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Article

Determining the Proper Force Parameters for Robotized Pipetting Devices Used in Automated Polymerase Chain Reaction (PCR) †

by
Melania-Olivia Sandu
,
Valentin Ciupe
*,
Corina-Mihaela Gruescu
,
Robert Kristof
,
Carmen Sticlaru
and
Elida-Gabriela Tulcan
Department of Mechatronics, Politehnica University of Timisoara, 300006 Timișoara, Romania
*
Author to whom correspondence should be addressed.
This article is a revised and expanded version of a paper entitled “C., Ciupe, V., Lovasz, EC. (2024). Experimental Approach on the Force for Robotic Pipetting in Automated PCR (Polymerase Chain Reaction)”, which was presented at 6th IFToMM Symposium on Mechanism Design for Robotics, Timişoara, Romania, 26–28 June 2024.
Robotics 2025, 14(1), 2; https://doi.org/10.3390/robotics14010002
Submission received: 6 November 2024 / Revised: 3 December 2024 / Accepted: 5 December 2024 / Published: 28 December 2024

Abstract

:
This study aims to provide a set of experimentally determined forces needed for gripping operations related to a robotically manipulated microliter manual pipette. The experiments are conducted within the scope of automated sample processing for polymerase chain reaction (PCR) analysis in small-sized to medium-sized laboratories where dedicated automated equipment is absent and where procedures are carried out manually. Automation is justified by the requirement for increased efficiency and to eliminate possible errors generated by lab technicians. The test system comprises an industrial robot; a dedicated custom gripper assembly necessary for the pipette; pipetting tips; and mechanical holders for tubes with chemical substances and genetic material. The selected approach is to measure forces using the robot’s built-in force–torque sensor while controlling and limiting the pipette’s gripping force and the robot’s pushing force. Because the manipulation of different materials requires the attachment and discarding of tips to and from the pipette, the operator’s perceived tip release force is also considered.

1. Introduction

Basic information about polymerase chain reaction (PCR) is as follows.
Starting with the pandemic year of 2020, a substantial body of medical analysis involved using deoxyribonucleic acid (DNA) for different diagnostics. The samples taken directly from patients contain a small amount of DNA, and the PCR technique developed in the 1980s requires large amounts of high-purity DNA [1]. Using PCR, a very large number of copies can be obtained from a portion of a DNA molecule in only a few steps. These comprise the following: genomic DNA extraction, PCR amplification of the gene fragment containing the mutation, the enzymatic digestion of the PCR product, and the electrophoretic separation and visualization of fragments. The final diagnosis is established after enzymatic digestion.
The protocol for DNA extraction implies the repeated pipetting of small quantities into Eppendorf elution tubes for many hours a day. For this reason, and also due to current laboratory operations, improving the manual procedure is desirable (Figure 1a). In Figure 1b, the PCR thermocycler used in the final step of the test can be observed after the other operations were manually executed by the analysis laboratory personnel, e.g., centrifugation, incubation, and extraction.
This method is currently used in the biochemistry laboratory of the Victor Babes University of Medicine, Timisoara (RO), and the authors are hoping to automate the process for optimization and efficiency. It is also appealing to eliminate the errors made by tired lab technicians by reducing the time needed for manual pipetting and the manipulation of small quantities, in addition to avoiding contamination.
During workdays, the operators must stay concentrated and maintain focused attention for long periods of time, and this can lead to undesired analysis results.
Automated PCR analysis provides several advantages over the manual procedure. The accuracy and efficiency of PCRs can be enhanced by automated systems, such as thermal cyclers, and by using PCR robots. The studies reveal that starting with the 2020 global crisis, after the outbreak of COVID-19, artificial intelligence (AI) algorithms have contributed by improving the detectability of the virus via polymerase chain reactions and subsequently comparing the results of chest tomography scans with the clinical symptoms of patients, anamnesis, and laboratory tests. The rapid diagnosis of COVID-19-positive patients became possible [2]. Currently, AI is a branch of engineering that can resolve complex challenges, and there is continuous progress in the development of software programming [3].
In modern medical laboratories, automated machinery is used for testing samples [4] at different automation levels [5]. Since this area is developing, robotic services for laboratories should be further improved [6,7]. Automation allows for reactions to be performed in an easier manner, resulting in significant precision and time savings [8]. A related study was carried out on automation programs for the picking and placing of small objects [9]. The use of artificial intelligence in the medical field [10], the effects and benefits of automation processes [11], and the use of compliant systems for grasp optimization [12] are being studied, all resulting in minimal operator intervention, improved productivity, increased safety in the laboratory, minimized errors [13], and the saving of time [14]. There are also studies on new levels of artificial intelligence, the integration of large language models (such as ChatGPT) into healthcare [15], the use of computer vision for health monitoring [16], human–robot interactions [17], the optimization of workspace design [18], and error correction and calibration for maximizing robot precision [19].
The following characteristics should also be considered when choosing automation devices: manipulator performance [20,21], using different types of grippers [22], the use of 3D printed parts [23], and combining a pipette with a gripper [24]. There are also studies on space optimization and kinematic analysis [25,26], sensors used to control operations [27], and different types of components in medical laboratories [28].
A study of these components used a description and comparison of the grippers’ ability to pick up objects of different types, as employed in many industrial and medical applications, both in known and unknown environments and for different types of material [29]. The choice of this study’s gripper model, as well as the final 3D-printed model for the finger clamps, took into account mechanical problems [30,31,32] and other studies related to the materials and the movements of the end effector [33].
For future studies, other smart sensors should be considered, which can be integrated to perform the automation of samples in the laboratory [34].
The problem identified, for which the current study proposes an automated sub-process, is the necessity to create a system for the appropriate manipulation of a manual pipette in the presence of laboratory analysis components.
The result is situated and addresses scenarios taking place in a medium-sized medical university laboratory, and it focuses on the robotic gripping and manipulation of a standard manual pipette.
The broader objectives of this study are to improve operations in a medical laboratory that currently does not have any type of automated system for sample processing and is working only with the equipment presented in previous studies [35,36]. Because improvements in the activity of the lab personnel and faster performance in the processing of PCR tests are desired, the proposed solution must be suitable in the lab’s existing space while using all equipment currently present in the laboratory.
For this purpose, the authors performed two experiments. The first was carried out to design gripping components and to establish the appropriate forces for clamping the pipette. The second was carried out to establish the necessary force with which dispensing tips can always be attached to the end of the pipette. For a correct and efficient working methodology, the manipulation forces must be constant, in addition to the positioning of the pipette relative to the other devices used (such as tip holders, reagent holders, etc.).

2. Materials and Methods

2.1. Robotic Testing Work Cell

The laboratory testing work cell is based on a Universal Robots UR10e collaborative robot [37] (Odense, Denmark), which is available in one of our robotics labs. The pipette used in the experiments is a single-channel, 1000 µL fixed-type pipette [38]. Standard tips were used for each subsequent sample measurement. Figure 2 shows the top and front views of the experimental work cell.
The trajectories of the robot within the work area of the robot and the singularity issues that can possibly occur during the automated program were described in previous studies [35,36].

2.2. Three-Dimensional Modeling of the Components for the Experimental Setup

The components were designed and used as an assembly for sample preparation during analyses with the PCR technique. This assembly consists of the following:
  • A holder for the manipulated pipette;
  • A holder with multiple locations for the tips;
  • support for tubes with reagents;
  • A holder for the elution tubes;
  • A recycling cup for discarded tips;
  • A gripper assembly for manipulating the pipette.
The design of the above components was carried out considering their use in small and medium laboratories that have limited space available. Moreover, the entire system of holders and supports was conceived such that the assembly and disassembly can be quickly and easily carried out; moreover, the robot can also access any needed chemicals in a logical manner [35].
Figure 3 presents the 3D designs of the components, which were modeled and optimized according to multiple criteria such as overall dimensions, occupied area, process function, and tolerances.
The parts were manufactured via fused deposition modeling (FDM) 3D printing using polylactic acid (PLA)—a widespread type of filament. An electro-pneumatic setup was devised to test the functionality of the components and to validate the designed models.

3. Determining the Pipette’s Proper Clamping Force

3.1. Defining of Clamping Force

The proposed system consists of a robotic arm, some standard industrial components, printed components, a manual pipette, disposable tips, elution tubes, and reagent tubes. The process plan is to carry the pipette to specified locations, where it must collect a tip that will be fed with chemical substances, or it must discard the tip. The movements are imposed by the robot’s program. For each chemical substance, the pipette uses another tip, which must be properly attached to the pipetting head. After each use, the tip is discarded into the recycling cup/bin.
The automated pipette must be clamped by the gripper with enough force around its body because the tips, which are small conical containers, must be obtained via friction resulting from an insertion (pushing) force. This trajectory falls along the Z-axis (Figure 4a), and the theoretical determination of the vertical Z-travel force limit on the pipette (FZmax) is obtained by relating it to a conical shrink fit model (Figure 4b), where values of the insertion distance l and the angle α are known.
However, the main unknowns are represented by the contact between the pipette’s end and tip collar. The friction coefficient here is unknown, and it is also difficult to estimate. Another consideration for the tip is the plastic deformation of its thin walls. The material characteristics of the pipette and the tip are not specified by the producer, nor are the machining tolerances, which is impractical for the purpose of the theoretical determination of forces [36].
The goal of this experimental study is to obtain the force values necessary to hold the clamped pipette and the values necessary to push-fit the tips; this is required in order to realize a functional and well-performing system without the risk of leaking reagents.
Moreover, the exerted forces must not damage the pipette or the tips, and proper tip discarding must occur. The final aspect relates to collision cases, which must not damage the components or pose an injury threat to the lab technicians inadvertently present in the robot’s workspace.

3.2. Test Setup for Measuring Forces

The experiment uses the force–torque sensor available in the robot’s 6-axis flange. The robot was programmed for slow vertical motion while recording the tool center point (TCP) vertical force and position. For the pipette’s holding force experiment, the pipette was pushed against a rigid horizontal surface. For the tip collection experiment, the pipette was pushed against tips that were previously inserted vertically into their collection support.
The measurement process is controlled by the operator for each sample, imposing or limiting forces. Figure 5 shows a test stand setup for attaching the tips.

3.3. Gripper Design

Because the pipette used in the experiments is a regular manual pipette, a custom gripping device was designed for the robot in order to be able to manipulate the pipette efficiently and safely. While operating the robot, the pipette needs to be firmly gripped, but it can also be subjected to a variety of damage forces; thus, several operating and safety conditions need to be considered for the design of the gripping tool:
The pipette must be gripped in the same position and orientation every time.
The pipette holding force must be appropriate for the operation to be carried out.
Excessive forces from any direction (but especially from Z-travel—the work direction) must be avoided by quickly releasing the pipette.
The pipette must remain in a gripped state (low force) upon the failure or shut-off of compressed air components.
Supplemental future mechanisms for operating the pipette must be accounted for.
To comply with the above statements, we need to use a gripper that can exert enough force to hold the pipette, this force needs to be controlled continuously or in steps, and the gripper should have suitable finger travel and be able to exert closing forces while not being actuated. Other studies also designed pipette gripers with different stages of gripping forces [39,40]. The most suitable off-the-shelf solution is to use an industrial air gripper that is normally closed (NC) and spring-loaded [41]. A convenient method of controlling the gripping force for this air gripper is to have its opening and closing pressure controlled using an electronic pressure regulator [42].
For this device, a tool flange adapter conforming to ISO 9409-1-50-4-M6 [43] was designed and 3D printed to affix it to the robot. Also, a set of fingers/clamps was designed and 3D printed for the pipette. The assembly model is presented in Figure 6.
The clamp’s design follows the sectional profile of the pipette body in order to auto-orient the pipette upon closing. They are also designed with a protruding lip in the lower part such that the pipette can be positioned in the same vertical position upon lifting with a soft-closed gripper. These clamps were printed using a glycol-modified polyethylene terephthalate (PET-G) filament due to its better mechanical properties, but this material provides almost no friction when in contact with the pipette’s plastic body; thus, lining tape was installed in order to increase friction levels. This is needed because vertical forces are applied to the pipette when collecting the tip in order to stop the pipette from sliding out of the clamps. A small side effect of the lining tape is the increase in the lateral compliance of the pipette during operations.
The vertical Z-travel force limit relative to the pipette (FZmax) is directly related to the gripping force, and it can be adjusted as required (from the robot program). An initial empirical value was selected at 35 N after manually using the pipette and communicating with trained lab personnel.
The lateral forces acting on the gripper were not evaluated during the robot’s positioning. Thus, a lateral hard collision test was conducted, imposing a linear trajectory on the gripper’s clamps beyond a fixed metal plate—with v = 3 m/s and a = 10 m/s2—while using a 3D-printed pipette mock-up (Figure 7a). The highest recorded force on the relevant axis was 274 N. Since the robot stopped before any structural damage could be observed with respect to the clamps in the collaborative mode (Figure 7b), after such a collision, the pipette was inspected and reseated properly in the gripper.
Figure 8 presents the assembled robot gripper and the actual gripped pipette ready for experimentation.

3.4. First Experiment—Pipette Holding Force

For the automated process proposed in this study, the gripper must be actuated by the robot controller; thus, all required pneumatic and electric components are interconnected, as shown in Figure 9.
The pneumatic schematic in Figure 9b presents the pressure that was supplied by a compressed air source (a mobile compressor) and that was passed through an air service unit, where it was filtered and limited to five bar. The compressed air then entered the electrically controlled proportional pressure regulator Y0. The regular has an internal pressure feedback sensor that also delivers an analog signal, and it is presented as B0. The pressure-controlled air then enters a directional control solenoid valve Y1, which is used for directing the flow to open or close gripper Grp.
To command and control the electrical devices from the robot program, signals must be connected to the robot’s input/output (IO) interface. Table 1 provides the signals and functions for all the elements as they appear in Figure 9a.
A flowchart of the robot program is presented in Figure 10 for the sake of simplifying explanations regarding concurrent robot actions and also for easier program reproducibility. Force measurements and stop decisions are carried out in a separate thread; thus, user input, output control, and motion tasks run in parallel with force measurement and data-sending tasks.
Since we do not have a transfer function that links the operating air pressure to the normal force inflicted on the pipette’s body and we also do not know the friction coefficients involved, we must experimentally determine this process parameter by testing the full pressure range against the recorded vertical (Z-travel) force applied onto the pipette.
For the first part of the experiment—determining the gripping pressure for maximum vertical pipette force—the workflow comprises programming the robot to grip and push the pipette at 20 mm against a rigid surface with a constant velocity of 10 mm/s. The vertical pushing force is measured via the robot’s force–torque sensor, and it is internally offset by the TCP and the parametrization of the payload’s center of gravity. The maximum force during a push is then recorded and compared with the maximum imposed limit (FZmax = 35 N), in addition to the pressure detected in the gripper.

First Experiment—Results

Following the experimental workflow, a pressure step interval of 0.2 bar was selected and used, and the test routine was launched using switch S1. For every pressure setpoint, n = 10 samples were measured, and the average force FZ was considered. The results are presented in Figure 11; combining the raw recorded force, the robot’s average force and traveled distance were measured until it stopped. Abnormal values were kept for reference. Supporting raw data for both experiments is available in Supplementary Materials [SM]. One can observe that pressures higher than 2.2 bar resulted in stoppage due to the force limit (FZ ≥ 35 N), with an average stopping distance of 5 mm. This distance is the combined result of system compliance with respect to robot stopping time.
Testing the forces without friction lining tape on the gripper clamps confirmed the inability of the system to hold the pipette—with an average value of FZ = 4.3 N; the results are presented in Figure 12. The measuring method is the same (n = 5 samples), but the pressure intervals were set at 0.5 bar.
This information is also useful in the robot’s final application program as it can detect faulty pipette gripping during the tip attachment phase and, consequently, a warning message can be raised.

3.5. Second Experiment—Tip Holding Force

Apart from the pipette gripping force, for the final application, we also need to be able to collect tips with the pipette.
In order to determine the suitable force interval for picking up tips, the experiment is conducted in a similar manner to the one for the pipette holding force. The idea is to find a convenient pressing force into the tip (optimal experimental force) such that several events are concurrent during the process:
The tip must remain attached to the pipette after lifting and positioning the assembly.
The tip must not leak any of its collected (water) content for at least 30 s.
The tip must be released by pressing the dedicated pipette button, with an ergonomically accepted finger force of 10–25 N.
The tip must not crack or deform at its assembly collar or at its narrow open end.
The tip should be reusable for at least one more operation under the same conditions (although this will never happen in the lab as the tips are disposable, it is a qualitative indicator of the mechanical stress applied to the tip).
The workflow is similar to the other experiment, but this time, the variable metric is the force exerted by the pipette when pushing into the tip, and this is manually controlled for each sample using the potentiometer P0 (similar to the previous pressure). The outcome is both a quantitative time measurement of the period until the tip starts leaking, and it is also a qualitative measure of how easy it is to release the tip by pushing the pipette’s dedicated button.
The robot program was modified to advance (for no more than 10 mm) with the same speed of 10 mm/s until the set pushing force was attained. Upon meeting this threshold, the robot should switch the direction of motion, raise the pipette with the tip attached, and be ready for pipetting.

Second Experiment—Results

For the tip holding resistance, the test tips were placed in their holding case and then placed under the vertical pipette (which was gripped by the robot). The commanded force interval was set to 1 N starting from 2 N (the robot’s minimum readout). The maximum test force was limited to 25 N. The outcome referred to the perceived (felt) resistance when pushing the tip’s release button. Numerical values were attributed to the qualitative impressions, as shown in Table 2.
The graphical dependence relation is depicted in Figure 13.
From the figure’s data, one can observe that under 10 N, attachment failure relative to the tips was likely, i.e., where “Felt resistance” falls to zero. Thus, further experiments should concentrate on push-fit forces above 10 N.
For the leak test, the tips were placed in their holding case, and after tip collection, a manual pipetting step was employed using water. The commanded force interval was set to 1 N starting from 2 N (the robot’s minimum readout). The maximum test force was limited to 30 N. If the force is higher than that, the pipette could easily slide from the gripper—refer to experiment 1. A time limit of 30 s was set as the maximum waiting time for observing a leak (but leak times were fully recorded, with a maximum of over 15 min). For a good pick-up operation, no leak should occur if the operation is quicker than 15 s—the time needed for the robot to move and dispense contents. A period of less than 10 s was considered a failure, and this only occurred for FZ < 10 N.
The measured force was also recorded. The results are presented in Figure 14 and Table 3. The outcome referred to the gripper still being attached (Figure 14—graph value 15) or unattached (Figure 14—graph value 0), and it referred to the time (s) until the tip started leaking. It can be observed that when the pushing force FZ is >15 N, there is no leak in the first 30 s.
After measuring leak times, the tips were discarded, and new tips were used for each subsequent sample measurement.

4. Discussion and Future Work

For the first experiment, after data analysis, we decided that a gripper pressure setpoint between 2.5 and 3.5 bar is appropriate for the correct clamping of the pipette. Lower pressures could result in pipette slippage from the gripper during the tip attachment operation. Higher pressures do not inflict any harm, but they are also unnecessary. In the final application, the pressure could also be set up from a manual pressure regulator, releasing the proportional electronic pressure regulator for other duties.
For the second experiment, following the data presented in Figure 13 and Figure 14 and combined with the findings in the first experiment, the recommended pipette pushing force interval for picking up and sealing the tip (for proper attachment) is [15…25] N. In the final lab application, the robot should be initially set to exert (i.e., —to stop pushing at) a force of 20 N, followed by on-site tuning.
The main advantage of the proposed solution is as follows: the use of readily available mainstream industrial components that allow for quick and cost-effective system replication for laboratories that need some type of pipetting process automation. Another notable point is that several manual pipettes can be used during the process, which are gripped and manipulated in sequence; each of them is set to a specific dispensing volume. Although not detailed in this study, it must be noted that the reagents and sample volumes to be dispensed during PCR analyses are different for each (reagent/sample) type. Another advantage is the easy setup process of the robot’s end effector and the safe pneumatic actuation nature; thus, lab personnel can easily adapt to working with the assembly.
There are also some disadvantages regarding the system’s flexibility. The system cannot be easily repurposed to perform another robotic job—except if using a robot tool changer. Moreover, the system is not very fault-tolerant; in its current state, it cannot detect the loss of a pipette or incorrect pipette gripping orientations, nor can it detect failed tip attachment (provided that the pushing force is still correct). However, some of these aspects can be mitigated in future studies.
The principal problems encountered during the experiments’ development were related to the optimum height of the gripper clamps, as there were some initially unforeseen limitations. Since the mechanism for actuating the pipette’s knobs is not yet designed, this results in maximum vertical travel clearance while picking up the pipette, which can be imposed in a later stage. It is possible that the authors will have to adapt the gripper clamps in another design iteration.
At its current state, robotic experimental applications cannot execute pipetting, dispensing, and tip-discarding sub-processes. These operations require the actuation of the pipette’s dedicated knobs. Continuation of the present study entails the development of the actuation mechanism and the control of the entire end-to-end pipetting process. We plan to follow a similar approach by using only pneumatic actuation, combined with remote pneumatic sensing, such that no electric/electronic components are present beyond the robot’s flange. In total, three pneumatic actuators will be used for the entire pipetting device (the gripper for the pipette and two additional cylinders for the knobs). The pneumatic control scheme will be optimized for the minimum tube lines, concurrently providing the same functionality as when manually working with the pipette. Theoretical analyses of the gripping and dispensing assembly will be conducted via a top-down approach. Robot trajectory optimizations can also be considered in future studies, but these are only worth pursuing when robot automation is utilized in a lab as a final application.

5. Conclusions

The experimental study confirmed the functionality of the designed components and validated the approach and developed 3D models.
An appropriate pressure setpoint in the gripper was found for the correct clamping of the pipette. The testing gripper clamps without friction lining tape confirmed the inability of the system to hold a pipette.
The push-fit force for the pipette during the attachment of tips to the end of the pipette was defined within a specific interval. This ensures that the tips are not leaking (correctly attached) while also allowing for appropriate tip release (discarding) force. The upper interval force limit is also imposed by the requirement that the pipette cannot slide upwards in the gripper when attaching the tip.
The presented experimental setup is part of a wider project that aims to realize the automated handling of samples during an automated PCR analysis, and it is dedicated to improving the process in a manually operated medical analysis laboratory.
This article is a revised and expanded version of the manuscript entitled “Experimental Approach on the Force for Robotic Pipetting in Automated PCR (Polymerase Chain Reaction)”, which was presented at MEDER2024—Mechanism Design for Robotics, Timișoara, Romania, 26–28 June 2024.

Supplementary Materials

Author Contributions

Conceptualization, M.-O.S. and V.C.; methodology, V.C.; software, V.C. and R.K.; validation, C.-M.G. and C.S.; formal analysis, M.-O.S.; investigation, M.-O.S.; resources, E.-G.T.; data curation, C.S.; writing—original draft preparation, M.-O.S. and V. C.; writing—review and editing, V.C.; visualization, C.S. and E.-G.T.; supervision, C.-M.G.; project administration, C.-M.G.; funding acquisition, R.K. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding. The APC was funded by Politehnica University of Timisoara, 300006, Timisoara, Romania.

Data Availability Statement

Data available in Supplemental Materials.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Current manual samples processing (a) and polymerase chain reaction (PCR) thermocycler (b).
Figure 1. Current manual samples processing (a) and polymerase chain reaction (PCR) thermocycler (b).
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Figure 2. Top and front view of the robotic work cell used for testing.
Figure 2. Top and front view of the robotic work cell used for testing.
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Figure 3. Three-dimensional models of support containers: (a) sample support, (b) primer support, (c) pipette support, and (d) tip support.
Figure 3. Three-dimensional models of support containers: (a) sample support, (b) primer support, (c) pipette support, and (d) tip support.
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Figure 4. Process of attaching the tip to the pipette: (a) inserting process and (b) theoretical model for a conical shrink-fit assembly [36].
Figure 4. Process of attaching the tip to the pipette: (a) inserting process and (b) theoretical model for a conical shrink-fit assembly [36].
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Figure 5. Testing force method for attaching tips: (a) front view with relevant Z axis and (b) top view.
Figure 5. Testing force method for attaching tips: (a) front view with relevant Z axis and (b) top view.
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Figure 6. Pipette 3D clamp model attached to the air gripper.
Figure 6. Pipette 3D clamp model attached to the air gripper.
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Figure 7. Testing the lateral hard collision of the gripper. (a) Collision trajectory (arrow) and (b) contact/hit point with the metal plate (encircled).
Figure 7. Testing the lateral hard collision of the gripper. (a) Collision trajectory (arrow) and (b) contact/hit point with the metal plate (encircled).
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Figure 8. Robot assembly: gripper only (left); gripped pipette (right).
Figure 8. Robot assembly: gripper only (left); gripped pipette (right).
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Figure 9. Electric (a) and pneumatic (b) schematics.
Figure 9. Electric (a) and pneumatic (b) schematics.
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Figure 10. Robot program flowchart for the first experiment.
Figure 10. Robot program flowchart for the first experiment.
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Figure 11. Pipette hold/slip force/pressure dependency—with friction tape.
Figure 11. Pipette hold/slip force/pressure dependency—with friction tape.
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Figure 12. Pipette slip force/pressure dependency—without friction tape.
Figure 12. Pipette slip force/pressure dependency—without friction tape.
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Figure 13. Manual tip ejecting force—user qualitative impression.
Figure 13. Manual tip ejecting force—user qualitative impression.
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Figure 14. Tip leak time versus pipette (robot) push-fit force.
Figure 14. Tip leak time versus pipette (robot) push-fit force.
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Table 1. Pipette gripper command and control items.
Table 1. Pipette gripper command and control items.
ItemFunctionSignalValuesType
S1, S2Branch selectors for program loopsDigital input24 VNO switches, manual act
P0Gripping force commandAnalog input0–10 VPotentiometer, manual act
B0Gripping pressure feedbackAnalog input0–10 VPressure sensor, part of Y0
Y0Gripping force controlAnalog output0–10 VProportional pressure regulator
Y1Open/close gripperDigital output24 VDirectional control solenoid valve
GrpPipette gripperCompressed air0–10 barNC, spring-loaded, air gripper
Table 2. Tip ejecting force—qualitative to quantitative conversion.
Table 2. Tip ejecting force—qualitative to quantitative conversion.
No ResistanceReally EasyEasyGood
0102030
Table 3. Leak time sample success as a function of the push-fit force.
Table 3. Leak time sample success as a function of the push-fit force.
Robot Force10–14 s15–29 s30–59 sOver 60 sTotal Samples
10.1–15.0 N5131420
15.1–20.0 N0041620
20.1–25.0 N0011920
25.1–30.0 N0001010
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MDPI and ACS Style

Sandu, M.-O.; Ciupe, V.; Gruescu, C.-M.; Kristof, R.; Sticlaru, C.; Tulcan, E.-G. Determining the Proper Force Parameters for Robotized Pipetting Devices Used in Automated Polymerase Chain Reaction (PCR). Robotics 2025, 14, 2. https://doi.org/10.3390/robotics14010002

AMA Style

Sandu M-O, Ciupe V, Gruescu C-M, Kristof R, Sticlaru C, Tulcan E-G. Determining the Proper Force Parameters for Robotized Pipetting Devices Used in Automated Polymerase Chain Reaction (PCR). Robotics. 2025; 14(1):2. https://doi.org/10.3390/robotics14010002

Chicago/Turabian Style

Sandu, Melania-Olivia, Valentin Ciupe, Corina-Mihaela Gruescu, Robert Kristof, Carmen Sticlaru, and Elida-Gabriela Tulcan. 2025. "Determining the Proper Force Parameters for Robotized Pipetting Devices Used in Automated Polymerase Chain Reaction (PCR)" Robotics 14, no. 1: 2. https://doi.org/10.3390/robotics14010002

APA Style

Sandu, M.-O., Ciupe, V., Gruescu, C.-M., Kristof, R., Sticlaru, C., & Tulcan, E.-G. (2025). Determining the Proper Force Parameters for Robotized Pipetting Devices Used in Automated Polymerase Chain Reaction (PCR). Robotics, 14(1), 2. https://doi.org/10.3390/robotics14010002

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