Using genetic algorithm for optimizing fuzzy logic controller for mode-based control algorithms of building automation systems

Xiaoye Cai, Yue-Feng Cen, M. Baranski, D. Müller
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Abstract

The growing integration of renewable energy into building energy systems causes increasing complexity of energy conversion and distribution systems. This development creates the need for appropriate control algorithms implemented in building automation systems. We previously introduced the MODI-method to support structured development of mode-based control algorithms and allow simulation-based testing in early phases of the planning process. However, the control design concerns different aspects, such as efficiency and system lifetime. It is therefore challenging to determine the conditions of the transitions between operating modes. Furthermore, the control design process lacks an optimization approach for the generated control algorithms. In this paper, we investigate the application of a fuzzy logic controller to generate conditions for mode transition of control algorithms and transfer approximate human knowledge into the control design. We perform optimization based on genetic algorithm to improve the performance of the control system, considering several aspects. The case study presents structured development of a mode-based control algorithm for a cooling supply system and the functionality of a fuzzy logic controller implemented into the control algorithm. The optimization of the fuzzy logic controller is performed using genetic algorithm. As a result, the optimized parameters of the fuzzy logic controller are gathered, leading to improvement of the performance of the system.
利用遗传算法对模糊控制器进行优化,实现基于模式的楼宇自动化控制算法
可再生能源日益融入建筑能源系统,导致能源转换和分配系统日益复杂。这种发展创造了在楼宇自动化系统中实现适当控制算法的需要。我们之前引入了modi方法,以支持基于模式的控制算法的结构化开发,并允许在规划过程的早期阶段进行基于仿真的测试。然而,控制设计涉及不同的方面,如效率和系统寿命。因此,确定操作模式之间转换的条件是具有挑战性的。此外,控制设计过程缺乏对生成的控制算法进行优化的方法。本文研究了模糊逻辑控制器的应用,以产生控制算法模式转换的条件,并将近似的人类知识传递到控制设计中。为了提高控制系统的性能,我们从几个方面进行了基于遗传算法的优化。案例研究提出了一种基于模式的冷却供应系统控制算法的结构化开发,以及在控制算法中实现的模糊逻辑控制器的功能。采用遗传算法对模糊控制器进行优化。从而收集了模糊控制器的优化参数,从而提高了系统的性能。
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