智能控制系统中的模型切换

Mohan Ravindranathan, Roy Leitch
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引用次数: 17

摘要

本文演示了在智能控制系统中使用多个模型,其中模型组织在三个原始建模维度的模型空间中:精度,范围和一般性。这种方法产生了一个模型空间,以扩展控制系统的操作范围。在该模型空间中,在给定情况下选择最合适的模型是通过由一组模型切换规则组成的推理策略确定的。这些是基于首先使用最有效但最不通用的模型,然后逐渐增加通用性和范围,直到找到令人满意的模型。这种方法在多模型智能控制系统体系结构中达到了顶峰,该体系结构在效率和通用性之间进行了权衡,这种方法在人类问题解决中很明显。该体系结构允许通过模型精化学习成功的适应性,并在将来类似的情况下直接使用精化的模型。以实验室规模的工艺装置模型为例,说明了多模型智能控制系统的自适应推理和学习过程。
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Model switching in intelligent control systems

This paper demonstrates the use of multiple models in intelligent control systems where models are organised within a model space of three primitive modelling dimensions: precision, scope and generality. This approach generates a space of models to extend the operating range of control systems. Within this model space, the selection of the most appropriate model to use in a given situation is determined through a reasoning strategy consisting of a set of model switching rules. These are based on using the most efficient, but least general models first and then incrementally increasing the generality and scope until a satisfactory model is found. This methodology has culminated in a multi-model intelligent control system architecture that trades-off efficiency with generality, an approach apparent in human problem solving. The architecture allows learning of successful adaptations through model refinement and the subsequent direct use of refined models in similar situations in the future. Examples using models of a laboratory-scale process rig illustrates the adaptive reasoning and learning process of multi-model intelligent control systems.

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