TY - JOUR
T1 - Aquaformer
T2 - Multi-source transfer learning model based on Transformer and phase space reconstruction for long sequence water quality forecasting
AU - Sun, Mingzhuang
AU - Xu, Changqing
AU - Jia, Qimeng
AU - Jia, Haifeng
N1 - Publisher Copyright:
© 2025 Elsevier B.V. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/1
Y1 - 2026/1
N2 - Smart water management relies on in-situ water quality data with long-term forecasts to support decision-making. Despite this urgent demand, the state-of-the-art methods for long sequence time-series forecasting haven’t been widely applied to smart water management and tuned for water quality forecasting. This study proposes Aquaformer, a Transformer-based model oriented to smart water management, where phase space reconstruction (PSR) is coupled with transfer learning to cope with the perennial data scarcity issue. Water quality data could be considered observations of the trajectories of high-dimensional water quality phase space, sharing the same dynamics with the systems reconstructed from the observations. Redefining the problem based on PSR could improve interpretability and reduce sequence length. The multi-source domain should follow dynamics similar to those of the corresponding target domain and thus consist of more correlated data. The experiments on 5 datasets of varied sizes showed that compared with baseline models, Aquaformer had the highest efficiency and achieved best performance in 41 out of 45 scenarios, reducing prediction error by 10.08 ∼ 39.52 %. Meanwhile, its transfer strategy had superior transfer gain to the alternatives with an average over 14 %. The sparse attention module and prediction calibrator of Aquaformer also proved effective in ablation studies.
AB - Smart water management relies on in-situ water quality data with long-term forecasts to support decision-making. Despite this urgent demand, the state-of-the-art methods for long sequence time-series forecasting haven’t been widely applied to smart water management and tuned for water quality forecasting. This study proposes Aquaformer, a Transformer-based model oriented to smart water management, where phase space reconstruction (PSR) is coupled with transfer learning to cope with the perennial data scarcity issue. Water quality data could be considered observations of the trajectories of high-dimensional water quality phase space, sharing the same dynamics with the systems reconstructed from the observations. Redefining the problem based on PSR could improve interpretability and reduce sequence length. The multi-source domain should follow dynamics similar to those of the corresponding target domain and thus consist of more correlated data. The experiments on 5 datasets of varied sizes showed that compared with baseline models, Aquaformer had the highest efficiency and achieved best performance in 41 out of 45 scenarios, reducing prediction error by 10.08 ∼ 39.52 %. Meanwhile, its transfer strategy had superior transfer gain to the alternatives with an average over 14 %. The sparse attention module and prediction calibrator of Aquaformer also proved effective in ablation studies.
KW - Long-term prediction
KW - Phase space reconstruction
KW - Transfer learning
KW - Transformer
KW - Water quality forecasting
UR - http://www.scopus.com/pages/publications/105018915787
U2 - 10.1016/j.jhydrol.2025.134372
DO - 10.1016/j.jhydrol.2025.134372
M3 - Article
AN - SCOPUS:105018915787
SN - 0022-1694
VL - 664
JO - Journal of Hydrology
JF - Journal of Hydrology
M1 - 134372
ER -