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机器学习在纽约电网中的应用。

Machine learning for the New York City power grid.

机构信息

MIT Sloan School of Management, Massachusetts Institute of Technology, 77 Massachusetts Avenue, Cambridge, MA 02139, USA.

出版信息

IEEE Trans Pattern Anal Mach Intell. 2012 Feb;34(2):328-45. doi: 10.1109/TPAMI.2011.108.

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 realtime, 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.

摘要

电力公司可以从知识发现方法和统计机器学习的使用中受益,以进行预防性维护。我们介绍了一种将历史电网数据转换为旨在预测组件和系统故障风险的模型的通用过程。这些模型可直接由电力公司用于协助确定维护和修复工作的优先级。该过程的专门版本用于生成 1)馈线故障排名,2)电缆、接头、终端和变压器排名,3)馈线平均故障间隔时间(MTBF)估计值,4)人孔事件脆弱性排名。该过程在其最通用的形式下可以处理多样化、嘈杂的历史(静态)、半实时或实时来源,结合了用于优先级排序的最先进的机器学习算法(监督排序或 MTBF),并通过交叉验证和盲测试评估结果。除了排名列表和 MTBF 估计值之外,还有业务管理接口,允许将预测功能直接集成到公司规划和决策支持中;这些接口依赖于我们通用建模方法的几个重要特性:机器学习特征对领域专家有意义、数据处理是透明的,并且预测结果足够准确,可以支持合理的决策。我们讨论了处理并非专为预测目的而设计的历史电网数据所面临的挑战。这些数据的“原始性”与可以从该过程中获得的统计模型的准确性形成对比;这些模型足够准确,可以帮助维护纽约市的电网。

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