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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Identification of the Parameters of the Beeler–Reuter Ionic Equation With a Partially Perturbed Particle Swarm Optimization
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Identification of the Parameters of the Beeler–Reuter Ionic Equation With a Partially Perturbed Particle Swarm Optimization

机译:利用部分摄动粒子群优化算法确定Beeler-Reuter离子方程参数

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摘要

A partially perturbed particle swarm optimization (PPSO) has been proposed for identifying the parameters of the Beeler–Reuter (BR) equation from action potential data. In the PPSO algorithm, the 63 BR equation parameters are divided into groups, and parameter patterns are made from the combination of the groups. PPSO enhances the capability of conventional particle swarm optimization (CPSO) by partially perturbing the coordinates of the globally best particle with the patterns when the searching process is locally confined. “Experimental data” were produced for cardiac myocytes simulated by the BR equation and the equation of Luo and Rudy (1991), and were used to test the algorithm of PPSO. The test results show that PPSO was able to identify the parameters of the BR equation effectively for different cardiac myocytes, while still retaining the conceptual simplicity and easy implementation of CPSO.
机译:已经提出了一种部分扰动的粒子群算法(PPSO),用于从动作电位数据中识别Beeler-Reuter(BR)方程的参数。在PPSO算法中,将63个BR方程参数分为几组,并根据各组的组合来形成参数模式。当局部限制搜索过程时,PPSO通过使用模式部分扰动全局最佳粒子的坐标来增强常规粒子群优化(CPSO)的能力。用BR方​​程以及Luo和Rudy(1991)方程模拟的心肌细胞产生了“实验数据”,并被用于测试PPSO的算法。测试结果表明,PPSO能够有效识别出针对不同心肌细胞的BR方程参数,同时仍保持CPSO的概念简单性和易于实施性。

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