Methodology for Analysis of Gm-C Filters based on Statistical, Fuzzy Logic and Machine Learning Approach

M. Ivanova
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引用次数: 1

Abstract

In the paper a new approach for analysis of Gm-C filters is presented that is suitable for automation of some engineering tasks and integration in CAD tools. The proposed methodology includes data gathering through simulation and circuit mathematical description, utilization of statistical experimental design technique, fuzzy logic method and machine learning algorithm. It is verified through analysis of a low pass Gm-C second order Butterworth filter and creation of several models: high level behavioral VHDL-AMS model of Gm-C active filter, statistical and fuzzy logic based model of inference and machine learning analytical model.
基于统计、模糊逻辑和机器学习方法的Gm-C滤波器分析方法
本文提出了一种新的Gm-C滤波器分析方法,该方法适用于某些工程任务的自动化和CAD工具的集成。提出的方法包括通过仿真和电路数学描述收集数据,利用统计实验设计技术,模糊逻辑方法和机器学习算法。通过对低通Gm-C二阶巴特沃斯滤波器的分析,并建立了Gm-C有源滤波器的高级行为VHDL-AMS模型、基于统计和模糊逻辑的推理模型和机器学习分析模型,对其进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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