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An advanced hardware design based on ensemble empirical mode decomposition algorithm for heart sound signal processing

机译:一种基于集成经验模式分解算法的先进的硬件设计,用于心声信号处理

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In this study, an advanced hardware design for heart sound signal processing based on ensemble empirical mode decomposition (EEMD) is developed and implemented. The EEMD method [1] is developed to alleviate a key drawback in the original empirical mode decomposition (EMD) algorithm. In a previous research, Huang et al. [2] developed an adaptive and efficient EMD method for nonlinear and nonstationary signal analysis. The physical meaning of a single intrinsic mode function (IMF) is obscure, and the original EMD algorithm cannot separate signals with different scales into appropriate IMFs. To overcome this major drawback, a noise-assisted data analysis (NADA) method called EEMD is developed. Heart sound signals are fed into the proposed system to simulate the EEMD-fixed-point performance. A comparison of the floating-point and fixed-point results exhibits satisfactory consistency and demonstrates that our design can accommodate wide variations of dynamic ranges and complicated calculations.
机译:在这项研究中,开发并实施了基于集合经验模式分解(EEMD)的心声信号处理的先进的硬件设计。开发EEMD方法[1]以缓解原始经验模式分解(EMD)算法中的关键缺陷。在以前的研究中,黄等人。 [2]开发了一种用于非线性和非间抗信号分析的自适应和有效的EMD方法。单个内在模式功能(IMF)的物理含义是模糊的,原始EMD算法不能将具有不同尺度的信号分隔为适当的IMF。为了克服这一主要缺点,开发了一种称为EEMD的噪声辅助数据分析(NADA)方法。心声信号被馈送到所提出的系统中以模拟EEMD定点性能。浮点和定点结果的比较表现出令人满意的一致性,并表明我们的设计可以适应各种动态范围和复杂计算的宽变化。

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