基于遗传规划技术的复杂生物医学数据非线性模型结构识别

G. Beligiannis, L.V. Skarlas, S. D. Likothanassis, K. Perdikouri
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引用次数: 2

摘要

本文提出了一种基于遗传规划的技术,该技术结合了遗传规划自动有效地探索整个候选模型结构的能力和进化多模型划分过滤器的鲁棒性。将该方法应用于复杂生物医学数据的非线性系统辨识问题。仿真结果表明,该算法能够识别出每种不同模型结构的真实模型和未知参数的真实值,从而帮助遗传规划技术更快地收敛到(近)最优模型结构。该方法具有进化多模型划分滤波器的所有优点,即不局限于高斯情况,适用于在线/自适应运算,计算效率高。此外,它可以以并行处理的方式实现,这使得它适合VLSI的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear model structure identification of complex biomedical data using a genetic programming based technique
In this contribution, a genetic programming based technique, which combines the ability of genetic programming to explore both automatically and effectively, the whole set of candidate model structures and the robustness of evolutionary multimodel partitioning filters, is presented. The method is applied to the nonlinear system identification problem of complex biomedical data. Simulation results show that the algorithm identifies the true model and the true values of the unknown parameters for each different model structure, thus assisting the genetic programming technique to converge more quickly to the (near) optimal model structure. The method has all the known advantages of the evolutionary multimodel partitioning filters, that is, it is not restricted to the Gaussian case, it is applicable to online/adaptive operation and is computationally efficient. Furthermore, it can be realized in a parallel processing fashion, a fact, which makes it amenable to VLSI implementation.
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