1. Introduction
In precision seeding for plug seedling production, sowing seeds at the center of pressed substrate holes to an optimal depth enhances root development, improves seedling quality, ensures seedling growth uniformity, and facilitates subsequent transplanting operations [
1,
2]. When seeds are sown into pressed substrate holes with an initial velocity, contact collisions may cause positional deviation from the center of the substrate hole. Due to the extremely short collision duration and minimal rebound displacement of the seed, physical experiments are insufficient to fully characterize collision dynamics. The discrete element method (DEM), a well-established computational approach for analyzing granular material dynamics, has been extensively applied to study interactions between agricultural machinery components and granular substrates [
3,
4]. To investigate collision mechanics between seeds and pressed substrate holes using DEM, it is essential to first develop a robust DEM simulation model for mechanically pressed holes in sowing substrates [
5,
6,
7].
The geometric modeling of granular particles is a critical factor that significantly influences the efficiency and accuracy of DEM simulations. Current research primarily focuses on seedling substrates, where sieve analysis has been employed to determine the particle size distribution. Subsequently, particle models are constructed using either single-sphere or multi-sphere combination methods. For instance, Du et al. [
8] developed a seedling substrate particle model utilizing spheres with a uniform diameter of 1 mm. Hu et al. [
9] constructed particle models for peat, perlite, and vermiculite using spheres with diameter ranges of 0.2~0.5 mm, 1.5~3 mm, and 0.4~1 mm, respectively. Wang et al. [
10] established a seedling substrate particle model employing spheres with diameters ranging from 0.096 to 1.25 mm. Tian et al. [
11] modeled peat, perlite, and vermiculite particles using combinations of 4, 12, and 41 spheres, respectively. The multi-sphere combination method offers enhanced simulation accuracy compared to the single-sphere approach, while it involves more complex calculations of inter-particle contact forces, leading to increased simulation times.
The rational contact mechanics model parameters between particles are essential factors influencing the accuracy of DEM simulations. The contact models investigated for seedling substrates encompass the Hertz–Mindlin with bonding model, which incorporates a bonding radius and fracture criterion to simulate particle cohesion and breakage [
8,
12]; the elasto-plastic cohesion model (ECM), which employs a piecewise contact mechanics response function to describe the accumulation of plastic deformation during loading–unloading cycles [
11,
13]; and the Hertz–Mindlin with JKR model, which utilizes the equivalent surface energy parameter to simulate van der Waals forces between moist particles [
10]. The contact mechanics parameters between particles are typically calibrated with discrete element simulation and experimental methods [
14,
15,
16,
17]. The angle of repose or the static angle of repose were normally used as the response indicator. Parameters such as the static friction coefficient, rolling friction coefficient, restitution coefficient, and JKR surface energy are optimized through Plackett–Burman tests, steepest ascent tests, response surface methodology, and regression analysis [
18,
19,
20]. Previous research demonstrates that the contact mechanics parameters obtained through simulation calibration exhibit high accuracy.
Machine learning and intelligent optimization algorithms exhibit robust nonlinear fitting and parameter optimization capabilities, resulting in their growing application in the parameter calibration of DEM simulations. Ma et al. [
21] optimized the contact model parameters of alfalfa particles using the non-dominated sorting genetic algorithm II (NSGA-II). Ding et al. [
22] proposed a genetic algorithm-backpropagation neural network-genetic algorithm (GA-BP-GA) method for optimizing the contact parameters of camellia oleifera seeds, which was found to be superior to the response surface methodology in terms of accuracy and efficiency. Long et al. [
23] introduced a calibration method for soil elasto-plastic discrete element model parameters based on recurrent neural networks (RNN). Ye et al. [
24] developed a calibration method for discrete element model parameters using backpropagation neural networks (BPNN) for simulating dynamic granular flow behavior. Benvenuti et al. [
25] proposed a method combining artificial neural networks (ANN) with batch experiments to calibrate contact parameters for granular materials. Klejment [
26] proposed a calibration method for discrete element contact parameters based on multiple linear regression (MLR) and RF. Hwang et al. [
27] employed ANN to construct predictive models for the relationship between contact parameters and collision behavior of non-spherical particles. Mohajeri et al. [
28] calibrated DEM model parameters for ring shear tests within the NSGA-II framework. The above studies demonstrated that machine learning optimization methods achieve higher fitting accuracy and global optimization capabilities compared with traditional regression fitting methods.
An accurate DEM model of the pressing hole in sowing substrates serves as a critical foundation for systematic investigation of seed substrate collision dynamics. While existing DEM models of seedling substrates have primarily been utilized for end-effector optimization in transplanting systems, there remains a notable absence of studies specifically addressing the modeling of the pressed substrate hole. The main purpose of the study was to develop a DEM model specially for simulation study on the pressing hole in sowing substrates. The specific objectives of this study were as follows: (1) construct a geometric and contact mechanical models of the sowing substrate; (2) determine contact mechanical parameters by simulation calibration experiments; and (3) verify the accuracy and effectiveness of the proposed DEM model by experimental comparison.
3. Results
3.1. Simulation Calibration Test Result
The Plackett–Burman simulation experiments consisting of 12 groups, with each group being simulated three times, were conducted to obtain the average angle of repose as shown in
Table 3. Analysis of variance (ANOVA) indicated that the significant influence coefficients of the angle of repose were 0.3464 for the inter-particle static friction coefficient (A), 0.0499 for the inter-particle dynamic friction coefficient (B), 0.0661 for the inter-particle collision recovery coefficient (C), 0.8118 for the particle–stainless steel dynamic friction coefficient (D), 0.3343 for the kinetic friction coefficient between particles and stainless steel (E), 0.7765 for the particle–stainless steel collision recovery coefficient (F), and 0.002 for the substrate JKR surface energy (G). Ranked by their significant influence, the substrate JKR surface energy (G), the inter-particle dynamic friction coefficient (B), the inter-particle collision recovery coefficient (C), and kinetic friction coefficient between particles and stainless steel (E) were selected as the factors for the steepest ascent experiment. The values of the four factors were assigned by equally dividing the parameter range specified in
Table 1.
Those factors that have no significant effect on the angle of repose were taken as the middle values between the high and low levels in
Table 1. Therefore, the values of the inter-particle static friction coefficient (A), particle–stainless steel static friction coefficient (D), and the particle–stainless steel collision recovery coefficient (F) were assigned as 0.62, 0.25, and 0.16, respectively. Six groups of steepest ascent experiments were designed, and the results are shown in
Table 4.
In
Table 4, the second group of parameters obtained the smallest relative error compared to the measured angle of repose. The adjacent first and third groups of data were selected to conduct a four-factor, three-level Box–Behnken experiment, and the results are shown in
Table 5.
Based on the results of the steepest ascent experiment and the Box–Behnken experiment, the inter-particle dynamic friction coefficient (B), the inter-particle collision recovery coefficient (C), kinetic friction coefficient between particles and stainless steel (E), and the substrate JKR surface energy (G) were determined as the input variables of the neural network shown in
Figure 6, and the value range of the four input variables are 0.01~0.046, 0.51~0.75, 0.02~0.026, 0.1~1.46, and 2.37~57.01, respectively. According to Formula (5), the neuron number of the hidden layer ranges from 4 to 14. The optimal neuron number of the hidden layer, which achieved a high prediction accuracy, was determined to be 10 through multiple instances of adjustments.
The scatter plot of comparing predicted and simulated angles of repose is shown in
Figure 13. The coefficient of determination
of the predictive model on the training and testing dataset were 0.9962 and 0.9735, respectively. This indicates a strong correlation between the predicted and simulated angle of reposes during both training and testing phases. The developed predictive model could at least explain the 97.35% variability of the angle of repose in the testing phase. The
MSE values on the training and testing dataset were 0.9284 and 6.5954, respectively. This verified the high predictive accuracy of the developed predictive model.
Through parameters optimization with the genetic algorithm, the inter-particle dynamic friction coefficient (B), the inter-particle collision recovery coefficient (C), kinetic friction coefficient between particles and stainless steel (E), and the substrate JKR surface energy (G) were determined as 0.0349, 0.5448, 0.0233, and 0.4279, respectively. The angle of repose of 32.46° was obtained by simulating with those optimized parameters. The simulation deviation of 0.4° from the measured angle of repose indicates that the proposed parameter calibration method could achieve high fitting accuracy, and the calibrated parameters are applicable.
3.2. Comparison of Simulated and Experimental Results
The simulated and experimental results of pressing hole in the sowing substrate are shown in
Figure 14. For different pressing depth and speed, both simulation and experimental results show that pressed conical holes were formed within the sowing substrate, characterized by the maximum depth at the center sampling point and progressively decreasing towards the end sampling points.
At the pressing depth of 5 mm, the simulated and experimental depth ranges for the center sampling point are 4.895~4.982 mm and 3.166~3.491 mm, respectively, while those for the end sampling point are 1.744~2.070 mm and 1.462~1.713 mm, respectively. At the pressing depth of 10 mm, the simulated and experimental depth ranges for the center sampling point are 9.734~9.771 mm and 7.352~7.637 mm, respectively, while those for the end sampling point are 1.365~1.598 mm and 1.290~3.076 mm, respectively. At the pressing depth of 15 mm, the simulated and experimental depth ranges for the center sampling point are 14.103~14.221 mm and 11.611~12.347 mm, respectively, while those for the end sampling point are 0.614~0.966 mm and 1.234~1.582 mm, respectively. This indicates that at a certain pressing depth and different indentation speeds, there is no significant difference in the simulated or experimental depths of each sampling point.
At certain pressing depths of
and pressing speeds of
, the mean simulated depth
and the mean experimental depth
of all sampling points are shown in
Table 6. It indicates that the mean simulated depth
is greater than the mean experimental depth
. The results of the variance analysis indicate that the
p-values for pressing speed on the mean simulation and experimental depths were 0.5324 and 0.2257, respectively. It shows that pressing speed has no significant effect on the mean depths obtained from simulation or experiment. Therefore, a higher pressing speed can be utilized to enhance the operation efficiency of the pressing hole.
The p-values for the pressing depth are both less than 0.0001, indicating that pressing depth has a highly significant effect on the mean depths obtained from both simulation and experiment. At a given pressing depth, the mean depth deviation between simulation and experiment () shows no significant difference. The maximum of 1.308 mm indicates that the deformation patterns of the pressing hole in the sowing substrate obtained from simulation and experiments are in good agreement.
4. Discussion
The DEM contact model and parameters for pressing holes in sowing substrate, as determined in this study, were compared with those from prior research, as shown in
Table 7. Differences exist among these model parameters, particularly in the JKR surface energy, which reflects the adhesive properties between substrate particles. DEM simulations of pressing holes in the substrate using parameters from prior studies were conducted at a pressing depth of 10 mm and a pressing speed of 6 mm/s. Deviations between simulated and experimental depths
reported by Wang et al. [
10], Cui et al. [
7], and Hu et al. [
9] were 1.131 mm, 2.706 mm, and 1.247 mm, respectively, all exceeding the 0.879 mm deviation observed in this study. This indicates that the models and parameters developed in this study are better suited for simulating pressing hole dynamics in sowing substrates.
In this simulation study, a certain degree of rebound was observed after the sowing substrate was compressed and deformed, and the experimental rebound was greater compared with that of the simulation. Simplifying the three types of substrate particles as identical mechanical properties in simulation is likely the main reason for the rebound deformation differences. Additionally, the simplification of the geometric shapes and particle quantities of the three substrates in simulation may also contribute to the differences of rebound behavior.
5. Conclusions
A DEM model for simulation of the pressing hole in the sowing substrate was studied. The geometric model of the substrate particles was constructed by scaling the diameter of the spheres within a certain proportional range, and the Hertz–Mindlin with JKR model was utilized as the contact model for the substrate particles. Through simulation calibration experiments and optimization using the BP-GA method, the inter-particle dynamic friction coefficient, the inter-particle collision recovery coefficient, kinetic friction coefficient between particles and stainless steel, and the substrate JKR surface energy were determined as 0.0349, 0.5448, 0.0233, and 0.4279, respectively. The simulation and measurement deviation of 0.4° for angle of repose proved the effectiveness of the substrate particle model and those optimized parameters. The conical holes in the sowing substrate obtained by simulations and experiments demonstrated a high degree of consistency. They revealed that higher pressing speed should be utilized to enhance the operation efficiency of the pressing hole. The maximum mean depth deviation of 1.308 mm between simulation and experiment verified the accuracy and applicable of the developed DEM model.
The DEM of the pressed substrate hole still exhibits certain discrepancies compared to actual physical substrate conditions. For further enhancing accuracy and practicality of the DEM simulation model for the sowing substrate, peat, perlite, and vermiculite would be treated as particles with distinct elastic moduli and Poisson’s ratios. Calibration and optimization for those physic parameters would be conducted in a future study. Additionally, the DEM simulation model of the sowing substrate would be used in exploring the collision and interaction mechanisms between seeds and the surface of the pressed sowing substrate holes. It is expected to provide a microscopic research method for seeds precisely falling in the plug tray cell.