Prediction Intervals for Granular Data Streams Based on Evolving Type-2 Fuzzy Granular Neural Network Dynamic Ensemble | IEEE Journals & Magazine | IEEE Xplore

Prediction Intervals for Granular Data Streams Based on Evolving Type-2 Fuzzy Granular Neural Network Dynamic Ensemble


Abstract:

Granular data streams (GDSs) are a class of high-level abstract multitime scale description of data streams. Prediction intervals (PIs) for GDSs that provide estimated va...Show More

Abstract:

Granular data streams (GDSs) are a class of high-level abstract multitime scale description of data streams. Prediction intervals (PIs) for GDSs that provide estimated values as well as their corresponding reliability play an important role for assisting on-site workers to perceive the nonstationary environment in real time. However, constructing reliable PIs for GDSs constitutes a significant challenge. To provide a solution to the problem, an interval type-2 (IT2) fuzzy granular neural network (FGNN) dynamic ensemble approach (IT2FGNNDEnsemble) is proposed in this article. To fully reflect the uncertainty of GDSs, an interval value learning algorithm based IT2FGNN is developed, which can automatically generate, prune, merge, and realize recall in a single-pass learning mode. In addition, an evolving dynamic ensemble method is presented by providing an adaptive structure that considers a tradeoff between coverage and width of PIs, which can dynamically generate and prune the element of an ensemble according to current data tendency. A number of synthetic and industrial data streams experimentally validate the performance of the proposed IT2FGNNDEnsemble by using the state-of-the-art comparative methods. It is demonstrated that the proposed approach exhibits a good performance on PIs for practical applications.
Published in: IEEE Transactions on Fuzzy Systems ( Volume: 29, Issue: 4, April 2021)
Page(s): 874 - 888
Date of Publication: 13 January 2020

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I. Introduction

In INDUSTRIAL production process, multiscale prediction and multilevel analysis of data streams being collected continuously at a fast rate need to be carried out efficiently [1]. Granular data streams (GDSs) as a class of high-level abstract description of real-time data provide an interesting avenue to solve problems involving uncertainty introduced during preprocessing steps and the requirements of multiscale analysis, etc., [2], [3]. Therefore, it is of genuine interest to explore and develop the method capable to handle advanced forms of nonstationary data encountered in complex industrial environments [4]–[6].

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