This paper will propose a novel technique for optimize hydropower plant in small scale based on load frequency control (LFC) which use self-tuning fuzzy Proportional- Derivative (PD) method for estimation and prediction of planning. Due to frequency is not controlled by any dump load or something else, so this power plant is under dynamic frequency variations that will use PD controller which optimize by fuzzy rules and then with neural deep learning techniques and Genetic Algorithm optimization. The main purpose of this work is because to maintain frequency in small-hydropower plant at nominal value. So, proposed controller means Fuzzy PD optimization with Genetic Algorithm will be used for LFC in small scale of hydropower system. The proposed schema can be used in different designation of both diesel generator and mini-hydropower system at low stream flow. It is also possible to use diesel generator at the hydropower system which can be turn off when Consumer demand is higher than electricity generation. The simulation will be done in MATLAB/Simulink to represent and evaluate the performance of this control schema under dynamic frequency variations. Spiking Neural Network (SNN) used as the main deep learning techniques to optimizing this load frequency control which turns into Deep Spiking Neural Network (DSNN). Obtained results represented that the proposed schema has robust and high-performance frequency control in comparison to other methods.
翻译:本文将提出一种基于载荷频率控制(LFC)优化小型水电站的新型技术,该技术将使用自调 fuzzy Fizzy 比例-衍生法(PD)方法来估计和预测规划。由于频率不受任何倾卸负荷或其他物质控制,因此该发电厂处于动态频率变异状态,将使用PD控制器,该控制器通过模糊规则优化,然后使用神经深层学习技术和遗传电算法优化。这项工作的主要目的是保持小型水电站的频率,因此,拟议的控制器意味着小型水电系统将使用Fuzzy PD与遗传Algorithm的优化。拟议的Schema可用于小型水电站的低流量柴油发电机和微型水电系统的不同名称。在消费者需求高于发电时,也可以使用电深层深层学习系统(Spik Nestrax)的模拟结果,并用作深度频率变异状态系统(Spik Nestrax)的升级技术,并用作深层同步系统。