NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Engine Icing Data - An Analytics ApproachEngine icing researchers at the NASA Glenn Research Center use the Escort data acquisition system in the Propulsion Systems Laboratory (PSL) to generate and collect a tremendous amount of data every day. Currently these researchers spend countless hours processing and formatting their data, selecting important variables, and plotting relationships between variables, all by hand, generally analyzing data in a spreadsheet-style program (such as Microsoft Excel). Though spreadsheet-style analysis is familiar and intuitive to many, processing data in spreadsheets is often unreproducible and small mistakes are easily overlooked. Spreadsheet-style analysis is also time inefficient. The same formatting, processing, and plotting procedure has to be repeated for every dataset, which leads to researchers performing the same tedious data munging process over and over instead of making discoveries within their data. This paper documents a data analysis tool written in Python hosted in a Jupyter notebook that vastly simplifies the analysis process. From the file path of any folder containing time series datasets, this tool batch loads every dataset in the folder, processes the datasets in parallel, and ingests them into a widget where users can search for and interactively plot subsets of columns in a number of ways with a click of a button, easily and intuitively comparing their data and discovering interesting dynamics. Furthermore, comparing variables across data sets and integrating video data (while extremely difficult with spreadsheet-style programs) is quite simplified in this tool. This tool has also gathered interest outside the engine icing branch, and will be used by researchers across NASA Glenn Research Center. This project exemplifies the enormous benefit of automating data processing, analysis, and visualization, and will help researchers move from raw data to insight in a much smaller time frame.
Document ID
20170004522
Acquisition Source
Glenn Research Center
Document Type
Technical Memorandum (TM)
Authors
Fitzgerald, Brooke A.
(Hampshire Coll. Amherst, MA, United States)
Flegel, Ashlie B.
(NASA Glenn Research Center Cleveland, OH United States)
Date Acquired
May 10, 2017
Publication Date
May 1, 2017
Subject Category
Computer Programming And Software
Report/Patent Number
GRC-E-DAA-TN40097
E-19354
NASA/TM-2017-219487
Funding Number(s)
WBS: WBS 081876.02.03.08
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
Engine Icing
Analytics
Machine Learning
Big Data
No Preview Available