Virtual Prototyping of Bulk Material Preparation Devices in Mining Using Multiphysics Simulations
Abstract
:1. Introduction
1.1. Mining Industry
- Metallic: ferrous (e.g., iron ore, manganese, nickel, cobalt); non-ferrous (e.g., copper, lead, tin, bauxite); precious metals (e.g., gold, silver, platinum);
- Non-metallic (e.g., rock salt, potassium salt, sulfur, granite, marble, limestone, aggregates);
- Mineral raw materials for energy production (hard coal, brown coal, crude oil, natural gas) [3].
1.2. Practical Usage of DEM
2. Materials and Methods
2.1. Contact Models
- Hertz–Mindlin (no slip)—the default model due to its accurate and efficient calculation of force values. In this model, the normal component of the force is based on Hertz’s contact theory [52]. The tangential force model is based on the work of Mindlin-Deresiewicz [53,54]. Both normal and tangential forces have damping components, where the damping coefficient is related to the coefficient of restitution, which is discussed in [55]. The tangential friction force follows the model of Coulomb’s friction law [56]. Rolling friction is implemented as a contact-independent directional constant torque model [57].
- Hertz–Mindlin with JKR (Johnson–Kendall–Roberts)—cohesive contact model that takes into account the impact of Van der Waals forces in the contact zone and allows for modelling of highly adhesive systems such as dry powders or wet materials. In this model, implementation of the normal elastic contact force is based on the Johnson–Kendall–Roberts theory [58].
- Hysteretic spring contact—taking into account plastic deformations in the contact mechanics equations, as a result of which the particles behave elastically up to a predefined stress. Once this stress is exceeded, the particles behave as if they were undergoing plastic deformation. As a result, it is possible to obtain large contact surfaces between particles without excessive forces acting on them, which represents a compressible material. The calculation of the normal force is based on the Walton–Braun theory, presented in [59,60].
- Damped linear spring compression force model, based on the work of [56]. A linear spring with stiffness k is connected in parallel with a damper with coefficient c.
- EEPA elastic–plastic adhesion model (Edinburgh Elasto-Plastic Adhesion Model)—takes into account the dependence of past interactions, which is crucial, and the characteristic behaviors of cohesive solids. The flow behavior and transfer characteristics of cohesive granular solids are strongly dependent on the prior consolidation stress in the given body. The contact model includes a nonlinear spring model with hysteresis, which takes into account the elastic–plastic contact deformation and the adhesion force component. It has been assumed that the peel force (adhesion) increases with an increase in the plastic contact area [61,62].
2.2. Models of Constructional Materials Wear
2.2.1. Relative Wear
- En—accumulated contact energy in the normal direction to the contact surface [J];
- Et—accumulated contact energy in the tangential direction to the contact surface [J];
- Fn—contact force in the direction normal to the contact surface [N];
- Ft—contact force in the direction tangential to the contact surface [N];
- vn—speed of the particle in the direction normal to the contact surface [m/s];
- vt—speed of the particle in the direction tangential to the contact surface [m/s];
- δt—integration step [s].
2.2.2. Abrasive Wear
- dw—wear depth [m];
- E—wear volume [m3];
- A—surface area of the penetrated surface element [m2];
- K—empiric constant;
- Hv—hardness of the used material acc. to Vickers scale [GPa];
- Fn—contact force in the direction normal to the contact surface [N];
- ΔU—distance travelled by a particle while contacting the surface [m].
2.2.3. Oka Wear Model
- dw—depth of erosion loss [mm];
- E(∝)—unit loss volume [mm3/kg];
- g(∝)—dependence of the impact angle on standardized erosion;
- A—surface area of the penetrated surface element [m2];
- mp—particle mass [kg];
- ∝—angle of direction from which a given particle hits [rad];
- v—speed of the particle when it hits the surface [m/s];
- D—particle diameter [mm];
- Hv—hardness of the used material acc. to Vickers scale [GPa];
- W—material erosion wear constant. The constant takes the following values [64]: carbon steel: WOka~3; stainless steel: WOka~10; aluminum: WOka~1000.
2.3. Algorithm of Crerating the Computational Task
3. Implementation of the Method
3.1. Defining the Bulk Material Model
3.2. Side Chute
3.3. Coke Classification Line
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Surface Type | Material Type | Average Value of the Minimum Slide Angle (°) | Friction Coefficient |
---|---|---|---|
Polished steel | Aggregate, 0–0.5 mm | 22 | 0.40 |
Aggregate, 1–2 mm | 21 | 0.38 | |
Aggregate, 2–4 mm | 20.3 | 0.37 | |
Aggregate, 6–8 mm | 20 | 0.36 | |
Aggregate, 8–16 mm | 21 | 0.38 | |
Coal concentrate, 2–4 mm | 25.3 | 0.47 | |
Coal concentrate, 8–16 mm | 24.7 | 0.46 | |
Coal concentrate, 16–32 mm | 26.7 | 0.46 | |
Raw coal, 2–8 mm | 22.3 | 0.41 | |
Typical steel | Aggregate, 0–0.5 mm | 23 | 0.42 |
Aggregate, 1–2 mm | 22.3 | 0.41 | |
Aggregate, 2–4 mm | 22.7 | 0.42 | |
Aggregate, 6–8 mm | 25 | 0.47 | |
Aggregate, 8–16 mm | 26.3 | 0.49 | |
Coal concentrate, 2–4 mm | 26.7 | 0.50 | |
Coal concentrate, 8–16 mm | 28 | 0.53 | |
Coal concentrate, 16–32 mm | 26.3 | 0.49 | |
Raw coal, 2–8 mm | 23.7 | 0.44 |
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Tokarczyk, J.; Kowol, D.; Szewerda, K.; Matusiak, P. Virtual Prototyping of Bulk Material Preparation Devices in Mining Using Multiphysics Simulations. Appl. Sci. 2024, 14, 5903. https://doi.org/10.3390/app14135903
Tokarczyk J, Kowol D, Szewerda K, Matusiak P. Virtual Prototyping of Bulk Material Preparation Devices in Mining Using Multiphysics Simulations. Applied Sciences. 2024; 14(13):5903. https://doi.org/10.3390/app14135903
Chicago/Turabian StyleTokarczyk, Jarosław, Daniel Kowol, Kamil Szewerda, and Piotr Matusiak. 2024. "Virtual Prototyping of Bulk Material Preparation Devices in Mining Using Multiphysics Simulations" Applied Sciences 14, no. 13: 5903. https://doi.org/10.3390/app14135903
APA StyleTokarczyk, J., Kowol, D., Szewerda, K., & Matusiak, P. (2024). Virtual Prototyping of Bulk Material Preparation Devices in Mining Using Multiphysics Simulations. Applied Sciences, 14(13), 5903. https://doi.org/10.3390/app14135903