2 datasets found
  1. d

    Data from: Anomaly Detection in a Fleet of Systems

    • datasets.ai
    • data.nasa.gov
    • +2more
    33
    Updated Sep 10, 2024
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    National Aeronautics and Space Administration (2024). Anomaly Detection in a Fleet of Systems [Dataset]. https://datasets.ai/datasets/anomaly-detection-in-a-fleet-of-systems
    Explore at:
    33Available download formats
    Dataset updated
    Sep 10, 2024
    Dataset authored and provided by
    National Aeronautics and Space Administration
    Description

    A fleet is a group of systems (e.g., cars, aircraft) that are designed and manufactured the same way and are intended to be used the same way. For example, a fleet of delivery trucks may consist of one hundred instances of a particular model of truck, each of which is intended for the same type of service—almost the same amount of time and distance driven every day, approximately the same total weight carried, etc. For this reason, one may imagine that data mining for fleet monitoring may merely involve collecting operating data from the multiple systems in the fleet and developing some sort of model, such as a model of normal operation that can be used for anomaly detection. However, one then may realize that each member of the fleet will be unique in some ways—there will be minor variations in manufacturing, quality of parts, and usage. For this reason, the typical machine learning and statis- tics algorithm’s assumption that all the data are independent and identically distributed is not correct. One may realize that data from each system in the fleet must be treated as unique so that one can notice significant changes in the operation of that system.

  2. g

    Anomaly Detection in a Fleet of Systems | gimi9.com

    • gimi9.com
    Updated Mar 15, 2012
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    (2012). Anomaly Detection in a Fleet of Systems | gimi9.com [Dataset]. https://gimi9.com/dataset/data-gov_anomaly-detection-in-a-fleet-of-systems
    Explore at:
    Dataset updated
    Mar 15, 2012
    Description

    A fleet is a group of systems (e.g., cars, aircraft) that are designed and manufactured the same way and are intended to be used the same way. For example, a fleet of delivery trucks may consist of one hundred instances of a particular model of truck, each of which is intended for the same type of service—almost the same amount of time and distance driven every day, approximately the same total weight carried, etc. For this reason, one may imagine that data mining for fleet monitoring may merely involve collecting operating data from the multiple systems in the fleet and developing some sort of model, such as a model of normal operation that can be used for anomaly detection. However, one then may realize that each member of the fleet will be unique in some ways—there will be minor variations in manufacturing, quality of parts, and usage. For this reason, the typical machine learning and statis- tics algorithm’s assumption that all the data are independent and identically distributed is not correct. One may realize that data from each system in the fleet must be treated as unique so that one can notice significant changes in the operation of that system.

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Share
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Email
Click to copy link
Link copied
Close
Cite
National Aeronautics and Space Administration (2024). Anomaly Detection in a Fleet of Systems [Dataset]. https://datasets.ai/datasets/anomaly-detection-in-a-fleet-of-systems

Data from: Anomaly Detection in a Fleet of Systems

Related Article
Explore at:
33Available download formats
Dataset updated
Sep 10, 2024
Dataset authored and provided by
National Aeronautics and Space Administration
Description

A fleet is a group of systems (e.g., cars, aircraft) that are designed and manufactured the same way and are intended to be used the same way. For example, a fleet of delivery trucks may consist of one hundred instances of a particular model of truck, each of which is intended for the same type of service—almost the same amount of time and distance driven every day, approximately the same total weight carried, etc. For this reason, one may imagine that data mining for fleet monitoring may merely involve collecting operating data from the multiple systems in the fleet and developing some sort of model, such as a model of normal operation that can be used for anomaly detection. However, one then may realize that each member of the fleet will be unique in some ways—there will be minor variations in manufacturing, quality of parts, and usage. For this reason, the typical machine learning and statis- tics algorithm’s assumption that all the data are independent and identically distributed is not correct. One may realize that data from each system in the fleet must be treated as unique so that one can notice significant changes in the operation of that system.

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