2022
DOI: 10.32604/sdhm.2022.010622
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Tyre Pressure Supervision of Two Wheeler Using Machine Learning

Abstract: The regulation of tyre pressure is treated as a significant aspect of 'tyre maintenance' in the domain of autotronics. The manual supervision of a tyre pressure is typically an ignored task by most of the users. The existing instrumental scheme incorporates stand-alone monitoring with pressure and/or temperature sensors and requires regular manual conduct. Hence these schemes turn to be incompatible for on-board supervision and automated prediction of tyre condition. In this perspective, the Machine Learning (… Show more

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Cited by 16 publications
(5 citation statements)
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References 27 publications
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“…The work by Liu et al [ 43 ] provides an in-house collected dataset CSL-SHARE (Cognitive Systems Lab Sensor-based Human Activity REcordings) to classify 22 different activities with more accuracy. The use of decision tree classifiers to sense the changes in pressure using MEMS built accelerometer to collect and store data is provided by Pardeshi et al [ 44 ]. Recent works by Patange et al [ 45 ] and Shewale et al [ 46 ] provided us with the importance of vibrations, temperature and other parameters in health monitoring systems.…”
Section: Literaure Surveymentioning
confidence: 99%
“…The work by Liu et al [ 43 ] provides an in-house collected dataset CSL-SHARE (Cognitive Systems Lab Sensor-based Human Activity REcordings) to classify 22 different activities with more accuracy. The use of decision tree classifiers to sense the changes in pressure using MEMS built accelerometer to collect and store data is provided by Pardeshi et al [ 44 ]. Recent works by Patange et al [ 45 ] and Shewale et al [ 46 ] provided us with the importance of vibrations, temperature and other parameters in health monitoring systems.…”
Section: Literaure Surveymentioning
confidence: 99%
“…It should be noted that more and more prototypes based on the use of low-cost MEMS accelerometers are being developed every day. For example, Pardeshi et al [59] used an ADXL335 accelerometer and an Arduino Mega2560 to estimate the tire pressure of a vehicle using the vibration of the wheel hub. Patange et al [60] developed a system for detecting various failure modes of a single-point cutting tool using machine learning and an Arduinobased vibration acquisition equipment that uses an ADXL335 MEMS accelerometer.…”
Section: Ismamentioning
confidence: 99%
“…The bestperforming classifier for every feature set was determined. Data driven KNN Air [16] Data Driven Random Forest Air [17] Data Driven Gaussian Naive Bayes Algorithm Air [18] Data Driven Random Forest and Hoeffding Tree Algorithm Air [19] Statistical J48 Decision Tree Algorithm Nitrogen [20] Statistical Random Forest Algorithm Nitrogen…”
Section: Introductionmentioning
confidence: 99%