4.7 Article

Construction of prediction intervals for carbon residual of crude oil based on deep stochastic configuration networks

Journal

INFORMATION SCIENCES
Volume 486, Issue -, Pages 119-132

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2019.02.042

Keywords

Uncertain data modeling; Deep stochastic configuration networks; Prediction intervals; Nuclear magnetic resonance; Carbon residual content of crude oil

Funding

  1. National Natural Science Foundation of China [61590922, 61525302]
  2. Project of Ministry of Industry and Information Technology of China [20171122-6]
  3. Fundamental Research Funds for the Central Universities [N160801001, N161608001]

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Complex components lead to large fluctuations in the physicochemical properties of crude oil which make accurate prediction more difficult. To quantify the potential uncertainty associated with prediction, this paper proposes a novel approach to construct prediction intervals (PIs) for the carbon residual content of crude oil based on the lower-upper bound estimation (LUBE) method and deep stochastic configuration networks (DSCNs). According to the principle of stochastic configuration networks, the input weights and biases of DSCN are randomly assigned with a supervisory mechanism and only the output weights need to be evaluated which can greatly reduce the number of parameters to be optimized. Then, combining the coverage width-based criterion and mean accumulated width deviation, a new cost function of DSCN for constructing Pls based on the LUBE method is proposed to center the mean values of the Pls as near as possible to the targets, hence the average of lower and upper bounds of the PI is calculated as the deterministic output, which can solve the problem that the Pls based on the original LUBE method cannot provide the deterministic prediction. Moreover, a modified backtracking search optimization algorithm, improving the population diversity and increasing the search capability while maintaining the convergence speed, is presented to obtain the optimal Pls. Finally, experiments using real-world data are carried out and the results demonstrate that the proposed approach can construct Pis with high quality. (C) 2019 Elsevier Inc. All rights reserved.

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