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首页> 外文期刊>European Journal of Medicinal Chemistry: Chimie Therapeutique >DTDR-ALSTM: Extracting dynamic time-delays to reconstruct multivariate data for improving attention-based LSTM industrial time series prediction models
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DTDR-ALSTM: Extracting dynamic time-delays to reconstruct multivariate data for improving attention-based LSTM industrial time series prediction models

机译:DTDR-ALSTM:提取动态时间延迟以重建多变量数据以改善基于关注的LSTM工业时间序列预测模型

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摘要

Taking advantage of varying degrees of attention on specific features, attention-based long short-term memory (ALSTM) networks have made inroads into the industrial multivariate time series prediction sector recently. However, conventional ALSTM models usually employ static time-delays to constant select input/output pairings of multivariate data, which apparently ignores dynamics of transmission time between industrial process variables and degrades the prediction performance by incorrectly extracting process characteristics. In response to this problem, this paper proposes a novel approach to extracting dynamic time-delays to reconstruct (DTDR) multivariate data for an improved ALSTM prediction model. Therein, the temporal locations and spans of multivariate data are adaptively tailored to input/output pairings of the ALSTM network according to the dynamic time-delays. Specifically, the multivariate data can be accurately matched in temporal positions, and the data information in the original temporal spans with Status transfer time abnormal are replaced. Consequently, this prediction model not only appropriately utilizes dynamics between the predicting and correlated variables, but also makes better attentions on key features extracted from optimum data. Applied to industrial distillation and methanol production processes, the proposed method demonstrates the capability of significantly improving network training speeds as well as prediction accuracies in contrast to static time-delay based ALSTM and LSTM models, expecting even more applications. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于注意的长短时记忆(ALSTM)网络利用人们对特定特征的不同程度的关注,近年来已进入工业多变量时间序列预测领域。然而,传统的ALSTM模型通常采用静态时间延迟来恒定选择多变量数据的输入/输出对,这显然忽略了工业过程变量之间传输时间的动态性,并通过错误地提取过程特征来降低预测性能。针对这一问题,本文提出了一种新的方法来提取动态时延来重建(DTDR)多元数据,用于改进的ALSTM预测模型。其中,多变量数据的时间位置和跨度根据动态时间延迟自适应地定制为ALSTM网络的输入/输出配对。具体来说,多变量数据可以在时间位置上精确匹配,并替换状态转移时间异常的原始时间跨度中的数据信息。因此,该预测模型不仅适当地利用了预测变量和相关变量之间的动态关系,而且更好地关注了从最优数据中提取的关键特征。将该方法应用于工业精馏和甲醇生产过程,与基于静态时延的ALSTM和LSTM模型相比,该方法能显著提高网络训练速度和预测精度,有望获得更多应用。(C) 2020爱思唯尔B.V.版权所有。

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