A Cyber–Physical Production System for the Integrated Operation and Monitoring of a Continuous Manufacturing Train for the Production of Monoclonal Antibodies
Abstract
:1. Introduction
2. Materials and Methods
2.1. Materials
2.2. Methods for Unit Operations
2.3. Developing a Cyber–Physical Production System (CPPS)
2.3.1. Module 1 (“Connectedness”): Automation and Integration
2.3.2. Module 2 (“Intelligence”): Real-Time Data Analytics
2.3.3. Module 3 (“Responsiveness”): Process Control
3. Results
4. Results and Discussion
4.1. Process Data Collection and Continued Process Verification (CPV)
4.2. Multivariate Data Analytics (MVDA)
4.3. Process Control in Response to Measured Data—Module 3
4.4. ProA Chromatography Deviations
4.5. CEX Chromatography Deviations
4.6. UFDF Deviations
5. Conclusions and Future Directions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Unit Operation—Measurement | Hardware I/O | Software I/O | |
---|---|---|---|
Bioreactor | Bioreactor pH, DO, CO2, temperature | x | RS-232 |
Turbidity | x | Modbus 485 | |
Glucose | Analog | x | |
Conductivity | x | Modbus 485 | |
Clarification | Turbidity | x | Modbus 485 |
Pressure | Digital | x | |
Weight | x | RS-232 | |
Pump | Digital | X | |
Solenoid valve | Digital | X | |
Chromatography | Turbidity | x | Modbus 485 |
Weight | x | RS-232 | |
Pump | Digital | X | |
pH | Digital | X | |
HPLC | x | Java.net | |
Pump | Digital | X | |
Viral Inactivation | Pressure | Digital | X |
Valve | Digital | X | |
pH | Digital | X | |
Depth Filtration | Pressure | Digital | X |
Weight | Digital | X | |
Solenoid valve | Digital | X | |
Formulation | Pressure | Digital | X |
Valves | Digital | X | |
Weight | x | RS-232 |
S. No. | Description of Deviation | Cycle(s) Affected | Data Source Allowing Detection of the Deviation |
---|---|---|---|
1 | Pressure build-up and leakage in one of the Protein A columns due to tubing compression | Chromatography cycles 43, 44, 45 | Chromatography PCA charts (Figure 6a,b) taking inputs from Protein A UV chromatogram (Figure 5c, Protein A elution pool) |
2 | Deviation in the pH neutralization step after viral inactivation due to error in the pump supplying pH neutralization solution | Chromatography cycles 43, 44, 45 | Chromatography PCA charts (Figure 6a,b) taking inputs from BioSMB pH sensor data (Figure 5b, post-viral inactivation) |
3 | Deviation in CEX elution gradient due to emptying of one of the buffer tanks | Chromatography cycles 45, 46, 47 | Chromatography PCA charts (Figure 6a,b) taking inputs from BioSMB conductivity sensor data (Figure 5a, conductivity A and B) |
4 | Deviation in the valve open/close positions on the BioSMB valve manifold due to controller error | Chromatography cycles 50, 51 | Chromatography PCA charts (Figure 6a,b) taking inputs from BioSMB pH sensor data (Figure 5b, pre-viral inactivation) |
5 | Deviation in process volume and concentration in the UFDF feed tank due to deviations in the preceding unit operations | UFDF cycle 5 | UFDF PCA charts (Figure 6d,e) taking inputs from UFDF pressure sensor data (Figure 5d feed, retentate, and permeate pressures) |
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Thakur, G.; Nikita, S.; Yezhuvath, V.B.; Buddhiraju, V.S.; Rathore, A.S. A Cyber–Physical Production System for the Integrated Operation and Monitoring of a Continuous Manufacturing Train for the Production of Monoclonal Antibodies. Bioengineering 2024, 11, 610. https://doi.org/10.3390/bioengineering11060610
Thakur G, Nikita S, Yezhuvath VB, Buddhiraju VS, Rathore AS. A Cyber–Physical Production System for the Integrated Operation and Monitoring of a Continuous Manufacturing Train for the Production of Monoclonal Antibodies. Bioengineering. 2024; 11(6):610. https://doi.org/10.3390/bioengineering11060610
Chicago/Turabian StyleThakur, Garima, Saxena Nikita, Vinesh Balakrishnan Yezhuvath, Venkata Sudheendra Buddhiraju, and Anurag S. Rathore. 2024. "A Cyber–Physical Production System for the Integrated Operation and Monitoring of a Continuous Manufacturing Train for the Production of Monoclonal Antibodies" Bioengineering 11, no. 6: 610. https://doi.org/10.3390/bioengineering11060610
APA StyleThakur, G., Nikita, S., Yezhuvath, V. B., Buddhiraju, V. S., & Rathore, A. S. (2024). A Cyber–Physical Production System for the Integrated Operation and Monitoring of a Continuous Manufacturing Train for the Production of Monoclonal Antibodies. Bioengineering, 11(6), 610. https://doi.org/10.3390/bioengineering11060610