Machine Learning and Kalman Filtering for Nanomechanical Mass Spectrometry
Mete Erdogan, Nuri Berke Baytekin, Serhat Emre Coban, Alper Demir

TL;DR
This paper enhances nanomechanical mass spectrometry by integrating machine learning with Kalman filtering, improving detection robustness, speed, and accuracy in identifying resonance frequency jumps.
Contribution
It introduces novel machine learning techniques and confidence boosting methods to augment Kalman filtering for more reliable nanomechanical mass spectrometry detection.
Findings
Machine learning models improve event detection accuracy.
Confidence boosted thresholding enhances robustness against noise.
Combined approaches outperform traditional methods in real-world tests.
Abstract
Nanomechanical resonant sensors are used in mass spectrometry via detection of resonance frequency jumps. There is a fundamental trade-off between detection speed and accuracy. Temporal and size resolution are limited by the resonator characteristics and noise. A Kalman filtering technique, augmented with maximum-likelihood estimation, was recently proposed as a Pareto optimal solution. We present enhancements and robust realizations for this technique, including a confidence boosted thresholding approach as well as machine learning for event detection. We describe learning techniques that are based on neural networks and boosted decision trees for temporal location and event size estimation. In the pure learning based approach that discards the Kalman filter, the raw data from the sensor are used in training a model for both location and size prediction. In the alternative approach…
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Taxonomy
TopicsMass Spectrometry Techniques and Applications · Analytical Chemistry and Chromatography · Advanced Chemical Sensor Technologies
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
