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Interval prediction of wave energy characteristics using meta-cognitive interval type-2 fuzzy inference system

机译:基于元认知区间2型模糊推理系统的波能特征区间预测。

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While significant efforts for online learning have been devoted to arrive at reliable predictions of crisp values, the problem of prediction interval (PI) in practical data is one of the underexplored areas in the existing literature. PI aims to produce upper and lower bound predictions which capture possible domain solution. This paper aims to extend a prominent meta-cognitive learning algorithm, namely meta-cognitive interval type-2 fuzzy inference system (McIT2FIS), to cope with the problem of prediction interval in real-time. McIT2FIS is constructed under interval type-2 fuzzy inference system and realizes the meta-cognitive learning theory featuring the basic three elements of human learning: what-to-learn, how-to-learn, when-to-learn. Unlike existing works in PI, McIT2FIS-PI works fully in the online mode and is capable of performing automatic knowledge acquisition from data streams. The efficacy of McIT2FIS-PI has been experimentally validated in a real-world wave characteristics prediction in Semakau Island, Singapore, where it is capable of delivering accurate short-term prediction intervals of wave parameters. The performance of McIT2FIS-Pl is also compared with existing state-of-the-art fuzzy inference systems in benchmark problems where it attains competitive accuracy while retaining comparable complexity. (C) 2019 Published by Elsevier B.V.
机译:尽管已经投入了大量的在线学习努力来获得清晰值的可靠预测,但是实际数据中的预测间隔(PI)问题是现有文献中未充分研究的领域之一。 PI的目标是产生上限和下限预测,以捕获可能的域解。本文旨在扩展一种突出的元认知学习算法,即元认知区间2型模糊推理系统(McIT2FIS),以实时应对预测区间问题。 McIT2FIS是在区间2型模糊推理系统下构建的,它实现了以人类学习的基本三个要素为基础的元认知学习理论:学习什么,如何学习,何时学习。与PI中现有的作品不同,McIT2FIS-PI可以完全在线模式工作,并且能够从数据流中自动获取知识。 McIT2FIS-PI的功效已经在新加坡Semakau岛的真实世界中的波浪特征预测中进行了实验验证,它能够提供准确的波浪参数短期预测间隔。在基准问题中,McIT2FIS-P1的性能也与现有的最新模糊推理系统进行了比较,在基准问题中,McIT2FIS-P1在保持相当复杂性的同时获得了竞争优势。 (C)2019由Elsevier B.V.发布

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