RFID-Based Real-Time Salt Concentration Monitoring with Adaptive EKF
Abstract
1. Introduction
- Noninvasive Dual-tag RFID Sensing System with Physics-based Modeling: We propose a novel dual-tag RFID wireless sensing system that enables noninvasive concentration detection. Based on the Cole–Cole model, we establish accurate state and observation models that fundamentally characterize the system dynamics, overcoming the limitations of conventional empirical approaches. This physics-based modeling provides a solid foundation for the subsequent algorithmic estimation.
- Forward Estimation Framework based on KF: Conventional concentration estimation methods require computationally intensive inversion of the complex observation model to obtain the state x from observation z, making them impractical for real-time monitoring applications. The proposed KF-based approach fundamentally transforms this inverse problem by utilizing only forward calculations of within its recursive prediction and update mechanism. This avoids the need for iterative equation solving while maintaining estimation accuracy through analytical state updates via the Kalman gain matrix, enabling real-time operation without compromising precision.
- Dynamic Noise Adaptation Using Innovation Sequence: Existing EKF-based approaches often assume fixed noise covariances ( and ), leading to degraded performance in real-world environments. The proposed AEKF iteratively updates and matrices using innovation sequence, enabling automatic adaptation to time-varying noise conditions. This adaptation mechanism significantly improves estimation stability in noisy RFID sensing scenarios without requiring manual parameter tuning.
2. Materials and Methods
2.1. RFID Sensing System
2.2. System Model
2.2.1. State-Space Model Based on HMM
2.2.2. RFID Observation Model
2.3. Algorithm Design for Concentration Tracking
Algorithm 1 Concentration estimation based on modified AEKF. |
3. Experiments and Results
3.1. Sample Preparation
3.2. Parameter Acquirement
3.3. Experimental Methods for Concentration Estimation
3.4. Experimental Results
3.5. Performance Evaluation
3.5.1. Robustness Analysis Under Noise Conditions
3.5.2. Computational Efficiency Comparison
4. Discussion
4.1. Discussion of Experimental Findings
4.2. Practical Considerations and Future Improvements
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | ||||
---|---|---|---|---|
0.9980 | ||||
0.9974 | ||||
(ns) | 0.9982 |
Container | (mm) | (mm) |
---|---|---|
Glass Cylinder No. 1 | 12.45 | 10.9 |
Glass Cylinder No. 2 | 21 | 19 |
Plastic Cylinder No. 3 | 28 | 25 |
Plastic Cylinder No. 4 | 36 | 34 |
Standard Concentration (mg/L) | Preparation Error (%) | Average Estimated Concentration (mg/L) | Standard Deviation of Estimated Concentration (mg/L) | MRE (%) |
---|---|---|---|---|
2000 | 0.50 | 2015.7 | 193.5 | 6.13 |
3000 | 0.33 | 2958.3 | 83.9 | 2.44 |
4000 | 0.25 | 4061.7 | 115.3 | 2.71 |
5000 | 0.14 | 4966.1 | 94.0 | 1.65 |
6000 | 0.12 | 6006.7 | 136.8 | 1.71 |
7000 | 0.14 | 6997.6 | 102.4 | 1.19 |
8000 | 0.12 | 7968.4 | 161.0 | 1.67 |
9000 | 0.11 | 8953.6 | 467.5 | 4.16 |
10,000 | 0.10 | 9996.9 | 467.4 | 3.51 |
Algorithm | MRE (%) | Execution Time (ms) |
---|---|---|
AEKF | 2.50 | 151.35 |
UKF | 2.70 | 293.36 |
PF | 2.58 | 2018.37 |
Method | Solutions | Concentration | Performance | Real-Time |
---|---|---|---|---|
[26] (UV-Vis) | Water/Cu2+ | 0.1–7.7 g/L | MRE = 0.63% | No |
[27] (Ultrasound) | Water/Solid | 0.21–1.24% (Volume) | MAE = 2.72–6.85% | Yes |
[28] (Microwave) | Water/Glucose | 0.3–80 g/L | Resolution = 0.4 g/L | Yes |
This work (RFID) | Water/CaCl2 | 2–10 g/L | MRE = 2.80% | Yes |
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Feng, R.; Lin, X. RFID-Based Real-Time Salt Concentration Monitoring with Adaptive EKF. Sensors 2025, 25, 3826. https://doi.org/10.3390/s25123826
Feng R, Lin X. RFID-Based Real-Time Salt Concentration Monitoring with Adaptive EKF. Sensors. 2025; 25(12):3826. https://doi.org/10.3390/s25123826
Chicago/Turabian StyleFeng, Renhai, and Xinyi Lin. 2025. "RFID-Based Real-Time Salt Concentration Monitoring with Adaptive EKF" Sensors 25, no. 12: 3826. https://doi.org/10.3390/s25123826
APA StyleFeng, R., & Lin, X. (2025). RFID-Based Real-Time Salt Concentration Monitoring with Adaptive EKF. Sensors, 25(12), 3826. https://doi.org/10.3390/s25123826