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Experiment-Based Approach to Teach Optimization Techniques

机译:基于实验的教导优化技术方法

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This article proposes an approach based on experiments to teach optimization technique (OT) courses in the Systems Engineering curricula at undergraduate level. Artificial intelligence techniques in terms of nature-inspired optimization algorithms and neural networks are inserted in the lecture and laboratory parts of the syllabus. The experiments are included in the laboratory part of the syllabus by first involving controlled process analysis and modeling, control structures and algorithms, real-time laboratory experiments, and their assessment. These experiments are focused on the representative case of the pendulum-cart system control, and the genetic algorithm-based optimal tuning of proportional-integral-derivative and state-feedback controllers is carried out. The laboratory part of the syllabus deals next with the development of neural network-based models for the prediction of financial time series. An analysis of the grades obtained by representative groups of students that attended the OT course at the Politehnica University of Timisoara, Romania, and their effects on the process control structures and algorithms course, which continues the OT course in the next semester, is performed. The analysis also discusses the situation prior to using the proposed approach. The results of this analysis demonstrate the efficiency of our approach based on complex systems optimization, modeling, and control targeting real-world practical applications, and a numerical outcome of the approach is given. This allows students to gain a better understanding of the theoretical aspects acquired during the lectures in comparison with the situation prior to using the proposed approach.
机译:本文提出了一种基于实验的方法,在本科水平上教导系统工程课程中的优化技术(OT)课程。在自然启发优化算法和神经网络方面的人工智能技术插入了教学大纲的讲座和实验室部分。通过首先涉及受控过程分析和建模,控制结构和算法,实时实验室实验及其评估,将实验包括在教学大纲的实验室部分。这些实验集中在摆车系统控制的代表性案例上,并执行比例 - 积分衍生物和状态反馈控制器的基于遗传算法的最佳调整。教学大纲的实验室部分遵循了基于神经网络的模型的开发,用于预测财务时间序列。进行了参加Timisoara,罗马尼亚Politehnica大学的OT课程的代表性群体获得的成绩分析,并对下学期继续课程的过程控制结构和算法课程。分析还讨论了使用所提出的方法之前的情况。该分析结果证明了我们基于复杂系统优化,建模和控制的方法的效率,瞄准真实世界的实际应用,并给出了该方法的数值结果。这使得学生与使用所提出的方法之前的情况相比,学生更好地了解讲座期间获得的理论方面。

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