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Mining Sequences in Distributed Sensors Data for Energy Production

机译:分布式传感器数据中的挖掘序列以产生能量

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摘要

The desire to predict power generation at a given point in time is essential to power scheduling, energy trading, and availability modeling. The research conducted within is concerned with sequence mining on power generation data and has the intent of modeling power generation. The data streams analyzed are average hourly power generation that is reported to the EPA. A global statistical model is proven impractical for the data streams, and local modeling via sequence mining is performed. The methodology presented, Uniform Sequence Discovery, implements the idea of uniform population coding, stream mining, and cross-stream mining. 1671 streams from years 2002 through 2004 are coded, mined for sequences, and cross-mined for matching sequences. 486 and 270 frequent sequences were extracted from the learning and testing data respectively. Association rules and the accompanying confidence and support values are used to create local models for power generation prediction. 159 local models were confirmed in the testing phase with a minimum confidence of 0.60. Power traders, concerned with predicting available generation, would then use the local models for prediction of natural gas-fired power generation.
机译:预测给定时间点的发电量的需求对于电力调度,能源交易和可用性建模至关重要。内部进行的研究涉及对发电数据进行序列挖掘,并具有对发电建模的意图。分析的数据流是报告给EPA的平均每小时发电量。事实证明,全局统计模型对于数据流是不切实际的,并且通过序列挖掘进行了局部建模。提出的方法“统一序列发现”实现了统一总体编码,流挖掘和跨流挖掘的思想。对2002年至2004年的1671个流进行编码,挖掘序列,并交叉挖掘匹配序列。从学习和测试数据中分别提取了486和270个频繁序列。关联规则以及随附的置信度和支持值用于创建用于发电量预测的局部模型。在测试阶段确认了159个局部模型,最低置信度为0.60。然后,与预测可用发电量有关的电力交易商将使用本地模型来预测天然气发电量。

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