On the Use of Decision Tree Regression for Predicting Vibration Frequency Response of Handheld Probes

Resumen

This article focuses on the prediction of the vibration frequency response of handheld probes. A novel approach that involves machine learning and readily available data from probes was explored. Vibration probes are efficient and affordable devices that provide information about testing airborne sound insulation in building acoustics. However, fixing a probe to a vibrating surface downshifts sensor resonancesi and underestimates levels. Therefore, the calibration response of the sensor included in a probe differs from the frequency response of that same probe. Simulation techniques of complex mechanical systems may describe this issue, but they include hardly obtainable parameters, ultimately restricting the model. Thus, this study discusses an alternativemethod, which comprises different parts. Firstly, the vibration frequency responses of 85 probes were measured and labelled according to six features. Then, Linear Regression, Decision Tree Regression and Artificial NeuralNetworks algorithmswere analysed. Itwas revealed that decision tree regression is themore appropriate technique for this data. The best decision tree models, in terms of scores and model structure, were fine-tuned. Eventually, the final suggested model employs only four out of the six original features. A trade-off solution that involved a simple structure, an interpretable model and accurate predictions was accomplished. It showed a maximum average deviation from test measurements ranging from 0.6 dB in low- frequency to 3 dB in high-frequency while remaining at a low computational load. This research developed an original and reliable prediction tool that provides the vibration frequency response of handheld probes.

Descripción

Citación

R. San Millán-Castillo, E. Morgado and R. Goya-Esteban, "On the Use of Decision Tree Regression for Predicting Vibration Frequency Response of Handheld Probes," in IEEE Sensors Journal, vol. 20, no. 8, pp. 4120-4130, 15 April15, 2020, doi: 10.1109/JSEN.2019.2962497.