gearboxes was carried out at the University of Sunderland, UK [
24]. The results show that the two-speed gearbox can effectively improve the motor efficiency and decrease the size and quality of the power transmission system. The Darmstadt University of Technology in Germany proved that the power performance of pure electric vehicles equipped with two-speed gearboxes has been significantly improved [
25]. Aldo Sorniotti of Italy conducted some research on the two-speed gearbox, and analyzed the effect of the two-speed transmission and the single-gear transmission on the economy of pure electric vehicles [
26]. The simulation results and real vehicle experiments show that the two-speed gearbox assembly of pure electric vehicle is better than the single-speed gearbox in economy and power. At the same time, based on the gearbox’s research on shift control, the gearbox can realize unpowered interrupt shifting and improve the power performance of pure electric vehicles [
27].
In order to illustrate the importance of introducing battery life into economic indicators and the role of two-speed gearboxes in improving the economics of electric vehicles, this paper discusses the energy optimization problem of two-speed electric vehicles and supplements the economic indicators of the electric vehicles, that is, comprehensively considers the energy consumption and life of the battery and does not focus on the battery energy consumption only. In addition, in order to quantify the aging of the battery, a battery life model adapted to the vehicle under high dynamic conditions is put forward.
The remainder of the paper is arranged as follows. In
Section 2, a control-oriented battery life model that can be used in actual driving conditions is proposed. In
Section 3, the optimization problem of the economical travel speed is established with four aspects.
Section 4 describes the solving algorithm of the speed optimization problem. The simulation results of different performance indicators and transmission are compared and analyzed and the simulation is verified under the New European Driving Cycle (NEDC) and Urban Dynamometer Driving Schedule (UDDS) cycle conditions in
Section 5. In the end, conclusions are provided in
Section 6.
2. Battery Life Estimation Model
Depending on the battery performance properties being studied, that is, capacity fade or internal resistance increase; battery life type, that is, calendar or cycle life; and different modeling methods, models for estimating battery life are of different types and can generally be divided into electrochemical models [
28], empirical models [
29], and semi-empirical models [
30]. The electrochemical model theoretically explains the actual electrochemical reactions leading to battery aging and predicts the battery life based on this. On the basis of a great deal of experimental data, the mathematical relationship between battery aging and some factors is established, and the empirical model uses this empirical method to establish the battery life model. However, both electrochemical models and empirical models have their drawbacks. Electrochemical models are very complex and theoretical, which makes it difficult to achieve practical engineering applications. Empirical models require a large amount of experimental data and are only applicable under specific experimental conditions. The semi-empirical model combines the theoretical principle of the electrochemical model with the experimental results of the empirical model to obtain the fitting parameters of the model, which combines the advantages of the two methods. Therefore, the semi-empirical model is simpler than the electrochemical model and has wider application conditions than the empirical model.
The aging of batteries in use will affect the performance of batteries. The battery performance degradation is shown by the increase of internal resistance and the decline of battery capacity, which will lead to the reduction of specific energy and specific power of batteries, respectively. According to the previous analysis, the mechanisms of battery aging are complicated. Through long-term experiments and extensive research on various batteries, battery aging depends on various factors, mainly including working temperature, battery charge–discharge rate, cycle numbers, and depth of discharge. However, most of the available information about battery aging is based on the results of cycle life experiments obtained under specific experimental conditions, which can not accurately reflect the high dynamic conditions experienced by the battery in the actual driving process of the vehicle. Therefore, when the battery aging model derived from this kind of experimental data is used to estimate battery life, there may be a big difference between the actual battery aging data and the aging data obtained from the model, which will lead to conservative vehicle design by the electric vehicle manufacturers. For example, battery systems usually have excess performance to ensure the driving range of the electric vehicle, while also increasing the cost of the battery system. In order to accurately estimate the battery life under actual operating conditions, this article refers to a mathematical battery life model for the control-oriented quantifiable battery life [
14].
According to the main factors that affect the decline of battery capacity, a semi-empirical battery life model can be shown as [
22]
where
is the rate of battery capacity loss,
is the pre-exponential factor increasing with the
,
R is the universal gas constant,
T is the absolute temperature,
z is the power law factor, and
Ah is the total Ah-throughput:
The
is the ratio of the current
(in
A) to the nominal charge capacity
(in
Ah):
The above battery life model is suitable for calculating the lithium-ion battery capacity loss under fixed cycle conditions. In order to accurately estimate the battery life for changing charge/discharge current, temperature, and other factors under actual operating conditions, a mathematical model for the control-oriented quantifiable battery life is presented here according to work of [
14]. In electric vehicles, the battery is considered to have run out of life when it reaches 80% of its original capacity. According to the reference, some assumptions are given to derive the formula and the variation tendency of a battery capacity loss during actual operating conditions is given as shown in
Figure 1. The equivalent variable Ah-throughput
, which equals the battery capacity loss
under a fixed condition (constant charge/discharge current and constant temperature) at time
t, is obtained as
The value of
z is 0.5 and the constants
and
are given as [
14]
Over time
, the loss of the battery capacity is shown as
is supposed to approach to 0, and the battery current
is a certain value in the time
. According to Equations (2)–(4), the above equation can be converted to
Using Taylor expansion at
= 0 and ignoring the higher order items of
, the
can be reformulated as
For a process with a very short duration, it can be assumed that the change in the decline rate of the total battery capacity will be small, that is,
; therefore, the battery capacity loss can be written as
Obviously, the percentage of battery capacity loss from
to
under actual operating conditions can be represented as
3. Speed Planning Problem Formulation
The vehicle speed trajectory under urban conditions generally includes three stages of acceleration, cruising, and deceleration. According to the analysis of the factors affecting the aging of the battery, the charge and discharge rate, cycling time, depth of discharge, and temperature will affect the aging of the battery. Different speed trajectories of electric vehicles will lead to different charge or discharge rates of the power battery, which in turn will result in different discharge depths. That is, different speed trajectories correspond to different battery aging amounts, so there is an optimal speed trajectory for optimizing the vehicle’s target performance. The optimization objective of this paper is to minimize the total cost including battery energy consumption cost and life loss cost, so the optimal control problem is established as follows [
31]:
where
means state variable,
means control variable, J is objective function, L(
x(
t),
u(
t),
t) is an integral function, C(
x(
t),
u(
t),
t) is the inequality constraint, and
is the terminal condition.
During driving, the vehicle is affected by various forces in the direction of travel, and these forces can be divided into driving force and resistance, wherein the resistance includes rolling resistance, slope resistance, air resistance, and acceleration resistance. The dynamic equation of the vehicles is shown in Equation (12) [
32],
Among them,
is the motor torque and the efficiency map of an electric motor is shown in
Figure 2,
is the transmission ratio,
is the final drive ratio,
is the wheel radius,
is the gravity acceleration,
is the rolling resistance coefficient,
is the road gradient,
is the air density,
is vehicle air resistance coefficient.
is the vehicle face area,
is the vehicle speed, and
is the rotating mass conversion factor and is generally 1. Moreover, the main technical parameters of the vehicle are shown in
Table 1.
For the above-mentioned economical driving speed optimization control problem, this paper selects the motor torque
and gear
as the control variable, that is,
, and selects the vehicle speed
and the vehicle driving distance
as the state variables, that is,
. So, the state equation can be expressed as
where
is relevant to the coefficient of rolling resistance and slope resistance.
.
Currently, the economic indicators of electric vehicles mainly refer to battery energy consumption. The aim of the economical speed optimization strategy is to minimize the total cost of the vehicle during travel. In this paper, considering that the power battery is the most expensive component in electric vehicles, the economic indicators will include the energy consumption and the life loss of the battery during use. Therefore, the cost function J is shown in Equation (14),
In the formula, is the instantaneous power of the battery, representing the energy consumption. is the weighting factor, which represents the weight ratio between the battery energy consumption and the battery life loss in the integral function. is the conversion coefficient of battery life loss, which matches the life loss of the battery in quantity with the energy consumption of the battery and has the actual physical meaning. is the severity factor describing the relative aging effect of the dynamic operating conditions of the battery relative to the nominal conditions.
In this paper, the conversion coefficient of battery life loss
is defined as the ratio of the replacement cost per unit capacity of electric vehicle power battery to the 1 kWh electricity cost.
Table 2 lists the capacity and price of four pure electric vehicles power battery and calculates the value of the conversion coefficient of battery life loss and the cost of the 1 kWh electricity is observed in the ordinary outdoor charging station According to the values in
Table 2,
is taken in this paper.
Next, the relationship between the objective function J, the state variables
, and the control variables
will be established. In order to simplify the calculation, a simple RC (Resistance Capacitance) equivalent circuit is used here, as shown in
Figure 3. According to the power model of battery and the Ohm’s law, Equation (15) can be obtained,
where
is the input/output power of battery, U is the terminal voltage of the battery,
is the charge/discharge current,
is the open circuit voltage of the battery pack, and
is the equivalent internal resistance. Assuming that the single cells inside the battery pack have good consistency, the current of the single battery
can be given as [34]
According to Equation (15), the relationship between the current and the instantaneous input/output power of the battery pack can be obtained, as shown in Equation (17),
In the general power system topology structure of electric vehicles, the output power of the battery will act on the drive motor through the inverter. The power relationship between the components of each power system is shown in Equation (18).
where
is the output/input power of motor,
is the instantaneous operating efficiency of motor,
is the instantaneous operating efficiency of inverter,
is motor torque, and
is motor speed.
Therefore, the equation between current
, motor torque
, gear
, and vehicle speed
can be established by combining Equations (15)–(18), as
In summary, we have established an explicit relationship among performance index function J, state variable , and control variable .
According to the actual physical significance of state variables and control variables in the optimal control of economic driving speed, the system has the following inequality constraints and boundary conditions,
Among them, and are the upper and lower limits of vehicles speed determined by the road signs, the vehicle ahead, and other traffic information. and are the initial speed and the vehicle travel distance, respectively, and and are the vehicle speed and travel distance at the terminal time, respectively.
6. Conclusions
This paper focuses on the energy optimization problem of two-speed electric vehicles. Under the background of the high price of electric vehicle power battery, this paper supplements the economic indicators of electric vehicles, and takes the aging cost of battery as a part of the economic indicators of electric vehicles. By comparing with the optimization results considering the economic index of battery energy consumption alone, it is concluded that considering battery life is of great significance to the economy of electric vehicles. In addition, compared with the single-speed transmission, the influence of the two-speed gearbox on the economy of the electric vehicles and its application potential are analyzed.
The results show that the battery life can be increased by 21.19% when the aging cost of the battery is considered in the economic index, compared with the economic index of pure battery energy consumption under a set 600 m acceleration–cruise–deceleration driving scenario. Under the same scenario, compared with one-speed drive electric vehicles, the two-speed gearbox has 8.70% saving in energy consumption and 4.79% saving in battery aging. At the same time, under NEDC and UDDS conditions, compared with direct drive electric vehicles, the two-speed gearbox has a positive effect on delaying the battery life decline and reducing battery energy consumption of electric vehicles, which can reduce the battery capacity decline by 6.44% and 8.96%, and the battery energy consumption by 3.17% and 4.36%, respectively. It is shown that, whether in the acceleration–deceleration driving between two intersections or in normal driving cycles, the two-speed gearbox has obvious application potential in electric vehicles.