Hostname: page-component-cd9895bd7-jn8rn Total loading time: 0 Render date: 2024-12-26T15:21:58.391Z Has data issue: false hasContentIssue false

Finite element modeling of grasping porous materials in robotics cells

Published online by Cambridge University Press:  17 August 2023

Roman Mykhailyshyn*
Affiliation:
Texas Robotics, College of Natural Sciences and the Cockrell School of Engineering, The University of Texas at Austin, Austin, TX, USA Department of Robotics Engineering, Worcester Polytechnic Institute, Worcester, MA, USA EPAM School of Digital Technologies, American University Kyiv, Kyiv, Ukraine Department of Automation of Technological Processes and Manufacturing, Ternopil Ivan Puluj National Technical University, Ternopil, Ukraine
Ann Majewicz Fey
Affiliation:
Walker Department of Mechanical Engineering, The University of Texas at Austin, Austin, TX, USA Department of Surgery, UT Southwestern Medical Center, Dallas, TX, USA
Jing Xiao
Affiliation:
Department of Robotics Engineering, Worcester Polytechnic Institute, Worcester, MA, USA
*
Corresponding author: Roman Mykhailyshyn; Email: roman.mykhailyshyn@austin.utexas.edu
Rights & Permissions [Opens in a new window]

Abstract

Handling and manipulating flexible porous objects is one of the main challenges in robotics for household and industrial tasks. Improving the design of grippers for flexible objects of manipulation is an important stage in the development of this topic. This article proposes a method of modeling a gripper for porous objects using the finite element method. It identifies the main parameters of the model that will affect the grasping force and the permeability of porous objects. The power characteristics of the obtained gripper model for different supply pressures, with varying porosity of the manipulated objects, are determined. The obtained characteristics are then used to find the correspondence of channel length for three textile materials with different permeable properties. An experimental study of the lifting force is conducted, and a comparison is made with the obtained modeling data for the presented samples. Additionally, using the obtained simulation data, an analysis of the pressure distribution on the surface of the porous object of manipulation is performed. As a result, it is found that the gripping device must use a design with elements to stabilize the distribution of pressure in its chamber, which will increase the stability of the gripping process.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press

1. Introduction

Grasping and manipulating flexible objects is an important task within the scientific community, as such tasks present numerous challenges. The most popular tasks in this field, tackled by researchers, include modeling deformation of objects [Reference Arriola-Rios, Guler, Ficuciello, Kragic, Siciliano and Wyatt1], developing adaptive gripping systems [Reference Bjornsson, Jonsson and Johansen2], substantiating manipulation methods [Reference Sanchez, Corrales, Bouzgarrou and Mezouar3Reference Saadat and Nan6], developing gripping devices for specific types of flexible materials [Reference Seliger, Szimmat, Niemeier and Stephan7Reference Yoneyama, Watanabe, Kagawa, Hamada, Hayashi and Nakada11], studying the dynamics of manipulating flexible objects [Reference Park and Mills12], incorporating machine vision for manipulation of flexible objects [Reference Osawa, Seki and Kamiya13, Reference Hu, Sun and Pan14], investigating material deformations using torque sensors [Reference Longhini, Welle, Mitsioni and Kragic15], and many others. These challenges are increasingly prevalent with the growing presence of robotics in human environments. Consequently, the utilization of collaborative robots equipped with artificial vision systems and the ability to interact with flexible objects is becoming more common [Reference Garcia-Camacho, Borr‘as, Calli, Norton and Aleny‘a16, Reference Miller, Van Den Berg, Fritz, Darrell, Goldberg and Abbeel17]. Moreover, the automation of modern production and warehousing operations has long necessitated the handling of flexible objects [Reference Taylor18, Reference Fantoni, Santochi, Dini, Tracht, Scholz-Reiter, Fleischer, Kristoffer Lien, Seliger, Reinhart, Franke, Nørgaard Hansen and Verl19].

By analyzing reviews of grippers and applications for manipulating flexible objects [Reference Fantoni, Santochi, Dini, Tracht, Scholz-Reiter, Fleischer, Kristoffer Lien, Seliger, Reinhart, Franke, Nørgaard Hansen and Verl19Reference Lien25] in robotic systems, it becomes apparent that many problems can be more easily solved by using specialized grippers designed for specific types of flexible materials. One of the most challenging materials to grip and manipulate is textiles and their products. This difficulty arises from the distinct properties exhibited by textile materials, such as deformation and permeability, which vary depending on factors such as manufacturing method, shape, and processing [Reference Longhini, Welle, Mitsioni and Kragic15, Reference Willimon, Walker and Birchfield26]. Consequently, the development of grippers and the modeling of gripping and manipulation processes for textile materials have emerged as promising areas of research.

It has become a widespread practice to model and investigate the process of gripping flexible objects using mechanical gripping devices [Reference Arriola-Rios, Guler, Ficuciello, Kragic, Siciliano and Wyatt1, Reference Donaire, Borras, Alenya and Torras8, Reference Canbay, Ferrentino, Liu, Moccia, Pirozzi, Siciliano and Ficuciello27]. However, an article [Reference Mykhailyshyn, Savkiv, Fey and Xiao28] states that certain jet grippers, such as the one described in the article, make it much easier to handle flexible objects, particularly textiles. This ease is attributed to the ability of these grippers to grip objects from a distance and in various orientations. This advantage is achieved through the design of the Bernoulli ejection gripping device. Bernoulli gripping devices (BGDs), in general, possess unique properties that set them apart from other grippers [Reference Savkiv, Mykhailyshyn, Duchon and Fendo29Reference Toklu and Erzincanli31]. One notable application of BGDs is in food grasping and manipulation [Reference Davis, Gray and Caldwell32Reference Sam and Buniyamin34]. The first person to study the deformation caused by BGD on flexible objects was Prof. Brun and Melkote [Reference Brun and Melkote35, Reference Brun and Melkote36], and further development in this area can be found in the paper [Reference Liu, Teo, Liang and Tan37]. Furthermore, modifications of the BGD have been developed to grip leather products [Reference Dini, Fantoni and Failli38] and for organ gripping during laparoscopy [Reference Erturk and Samtas39].

Numerous papers [Reference Mykhailyshyn and Xiao40Reference Mykhailyshyn, Duchoň, Virgala, Sinčák and Fey50] have been dedicated to the modeling of Bernoulli gripper. The article [Reference Mykhailyshyn, Savkiv, Boyko, Prada and Virgala43] provides a substantiation of the shape and parameters of the gripper’s friction elements to ensure maximum lifting force. Additionally, it demonstrates the impact of gripping parameters on the positioning precision of objects during handling operations [Reference Savkiv, Mykhailyshyn, Duchon, Piscio, Medvid and Diahovchenko44]. It is worth noting that BGDs exhibit high dynamic characteristics, enabling contactless manipulation of objects [Reference Shi and Li45, Reference Mykhailyshyn, Savkiv, Duchon and Chovanec46]. The process of manufacturing and prototyping Bernoulli traps also has an important effect on their technical characteristics, which is explored in paper [Reference Mykhailyshyn, Duchoň, Mykhailyshyn and Fey51]. Most of the scientific papers [Reference Shi and Li47Reference Mykhailyshyn, Duchoň, Virgala, Sinčák and Fey50] are dedicated to the optimization and substantiation of BGD design parameters using various modeling methods. However, the modeling of grippers for flexible materials with pores, such as textiles, has not been addressed. The authors of the article [Reference Mykhailyshyn, Savkiv, Fey and Xiao28] proposed a gripping device for flexible and porous objects, based on the BGD (Fig. 1).

Figure 1. Gripper design for flexible and porous objects [Reference Mykhailyshyn, Savkiv, Fey and Xiao28] (1 – housing, 2 – fitting, 3 – compressed pressure supply hose, 4 – conical insert, 5 – holder, 6 – anti-vibration insert, and 7 – anti-vibration mounting bolts).

One notable feature of this gripper is the inclusion of an anti-vibration insert (labeled as 6), which effectively reduces the vibration of the manipulated flexible object. This gripper device enables the grasping of objects from a significantly greater distance compared to the traditional ejection gripper. Moreover, the orientation of the manipulated object in space is not critical during the grasping process, thus making this technology suitable for uncertain conditions.

However, this gripper designed for flexible and porous objects is not optimal in terms of technical characteristics. Therefore, in this article, the authors first propose a model that utilizes the finite element method (FEM) to simulate the operation of the gripping device for flexible and porous materials. The developed method’s adequacy is verified by comparing the obtained data with experimental studies. Using this model, the authors identify the parameters that influence the gripping process. Based on the analysis of the gripper’s design impact on its power characteristics, the authors suggest modifications to the compressed air supply system for the gripper chamber. Modifying the gripper design enables the prevention of object displacement during grasping.

2. Materials and methods

To check the adequacy and calibration of the developed model, experimental studies of the device for grasping flexible and porous objects were conducted using the method proposed by the authors in the article [Reference Mykhailyshyn, Savkiv, Fey and Xiao28]. This method involves determining the grasping force for each type of material that will be used as the manipulated object (Fig. 2).

Figure 2. Experimental configuration for determining the grasping force for flexible and porous objects of manipulation [Reference Mykhailyshyn, Savkiv, Fey and Xiao28] (1 – gripper body, 2 – fitting, 3 – housing, 8 – connector, 9 – textile material, 10 – bottom board attached to scales, 11 – the top plate fastening textiles to the bottom plate, 12 – the chamber of the gripping device, 13 – an annular nozzle of the gripper, 14 – devacuumation openings, and 15 – threaded connection of the holder and the case of the gripper).

The experimental configuration consists of an industrial robot with a gripping device for flexible and porous objects fixed on the flange using connector label 8. The gripping device approaches the textile material (labeled as 9). The material is secured to the bottom plate (labeled as 10), which is then connected to a weight (with an accuracy of $\pm$ 1 g). When pressure is applied through the hose (labeled as 3) to the gripper chamber (labeled as 12), air flows through the annular nozzle (labeled as 13). The ejection effect under the conical insert creates a vacuum, resulting in air being suctioned through the pores of the insert. This leads to the creation of a pressure difference in the area of application of the gripper and beyond it. To measure the grasping force, the gripper moves vertically upwards relative to the manipulated object, and the maximum lifting force value is recorded during the movement.

Thanks to the design of the gripping device, it is possible to adjust the gap between the insert (labeled as 6) and the gripping device from 0.3 mm to 4 mm. The pressure in the gripping chamber is adjusted from 15 to 200 kPa using a pressure reducer. During the study, the following parameters of the gripper were kept constant: the radius of the insert (4) is 15 mm, the radius of the gripper is 30 mm, the angle of the insert (4) is 20°, and the height of the conical insert at the thinnest point is 0.1 mm.

A digital 3D scanning profilometer was utilized to analyze the parameters of the material. Two plain weave fabrics were chosen, each exhibiting distinct characteristics [Reference Mykhailyshyn52]: Polyester 6 (Fig. 3(a)) – thread width from 0.2 mm to 0.23 mm, pore width and height from 0.01 mm to 0.055 mm; Flannel 3 (Fig. 3(b)) – thread width from 0.2 mm to 0.4 mm, and visible pores are almost absent. The parameters of the surface profile of the textile materials were determined using a 3D scanning microscope, Keyence VHX-70000 (Fig. 4).

Figure 3. Studied material [Reference Mykhailyshyn52] plain weave (x20 and x150): (a) Polyester 6; (b) Flannel 3.

Figure 4. Textile surface profile Polyester 6: (a) 3D drawing of a textile surface profile; (b) Graph of the obtained profile along three lines.

From Fig. 4, the profile of the material is uneven due to weaving and has a depth of μm in this case. It is challenging to accurately replicate the geometry of the textile material, including all the three-dimensional pores. Therefore, to account for the porosity of the threads and significant deviations in the profile of the textile material, a simplified model of porosity is proposed. In the simulation, a camera (with height $H$ ) is utilized to represent the porous material. The camera is positioned beneath the anti-vibration nozzle and has the same diameter as the gripping device (refer to Fig. 5).

Figure 5. The schematic diagram for modeling a gripping device for flexible and porous objects.

A channel with a variable diameter $D$ and length $L$ is connected to the chamber, simulating a porous object. By adjusting these parameters, the permeability of the manipulation object (textile) can be controlled. The grasping force is measured at the average height of the chamber, which is $H/2$ . This choice is based on the fact that the pressure in the middle section area is the most stable and represents the average value. An anti-vibration insert with 50% plastic filling for 3D printing was selected for the simulation. The specific parameters of the grid insert, such as line width of 0.5 mm and hole size of 1×1 mm, were determined using microscopy.

The mathematical model for the flow of air in the gap between the gripper and insert is defined on the RANS equations [Reference Cant53, Reference Aubin, Fletcher and Xuereb54]. The modeling utilized the Shear Stress Transport (SST) turbulence model [Reference Menter55] and the $\gamma$ -model of laminar-turbulent transition [Reference Menter, Esch and Kubacki56, Reference Menter, Langtry and Volker57].

The $\gamma$ -model of laminar-turbulent transition is described by a single differential equation governing the interdependence coefficient $\gamma$ :

(1) \begin{equation} \frac{\partial (\rho \gamma )}{\partial t}+\frac{\partial (\rho v_j \gamma )}{\partial x_j}=P_\gamma -E_\gamma +\frac{\partial }{\partial x_j} \left [ \mu + \left ( \frac{\mu _t}{\sigma _\gamma } \right ) \frac{\partial \gamma }{\partial x_j} \right ], \end{equation}

where $\rho$ is the air density; $t$ is the time; $x$ is the coordinate; $v$ is the vector of air velocity; $P_\gamma$ , $E_\gamma$ are, respectively, generative and dissipation members of managing directors of laminar and turbulent transition; $\mu$ is the molecular dynamic viscosity of gas; $\mu _t$ is the turbulent dynamic viscosity of gas; and $\sigma _\gamma =1.0$ is the model constant.

The transition model uses modified equations of the SST model:

(2) \begin{equation} \frac{\partial }{\partial t} (\rho k)+ \frac{\partial }{\partial x_j} (\rho v_j k)=\tilde{P}_k+P_k^{\text{lim}}-\tilde{D}_k+ \frac{\partial }{\partial x_j} \left ( (\mu +\sigma _k \mu _t) \frac{\partial k}{\partial x_j} \right ), \end{equation}
(3) \begin{equation} \frac{\partial }{\partial t} (\rho \omega )+ \frac{\partial }{\partial x_j} (\rho v_j \omega )=\alpha \frac{P_k}{v_t}-D_\omega +C d_\omega + \frac{\partial }{\partial x_j} \left ( (\mu +\sigma _\omega \mu _t) \frac{\partial \omega }{\partial x_j} \right ), \end{equation}

where $k$ is the kinetic turbulent energy; $\omega$ is the specific speed of dissipation of kinetic energy of turbulence; $P_k$ , $D_k$ are the original generation and dissipation of the SST model; $P_k^{\text{lim}}$ is the additional part, which provides the correct gain of turbulent viscosity in transitional area at very low level of turbulent viscosity of the running stream; $v_t$ is the turbulent kinematic viscosity of gas; and $\sigma _k$ , $\alpha$ , $a_1$ are the empirical constants of model.

3. Results and discussion

Based on the gripper design, a model of the grasping process of flexible and porous objects was developed, incorporating specific boundary conditions for the airflow (Fig. 6).

Figure 6. Boundary conditions for air flow model.

There are several types of solvers using SST turbulence models in Ansys-CFX. Therefore, was conducted the study of the influence elements $e_s$ of the grid between adjacent planes on the grasping force (Fig. 7). Changing this parameter in turn changes the number of e mesh grid elements. For this modeling, the inlet pressure is $p_0 = 100$ kPa, $H = 20$ mm, $D = 3$ mm, and $L = 50$ mm, and the gap between the insert and the gripper is $h_1 = 0.6$ mm.

Figure 7. Influence of the number of grid elements on the lifting force of the gripper (GT – gamma theta, G – gamma, FT – fully turbulence, SI – special intermediately, and I – intermediately).

Several types of solvers that utilize SST turbulence models in Ansys-CFX are available. Therefore, a study was conducted to examine the influence of the number of grid elements $e_s$ between adjacent planes on the grasping force (Fig. 7). By modifying this parameter, the number of mesh grid elements is altered accordingly. In this modeling study, the following parameters were used: inlet pressure $p_0 = 100$ kPa, $H = 20$ mm, $D = 3$ mm, and $L = 50$ mm, and the gap between the anti-vibration insert and the gripper is $h_1 = 0.6$ mm.

As depicted in Fig. 7, the lifting force remains constant for all models up to $e_s = 3$ , while only the SI model achieves the maximum value at $e_s = 4$ . The remaining models reach their maximum lifting force at $e_s = 5$ ; hence, the SI model at $e_s = 4$ will be utilized for future modeling. The number of mesh grid elements will vary based on changes in parameters $H$ , $D$ , and $L$ (Fig. 8). It has been determined that the average number of volume elements in the mesh grid is 7.4 million, with a total of 1.4 million nodes in the working area.

Figure 8. Mesh grid of final elements of air flow.

For further investigation, the modeling includes examining the impact of changing the height of the chamber ( $H$ ) on the grasping force and the airflow through the channel connected to the chamber (Fig. 9).

Figure 9. The effect of the height of the model chamber on: (a) the lifting force of the gripper and (b) air flow through the channel.

As observed in Fig. 9, the grasping force increases as the height of the chamber ( $H$ ) is raised, with a corresponding increase in pressure within the 5–20 mm range. In other cases, the model exhibits inappropriate behavior. Conversely, an increase in pressure should result in a proportional increase in airflow rate. This behavior is characteristic of a chamber height exceeding 10 mm. These characteristics accurately describe the operational model of the gripping device within the 10–20 mm range. Consequently, a height of $H = 15$ mm, representing the midpoint of this range, was selected for further studies.

By adjusting the parameters of the diameter ( $D$ ) and length ( $L$ ) of the channel connected to the chamber, it becomes possible to modify the airflow through the textile material while maintaining a constant supply pressure of $p_0 = 100$ kPa (Fig. 10).

Figure 10. The effect of the diameter of the model channel on: (a) the lifting force of the gripper and (b) air flow through the channel.

From Fig. 10, the grasping force is not stable when the channel diameter is up to 8 mm. To ensure adequacy, it is necessary for the lifting force to increase with increasing channel length while keeping the diameter constant, resulting in reduced air consumption. This is because increasing the length of the channel increases the energy consumption of air due to friction forces on the passage of a longer section of the channel. This trend begins to manifest itself with a channel diameter of more than 8 mm. To verify the linearity of the characteristic, a study of the influence of the channel length $L$ at $D = 12$ mm on the lifting force (Fig. 11(a)) was conducted with $L$ ranging from 20 mm to 220 mm.

Figure 11. Influence of channel length on the lifting force of the gripper: (a) at various supply pressures and (b) at various diameters of the channel.

From Fig. 11(a), it is evident that the lifting force does not exhibit a linear characteristic and has an underestimated value in the range $L = 100 \ldots 160\,$ mm. The same characteristic is observed with smaller channel diameters. Therefore, to study the linearity of the lifting force characteristic (Fig 11(b)), the influence of the channel length $L = 40\ldots 240$ mm was further examined at different diameters ranging from $D=10-40$ mm and a constant supply pressure of $p_0=100$ kPa.

The greatest linearity of the grasping force is observed (Fig 11(b)) within the range of channel length $L=40-200$ mm, with a channel diameter of $D=25$ mm. Therefore, for further research, the proposed model (SI model) will utilize the following parameters: $H=15$ mm, $D=25$ mm, and $L=40-200$ mm, to determine its characteristics (Fig. 12).

Figure 12. Power characteristics of the developed model of the gripping device for flexible and porous objects at various parameters of inlet pressure.

As shown in Fig. 12, the grasping force for flexible and porous objects remains linear throughout the entire range of channel length changes. This allows us to use the obtained modeling results (Fig. 12) for comparison with experimental data.

Using the experimental data obtained for materials Polyester 6, Flannel 3, and Linen 0 [Reference Mykhailyshyn52], the channel length of the model was determined, which correlates with the experimental materials (Table I). Based on the average value of the channel length determined for each material, approximate values were accepted: Polyester 6 – $L$ = 100 mm, Flannel 3 – $L$ = 160 mm, and Linen 0 – $L$ = 140 mm.

Table I. The ratio of the experimental to the channel length of the model.

To analyze the reliability of the results obtained from the developed model compared to experimental data, graphical dependencies illustrating the influence of the grasping force on the inlet pressure are presented (Fig. 13).

Figure 13. Influence of the inlet pressure of the gripping device on the lifting force for textile materials (experiment and modeling).

The relative error between the simulation results and the experimental results was found to be 13%. It is acknowledged that in gas-dynamic modeling problems, an acceptable error can be up to 30%. Additionally, the flexibility and partial deformation of the textile material and insert during grasping and manipulation contribute to the increased error. Based on this, it can be concluded that the obtained modeling results are adequate, and the proposed model can be utilized for further research and optimization of grippers with similar designs.

The analysis of the obtained results of pressure and air velocity distribution is performed in a chamber that simulates a porous material (SI model, $H = 15$ mm, $D = 25$ mm, $L = 140$ mm, $p_0 = 100$ kPa) (Fig. 14(a)). The pressure in the chamber is observed along three lines: 1 – upper position, 2 – middle position, and 3 – lower position. The pressure distribution at different positions of the chamber in the model of the gripping device is examined (Fig. 14(b)).

Figure 14. Pressure distribution the cross-section of the model of the gripping device with marked position along the lines that pass.

As shown in Fig. 14(b), the pressure distribution along line 2 exhibits the same profile as along line 1. Pressure jumps in line 1 are formed due to the interaction of air flows through the holes of the anti-vibration insert, which is confirmed by the pressure distribution along line 1 in Fig. 15(a). However, the pressure distribution along line 2 is more stable, with no pressure jumps at the periphery. This is why, in the proposed methodology, the lifting force is determined based on the pressure distribution across the cross-section of the chamber’s middle. Line 3 is not taken into account due to its lower vacuum caused by its proximity to the channel. Furthermore, it can be observed that the pressure distribution is not symmetrical about the axis of the gripping device. This trend is consistent with other pressure parameters and changes in valve length. Therefore, the pressure distribution on the cross-sectional surfaces of the model gripping device’s chamber is examined (Fig. 15).

Figure 15. Distribution of pressure on three sections of the chamber of the model of the gripping device: (a) 1 plane; (b) 2 planes; and (c) 3 planes.

From Fig. 15, it is evident that more vacuum is generated in the left part of the chamber. In particular, the experiment demonstrated that when manipulating the object, it tends to shift relative to the axis of the gripping device. The displacement occurs in the direction from which the air is supplied. The influence of the direction of the compressed air inlet is discussed in the paper [Reference Mykhailyshyn and Xiao40]. For rigid objects, a slight increase in a vacuum on one side of the gripper has minimal impact on its grasping stability. However, when handling light, flexible, and porous materials, this effect can cause significant displacement of the manipulated object relative to the grasping system. Therefore, this effect is undesirable for gripping devices designed for flexible and porous objects. To achieve an even distribution of airflow in the gripping device chamber, it is proposed to utilize a compressed air inlet through four radial holes with a diameter of $D1$ in the mounting of the conical insert (Fig. 16(a)).

Figure 16. modernized gripping device: (a) geometry and (b) pressure distribution in section 2 of the chamber.

Using the modernized model shown in Fig. 16(a) ( $D1 = 3$ mm, SI model, $H = 15$ mm, $D = 25$ mm, $L = 140$ mm, $p_0 = 100$ kPa), the pressure distribution in the chamber (Plane 2) is determined, simulating the behavior of textile material (Fig. 16(b)).

The updated design of the gripper model is characterized by a uniform pressure distribution (Fig. 16(b)). However, the lifting force of the gripping device for this design will be lower than that of the previous design, as the pressure generated in the chamber is greater. Therefore, research was conducted to investigate the effect of the inlet pressure on the grasping force for different models (Fig. 17).

Figure 17. Influence of inlet pressure on the lifting force of the gripper at various pressure supply designs.

As can be seen from Fig. 17, the gripper for flexible and porous objects with pressure stabilization in the chamber has, on average, a 10% lower lifting force compared to the design with direct pressure supply to the chamber. This is because, when the supply pressure is applied through the fitting, compressed air does not directly enter the gripping chamber (Fig. 18).

Figure 18. Compressed air supply design with radial holes to stabilize the air pressure in the chamber of the gripping device for porous and flexible objects.

Before the compressed air enters outlet chamber 13 of the gripping device, it passes through the small chamber 16 and the radial holes 17 in it, which reduces the energy of the airflow. However, despite the 10% reduction in the grasping force, the new design allows for increased gripping stability and minimizes object displacement during handling operations. It is still possible for the object of manipulation to experience displacement during the gripping process, as there are factors that affect this process regardless of the gripper’s design. These factors include the positioning error of the gripping device relative to the horizontal plane, the displacement of the manipulation object’s center of mass, the distance from which the gripper engages, the mechanical characteristics of the manipulation object, and the material from which it is made.

4. Conclusions

The article proposes a method for modeling gripping devices designed for flexible and porous objects using the FEM. The main parameters of the model that affect the lifting force and permeability of porous objects are identified. A special intermediately SST turbulence model is proposed to be used with a minimum of 4 elements between adjacent planes of the model. Other model parameters for porous objects are determined by analyzing experimental simulation results: chamber height of 15 mm and channel diameter of 25 mm.

The power characteristics of the obtained model are determined for different supply pressures of the gripper while varying the length of the object channel. This allows for the simulation of compressed air flow changes through a porous object during manipulation. Using the obtained characteristics, the corresponding channel length is determined for three textile materials with different permeable properties. An experimental study is conducted, and the lifting force is compared with the obtained modeling data for three material samples. The relative error between the simulation results and the experimental results is found to be 13%. This error, considering the nature of gas-dynamic problems and flexible materials, indicates the adequacy of the results. One drawback of the proposed method is that when modifying the parameters of the anti-vibration insert or the gap of the circular nozzle, it becomes necessary to reevaluate the appropriate parameters of the model for ensuring its adequacy.

Using the obtained modeling data, an analysis of the pressure distribution on the surface of the porous object during manipulation is performed. It is determined that the lifting force is unevenly distributed on the object’s surface, leading to object displacement relative to the gripper’s axis during gripping. This displacement is influenced by the parameters of compressed air entry into the gripper chamber. It is established that a system with radial holes for applying pressure to the gripper chamber should be used in the design of grippers for porous and flexible objects. This allows for the stabilization of pressure within the gripper chamber and achieves a symmetrical distribution of vacuum on the object’s surface.

In the future, the proposed method will be used to investigate the influence of gripping device parameters on the vibration characteristics of manipulated objects and to optimize the active surface of the gripping device.

Author contributions

RM and JX conceived and designed the study. RM and AMF conducted simulation and data collecting. RM performed analyses. RM, AMF, and JX wrote the article.

Financial support

This work was supported in part by the U.S. Department of State (DOS), Bureau of Educational and Cultural Affairs (ECA), Exchange Visitor Program #G-1-00005 with the cooperation of the Institute of International Education (IIE) under Fulbright Grant PS00322778.

Competing interests

The authors declare no conflicts of interest exist.

Ethical approval

Not applicable.

References

Arriola-Rios, V. E., Guler, P., Ficuciello, F., Kragic, D., Siciliano, B. and Wyatt, J. L., “Modeling of deformable objects for robotic manipulation: A tut orial and review,” Front. Robot. AI 82(7), 1–25 (2020). doi: 10.3389/frobt.2020.00082 Google Scholar
Bjornsson, A., Jonsson, M. and Johansen, K., “Automated material handling in composite manufacturing using pick-and-place systems-a review,” Robot. Comput. Integr. Manuf. 51, 222229 (2018).CrossRefGoogle Scholar
Sanchez, J., Corrales, J.-A., Bouzgarrou, B.-C. and Mezouar, Y., “Robotic manipulation and sensing of deformable objects in domestic and industrial applications: A survey,” Int. J. Robot. Res. 37(7), 688716 (2018).CrossRefGoogle Scholar
Borr‘as, J., Aleny‘a, G. and Torras, C., “A grasping-centered analysis for cloth manipulation,” IEEE Trans. Robot. 36(3), 924936 (2020).CrossRefGoogle Scholar
Nadon, F., Valencia, A. J. and Payeur, P., “Multi-modal sensing and robotic manipulation of non-rigid objects: A survey,” Robotics 7(4), 74 (2018).CrossRefGoogle Scholar
Saadat, M. and Nan, P., “Industrial applications of automatic manipulation of flexible materials,” Ind. Robot 29(5), 434442 (2002).CrossRefGoogle Scholar
Seliger, G., Szimmat, F., Niemeier, J. and Stephan, J., “Automated handling of non-rigid parts,” CIRP Ann. 52(1), 2124 (2003).CrossRefGoogle Scholar
Donaire, S., Borras, J., Alenya, G. and Torras, C., “A versatile gripper for cloth manipulation,” IEEE Robot. Autom. Lett. 5(4), 65206527 (2020).CrossRefGoogle Scholar
Digumarti, K. M., Cacucciolo, V. and Shea, H., “Dexterous Textile Manipulation Using Electro-adhesive Fingers,” In: 2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) (2021) pp. 61046109.Google Scholar
Schaler, E. W., Ruffatto, D., Glick, P., White, V. and Parness, A., “An Electrostatic Gripper for Flexible Objects,” In: 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) (2017) pp. 11721179.Google Scholar
Yoneyama, T., Watanabe, T., Kagawa, H., Hamada, J., Hayashi, Y. and Nakada, M., “Force Detecting Gripper and Flexible Micro Manipulator for Neurosurgery,” In: 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society (2011) pp. 66956699.CrossRefGoogle Scholar
Park, E. J. and Mills, J. K., “Dynamic Modeling of Flexible Payloads Grasped by Actuated Grippers Using Component Mode Synthesis,” In: Proceedings 2002 IEEE International Conference on Robotics and Automation (2002) pp. 24432448.Google Scholar
Osawa, F., Seki, H. and Kamiya, Y., “Unfolding of massive laundry and classification types by dual manipulator,” J. Adv. Comput. Intel. Intel. Inf. 11(5), 457463 (2007).CrossRefGoogle Scholar
Hu, Z., Sun, P. and Pan, J., “Three-dimensional deformable object manipulation using fast online gaussian process regression,” IEEE Robot. Autom. Lett. 3(2), 979986 (2018).CrossRefGoogle Scholar
Longhini, A., Welle, M. C., Mitsioni, I. and Kragic, D., “Textile Taxonomy and Classification Using Pulling and Twisting,” In: 2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) (2021) pp. 75647571.CrossRefGoogle Scholar
Garcia-Camacho, I., Borr‘as, J., Calli, B., Norton, A. and Aleny‘a, G., “Household Cloth Object Set: Fostering Benchmarking in Deformable Object Manipulation,” IEEE Robot. Autom. Lett. 7(3), 58665873 (2022).CrossRefGoogle Scholar
Miller, S., Van Den Berg, J., Fritz, M., Darrell, T., Goldberg, K. and Abbeel, P., “A Geometric Approach to Robotic Laundry Folding,” Int. J. Rob. Res. 31(2), 249267 (2012).CrossRefGoogle Scholar
Taylor, P. M., “Presentation and gripping of flexible materials,” Assem. Autom. 15(3), 3335 (1995).CrossRefGoogle Scholar
Fantoni, G., Santochi, M., Dini, G., Tracht, K., Scholz-Reiter, B., Fleischer, J., Kristoffer Lien, T., Seliger, G., Reinhart, G., Franke, J., Nørgaard Hansen, H. and Verl, A., “Grasping devices and methods in automated production processes,” CIRP Ann. 63(2), 679701 (2014).CrossRefGoogle Scholar
Kemp, D. R., Taylor, P. M. and Taylor, G. E., “An Adaptive Sensory Gripper for Fabric Handling,” In: Proc. 4th IASTED Symp. on Robotics & Automation (1984).Google Scholar
Vercraene, F. and Esquirol, P., “Analysis of a Ply Separation Gripper; Sensory Robotica for the Handling of Limb Materials,” In: NATO ASI Series F (1990) pp. 127136.Google Scholar
Monkman, G. J., “Sensory integrated fabric ply separation,” Robotica 14(1), 114125 (1996).CrossRefGoogle Scholar
Tai, K., El-Sayed, A.-R., Shahriari, M., Biglarbegian, M. and Mahmud, S., “State of the art robotic grippers and applications,” Robotics 5(2), 11 (2016).CrossRefGoogle Scholar
Mykhailyshyn, R., Savkiv, V., Maruschak, P. and Xiao, J., “A systematic review on pneumatic gripping devices for industrial robots,” Transport 37(3), 201231 (2022).CrossRefGoogle Scholar
Lien, T., “Gripper Technologies for Food Industry Robots,” In: Robotics and Automation in the Food Industry (2013) pp. 143170.CrossRefGoogle Scholar
Willimon, B., Walker, I. and Birchfield, S., “Classification of clothing using midlevel layers,” Int. Sch. Res. Not. 2013, 117 (2013).Google Scholar
Canbay, D. E., Ferrentino, P., Liu, H., Moccia, R., Pirozzi, S., Siciliano, B. and Ficuciello, F., “Calibration of Tactile/Force Sensors for Grasping with the Prisma Hand II,” In: 2021 IEEE/ASME International Conference on Advanced Intelligent Mechatronics (AIM) (2021) pp. 442447.Google Scholar
Mykhailyshyn, R., Savkiv, V., Fey, A. M. and Xiao, J., “Gripping device for textile materials,” IEEE Trans. Autom. Sci. Eng. (2022). doi: 10.1109/TASE.2022.3208796 CrossRefGoogle Scholar
Savkiv, V., Mykhailyshyn, R., Duchon, F. and Fendo, O., “Justification of design and parameters of bernoulli-vacuum gripping device,” Int. J. Adv. Robot. Syst. 14(6), 1729881417741740 (2017).CrossRefGoogle Scholar
Savkiv, V., Mykhailyshyn, R. and Duchon, F., “Gasdynamic analysis of the bernoulli grippers interaction with the surface of flat objects with displacement of the center of mass,” Vacuum 159, 524533 (2019).CrossRefGoogle Scholar
Toklu, E. and Erzincanli, F., “Modeling of radial flow on a non-contact end effector for robotic handling of non-rigid material,” J. Appl. Res. Technol. 10(4), 590596 (2012).CrossRefGoogle Scholar
Davis, S., Gray, J. and Caldwell, D. G., “An end effector based on the bernoulli principle for handling sliced fruit and vegetables,” Robot. Comput. Integr. Manuf. 24(2), 249257 (2008).CrossRefGoogle Scholar
Petterson, A., Ohlsson, T., Caldwell, D. G., Davis, S., Gray, J. O. and Dodd, T. J., “A Bernoulli principle gripper for handling of planar and 3D (food) products,” Ind. Robot. 37(6), 518526 (2010).CrossRefGoogle Scholar
Sam, R. and Buniyamin, N., “A Bernoulli Principle Based Flexible Handling Device for Automation of Food Manufacturing Processes,” In: 2012 International Conference on Control, Automation and Information Sciences (ICCAIS) (2012) pp. 214219.CrossRefGoogle Scholar
Brun, X. F. and Melkote, S. N., “Evaluation of Handling Stresses Applied to EFG Silicon Wafer using a Bernoulli Gripper,” In: IEEE 4th World Conference on Photovoltaic Energy Conference (2006) pp. 13461349.Google Scholar
Brun, X. and Melkote, S., “Effect of substrate flexibility on the pressure distribution and lifting force generated by a bernoulli gripper,” J. Manuf. Sci. Eng. 134(5), 051010 (2012).CrossRefGoogle Scholar
Liu, D., Teo, C. S., Liang, W. and Tan, K. K., “Soft-acting, noncontact gripping method for ultrathin wafers using distributed bernoulli principle,” IEEE Trans. Autom. Sci. Eng. 16(2), 668677 (2018).CrossRefGoogle Scholar
Dini, G., Fantoni, G. and Failli, F., “Grasping leather plies by bernoulli grippers,” CIRP Ann. 58(1), 2124 (2009).CrossRefGoogle Scholar
Erturk, S. and Samtas, G., “Design of grippers for laparoscopic surgery and optimization of experimental parameters for maximum tissue weight holding capacity,” Bull. Polish Acad. Sci. Tech. Sci. 67(6), 11251132 (2019).Google Scholar
Mykhailyshyn, R. and Xiao, J., “Influence of inlet parameters on power characteristics of bernoulli gripping devices for industrial robots,” Appl. Sci. 12(14), 7074 (2022).CrossRefGoogle Scholar
Savkiv, V., Mykhailyshyn, R., Maruschak, P., Kyrylovych, V., Duchon, F. and Chovanec, L., “Gripping devices of industrial robots for manipulating offset dish antenna billets and controlling their shape,” Transport 36(1), 6374 (2021).CrossRefGoogle Scholar
Savkiv, V., Mykhailyshyn, R., Duchon, F., Maruschak, P. and Prentkovskis, O., “Substantiation of Bernoulli Grippers Parameters at Non-Contact Transportation of Objects with a Displaced Center of Mass,” In: Transport Means 2018: Proceedings of the 22nd International Scientific Conference (2018) pp. 35.Google Scholar
Mykhailyshyn, R., Savkiv, V., Boyko, I., Prada, E. and Virgala, I., “Substantiation of parameters of friction elements of bernoulli grippers with a cylindrical nozzle,” Int. J. Manuf. Mater. Mech. Eng. 11(2), 1739 (2021).Google Scholar
Savkiv, V., Mykhailyshyn, R., Duchon, F., Piscio, V., Medvid, V. and Diahovchenko, I. M., “Investigation of the Accuracy of the Base of the Object of Manipulation of Bernoulli Gripping Devices,” In: 2021 IEEE 3rd Ukraine Conference on Electrical and Computer Engineering (UKRCON) (2021) pp. 421425.CrossRefGoogle Scholar
Shi, K. and Li, X., “Experimental and theoretical study of dynamic characteristics of bernoulli gripper,” Prec. Eng. 52, 323331 (2018).CrossRefGoogle Scholar
Mykhailyshyn, R., Savkiv, V., Duchon, F. and Chovanec, L., “Experimental Investigations of the Dynamics of Contactless Transportation by Bernoulli Grippers,” In: 2020 IEEE 6th International Conference on Methods and Systems of Navigation and Motion Control (MSNMC) (2020) pp. 97100.CrossRefGoogle Scholar
Shi, K. and Li, X., “Optimization of outer diameter of bernoulli gripper,” Exp. Therm. Fluid. Sci. 77, 284294 (2016).CrossRefGoogle Scholar
Giesen, T., Burk, E., Fischmann, C., Gauchel, W., Zindl, M. and Verl, A., “Advanced gripper development and tests for automated photovoltaic wafer handling,” Assem. Autom. 33(4), 334344 (2013).CrossRefGoogle Scholar
Yu, X. and Li, X., “Inertia-enhancement effect of divergent flow on the force characteristics of a bernoulli gripper,” Phys. Fluids 33(5), 057108 (2021).CrossRefGoogle Scholar
Mykhailyshyn, R., Duchoň, F., Virgala, I., Sinčák, P. J. and Fey, A. M., “Optimization of outer diameter bernoulli gripper with cylindrical nozzle,” Machines 11(6), 667 (2023).CrossRefGoogle Scholar
Mykhailyshyn, R., Duchoň, F., Mykhailyshyn, M. and Fey, A. M., “Three-dimensional printing of cylindrical nozzle elements of bernoulli gripping devices for industrial robots,” Robotics 11(6), 140 (2022).CrossRefGoogle Scholar
Mykhailyshyn, R., Substantiation Parameters of Gripping Devices of Industrial Robots and Methods of Manipulation of Flexible Objects. https://romanmykhailyshyn.github.io/portfolio/portfolio-1/ (Accessed: 18 May 2023).Google Scholar
Cant, S., “High-performance computing in computational fluid dynamics: Progress and challenges,” Philos. Trans. A Math. Phys. Eng. Sci. 360(1795), 12111225 (2002).CrossRefGoogle ScholarPubMed
Aubin, J., Fletcher, D. F. and Xuereb, C., “Modeling turbulent flow in stirred tanks with CFD: The influence of the modeling approach, turbulence model and numerical scheme,” Exp. Therm. Fluid. Sci. 28(5), 431445 (2004).CrossRefGoogle Scholar
Menter, F. R., “Two-equation eddy-viscosity turbulence models for engineering applications,” AIAA J. 32(8), 15981605 (1994).CrossRefGoogle Scholar
Menter, F., Esch, T. and Kubacki, S., “Transition modelling based on local variables,” Eng. Turbul. Model. Exp. 5, 555564 (2002).CrossRefGoogle Scholar
Menter, F. R., Langtry, R. and Volker, S., “Transition modelling for general purpose CFD codes,” Flow Turbul. Combust. 77(1), 277303 (2006).CrossRefGoogle Scholar
Figure 0

Figure 1. Gripper design for flexible and porous objects [28] (1 – housing, 2 – fitting, 3 – compressed pressure supply hose, 4 – conical insert, 5 – holder, 6 – anti-vibration insert, and 7 – anti-vibration mounting bolts).

Figure 1

Figure 2. Experimental configuration for determining the grasping force for flexible and porous objects of manipulation [28] (1 – gripper body, 2 – fitting, 3 – housing, 8 – connector, 9 – textile material, 10 – bottom board attached to scales, 11 – the top plate fastening textiles to the bottom plate, 12 – the chamber of the gripping device, 13 – an annular nozzle of the gripper, 14 – devacuumation openings, and 15 – threaded connection of the holder and the case of the gripper).

Figure 2

Figure 3. Studied material [52] plain weave (x20 and x150): (a) Polyester 6; (b) Flannel 3.

Figure 3

Figure 4. Textile surface profile Polyester 6: (a) 3D drawing of a textile surface profile; (b) Graph of the obtained profile along three lines.

Figure 4

Figure 5. The schematic diagram for modeling a gripping device for flexible and porous objects.

Figure 5

Figure 6. Boundary conditions for air flow model.

Figure 6

Figure 7. Influence of the number of grid elements on the lifting force of the gripper (GT – gamma theta, G – gamma, FT – fully turbulence, SI – special intermediately, and I – intermediately).

Figure 7

Figure 8. Mesh grid of final elements of air flow.

Figure 8

Figure 9. The effect of the height of the model chamber on: (a) the lifting force of the gripper and (b) air flow through the channel.

Figure 9

Figure 10. The effect of the diameter of the model channel on: (a) the lifting force of the gripper and (b) air flow through the channel.

Figure 10

Figure 11. Influence of channel length on the lifting force of the gripper: (a) at various supply pressures and (b) at various diameters of the channel.

Figure 11

Figure 12. Power characteristics of the developed model of the gripping device for flexible and porous objects at various parameters of inlet pressure.

Figure 12

Table I. The ratio of the experimental to the channel length of the model.

Figure 13

Figure 13. Influence of the inlet pressure of the gripping device on the lifting force for textile materials (experiment and modeling).

Figure 14

Figure 14. Pressure distribution the cross-section of the model of the gripping device with marked position along the lines that pass.

Figure 15

Figure 15. Distribution of pressure on three sections of the chamber of the model of the gripping device: (a) 1 plane; (b) 2 planes; and (c) 3 planes.

Figure 16

Figure 16. modernized gripping device: (a) geometry and (b) pressure distribution in section 2 of the chamber.

Figure 17

Figure 17. Influence of inlet pressure on the lifting force of the gripper at various pressure supply designs.

Figure 18

Figure 18. Compressed air supply design with radial holes to stabilize the air pressure in the chamber of the gripping device for porous and flexible objects.