DocumentCode :
1519301
Title :
Machine Learning for the New York City Power Grid
Author :
Rudin, Cynthia ; Waltz, David ; Anderson, Roger N. ; Boulanger, Albert ; Salleb-Aouissi, Ansaf ; Chow, Maggie ; Dutta, Haimonti ; Gross, Philip N. ; Huang, Bert ; Ierome, Steve ; Isaac, Delfina F. ; Kressner, Arthur ; Passonneau, Rebecca J. ; Radeva, Axin
Author_Institution :
MIT Sloan Sch. of Manage., Massachusetts Inst. of Technol., Cambridge, MA, USA
Volume :
34
Issue :
2
fYear :
2012
Firstpage :
328
Lastpage :
345
Abstract :
Power companies can benefit from the use of knowledge discovery methods and statistical machine learning for preventive maintenance. We introduce a general process for transforming historical electrical grid data into models that aim to predict the risk of failures for components and systems. These models can be used directly by power companies to assist with prioritization of maintenance and repair work. Specialized versions of this process are used to produce (1) feeder failure rankings, (2) cable, joint, terminator, and transformer rankings, (3) feeder Mean Time Between Failure (MTBF) estimates, and (4) manhole events vulnerability rankings. The process in its most general form can handle diverse, noisy, sources that are historical (static), semi-real-time, or real-time, incorporates state-of-the-art machine learning algorithms for prioritization (supervised ranking or MTBF), and includes an evaluation of results via cross-validation and blind test. Above and beyond the ranked lists and MTBF estimates are business management interfaces that allow the prediction capability to be integrated directly into corporate planning and decision support; such interfaces rely on several important properties of our general modeling approach: that machine learning features are meaningful to domain experts, that the processing of data is transparent, and that prediction results are accurate enough to support sound decision making. We discuss the challenges in working with historical electrical grid data that were not designed for predictive purposes. The “rawness” of these data contrasts with the accuracy of the statistical models that can be obtained from the process; these models are sufficiently accurate to assist in maintaining New York City´s electrical grid.
Keywords :
learning (artificial intelligence); power engineering computing; power grids; statistical analysis; MTBF; New York City power grid; decision making; electrical grid data; feeder Mean Time Between Failure; feeder failure rankings; knowledge discovery methods; manhole events vulnerability rankings; power companies; preventive maintenance; statistical machine learning; statistical models; transformer rankings; Data models; Machine learning; Maintenance engineering; Power cables; Power grids; Applications of machine learning; computational sustainability; electrical grid; knowledge discovery; reliability.; smart grid; supervised ranking;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2011.108
Filename :
5770269
Link To Document :
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