Abstract
Anomaly Detection research is focused on the development and application of methods that allow for the identification of data that are different enough—compared with the rest of the data set that is being analyzed—and considered anomalies (or, as they are more commonly called, outliers). These values mainly originate from two sources: they may be errors introduced during the collection or handling of the data, or they can be correct, but very different from the rest of the values. It is essential to correctly identify each type as, in the first case, they must be removed from the data set but, in the second case, they must be carefully analyzed and taken into account. The correct selection and use of the model to be applied to a specific problem is fundamental for the success of the anomaly detection study and, in many cases, the use of only one model cannot provide sufficient results, which can be only reached by using a mixture model resulting from the integration of existing and/or ad hoc-developed models. This is the kind of model that is developed and applied to solve the problem presented in this paper. This study deals with the definition and application of an anomaly detection model that combines statistical models and a new method defined by the authors, the Local Transilience Outlier Identification Method, in order to improve the identification of outliers in the sensor-obtained values of variables that affect the operations of wind tunnels. The correct detection of outliers for the variables involved in wind tunnel operations is very important for the industrial ventilation systems industry, especially for vertical wind tunnels, which are used as training facilities for indoor skydiving, as the incorrect performance of such devices may put human lives at risk. In consequence, the use of the presented model for outlier detection may have a high impact in this industrial sector. In this research work, a proof-of-concept is carried out using data from a real installation, in order to test the proposed anomaly analysis method and its application to control the correct performance of wind tunnels.
Highlights
IntroductionThe Ventilation Systems industry is focused on providing solutions for diverse sectors, such as mining, civil works, marine, and wind tunnel infrastructures, among others
The goal of this study is to develop a model that allows for the identification of outliers in the variables of wind tunnel systems with the lowest time and resource consumption possible, in order to ensure its application in real-time monitoring
We present the intervals of correct operation and anomalies observed in the variables involved in wind tunnel performance obtained from the research
Summary
The Ventilation Systems industry is focused on providing solutions for diverse sectors, such as mining, civil works, marine, and wind tunnel infrastructures, among others. For some of these sectors, ventilation is responsible for ensuring the safety of users and workers by guaranteeing oxygen levels and reducing the presence of dangerous gases or smoke. Indoor skydiving systems were first introduced by the US military in the 1960s for training purposes. Indoor skydiving facilities are used to support military parachute training, to train skydivers, and for the leisure industry [5]
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