Using mobile-device sensors to teach students error analysis
Martin Monteiro, Cecilia Stari, Cecilia Cabeza, Arturo C. Marti

TL;DR
This paper presents laboratory experiments using mobile-device sensors to teach students about measurement errors, uncertainties, and statistical analysis, making error analysis more accessible and engaging through real-world data collection.
Contribution
It introduces sensor-based experiments for teaching error analysis, emphasizing the physical meaning of statistical concepts and normality testing with practical applications.
Findings
Sensor data generally follow a normal distribution
Significant deviations occur when sensors are affected by external tones
Activities demonstrate fluctuations in real-world scenarios
Abstract
Science students must deal with the errors inherent to all physical measurements and be conscious of the need to expressvthem as a best estimate and a range of uncertainty. Errors are routinely classified as statistical or systematic. Although statistical errors are usually dealt with in the first years of science studies, the typical approaches are based on manually performing repetitive observations. Our work proposes a set of laboratory experiments to teach error and uncertainties based on data recorded with the sensors available in many mobile devices. The main aspects addressed are the physical meaning of the mean value and standard deviation, and the interpretation of histograms and distributions. The normality of the fluctuations is analyzed qualitatively comparing histograms with normal curves and quantitatively comparing the number of observations in intervals to the number…
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