基于时空信息转换的综合储层预测器

IF 1.9 4区 数学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Na Yang, Renhao Hong, Pei Chen, Zhengrong liu
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引用次数: 0

摘要

对高维时间序列进行多步预测是一项重要而具有挑战性的任务。在本研究中,我们提出了一种综合水库预测器,用于基于短期高维时间序列进行准确、稳健的多步超前预测。首先,利用塔肯斯嵌入理论推导出一对共轭时空信息(STI)方程,将高维变量的空间信息转化为目标变量的一维时间信息,反之亦然。接着,利用水库网络,建立了基于水库的 STI 方程,只需线性优化就能有效捕捉目标系统的非线性动态。然后,通过集成阶段,集成水库预测器可以对任何目标变量的多步前瞻状态输出精确而稳健的预测。集成储层预测器在应用于经典动态系统(例如60D双卷轴模型、40D洛伦兹96模型和60D罗斯勒模型)和真实世界数据集(太阳能发电数据和 PM2.5 浓度记录)时,即使在训练数据存在噪声的情况下,皮尔逊相关系数超过 0.9 和均方根误差低于 0.3 等评估指标也表明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Integrated Reservoir Predictor Based on Spatiotemporal Information Transformation

Multistep prediction of high-dimensional time series is an essential and challenging task. In this study, we propose an integrated reservoir predictor for making accurate and robust multistep-ahead forecasts based on short-term high-dimensional time series. Initially, a conjugated pair of Spatiotemporal Information (STI) equations is derived using Takens’ embedding theory to transform the spatial information of high-dimensional variables into one-dimensional temporal information of the target variable and vice versa. Next, by exploiting reservoir networks, reservoir-based STI equations are established to efficiently capture nonlinear dynamics of the target system with only linear optimization. Then, through an integration phase, the integrated reservoir predictor can output precise and robust predictions of the multistep-ahead states of any target variable. The integrated reservoir predictor outperforms some other prediction methods (including reservoir computing, long-short-term-memory network, convolutional neural network and support vector regression), when applied to classical dynamic systems (e.g. 60D double scroll model, 40D Lorenz 96 model, and 60D Rössler model) and real-world datasets (solar generation data and PM2.5 concentration records), as indicated by evaluation metrics such as Pearson correlation coefficients exceeding 0.9 and root-mean-square errors below 0.3, even in the presence of noise in training data.

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来源期刊
International Journal of Bifurcation and Chaos
International Journal of Bifurcation and Chaos 数学-数学跨学科应用
CiteScore
4.10
自引率
13.60%
发文量
237
审稿时长
2-4 weeks
期刊介绍: The International Journal of Bifurcation and Chaos is widely regarded as a leading journal in the exciting fields of chaos theory and nonlinear science. Represented by an international editorial board comprising top researchers from a wide variety of disciplines, it is setting high standards in scientific and production quality. The journal has been reputedly acclaimed by the scientific community around the world, and has featured many important papers by leading researchers from various areas of applied sciences and engineering. The discipline of chaos theory has created a universal paradigm, a scientific parlance, and a mathematical tool for grappling with complex dynamical phenomena. In every field of applied sciences (astronomy, atmospheric sciences, biology, chemistry, economics, geophysics, life and medical sciences, physics, social sciences, ecology, etc.) and engineering (aerospace, chemical, electronic, civil, computer, information, mechanical, software, telecommunication, etc.), the local and global manifestations of chaos and bifurcation have burst forth in an unprecedented universality, linking scientists heretofore unfamiliar with one another''s fields, and offering an opportunity to reshape our grasp of reality.
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