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A data approach alternative at system identification and modeling using the self-organizing associative memory (SAM) system

机译:使用自组织关联存储器(SAM)系统进行系统识别和建模时的数据方法替代方案

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We introduce a data-based approach alternative to the rule-based parameter approach toward system identification. Motivated by the design-intensive problem of the parameter approach, the self-organizing associative memory (SAM) system seeks to represent the system using a subset of stored training data. We surmise that knowledge is association between memorized objects, not memorized rules. We postulate that only novel and distinct data should be organized into memory, while familiar data may be reproduced to an acceptable degree of accuracy by association between memorized data. The concept is materialized in several computational formats and tested on four different test cases. Results indicate that this data approach has high accuracy, relatively design-free, and requires only one pass of the training data to train.
机译:我们介绍了一种基于数据的方法来替代基于规则的参数方法来进行系统识别。由于参数方法的设计密集型问题,自组织关联存储器(SAM)系统试图使用存储的训练数据的子集来表示系统。我们推测知识是记忆对象之间的关联,而不是记忆规则。我们假设只有新颖而截然不同的数据才应组织到内存中,而熟悉的数据可以通过记忆数据之间的关联而以可接受的准确度进行复制。该概念以几种计算格式得以实现,并在四个不同的测试用例上进行了测试。结果表明,该数据方法具有较高的准确性,相对而言无需设计,并且仅需传递一次训练数据即可进行训练。

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