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Experiential knowledge representation and reasoning based on linguistic Petri nets with application to aluminum electrolysis cell condition identification

机译:基于语言培养网的体验知识代表和推理应用于铝电解细胞条件鉴定

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摘要

Fuzzy Petri nets (FPNs) play an important role in knowledge representation and reasoning (KRR), and they have been widely used in many fields. Linguistic terms are usually used to express the experiential knowledge of decision-makers in the above fields. However, cognitive nonconformity, fuzziness and uncertainty of experiential knowledge are widespread in industrial production processes, making it difficult for current FPNs to precisely model the experience or cognition of experts. In an effort to overcome the shortcomings of FPNs, linguistic Petri nets (LPNs) are proposed based on interval type-2 fuzzy sets theory and FPNs in this paper. The extended TOPSIS (ETOPSIS) is proposed to fuse together the cognition of multiple decision-makers. An interval type-2 fuzzy ordered weighted averaging operator is proposed to improve the knowledge reasoning capability of LPNs. Two comparisons are presented to demonstrate the validity of the proposed ETOPSIS and LPNs. In addition, the KRR model for aluminum electrolysis cell condition identification (AECCI) is proposed and AECCI results show the proposed methods are efficient to embrace cognitive nonconformity and manage fuzziness and uncertainty of experiential knowledge. (C) 2020 Elsevier Inc. All rights reserved.
机译:模糊Petri网(FPNS)在知识代表和推理(KRR)中发挥着重要作用,它们已广泛用于许多领域。语言术语通常用于表达上述领域中决策者的体验知识。然而,在工业生产过程中,经验知识的认知不合格,模糊性和不确定性是普遍的,这使得当前FPN难以模拟专家的经验或认知。为了克服FPN的缺点,基于间隔类型-2模糊集理论和FPNS提出了语言培养网(LPN)。建议延伸的Topsis(Etopsis)融合在一起多个决策者的认知。提出了间隔类型-2模糊有序加权平均运算符,以提高LPN的知识推理能力。提出了两种比较以证明所提出的精致性和LPN的有效性。此外,提出了铝电解细胞条件鉴定(AECCI)的KRR模型,AECCI结果表明,所提出的方法是有效的,可用于接受认知不合格和管理模糊和经验知识的不确定性。 (c)2020 Elsevier Inc.保留所有权利。

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