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Bonissone CIDU Presentation: Design of Local Fuzzy Models

Metadata Updated: April 10, 2025

After reviewing key background concepts in fuzzy systems and evolutionary computing, we will focus on the use of local fuzzy models, which are related to both kernel regressions and locally weighted learning. Instead of using a manual approach to develop such models, we use evolutionary algorithms to search in the design space of these models.

With these models we will determine the remaining life of a unit in a fleet of vehicles. Instead of developing individual models (based on the track history of each unit) or developing a global model (based on the collective track history of the fleet), we propose local fuzzy models based on clusters of peers, similar units with comparable utilization and performance. For each cluster of peers we create a local fuzzy model. We combine the fuzzy peer-based approach for performance modeling with an evolutionary framework for model maintenance. Our process generates a collection of competing models, evaluates their performance in light of the currently available data, refines the best models using evolutionary search, and selects the best one after a finite number of iterations. This process is repeated periodically to automatically produce updated and improved versions of the model.

To illustrate this methodology we chose an asset selection problem: given a fleet of industrial vehicles (diesel electric locomotives), we want to select the best subset (of fixed or variable size) for mission-critical utilization. To this end, we predict the remaining life for each unit in the fleet. We then sort the fleet using this prediction and select the highest ranked units. The model chosen to perform this prediction/selection task is a fuzzy instance based model. A series of experiments using data from locomotive operations were conducted and the results from an initial validation exercise are presented.

The approach of constructing local predictive models using fuzzy similarity with neighboring points along appropriate dimensions is not specific to any asset type, but it applies to many other Prognostics and Health Management (PHM) problems.

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Public: This dataset is intended for public access and use. License: No license information was provided. If this work was prepared by an officer or employee of the United States government as part of that person's official duties it is considered a U.S. Government Work.

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Dates

Metadata Created Date November 12, 2020
Metadata Updated Date April 10, 2025
Data Update Frequency irregular

Metadata Source

Harvested from NASA Data.json

Additional Metadata

Resource Type Dataset
Metadata Created Date November 12, 2020
Metadata Updated Date April 10, 2025
Publisher Dashlink
Maintainer
Identifier DASHLINK_35
Data First Published 2010-09-10
Data Last Modified 2025-03-31
Public Access Level public
Data Update Frequency irregular
Bureau Code 026:00
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Harvest Source Id 58f92550-7a01-4f00-b1b2-8dc953bd598f
Harvest Source Title NASA Data.json
Homepage URL https://c3.nasa.gov/dashlink/resources/35/
Program Code 026:029
Source Datajson Identifier True
Source Hash 1bfa53b6a7d1b8873efe48c436c5703ba57c0c9a2f4200d7aabfd274ea6c50c0
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