This work presents a new meta-heuristic approach to select the structure of polynomial NARX models for regression and classification problems. The method takes into account the complexity of the model and the contribution of each term to build parsimonious models by proposing a new cost function formulation. The robustness of the new algorithm is tested on several simulated and experimental system with different nonlinear characteristics. The obtained results show that the proposed algorithm is capable of identifying the correct model, for cases where the proper model structure is known, and determine parsimonious models for experimental data even for those systems for which traditional and contemporary methods habitually fails. The new algorithm is validated over classical methods such as the FROLS and recent randomized approaches.
翻译:这项工作提出了一种新的元体-重力方法,用于为回归和分类问题选择多面式NARX模型的结构;该方法考虑到模型的复杂性和每个术语通过提出新的成本函数配方来帮助构建相似模型的作用;新算法的稳健性在若干具有不同非线性特点的模拟和实验系统上进行了测试;获得的结果显示,拟议的算法能够确定正确的模型,在已知适当模型结构的情况下,确定实验数据的典型模型,即使是传统和现代方法经常失败的系统也是如此。新的算法对传统方法(如FROLS)和最近的随机法进行了验证。