Adaptive Granulation-Based Prediction for Energy System of Steel Industry
Release time:2019-03-11
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Indexed by:期刊论文
First Author:Wang, Tianyu
Correspondence Author:Wang, TY (reprint author), Dalian Univ Technol, Sch Control Sci & Engn, Dalian 116024, Peoples R China.
Co-author:Han, Zhongyang,Zhao, Jun,Wang, Wei
Date of Publication:2018-01-01
Journal:IEEE TRANSACTIONS ON CYBERNETICS
Included Journals:SCIE
Document Type:J
Volume:48
Issue:1
Page Number:127-138
ISSN No.:2168-2267
Key Words:Adaptive granulation; collaborative-conditional fuzzy clustering (CCFC);
energy system; prediction; steel industry
Abstract:The flow variation tendency of byproduct gas plays a crucial role for energy scheduling in steel industry. An accurate prediction of its future trends will be significantly beneficial for the economic profits of steel enterprise. In this paper, a long-term prediction model for the energy system is proposed by providing an adaptive granulation-based method that considers the production semantics involved in the fluctuation tendency of the energy data, and partitions them into a series of information granules. To fully reflect the corresponding data characteristics of the formed unequal-length temporal granules, a 3-D feature space consisting of the timespan, the amplitude and the linetype is designed as linguistic descriptors. In particular, a collaborative-conditional fuzzy clustering method is proposed to granularize the tendency-based feature descriptors and specifically measure the amplitude variation of industrial data which plays a dominant role in the feature space. To quantify the performance of the proposed method, a series of real-world industrial data coming from the energy data center of a steel plant is employed to conduct the comparative experiments. The experimental results demonstrate that the proposed method successively satisfies the requirements of the practically viable prediction.
Translation or Not:no