基于自适应神经模糊推理系统(ANFIS)架构的镍镉电池快速充电器模糊控制器

Arun Khosla, Sandeep Kumar, K. K. Aggarwal
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引用次数: 29

摘要

ANFIS结构是一类自适应网络,在功能上等同于模糊推理系统。该体系结构被用于模糊建模,通过学习数据集的信息来计算最符合给定输入输出数据的隶属函数和规则库。ANFIS采用混合学习方法,结合梯度法和最小二乘估计分别识别前提参数和结果参数。本文利用神经网络分析系统设计了镍镉电池快速充电充电器的模糊控制器。镍镉电池在高充电率下的行为尚不清楚,电池的输入输出数据是通过严格的实验获得的,目的是尽可能快地给电池充电,但不损害电池。控制器采用Takagi-Sugeno-Kang (TSK)模型。
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Fuzzy controller for rapid nickel-cadmium batteries charger through adaptive neuro-fuzzy inference system (ANFIS) architecture
ANFIS architecture is a class of adaptive networks, which is functionally equivalent to fuzzy inference systems. The architecture has been employed for fuzzy modeling that learns information about a data-set in order to compute the membership functions and rule-base that best follow the given input-output data. ANFIS employs hybrid learning that combines the gradient method and the least squares estimates to identify premise and consequent parameters respectively. In this paper the fuzzy controller for rapidly charging nickel-cadmium (Ni-Cd) batteries charger has been designed through ANFIS. The behavior of Ni-Cd batteries was not known for higher charging rates and the input-output data of batteries has been obtained through rigorous experimentation with an objective to charge the batteries as quickly as possible, but without doing any damage to them. Takagi-Sugeno-Kang (TSK) model has been considered for the controller.
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