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1. Introduction
With development of science and technology, the power density of diesel engine increases continuously. As a result, the thermal load and mechanical load exerted on high temperature components in engine’s cylinders, especially pistons, have also been increased. According to the results of simulation analysis [1], when a heavy-duty diesel engine works under plateau conditions, thermal-mechanical coupling stress can rise up to 167 MPa. Prolonged operation under such an environment may cause interior fatigue damage to pistons and even lead to creep fatigue failure. Coupling effect of fatigue and creep would drastically shorten the service life of piston and other high temperature components and severely influence the reliability of the entire engine.
Ample research has been conducted in view of such situation. Combustion condition in cylinder can provide the boundary conditions to calculate the thermal stress field and the thermal-mechanical coupling stress field of piston. It is necessary to analyse the combustion before studying the piston temperature field. Cihan et al. [2] analysed effect of three different types of combustion chamber on the combustion condition. Results show that the M combustor has the best combustion factor and there are some other measures needed to be taken to improve the combustion performance. Wang et al. [3] studied the relationship between compression ratio and ignition type of diesel. Results reveal that, to improve the quality of combustion, the ignition time should be advanced and that flammability limits should be extended. Yuan et al. [4] established a coupling model to simulate the combustion character of a free piston engine generator. Results show that the free piston engine has a longer combustion duration and that the average pressure and temperature in cylinder are generally lower than the common engine. Khan et al. [5] studied the effect of piston geometry and other parameters on the combustion of engine. They established the combustion computational fluid dynamics model using the software of AVL-FIRE. The different geometries of piston are toroidal reentrant combustion chamber (TRCC), toroidal combustion chamber (TCC), and the baseline hemispherical combustion chamber (HCC). Results show that TRCC is better than other chambers. Geng et al. [6] realized a dual assisted compression ignition combustion (DACIC) engine, which made the authors have more controllability on the combustion process. Results show that the DACIC has a wider compression ratio range. There are also some researches considering combustion chamber [7], combustion stability [8], combustion characteristics [9], and so on [10].
For the piston temperature field, another important heat source is the friction heat. Besides, the frictional condition between piston and the cylinder liner can also affect the dynamic performance of the engine. Therefore, it is important for the study of the friction. Boru Jia et al. [11] researched and compared the different friction mechanisms of free piston engines (FPE) and crankshaft engines (CSE). The detailed content of the friction includes the piston ring friction characteristics, piston skirt friction characteristics, value train friction characteristics, and the crank and bearing friction characteristics for the CSE. Results show that, compared to the CSE, the FPE do not have obvious advantage in friction characteristics. In order to realize the accurate and real time measurement of the frictional condition of piston, Fang et al. [12] come up with an improved measurement technique. Results show that the improved measurement system is accurate and reliable compared with the original one. Söderfjäll et al. [13] studied the frictional condition in diesel engine under different variables, such as different piston ring designs, different cylinder liner roughness, and different grade oil. With the experiment data, they established a simulation model to analyse the friction condition of the piston. There are also some researches focusing on frictional losses [14], lubricating oil transport between piston and cylinder liner [15], experiment study of friction [16], and so on.
In order to improve the working state of piston and the engine, many researchers studied the optimization method to reduce the heat and mechanical load of the piston. Xu et al. [17] simulated the piston of a new cam type engine using finite element method. By combining the calculation results, optimization and improvement proposals were presented, which is to install thermal insulation screws on the piston. Simulation results show that both temperature and deformation of the optimized piston dropped down to a certain extent. Wang et al. [18] conducted analysis on the temperature and stress fields of the marine diesel piston with established finite element model. The frictional wear of the piston was analysed by combining relevant models before a series of optimization suggestions were proposed. The validity of optimization was verified through tests. Zhaoju et al. [19] studied the corresponding relationship among “height of the piston’s top,” the “holes on piston pin,” “weight of piston,” and “maximum temperature of piston,” “maximum mechanical stress,” and “maximum thermal-mechanical coupling stresses” by adopting experimental design methods. The weight of piston and maximum coupling stress were optimized based on the calculation results. Zhang et al. [20] compared and studied the influence rule of ω-shaped, wave-shaped top of piston on the combustion of blended fuel, and the performance of diesel engine. Results show that the wave-shaped top of piston performed better in improving the combustion efficiency and reduction of exhaust emission. Sadiq and Iyer [21] studied the influence rule of the compression ratio, shape of piston’s top on fuel combustion, and engine performance. The results indicate that large cleavage piston and the bigger compression ratio can improve the performance of the engine. There are also some researches focusing on the dynamic modelling and parameters optimization of piston [22], effects of different piston bowl [23], multiobjective optimization of piston using response surface methodology [24], and so on [25–27].
The literatures above revealed the following problems about the current research direction of pistons: (1) existing studies rarely involved pistons in heavy-duty diesel engine; these pistons generally work in harsh environment conditions and easily suffer the damage of fatigue failure and hence should be given more attention; (2) when calculating and analysing the temperature and stress fields of piston, not all of the boundary conditions were considered; e.g., problems such as heat produced from friction between the piston ring set and the cylinder liner were not considered in most of literatures; (3) optimizations of the geometric structures of piston were merely empirical or only aimed at a single variable, and the interactions between different factors were not considered, which caused the lack of theoretical support and appropriate cogency.
The main aim of the study is based on the working status and temperature and stress conditions to optimize the geometry of piston to alleviate the working state of piston. On the basis of relevant studies and in combination with the maximum temperature and maximum stress of piston, this paper discusses the optimization of the 3D geometric structure of the piston. During calculation of the temperature and stress fields of piston, boundary conditions, such as the heat produced by combustion, heat produced by friction, and heat dissipated to coolant system, were considered. In addition, during the optimization process, the orthogonal experimental design (OED) method and the artificial bee colony (ABC) algorithm were adopted, which made the optimization process more scientific and the optimization results more reliable. The main work of this paper includes the following parts. In the first part, boundary conditions for calculating the temperature and stress fields of piston were analysed, which include heat produced by combustion, heat produced by friction between the piston ring set and cylinder liner, heat dissipated to the coolant system, and mechanical force exerted on the piston. In the second part, the temperature field and thermal-mechanical coupling stress field of the piston were analysed using the boundary condition and the established finite element model; the calculation results were verified with tests. In the third part, based on the constraints and objectives of the optimization, 5 geometric parameters to be optimized were defined. The influencing rule of these parameters on two indicators (maximum temperature and maximum stress of piston) was calculated and analysed in detail using OED method. In the fourth part, the corresponding relationship between the optimization parameters and evaluation indicators was established using the proposed ABC-OED-FE method, and the optimal geometric parameters of the piston were determined. In the fifth part, the temperature and stress fields of the optimized piston were calculated and analysed, which verified the effectiveness of the optimization and the validity of the algorithm.
2. Boundary Conditions of Piston Temperature and Stress Fields
2.1. Heat Produced by Combustion
In order to calculate and analyse the temperature and stress fields of the piston in detail, the combustion process model of diesel engine [28] was established to calculate and analyse the boundary conditions of the fields. Through calculation, the variation trend of temperature and heat transfer coefficient of gas in cylinder with the change of crank angle was obtained and is as shown in Figure 1.
[figure omitted; refer to PDF]
In order to verify the accuracy of the calculation model and results, bench tests were conducted to measure such parameters as power and torque of the diesel engine. The measured values were then compared with the calculated values. The configuration of the test bench is shown in Figure 2. It is a device used to determine the state of combustion in the diesel engine and measure the parameters of the gas in the cylinder [29]. The test system is mainly made up of several parts, including computer control system, diesel and its start moto, output dynamo meter, diesel combustion analysis system, and system control unit. System control unit can control the whole lab, measure the data by sensor, and process the results. Diesel and its start moto are the object of this study and the core part of the lab. Output dynamo meter can measure the state parameters of the diesel. Diesel combustion analysis system can measure the variation of evaluation indicators of engine by adjusting the inlet value, exhaust value, and the oil atomizer.
[figure omitted; refer to PDF]
The detailed information of lab is shown in Table 1.
Table 1
The detailed information of lab.
| Device | Specification | Accuracy |
| Output dynamo meter | QZTI-QZ1030 | <0.1 kW < 0.01 Nm |
| Diesel analysis system | LUBO-3010 | <0.1 K < 0.1 Pa |
| WT31820 | <1 mg | |
| DS18B20 | <0.1 K | |
| DS18B20 | <0.1 K | |
| Fan | XN-1-2740 | |
| Temperature control unit | OMRON CJ1W-TC001 | <0.1 K |
| Humidity control unit | KZP-5-CA | <0.1% |
The comparison between the model’s calculation results and those acquired through the experiments for the operation process of the diesel engine is shown in Table 2.
Table 2
Comparison between the calculated and experimental values of diesel engine.
| Speed | Power (kW) | Torque (Nm) | ||||
| Experiment | Calculation | Error (%) | Experiment | Calculation | Error (%) | |
| 1400 | 463 | 475.8 | 2.82 | 3255.57 | 3245.30 | 0.32 |
| 1600 | 525 | 518.6 | −1.24 | 3205.44 | 3095.07 | 3.44 |
| 1800 | 570 | 558.5 | −2.15 | 3152.88 | 2969.84 | 5.81 |
| 2000 | 588 | 594.7 | 1.11 | 2816.31 | 2839.40 | −0.82 |
As indicated by the table, errors between the experiment results and calculation results are all minus 6%, and hence have fulfilled the requirements of engineering calculation. This shows that the established simulation model for the operation process of diesel engine is rather accurate and can be used for subsequent studies of thermal environment of the piston.
2.2. Frictional Heat
The derivative of piston displacement equation was solved to obtain the speed equation [30]. And it can be expressed as a compound harmonic function consisting of two sinusoidal functions with different rates of change [31]. The position of the piston relative to the top dead point and its speed with the variation of crank angle, as obtained from above equations, are shown in Figure 3.
[figure omitted; refer to PDF]
Figure 4 displays the temperature change when piston is at different positions away from the top dead point. The figure shows that the magnitude of temperature rise is closely related to the speed of piston ring. When the piston moves to the middle of the cylinder liner, the rate of temperature change reaches the maximum, and so does the speed of piston. In addition, the figure also indicates that while the piston assembly moves from top dead point to bottom dead point, the frictional heat keeps accumulating, causing the temperature to rise as high as 8.67 K solely because of the friction heat.
[figure omitted; refer to PDF]
The model was meshed and generated 316,651 nodes and 190,148 elements eventually. The meshing model is shown in Figure 6.
[figure omitted; refer to PDF]
The hardness plugs used in this article are cylindrical plugs with the geometry dimension of 1.9 mm radius and 5.6 mm length. The detailed parameters of hardness plug are shown in Table 5.
Table 5
Detailed parameters of hardness plug.
| Parameters | Values |
| Type | HXD—1000TMC |
| Location error | <2 μm |
| Range of measurement | 5–3000 HV |
| Minimum counting unit | 0.01 μm |
| Minimum measurement unit | 0.025 μm |
| Error | <3% |
| Government standard | GB/T 4340 |
The fitted equation of hardness plug is
The test points in experiment are shown in Figure 8.
[figure omitted; refer to PDF]
Table 6 shows the comparison between the calculated and experimental values of the piston.
Table 6
Comparison between the calculated and experimental values of the piston.
| Test points | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
| Calculation value | 629.2 | 562.0 | 572.3 | 523.0 | 493.4 | 493.8 | 588.5 | 539.8 | 504.3 | 490.4 |
| Experiment value | 621.6 | 580.8 | 558.7 | 530.3 | 483.7 | 479.3 | 582.3 | 533.5 | 482.9 | 480.3 |
| Error/% | 1.21 | −3.34 | 2.38 | −1.39 | 1.97 | 2.95 | 1.05 | 1.16 | 4.25 | 2.06 |
It can be seen from Table 5 that the errors between the calculated and experimental values were minus 5%, which demonstrates the accuracy of the simulation, and hence can be deemed as having fulfilled the engineering requirements.
Figure 9 displays the temperature field of piston. According to the figure, the maximum temperature of the piston was 623.67 K which occurred at the inner circle in piston top, while the minimum temperature was 364.17 K, which occurred at the piston skirt. The temperature difference between maximum and minimum value was 259.5 K. From top to down, the value of temperature along the axis of piston was decreasing gradually. The temperatures at the edge of the intake and exhaust valve grooves were high enough to cause erosion and fatigue damage and shall be taken seriously.
[figure omitted; refer to PDF]
Figure 10 shows the distribution of thermal-mechanical coupling stress field of piston under the maximum cylinder pressure.
[figure omitted; refer to PDF]
According to the figure, the maximum stress exerted on the piston was 168.67 MPa, which occurred at the location between the pin circle and the first ring groove, while the minimum stress was 359 KPa, which occurred at the piston skirt. Since most of the piston heat transferred to the coolant was through the ring and the pin circle was forced to withstand concentrated mechanical force, the maximum stress of piston occurred at the area located between piston pin circle and ring grooves. At the same time, fatigue damage is highly likely to occur in this area, and more attention shall hence be paid there to.
According to Figures 9 and 10, there are two areas in the piston that are at serious condition and are prone to fatigue failure. So, in the next part of article, we will use some methods and algorithms to optimize these two areas in piston, trying to reduce the thermal and mechanical load, and increase its reliability and fatigue life.
4. Calculation and Analysis Based on Orthogonal Experiment
Results from above calculation and analysis showed that the maximum temperature of piston occurs near the intake and exhaust valve grooves, while the maximum stress of piston appeared near the piston ring grooves. In view of this, the optimization was prioritized for both these positions, i.e., intake and exhaust valve grooves at piston top, as well as the first piston ring groove.
4.1. Constraint Conditions for the Optimization
The following constraint conditions [35] were determined based on the analysis of calculation results in combination with the real operating conditions:
(1) The overall piston dimensions shall be unchanged and the postoptimized piston shall be able to prevent it from colliding with such components as the cylinder head, valves, and connecting rod
(2) The difference in the total masses between the piston before and after optimization shall be minus 5%, which is in order to prevent the excessive influence on piston’s interaction with the cylinder liner and connecting rod due to the optimization
(3) The difference of engine’s displacements between the piston before and after optimization shall be minus 5% in order to prevent excessive influence on the combustion process due to the optimization
(4) The piston’s optimization shall exert no influence on the functioning of itself and that of other parts in the diesel engine
4.2. Objectives of the Optimization
Based on the calculation and analysis above, optimizations on the following 5 parameters were determined by considering the constraints and real operation conditions of diesel engine.
(1)
(2) A smooth transition to the bottom of intake and exhaust valve grooves was to be added, without impacting the opening and closing of intake and exhaust valves. The radius of curvature was assumed to be
(3) A smooth transition to the top of piston intake and exhaust valve grooves was to be added, without impacting the opening and closing of intake and exhaust valves. The radius of curvature was assumed to be
(4)
(5)
By considering actual conditions, 5 different levels of the 5 parameters to be optimized are as shown in Table 7.
Table 7
Different levels of the 5 parameters to be optimized (mm).
| Parameters | Level I | Level II | Level III | Level IV | Level V |
| 5.6 | 5.8 | 6 | 6.2 | 6.4 | |
| 2.1 | 2.3 | 2.5 | 2.7 | 2.9 | |
| 2.1 | 2.3 | 2.5 | 2.7 | 2.9 | |
| 2.3 | 2.4 | 2.5 | 2.6 | 2.7 | |
| 5.8 | 5.9 | 6 | 6.1 | 6.2 |
4.3. Test Process and Results
The aim of the study is to decrease the thermal and mechanical load by optimizing the 5 piston parameters. So, the evaluation indicators of the optimization are the state indicators of piston: maximum temperature
The orthogonal experiment design method can figure the influence rules of 5 piston parameters on the evaluation indicators out fast and accurately, which could find the most valuable parameters using the minimum experiments sets. Therefore, the effect of 5 optimization parameters on the 2 evaluation indicators of piston was studied using orthogonal experiment design (OED) method [36]. According to Table 5, it is an orthogonal experiment consisting of 5 parameters and 5 levels. In view of this, an orthogonal experiment table
Table 8
Test arrangement and calculation results of OED.
| Number | |||||||
| 1 | 5.6 | 2.1 | 2.1 | 2.3 | 5.8 | 625.140 | 165.107 |
| 2 | 5.6 | 2.3 | 2.3 | 2.4 | 5.9 | 629.941 | 203.957 |
| 3 | 5.6 | 2.5 | 2.5 | 2.5 | 6.0 | 620.375 | 165.744 |
| 4 | 5.6 | 2.7 | 2.7 | 2.6 | 6.1 | 621.527 | 180.359 |
| 5 | 5.6 | 2.9 | 2.9 | 2.7 | 6.2 | 617.251 | 151.055 |
| 6 | 5.8 | 2.1 | 2.3 | 2.5 | 6.1 | 633.482 | 154.066 |
| 7 | 5.8 | 2.3 | 2.5 | 2.6 | 6.2 | 624.462 | 175.279 |
| 8 | 5.8 | 2.5 | 2.7 | 2.7 | 5.8 | 622.167 | 154.699 |
| 9 | 5.8 | 2.7 | 2.9 | 2.3 | 5.9 | 625.264 | 189.055 |
| 10 | 5.8 | 2.9 | 2.1 | 2.4 | 6.0 | 615.824 | 164.961 |
| 11 | 6.0 | 2.1 | 2.5 | 2.7 | 5.9 | 631.962 | 185.224 |
| 12 | 6.0 | 2.3 | 2.7 | 2.3 | 6.0 | 627.531 | 166.363 |
| 13 | 6.0 | 2.5 | 2.9 | 2.4 | 6.1 | 619.856 | 171.368 |
| 14 | 6.0 | 2.7 | 2.1 | 2.5 | 6.2 | 625.567 | 152.161 |
| 15 | 6.0 | 2.9 | 2.3 | 2.6 | 5.8 | 633.521 | 182.215 |
| 16 | 6.2 | 2.1 | 2.7 | 2.4 | 6.2 | 635.168 | 158.030 |
| 17 | 6.2 | 2.3 | 2.9 | 2.5 | 5.8 | 623.249 | 161.857 |
| 18 | 6.2 | 2.5 | 2.1 | 2.6 | 5.9 | 621.284 | 202.763 |
| 19 | 6.2 | 2.7 | 2.3 | 2.7 | 6.0 | 630.517 | 150.509 |
| 20 | 6.2 | 2.9 | 2.5 | 2.3 | 6.1 | 619.842 | 152.142 |
| 21 | 6.4 | 2.1 | 2.9 | 2.6 | 6.0 | 630.850 | 152.442 |
| 22 | 6.4 | 2.3 | 2.1 | 2.7 | 6.1 | 622.847 | 153.901 |
| 23 | 6.4 | 2.5 | 2.3 | 2.3 | 6.2 | 629.419 | 150.716 |
| 24 | 6.4 | 2.7 | 2.5 | 2.4 | 5.8 | 625.861 | 159.885 |
| 25 | 6.4 | 2.9 | 2.7 | 2.5 | 5.9 | 625.617 | 183.147 |
4.4. Results’ Analysis
The calculation results for each level and indicator are summarized in Table 9.
Table 9
Summary and analysis of the calculation results.
| Indicators | Level | |||||
| 3118.245 | 3163.600 | 3115.660 | 3133.195 | 3133.940 | ||
| 3115.200 | 3110.030 | 3146.880 | 3122.650 | 3128.070 | ||
| 3132.435 | 3110.070 | 3117.470 | 3114.260 | 3119.065 | ||
| 3124.060 | 3125.775 | 3127.050 | 3127.685 | 3111.595 | ||
| 3128.595 | 3109.055 | 3111.470 | 3120.745 | 3125.865 | ||
| 40.490 | 436.715 | 160.301 | 41.000 | 59.322 | ||
| 3132.435 | 3163.600 | 3146.880 | 3133.195 | 3133.940 | ||
| 3115.200 | 3109.055 | 3111.470 | 3114.260 | 3111.595 | ||
| R | 17.235 | 54.545 | 35.410 | 18.935 | 22.345 | |
| 866.220 | 814.870 | 838.895 | 823.385 | 823.765 | ||
| 838.060 | 861.355 | 841.465 | 858.200 | 964.145 | ||
| 857.330 | 845.290 | 838.275 | 816.975 | 800.020 | ||
| 825.300 | 831.970 | 842.600 | 893.060 | 811.835 | ||
| 800.090 | 833.520 | 825.775 | 795.390 | 787.240 | ||
| 553.347 | 237.677 | 36.323 | 1181.832 | 4163.46 | ||
| 866.220 | 861.355 | 842.600 | 893.060 | 964.145 | ||
| 800.090 | 814.870 | 825.775 | 795.390 | 787.240 | ||
| R | 66.130 | 9.297 | 16.825 | 97.670 | 176.905 | |
The equations for calculating the variables in the table are as follows [37]:
The significance test and variance analysis were performed for each parameter, and the results are as shown in Table 10.
Table 10
Significance test of each parameter.
| Indicators | Parameters | F | 0.05 critical value | 0.01 critical value | Significance | |
| 40.490 | 0.274 | 2.87 | 4.43 | |||
| 436.715 | 2.959 | 2.87 | 4.43 | ※ | ||
| 160.301 | 1.086 | 2.87 | 4.43 | |||
| 41.000 | 0.278 | 2.87 | 4.43 | |||
| 59.322 | 0.402 | 2.87 | 4.43 | |||
| 553.347 | 0.448 | 2.87 | 4.43 | |||
| 237.677 | 0.193 | 2.87 | 4.43 | |||
| 36.323 | 0.029 | 2.87 | 4.43 | |||
| 1181.832 | 0.957 | 2.87 | 4.43 | |||
| 4163.460 | 3.373 | 2.87 | 4.43 | ※ | ||
The method for calculating the degree of freedom of the parameters is as follows:
Analysing Tables 9 and 10, it can be seen that the rounded corners
5. ABC-OED-FE Based Piston Parameters Optimization
5.1. ABC Algorithm
Artificial bee colony (ABC) algorithm [38] is a calculation method presented by Karaboga based on the behaviour of foraging nectar source by bee colonies. Its superiority lies in that it may provide strong capability of local search and global optimization to effectively prevent the occurrence of local optimal solution.
In ABC algorithm, the bees are divided into employed bees, onlooker bees, and scout bees. The employed bees take charge of collecting honey in places with significant nectar, onlooker bees detect the locations of significant nectar, and scout bees are randomly let out to seek for new nectar sources when current nectar is almost exhausted. The bees exchange information about nectar quantity and locations by waggle dance; the quantity of honey in nectar is consistent with the quantity of employed bees. Feasible solutions of problems have a one-to-one correspondence relationship with the food sources, and the value of fitness function also has a one-to-one correspondence relationship with the quantity of nectar in food sources. ABC algorithm mainly consists of the following steps:
Step 1.
a bee colony is produced randomly with the following equation:
Step 2.
calculate the solution’s probability;
Step 3.
the bee colony starts the search for nectar sources:
Step 4.
judge and memorize the current best solution.
Step 5.
repeat until finding the optimal solution.
The flowchart of this process is presented in Figure 11.
The quality of the nectar source will be evaluated by objective function values during the calculation. This paper uses ABC algorithm twice. In the first time, the objective function is the square root of difference between predicted values and original values of maximum temperature
After the honey at the specific nectar source location has been exhausted, the onlooker bees will give up the nectar source at the current location and release the scout bees to seek for new nectar sources. In this paper, it indicates that, in the first time, error between predicted values and original values of maximum temperature
In ABC algorithm, there are two important parameters, i.e.,
5.2. Fitting Equations
According to analysis in Section 3.4, for the two indicators (i.e., maximum temperature
According to Table 10, the order of the parameters ranked as per their effect on maximum temperature of piston
Table 11
FEs and their examples.
| Equation | Functions | Examples |
| Exponential | ||
| Logarithmic | ||
| Power exponential | ||
| Exponential logarithmic | ||
| Polynomial |
5.3. The ABC-OED-FE Method
Schemes for optimizing the parameters of the piston were determined with ABC, OED, and FE in this paper (hence, the name is “ABC-OED-FE method”). The following steps were conducted:
1 Set the (initial) values of two parameters
(2) Set the (initial) selection of FE
(3) Set the (initial) number of parameters in the FE
(4) Set the (initial) coefficients in FE
(5) Calculate the 5 parameters of piston with ABC algorithm combined above configuration
(6) Judge if that is the optimal combination of values of ABC parameters, FE, and the number of parameters in FE
Since parameters indicated in Step 1 to Step 3 are interrelated, their values cannot be determined independently and were hence determined by calculating and analysing with orthogonal experiments method. For the detailed procedures of the ABC-OED-FE method, readers can refer to Figure 12.
[figure omitted; refer to PDF]
By inspecting optimized piston with constraint conditions described in Section 3.1, the following aspects are revealed:
(1) Overall height and radius of the optimized piston maintain unchanged to prevent it from colliding with components such as cylinder head, valves, and connecting rod.
(2) Overall mass of optimized piston is 2.63 kg which is increased by 1.93% relative to mass of 2.58 kg before optimization. This can prevent interaction between piston and cylinder liner and connecting rod from exerting excessive forces.
(3) Displacement of optimized diesel engine is approximately invariant. Smooth corners may facilitate mixing of air and fuel, which exerts positive effect on combustion in the cylinder.
(4) Optimization of piston applies no effect on its normal functions and functions of other parts in the diesel engine.
6. Analysis of Optimization Results
6.1. Optimized Temperature Field
New finite element model of piston was established by combining optimized piston with thermal and mechanical boundary conditions. Temperature field of the optimized piston is shown in Figure 14.
[figure omitted; refer to PDF]
According to the figure, maximum temperature of optimized piston is 607.56 K which is 16.11 K lower than that before optimization. The difference between original and after optimization piston is not too large, which can ensure preventing significant effect on combustion in the cylinder and power of the diesel engine, and is not too small, which proves the effectiveness of the optimization.
6.2. Optimized Thermal-Mechanical Coupling Stress Field
Thermal-mechanical coupling stress field of optimized piston is shown in Figure 15. According to the figure, maximum thermal-mechanical coupling stress of optimized piston is 153.458 MPa which is 15.212 MPa lower than that before optimization. The declined magnitude is significant and overall load on the piston is also decreased.
[figure omitted; refer to PDF]
Both thermal and mechanical load of optimized piston were decreased, which demonstrates favourable effectiveness of optimization and validity of the optimization algorithms.
6.3. Comparison of the Results
Table 17 shows the comparison of thermal and stress load of piston between original component and optimized component.
Table 17
Comparison of the results.
| Original condition | After optimization | Percentage improvement (%) | |
| Maximum temperature (K) | 623.67 | 607.56 | 2.57 |
| Maximum stress (MPa) | 168.67 | 153.45 | 8.21 |
Table 17 illustrates, that compared to the original condition, the maximum temperature is 2.57% improved after optimization and the maximum stress is 8.21% improved after optimization.
7. Conclusion
Temperature field and thermal-mechanical coupling stress field of piston in diesel engine were calculated and analysed by finite element method, orthogonal experimental design method, and artificial bee colony algorithm. 5 parameters of the piston’s geometric structure were optimized to decrease thermal and mechanical load exerted on piston. Main achievements of this article include the following:
(1) Boundary conditions of the piston calculating its thermal and mechanical load were calculated and analysed, using the model for combustion heat in cylinder and model for frictional heat between piston ring set and cylinder liner. Calculation results were verified with bench tests. The results provided boundary conditions for subsequent calculation of evaluation indicators: temperature and thermal-mechanical coupling stress field of the piston.
(2) Two evaluation indicators of piston were calculated and analysed using established finite element model. Results show that serious thermal and mechanical load appeared at intake and exhaust valve grooves as well as ring grooves on the piston, which may lead to fatigue damage.
(3) Based on above calculation results and orthogonal experimental design method, law of effect on two evaluation indicators of piston exerted by 5 parameters at two positions, valve grooves at piston’s top and the first piston ring groove, was discussed and analysed.
(4) Five FEs were proposed for fitting of correspondence relationship between the five optimization parameters and two evaluation indicators of piston. Two parameters for artificial bee colony algorithm and form of fitting equations were analysed and determined with ABC-OED-FE method.
(5) Coefficients of fitting equation and values of the 5 parameters under optimal piston temperature and stress were calculated and determined with artificial bee colony algorithm.
(6) Temperature field and thermal-mechanical coupling stress field of optimized piston were calculated and analysed. The results indicate that, after optimization, the maximum temperature of piston decreases to be 16.05 K and the maximum stress decreases to be 13.72 MPa, which demonstrates favourable effectiveness of optimization and validity of the optimization algorithms.
In the method of ABC-OED-FE come up by this article, orthogonal experimental design and artificial bee colony algorithm were used repeatedly. Advantages of the two methods were fully exploited to study optimization of temperature and stress of piston in heavy-duty diesel engine. The optimization process was specific and explicit and may be applicable to improving and optimizing other high-temperature components in diesel engine. It is a method with fair extensibility. Study of this paper has important significance in ensuring efficient and reliable operation of high-temperature components, such as piston, cylinder head, cylinder liner, and gasket, in heavy-duty diesel engine.
In this article, we use the ABC-OED-FE method to optimize the geometrical parameters of piston. After optimization, both temperature and stress condition are relieved remarkable, which illustrate the good effectiveness of the optimization algorithm.
In the next research, the authors want to give some advice as follows:
(1) The researcher should focus on the temperature and stress condition of high temperature components in the diesel engine including but not limited to piston, cylinder sleeve, cylinder gasket, cylinder head, and values
(2) Some new algorithms should be adopted to solve the optimization work of high temperature components in diesel engine, including but not limited to neural network, support vector machine, and Bayesian probability model
(3) The applied areas of ABC-OED-FE method can be extended to every part in engineering computation; researchers should pay some attention to it
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Abstract
In order to increase the reliability and service life of piston in a heavy-duty diesel engine, the geometric structure of piston was optimized based on its maximum temperature and maximum coupling stress. To begin with, the boundary conditions of thermal and stress fields are calculated, which include the heat produced by the combustion in cylinder, the friction-induced heat, and the heat transferred to cooling system. Then, the finite element model was established to calculate and analyse the temperature and thermal-mechanical coupling stress fields of the piston. By combining this simulation model with orthogonal experimental design methods, computations and analyses were performed to determine how the five geometric parameters (depth of intake and exhaust valve grooves, radius of valve grooves transition, radius of top of valve grooves, height of first piston ring groove, and depth of piston ring groove) influence the two evaluation indicators (maximum temperature and maximum stress of piston). Subsequently, using the proposed ABC-OED- FE (artificial bee colony, orthogonal experiment design, and fitting equations) method, the fitting equations between the geometric parameters and evaluation indicators were determined. Taking the minimum values of two evaluation indicators of piston as optimization objectives, artificial bee colony method was run to determine the values of parameters. At last, the two evaluation indicators of the optimized piston were computed. The results indicate that, after optimization, the maximum temperature of piston decreases to be 16.05 K and the maximum stress decreases to be 13.54 MPa. Both temperature and stress conditions of the optimized piston had been improved, which demonstrates the effectiveness of the optimization and the validity of the algorithm.
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