Deep learning-based soft sensor modeling methods have been extensively studied and applied to industrial processes in the last decade. However, existing soft sensor models mainly focus on the current step prediction in real time and ignore the multistep prediction in advance. In actual industrial applications, compared to the current step prediction, it is more useful for on-site workers to predict some key performance indicators in advance. Nowadays, multistep prediction task still suffers from two key issues: 1) complex coupling relationships between process variables and 2) long-term dependency learning. To ravel out these two problems, in this article, we propose a graph-based time-frequency two-stream network to achieve multistep prediction. Specifically, a multigraph attention layer is proposed to model the dynamical coupling relationships between process variables from the graph perspective. Then, in the time-frequency two-stream network, multi-GAT is used to extract time-domain features and frequency-domain features for long-term dependency, respectively. Furthermore, we propose a feature fusion module to combine these two kinds of features based on the minimum redundancy and maximum correlation learning paradigm. Finally, extensive experiments on two real-world industrial datasets show that the proposed multistep prediction model outperforms the state-of-the-art models. In particular, compared to the existing SOTA method, the proposed method has achieved 12.40%, 22.49%, and 21.98% improvement in RMSE, MAE, and MAPE on the three-step prediction task using waste incineration dataset.
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http://dx.doi.org/10.1109/TCYB.2024.3447108 | DOI Listing |
Atmospheric turbulence is one of the key factors that affect the stability and performance of satellite-to-ground laser communication (SGLC). Predicting turbulence could provide a decisive strategy for the SGLC system to ensure communication performance and is thus of great significance. In this Letter, we proposed a hybrid multi-step prediction method for atmospheric turbulence.
View Article and Find Full Text PDFSoft Matter
January 2025
Department of Mechanical Engineering and Materials Science, Yale University, New Haven, CT 06510, USA.
Hydrogels are popular platforms for cell encapsulation in biomedicine and tissue engineering due to their soft, porous structures, high water content, and excellent tunability. Recent studies highlight that the timing of network formation can be just as important as mechanical properties in influencing cell morphologies. Conventionally, time-dependent properties can be achieved through multi-step processes.
View Article and Find Full Text PDFInt J Biol Macromol
January 2025
College of Engineering, China Agricultural University, Beijing 100083, China. Electronic address:
Bacteriocins, naturally derived antimicrobial peptides, are considered promising alternatives to traditional preservatives and antibiotics, particularly in food and medical applications. Despite extensive research on various bacteriocins, cyclic varieties remain understudied. This study introduces Gassericin GA-3.
View Article and Find Full Text PDFWe study Hopfield networks with non-reciprocal coupling inducing switches between memory patterns. Dynamical phase transitions occur between phases of no memory retrieval, retrieval of multiple point-attractors, and limit-cycle attractors. The limit cycle phase is bounded by two critical regions: a Hopf bifurcation line and a fold bifurcation line, each with unique dynamical critical exponents and sensitivity to perturbations.
View Article and Find Full Text PDFSci Rep
January 2025
Computer Science, Université du Québec à Montréal, Montreal, Canada.
Transformer based models for time-series forecasting have shown promising performance and during the past few years different Transformer variants have been proposed in time-series forecasting domain. However, most of the existing methods, mainly represent the time-series from a single scale, making it challenging to capture various time granularities or ignore inter-series correlations between the series which might lead to inaccurate forecasts. In this paper, we address the above mentioned shortcomings and propose a Transformer based model which integrates multi-scale patch-wise temporal modeling and channel-wise representation.
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