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Research on the Application of Machine Learning Big Data Mining Algorithms in Digital Signal Processing

机译:机器学习大数据挖掘算法在数字信号处理中的应用研究

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Traditional digital signal processing technology based on DSP and FPGA is more suitable for real-time signal processing, and is limited by data scale and frequency resolution, making it unsuitable for offline data processing, analysis and mining under large-scale data Application. At present, the industrial big data analysis platform can use Spark as a calculation engine for real-time signal processing and offline signal processing acceleration, but the analysis platform lacks mathematical calculation solutions such as digital signal processing suitable for distributed parallel calculation engines. This article is based on time the parity decomposition is selected, and the fast Fourier transform is realized by MATLAB software. Based on an example of the application of the compiled FFT source program, this article analyses the frequency spectrum of discrete-time and continuous-time signals of limited length.
机译:基于DSP和FPGA的传统数字信号处理技术更适合实时信号处理,受到数据刻度和频率分辨率的限制,使其在大规模数据应用下的离线数据处理,分析和挖掘不适合。 目前,工业大数据分析平台可以使用火花作为实时信号处理和离线信号处理加速的计算引擎,但分析平台缺少数学计算解决方案,例如适用于分布式并行计算发动机的数字信号处理。 本文基于时间选择奇偶校验分解,并由MATLAB软件实现快速傅里叶变换。 基于编译的FFT源程序的应用的示例,本文分析了线路的离散时间和连续时间信号的频谱。

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