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A method for using activity recognition to improve ensemble forecasting for traffic systems.

机译:一种使用活动识别来改善交通系统集成预测的方法。

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摘要

Accurate traffic forecasting is of great interest for commercial, security, and energy ef- ficiency applications. In this work we focus on forecasting the movement of people in a building and vehicles on a roadway. Traditional forecasting methods use statistical models, learned from historical data. However, these methods fail during the presence of anomalies. In such cases, the forecast can deviate significantly from historical averages. We have de- veloped a method to recognize the occurrence of an anomaly, and adjust the forecast to take this into account. Our approach is to first train a background model to forecast the data. In order to do this, we developed a new ensemble predictor that takes outputs from a set of models, thus achieving a more accurate result than any individual model alone. We then look for intervals where large deviations occur, between the forecasted data and the actual data. Clustering and modeling these yields a number of potential anomaly models. We then train a classifier to recognize the anomalies as they begin to occur. We then intro- duce a novel method to combine the anomaly-based forecasts using a Bayesian approach, to produce a more accurate ensemble forecaster. We demonstrate the efficacy of the approach on actual building sensor datasets, as well as a vehicle traffic dataset, and show that the new approach incorporating anomaly detection achieves significantly better accuracy than the ensemble forecaster without anomaly detection.
机译:准确的流量预测对于商业,安全和节能应用非常重要。在这项工作中,我们专注于预测建筑物中人员的移动以及道路上车辆的移动。传统的预测方法使用从历史数据中学到的统计模型。但是,这些方法在出现异常时会失败。在这种情况下,预测可能会大大偏离历史平均值。我们已经开发出一种方法来识别异常的发生,并调整预测以将其考虑在内。我们的方法是首先训练背景模型来预测数据。为此,我们开发了一种新的集合预测器,该预测器从一组模型中获取输出,从而比单独的任何单个模型获得更准确的结果。然后,我们在预测数据和实际数据之间寻找出现较大偏差的时间间隔。对这些进行聚类和建模会产生许多潜在的异常模型。然后,我们训练分类器在异常开始发生时识别它们。然后,我们引入一种新颖的方法,使用贝叶斯方法结合基于异常的预测,以生成更准确的集合预报器。我们证明了该方法在实际建筑物传感器数据集以及车辆交通数据集上的功效,并表明结合了异常检测的新方法比没有异常检测的整体预报器具有明显更好的准确性。

著录项

  • 作者

    Howard, James.;

  • 作者单位

    Colorado School of Mines.;

  • 授予单位 Colorado School of Mines.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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