Water level prediction model based on blockchain and LSTM

Aiming at the shortcomings of traditional water level prediction methods such as insufficient information mining ability and unclear mechanism of heuristic algorithms, this paper proposes for the first time a water level prediction method based on blockchain technology fused with long short-term mem...

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Veröffentlicht in:Journal of intelligent & fuzzy systems 2024-01, Vol.46 (1), p.2371-2380
Hauptverfasser: Liu, Mingtang, Zhang, Mengxiao, Zhang, Peng, Wang, Guanghui, Chen, Xiaokang, Zhang, Hao
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container_issue 1
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container_title Journal of intelligent & fuzzy systems
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creator Liu, Mingtang
Zhang, Mengxiao
Zhang, Peng
Wang, Guanghui
Chen, Xiaokang
Zhang, Hao
description Aiming at the shortcomings of traditional water level prediction methods such as insufficient information mining ability and unclear mechanism of heuristic algorithms, this paper proposes for the first time a water level prediction method based on blockchain technology fused with long short-term memory (LSTM) network. The method utilizes blockchain and LSTM neural network to build a combined model, and directly uploads monitoring data such as import and export water flow and water level to predict the water level, which avoids the secondary error brought by the indirect calculation of flow. In this paper, the flow compensation strategy is proposed for the first time, and the monitoring data with large deviations are compensated accordingly to reduce the prediction error from the source. The results show that the combined Blockchain-LSTM model has the smallest prediction error after adopting the compensation strategy, with the MAE of 0.290 and the RMSE of 0.490, which are smaller than those of other models, and has high prediction accuracy and practicability, which provides technical support for real-time scheduling of the South-to-North Water Diversion Reservoir.
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subjects Algorithms
Blockchain
Compensation
Cryptography
Errors
Heuristic methods
Monitoring
Neural networks
Prediction models
Technical services
Water flow
Water levels
title Water level prediction model based on blockchain and LSTM
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