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On-line identification of computationally undemanding evolving fuzzy models

机译:在线识别计算需求不大的模糊模型

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This paper describes an on-line evolving fuzzy Model (efM) approach to modelling non-linear dynamic systems in which an incremental learning method is used to build up the rule-base. The rule-base evolves when "new" information becomes available by creating a new rule or deleting an old rule depended upon the proximity and potential of the rules, and the maximum number of rules to be used in the rule-base. An efM based on a T-S fuzzy model is a very good candidate for modelling complex non-linear systems, when the period of time required to collect a complete set of training data is too long for the model to be identified off-line. The proposed learning scheme is computationally undemanding and is suitable for use in model-based self-learning controllers. Three example applications of the efM are given: the first involves the modelling of a simple non-linear dynamic system, the second example is a cooling coil in a real air-conditioning system; the last example shows how the efM can be used in a Model-based Predictive Control (MbPC) scheme. The results demonstrate the ability of the efM to evolve the rule-base efficiently so as to account for the behaviour of the system in new regions of the operating space. In all given cases, the proposed efM approach generates an accurate model with relatively few rules in a computationally undemanding manner, even if the data are noisy and incomplete.
机译:本文介绍了一种用于建模非线性动态系统的在线演化模糊模型(efM)方法,其中使用增量学习方法来建立规则库。当通过创建新规则或删除旧规则获取“新”信息时,规则库会不断发展,具体取决于规则的接近度和潜力以及规则库中要使用的最大规则数。当收集完整的训练数据集所需的时间太长而无法离线识别模型时,基于T-S模糊模型的efM非常适合用于建模复杂的非线性系统。所提出的学习方案在计算上不需要,并且适用于基于模型的自学习控制器。给出了efM的三个示例应用程序:第一个示例涉及一个简单的非线性动态系统的建模,第二个示例涉及实际空调系统中的冷却盘管。最后一个示例显示了如何在基于模型的预测控制(MbPC)方案中使用efM。结果表明efM能够有效地扩展规则库,从而解决系统在操作空间新区域中的行为。在所有给定的情况下,即使数据嘈杂和不完整,所提出的efM方法也以计算上不需要的方式生成具有相对较少规则的准确模型。

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