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Perpetual Learning Framework based on Type-2 Fuzzy Logic System for a Complex Manufacturing Process

机译:基于Type-2模糊逻辑系统的复杂制造过程永久学习框架

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Abstract: This paper introduces a perpetual type-2 Neuro-Fuzzy modelling structure for continuous learning and its application to the complex thermo-mechanical metal process of steel Friction Stir Welding (FSW). The ‘perpetual’ property refers to the capability of the proposed system to continuously learn from new process data, in an incremental learning fashion. This is particularly important in industrial/manufacturing processes, as it eliminates the need to retrain the model in the presence of new data, or in the case of any process drift. The proposed structure evolves through incremental, hybrid (supervised/unsupervised) learning, and accommodates new sample data in a continuous fashion. The human-like information capture paradigm of granular computing is used along with an interval type-2 neural-fuzzy system to develop a modelling structure that is tolerant to the uncertainty in the manufacturing data (common challenge in industrial/manufacturing data). The proposed method relies on the creation of new fuzzy rules which are updated and optimised during the incremental learning process. An iterative pruning strategy in the model is then employed to remove any redundant rules, as a result of the incremental learning process. The rule growing/pruning strategy is used to guarantee that the proposed structure can be used in a perpetual learning mode. It is demonstrated that the proposed structure can effectively learn complex dynamics of input-output data in an adaptive way and maintain good predictive performance in the metal processing case study of steel FSW using real manufacturing data.
机译:摘要:本文介绍了一种用于持续学习的永久性2型神经模糊建模结构,并将其应用于钢搅拌摩擦焊(FSW)的复杂热机械金属工艺中。 “永久”属性是指所提出的系统以增量学习方式从新过程数据中不断学习的能力。这在工业/制造过程中尤其重要,因为它消除了在有新数据的情况下或在任何过程漂移的情况下重新训练模型的需求。所提出的结构通过增量的,混合的(有监督/无监督)学习而发展,并以连续的方式容纳新的样本数据。粒状计算的类人信息捕获范例与间隔2型神经模糊系统一起使用,以开发可容忍制造数据不确定性(工业/制造数据中的常见挑战)的建模结构。所提出的方法依赖于新的模糊规则的创建,该模糊规则在增量学习过程中被更新和优化。然后,由于增量学习过程,该模型中的迭代修剪策略可用于删除任何冗余规则。规则增长/修剪策略用于确保所提出的结构可用于永久学习模式。结果表明,在钢FSW的金属加工案例研究中,利用真实的制造数据,所提出的结构能够以自适应的方式有效地学习输入输出数据的复杂动态,并保持良好的预测性能。

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