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Representation and processing of domain knowledge for simulation-based training in complex dynamic systems

机译:复杂动态系统中基于模拟的训练的领域知识的表示和处理

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摘要

Mainly because of the inability to explicitly represent declarative and procedural knowledge and operational skills in complex dynamic systems, the conventional techniques for development of intelligent tutoring systems in narrow and simple domains cannot be applied to intelligent simulation-based systems for training in complex dynamic systems. A knowledge representation language is presented that explicitly expresses the system structure, functions, and behavior. Different types of training tasks (for example, measuring, monitoring, control, and diagnostic) for quantitative modeling of continuous, discrete and discrete-event systems can be programmed in this language. On the basis of a graph interpretation of the program in knowledge representation, language task and the student's evaluation are discussed. The architecture of an environment for producing intelligent simulation-based systems for training in complex dynamic systems is described.
机译:主要是由于无法在复杂的动态系统中明确表示陈述性和程序性知识和操作技能,因此在狭窄和简单领域中开发智能补习系统的常规技术无法应用于在复杂动态系统中进行训练的基于智能仿真的系统。提出了一种知识表示语言,可以明确表达系统的结构,功能和行为。可以用这种语言来编程用于连续,离散和离散事件系统的定量建模的不同类型的训练任务(例如,测量,监视,控制和诊断)。在对程序进行知识表示的图形解释的基础上,讨论了语言任务和学生的评价。描述了用于生产基于智能仿真的系统以在复杂动态系统中进行训练的环境的体系结构。

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