基于自适应网络模糊推理系统的水培自动控制

N. Surantha, Vito Vincentdo
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引用次数: 1

摘要

发展中国家人口的迅速增长和工业的迅速发展损害了农业部门,因为许多农业用地被改造成住宅区或工业区。应用水培等现代农业技术可以帮助克服这个问题。然而,水培需要特别注意调节pH值和营养水平,以最大限度地提高植物生长,因此需要一个自动化系统来管理这一过程。本研究提出了一种基于自适应网络的模糊推理系统(ANFIS)和物联网的智能水培系统。物联网系统由传感器、执行器和数据处理层组成,用于监测和控制被观察植物的pH值和营养状况。然后,设计了ANFIS算法来控制pH和营养水平。实验结果表明,该系统能自动调节pH值和养分水平到植物生长的预期范围,采用ANFIS制作的模糊控制器比采用Sugeno制作的模糊控制器更准确、更稳定。研究表明,只要数据集具有良好的粒度和定义,ANFIS在控制多个执行器时具有优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NFT-Based Hydroponic Automated Control Using Adaptive Network-Based Fuzzy Inference System
The rapid population growth and industrial development in developing countries harm the agricultural sector because many agricultural lands are converted into residential or industrial areas. Applying modern agriculture technologies such as hydroponic could help to overcome the problem. However, hydroponics requires special attention in adjusting the pH and nutrient levels to maximize plant growth, so an automated system is needed to manage the process. In this research, a smart hydroponic system is proposed by applying Adaptive Networkbased Fuzzy Inference System (ANFIS) and Internet-of-Things. The IoT system consists of sensor, actuator, and data processing layer is designed to monitor and control the condition of pH and nutrition of the observed plants. Then, the ANFIS algorithm is designed to control the level of pH and nutrition. The experiment results show that the system can automatically adjust the pH and nutrient levels to the expected range for growing plants, and the fuzzy controller made using ANFIS are more accurate and stable than the fuzzy controller made using Sugeno. This study shows that ANFIS has excellent performance when controlling multiple actuators, as long as the data set has great granularity and well defined.
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