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Sliding window-based support vector regression for predicting micrometeorological data

机译:基于滑动窗口的支持向量回归预测微气象数据

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Sensor network technology is becoming more widespread and sophisticated, and devices with many sensors, such as smartphones and sensor nodes, have been used extensively. Since these devices have more easily accumulated various kinds of micrometeorological data, such as temperature, humidity, and wind speed, an enormous amount of micrometeorological data has been accumulated. In recent years, it has been expected that such an enormous amount of data, called big data, will produce novel knowledge and value. Accordingly, many current applications have used data mining technology or machine learning to exploit big data. However, micrometeorological data has a complicated correlation among different features, and its characteristics change variously with time. Therefore, it is difficult to predict micrometeorological data accurately with low computational complexity even if state-of-the-art machine learning algorithms are used. In this paper, we propose a new methodology for predicting micrometeorological data, sliding window-based support vector regression (SW-SVR) that involves a novel combination of support vector regression (SVR) and ensemble learning. To represent complicated micrometeorological data easily, SW-SVR builds several SVRs specialized for each representative data group in various natural environments, such as different seasons and climates, and changes weights to aggregate the SVRs dynamically depending on the characteristics of test data. In our experiment, we predicted the temperature after 1 h and 6 h by using large-scale micrometeorological data in Tokyo. As a result, regardless of testing periods, training periods, and prediction horizons, the prediction performance of SW-SVR was always greater than or equal to other general methods such as SVR, random forest, and gradient boosting. At the same time, SW-SVR reduced the building time remarkably compared with those of complicated models that have high prediction performance. (C) 2016 The Authors. Published by Elsevier Ltd.
机译:传感器网络技术变得越来越广泛和复杂,具有许多传感器的设备(例如智能手机和传感器节点)已被广泛使用。由于这些装置更容易累积各种微气象数据,例如温度,湿度和风速,因此已经累积了大量的微气象数据。近年来,人们期望将如此大量的数据(称为大数据)产生新的知识和价值。因此,许多当前的应用程序已使用数据挖掘技术或机器学习来利用大数据。但是,微气象数据在不同特征之间具有复杂的相关性,其特征会随时间变化。因此,即使使用最先进的机器学习算法,也很难以较低的计算复杂度准确地预测微气象数据。在本文中,我们提出了一种预测微气象数据的新方法,即基于滑动窗口的支持向量回归(SW-SVR),其中涉及支持向量回归(SVR)和集成学习的新型组合。为了轻松表示复杂的微气象数据,SW-SVR针对不同自然环境(例如不同的季节和气候)中的每个代表性数据组构建了多个专用于SVR的SVR,并根据测试数据的特性更改权重以动态汇总SVR。在我们的实验中,我们使用东京的大规模微气象数据预测了1小时和6小时后的温度。结果,无论测试周期,训练周期和预测范围如何,SW-SVR的预测性能始终大于或等于其他常规方法,例如SVR,随机森林和梯度增强。同时,与具有较高预测性能的复杂模型相比,SW-SVR显着减少了构建时间。 (C)2016作者。由Elsevier Ltd.发布

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