Maimun Huja Husin, Mohamad Faizrizwan Mohd Sabri, Kismet Anak Hong Ping, Norazlina Bateni, S. Suhaili
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引用次数: 0
Abstract
This paper proposed an iterative learning control (ILC) with a feedback regulator based on proportional integral ammonium-based aeration control (PI ABAC) to improve dissolved oxygen control through data learning of iteration data. The proposed controller's performance is evaluated using benchmark simulation model no. 1. (BSM1). The assessments focused on four main areas: effluent violation, effluent quality, aeration energy, and overall cost index. The proposed ILC PI ABAC controller's effectiveness is evaluated by comparing the performance of the activated sludge process to the BSM1 PI and feedback PI ABAC under three different weather conditions: dry, rain, and storm. The improvement of the proposed method over BSM1 PI is demonstrated by a reduction in aeration energy of up to 24%. In conclusion, if the proposed ILC PI ABAC controller is given enough information, it can be quite successful in achieving energy efficiency.
本文提出了一种带反馈调节器的迭代学习控制(ILC),该反馈调节器基于比例积分氨曝气控制(PI ABAC),通过对迭代数据的学习来改进溶解氧控制。利用基准模拟模型 No.1. (BSM1)进行了性能评估。评估主要集中在四个方面:出水违规、出水质量、曝气能耗和总体成本指数。通过比较活性污泥工艺与 BSM1 PI 和反馈 PI ABAC 在三种不同天气条件下(干燥、下雨和暴风雨)的性能,评估了所提出的 ILC PI ABAC 控制器的有效性。与 BSM1 PI 相比,拟议方法的改进体现在曝气能耗降低了 24%。总之,如果给拟议的 ILC PI ABAC 控制器提供足够的信息,它就能成功地提高能效。
期刊介绍:
Bulletin of Electrical Engineering and Informatics publishes original papers in the field of electrical, computer and informatics engineering which covers, but not limited to, the following scope: Computer Science, Computer Engineering and Informatics[...] Electronics[...] Electrical and Power Engineering[...] Telecommunication and Information Technology[...]Instrumentation and Control Engineering[...]