Experimental and Model-Based Study of the Vibrations in the Load Cell Response of Automatic Weight Fillers
Abstract
:1. Introduction
2. Experimental Study of the Filling Process
2.1. Weight Filling Process
- Tare weight measurement: The bottle enters the filling machine through the input-carousel and it is hooked to the plate support. During the α angle, the main carousel rotation occurs and the load cell weights the tare.
- Filling process: At the end of the α angle, the control system commands to open the bypass valve, starting the filling. The time corresponding to the β angle is automatically evaluated by the controller, also considering the product quantity that drops after the valve closing.
- Final weighing: During the γ angle, the final weight is measured. The bottle containers with a non-compliant weight are guided out of the carousel, such that an operator can remove them.
- Zero condition reset. During the δ angle, the check of the zero condition of the load cell is performed, in order to avoid a drift in the value read by the measuring system.
- (1)
- Loading the bottle into the station: generates an abrupt change of the weight read by the load cell reads as an impulse. The time associated with the α angle must allow the complete damping of the vibration;
- (2)
- Closing of the bypass valve at the end of the filling: generates a discontinuity in the forces applied to the load cell and a consequent vibration;
- (3)
- Unloading the bottle from the station: creates a high discontinuity on the load cell. The consequent vibration must be promptly damped, so that the zero position can be reset and the new cycle can start.
2.2. Experimental Analysis of Vibrations
3. Model-Based Study of the System
3.1. Modelling of the System
3.2. Model-Based Analysis of the Vibrations
- Phase 1: Identification of the four parameters k, r, Impact force amplitude, Impact force duration, considering a trapezoidal theoretical mass flow pattern;
- Phase 2: Identification of the mass flow rate in the filling with the parameters identified in phase 1.
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Main Characteristics | Parameters |
---|---|
Simulated generations | 92 |
Population’s individuals (m) | 200 |
Characters for individual—Phase 1 (n) | 4 |
Characters for individual—Phase 2 (n) | 876 |
Optimization Problem Type | Non-linear |
Cross-over function | Arithmetic |
Cross-over fraction | 0.8 |
Mutation Function | Gaussian |
Migration Fraction | 0.1 |
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Tiboni, M.; Bussola, R.; Aggogeri, F.; Amici, C. Experimental and Model-Based Study of the Vibrations in the Load Cell Response of Automatic Weight Fillers. Electronics 2020, 9, 995. https://doi.org/10.3390/electronics9060995
Tiboni M, Bussola R, Aggogeri F, Amici C. Experimental and Model-Based Study of the Vibrations in the Load Cell Response of Automatic Weight Fillers. Electronics. 2020; 9(6):995. https://doi.org/10.3390/electronics9060995
Chicago/Turabian StyleTiboni, Monica, Roberto Bussola, Francesco Aggogeri, and Cinzia Amici. 2020. "Experimental and Model-Based Study of the Vibrations in the Load Cell Response of Automatic Weight Fillers" Electronics 9, no. 6: 995. https://doi.org/10.3390/electronics9060995
APA StyleTiboni, M., Bussola, R., Aggogeri, F., & Amici, C. (2020). Experimental and Model-Based Study of the Vibrations in the Load Cell Response of Automatic Weight Fillers. Electronics, 9(6), 995. https://doi.org/10.3390/electronics9060995